Journal article
Detecting irregularities in randomized controlled trials using machine learning
Abstract
BACKGROUND: Over the course of a clinical trial, irregularities may arise in the data. Trialists implement human-intensive, expensive central statistical monitoring procedures to identify and correct these irregularities before the results of the trial are analyzed and disseminated. Machine learning algorithms have shown promise for identifying center-level irregularities in multi-center clinical trials with minimal human intervention. We aimed …
Authors
Nelson W; Petch J; Ranisau J; Zhao R; Balasubramanian K; Bangdiwala SI
Journal
Clinical Trials, Vol. 22, No. 2, pp. 178–187
Publisher
SAGE Publications
Publication Date
April 2025
DOI
10.1177/17407745241297947
ISSN
1740-7745