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Practical guide for the Validation

OIV-MA-AS1-12 Practical guide for the validation, quality control, and uncertainty assessment of an alternative oenological analysis method

Contents

1. Purpose

2. Preamble and scope

3. General vocabulary

4. General principles

4.1 Methodology

4.2 Definition of measurement error

5. Validating a method

5.1 Methodology

5.2 Section one: Scope of method

5.2.1 Definition of analyzable matrices

5.2.2 Detection and quantification limit

5.2.2.1 Normative definition

5.2.2.2 Reference documents

5.2.2.3 Application

5.2.2.4 Procedure

5.2.2.4.1 Determination on blank

5.2.2.4.1.1 Scope

5.2.2.4.1.2 Basic protocol and calculations

5.2.2.4.2 Approach by linearity study

5.2.2.4.2.1 Scope

5.2.2.4.2.2 Basic protocol and calculations

5.2.2.4.3 Graphic approach based on the background noise of the recording

5.2.2.4.3.1 Scope

5.2.2.4.3.2 Basic protocol and calculation

5.2.2.4.4 Checking a predetermined quantification limit

5.2.2.4.4.1 Scope

5.2.2.4.4.2 Basic protocol and calculation

5.2.3 Robustness

5.2.3.1 Definition

5.2.3.2 Determination

5.3 Section two: systematic error study

5.3.1 Linearity study

5.3.1.1 Normative definition

5.3.1.2 Reference documents

5.3.1.3 Application

5.3.1.4 ISO 11095-type approach

5.3.1.4.1 Basic protocol

5.3.1.4.2 Calculations and results

5.3.1.4.2.1 Defining the regression model

5.3.1.4.2.2 Estimating parameters

5.3.1.4.2.3 Charts

5.3.1.4.2.4 Test of the linearity assumption

5.3.1.4.2.4.1 Definitions of errors linked to calibration

5.3.1.4.2.4.2 Fischer-Snedecor test

5.3.1.5 ISO 8466-type approach

5.3.1.5.1 Basic protocol

5.3.1.5.2 Calculations and results

5.3.1.5.2.1 Defining the linear regression model

5.3.1.5.2.2 Defining the polynomial regression model

5.3.1.5.2.3 Comparing residual standard deviations

5.3.2 Specificity

5.3.2.1 Normative definition

5.3.2.2 Application

5.3.2.3 Procedures

5.3.2.3.1 Standard addition test

5.3.2.3.1.1 Scope

5.3.2.3.1.2 Basic protocol

5.3.2.3.1.3 Calculations and results

5.3.2.3.1.3.1 Study of the regression line r = a + b.v

5.3.2.3.1.3.2 Analysis of the results

5.3.2.3.1.3.3 Overlap line graphics

5.3.2.3.2 Study of the influence of other compounds on the measurement result

5.3.2.3.2.1 Scope

5.3.2.3.2.2 Basic protocol and calculations

5.3.2.3.2.3 Interpretation

5.3.3 Study of method accuracy

5.3.3.1 Presentation of the step

5.3.3.1.1 Definition

5.3.3.1.2 General principles

5.3.3.1.3 Reference documents

5.3.3.2 Comparison of the alternative method with the OIV reference method

5.3.3.2.1 Scope

5.3.3.2.2 Accuracy of the alternative method compared with the reference method

5.3.3.2.2.1 Definition

5.3.3.2.2.2 Scope

5.3.3.2.2.3 Basic protocol and calculations

5.3.3.2.2.4 Interpretation

5.3.3.3 Comparison by interlaboratory tests

5.3.3.3.1 Scope

5.3.3.3.2 Basic protocol and calculations

5.3.3.3.3 Interpretation

5.3.3.4 Comparison with reference materials

5.3.3.4.1 Scope

5.3.3.4.2 Basic protocol and calculations

5.3.3.4.3 Interpretation

5.4 Section three: random error study

5.4.1 General principle

5.4.2 Reference documents

5.4.3 Precision of the method

5.4.3.1 Definition

5.4.3.2 Scope

5.4.3.3 General theoretical case

5.4.3.3.1 Basic protocol and calculations

5.4.3.3.1.1 Calculations with several test materials

5.4.3.3.1.2 Calculations with 1 test material

5.4.3.4 Repeatability

5.4.3.4.1 Definitions

5.4.3.4.2 Scope

5.4.3.4.3 Basic protocol and calculations

5.4.3.4.3.1 General case

5.4.3.4.3.2 Particular case applicable to only 1 repetition

5.4.3.4.4 Comparison of repeatability

5.4.3.4.4.1 Determination of the repeatability of each method

5.4.3.4.4.2 Fischer-Snedecor test

5.4.3.5 Intralaboratory reproducibility

5.4.3.5.1 Definition

5.4.3.5.2 Scope

5.4.3.5.3 Basic protocol and calculations

6. Quality control of analysis methods (IQC)

6.1 Reference documents

6.2 General principles

6.3 Reference materials

6.4 Checking the analytical series

6.4.1 Definition

6.4.2 Checking accuracy using reference materials

6.4.3 Intraseries precision

6.4.4 Internal standard

6.5 Checking the analysis system

6.5.1 Definition

6.5.2 Shewhart chart

6.5.2.1 Data acquisition

6.5.2.2 Presentation of results and definition of limits

6.5.2.3 Using the Shewhart chart

6.5.3 Internal comparison of analysis systems

6.5.4 External comparison of the analysis system

6.5.4.1 Analysis chain of interlaboratory comparisons

6.5.4.2 Comparison with external reference materials

6.5.4.2.1 Standard uncertainty of reference material

6.5.4.2.2 Defining the validity limits of measuring reference material

7. Assessment of measurement uncertainty

7.1 Definition

7.2 Reference documents

7.3 Scope

7.4 Methodology

7.4.1 Definition of the measurand, and description of the quantitative analysis
      method

7.4.2 Critical analysis of the measurement process

7.4.3 Estimation calculations of standard uncertainty
      (intralaboratory approach)

7.4.3.1 Principle

7.4.3.2 Calculating the standard deviation of intralaboratory reproducibility

7.4.3.3 Estimating typical sources of systematic errors not taken into account underµ
      reproducibility conditions

7.4.3.3.1 Gauging error (or calibration error)

7.4.3.3.1.1 Procedure

7.4.3.3.1.2 Calculations and results

7.4.3.3.1.3 Estimating the standard uncertainty associated the gauging line
        (or calibration line)

7.4.3.3.2 Bias error

7.4.3.3.2.1 Methods adjusted with only one certified reference material

7.4.3.3.2.2 Methods adjusted with several reference materials (gauging ranges etc)

7.4.3.3.3 Matrix effect

7.4.3.3.3.1 Definition

7.4.3.3.4 Sample effect

7.4.4 Estimating standard uncertainty by interlaboratory tests

7.4.4.1 Principle

7.4.4.2 Using the standard deviation of interlaboratory and intramethod
      reproducibility SRinter (method)

7.4.4.3 Using the standard deviation of interlaboratory and intermethod
      reproducibility SRinter

7.4.4.4 Other components in the uncertainty budget

7.5 Expressing expanded uncertainty

  1. Purpose

The purpose of this guide is to assist oenological laboratories carrying out serial analysis as part of their validation, internal quality control and uncertainty assessment initiatives concerning the standard methods they use.

