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A prospective pragmatic evaluation of automatic trial matching tools in a molecular tumor board

Lilia Gueguen, Louise Olgiati, Clément Brutti-Mairesse, Alric Sans, Vincent Le Texier, Loïc Verlingue

2025npj Precision Oncology10 citationsDOIOpen Access PDF

Abstract

Publicly available trial matching tools can improve the access to therapeutic innovations, but errors may expose to over-solicitation and disappointment. We performed a pragmatic non-interventional prospective evaluation on sequential patients at the Molecular Tumor Board of Centre Leon Berard. During 10 weeks in 2024, we analysed 157 patients with four clinical trial matching tools from the 19 screened: Klineo, ScreenAct, Trialing and DigitalECMT. Each patient had 2.19 trials proposed on average, and 38% had no trials suggested. The mean performances were precision = 0.33, recall = 0.32, AP@3 = 0.45, and NDCG@3 = 0.34. Using all the tools can increase to 26% the clinical trial options. The most frequent error concerned the type of gene variants required by the selection criteria. We showed that using a Large Language Model on the patients' molecular reports could improve the performance by up to 5%. We recommend that experts supervise the results and we advocate for improved technologies.

Topics & Concepts

Matching (statistics)Computer sciencePsychologyArtificial intelligenceStatisticsMathematicsCancer Genomics and DiagnosticsLung Cancer Treatments and MutationsStatistical Methods in Clinical Trials
A prospective pragmatic evaluation of automatic trial matching tools in a molecular tumor board | Litcius