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JVT_August2007.qxd 8/11/07 2:41 PM Page 286 Application of Probability of Passing Multiple Stage Tests in Benchmarking and Validation of Processes B Y P R A M O T E C H O L AY U D T H ❖ INTRODUCTION The three basic principles of quality assurance (QA) in the Food and Drug Administration1 (FDA) and World Health Organization2 (WHO) validation guidelines may be reproduced as follows: 1. Quality, safety, and efficacy must be designed and built into the product. 2. Quality cannot be inspected or tested into the product. 3. Each step of the manufacturing process must be controlled to maximize the probability that the finished product meets all quality and design specifications. This article will discuss the scientific aspect of the last QA principle mentioned above and describe how to demonstrate the probability of meeting the product specifications, for multiple stage tests, for future quality control (QC) samples using process optimization or validation test results. Demonstrating the probability will have the following benefits: • Providing a scientifically predictive tool for future samples without re-sampling or re-testing • Evaluating the product quality level, and subsequently, the benchmarking of the manufacturing processes • Providing the principle for establishing validation acceptance criteria 286 Journal of Validation Technology There is a direct correlation between product quality level and the probability of meeting a certain specification. For a high quality level, the probability level for a QC sample to meet the specification limit will be high or, in other words, will have a high percentage of QC samples (e.g., 90 to 95%), when taken in a large number, passing that particular test limit. Specification limits are normally based on those of the compendial monographs that include multiple stage tests. The tests have been established based on normality assumption resulting in a typical sampling plan with multiple individual dosage units – e.g., Content Uniformity.3 The assumption is the key statistical fundamental for computation of the probability of passing these multi-stage tests. Compendial Multiple Stage Tests The United States Pharmacopeia (USP) multiple stage tests to be discussed in this article are noted as follows: • <905> Uniformity of Dosage Units (Content Uniformity) – two-stage test • <711> Dissolution – three-stage test • <701> Disintegration – two-stage test • <755> Minimum Fill – two-stage test • <698> Deliverable Volume – two-stage test The test selection and acceptance criteria may be summarized as seen in Figures 1-7: JVT_August2007.qxd 8/11/07 2:41 PM Page 287 Pramote Cholayudth Figure 1 Uniformity of Dosage Units: Test Selection Criteria rd USP 20 (3 sup.) – 30 Dosage Form Type Uncoated Tablet Coated Hard Capsule Soft USP 27 – 30 Subtype ≥ 50 mg & ≥ 50 % – WV WV CU WV CU CU CU CU WV WV CU WV CU CU CU CU CU CU CU CU WV WV WV WV Film Others – Sus, Emul Solution < 50 mg OR ≥ 25 mg OR < 25 mg OR ≥ 25 % < 50 % < 25 % WV: Weight Variation, CU: Content Uniformity Figure 2 Uniformity of Dosage Units: Test Acceptance Criteria USP 20 (3rd sup.) – 30 USP 27 – 30 (New Criteria) USP Criteria Stage 1: Assay 10 units. Pass if the following criteria are met: 1) RSD is not more than 6.0% (n = 10) 2) Not more than c unit(s) is outside 85 – 115% LC and no unit is outside 75 – 125% LC Where: c = 0 for tablet and 1 for capsule 1) M - X + 2.4s ≤ 15 2) X min ≥ 0.75M and Xmax ≤ 1.25M Where: M = reference value s = standard deviation X = content uniformity data mean Xmin = minimum Xmax = maximum of 10 units LC: Label Claim USP Criteria Stage 2: Assay 20 additional units. Pass if, for all 30 units, the following criteria are met: A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 287 JVT_August2007.qxd 8/11/07 2:41 PM X = content uniformity data mean Page 288 Xmin = minimum Xmax = maximum of 10 units Pramote Cholayudth Figure 2 (Continued) Uniformity of Dosage Units: Test Acceptance Criteria USP Criteria Stage 2: Assay 20 additional units. Pass if, for all 30 units, the following criteria are met: Acceptance Value (AV) M - X + ks ≤ L1 X min ≥ (1- L2* 0.01) M, Xmax ≤ (1+ L2* 0.01) M k = 2.4 (n = 10) & 2.0 (n = 30), L1 = 15, L2 = 25 The new criterion: 1) will provide at least 95% confidence (95% prediction interval) that a future test result will fall within 0.85M - 1.15M% LC range while the criterion 2) will identify the presence of individual units outside 0.75M - 1.25M% LC range. Figure 3 Uniformity of Dosage Units: Reference Value Criteria (USP 27 - 30) Case Target (T) ≤ 101.5 % LC Target (T) > 101.5 % LC Subcase M 98.5 ≤ X ≤ 101.5 X ks X < 98.5 98.5 98.5 - X +ks X > 101.5 101.5 X - 101.5+ks 98.5 ≤ X ≤ T X < 98.5 X >T 288 AV = Journal of Validation Technology X 98.5 T ks 98.5 - X +ks X - T+ks JVT_August2007.qxd 8/11/07 2:41 PM Page 289 Pramote Cholayudth Figure 4 Dissolution: Test Acceptance Criteria Stage 1 (S1): Test 6 units. Pass if each unit is not less than Q+5%. Stage 21 (S (S1): ): Test 6 units. Pass if each unit is not less than Q+5%. Stage 2 Test 6 additional units. Pass if mean of 12 units (S1+S2) is not less than no unit isunits. less than Stage 2 (S ): Q% Testand 6 additional PassQ-15%. if mean of 12 units (S1+S2) is not less than Stage 1 (S12): Test 6 units. Pass if each unit is not less than Q+5%. Q% and no unit is units. less than 12 additional PassQ-15%. if mean of 24 units (S1+S2+S3) is not less Stage 3 (S ): Test Stage 2 (S23): Test 6 additional units. Pass if mean of 12 units (S1+S than 2) is not less than Q% and not more than two units are less than of 24 units (SQ-15% notunit lessis less Stage 3 (S3): Test 12 additional units. Pass if mean 1+S2+Sand 3) is no Q% and no unit is less than Q-15%. than than Q-25%. Q% and not more than two units are less than Q-15% and no unit is less 12 additional units. Pass if mean of 24 units (S1+S2+S3) is not less Stage 3 (S3): Test than Q-25%. Figure 5 than Q% and not more than two units are less than Q-15% and no unit is less than Q-25%. Disintegration: Test Acceptance Criteria Stage 1 (S1): Test 6 units. Pass if all of the units have disintegrated completely within the time iflimit. not units morehave than disintegrated 2 units fail, continue with within stage the 2. Stage 1 (S1): disintegration Test 6 units. Pass all ofIf the completely disintegration time limit. If not more than 2 units fail, continue with stage 2. Stage 2 (S ): Test 12 additional units. Pass if not less than 16 of the total of 18 units tested Stage 1 (S12): Test 6 units. Pass if all of the units have disintegrated completely within the completely disintegration limit. Test 12 additional units.within Pass the if not less than 16 time of the total of 18 units tested Stage 2 (S2): disintegrate disintegration time limit. If not more than 2 units fail, continue with stage 2. disintegrate completely within the disintegration time limit. Stage 2 (S2): Test 12 additional units. Pass if not less than 16 of the total of 18 units tested disintegrate completely within the disintegration time limit. Figure 6 to Acceptance creams, gels,Criteria lotions, ointments, etc. MinimumApplied Fill: Test Applied1:toCheck creams, Stage 10 gels, units.lotions, Pass ifointments, mean of alletc. 