基于深度学习的全身性惊厥发作检测,使用腕带加速度计。

IF 6.6 1区 医学 Q1 CLINICAL NEUROLOGY
Epilepsia Pub Date : 2025-04-23 DOI:10.1111/epi.18406
Antoine Spahr, Adriano Bernini, Pauline Ducouret, Christoph Baumgartner, Johannes P Koren, Lukas Imbach, Sàndor Beniczky, Sidsel A Larsen, Sylvain Rheims, Martin Fabricius, Margitta Seeck, Berhard J Steinhoff, Isabelle Beuchat, Jonathan Dan, David A Atienza, Charles-Edouard Bardyn, Philippe Ryvlin
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引用次数: 0

摘要

目的:开发并验证一种基于腕带加速度计的深度学习可调算法,用于自动检测全身性或双侧惊厥发作(CSs),并与现成的智能手表集成。方法:我们在8个欧洲癫痫监测单位进行了一项前瞻性多中心研究,收集了384名患者的数据,这些患者使用腕戴式三维(3D)加速度计传感器进行视频脑电图(vEEG)监测。我们开发了一个基于集成的卷积神经网络架构,通过基于分位数的聚合具有可调的灵敏度。该模型被称为Episave,使用加速度计振幅作为输入。它在37例54例CSs患者的数据上进行了训练,并在一个由347例患者组成的独立数据集上进行了评估,其中包括33例49例CSs。结果:在训练集上进行交叉验证,聚合分位数为60,灵敏度为98%,虚警率(FAR)为1/6天,获得了最佳性能。在独立测试集上使用该分位数,该模型达到了96%的灵敏度(95%置信区间[CI]: 90%-100%),这是一个显著的FAR:这项2期临床验证研究表明,将深度学习技术应用于单传感器加速度计数据可以实现高CS检测性能,同时实现灵敏度可调。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based detection of generalized convulsive seizures using a wrist-worn accelerometer.

Objective: To develop and validate a wrist-worn accelerometer-based, deep-learning tunable algorithm for the automated detection of generalized or bilateral convulsive seizures (CSs) to be integrated with off-the-shelf smartwatches.

Methods: We conducted a prospective multi-center study across eight European epilepsy monitoring units, collecting data from 384 patients undergoing video electroencephalography (vEEG) monitoring with a wrist-worn three dimensional (3D)-accelerometer sensor. We developed an ensemble-based convolutional neural network architecture with tunable sensitivity through quantile-based aggregation. The model, referred to as Episave, used accelerometer amplitude as input. It was trained on data from 37 patients who had 54 CSs and evaluated on an independent dataset comprising 347 patients, including 33 who had 49 CSs.

Results: Cross-validation on the training set showed that optimal performance was obtained with an aggregation quantile of 60, with a 98% sensitivity, and a false alarm rate (FAR) of 1/6 days. Using this quantile on the independent test set, the model achieved a 96% sensitivity (95% confidence interval [CI]: 90%-100%), a FAR of <1/8 days (95% CI: 1/9-1/7 days) with 1 FA/61 nights, and a median detection latency of 26 s. One of the two missed CSs could be explained by the patient's arm, which was wearing the sensor, being trapped in the bed rail. Other quantiles provided up to 100% sensitivity at the cost of a greater FAR (1/2 days) or very low FAR (1/100 days) at the cost of lower sensitivity (86%).

Significance: This Phase 2 clinical validation study suggests that deep learning techniques applied to single-sensor accelerometer data can achieve high CS detection performance while enabling tunable sensitivity.

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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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