Correction: An Overview of Current Statistical Methods for Implementing Quality Tolerance Limits

Rakhi Kilaru, Sonia Amodio, Yasha Li, Christine Wells,Sharon Love, Yuling Zeng, Jingjing Ye, Monika Jelizarow, Abhinav Balakumar, Maciej Fronc, Anne Sofie Osterdal, Tim Rolfe, Susan Talbot

Therapeutic Innovation & Regulatory Science(2024)

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摘要
Background In 2016, the International Council for Harmonisation of Technical Requirements for Pharmaceuticals for Human Use updated its efficacy guideline for good clinical practice and introduced predefined quality tolerance limits (QTLs) as a quality control in clinical trials. QTLs are complementary to Quality by Design (QbD) principles (ICH-E8) and are one of the components of the risk-based clinical trial quality management system. Methods Currently the framework for QTLs process is well established, extensively describing the operational aspects of Defining, Monitoring and Reporting, but a single source of commonly used methods to establish QTLs and secondary limits is lacking. This paper will primarily focus on closing this gap and include applications of statistical process control and Bayesian methods on commonly used study level quality parameters such as premature treatment discontinuation, study discontinuation and significant protocol deviations as examples. Conclusions Application of quality tolerance limits to parameters that correspond to critical to quality factors help identify systematic errors. Some situations pose special challenges to implementing QTLs and not all methods are optimal in every scenario. Early warning signals, in addition to QTL, are necessary to trigger actions to further minimize the possibility of an end-of-study excursion.
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关键词
Centralized statistical monitoring,Quality tolerance limits,Risk-based monitoring,Data quality,Risk identification,Quality by design
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