10 units is not less than 100% of label amount no 10 unitunits. is less thanif P% of of label amount. Stage 1: and Check Pass mean all 10 units is not less than 100% of label amount Applied to creams, gels, lotions, ointments, etc. and no20 unit is less than P%Pass of label amount. Stage 2: Check additional units. if mean of all 30 units is not less than 100% Stage 1: Check 10 units. Pass if mean of all 10 units is not less than 100% of label amount of label amount and not more than 1 unit less of label amount. Stage 2: Check 20 additional units. Pass if mean ofis all 30than unitsP% is not less than 100% and no unit is less than P% of label amount. P = 90% of not more thanis60 g or mLP% perofcontainer, of label label amount amount for andcontents not more than 1 unit less than label amount. Stage 2: Check additional units. Pass mean of all60 30g units isper not less 100% P of amount for between more than 60mL and 150 g orthan mL per container. P == 95% 90% of label label20 amount for contents contents notifmore than or container, not morebetween than 1 unit is less P% 150 of label P = 95% of oflabel labelamount amountand for contents more thanthan 60 and g or amount. mL per container. P = 90% of label amount for contents not more than 60 g or mL per container, P = 95% of label amount for contents between more than 60 and 150 g or mL per container. Figure 7 Deliverable Volume: Test Acceptance Criteria Applied to oral liquids, e.g., solutions, syrups, suspensions, and emulsions of contents not more than 250 mL per container. Stage 1: Check 10 units. Pass if mean of all 10 units is not less than 100% of label amount and no unit is less than 95% of label amount. For single-unit containers: no unit is more than 110% of label amount. Stage 2: Check 20 additional units. Pass if mean of all 30 units is not less than 100% of label amount and not more than 1 unit is less than 95% of label amount. For single-unit containers: not more than 1 unit is more than 110%, but not more than 115% of label amount. A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 289 JVT_August2007.qxd 8/11/07 2:41 PM Page 290 Pramote Cholayudth Stratified Sampling Plans Evaluation of the process to be optimized or validated will require a process sampling. In either batch (e.g., mixing) or continuous (e.g., tableting or capsulation) operation steps of manufacturing processes, sampling is generally undertaken in a way that n unit(s) from each of L locations are taken. This is called a stratified sampling plan where n = 1 and > 1 is for sampling plan 1 and 2 respectively (Figures 8 and 9). The analysts that test the samples must keep the test results in the as-is sequence so that further statistical evaluation can be made. Validation samples may also be taken by multiple samplings – e.g., top, middle, and bottom in batch operations or beginning, middle, and end in continuous operations for normal or less critical quality attributes (Figure 9). Figure 8 Stratified Sampling Plans Sampling Plan # Individual Sample Size (n) Number of Sampling Location (L) 1* 1 L L >1 L (> 1)L 2* Total Sample Size (N = nL) * SUGGESTED BY BERGUM. 4 Figure 9 Comparison of Quality Assurance and Validation Sampling Plans Quality Attributes Quality Attributes Evaluation QA Sampling Dose Uniformity Critical Composite Dissolution Critical Composite Degradents Critical (depend on product) Composite Assay Moisture Microbial Normal Normal Normal Normal Composite Composite Composite FDA Guidance Test result is evaluated for probability of meeting specification (3) Test result is evaluated statistically against specification This figure is reproduced and modified from reference #13. (1) (2) 290 Journal of Validation Technology Validation Sampling Stratified samples 20 locations (L = 20) n = 3 each location1, 2 Stratified samples 20 locations (L = 20) n = 2 each location2 Stratified samples 20 locations (L = 20) n = 1 each location3 Beginning, Middle, End Beginning, Middle, End Beginning, Middle, End Beginning, Middle, End JVT_August2007.qxd 8/11/07 2:41 PM Page 291 Pramote Cholayudth Probability Of Passing Compendial Multiple Stage Tests Probability of passing Content Uniformity test may be statistically defined as below: The multi-stage tests determined to be critical, – e.g., Content Uniformity and Dissolution, require to be performed during the validation exercise. Establishing the validation acceptance criteria is based on the tightened limits that will generate the high probability level for passing the tests. The passing level can be applied for use in benchmarking purpose of the processes – i.e., passing the specifications at consistent probabilities for either the two tests or the remainders (e.g., Disintegration, Minimum Fill, and Deliverable Volume) across a number of validation or other production batches will allow us to determine the benchmark of the manufacturing processes. ➣ Probability of passing USP 20 (3rd sup.) - 30 criteria ➣ Content Uniformity (USP 20 - 30) = Prob (first ten tablets meet stage 1 criteria or all thirty tablets meet stage 2 criteria) ≥ MAX{Prob (first ten tablets meet stage 1 criteria), Prob (all thirty tablets meet stage 2 criteria)} The next steps will involve the estimation of the upper and lower bounds for the sample mean and the upper bound for sample SD. Detailed information can be searched from reference # 10 from which some key part is reproduced on the next page: As discussed earlier, the normality assumption and the testing plans comprising multiple individual dosage units will provide the statistical advantage for further computation of the probability of passing the multi-stage tests. James S. Bergum introduced how to compute the probability of passing the multiple stage tests for a QC sample in a paper entitled Constructing Acceptance Limits for Multiple Stage Tests. Bergum method is one of the most important tools for Content Uniformity and Dissolution assessment. His validated SASTM program (CuDAL) for computation of the acceptance limits for sample means and relative standard deviations (RSDs) in response to the entry for sample size, confidence level, and probability level9 was provided. Using Bergum method, an MS Excel® program for determination of the probability of passing the USP tests was developed by the author and published in 2004 and 2006.10, 11 The program is directly applicable to sampling plan 1 – i.e., one dosage unit (n = 