  1. Preamble and scope

International standard ISO 17025, defining the "General Requirements for the Competence of Testing and Calibration Laboratories", states that the accredited laboratories must, when implementing an alternative analytical method, make sure of the quality of the results obtained. To do so, it indicates several steps. The first step consists in defining the customers' requirements concerning the parameter in question, in order to determine, thereafter, whether the method used meets those requirements. The second step includes initial validation for non-standardized, modified or laboratory-developed methods. Once the method is applied, the laboratories must use inspection and traceability methods in order to monitor the quality of the results obtained. Finally, they must assess the uncertainty of the results obtained.

In order to meet these requirements, the laboratories have a significant reference system at their disposal comprising a large number of international guides and standards. However, in practice, the application of these texts is delicate since, because they address every category of calibration and test laboratory, they remain very general and presuppose, on behalf of the reader, in-depth knowledge of the mathematical rules applicable to statistical data processing.

This guide is based on this international reference system, taking into account the specific characteristics of oenology laboratories routinely carrying out analyses on series of must or wine samples. Defining the scope of application in this way enabled a relevant choice of suitable tools to be made, in order to retain only those methods most suitable for that scope. Since it is based on the international reference system, this guide is therefore strictly compliant with it. Readers, however, wishing to study certain points of the guide in greater detail can do so by referring to the international standards and guides, the references for which are given in each chapter.

The authors have chosen to combine the various tools meeting the requirements of the ISO 17025 standard since there is an obvious solution of continuity in their application, and the data obtained with certain tools can often be used with the others. In addition, the mathematical resources used are often similar.

The various chapters include application examples, taken from oenology laboratories using these tools.

It is important to point out that that this guide does not pretend to be exhaustive. It is only designed to present, in as clear and applicable a way as possible, the contents of the requirements of the ISO 17025 standard and the basic resources that can be implemented in a routine laboratory to meet them. Each laboratory remains perfectly free to supplement these tools or to replace them by others that they consider to be more efficient or more suitable.

Finally, the reader’s attention should be drawn to the fact that the tools presented do not constitute an end in themselves and that their use, as well as the interpretation of the results to which they lead, must always be subject to critical analysis. It is only under these conditions that their relevance can be guaranteed, and laboratories will be able to use them as tools to improve the quality of the analyses they carry out.

  1. General vocabulary

The definitions indicated below used in this document result from the normative references given in the bibliography.

Analyte

Object of the analysis method

Blank

Test carried out in the absence of a matrix (reagent blank) or on a matrix which does not contain the analyte (matrix blank).

Bias

Difference between the expected test results and an accepted reference value.

Uncertainty budget

The list of uncertainty sources and their associated standard uncertainties, established in order to assess the compound standard uncertainty associated with a measurement result.

Gauging (of a measuring instrument)

Material positioning of each reference mark (or certain principal reference marks only) of a measuring instrument according to the corresponding value of the measurand.

NOTE  "gauging" and "calibration" are not be confused

Repeatability conditions

Conditions where independent test results are obtained with the same method on identical test items in the same laboratory by the same operator using the same equipment within short intervals of time.

Reproducibility conditions (intralaboratory)

Conditions where independent test results are obtained with the same method on identical test items in the same laboratory by the same or different operator(s) using different gauges on different days.

Experimental standard deviation

For a series of n measurements of the same measurand, the quantity s characterizing the dispersion of the results and given by the formula:

being the result of the measurementand the arithmetic mean of the n results considered.

Repeatability standard deviation

Standard deviation of many repetitions obtained in a single laboratory by the same operator on the same instrument, i.e. under repeatable conditions.

Internal reproducibility standard deviation (or total intralaboratory variability)

Standard deviation of repetitions obtained in a single laboratory with the same method, using several operators or instruments and, in particular, by taking measurements on different dates, i.e. under reproducibility conditions.

Random error

Result of a measurement minus the mean that would result from an infinite number of measurements of the same measurand carried out under reproducibility conditions.

Measurement error

Result of a measurement minus a true value of the measurand.

Systematic error

Mean error that would result from an infinite number of measurements of the same measurand carried out under reproducibility conditions minus a true value of the measurand.

NOTE  Error is a highly theoretical concept in that it calls upon values that are not accessible in practice, in particular the true values of measurands. On principle, the error is unknown.

Mathematical expectation

For a series of n measurements of the same measurand, if n tends towards the infinite, the mean tends towards the expectation E(x).

Calibration

Series of operations establishing under specified conditions the relation between the values of the quantity indicated by a measuring instrument or system, or the values represented by a materialized measurement or a reference material, and the corresponding values of the quantity measured by standards.

Intralaboratory evaluation of an analysis method

Action which consists in submitting an analysis method to an intralaboratory statistical study, based on a standardized and/or recognized protocol, demonstrating that within its scope, the analysis method meets pre-established performance criteria.

Within the framework of this document, the evaluation of a method is based on an intralaboratory study, which includes the comparison with a reference method.

Precision

Closeness of agreement between independent test results obtained under prescribed conditions

Note 1 Precision depends only on the distribution of random errors and does not have any relationship with the true or specified value.

Note 2  The measurement of precision is expressed on the basis of the standard deviation of the test results.

Note 3 The expression "independent test results" refers to results obtained such that they are not influenced by a previous result on the same or a similar test material. Quantitative measurements of precision are critically dependent upon the prescribed conditions. Repeatability and reproducibility conditions are particular sets of extreme conditions.

Quantity (measurable)

An attribute of a phenomenon, body or substance that may be distinguished qualitatively and determined quantitatively.

Uncertainty of measurement

A parameter associated with the result of a measurement, which characterizes the dispersion of the values that could reasonably be attributed to the measurand.

Standard uncertainty (u(xi))

Uncertainty of the result of a measurement expressed in the form of a standard deviation.

Accuracy

Closeness of agreement between the mean value obtained starting from a broad series of test results and an accepted reference value.

Note  The measurement of accuracy is generally expressed in terms of bias.

Detection limit

Lowest amount of an analyte to be examined in a test material that can be detected and regarded as different from the blank value (with a given probability), but not necessarily quantified. In fact, two risks must be taken into account:

  • the risk α of considering the substance is present in test material when its quantity is null;
  • the risk β of considering a substance is absent from a substance when its quantity is not null.

Quantification limit

Lowest amount of an analyte to be examined in a test material that can be quantitatively determined under the experimental conditions described in the method with a defined variability (given coefficient of variation).

