评估人工智能在脑电图中早期检测非惊厥发作的临床影响和准确性的系统综述和荟萃分析。

Q3 Health Professions
The Neurodiagnostic Journal Pub Date : 2025-09-01 Epub Date: 2025-07-18 DOI:10.1080/21646821.2025.2520094
Patama Gomutbutra, Sarawut Krongsut, John Lott
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引用次数: 0

摘要

人工智能集成脑电图(AI-EEG)在非惊厥性癫痫持续状态(NCSE)的早期检测中表现出了希望,特别是在紧急和重症监护环境中,训练有素的脑电图技术人员的机会有限。本综述包括20项研究,其中12项纳入评估AI-EEG诊断准确性的荟萃分析。合并敏感性达95%,特异性为83%。然而,当NCSE的预测概率为40%时,大约七分之一的患者可能出现假阳性。商用AI-EEG平台显示,与单独的临床判断相比,不必要的抗癫痫药物(AED)使用减少了。四项前瞻性队列研究报告了26%的相对风险降低(RR -0.26;95% CI -0.50 ~ -0.02;p = .03)。此外,AI-EEG缩短了在资源有限的情况下获取EEG的中位时间,从4.5小时(IQR 3.2-6.8)减少到2.1小时(IQR 1.5-3.4)。一项行业赞助试验的亚分析表明,人工智能脑电图在减少发病率和减少ICU住院时间方面具有潜在益处,尽管证据尚不足以得出明确的结论。尽管有这些优势,快速部署的AI-EEG系统面临着挑战:缺乏视频集成使得难以区分癫痫发作与人工信号或行为事件,并且有限的电极覆盖可能会错过中枢大脑活动。此外,与人类的解读相比,人工智能算法往往会过度解读尖锐和尖峰的活动。需要进一步的研究者发起的研究来评估AI-EEG在其简化设置之外的诊断率,评估其对患者预后的真正影响,并确定其大规模临床实施的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Systematic Review and Meta-Analysis Evaluating the Clinical Impact and Accuracy of Artificial Intelligence in EEG for the Early Detection of Nonconvulsive Seizures.

Artificial intelligence-integrated electroencephalography (AI-EEG) has demonstrated promise in the early detection of nonconvulsive status epilepticus (NCSE), particularly in emergency and intensive care settings with limited access to trained EEG technologists. This review includes 20 studies, of which 12 were incorporated into a meta-analysis assessing the diagnostic accuracy of AI-EEG. The pooled sensitivity reached 95%, with a specificity of 83%. However, when the pretest probability of NCSE is 40%, false positives may occur in approximately one in seven patients. Commercial AI-EEG platforms have shown a reduction in unnecessary antiepileptic drug (AED) administration compared to clinical judgment alone. Four prospective cohort studies reported a 26% relative risk reduction (RR -0.26; 95% CI -0.50 to -0.02; p = .03) in unnecessary AED use. Additionally, AI-EEG shortened the median time to EEG acquisition in resource-limited settings-from 4.5 hours (IQR 3.2-6.8) to 2.1 hours (IQR 1.5-3.4). A sub-analysis from an industry-sponsored trial suggested potential benefits of AI-EEG in reducing morbidity and ICU length of stay, though evidence remains insufficient for definitive conclusions. Despite these advantages, rapid-deployment AI-EEG systems face challenges: lack of video integration makes it difficult to distinguish seizures from artifacts or behavioral events, and limited electrode coverage may miss central brain activity. Moreover, AI algorithms tend to overread sharp and spike activities compared to human interpretation. Further investigator-initiated studies are needed to evaluate the diagnostic yield of AI-EEG beyond its simplified setup, assess its true impact on patient outcomes, and determine its feasibility for large-scale clinical implementation. .

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来源期刊
The Neurodiagnostic Journal
The Neurodiagnostic Journal Health Professions-Medical Laboratory Technology
CiteScore
1.00
自引率
0.00%
发文量
26
期刊介绍: The Neurodiagnostic Journal is the official journal of ASET - The Neurodiagnostic Society. It serves as an educational resource for Neurodiagnostic professionals, a vehicle for introducing new techniques and innovative technologies in the field, patient safety and advocacy, and an avenue for sharing best practices within the Neurodiagnostic Technology profession. The journal features original articles about electroencephalography (EEG), evoked potentials (EP), intraoperative neuromonitoring (IONM), nerve conduction (NC), polysomnography (PSG), autonomic testing, and long-term monitoring (LTM) in the intensive care (ICU) and epilepsy monitoring units (EMU). Subject matter also includes education, training, lab management, legislative and licensure needs, guidelines for standards of care, and the impact of our profession in healthcare and society. The journal seeks to foster ideas, commentary, and news from technologists, physicians, clinicians, managers/leaders, and professional organizations, and to introduce trends and the latest developments in the field of neurodiagnostics. Media reviews, case studies, ASET Annual Conference proceedings, review articles, and quizzes for ASET-CEUs are also published in The Neurodiagnostic Journal.
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