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TRIALSCOPE: A Unifying Causal Framework for Scaling Real-World Evidence Generation with Biomedical Language Models

Authors :
González, Javier
Wong, Cliff
Gero, Zelalem
Bagga, Jass
Ueno, Risa
Chien, Isabel
Oravkin, Eduard
Kiciman, Emre
Nori, Aditya
Weerasinghe, Roshanthi
Leidner, Rom S.
Piening, Brian
Naumann, Tristan
Bifulco, Carlo
Poon, Hoifung
Publication Year :
2023

Abstract

The rapid digitization of real-world data offers an unprecedented opportunity for optimizing healthcare delivery and accelerating biomedical discovery. In practice, however, such data is most abundantly available in unstructured forms, such as clinical notes in electronic medical records (EMRs), and it is generally plagued by confounders. In this paper, we present TRIALSCOPE, a unifying framework for distilling real-world evidence from population-level observational data. TRIALSCOPE leverages biomedical language models to structure clinical text at scale, employs advanced probabilistic modeling for denoising and imputation, and incorporates state-of-the-art causal inference techniques to combat common confounders. Using clinical trial specification as generic representation, TRIALSCOPE provides a turn-key solution to generate and reason with clinical hypotheses using observational data. In extensive experiments and analyses on a large-scale real-world dataset with over one million cancer patients from a large US healthcare network, we show that TRIALSCOPE can produce high-quality structuring of real-world data and generates comparable results to marquee cancer trials. In addition to facilitating in-silicon clinical trial design and optimization, TRIALSCOPE may be used to empower synthetic controls, pragmatic trials, post-market surveillance, as well as support fine-grained patient-like-me reasoning in precision diagnosis and treatment.<br />Comment: 6 Figures, 22 Pages, 3 Tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.01301
Document Type :
Working Paper