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TrialBench: Multi-Modal Artificial Intelligence-Ready Clinical Trial Datasets

Authors :
Chen, Jintai
Hu, Yaojun
Wang, Yue
Lu, Yingzhou
Cao, Xu
Lin, Miao
Xu, Hongxia
Wu, Jian
Xiao, Cao
Sun, Jimeng
Glass, Lucas
Huang, Kexin
Zitnik, Marinka
Fu, Tianfan
Publication Year :
2024

Abstract

Clinical trials are pivotal for developing new medical treatments, yet they typically pose some risks such as patient mortality, adverse events, and enrollment failure that waste immense efforts spanning over a decade. Applying artificial intelligence (AI) to forecast or simulate key events in clinical trials holds great potential for providing insights to guide trial designs. However, complex data collection and question definition requiring medical expertise and a deep understanding of trial designs have hindered the involvement of AI thus far. This paper tackles these challenges by presenting a comprehensive suite of meticulously curated AIready datasets covering multi-modal data (e.g., drug molecule, disease code, text, categorical/numerical features) and 8 crucial prediction challenges in clinical trial design, encompassing prediction of trial duration, patient dropout rate, serious adverse event, mortality rate, trial approval outcome, trial failure reason, drug dose finding, design of eligibility criteria. Furthermore, we provide basic validation methods for each task to ensure the datasets' usability and reliability. We anticipate that the availability of such open-access datasets will catalyze the development of advanced AI approaches for clinical trial design, ultimately advancing clinical trial research and accelerating medical solution development. The curated dataset, metrics, and basic models are publicly available at https://github.com/ML2Health/ML2ClinicalTrials/tree/main/AI4Trial.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.00631
Document Type :
Working Paper