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Process Analytical Technology: What you need to know . Frederick H. Long, Ph.D. President, Spectroscopic Solutions www.spectroscopicsolutions.com. Spectroscopic Solutions. Consulting & Training Process Analytical Technology Spectroscopy Statistics. Overview of PAT.
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Process Analytical Technology: What you need to know Frederick H. Long, Ph.D. President, Spectroscopic Solutions www.spectroscopicsolutions.com ASQ-FDC\FDA Conference
Spectroscopic Solutions • Consulting & Training • Process Analytical Technology • Spectroscopy • Statistics ASQ-FDC\FDA Conference
Overview of PAT • Design of Experiments/ Statistical Quality Control • Process Analyzers • Knowledge Management • Multivariate Analysis ASQ-FDC\FDA Conference
PAT Case Studies • CSV of a Process Analyzer • NIR Raw Material Library • NIR In Process Control ASQ-FDC\FDA Conference
CSV of a Process Analyzer • Special issues • Field acceptance testing (FAT) • PAT Software • Training Issues • GOOD NEWS Many vendors have compliant software ! ASQ-FDC\FDA Conference
Field Acceptance Testing • Upgraded hardware and software tested for improved operation • Encoder was found to be defective, was replaced • Done as part of engineering study ASQ-FDC\FDA Conference
PAT Software • Process Analyzer and PAT software often has statistical analysis capabilities such as control charts • It is good practice to document the accuracy of these calculations • Some NIST certified statistical data sets are available to further test calculations ASQ-FDC\FDA Conference
Training Issues • Operators find compliant software easy to use • Password control issues • Emergency procedures for a lost password ASQ-FDC\FDA Conference
NIR Raw Material Library • Seven Materials • Active 1, pseudoephedrine sulfate, monohydrate lactose, HPMC, corn product, sugar 1, sugar 2 • Selection criteria • Highest volume raw materials • Maximize impact ASQ-FDC\FDA Conference
Sample & Spectra Collection • Gather both file and recent samples • Collect samples from all vendors used • Use same sample presentation • 1” diameter scintillation vial • Collect spectra over different days • DOCUMENT, DOCUMENT, DOCUMENT ASQ-FDC\FDA Conference
Investigate NIR Spectra • Look for variation between vendors • Two sources of pseudoephedrine • Difference in particle size • Moisture variation ASQ-FDC\FDA Conference
Identification Method Development • Use simplest (i.e. most robust) method • Wavelength Correlation with 2nd Derivative Treatment • Normalized dot product of mean spectrum with test spectrum ASQ-FDC\FDA Conference
Method Validation Strategy • Internal Validation • External Validation • Challenge Samples • Robustness Testing • USP Chapter <1119> • PASG, ICH. EMEA Guidelines ASQ-FDC\FDA Conference
At-Line Process Control • Near IR used to measure active ingredient in pharmaceutical product • Results used to control process • Control Chart displayed in front of production machine • Used by all three production shifts ASQ-FDC\FDA Conference
NIR Spectra of Product ASQ-FDC\FDA Conference
Calibration Development • Collected NIR spectra and HPLC data from over the course of the previous year • Samples collected to maximize range, approximately 95 -105 % of target • 60 spectra used for Calibration equation • For robustness, MLR model was desirable ASQ-FDC\FDA Conference
Spectral Pre-Processing • Use 2nd derivative for pre-processing • Minimize SEC for 1 term MLR by varying segment length ASQ-FDC\FDA Conference
Calibration Models • Both 3 and 4 term MLR models were constructed and gave good initial results ASQ-FDC\FDA Conference
Pre-Validation Testing • Used new product samples to validate equation • Accuracy • Precision ASQ-FDC\FDA Conference
Engineering Study • Examination of calibration robustness • 5 Lots over 4 months ASQ-FDC\FDA Conference
Equation Selection 3 term equation is more robust ASQ-FDC\FDA Conference
Equation Validation • Method Validation Criteria • Specificity • Range • Precision, Accuracy • Instrument Repeatability • Linearity • Robustness ASQ-FDC\FDA Conference
Robustness • Lot to Lot variation • Operator variation ASQ-FDC\FDA Conference
Multi-Vary Plot ASQ-FDC\FDA Conference
Summary • Clear plan, cross functional team • Good validation strategy • Detailed FAT and testing of chemometric models • Need for sound understanding of chemometrics and statistics ASQ-FDC\FDA Conference