基于机器学习的急诊室中风预测。

IF 4.7 2区 医学 Q1 CLINICAL NEUROLOGY
Therapeutic Advances in Neurological Disorders Pub Date : 2024-04-01 eCollection Date: 2024-01-01 DOI:10.1177/17562864241239108
Vida Abedi, Debdipto Misra, Durgesh Chaudhary, Venkatesh Avula, Clemens M Schirmer, Jiang Li, Ramin Zand
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引用次数: 0

摘要

背景:据估计,9% 的中风患者会被误诊:据估计,在所有中风患者中,有 9% 的患者会被误诊为中风,这与不良预后有关:我们假设机器学习(ML)可以帮助急诊科(ED)诊断缺血性中风:设计:本研究根据《个人预后或诊断多变量预测模型透明报告指南》进行并报告。我们使用 COVID 前后的数据进行了模型开发和前瞻性时间验证;我们还对之前误诊的一小部分卒中患者进行了病例研究:我们使用了宾夕法尼亚州 13 家医院从 2003 年 9 月到 2021 年 1 月期间 56,452 次患者就诊的结构化和非结构化电子健康记录(EHR)。利用事件发生前的临床数据和急诊室提供者的记录创建了包括自然语言处理在内的 ML 管道:使用事件发生前的信息,我们的模型的接收者工作特征曲线下面积 (AUROC) 在 0.88 到 0.92 之间,精确度范围相似(0.87-0.90)。通过使用提供者笔记,我们确定了五个在 AUROC、灵敏度和特异性方面表现均衡的模型。模型的 AUROC 在 0.93 到 0.99 之间。模型灵敏度和特异性分别达到 0.90 和 0.99。在表现最好的五个模型中,有四个是基于 COVID 后的医疗服务提供者笔记;但是,在 COVID 前和后测试的模型之间没有观察到性能差异:本研究利用事件前和就诊时的电子病历进行中风预测。结果表明,可用的临床信息可用于建立基于 EHR 的卒中预测模型和 ED 卒中警报系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Prediction of Stroke in Emergency Departments.

Background: Stroke misdiagnosis, associated with poor outcomes, is estimated to occur in 9% of all stroke patients.

Objectives: We hypothesized that machine learning (ML) could assist in the diagnosis of ischemic stroke in emergency departments (EDs).

Design: The study was conducted and reported according to the Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis guidelines. We performed model development and prospective temporal validation, using data from pre- and post-COVID periods; we also performed a case study on a small cohort of previously misdiagnosed stroke patients.

Methods: We used structured and unstructured electronic health records (EHRs) of 56,452 patient encounters from 13 hospitals in Pennsylvania, from September 2003 to January 2021. ML pipelines, including natural language processing, were created using pre-event clinical data and provider notes in the EDs.

Results: Using pre-event information, our model's area under the receiver operating characteristics curve (AUROC) ranged from 0.88 to 0.92 with a similar range accuracy (0.87-0.90). Using provider notes, we identified five models that reached a balanced performance in terms of AUROC, sensitivity, and specificity. Model AUROC ranged from 0.93 to 0.99. Model sensitivity and specificity reached 0.90 and 0.99, respectively. Four of the top five performing models were based on the post-COVID provider notes; however, no performance difference between models tested on pre- and post-COVID was observed.

Conclusion: This study leveraged pre-event and at-encounter level EHR for stroke prediction. The results indicate that available clinical information can be used for building EHR-based stroke prediction models and ED stroke alert systems.

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来源期刊
CiteScore
8.30
自引率
1.70%
发文量
62
审稿时长
15 weeks
期刊介绍: Therapeutic Advances in Neurological Disorders is a peer-reviewed, open access journal delivering the highest quality articles, reviews, and scholarly comment on pioneering efforts and innovative studies across all areas of neurology. The journal has a strong clinical and pharmacological focus and is aimed at clinicians and researchers in neurology, providing a forum in print and online for publishing the highest quality articles in this area.
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