Enabling Data-Driven Clinical Quality Assurance: Predicting Adverse Event Reporting in Clinical Trials Using Machine Learning.

Journal: Drug safety
Published Date:

Abstract

INTRODUCTION: Adverse event (AE) under-reporting has been a recurrent issue raised during health authorities Good Clinical Practices (GCP) inspections and audits. Moreover, safety under-reporting poses a risk to patient safety and data integrity. The current clinical Quality Assurance (QA) practices used to detect AE under-reporting rely heavily on investigator site and study audits. Yet several sponsors and institutions have had repeated findings related to safety reporting, and this has led to delays in regulatory submissions. Recent developments in data management and IT systems allow data scientists to apply techniques such as machine learning to detect AE under-reporting in an automated fashion.

Authors

  • Timothé Ménard
    F. Hoffmann-La Roche, Basel, Switzerland. timothemenard@gmail.com.
  • Yves Barmaz
    F. Hoffmann-La Roche, Basel, Switzerland.
  • Björn Koneswarakantha
    F. Hoffmann-La Roche, Basel, Switzerland.
  • Rich Bowling
    Genentech - A Member of the Roche group, South San Francisco, USA.
  • Leszek Popko
    F. Hoffmann-La Roche, Basel, Switzerland.