1) from each of L locations (Figure 10). However, for the data generated from sampling plan 2 (n > 1), one may use the program after estimation for the upper and lower bounds for sample mean and standard deviation (SD) where the use of analysis of variance (ANOVA) approach (one-way nested random effects model) is applied (Figure 11). A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 291 JVT_August2007.qxd 8/11/07 2:41 PM Page 292 Pramote Cholayudth Lower bound for probability of passing CU test for TABLETS = MIN(Prob1,Prob2) Probability using MS Excel =MAX((FDIST(10/((0.06^2)*(1+10*(Mean/Sigma)^2)),(1+10*(Mean/Sigma)^2)^2/(1+2*10*(Mean/Sigma) ^2),10-1))+((NORMSDIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^10)-1,(FDIST(30/ ((0.078^2)*(1+30*(Mean/Sigma)^2)),(1+30*(Mean/Sigma)^2)^2/(1+2*30*(Mean/Sigma)^2),30-1))+ ((NORMSDIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^30+COMBIN(30,1)*((NORMS DIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^29)*(((NORMSDIST((Mean-75)/Sigma)NORMSDIST((Mean-85)/Sigma))+(NORMSDIST((125-Mean)/Sigma)-NORMSDIST((115-Mean)/ Sigma)))^1))-1,0) ……………… (I) Where: Prob1: Substitute 'Sigma' with upper bound for sample SD and substitute 'Mean' with upper bound for sample mean, joint confidence level for both upper bounds = 95% (i.e., confidence level for each bound = square root of 95%) Prob2: Substitute 'Sigma' with upper bound for sample SD and substitute 'Mean' with lower bound for sample mean, joint confidence level for upper and lower bounds = 95% (i.e., confidence level for each bound = square root of 95%) Upper bound (UB) for sample SD (SD) =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Upper bound for sample mean (M) =M+UB*NORMSINV(1-(1-0.95^0.5)/2)/n^0.5 Lower bound for sample mean (M) =M-UB*NORMSINV(1-(1-0.95^0.5)/2)/n^0.5 Lower bound for probability of passing CU test for CAPSULES = MIN(MAX(Part1/1,Part2/1,0),MAX(Part1/2,Part2/2,0)) Part1: Probability using MS Excel =(FDIST(10/((0.06^2)*(1+10*(Mean/Sigma)^2)),(1+10*(Mean/Sigma)^2)^2/(1+2*10*(Mean/ Sigma)^2),10-1))+((NORMSDIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^10 +COMBIN(10,1)*((NORMSDIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^9)* (((NORMSDIST((Mean-75)/Sigma)-NORMSDIST((Mean-85)/Sigma))+(NORMSDIST((125Mean)/Sigma)-NORMSDIST((115-Mean)/Sigma)))^1))-1 ……………… (II) Part2: Probability using MS Excel =(FDIST(30/((0.078^2)*(1+30*(Mean/Sigma)^2)),(1+30*(Mean/Sigma)^2)^2/(1+2*30*(Mean Sigma)^2),30-1))+((NORMSDIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^30 +COMBIN(30,1)*((NORMSDIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^29) *(((NORMSDIST((Mean-75)/Sigma)-NORMSDIST((Mean-85)/Sigma))+(NORMSDIST((125Mean)/Sigma)-NORMSDIST((115-Mean)/Sigma)))^1)+COMBIN(30,2)*((NORMSDIST((Mean85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^28)*(((NORMSDIST((Mean-75)/Sigma)NORMSDIST((Mean-85)/Sigma))+(NORMSDIST((125-Mean)/Sigma)-NORMSDIST((115-Mean) /Sigma)))^2)+COMBIN(30,3)*((NORMSDIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/ Sigma)-1)^27)*(((NORMSDIST((Mean-75)/Sigma)-NORMSDIST((Mean-85)/Sigma))+(NORMS DIST((125-Mean)/Sigma)-NORMSDIST((115-Mean)/Sigma)))^3))-1 ……………… (III) Where: Part1/1 & Journal Part 2/1: 292 of Validation Technology Substitute, in Part1 & Part2, 'Sigma' with upper bound for sample SD and substitute 'Mean' with upper bound for sample mean, joint confidence level for both upper bounds = 95% Part1/2 & Part 2/2: Substitute, in Part1 & Part2, 'Sigma' with upper bound for sample SD and substitute 'Mean' with lower bound for sample mean, joint confidence level for upper and lower bounds = 95% JVT_August2007.qxd 8/11/07 2:41 PM Page 293 Mean)/Sigma)-NORMSDIST((115-Mean)/Sigma)))^1)+COMBIN(30,2)*((NORMSDIST((Mean- 85)/Sigma)+NORMSDIST((115-Mean)/Sigma)-1)^28)*(((NORMSDIST((Mean-75)/Sigma)NORMSDIST((Mean-85)/Sigma))+(NORMSDIST((125-Mean)/Sigma)-NORMSDIST((115-Mean) /Sigma)))^2)+COMBIN(30,3)*((NORMSDIST((Mean-85)/Sigma)+NORMSDIST((115-Mean)/ Pramote Cholayudth Sigma)-1)^27)*(((NORMSDIST((Mean-75)/Sigma)-NORMSDIST((Mean-85)/Sigma))+(NORMS DIST((125-Mean)/Sigma)-NORMSDIST((115-Mean)/Sigma)))^3))-1 ……………… (III) Where: Part1/1 & Part 2/1: Substitute, in Part1 & Part2, 'Sigma' with upper bound for sample SD and substitute 'Mean' with upper bound for sample mean, joint confidence level for both upper bounds = 95% Part1/2 & Part 2/2: Substitute, in Part1 & Part2, 'Sigma' with upper bound for sample SD and substitute 'Mean' with lower bound for sample mean, joint confidence level for upper and lower bounds = 95% Upper bound (UB) for sample SD (SD) =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Upper bound for sample mean (M) =M+UB*NORMSINV(1-(1-0.95^0.5)/2)/n^0.5 Lower bound for sample mean (M) =M-UB*NORMSINV(1-(1-0.95^0.5)/2)/n^0.5 To demonstrate the application of Bergum method using the MS Excel program, the scenarios for sampling plans 1 and 2 are provided in Figures 10 and 11. Figure 10 Example for Statistical Evaluation of Data from Sampling Plan 1 n 1 1, 2, 3 L 60 Sample Mean (% LC) 100.68 RSD (%) 3.42 SD (% LC) 3.44 Substitute in (I); probability (lower bound) of passing CU test: 99.96% Note: In MS Excel formulae, the symbol ‘=’ must be attached to the formula itself A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 293 JVT_August2007.qxd 8/11/07 2:41 PM Page 294 Pramote Cholayudth Figure 11 Procedures for Statistical Evaluation of Data from Sampling Plan 2 Given Data: n = 3, L = 20, Required C onfidence Level (1- ): 95% Degree of freedom or DF (between-location): L -1 = 19 Degree of freedom or DF (within -location): L (n-1) = 20* 2 = 40 (1 − 2p)(1 − q)(1 − q) = 1 − α = 0.95 Given and q = 2p (1-2p) = (1-q) = (0.95) 1/3 = 0.983048, 1-p = 0.991524 σ 2 = σ e2 + nσ 2L N = nL = 60 1− 2p : confidence level for sample mean, 1− q : confidence level for within & between - location variability, confidence level = 0.95 1 − α : joint σ 2 : total variance, σ 2e : expect ed mean-squared error (within), σ 2L : expected location mean square (between), n = 3 Ue = L ( n − 1)se2 χ12− q, L ( n −1) = 40 se2 χ 02.983048,40 = 1.708se2 (L − 1)s2L 19s2L UL = 2 = 2 = 2.281s2L χ1− q,( L −1) χ 0.983048,19 The upper lim it for UL UL σ2 σ2 σ 2 ( UL σ2 U e : upper limit error, for σ 2e , s e2 : mean-squared U L : upper lim it for σ 2L , s 2L : location mean square ( see Excel formulae below and how to estimate se2 & s2L in Figures 17-19) ) is based on the folowing conditions 1 1 2 1 = (1 − ) U e + U L = U e + U L n n 3 3 = Ue If Ue < UL If Ue ≥ UL Upper bound (UB) for sample SD (SD) = square root of Confidence limits for sample mean ( x ) = Upper bound for sample mean ( x ) = UL σ2 : x ±(U L /N) 1/2Z 0.991524 x +0.308(U L )1/2 1/2 Lower bound for sample mean ( x ) = x -0.308(UL ) Z 0.991524 = 2.388 (see Excel formula below), N = 60 Substitute the upper and lower bounds in (I) as detailed in Fi gures 17 through 19. In Excel, DF/CHIINV(0.95^(1/3),DF) =40/CHIINV(0.95^(1/3),40) = 1.708 In Excel, DF/CHIINV(0.95^(1/3),DF) =19/CHIINV(0.95^(1/3),19) = 2.281 In Excel, NORMSINV(1 -(1-0.95^(1/3))/2) = 2.388 Note: More reading in Chapter 5 of reference #5 is recommended. Using Bergum method and MS Excel program will help us imagine how each of RSD values at various means will generate the probability distributions for passing the content uniformity test. The distributions are illustrated in Figures 12 through 15. 