The role of artificial intelligence in hastening time to recruitment in clinical trials.

BJR open Pub Date : 2023-05-16 eCollection Date: 2023-01-01 DOI:10.1259/bjro.20220023
Abdalah Ismail, Talha Al-Zoubi, Issam El Naqa, Hina Saeed
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引用次数: 1

Abstract

Novel and developing artificial intelligence (AI) systems can be integrated into healthcare settings in numerous ways. For example, in the case of automated image classification and natural language processing, AI systems are beginning to demonstrate near expert level performance in detecting abnormalities such as seizure activity. This paper, however, focuses on AI integration into clinical trials. During the clinical trial recruitment process, considerable labor and time is spent sifting through electronic health record and interviewing patients. With the advancement of deep learning techniques such as natural language processing, intricate electronic health record data can be efficiently processed. This provides utility to workflows such as recruitment for clinical trials. Studies are starting to show promise in shortening the time to recruitment and reducing workload for those involved in clinical trial design. Additionally, numerous guidelines are being constructed to encourage integration of AI into the healthcare setting with meaningful impact. The goal would be to improve the clinical trial process by reducing bias in patient composition, improving retention of participants, and lowering costs and labor.

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人工智能在加快临床试验招募时间方面的作用
新型和发展中的人工智能(AI)系统可以通过多种方式集成到医疗保健环境中。例如,在自动图像分类和自然语言处理的情况下,人工智能系统在检测癫痫活动等异常方面开始表现出接近专家水平的性能。然而,本文关注的是人工智能与临床试验的结合。在临床试验招募过程中,需要花费大量的人力和时间筛选电子健康记录并与患者面谈。随着自然语言处理等深度学习技术的发展,复杂的电子健康记录数据可以得到有效的处理。这为诸如临床试验招募等工作流程提供了实用工具。研究开始显示出缩短招募时间和减少临床试验设计人员工作量的希望。此外,正在制定许多指导方针,以鼓励将人工智能整合到医疗保健环境中,并产生有意义的影响。目标是通过减少患者组成的偏倚,提高参与者的保留率,降低成本和劳动力来改善临床试验过程。
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