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Bayesian Modeling for the Detection of Adverse Events Underreporting in Clinical Trials

Author

Listed:
  • Yves Barmaz

    (F. Hoffmann-La Roche AG)

  • Timothé Ménard

    (F. Hoffmann-La Roche AG)

Abstract

Introduction Safety underreporting is a recurrent issue in clinical trials that can impact patient safety and data integrity. Clinical quality assurance (QA) practices used to detect underreporting rely on on-site audits; however, adverse events (AEs) underreporting remains a recurrent issue. In a recent project, we developed a predictive model that enables oversight of AE reporting for clinical quality program leads (QPLs). However, there were limitations to using solely a machine learning model. Objective Our primary objective was to propose a robust method to compute the probability of AE underreporting that could complement our machine learning model. Our model was developed to enhance patients’ safety while reducing the need for on-site and manual QA activities in clinical trials. Methods We used a Bayesian hierarchical model to estimate the site reporting rates and assess the risk of underreporting. We designed the model with Project Data Sphere clinical trial data that are public and anonymized. Results We built a model that infers the site reporting behavior from patient-level observations and compares them across a study to enable a robust detection of outliers between clinical sites. Conclusion The new model will be integrated into the current dashboard designed for clinical QPLs. This approach reduces the need for on-site audits, shifting focus from source data verification to pre-identified, higher risk areas. It will enhance further QA activities for safety reporting from clinical trials and generate quality evidence during pre-approval inspections.

Suggested Citation

  • Yves Barmaz & Timothé Ménard, 2021. "Bayesian Modeling for the Detection of Adverse Events Underreporting in Clinical Trials," Drug Safety, Springer, vol. 44(9), pages 949-955, September.
  • Handle: RePEc:spr:drugsa:v:44:y:2021:i:9:d:10.1007_s40264-021-01094-8
    DOI: 10.1007/s40264-021-01094-8
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    References listed on IDEAS

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    1. Timothé Ménard & Björn Koneswarakantha & Donato Rolo & Yves Barmaz & Leszek Popko & Rich Bowling, 2020. "Follow-Up on the Use of Machine Learning in Clinical Quality Assurance: Can We Detect Adverse Event Under-Reporting in Oncology Trials?," Drug Safety, Springer, vol. 43(3), pages 295-296, March.
    2. Timothé Ménard & Yves Barmaz & Björn Koneswarakantha & Rich Bowling & Leszek Popko, 2019. "Enabling Data-Driven Clinical Quality Assurance: Predicting Adverse Event Reporting in Clinical Trials Using Machine Learning," Drug Safety, Springer, vol. 42(9), pages 1045-1053, September.
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