294 Journal of Validation Technology JVT_August2007.qxd 8/11/07 2:41 PM Page 295 Pramote Cholayudth Figure 12 Probability of Passing Content Uniformity Test Distributions: Tablets Figure 13 Probability of Passing Content Uniformity Test Distributions: Tablets Figure 14 Probability of Passing Content Uniformity Test Distributions: Capsules A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 295 JVT_August2007.qxd 8/11/07 2:41 PM Page 296 Pramote Cholayudth Figure 15 Probability of Passing Content Uniformity Test Distributions: Capsules For the as-is Content Uniformity (CU) data, the RSD limit, as part of the validation acceptance criteria, may be customized based on the designed probability levels, – e.g., 50% or 90%, for passing the tests. The designed level (50% in Figures 13 and 15, 90% in Figures 12 and 14) will cross the distribution curve lines where one of the RSD values can be determined as part of the validation acceptance criteria. For example, from Figures 13 and 15, the RSD limit of not more than 5.6% and 6% may be established for tablet and capsule content uniformity test, respectively. In Figures 12 and 14, the 90% probability level may be determined as the benchmark of the process. The MS Excel program used for computation of the probability of passing the content uniformity test for tablets and capsules may be downloaded from the website in reference # 14. As indicated earlier, one should realize that the program is applied to sampling plan 1. Sampling plan 1 may be accomplished using properly designed techniques – e.g., taking 1x60 instead of 3x20 units using automatic sampling device. In the PQRI Recommendation Report7 and FDA Draft Guidance for Industry8, the 1st stage of validation sampling plan (plan 2) requires 60 dosage units (n = 3, L = 20) with weight-corrected RSD limit of not more than 6% as part of the acceptance criteria (Figure 16). 296 Journal of Validation Technology To demonstrate how to evaluate sampling plan 2 data, Figures 17 through 19 provide examples for evaluation of the validation test results that are obtained after process validation exercises in the company the author works with. The validation acceptance criteria are completely based on the FDA guidance and PQRI Recommendation Report – i.e.: n = 3, L = 20, RSD ≤ 6.0%, etc. All the validation test results completely meet the recommended acceptance criteria. For further evaluation, the as-is (non-weight corrected) test results require to be analyzed for between – and within-location variability using analysis of variance (ANOVA) approach and then estimated for the upper and lower bounds for sample statistics prior to computing the lower bound for probability of passing the content uniformity tests. For the weight-corrected results, further statistical evaluation is marginally justified. (CONTINUED ON PAGE 300) JVT_August2007.qxd 8/11/07 2:41 PM Page 297 Pramote Cholayudth Figure 16 FDA Draft Guidance Acceptance Criteria (Based on PQRIs) As–is Data Weight Corrected Data Stage 1: Assay 60 units. Pass if the following criteria are met: 1) All individual results are within 75 – 125% LC. 1) Mean of each location is within 90 – 110% target potency (TP). 2) RSD ≤ 6.0%. Stage 2: Assay 80 additional units. Pass if, for all 140 units, the following criteria are met: 1) All individual results are within 75 – 125% LC. 1) Mean of each location is within 90 – 110% target potency (TP). 2) RSD ≤ 6.0%. Rationale for acceptance criteria is as follows: A comparison of each individual to 75.0% and 125.0% of target is used to identify the presence of super-potent or sub-potent units. A value outside 25.0% of the target potency may indicate inadequate blend uniformity. The RSD limit defines the uniformity requirements when there is no betweenlocation variability. A comparison of each location mean to 90.0% - 110.0% of target identifies betweenlocation variability. Note: Weight-corrected data is defined as, for example, a tablet with potency of 19.4 mg and weight of 98 mg = 19.4/98 = 0.198 mg/mg. Label claim is 20 mg per 100 mg tablet (0.20 mg/mg), so the weightcorrected result is (0.198/0.20)*100 = 99% of target blend potency. A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 297 JVT_August2007.qxd 8/11/07 2:41 PM Page 298 Pramote Cholayudth Figure 17 Example for Statistical Evaluation of Data from Sampling Plan 2 (# 1) Tablet Product / Batch # 1: Stratified Sampling Location # Unit # 1 2 3 SQD Unit # 1 2 3 SQD 1 98.01 96.77 98.27 1.29 11 99.44 101.55 99.77 2.58 2 3 98.91 96.37 99.11 97.93 98.96 99.83 0.02 6.01 12 13 100.20 100.86 97.95 98.35 97.25 99.33 4.75 3.20 Average: 99.03% LC 4 97.97 96.80 97.64 0.73 14 101.63 99.04 99.07 4.42 5 97.93 98.52 100.27 2.96 15 97.91 98.57 100.13 2.60 6 96.83 98.85 98.68 2.51 16 101.95 99.73 97.92 8.15 7 101.31 96.48 97.46 13.04 17 102.66 98.03 98.84 12.23 RSD: 1.61% 8 98.74 97.53 95.83 4.27 18 99.55 99.18 99.86 0.23 9 97.87 103.71 98.23 21.42 19 100.65 99.63 101.15 1.20 SQD: Square Deviation Degree of freedom (between-location): L-1 = 19 Degree of freedom (within-location): L(n-1) = 20*2 = 40 Total square deviation: 149.07 (sum of squares of deviations between all individuals and mean) Square deviation (within-location): 96.58 (Total sum of squares of deviations between individuals and mean within each of 20 locations) 2 Mean-squared error (within-location): S e = 96.58/40 = 2.414 Square deviation (between-location): 149.07-96.58 = 52.49 2 Location mean square (between-location): S L = 52.49/19 = 2.763 Upper limit for σ 2 L (UL): 2.281 S 2L = (2.281)(2.763) = 6.302 Upper limit for σ 2 e (Ue): 1.708 S e = (1.708)(2.414) = 4.123 ( Ue < UL, so UL 2 σ2 = 2 3 Therefore, upper bound for total variance ( UL 2 ): (2/3)(4.123)+(1/3)(6.302) = 4.849 σ Upper bound for total SD (UB): (4.849)^1/2 = 2.202* Upper bound for sample mean: 99.03+(0.308)(6.302)^1/2 = 99.80* Lower bound for sample mean: 99.03-(0.308)(6.302)^1/2 = 98.26* * Substitute in (I); probability (lower bound) of passing CU test: 100.00% 298 Journal of Validation Technology 1 Ue + UL ) 3 10 99.44 99.18 98.14 0.95 20 98.35 100.61 100.97 4.03 JVT_August2007.qxd 8/11/07 2:41 PM Page 299 Pramote Cholayudth Figure 18 Example for Statistical Evaluation of Data from Sampling Plan 2 (# 2) Tablet Product / Batch # 2: Stratified Sampling Location # Unit # 1 2 3 SQD Unit # 1 2 3 SQD 