Linearity

The ability of a method of analysis, within a certain range, to provide an instrumental response or results proportional to the quality of analyte to be determined in the laboratory sample.

This proportionality is expressed by an a priori defined mathematical expression.

The linearity limits are the experimental limits of concentrations between which a linear calibration model can be applied with a known confidence level (generally taken to be equal to 1%).

Test material

Material or substance to which a measuring can be applied with the analysis method under consideration.

Reference material

Material or substance one or more of whose property values are sufficiently homogeneous and well established to be used for the calibration of an apparatus, the assessment of a measurement method, or for assigning values to materials.

Certified reference material

Reference material, accompanied by a certificate, one or more whose property values are certified by a procedure which establishes its traceability to an accurate realization of the unit in which the property values are expressed, and for which each certified value is accompanied by an uncertainty at a stated level of confidence.

Matrix

All the constituents of the test material other than the analyte.

Analysis method

Written procedure describing all the means and procedures required to carry out the analysis of the analyte, i.e.: scope, principle and/or reactions, definitions, reagents, apparatus, procedures, expression of results, precision, test report.

WARNING The expressions "titration method" and "determination method" are sometimes used as synonyms for the expression "analysis method". These two expressions should not be used in this way.

 

Quantitative analysis method

Analysis method making it possible to measure the analyte quantity present in the laboratory test material.

Reference analysis method (Type I or Type II methods)

Method, which gives the accepted reference value for the quantity of the analyte to be measured.

 

Non-classified alternative method of analysis

A routine analysis method used by the laboratory and not considered to be a reference method.

NOTE  An alternative method of analysis can consist in a simplified version of the reference method.

Measurement

Set of operations having the object of determining a value of a quantity.

Note  The operations can be carried out automatically.

 

Measurand

Particular quantity subject to measurement.

Mean

For a series of n measurements of the same measurand, mean value, given by the formula:

being the result of the measurement.

Result of a measurement

Value assigned to a measurand, obtained by measurement

Sensitivity

Ratio between the variation of the information value of the analysis method and the variation of the analyte quantity.

The variation of the analyte quantity is generally obtained by preparing various standard solutions, or by adding the analyte to a matrix.

Note 1 Defining, by extension, the sensitivity of a method as its capacity to detect small quantities should be avoided.

Note 2 A method is said to be “sensitive" if a low variation of the quantity or analyte quantity incurs a significant variation in the information value.

Measurement signal

Quantity representing the measurand and is functionally linked to it.

Specificity

Property of an analysis method to respond exclusively to the determination of the quantity of the analyte considered, with the guarantee that the measured signal comes only from the analyte.

Tolerance

Deviation from the reference value, as defined by the laboratory for a given level, within which a measured value of a reference material can be accepted.

Value of a quantity

Magnitude of a particular quantity generally expressed as a unit of measurement multiplied by a number.

 

True value of a quantity

Value compatible with the definition of a given particular quantity.

Note 1 The value that would be obtained if the measurement was perfect

Note 2 Any true value is by nature indeterminate

Accepted reference value

A value that serves as an agreed-upon reference for comparison and which is derived as:

a) a theoretical or established value, based on scientific principles;

b) an assigned or certified value, based on experimental work of some national or international organization;

c) a consensus or certified value, based on collaborative experimental work under the auspices of a scientific or engineering group;

Within the particular framework of this document, the accepted reference value (or conventionally true value) of the test material is given by the arithmetic mean of the values of measurements repeated as per the reference method.

Variance

Square of the standard deviation.

  1. General principles

4.1.  Methodology

When developing a new alternative method, the laboratory implements a protocol that includes several steps. The first step, applied only once at the initial stage, or on a regular basis, is the validation of the method. This step is followed by permanent quality control. All the data collected during these two steps make it possible to assess the quality of the method. The data collected during these two steps are used to evaluate the measurement uncertainty. The latter, which is regularly assessed, is an indicator of the quality of the results obtained by the method under consideration.

 

All these steps are inter-connected and constitute a global approach that can be used to assess and control measurement errors.

4.2.  Definition of measurement error

Any measurement carried out using the method under study gives a result which is inevitably associated with a measurement error, defined as being the difference between the result obtained and the true value of the measurand. In practice, the true value of the measurand is inaccessible and a value conventionally accepted as such is used instead.

The measurement error includes two components:

Measurement error

 

True value= Analysis results

Systematic error

Random error

In practice, the systematic error results in a bias in relation to the true value, the random error being all the errors associated with the application of the method.

These errors can be graphically represented in the following way:

 

The validation and quality control tools are used to evaluate the systematic errors and the random errors, and to monitor their changes over time.

 

  1. Validating a method

 

5.1.  Methodology

Implementing the validation comprises 3 steps, each with objectives. To meet these objectives, the laboratory has validation tools. Sometimes there are many tools for a given objective, and are suitable for various situations. It is up to the laboratory to correctly choose the most suitable tools for the method to be validated.

Steps

Objectives

Tools for validation

 

Scope of application

- To define the analyzable matrices

- To define the analyzable range

Detection and quantification limit

Robustness study

Systematic error

or bias

- Linear response in the scale of analyzable values

Linearity study

- Specificity of the method

Specificity study

- Accuracy of the method

Comparison with a reference method

Comparison with reference materials

Interlaboratory comparison

Random error

- Precision of the method

Repeatability study

Intralaboratory reproducibility study

5.2.  Section one: Scope of method

5.2.1.      Definition of analyzable matrices

The matrix comprises all constituents in the test material other than the analyte.

If these constituents are liable to influence the result of a measurement, the laboratory should define the matrices on which the method is applicable.

For example, in oenology, the determination of certain parameters can be influenced by the various possible matrices (wines, musts, sweet wines, etc.).

In case of doubt about a matrix effect, more in-depth studies can be carried out as part of the specificity study.

5.2.2.      Detection and quantification limit

This step is of course not applicable and not necessary for those methods whose lower limit does not tend towards 0, such as alcoholic strength by volume in wines, total acidity in wines, pH, etc.

5.2.2.1.                        Normative definition

The detection limit is the lowest amount of analyte that can be detected but not necessarily quantified as an exact value. The detection limit is a parameter of limit tests.

The quantification limit is the lowest quantity of the compound that can be determined using the method.

5.2.2.2.                        Reference documents

  • NF V03-110 Standard, intralaboratory validation procedure for an alternative method in relation to a reference method.
  • International compendium of analysis methods – OIV, Assessment of the detection and quantification limit of an analysis method (Oeno resolution 7/2000).

5.2.2.3.                        Application

In practice, the quantification limit is generally more relevant than the detection limit, the latter being by convention 1/3 of the first.

