Department of Radiation Oncology, University of California, San Francisco, San Francisco, CA.
Bakar Computational Health Sciences Institute, University of California, San Francisco, San Francisco, CA.
J Clin Oncol. 2020 Nov 1;38(31):3652-3661. doi: 10.1200/JCO.20.01688. Epub 2020 Sep 4.
Patients undergoing outpatient radiotherapy (RT) or chemoradiation (CRT) frequently require acute care (emergency department evaluation or hospitalization). Machine learning (ML) may guide interventions to reduce this risk. There are limited prospective studies investigating the clinical impact of ML in health care. The objective of this study was to determine whether ML can identify high-risk patients and direct mandatory twice-weekly clinical evaluation to reduce acute care visits during treatment.
During this single-institution randomized quality improvement study (ClinicalTrials.gov identifier: NCT04277650), 963 outpatient adult courses of RT and CRT started from January 7 to June 30, 2019, were evaluated by an ML algorithm. Among these, 311 courses identified by ML as high risk (> 10% risk of acute care during treatment) were randomized to standard once-weekly clinical evaluation (n = 157) or mandatory twice-weekly evaluation (n = 154). Both arms allowed additional evaluations on the basis of clinician discretion. The primary end point was the rate of acute care visits during RT. Model performance was evaluated using receiver operating characteristic area under the curve (AUC) and decile calibration plots.
Twice-weekly evaluation reduced rates of acute care during treatment from 22.3% to 12.3% (difference, -10.0%; 95% CI, -18.3 to -1.6; relative risk, 0.556; 95% CI, 0.332 to 0.924; = .02). Low-risk patients had a 2.7% acute care rate. Model discrimination was good in high- and low-risk patients undergoing standard once-weekly evaluation (AUC, 0.851).
In this prospective randomized study, ML accurately triaged patients undergoing RT and CRT, directing clinical management with reduced acute care rates versus standard of care. This prospective study demonstrates the potential benefit of ML in health care and offers opportunities to enhance care quality and reduce health care costs.
接受门诊放疗 (RT) 或放化疗 (CRT) 的患者经常需要急症护理 (急诊评估或住院)。机器学习 (ML) 可能有助于指导干预措施,以降低这种风险。目前很少有前瞻性研究调查 ML 在医疗保健中的临床影响。本研究的目的是确定 ML 是否可以识别高危患者,并指导强制性每周两次的临床评估,以减少治疗期间的急症护理就诊次数。
在这项单中心随机质量改进研究 (ClinicalTrials.gov 标识符:NCT04277650) 中,评估了 2019 年 1 月 7 日至 6 月 30 日期间开始的 963 例门诊成人 RT 和 CRT 疗程。其中,311 例由 ML 识别为高危 (> 10%的治疗期间急症护理风险)的疗程被随机分配至标准每周一次的临床评估 (n = 157) 或强制性每周两次的评估 (n = 154)。两个治疗组都允许根据医生的判断进行额外的评估。主要终点是 RT 期间急症护理就诊的发生率。使用接受者操作特征曲线下面积 (AUC) 和十分位数校准图评估模型性能。
每周两次的评估将治疗期间的急症护理就诊率从 22.3%降低至 12.3%(差异,-10.0%;95%CI,-18.3 至-1.6;相对风险,0.556;95%CI,0.332 至 0.924;P =.02)。低危患者的急症护理就诊率为 2.7%。标准每周一次的评估中高危和低危患者的模型区分度较好 (AUC,0.851)。
在这项前瞻性随机研究中,ML 准确地对接受 RT 和 CRT 的患者进行了分诊,与标准护理相比,通过降低急症护理就诊率来指导临床管理。这项前瞻性研究表明了 ML 在医疗保健中的潜在益处,并为提高护理质量和降低医疗保健成本提供了机会。