1 95.52 97.19 101.28 17.56 11 95.48 95.87 96.68 0.75 2 3 96.57 94.77 97.69 102.02 95.16 97.48 3.21 26.84 12 13 96.87 96.40 99.86 94.57 97.61 98.10 4.85 6.23 Average: 98.43% LC 4 99.82 101.27 97.29 8.11 14 99.44 98.19 98.74 0.79 5 96.73 97.52 99.86 5.30 15 98.41 99.07 98.89 0.23 6 98.83 99.12 98.46 0.22 16 102.75 96.72 99.79 18.18 7 98.44 96.72 97.43 1.49 17 108.56 102.21 103.98 21.48 RSD: 3.04% 8 99.43 96.67 97.33 4.15 18 94.86 93.25 96.34 4.78 9 95.96 95.67 97.94 3.05 19 94.82 102.98 94.88 44.07 10 98.20 99.85 97.04 3.99 20 102.52 106.68 104.13 8.80 SQD: Square Deviation Degree of freedom (between-location): L-1 = 19 Degree of freedom (within-location): L(n-1) = 20*2 = 40 Total square deviation: 528.00 (sum of squares of deviations between all individuals and mean) Square deviation (within-location): 184.09 (Total sum of squares of deviations between individuals and mean within each of 20 locations) 2 Mean-squared error (within-location): S e = 184.09/40 = 4.602 Square deviation (between-location): 528.00-184.09 = 343.91 2 Location mean square (between-location): S L = 343.91/19 = 18.100 Upper limit for σ 2 L 2 (UL): 2.281 S L = (2.281)(18.100) = 41.286 Upper limit for σ 2 e (Ue): 1.708 S e = (1.708)(4.602) = 7.860 ( Ue < UL, soUL 2 σ2 = 2 3 1 Ue + UL ) 3 Therefore, upper bound for total variance ( UL 2 ): (2/3)(7.860)+(1/3)(41.286) = 19.002 σ Upper bound for total SD (UB): (19.002)^1/2 = 4.359* Upper bound for sample mean: 98.43+(0.308)(41.286)^1/2 = 100.41* Lower bound for sample mean: 98.43-(0.308)(41.286)^1/2 = 96.45* * Substitute in (I); probability (lower bound) of passing CU test: 99.25% A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 299 JVT_August2007.qxd 8/11/07 2:41 PM Page 300 Pramote Cholayudth Figure 19 Example for Statistical Evaluation of Data from Sampling Plan 2 (# 3) Tablet Product / Batch # 3: Stratified Sampling Location # Unit # 1 2 3 SQD Unit # 1 2 3 SQD 1 100.48 93.22 97.02 26.37 11 98.38 98.50 98.58 0.02 2 3 97.43 99.47 99.31 105.68 99.85 102.10 3.23 19.43 12 13 101.99 99.72 99.40 97.61 97.76 99.72 9.10 2.97 Average: 99.75% LC 4 99.64 102.91 99.72 6.96 14 101.42 101.53 98.15 7.38 5 101.93 104.99 98.23 22.92 15 102.46 98.17 98.80 10.73 6 101.30 100.19 98.07 5.39 16 97.66 98.27 98.07 0.19 7 101.22 100.35 100.89 0.39 17 103.72 99.46 99.98 10.80 RSD: 2.23% 8 99.66 99.59 99.22 0.11 18 98.71 99.15 104.18 18.47 9 98.31 97.82 100.91 5.52 19 99.81 98.38 99.36 1.07 10 98.24 102.67 102.13 11.68 20 101.31 97.27 94.89 21.07 SQD: Square Deviation Degree of freedom (between-location): L-1 = 19 Degree of freedom (within-location): L(n-1) = 20*2 = 40 Total square deviation: 293.00 (sum of squares of deviations between all individuals and mean) Square deviation (within-location): 183.79 (Total sum of squares of deviations between individuals and mean within each of 20 locations) 2 Mean-squared error (within-location): S e = 183.79/40 = 4.595 Square deviation (between-location): 293.00-183.79 = 109.21 2 Location mean square (between-location): S L = 109.21/19 = 5.748 Upper limit for σ 2 L (UL): 2.281 S Upper limit for σ 2 e (Ue): 1.708 S 2 L 2 e = (2.281)(5.748) = 13.111 = (1.708)(4.595) = 7.848 ( Ue < UL, so UL σ2 = 2 3 1 Ue + UL ) 3 Therefore, upper bound for total variance ( UL 2 ): (2/3)(7.848)+(1/3)(13.111) = 9.602 σ Upper bound for total SD (UB): (9.602)^1/2 = 3.099* Upper bound for sample mean: 99.75+(0.308)(13.111)^1/2 = 100.87* Lower bound for sample mean: 99.75-(0.308)(13.111)^1/2 = 98.63* * Substitute in (I); probability (lower bound) of passing CU test: 99.25% (CONTINUED FROM PAGE 296) Inconsistent probability levels amongst the validation batches are required to initiate an investigation. Well-developed and under-control processes will reproducibly generate the consistent probability levels for passing the test. 300 Journal of Validation Technology For capsule products using the similar sampling plans, estimation for statistics from the test data is conducted in the same way. Substitution can be made in (II) and (III). JVT_August2007.qxd 8/11/07 2:41 PM Page 301 Pramote Cholayudth Content Uniformity (USP 27 - 30) Whatever the new test acceptance criteria will look like, they should conform to their conventional standards. According to Torbeck’s comment,15 by Bergum. As evidenced in his chapter: Statistical Methods for Uniformity and Dissolution Testing; Section V. Future Developments, in reference # 6 (2003). “… the United States Pharmacopeia should not change its philosophical position on single testing. … If statistical procedures were given in the USP, companies would have little incentive to develop better procedures.” “…as part of the international harmonization of test methods, a proposed change to the USP <905> content uniformity test has been made. … In anticipation of this happening, appropriate modifications to the CuDAL approach have been determined to evaluate the newly proposed test.” And Bergum method is a good example for this statement. The approach to approximate the probability of meeting the new test acceptance criteria has been under development His new article on the new test acceptance criteria, when published, will be very interesting to all professionals in the pharmaceutical industry. DISSOLUTION Probability of passing Dissolution test may be statistically defined as below: Probability of passing USP criteria ≥ MAX {P(meeting stage 1), P(meeting stage 2), P(meeting stage 3)} ≥ MAX {P(meeting criteria of stage 1), P(meeting 1st criteria of stage 2) + P(meeting 2nd criteria of stage 2) - 1, P(meeting 1st criteria of stage 3) + P*(meeting 2nd criteria of stage 3) - 1} The next steps will involve the estimation of the lower bound for the sample mean and the upper bound for sample SD. Detailed information can be searched from reference # 11 from which some key part is reproduced below: Probability using MS Excel =MAX((1-NORMSDIST(((Q+5)-Mean)/Sigma))^6,(1-NORMSDIST(((Q-15)Mean)/Sigma))^12+(1-NORMSDIST((12^0.5)*(Q-Mean)/Sigma))-1,(1NORMSDIST(((Q-15)-Mean)/Sigma))^24+COMBIN(24,1)*(1-NORMSDIST(((Q-15)Mean)/Sigma))^23*(NORMSDIST(((Q-15)-Mean)/Sigma)-NORMSDIST(((Q-25)-Mean) /Sigma))+COMBIN(24,2)*(1-NORMSDIST(((Q-15)-Mean)/Sigma))^22*(NORMSDIST(((Q-15)Mean)/Sigma)-NORMSDIST(((Q-25)-Mean)/Sigma))^2+(1-NORMSDIST((24^0.5)*(Q-Mean)/ Sigma))-1) ……………… (IV) Where: ‘Sigma’ is substituted with upper bound for sample SD ‘Mean’ is substituted with lower bound for sample mean Joint confidence level for upper and lower bounds = 95% (i.e., confidence level for each bound = square root of 95%) Upper bound (UB) for sample SD (SD) =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Lower bound for sample mean (M) =M-UB*NORMSINV(1-(1-0.95^0.5))/n^0.5 A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 301 JVT_August2007.qxd 8/11/07 2:41 PM Page 302 Pramote Cholayudth Figure 20 Probability of Passing Dissolution