Clinical trials are a critical component of evaluating the effectiveness of new medical interventions and driving advancements in medical research. Therefore, timely enrollment of patients is crucial to prevent delays or premature termination of trials. In this context, Electronic Health Records (EHRs) have emerged as a valuable tool for identifying and enrolling eligible participants. In this study, we propose an automated approach that leverages ChatGPT, a large language model, to extract patient-related information from unstructured clinical notes and generate search queries for retrieving potentially eligible clinical trials. Our empirical evaluation, conducted on two benchmark retrieval collections, shows improved retrieval performance compared to existing approaches when several general-purposed and task-specific prompts are used. Notably, ChatGPT-generated queries also outperform human-generated queries in terms of retrieval performance. These findings highlight the potential use of ChatGPT to enhance clinical trial enrollment while ensuring the quality of medical service and minimizing direct risks to patients.

Peikos, G., Symeonidis, S., Kasela, P., Pasi, G. (2023). Utilizing ChatGPT to Enhance Clinical Trial Enrollment [Altro].

Utilizing ChatGPT to Enhance Clinical Trial Enrollment

Georgios Peikos;Pranav Kasela;Gabriella Pasi
2023

Abstract

Clinical trials are a critical component of evaluating the effectiveness of new medical interventions and driving advancements in medical research. Therefore, timely enrollment of patients is crucial to prevent delays or premature termination of trials. In this context, Electronic Health Records (EHRs) have emerged as a valuable tool for identifying and enrolling eligible participants. In this study, we propose an automated approach that leverages ChatGPT, a large language model, to extract patient-related information from unstructured clinical notes and generate search queries for retrieving potentially eligible clinical trials. Our empirical evaluation, conducted on two benchmark retrieval collections, shows improved retrieval performance compared to existing approaches when several general-purposed and task-specific prompts are used. Notably, ChatGPT-generated queries also outperform human-generated queries in terms of retrieval performance. These findings highlight the potential use of ChatGPT to enhance clinical trial enrollment while ensuring the quality of medical service and minimizing direct risks to patients.
Altro
Computer Science - Information Retrieval; Computer Science - Information Retrieval; Computer Science - Computation and Language
English
2023
http://arxiv.org/abs/2306.02077v1
Peikos, G., Symeonidis, S., Kasela, P., Pasi, G. (2023). Utilizing ChatGPT to Enhance Clinical Trial Enrollment [Altro].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/521142
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