There are several approaches for assessing the detection and quantification limits:

  • Determination on blank
  • Approach by the linearity study
  • Graphic approach

These methods are suitable for various situations, but in every case they are mathematical approaches giving results of informative value only. It seems crucial, whenever possible, to introduce a check of the value obtained, whether by one of these approaches or estimated empirically, using the checking protocol for a predetermined quantification limit.

5.2.2.4.                        Procedure

5.2.2.4.1.                 Determination on blank

5.2.2.4.1.1.           Scope

This method can be applied when the blank analysis gives results with a non-zero standard deviation. The operator will judge the advisability of using reagent blanks, or matrix blanks.

If the blank, for reasons related to uncontrolled signal preprocessing, is sometimes not measurable or does not offer a recordable variation (standard deviation of 0), the operation can be carried out on a very low concentration in analyte, close to the blank.

5.2.2.4.1.2.           Basic protocol and calculations

Carry out the analysis of n test materials assimilated to blanks, n being equal to or higher than 10.

  • Calculate the mean of the results obtained:

  • Calculate the standard deviation of the results obtained:

  • From these results the detection limit is conventionally defined by the formula:

  • From these results the quantification limit is conventionally defined by the formula:

 

Example: The table below gives some of the results obtained when assessing the detection limit for the usual determination of free sulfur dioxide.

 

Test material #

X

( mg/l)

1

0

2

1

3

0

4

1.5

5

0

6

1

7

0.5

8

0

9

0

10

0.5

11

0

12

0

 

The calculated values are as follows:

  • q = 12
  • = 0.375
  • = 0.528 mg/l
  • DL = 1.96 mg/l
  • QL = 5.65 mg/l

 

5.2.2.4.2.                 Approach by linearity study

5.2.2.4.2.1.           Scope

This method can be applied in all cases, and is required when the analysis method does not involve background noise. It uses the data calculated during the linearity study.

Note This statistical approach may be biased and give pessimistic results when linearity is calculated on a very wide range of values for reference materials, and whose measurement results include variable standard deviations. In such cases, a linearity study limited to a range of low values, close to 0 and with a more homogeneous distribution will result in a more relevant assessment.

5.2.2.4.2.2.           Basic protocol and calculations

Use the results obtained during the linearity study which made it possible to calculate the parameters of the calibration function y = a+ b.x

The data to be recovered from the linearity study are (see chapter 5.3.1. linearity study):

  • slope of the regression line:

  • residual standard deviation:

  • standard deviation at the intercept point (to be calculated):

The estimates of the detection limit DL and the quantification limit QL are calculated using following formulae:

Estimation detection limit

Estimated quantification limit

Example: Estimatation of the detection and quantification limits in the determination of sorbic acid by capillary electrophoresis, based on linearity data acquired on a range from 1 to 20 mg.L-1.

X (ref)

Y1

Y2

Y3

Y4

1

1.9

0.8

0.5

1.5

2

2.4

2

2.5

2.1

3

4

2.8

3.5

4

4

5.3

4.5

4.7

4.5

5

5.3

5.3

5.2

5.3

10

11.6

10.88

12.1

10.5

15

16

15.2

15.5

16.1

20

19.7

20.4

19.5

20.1

Number of reference materials

n = 8

Number of replicas

p = 4

Straight line (y = a + b*x)

b = 0.9972

a = 0.51102

residual standard deviation:

Sres = 0.588

Standard deviation on the intercept point

Sa = 0.1597

The estimated detection limit is DL = 0.48 mg.L-1

The estimated quantification limit is QL = 1.6 mg.L-1

5.2.2.4.3.                 Graphic approach based on the background noise of the recording

5.2.2.4.3.1.           Scope

This approach can be applied to analysis methods that provide a graphic recording (chromatography, etc.) with a background noise. The limits are estimated from a study of the background noise.

5.2.2.4.3.2.           Basic protocol and calculation

Record a certain number of reagent blanks, using 3 series of 3 injections separated by several days.

Determine the following values:

  • the greatest variation in amplitude on the y-axis of the signal observed between two acquisition points, excluding drift, at a distance equal to twenty times the width at mid-height of the peak corresponding to the analyte, centered over the retention time of the compound under study.
  • R, the quantity/signal response factor, expressed in height.

The detection limit DL, and the quantification limit QL are calculated according to the following formulae:

DL = 3 R

QL = 10 R

 

5.2.2.4.4.                 Checking a predetermined quantification limit

This approach can be used to validate a quantification value obtained by statistical or empirical approach.

5.2.2.4.4.1.           Scope

This method can be used to check that a given quantification limit is a priori acceptable. It is applicable when the laboratory can procure at least 10 test materials with known quantities of analyte, at the level of the estimated quantification limit.

In the case of methods with a specific signal, not sensitive to matrix effects, the materials can be synthetic solutions whose reference value is obtained by formulation.

In all other cases, wines (or musts) shall be used whose measurand value as obtained by the reference method is equal to the limit to be studied. Of course, in this case the quantification limit of the reference method must be lower than this value.

5.2.2.4.4.2.           Basic protocol and calculation

Analyze n independent test materials whose accepted value is equal to the quantification limit to be checked; n must at least be equal to 10.

  • Calculate the mean of n measurements:

  • Calculate the standard deviation of n measurements:

with results of the measurement of the test material.

The two following conditions must be met:

a) the measured mean quantity must not be different from the predetermined quantification limit QL:

If < 10 then quantification limit QL is considered to be valid.

Note  10 is a purely conventional value relating to the QL criterion.

b) the quantification limit must be other than 0:

If 5 < QL then the quantification limit is other than 0.

A value of 5 corresponds to an approximate value for the spread of the standard deviation, taking into account risk  and risk  to ensure that the QL is other than 0.

This is equivalent to checking that the coefficient of variation for QL is lower than 20%.

Note Remember that the detection limit is obtained by dividing the quantification limit by 3.

Note 2 A check should be made to ensure that the value of SLQ is not too large (which would produce an artificially positive test), and effectively corresponds to a reasonable standard deviation of the variability of the results for the level under consideration. It is up to the laboratory to make this critical evaluation of the value of .

Example: Checking the quantification limit of the determination of malic acid by the enzymatic method.

Estimated quantification limit: 0.1 g.L-1

 

Wine

Values

1

0.1

2

0.1

3

0.09

4

0.1

5

0.09

6

0.08

7

0.08

8

0.09

9

0.09

10

0.08

Mean: 0.090

Standard deviation: 0.008

 

 

First condition: The quantification limit of 0.1 is considered to be valid.

Second condition: The quantification limit is considered to be significantly different from 0.

5.2.3.      Robustness

5.2.3.1.                        Definition

Robustness is the capacity of a method to give close results in the presence of slight changes in the experimental conditions likely to occur during the use of the procedure.

5.2.3.2.                        Determination

If there is any doubt about the influence of the variation of operational parameters, the laboratory can use the scientific application of experiment schedules, enabling these critical operating parameters to be tested within the variation range likely to occur under practical conditions. In practice, these tests are difficult to implement.

