人工智能模型可预测表现为无脉搏电活动和心室颤动的心脏骤停。

IF 9.1 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Lauri Holmstrom, Bryan Bednarski, Harpriya Chugh, Habiba Aziz, Hoang Nhat Pham, Arayik Sargsyan, Audrey Uy-Evanado, Damini Dey, Angelo Salvucci, Jonathan Jui, Kyndaron Reinier, Piotr J Slomka, Sumeet S Chugh
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引用次数: 0

摘要

背景:对于表现为无脉搏电活动(PEA)的心脏骤停(SCA),目前尚无特效疗法,存活率很低;而心室颤动(VF)则不同,可通过除颤治疗。开发新的治疗方法需要进行基础临床研究,但获得真正的初始心律一直是一个限制因素:方法:利用人口统计学和详细的临床变量,我们训练并测试了一个人工智能模型(极梯度增强),以在提供真实初始心律的新环境中区分 PEA-SCA 和 VF-SCA。有一部分 SCA 是由急救人员目睹的,由于响应时间为零,因此记录了真实的 SCA 初始心律。内部队列包括俄勒冈州波特兰大都会地区的 421 名急诊人员见证的院外 SCA,初始心律为 PEA 或 VF。外部验证是在加利福尼亚州文图拉市 220 名急诊医疗服务人员目击的 SCA 中进行的:在内部队列中,人工智能模型的接收器操作特征曲线下面积为 0.68(95% CI,0.61-0.76)。人工智能模型在外部队列中的表现类似,接收器操作特征曲线下的面积为 0.72(95% CI,0.59-0.84)。贫血、年龄偏大、体重增加和呼吸困难作为预警症状是 PEA-SCA 最重要的特征;年龄偏小、胸痛作为预警症状和已确诊的冠状动脉疾病是与 VF 相关的重要特征:人工智能模型识别了 PEA-SCA 的新特征,将其与 VF-SCA 区分开来,并在外部队列中成功复制。这些发现加深了人们对 PEA-SCA 机理的理解,对制定新型管理策略具有潜在的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence Model Predicts Sudden Cardiac Arrest Manifesting With Pulseless Electric Activity Versus Ventricular Fibrillation.

Background: There is no specific treatment for sudden cardiac arrest (SCA) manifesting as pulseless electric activity (PEA) and survival rates are low; unlike ventricular fibrillation (VF), which is treatable by defibrillation. Development of novel treatments requires fundamental clinical studies, but access to the true initial rhythm has been a limiting factor.

Methods: Using demographics and detailed clinical variables, we trained and tested an AI model (extreme gradient boosting) to differentiate PEA-SCA versus VF-SCA in a novel setting that provided the true initial rhythm. A subgroup of SCAs are witnessed by emergency medical services personnel, and because the response time is zero, the true SCA initial rhythm is recorded. The internal cohort consisted of 421 emergency medical services-witnessed out-of-hospital SCAs with PEA or VF as the initial rhythm in the Portland, Oregon metropolitan area. External validation was performed in 220 emergency medical services-witnessed SCAs from Ventura, CA.

Results: In the internal cohort, the artificial intelligence model achieved an area under the receiver operating characteristic curve of 0.68 (95% CI, 0.61-0.76). Model performance was similar in the external cohort, achieving an area under the receiver operating characteristic curve of 0.72 (95% CI, 0.59-0.84). Anemia, older age, increased weight, and dyspnea as a warning symptom were the most important features of PEA-SCA; younger age, chest pain as a warning symptom and established coronary artery disease were important features associated with VF.

Conclusions: The artificial intelligence model identified novel features of PEA-SCA, differentiated from VF-SCA and was successfully replicated in an external cohort. These findings enhance the mechanistic understanding of PEA-SCA with potential implications for developing novel management strategies.

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来源期刊
CiteScore
13.70
自引率
4.80%
发文量
187
审稿时长
4-8 weeks
期刊介绍: Circulation: Arrhythmia and Electrophysiology is a journal dedicated to the study and application of clinical cardiac electrophysiology. It covers a wide range of topics including the diagnosis and treatment of cardiac arrhythmias, as well as research in this field. The journal accepts various types of studies, including observational research, clinical trials, epidemiological studies, and advancements in translational research.
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