MatchMiner-AI: An Open-Source Solution for Cancer Clinical Trial Matching
Clinical trials drive improvements in cancer treatments and outcomes. However, most adults with cancer do not participate in trials, and trials often fail to enroll enough patients to answer their scientific questions. Artificial intelligence could accelerate matching of patients to appropriate clin...
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Zusammenfassung: | Clinical trials drive improvements in cancer treatments and outcomes.
However, most adults with cancer do not participate in trials, and trials often
fail to enroll enough patients to answer their scientific questions. Artificial
intelligence could accelerate matching of patients to appropriate clinical
trials. Here, we describe the development and evaluation of the MatchMiner-AI
pipeline for clinical trial searching and ranking. MatchMiner-AI focuses on
matching patients to potential trials based on core criteria describing
clinical "spaces," or disease contexts, targeted by a trial. It aims to
accelerate the human work of identifying potential matches, not to fully
automate trial screening. The pipeline includes modules for extraction of key
information from a patient's longitudinal electronic health record; rapid
ranking of candidate trial-patient matches based on embeddings in vector space;
and classification of whether a candidate match represents a reasonable
clinical consideration. Code and synthetic data are available at
https://huggingface.co/ksg-dfci/MatchMiner-AI . Model weights based on
synthetic data are available at https://huggingface.co/ksg-dfci/TrialSpace and
https://huggingface.co/ksg-dfci/TrialChecker . A simple cancer clinical trial
search engine to demonstrate pipeline components is available at
https://huggingface.co/spaces/ksg-dfci/trial_search_alpha . |
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DOI: | 10.48550/arxiv.2412.17228 |