5.3.  Section two: systematic error study

5.3.1.      Linearity study

5.3.1.1.                        Normative definition

The linearity of a method is its ability (within a given range) to provide an informative value or results proportional to the amount of analyte to be determined in the test material.

5.3.1.2.                        Reference documents

  • NF V03-110 standard. Intralaboratory validation procedure of an alternative method in relation to a reference method.
  • ISO 11095 Standard, linear calibration using reference materials.
  • ISO 8466-1 Standard, Water quality – Calibration and evaluation of analytical methods and estimation of performance characteristics

5.3.1.3.                        Application

The linearity study can be used to define and validate a linear dynamic range.

This study is possible when the laboratory has stable reference materials whose accepted values have been acquired with certainty (in theory these values should have an uncertainty equal to 0). These could therefore be internal reference materials titrated with calibrated material, wines or musts whose value is given by the mean of at least 3 repetitions of the reference method, external reference materials or certified external reference materials.

In the last case, and only in this case, this study also enables the traceability of the method. The experiment schedule used here could then be considered as a calibration.

In all cases, it is advisable to ensure that the matrix of the reference material is compatible with the method.

Lastly, calculations must be made with the final result of the measurement and not with the value of the signal.

Two approaches are proposed here:

  • An ISO 11095 type of approach, the principle of which consists in comparing the residual error with the experimental error using a Fischer's test. This approach is valid above all for relatively narrow ranges (in which the measurand does not vary by more than a factor 10). In addition, under experimental conditions generating a low reproducibility error, the test becomes excessively severe. On the other hand, in the case of poor experimental conditions, the test will easily be positive and will also lose its relevance. This approach requires good homogeneity of the number of measurements over the entire range studied.
  • An ISO 8466 type of approach, the principle of which consists in comparing the residual error caused by the linear regression with the residual error produced by a polynomial regression (of order 2 for example) applied to the same data. If the polynomial model gives a significantly lower residual error, a conclusion of nonlinearity could be drawn. This approach is appropriate in particular when there is a risk of high experimental dispersion at one end of the range. It is therefore naturally well-suited to analysis methods for traces. There is no need to work with a homogeneous number of measurements over the whole range, and it is even recommended to increase the number of measurements at the borders of the range.

5.3.1.4.                        ISO 11095-type approach

5.3.1.4.1.                 Basic protocol

It is advisable to use a number n of reference materials. The number must be higher than 3, but there is no need, however, to exceed 10. The reference materials should be measured p times, under reproducibility conditions, p shall be higher than 3, a number of 5 being generally recommended. The accepted values for the reference materials are to be regularly distributed over the studied range of values. The number of measurements must be identical for all the reference materials.

Note  It is essential that the reproducibility conditions use a maximum of potential sources of variability, with the risk that the test shows non-linearity in an excessive way.

The results are reported in a table presented as follows:

Reference materials

Accepted reference value material

Measured values

Replica 1

...

Replica j

...

Replica p

1

x1

y11

...

y1j

...

y1p

...

...

...

...

...

...

...

i

xi

yi1

...

yij

...

yip

...

...

...

...

...

...

...

n

xn

yn1

...

ynj

...

ynp

5.3.1.4.2.                 Calculations and results

5.3.1.4.2.1.           Defining the regression model

The model to be calculated and tested is as follows:

where

  • is the replica of the reference material.
  • is the accepted value of the reference material.
  • b is the slope of the regression line.
  • a is the intercept point of the regression line.

represents the expectation of the measurement value of the reference material.

is the difference between yij and the expectation of the measurement value of the reference material.

 

5.3.1.4.2.2.           Estimating parameters

The parameters of the regression line are obtained using the following formulae:

  • mean of p measurements of the ith reference material

  • mean of all the accepted values of n reference materials

  • mean of all the measurements

  • estimated slope b

  • estimated intercept point a

  • regression value associated with the reference material

  • residual

5.3.1.4.2.3.           Charts

The results can be presented and analyzed in graphic form. Two types of charts are used.

  • The first type of graph is the representation of the values measured against the accepted values of reference materials. The calculated overlap line is also plotted.

  • The second graph is the representation of the residual values against the estimated values of the reference materials () indicated by the overlap line.

The graph is a good indicator of the deviation in relation to the linearity assumption: the linear dynamic range is valid if the residual values are fairly distributed between the positive and negative values.

In case of doubt about the linearity of the regression, a Fischer-Snedecor test can be carried out in order to test the assumption: "the linear dynamic range is not valid", in addition to the graphic analysis.

5.3.1.4.2.4.           Test of the linearity assumption

Several error values linked to calibration should be defined first of all: these can be estimated using the data collected during the experiment. A statistical test is then performed on the basis of these results, making it possible to test the assumption of non-validity of the linear dynamic range: this is the Fischer-Snedecor test.

Definitions of errors linked to calibration

These errors are given as a standard deviation, resulting from the square root of the ratio between a sum of squares and a degree of freedom.

Residual error

The residual error corresponds to the error between the measured values and the value given by the regression line.

The sum of the squares of the residual error is as follows:

The number of degrees of freedom is np-2.

The residual standard deviation is then estimated by the formula:

Experimental error

The experimental error corresponds to the reproducibility standard deviation of the experimentation.

The sum of the squares of the experimental error is as follows:

The number of degrees of freedom is np-n.

The experimental standard deviation (reproducibility) is then estimated by the formula:

Note  This quantity is sometimes also noted SR.

Adjustment error

The value of the adjustment error is the experimental error minus the residual error.

The sum of the squares of the adjustment error is:

Or

The number of degrees of freedom is n-2

The standard deviation of the adjustment error is estimated by the formula:

Or

Fischer-Snedecor test

The ratio obeys the Fischer-Snedecor law with the degrees of freedom n-2, np-n.

The calculated experimental value is compared with the limit value: (n-2,np-n), extracted from the Snedecor law table. The value for α used in practice is generally 5%.

If  the assumption of the non-validity of the linear dynamic range is accepted (with a risk of α error of 5%).

If the assumption of the non-validity of the linear dynamic range is rejected

Example: Linearity study for the determination of tartaric acid by capillary electrophoresis. 9 reference materials are used. These are synthetic solutions of tartaric acid, titrated by means of a scale traceable to standard masses.

