基于视频的强直阵挛性癫痫的三维卷积神经网络检测。

IF 6.6 1区 医学 Q1 CLINICAL NEUROLOGY
Epilepsia Pub Date : 2025-03-24 DOI:10.1111/epi.18381
Aidan Boyne, Hsiang J Yeh, Anthony K Allam, Brandon M Brown, Mohammad Tabaeizadeh, John M Stern, R James Cotton, Zulfi Haneef
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引用次数: 0

摘要

目的:癫痫监测单元(emu)的发作检测是临床评估耐药癫痫的重要手段。使用机器学习的自动视频分析为癫痫发作检测提供了一种有前途的辅助手段,从而减少了诊断监测所需的资源。我们采用三维(3D)卷积神经网络,具有完全微调的骨干层,以识别EMU视频中的癫痫发作。方法:采用双流膨胀3D-ConvNet架构(I3D)对视频片段进行癫痫发作和非癫痫发作的分类。预训练的动作分类器对11小时的视频进行了调整,该视频包含25名患者的49次强直阵挛发作,这些患者来自一家大型学术医院(地点A),使用留一名患者的交叉验证。通过将模型预测结果与来自A站点和另一家大型学术医院(B站点)的独立数据集的癫痫学家的视频脑电图评论获得的基本事实注释进行比较,评估了模型的性能。结果:该模型实现了留一名患者的交叉验证f1得分为0.960±0.007(mean±SD)和受试者工作曲线下面积得分为。988±。完整视频的评估检测到所有癫痫发作(95%二项精确置信区间= 94.1%-100%),从癫痫发作开始检测到中位延迟为0.0 s(四分位数间距= 0.0-3.0)。网站A模型的平均误报率为每小时1.81次,尽管49个视频中有36个(73.5%)没有误报。地点B的评估证明了架构和培训策略的普遍性,尽管跨地点评估(地点A模型在地点B数据上测试,反之亦然)导致性能下降。意义:我们的模型在使用微调的I3D模型从视频数据中检测癫痫发作方面表现出高性能,并且优于文献中发现的类似模型。这项研究为未来的实时EMU癫痫发作监测工作奠定了基础,并可能实现可靠、经济的强直阵挛发作在家检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Video-based detection of tonic-clonic seizures using a three-dimensional convolutional neural network.

Objective: Seizure detection in epilepsy monitoring units (EMUs) is essential for the clinical assessment of drug-resistant epilepsy. Automated video analysis using machine learning provides a promising aid for seizure detection, with resultant reduction in the resources required for diagnostic monitoring. We employ a three-dimensional (3D) convolutional neural network with fully fine-tuned backbone layers to identify seizures from EMU videos.

Methods: A two-stream inflated 3D-ConvNet architecture (I3D) classified video clips as a seizure or not a seizure. A pretrained action classifier was fine-tuned on 11 h of video containing 49 tonic-clonic seizures from 25 patients monitored at a large academic hospital (site A) using leave-one-patient-out cross-validation. Performance was evaluated by comparing model predictions to ground-truth annotations obtained from video-electroencephalographic review by an epileptologist on videos from site A and a separate dataset from a second large academic hospital (site B).

Results: The model achieved a leave-one-patient-out cross-validation F1-score of .960 ± .007 (mean ± SD) and area under the receiver operating curve score of .988 ± .004 at site A. Evaluation on full videos detected all seizures (95% binomial exact confidence interval = 94.1%-100%), with median detection latency of 0.0 s (interquartile range = 0.0-3.0) from seizure onset. The site A model had an average false alarm rate of 1.81 alarms per hour, although 36 of the 49 videos (73.5%) had no false alarms. Evaluation at site B demonstrated generalizability of the architecture and training strategy, although cross-site evaluation (site A model tested on site B data and vice versa) resulted in diminished performance.

Significance: Our model demonstrates high performance in the detection of epileptic seizures from video data using a fine-tuned I3D model and outperforms similar models identified in the literature. This study provides a foundation for future work in real-time EMU seizure monitoring and possibly for reliable, cost-effective at-home detection of tonic-clonic seizures.

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来源期刊
Epilepsia
Epilepsia 医学-临床神经学
CiteScore
10.90
自引率
10.70%
发文量
319
审稿时长
2-4 weeks
期刊介绍: Epilepsia is the leading, authoritative source for innovative clinical and basic science research for all aspects of epilepsy and seizures. In addition, Epilepsia publishes critical reviews, opinion pieces, and guidelines that foster understanding and aim to improve the diagnosis and treatment of people with seizures and epilepsy.
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