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基于自动化、机器学习的警报可增加癫痫手术转诊:一项随机对照试验。

Automated, machine learning-based alerts increase epilepsy surgery referrals: A randomized controlled trial.

机构信息

Division of Biomedical Informatics, Cincinnati Children's Hospital Medical Center, Cincinnati, Ohio, USA.

Department of Pediatrics, University of Cincinnati College of Medicine, Cincinnati, Ohio, USA.

出版信息

Epilepsia. 2023 Jul;64(7):1791-1799. doi: 10.1111/epi.17629. Epub 2023 May 27.

Abstract

OBJECTIVE

To determine whether automated, electronic alerts increased referrals for epilepsy surgery.

METHODS

We conducted a prospective, randomized controlled trial of a natural language processing-based clinical decision support system embedded in the electronic health record (EHR) at 14 pediatric neurology outpatient clinic sites. Children with epilepsy and at least two prior neurology visits were screened by the system prior to their scheduled visit. Patients classified as a potential surgical candidate were randomized 2:1 for their provider to receive an alert or standard of care (no alert). The primary outcome was referral for a neurosurgical evaluation. The likelihood of referral was estimated using a Cox proportional hazards regression model.

RESULTS

Between April 2017 and April 2019, at total of 4858 children were screened by the system, and 284 (5.8%) were identified as potential surgical candidates. Two hundred four patients received an alert, and 96 patients received standard care. Median follow-up time was 24 months (range: 12-36 months). Compared to the control group, patients whose provider received an alert were more likely to be referred for a presurgical evaluation (3.1% vs 9.8%; adjusted hazard ratio [HR] = 3.21, 95% confidence interval [CI]: 0.95-10.8; one-sided p = .03). Nine patients (4.4%) in the alert group underwent epilepsy surgery, compared to none (0%) in the control group (one-sided p = .03).

SIGNIFICANCE

Machine learning-based automated alerts may improve the utilization of referrals for epilepsy surgery evaluations.

摘要

目的

确定自动化电子警报是否能增加癫痫手术转诊率。

方法

我们在 14 个儿科神经科门诊点开展了一项前瞻性、随机对照试验,研究了一种基于自然语言处理的临床决策支持系统,该系统嵌入在电子健康记录(EHR)中。在预定就诊前,系统对患有癫痫且至少有两次神经科就诊记录的患儿进行筛查。被系统归类为潜在手术候选者的患者按 2:1 的比例随机分配,其医生将收到警报或标准护理(无警报)。主要结局是转诊接受神经外科评估。使用 Cox 比例风险回归模型估计转诊的可能性。

结果

在 2017 年 4 月至 2019 年 4 月期间,共有 4858 名患儿被系统筛查,其中 284 名(5.8%)被确定为潜在手术候选者。204 名患者收到了警报,96 名患者接受了标准护理。中位随访时间为 24 个月(范围:12-36 个月)。与对照组相比,其医生收到警报的患者更有可能被转介接受术前评估(3.1%比 9.8%;调整后的危险比[HR] = 3.21,95%置信区间[CI]:0.95-10.8;单侧 p = .03)。在警报组中有 9 名患者(4.4%)接受了癫痫手术,而在对照组中没有患者(0%)接受手术(单侧 p = .03)。

意义

基于机器学习的自动化警报可能会提高癫痫手术评估的转诊利用率。

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