Ref. material

Ti (ref)

Y1

Y2

Y3

Y4

1

0.38

0.41

0.37

0.4

0.41

2

1.15

1.15

1.12

1.16

1.17

3

1.72

1.72

1.63

1.76

1.71

4

2.41

2.45

2.37

2.45

2.45

5

2.91

2.95

2.83

2.99

2.95

6

3.91

4.09

3.86

4.04

4.04

7

5.91

6.07

5.95

6.04

6.04

8

7.91

8.12

8.01

8.05

7.9

9

9.91

10.2

10

10.09

9.87

Regression line

Line ( y = a + b*x)

b = 1.01565

a = - 0.00798

Errors related to calibration

Residual standard deviation Sres =  0.07161

Standard deviation of experimental reproducibility Sexp = 0.07536

Standard deviation of the adjustment error Sdef = 0.0548

Interpretation, Fischer-Snedecor test

= 0.53 < = 2.37

The assumption of the non-validity of the linear dynamic range is rejected

5.3.1.5.                        ISO 8466-type approach

5.3.1.5.1.                 Basic protocol

It is advisable to use a number n of reference materials. The number must be higher than 3, but there is no need, however, to exceed 10. The reference materials should be measured several times, under reproducibility conditions. The number of measurements may be small at the center of the range studied (minimum = 2) and must be greater at both ends of the range, for which a minimum number of 4 is generally recommended. The accepted values of reference materials must be regularly distributed over the studied range of values.

Note  It is vital that the reproducibility conditions use the maximum number of potential sources of variability.

The results are reported in a table presented as follows:

Reference materials

Accepted value of the reference material

Measured values

Replica 1

Replica 2

Replica j

...

Replica p

1

x1

y11

y12

y1j

...

y1p

...

...

...

...

...

...

 

i

xi

yi1

yi2

 

 

 

...

...

...

...

...

...

 

N

xn

yn1

...

ynj

...

ynp

5.3.1.5.2.                 Calculations and results

5.3.1.5.2.1.           Defining the linear regression model

Calculate the linear regression model using the calculations detailed above.

The residual error of the standard deviation for the linear model Sres can then be calculated using the formula indicated in § 5.3.1.4.2.4.1

5.3.1.5.2.2.           Defining the polynomial regression model

The calculation of the polynomial model of order 2 is given below

The aim is to determine the parameters of the polynomial regression model of order 2 applicable to the data of the experiment schedule.

The purpose is to determine the parameters a, b and c. This determination can generally be computerized using spreadsheets and statistics software.

The estimation formulae for these parameters are as follows:

Once the model has been established, the following values are to be calculated:

  • Regression value associated with the reference material

  • residual

Residual standard deviation of the polynomial model

Comparing residual standard deviations

Calculation of

Then

The value PG is compared with the limit value  given by the Fischer-Snedecor table for a confidence level 1- α and a degree of freedom 1 and (N-3).

Note In general the α risk used is 5%. In some cases the test may be optimistic and a risk of 10% will prove more realistic.

If PG : the nonlinear calibration function does not result in an improved adjustment; for example, the calibration function is linear.

If PG > : the work scope must be as narrow as possible to obtain a linear calibration function: otherwise, the information values from the analyzed samples must be evaluated using a nonlinear calibration function.

Example: Theoretical case.

 

Ti (ref)

Y1

Y2

Y3

Y4

1

35

22.6

19.6

21.6

18.4

2

62

49.6

49.8

53

 

3

90

105.2

103.5

 

 

4

130

149

149.8

 

 

5

205

203.1

202.5

197.3

 

6

330

297.5

298.6

307.1

294.2

Linear regression

y = 1.48.x – 0.0015

= 13.625

Polynomial regression

y = - 0.0015x² + 1.485x – 27.2701

S'res = 7.407

Fischer's test

PG = 10.534 > F(5%) = 10.128

PG>F the linear calibration function cannot be retained

5.3.2.      Specificity

5.3.2.1.                        Normative definition

The specificity of a method is its ability to measure only the compound being searched for.

5.3.2.2.                        Application

In case of doubt about the specificity of the tested method, the laboratory can use experiment schedules designed to check its specificity. Two types of complementary experiments are proposed here that can be used in a large number of cases encountered in the field of oenology.

  • The first test is the standard addition test. It can be used to check that the method measures all the analyte.
  • The second test can be used to check the influence of other compounds on the result of the measurement.

5.3.2.3.                        Procedures

5.3.2.3.1.                 Standard addition test

5.3.2.3.1.1.           Scope

This test can be used to check that the method measures all the analyte.

The experiment schedule is based on standard additions of the compound being searched for. It can only be applied to methods that are not sensitive to matrix effects.

5.3.2.3.1.2.           Basic protocol

This consists in finding a significant degree of added quantities on test materials analyzed before and after the additions.

Carry out variable standard additions on n test materials. The initial concentration in analyte of test materials, and the standard additions are selected in order to cover the scope of the method. These test materials must consist of the types of matrices called for routine analysis. It is advised to use at least 10 test materials.

The results are reported in a table presented as follows:

Test material

 

Quantity before addition
(x)

Quantity added

(v)

Quantity after addition

(w)

Quantity found (r)

1

x1

v1

w1

r1 = w1 x1

...

...

...

...

...

i

xi

vi

wi

ri = wi – xi

...

...

...

...

...

n

Xn

Vn

wn

rp = wn – xn

 

Note 1 An addition is made with a pure standard solution. It is advised to perform an addition of the same order as the quantity of the test material on which it is carried out. This is why the most concentrated test materials must be diluted to remain within the scope of the method.

Note 2 It is advised to prepare the additions using independent standard solutions, in order to avoid any systematic error.

Note 3 The quality of values x and w can be improved by using several repetitions.

5.3.2.3.1.3.           Calculations and results

The principle of the measurement of specificity consists in studying the regression line r = a + b.v and checking that slope b is equivalent to 1 and that intercept point a is equivalent to 0.

 

5.3.2.3.1.3.1.    Study of the regression line r = a + b.v

The parameters of the regression line are obtained using the following formulae:

  • mean of the added quantities

  • mean of the quantities found

  • estimated slope b

  • estimated intercept point a

  • regression value associated with the reference material

  • residual standard deviation

  • standard deviation on the slope

  • standard deviation on the intercept point

5.3.2.3.1.3.2.    Analysis of the results

The purpose is to conclude on the absence of any interference and on an acceptable specificity. This is true if the overlap line r = a + bv is equivalent to the line y = x.

To do so, two tests are carried out:

  • Test of the assumption that slope b of the overlap line is equal to 1.
  • Test of the assumption that intercept point a is equal to 0.

These assumptions are tested using a Student test, generally associated with a risk of error of 1%. A risk of 5% can prove more realistic in some cases.

Let [dof; 1%] be a Student bilateral variable associated with a risk of error of 1% for a number of degrees of freedom (dof).

Step 1: calculations

Calculation of the comparison criterion on the slope at 1

Calculation of the comparison criterion on the intercept point at 0

Calculation of the Student critical value: Tcritical, bilateral[ p-2; 1%]

Step 2: interpretation

  • If is lower than , then the slope of the regression line is equivalent to 1
  • If  is lower than , then the intercept point of the regression line is equivalent to 0.

If both conditions are true, then the overlap line is equivalent = y = x, and the method is deemed to be specific.