Test: Sampling Plan 1 The dissolution test results obtained from validation batches testing will also require to be estimated for some statistics in the same way, depending on which sampling plan (1 or 2) is employed, prior to computation of the lower bound for the probability. Figure 21 is the example for the dissolution test results from three validation batches in the company where the author provides consulting services. Figure 21 Probability of Passing Dissolution Test: Multiple Sampling Validation Batches Data for Film-Coated Tablets/Multiple Sampling Tablet Batch # 1 (% LC) Batch # 2 (% LC) Batch # 3 (% LC) # Top Middle Bottom Top Middle Bottom Top Middle Bottom 1 102.34 100.10 100.73 100.12 104.60 98.20 100.27 98.96 103.78 2 99.23 100.70 98.36 105.09 99.50 103.68 100.87 101.37 100.46 3 102.94 98.92 103.55 103.63 99.50 102.79 101.33 100.61 97.45 4 101.01 100.55 103.70 104.36 105.62 102.64 101.93 103.17 100.61 5 100.71 98.62 99.55 102.61 98.19 103.97 101.63 100.77 98.96 6 98.79 98.77 101.48 99.39 98.34 103.08 100.87 103.17 102.87 Mean 100.56 101.96 101.06 LB Mean 99.39 100.19 99.95 SD 1.70 2.57 1.61 UB SD 2.54 3.85 2.41 Prob 100.00% 100.00% 100.00% Since the coated tablets were freely distributed during the coating process, no between-location variability is expected. The composite data can be directly used for statistical estimation. N = nL = 18, Q = 80% LC Example for estimation of batch # 1 data 302 UB for sample SD =1.70*((18-1)/(CHIINV(0.95^0.5,18-1)))^0.5 = 2.54 LB for sample mean =100.56-2.54*NORMSINV(1-(1-0.95^0.5))/18^0.5 = 99.39 Substitute UB (SD) & LB (mean) values in (IV) Journal of Validation Technology JVT_August2007.qxd 8/11/07 2:41 PM Page 303 Pramote Cholayudth DISINTEGRATION As suggested by Chow and Liu,5 the exact probability of passing the USP Disintegration test may be given as below: Exact probability = p6+6p17(1-p)+87p16(1-p)2 Where: p : Probability that all dosage units fall below the upper limit for disintegration time. Probability using MS Excel =(NORMSDIST((UL-Mean)/Sigma))^6+6*((NORMSDIST((ULMean)/Sigma))^17)*(1-(NORMSDIST((ULMean)/Sigma)))+87*((NORMSDIST((UL-Mean)/Sigma))^16)*(1(NORMSDIST((UL-Mean)/Sigma)))^2 ……………… (V) Where: ‘Sigma’ is substituted with upper bound for sample SD ‘Mean’ is substituted with upper bound for sample mean ‘UL’ is substituted with upper limit for disintegration time Joint confidence level for upper and lower bounds = 95% (i.e., confidence level for each bound = square root of 95%) Upper bound (UB) for sample SD (SD) =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Upper bound for sample mean (M) =M+UB*NORMSINV(1-(1-0.95^0.5))/n^0.5 When appropriate amount of disintegration time data (e.g., 3x of QC sample size = 18) is obtained, estimation for the required statistics is carried out and the resulting statistical estimates are substituted in (V). Disintegration data obtained by sampling plan 2 may be approximated for statistical estimates in the same way under assumption that there is no between-location variability. Figure 22 illustrates how various proportions (1-p) above the upper limit for the disintegration time (p is the probability below the upper limit) generate the probability distributions. ‘LB Probability’ in the figure means the lower bound for probability of passing the test that was suggested by Bergum (1990). According to Chow and Liu,5 it is rather conservative when compared to the exact probability method. Figure 22 Probability of Passing Disintegration Test A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 303 JVT_August2007.qxd 8/11/07 2:41 PM Page 304 Pramote Cholayudth MINIMUM FILL AND DELIVERABLE VOLUME How to set-up the target fill weights or volumes for dosage forms requiring Minimum Fill or Deliverable Volume is described in Establishing Target Fills for Semisolid and Liquid Dosage Forms,12 the general target fill formula is summarized as follows: T = L +1.27σ / n (For in-process control (IPC) of fill weight or fill volume average) Where: T = Target fill value in g or ml per container L = Labeled amount (content) value in g or ml per container (= 100% labeled amount (LA)) n = In-process control (IPC) sample size that is equal to QC sample size e.g., 10 (1st stage test) σ = Lot sigma for fill weight/volume data under normality assumption Using the target fill formula will provide the batch after filling with approximately 95% probability level for a QC sample to pass the Minimum Fill or Deliverable Volume test. However, after filling, both the batch average and variability i.e., standard deviation (for fill weight or fill volume) may shift from what is earlier expected – that is, the actual fill data will generate the different mean and SD. The lower and upper estimates for the two statistics are used to compute the lower bound for probability of passing the QC test to determine the process benchmark. The benchmarking approach for a filling process is defined in the following two sections. MINIMUM FILL Probability of passing Minimum Fill test may be statistically defined as below: Probability of passing USP criteria ≥ MAX {P(meeting stage 1), P(meeting stage 2)} Probability using MS Excel =MAX((1-NORMSDIST((100-Mean)/(Sigma/10^0.5)))+((1-NORMSDIST((PMean)/Sigma)))^10-1,(1-NORMSDIST((100-Mean)/(Sigma/30^0.5)))+(1NORMSDIST((P-Mean)/Sigma))^30+COMBIN(30,1)*(NORMSDIST((PMean)/Sigma))^29-1,0) ……………… (VI) Where: ‘Sigma’ is substituted with upper bound for sample SD ‘Mean’ is substituted with lower bound for sample mean ‘P’ is 90 for fill size ≤ 60 g or mL per container and 95 for fill size > 60 and 150 g or mL per container. Joint confidence level for upper and lower bounds = 95% (i.e., confidence level for each bound = square root of 95%) Upper bound (UB) for sample SD (SD) =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Lower bound for sample mean (M) =M-UB*NORMSINV(1-(1-0.95^0.5))/n^0.5 304 Journal of Validation Technology JVT_August2007.qxd 8/11/07 2:41 PM Page 305 Pramote Cholayudth When appropriate amount of filling data is obtained, estimation for the required statistics is carried out and the resulting statistical estimates are substituted in (VI). Figures 23 and 24 illustrate the probability distribution curves obtained from composite samples – e.g., each sam- ple comprising 10 units from each of 3 segments (n = 30) at the beginning, middle, and end of a filling cycle. Fill data obtained by sampling plan 2 may be approximated for statistical estimates in the same way. Figure 23 Probability of Passing Minimum Fill Test (≤ 60 g or mL Size) Figure 24 Probability of Passing Minimum Fill Test (> 60 - 150 g or mL Size) A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 305 JVT_August2007.qxd 8/11/07 2:41 PM Page 306 Pramote Cholayudth DELIVERABLE VOLUME Probability of passing Deliverable Volume test may be statistically defined as below: