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放射治疗期间通过机器学习指导评估降低医疗成本——一项随机对照研究的经济分析

Health Care Cost Reductions with Machine Learning-Directed Evaluations during Radiation Therapy - An Economic Analysis of a Randomized Controlled Study.

作者信息

Natesan Divya, Eisenstein Eric L, Thomas Samantha M, Eclov Neville C W, Dalal Nicole H, Stephens Sarah J, Malicki Mary, Shields Stacey, Cobb Alyssa, Mowery Yvonne M, Niedzwiecki Donna, Tenenbaum Jessica D, Palta Manisha, Hong Julian C

机构信息

Department of Radiation Oncology, University of North Carolina, Chapel Hill, NC.

Department of Radiation Oncology, Duke University, Durham, NC.

出版信息

NEJM AI. 2024 Apr;1(4). doi: 10.1056/aioa2300118. Epub 2024 Mar 15.

Abstract

BACKGROUND

Machine learning (ML) may cost-effectively direct health care by identifying patients most likely to benefit from preventative interventions to avoid negative and expensive outcomes. System for High-Intensity Evaluation During Radiation Therapy (SHIELD-RT; NCT04277650) was a single-institution, randomized controlled study in which electronic health record-based ML accurately identified patients at high risk for acute care (emergency visit or hospitalization) during radiotherapy (RT) and targeted them for supplemental clinical evaluations. This ML-directed intervention resulted in decreased acute care utilization. Given the limited prospective data showing the ability of ML to direct interventions , an economic analysis was performed.

METHODS

A post hoc economic analysis was conducted of SHIELD-RT that included RT courses from January 7, 2019, to June 30, 2019. ML-identified high-risk courses (≥10% risk of acute care during RT) were randomized to receive standard of care weekly clinical evaluations with ad hoc supplemental evaluations per clinician discretion versus mandatory twice-weekly evaluations. The primary outcome was difference in mean total medical costs during and 15 days after RT. Acute care costs were obtained via institutional cost accounting. Physician and intervention costs were estimated via Medicare and Medicaid data. Negative binomial regression was used to estimate cost outcomes after adjustment for patient and disease factors.

RESULTS

A total of 311 high-risk RT courses among 305 patients were randomized to the standard (n=157) or the intervention (n=154) group. Unadjusted mean intervention group supplemental visit costs were $155 per course (95% confidence interval, $142 to $168). The intervention group had fewer acute care visits per course (standard, 0.47; intervention, 0.31; P=0.04). Total mean adjusted costs were $3110 per course for the standard group and $1494 for the intervention group (difference in means, $1616 [95% confidence interval, $1450 to $1783]; P=0.03).

CONCLUSIONS

In this economic analysis of a randomized controlled, health care ML study, mandatory supplemental evaluations for ML-identified high-risk patients were associated with both reduced total medical costs and improved clinical outcomes. Further study is needed to determine whether economic results are generalizable. (Funded in part by The Duke Endowment, The Conquer Cancer Foundation, the Duke Department of Radiation Oncology, and the National Cancer Institute of the National Institutes of Health [R01CA277782]; ClinicalTrials.gov number, NCT04277650.).

摘要

背景

机器学习(ML)可通过识别最有可能从预防性干预中受益的患者,以具有成本效益的方式指导医疗保健,从而避免负面且昂贵的后果。放射治疗期间高强度评估系统(SHIELD-RT;NCT04277650)是一项单机构随机对照研究,其中基于电子健康记录的ML准确识别出放射治疗(RT)期间有急性护理(急诊就诊或住院)高风险的患者,并针对他们进行补充临床评估。这种由ML指导的干预降低了急性护理的利用率。鉴于显示ML指导干预能力的前瞻性数据有限,因此进行了一项经济分析。

方法

对SHIELD-RT进行了一项事后经济分析,其中包括2019年1月7日至2019年6月30日的RT疗程。ML识别出的高风险疗程(RT期间急性护理风险≥10%)被随机分配,接受每周一次的标准护理临床评估,并根据每位临床医生的判断进行临时补充评估,或接受强制性的每周两次评估。主要结局是RT期间及RT后15天的平均总医疗费用差异。急性护理费用通过机构成本核算获得。医生和干预费用通过医疗保险和医疗补助数据进行估算。使用负二项回归在对患者和疾病因素进行调整后估计成本结局。

结果

305例患者中的311个高风险RT疗程被随机分配至标准组(n = 157)或干预组(n = 154)。干预组未经调整的平均补充就诊费用为每个疗程155美元(95%置信区间,142美元至168美元)。干预组每个疗程的急性护理就诊次数较少(标准组,0.47;干预组,0.31;P = 0.04)。标准组每个疗程的总平均调整成本为3110美元,干预组为1494美元(均值差异,1616美元[95%置信区间,1450美元至1783美元];P = 0.03)。

结论

在这项对随机对照医疗保健ML研究的经济分析中,对ML识别出的高风险患者进行强制性补充评估与降低总医疗成本和改善临床结局均相关。需要进一步研究以确定经济结果是否具有普遍性。(部分由杜克捐赠基金、战胜癌症基金会、杜克放射肿瘤学系和美国国立卫生研究院国家癌症研究所资助[R01CA277782];ClinicalTrials.gov编号,NCT04277650。)

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