Note 1 Based on these results, a mean overlap rate can be calculated to quantify the specificity. In no case should it be used to "correct" the results. This is because if a significant bias is detected, the alternative method cannot be validated in relation to an efficiency rate of 100%.

Note 2 Since the principle of the test consists in calculating a straight line, at least three levels of addition have to be taken, and their value must be correctly chosen in order to obtain an optimum distribution of the points.

5.3.2.3.1.3.3.    Overlap line graphics

Example of specificity

 

5.3.2.3.2.                 Study of the influence of other compounds on the measurement result

5.3.2.3.2.1.           Scope

If the laboratory suspects the interaction of compounds other than the analyte, an experiment schedule can be set up to test the influence of various compounds. The experiment schedule proposed here enables a search for the influence of compounds defined a priori: thanks to its knowledge of the analytical process and its know-how, the laboratory should be able to define a certain number of compounds liable to be present in the wine and to influence the analytical result.

5.3.2.3.2.2.           Basic protocol and calculations

Analyze n wines in duplicate, before and after the addition of the compound suspected of having an influence on the analytical result; n must at least be equal to 10.

The mean values Mxi of the 2 measurements and made before the addition shall be calculated first, then the mean values Myi of the 2 measurements and made after the addition, and finally the difference between the values and .

The results of the experiment can be reported as indicated in the following table:

Samples

x: Before addition

y: After addition

Means

Difference

Rep1

Rep2

Rep1

Rep2

x

y

d

1

x1

x’1

y1

y’1

Mx1

My1

d1 = Mx1-My1

...

...

...

...

...

...

...

...

i

xi

x’i

yi

y’i

Mxi

Myi

di = Mxi-Myi

...

...

...

...

...

...

...

...

n

xn

x’n

yn

y’n

Mxn

Myn

dn =  Mxn-Myn

The mean of the results before addition

The mean of the results after addition

Calculate the mean of the differences

Calculate the standard deviation of the differences

Calculate the Z-score

5.3.2.3.2.3.           Interpretation

If the is 2, the added compound can be considered to have a negligible influence on the result of analysis with a risk of 5%.

If the is 2, the added compound can be considered to influence the result of analysis with a risk of 5%.

Note Interpreting the is possible given the assumption that the variations obey a normal law with a 95% confidence rate.

Example: Study of the interaction of compounds liable to be present in the samples, on the determination of fructose glucose in wines by Fourier transform infrared spectrophotometry (FTIR).

Before addition

+ 250 mg.L-1 potassium sorbate

+ 1 g. L-1 salicylic acid

Differences

vin

rep1

rep2

rep1

rep2

rep1

rep2

sorbate diff

salicylic diff

1

6.2

6.2

6.5

6.3

5.3

5.5

0.2

-0.8

2

1.2

1.2

1.3

1.2

0.5

0.6

0.05

-0.65

3

0.5

0.6

0.5

0.5

0.2

0.3

-0.05

-0.3

4

4.3

4.2

4.1

4.3

3.8

3.9

-0.05

-0.4

5

12.5

12.6

12.5

12.7

11.5

11.4

0.05

-1.1

6

5.3

5.3

5.4

5.3

4.2

4.3

0.05

-1.05

7

2.5

2.5

2.6

2.5

1.5

1.4

0.05

-1.05

8

1.2

1.3

1.2

1.1

0.5

0.4

-0.1

-0.8

9

0.8

0.8

0.9

0.8

0.2

0.3

0.05

-0.55

10

0.6

0.6

0.5

0.6

0.1

0

-0.05

-0.55

Potassium sorbate

Md  =

0.02

 

Sd =

0.086

 

  =

0.23

 <2

 

 

 

Salicylic acid

Md =

-0.725

 

Sd =

0.282

 

=

2.57

 >2

In conclusion, it can be stated that potassium sorbate does not influence the determination of fructose glucose by the FTIR gauging studied here. On the other hand, salicylic acid has an influence, and care should be taken to avoid samples containing salicylic acid, in order to remain within the scope of validity for the gauging under study.

5.3.3.      Study of method accuracy

5.3.3.1.                        Presentation of the step

5.3.3.1.1.                 Definition

Correlation between the mean value obtained with a large series of test results and an accepted reference value.

5.3.3.1.2.                 General principles

When the reference value is output by a certified system, the accuracy study can be regarded a traceability link. This applies to two specific cases in particular:

  • Traceability to certified reference materials: in this case, the accuracy study can be undertaken jointly with the linearity and calibration study, using the experiment schedule described for that study.
  • Traceability to a certified interlaboratory comparison analysis chain.

The other cases, i.e. which use references that are not based on certified systems, are the most widespread in routine oenological laboratories. These involve comparisons:

  • Comparison with a reference method
  • Comparison with the results of an uncertified interlaboratory comparison analysis chain.
  • Comparison with internal reference materials, or with external uncertified reference materials.

5.3.3.1.3.                 Reference documents

  • NF V03-110 Standard. intralaboratory validation procedure for an alternative method in relation to a reference method.
  • NF V03-115 Standard, Guide for the use of reference materials.
  • ISO 11095 Standard, linear calibration using reference materials.
  • ISO 8466-1 Standard. Water quality – Calibration and evaluation of analytical methods and estimation of performance characteristics
  • ISO 57025 Standard, Exactitude of results and methods of measurement

5.3.3.2.                        Comparison of the alternative method with the OIV reference method

5.3.3.2.1.                 Scope

This method can be applied if the laboratory uses the OIV reference method, or a traced, validated method, whose performance quality is known and meets the requirements of the laboratory’s customers.

To study the comparative accuracy of the two methods, it is advisable first of all to ensure the quality of the repeatability of the method to be validated, and to compare it with the reference method. The method for carrying out the repeatability comparison is described in the chapter on repeatability.

 

5.3.3.2.2.                 Accuracy of the alternative method compared with the reference method

5.3.3.2.2.1.           Definition

Accuracy is defined as the closeness of agreement between the values obtained by the reference method and that obtained by the alternative method, independent of the errors of precision of the two methods.

5.3.3.2.2.2.           Scope

The accuracy of the alternative method in relation to the reference method is established for a field of application in which the repeatabilities of the two methods are constant.

In practice, it is therefore often advisable to divide the analyzable range of values into several sections or "range levels" (2 to 5), in which we may reasonably consider that the repeatabilities of the methods are comparable to a constant.

5.3.3.2.2.3.           Basic protocol and calculations

In each range level, accuracy is based on a series of n test materials with concentration values in analyte covering the range level in question. A minimum number of 10 test materials is required to obtain significant results.

Each test material is to be analyzed in duplicate by the two methods under repeatable conditions.

A calculation is to be made of the mean values of the 2 measurements et made using the alternative method and the mean values of the 2 measurements et made using the reference method, then the difference di is to be calculated between the values and .