Probability of passing USP criteria ≥ MAX {P(meeting stage 1), P(meeting stage 2)} Probability using MS Excel (multi-dose products) =MAX((1-NORMSDIST((100-Mean)/(Sigma/10^0.5)))+((1NORMSDIST((95-Mean)/Sigma)))^10-1,(1-NORMSDIST((100Mean)/(Sigma/30^0.5)))+(1-NORMSDIST((95Mean)/Sigma))^30+COMBIN(30,1)*(NORMSDIST((95Mean)/Sigma))^29-1,0) ……………… (VII) Probability using MS Excel (single-dose products) =MAX((1-NORMSDIST((100-Mean)/(Sigma/10^0.5)))+(NORMSDIST((110Mean)/Sigma)-NORMSDIST((95-Mean)/Sigma))^10-1,(1-NORMSDIST((100Mean)/(Sigma/30^0.5)))+(NORMSDIST((110-Mean)/Sigma)-NORMSDIST((95Mean)/Sigma))^30+COMBIN(30,1)*((NORMSDIST((110-Mean)/Sigma)NORMSDIST((95-Mean)/Sigma))^29)*(((NORMSDIST((95-Mean)/Sigma)NORMSDIST((90-Mean)/Sigma)))^1)-1,0) ……………… (VIII) Where: ‘Sigma’ is substituted with upper bound for sample SD ‘Mean’ is substituted with lower bound for sample mean Joint confidence level for upper and lower bounds = 95% (i.e., confidence level for each bound = square root of 95%) Upper bound (UB) for sample SD (SD) =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Lower bound for sample mean (M) =M-UB*NORMSINV(1-(1-0.95^0.5))/n^0.5 Figure 25 Probability of Passing Deliverable Volume Test (≤ 250 mL Size) 306 Journal of Validation Technology JVT_August2007.qxd 8/11/07 2:41 PM Page 307 Pramote Cholayudth Figure 26 Probability of Passing Deliverable Volume Test (Single Unit) When appropriate amount of filling data is obtained as described above, estimation for the required statistics is carried out and the resulting statistical estimates are substituted in (VII) or (VIII). Figures 25 and 26 illustrate the probability distribution curves obtained from composite samples – e.g., each sample comprising 10 units from each of 3 segments (n = 30) at the beginning, middle, and end of a filling cycle. Fill data obtained by sampling plan 2 may be approximated for statistical estimates in the same way. From Figure 26, it implies that a too high fill volume average, say 105% LA or greater, will have a tendency to fail the test. Filling process should be strictly controlled about the predetermined filling target.12 higher potency), three sample mean locations may be determined at 98, 100, and 102% LC with a constant sample RSD predetermined at 5.0%. Upon estimation for the required statistics and substitution into formula (I), the probability results are 61.09, 78.53, and 55.34%, respectively. The RSD value greater than 5.0% generates the probability results less than 50%. Therefore, the RSD limit of 5.0% can be established for an acceptance criteria limit with the sample mean (n = 45) within 98-102% LC. When the validation test results are available e.g., sample mean = 100.17% LC and RSD = 3.5%, the lower bound for probability of passing the CU test is computed (formula I) and the result is 99.92%. The trial and error approach may be applied in case of the other tests and products. APPLICATION FOR ESTABLISHING ACCEPTANCE CRITERIA LIMITS SUMMARY As discussed earlier, the RSD limit of 5.6% and 6% in Figures 13 and 15, giving probability values slightly above 50%, may be established as part of the validation acceptance criteria for tablet and capsule content uniformity tests, respectively. For sample sizes other than those specified in the figures above, a trial and error approach may be used. For example, if N = nxL = 3x15 = 45 for content uniformity test in process validation (of less critical tablet products e.g., A step-by-step procedure to compute the probability is provided in Figure 27. Prior to substitution into those probability formulae, sample statistics are estimated for their statistical bounds where their MS Excel formulae are summarized in Figure 28. A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 307 JVT_August2007.qxd 8/11/07 2:41 PM Page 308 Pramote Cholayudth Figure 27 Step-by-Step Procedure to Compute the Probability Procedure References 1. Collect data – e.g. actual QC data available or preferably data from 3x QC sample size) — 2. Compute sample mean and SD Paste Function in Excel 3. Estimate Upper and/or lower bounds for mean Upper bound for SD Figure 28, Paste Function in Excel 4. Substitute in the formula in Excel Figure 29, Paste Function in Excel Tools Ready-for-use MS Excel files for computing the probability of passing those USP tests are obtainable upon request.* *Interested readers may contact the author, [email protected], asking for the MS Excel files. Note: Constructing a formula may be made by carefully copying the desired formula in this paper bracket by bracket into the MS Excel sheet. Figure 28 Summary of Upper and Lower Bounds for Sample Statistics USP Tests Content Uniformity Sample Statistics Sample SD (SD) Sample Mean (M) 95% Joint Confidence Interval/Upper & Lower Bounds UB =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 UB(Mean) =M+UB*NORMSINV(1-(1-0.95^0.5)/2)/n^0.5 LB(Mean) =M-UB*NORMSINV(1-(1-0.95^0.5)/2)/n^0.5 Dissolution Sample SD (SD) UB =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Sample Mean (M) LB(Mean) =M-UB*NORMSINV(1-(1-0.95^0.5))/n^0.5 Disintegration Sample SD (SD) UB =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Sample Mean (M) UB(Mean) =M+UB*NORMSINV(1-(1-0.95^0.5))/n^0.5 Minimum Fill Sample SD (SD) UB =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Sample Mean (M) LB(Mean) =M-UB*NORMSINV(1-(1-0.95^0.5))/n^0.5 Deliverable Sample SD (SD) UB =SD*((n-1)/(CHIINV(0.95^0.5,n-1)))^0.5 Volume Sample Mean (M) LB(Mean) =M-UB*NORMSINV(1-(1-0.95^0.5))/n^0.5 UB: Upper Bound (Upper Limit), LB: Lower Bound (Lower Limit) How to estimate the upper bound for SD is based on sampling plan type – 1 or 2 Note: Remember that the symbol ‘=’ must be attached to the formula itself 308 Journal of Validation Technology JVT_August2007.qxd 8/11/07 2:41 PM Page 309 Pramote Cholayudth Figure 29 Quick Reference for Related Figures and Formulae Description Items CU DISS DIST MF DV Probability Figure # 12-15 20, 21 22 23-24 25-26 Estimation Figure # (Plan 1) 10, 27 10, 27 10, 27 10, 27 10, 27 Estimation Figure # (Plan 2) 11, 27 11, 27 11, 27 11, 27 11, 27 MS Excel Formula # (I), (II), (III) (IV) (V) (VI) (VII), (VIII) CU: Content Uniformity, DISS: Dissolution, DIST: Disintegration, MF: Minimum Fill, DV: Deliverable Volume CONCLUSION ABOUT THE AUTHOR Probability of passing the compendial (USP) multi-stage tests requires estimation for statistical lower and/or upper bounds for the mean and standard deviation of the samples of appropriate size. The estimation results will generate the probability to pass the multi-stage tests. The sample size used is the multiple (e.g., at least triple) of the compendial QC test sample size so that the sample quality will comprehensively represent that of the batch. The validation acceptance criterion with respect to the RSD limit, when customized, is based on the