Automating Clinical Trial Matches Via Natural Language Processing of Synthetic Electronic Health Records and Clinical Trial Eligibility Criteria.

Victor M Murcia, Vinod Aggarwal, Nikhil Pesaladinne, Ram Thammineni, Nhan Do, Gil Alterovitz, Rafael B Fricks
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Abstract

Clinical trials are critical to many medical advances; however, recruiting patients remains a persistent obstacle. Automated clinical trial matching could expedite recruitment across all trial phases. We detail our initial efforts towards automating the matching process by linking realistic synthetic electronic health records to clinical trial eligibility criteria using natural language processing methods. We also demonstrate how the Sørensen-Dice Index can be adapted to quantify match quality between a patient and a clinical trial.

通过自然语言处理合成电子健康记录和临床试验资格标准实现临床试验匹配自动化。
临床试验对许多医学进步至关重要;然而,招募患者仍是一个长期存在的障碍。临床试验自动匹配可以加快所有试验阶段的招募工作。我们使用自然语言处理方法将现实的合成电子健康记录与临床试验资格标准联系起来,详细介绍了我们为实现匹配过程自动化所做的初步努力。我们还展示了如何利用索伦森-迪斯指数(Sørensen-Dice Index)来量化患者与临床试验之间的匹配质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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