Department of Radiation Oncology, University of California, San Francisco, 1825 Fourth Street, Suite L1101, San Francisco, CA, 94158, USA.
Bakar Computational Health Sciences Institute, University of California, San Francisco, San Francisco, CA, USA.
BMC Bioinformatics. 2022 Sep 30;23(Suppl 12):408. doi: 10.1186/s12859-022-04940-3.
Artificial intelligence (AI) and machine learning (ML) have resulted in significant enthusiasm for their promise in healthcare. Despite this, prospective randomized controlled trials and successful clinical implementation remain limited. One clinical application of ML is mitigation of the increased risk for acute care during outpatient cancer therapy. We previously reported the results of the System for High Intensity EvaLuation During Radiation Therapy (SHIELD-RT) study (NCT04277650), which was a prospective, randomized quality improvement study demonstrating that ML based on electronic health record (EHR) data can direct supplemental clinical evaluations and reduce the rate of acute care during cancer radiotherapy with and without chemotherapy. The objective of this study is to report the workflow and operational challenges encountered during ML implementation on the SHIELD-RT study.
Data extraction and manual review steps in the workflow represented significant time commitments for implementation of clinical ML on a prospective, randomized study. Barriers include limited data availability through the standard clinical workflow and commercial products, the need to aggregate data from multiple sources, and logistical challenges from altering the standard clinical workflow to deliver adaptive care.
The SHIELD-RT study was an early randomized controlled study which enabled assessment of barriers to clinical ML implementation, specifically those which leverage the EHR. These challenges build on a growing body of literature and may provide lessons for future healthcare ML adoption.
NCT04277650. Registered 20 February 2020. Retrospectively registered quality improvement study.
人工智能(AI)和机器学习(ML)因其在医疗保健领域的前景而引起了极大的关注。尽管如此,前瞻性随机对照试验和成功的临床实施仍然有限。ML 的一个临床应用是减轻门诊癌症治疗期间急性护理的风险增加。我们之前报告了 System for High Intensity EvaLuation During Radiation Therapy(SHIELD-RT)研究(NCT04277650)的结果,这是一项前瞻性、随机质量改进研究,表明基于电子健康记录(EHR)数据的 ML 可以指导补充临床评估,并降低癌症放射治疗期间是否有化疗的急性护理率。本研究的目的是报告在 SHIELD-RT 研究中实施 ML 时遇到的工作流程和操作挑战。
工作流程中的数据提取和手动审查步骤代表了在前瞻性、随机研究中实施临床 ML 的重大时间投入。障碍包括通过标准临床工作流程和商业产品获得的数据有限,需要从多个来源聚合数据,以及改变标准临床工作流程以提供适应性护理的后勤挑战。
SHIELD-RT 研究是一项早期的随机对照研究,使我们能够评估临床 ML 实施的障碍,特别是那些利用电子健康记录的障碍。这些挑战是对越来越多的文献的补充,可能为未来医疗保健 ML 的采用提供经验教训。
NCT04277650。于 2020 年 2 月 20 日注册。回顾性注册的质量改进研究。