Optimizing clinical trials recruitment via deep learning

Author:

Gligorijevic Jelena1ORCID,Gligorijevic Djordje1,Pavlovski Martin12,Milkovits Elizabeth3,Glass Lucas3,Grier Kevin3,Vankireddy Praveen3,Obradovic Zoran1

Affiliation:

1. Center for Data Analytics and Biomedical Informatics, Temple University, Philadelphia, Pennsylvania, USA

2. Macedonian Academy of Sciences and Arts, Skopje, Republic of Macedonia

3. IQVIA, Plymouth Meeting, Pennsylvania, USA

Abstract

Abstract Objective Clinical trials, prospective research studies on human participants carried out by a distributed team of clinical investigators, play a crucial role in the development of new treatments in health care. This is a complex and expensive process where investigators aim to enroll volunteers with predetermined characteristics, administer treatment(s), and collect safety and efficacy data. Therefore, choosing top-enrolling investigators is essential for efficient clinical trial execution and is 1 of the primary drivers of drug development cost. Materials and Methods To facilitate clinical trials optimization, we propose DeepMatch (DM), a novel approach that builds on top of advances in deep learning. DM is designed to learn from both investigator and trial-related heterogeneous data sources and rank investigators based on their expected enrollment performance on new clinical trials. Results Large-scale evaluation conducted on 2618 studies provides evidence that the proposed ranking-based framework improves the current state-of-the-art by up to 19% on ranking investigators and up to 10% on detecting top/bottom performers when recruiting investigators for new clinical trials. Discussion The extensive experimental section suggests that DM can provide substantial improvement over current industry standards in several regards: (1) the enrollment potential of the investigator list, (2) the time it takes to generate the list, and (3) data-informed decisions about new investigators. Conclusion Due to the great significance of the problem at hand, related research efforts are set to shift the paradigm of how investigators are chosen for clinical trials, thereby optimizing and automating them and reducing the cost of new therapies.

Funder

IQVIA

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference26 articles.

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