The results of the experiment can be reported as in the following table:

Test material

x: Alternative method

y: Reference method

Means

Difference

Rep1

Rep2

Rep1

Rep2

x

y

d

1

x1

x’1

y1

y’1

Mx1

My1

d1 = Mx1 - My1

...

...

...

...

...

...

...

...

i

xi

x’i

yi

y’i

Mxi

Myi

di = Mxi - Myi

...

...

...

...

...

...

...

...

n

xn

x’n

yn

y’n

Mxn

Myn

dn =  Mxn - Myn

The following calculations are to be made

- The mean of the results for the alternative method

  • The mean of the results for the reference method

  • Calculate the mean of the differences

  • Calculate the standard deviation of the differences

  • Calculate the

5.3.3.2.2.4.           Interpretation

  • If the is lower than or equal to 2.0, it can be concluded that the accuracy of one method in relation to the other is satisfactory, in the range level under consideration, with a risk of error α = 5%.
  • If the is higher than 2.0, it can be concluded that the alternative method is not accurate in relation to the reference method, in the range level under consideration, with a risk of error α = 5%.

Note Interpreting the is possible given the assumption that the variations obey a normal law with a 95% confidence rate.

Example: Study of the accuracy of FTIR gauging to determine glucose and fructose in relation to the enzymatic method. The first range level covers the scale from 0 to 5 g.L-1 and the second range level covers a scale from 5 to 20 g.L-1.

Wine

FTIR 1

IRTF2

Enz 1

Enz 2

di

1

0

0.3

0.3

0.2

-0.1

2

0.2

0.3

0.1

0.1

0.2

3

0.6

0.9

0.0

0.0

0.7

4

0.7

1

0.8

0.7

0.1

5

1.2

1.6

1.1

1.3

0.2

6

1.3

1.4

1.3

1.3

0.0

7

2.1

2

1.9

2.1

0.0

8

2.4

0

1.1

1.2

0.1

9

2.8

2.5

2.0

2.6

0.3

10

3.5

4.2

3.7

3.8

0.1

11

4.4

4.1

4.1

4.4

0.0

12

4.8

5.4

5.5

5.0

-0.2

 

 

 

 

 

 

Md

0.13

 

 

 

 

Sd

0.23

 

 

 

 

Zscore

0.55

 < 2

 

 

 

Wine

FTIR 1

IRTF2

Enz 1

Enz 2

di

1

5.1

5.4

5.1

5.1

0.1

2

5.3

5.7

5.3

6.0

-0.2

3

7.7

7.6

7.2

7.0

0.6

4

8.6

8.6

8.3

8.5

0.2

5

9.8

9.9

9.1

9.3

0.6

6

9.9

9.8

9.8

10.2

-0.1

7

11.5

11.9

13.3

13.0

-1.4

For the two range levels, the is lower than 2. The FTIR gauging for the determination of fructose glucose studied here, can be considered accurate in relation to the enzymatic method.

5.3.3.3.                        Comparison by interlaboratory tests

5.3.3.3.1.                 Scope

Interlaboratory tests are of two types:

  • Collaborative studies relate to a single method. These studies are carried out for the initial validation of a new method, mainly in order to define the standard deviation of interlaboratory reproducibility (method). The mean m could also be given.
  • Interlaboratory comparison analysis chains, or aptitude tests. These tests are carried out for the validation of a method adopted by the laboratory, and the routine quality control (see § 5.3.3.3). The resulting value is the interlaboratory mean m, as well as the standard interlaboratory reproducibility and intermethod deviation SRinter.

By participating in an analysis chain, or in a collaborative study, the laboratory can exploit the results in order to study the accuracy of a method, in order to ensure its validation first of all, and its routine quality control.

If the interlaboratory tests are carried out within the framework of a certified organization, this comparison work can be used for method traceability.

5.3.3.3.2.                 Basic protocol and calculations

To obtain a sufficient comparison, it is recommended to use a minimum number of 5 test materials over the period.

For each test material, two results are provided:

  • The mean of all the laboratories with significant results m
  • The standard deviation for interlaboratory reproducibility 

The test materials are analyzed with p replicas by the laboratory, these replicas being carried out under repeatable conditions. p must at least be equal to 2.

In addition, the laboratory must be able to check that the intralaboratory variability (intralaboratory reproducibility) is lower than the interlaboratory variability (interlaboratory reproducibility) given by the analysis chain.

For each test material, the laboratory calculates the , given by the following formula:

The results can be reported as indicated in the following table:

Test material

Rep1

...

Rep j

...

Rep p

Lab mean

Chain mean

Standard deviation

Zscore

1

x11

...

x1j

...

x1p

m1

SR-inter(1)

...

...

...

...

...

...

...

...

...

...

i

xi1

...

xij

...

xip

mi

SR-inter(i)

...

...

...

...

...

...

...

...

...

...

n

xn1

...

xnj

...

xnp

mn

SR-inte(n)

5.3.3.3.3.                 Interpretation

If all the results are lower than 2, the results of the method being studied can considered identical to those obtained by the laboratories having produced significant results.

Note Interpreting the is possible given the assumption that the variations obey a normal law with a 95% confidence rate.

Example: An interlaboratory analysis chain outputs the following results for the free sulfur dioxide parameter, on two samples.

Samples

Lab mean

Chain mean

Standard deviation

1

34

34

33

34

33.75

32

6

0.29 <2

2

26

27

26

26

26.25

24

4

0.56 <2

It can be concluded that on these two samples, the comparison with the analysis chain is satisfactory.

5.3.3.4.                        Comparison with reference materials

5.3.3.4.1.                 Scope

In situations where there is no reference method (or any other method) for a given parameter, and the parameter is not processed by the analysis chains, the only remaining possibility is comparison of the results of the method to be validated with accepted internal or external material reference values.

The reference materials, for example, could be synthetic solutions established with class-A glassware, and/or calibrated metrology apparatus.

In the case of certified reference materials, the comparison constitutes the traceability value, and can be carried out at the same time as the gauging and linearity study.

5.3.3.4.2.                 Basic protocol and calculations

It is advisable to have n reference materials for a given range level, in which it can be reasonably estimated that repeatability is comparable to a constant; n must at least be equal to 10.

Analyze in duplicate each reference material.

Calculate the mean values for the 2 measurements and carried out using the alternative method.

Define the accepted value for the reference material.

The results can be reported as indicated in the following table:

Reference material

x: Alternative method

T: Accepted value of the reference material

Difference

Rep1

Rep2

Mean x

d

1

x1

x’1

Mx1

T1

d1 = Mx1-T1

...

 

 

...

...

...

i

xi

x’i

Mxi

Ti

di = Mxi-Ti

...

 

 

...

...

...

n

xn

x’n

Mxn

Tn

dn =  Mxn-Tn

The mean of the results of the alternative method

The mean of the accepted values of reference materials

Calculate the mean of the differences