critical RSD value that provides at least 50% probability, or higher as required, of meeting the specification. Expressing the high probability of passing the multi-stage tests (for critical quality attributes e.g., content uniformity) will directly fulfill the validation guideline requirements i.e. “… maximize the probability that the finished product meets all quality and design specifications.” As one of the benefits, the benchmark of a certain process can be quantitatively measured through these probability results. ❏ Pramote Cholayudth is Executive Director of Valitech Co., Ltd., a well-established validation and compliance consultant services company for Pharmaceutical Industry in Thailand. He is a guest speaker on Process Validation to industrial pharmaceutical scientists organized by local FDA. Prior to this he was a full time lecturer in a School of Pharmacy in a private university for four years (1998-2001). Before entering the academic arena, he spent 23 years in the pharmaceutical industry with Bayer Laboratories (19741981) and OLIC (Thailand), Limited (1981-1997) – a leading and largest pharmaceutical toll manufacturer for multinational companies. Pramote is the author of Concepts and Practices of Pharmaceutical Process Validation. He is currently a JVT Editorial Advisory Board Member and can be contacted by fax at 662740-9586, by e-mail at [email protected], or at the following mailing address: Pramote Cholayudth 6/756 Number One Complex, Bangkok-Ram 2 Road, Pravate District, Bangkok, 10250 Thailand REFERENCES 1. Division of Manufacturing and Product Quality, Office of Compliance, Center for Drugs and Biologics, U.S. FDA, Guideline on General Principles of Process Validation, May 1987, www.fda.gov/CDER/GUIDANCE/pv.htm. A u g u s t 2 0 0 7 • Vo l u m e 1 3 , N u m b e r 4 309 JVT_August2007.qxd 8/11/07 2:41 PM Page 310 Pramote Cholayudth 2. WHO Working Document QAS/03.055/Rev.2: Supplementary Guidelines on Good Manufacturing Practices (GMP): Validation, 2005, www.who.int/medicines/ services/expertcommittees/pharmprep/Validation_QAS_055_Rev2combined.pdf. 3. Presentation on “FDA Regulation of Drug Quality: New Challenges,” Janet Woodcock, Director, Center for Drug Evaluation and Research, Food and Drug Administration, April 9, 2002. www.fda.gov/ohrms/dockets/ac/02/briefing/3869B1 _08_woodcock.ppt. 4. Bergum, J. S., “Constructing Acceptance Limits for Multiple Stage Tests,” Drug Development and Industrial Pharmacy, Marcel Dekker, Inc, 1990, Vol.16, No.14, pp. 2153-2166. 5. Chow, S. C. and J. P. Liu, “USP Tests and Specifications,” in Statistical Design and Analysis in Pharmaceutical Science: Validation, Process Controls, Practical and Clinical Applications, 3rd edition New York: Marcel Dekker, Inc, 1995, pp. 158-165. 6. Bergum, J. S. and M. L. Utter, “Statistical Methods for Uniformity and Dissolution Testing,” Pharmaceutical Process Validation: An International Third Edition, Revised and Expanded, R. A. Nash and A. H. Wachter, New York, Marcel Dekker, Inc, 2003, pp. 667-697. 7. Blend Uniformity Working Group (BUWG), Product Quality Research Institute (PQRI), “The Use of Stratified Sampling of Blend and Dosage Units to Demonstrate Adequacy of Mix for Powder Blends,” Final Report on Blend Uniformity Recommendations, December 30, 2002. www.pqri.org/datamining/imagespdfs/123002sam.pdf. 8. Center for Drug Evaluation and Research (CDER), Food and Drug Administration, “Powder Blends and Finished Dosage Units - Stratified In-Process Dosage Unit Sampling and Assessment,” Draft Guidance for Industry, October 2003. www.fda.gov/cder/guidance/5831dft.pdf and www.fda.gov/cder/guidance/5831AttmtR.pdf. 9. J. S. Bergum’s SASÍ Programs – “Appendix E: Lower Bound Calculations,” Content Uniformity and Dissolution Acceptance Limits (CUDAL), version: 1.0, dated 7/26/03. 10. Cholayudth, P., “Use of the Bergum Method and MS Excel to Determine the Probability of Passing the USP Content Uniformity Test,” Pharmaceutical Technology, Volume 28, Number 9, September 2004. www.pharmtech.com. 11. Cholayudth, P., “Using the Bergum Method and MS Excel LAB WEEK OCTOBER 2-5, 2007 • CATAMARAN RESORT THE ONLY CONFERENCE FEATURING THE THREE HOTTEST LAB TOPICS IN ONE FANTASTIC EVENT: ❯ METHOD VALIDATION ❯ STABILITY TESTING ❯ LAB COMPLIANCE • SAN DIEGO, CA KEYNOTE SPEAKERS*: FDA’s Final OOS Guidance Paul Haynie, Compliance Officer, Division of Manufacturing and Product Quality, FDA Regulatory Considerations for Stability Testing Barry Rothman, Senior Compliance Officer, Division of Manufacturing and Product Quality, FDA *via videoconference Presented By: Register Today at: www.labweekevent.com 310 Journal of Validation Technology For sponsorship and exhibit sales opportunities, please contact: Jamie Carpenter at 1-800-225-4569 x 2725 or [email protected] JVT_August2007.qxd 8/11/07 2:41 PM Page 311 Pramote Cholayudth to Determine the Probability of Passing the USP Dissolution Test,” Pharmaceutical Technology, Volume 30, Number 1, January 2006. www.pharmtech.com. 12. Cholayudth, P., “Establishing Target Fills for Semisolid and Liquid Dosage Forms,” Pharmaceutical Technology, Volume 29, Number 4, April 2005. www.pharmtech.com. 13. Pluta, P., “Benchmarking” Journal of Validation Technology, Volume 12, No. 1, November 2005, pp. 69-71. 14. MS Excel formula for computation of probability of passing content uniformity test for tablets and capsules, Pharmaceutical Technology website, www.pharmtech.com, search ‘Pramote.’ 15. Torbeck, L. D., “In Defense of USP Single Testing,” Pharmaceutical Technology, Volume 29, Number 2, February 2005. www.pharmtech.com. Article Acronym Listing CU FDA IPC LA LB LC MS PQRI QA QC RSD SD SqD UB UL USP WV WHO Content Uniformity Food and Drug Administration In-Process Control Labeled Amount Lower Bound Label Claim Microsoft Product Quality Research Institute Quality Assurance Quality Control Relative Standard Deviation Sample Standard Deviation Square Deviation Upper Bound Upper Limit United States Pharmacopeia Weight Variation World Health Organization 13th Annual INTERNATIONAL VALIDATION WEEK OCTOBER 23-25, 2007 • PARK HYATT AT THE BELLEVUE • PHILADELPHIA, PA TOP 5 REASONS TO ATTEND: 1 2 3 4 Participate in the longest running and bestattended conference on validation 5 Gain all of the knowledge you need to know about process, computer, cleaning, facility, and method validations AT ONE EVENT by building your own conference Discuss FDA, ICH, and other global regulations with top regulatory experts’ participation NEW: Track for intermediate to advanced validation professionals Network with your peers at exciting functions such as the annual awards banquet and two roundtable breakfasts KEYNOTE ADDRESS Notes From the Field: A District Office’s Perspective of the RiskBased Inspection Model Karyn M. 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