EEG Temporal-Spatial Feature Learning for Automated Selection of Stimulus Parameters in Electroconvulsive Therapy.

IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Journal of Biomedical and Health Informatics Pub Date : 2024-10-31 DOI:10.1109/JBHI.2024.3489221
Fan Wang, Dan Chen, Shenhong Weng, Tengfei Gao, Yiping Zuo, Yuntao Zheng
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Abstract

The risk of adverse effects in Electroconvulsive Therapy (ECT), such as cognitive impairment, can be high if an excessive stimulus is applied to induce the necessary generalized seizure (GS); Conversely, inadequate stimulus results in failure. Recent efforts to automate this task can facilitate statistical analyses on individual parameters or qualitative predictions. However, this automation still significantly lags behind the requirements in clinical practices. This study addresses this issue by predicting the probability of GS induction under the joint restriction of a patient's EEG (electroencephalogram) and the stimulus parameters, sustained by a two-stage learning model (namely ECTnet): 1) Temporal-Spatial Feature Learning. Channel-wise convolution via multiple convolution kernels first learns the deep features of the EEG, followed by a "ConvLSTM" constructing the temporal-spatial features aided with the enforced convolution operations at the LSTM gates; 2) GS Prediction. The probability of seizure induction is predicted based on the EEG features fused with stimulus parameters, through which the optimal parameter setting(s) may be obtained by minimizing the stimulus charge while ensuring the probability above a threshold. Experiments have been conducted on EEG data from 96 subjects with mental disorders to examine the performance and design of ECTnet. These experiments indicate that ECTnet can effectively automate the selection of optimal stimulus parameters: 1) an AUC of 0.746, F1-score of 0.90, a precision of 89% and a recall of 93% in the prediction of seizure induction have been achieved, outperforming the state-of-the-art counterpart, and 2) inclusion of parameter features increases the F1-score by 0.054.

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脑电图时空特征学习用于电休克疗法中刺激参数的自动选择。
在电休克疗法(ECT)中,如果为诱导必要的全身性癫痫发作(GS)而施加过多刺激,则可能会导致认知障碍等不良反应;反之,如果刺激不足,则会导致治疗失败。最近为实现这项任务的自动化所做的努力有助于对个别参数或定性预测进行统计分析。然而,这种自动化仍明显落后于临床实践的要求。本研究针对这一问题,通过两阶段学习模型(即 ECTnet),在患者脑电图和刺激参数的共同限制下,预测 GS 诱导的概率:1) 时空特征学习。通过多个卷积核进行通道卷积,首先学习脑电图的深层特征,然后通过 "ConvLSTM "构建时空特征,并在 LSTM 门上执行卷积操作;2)GS 预测。根据融合了刺激参数的脑电图特征预测癫痫发作诱导的概率,从而在确保概率高于阈值的同时,通过最小化刺激电荷获得最佳参数设置。我们对 96 名精神障碍受试者的脑电图数据进行了实验,以检验 ECTnet 的性能和设计。这些实验表明,ECTnet 可以有效地自动选择最佳刺激参数:1)在预测癫痫发作诱导方面,ECTnet 的 AUC 为 0.746,F1 分数为 0.90,精确度为 89%,召回率为 93%,优于最先进的同行;2)加入参数特征后,F1 分数提高了 0.054。
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来源期刊
IEEE Journal of Biomedical and Health Informatics
IEEE Journal of Biomedical and Health Informatics COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
CiteScore
13.60
自引率
6.50%
发文量
1151
期刊介绍: IEEE Journal of Biomedical and Health Informatics publishes original papers presenting recent advances where information and communication technologies intersect with health, healthcare, life sciences, and biomedicine. Topics include acquisition, transmission, storage, retrieval, management, and analysis of biomedical and health information. The journal covers applications of information technologies in healthcare, patient monitoring, preventive care, early disease diagnosis, therapy discovery, and personalized treatment protocols. It explores electronic medical and health records, clinical information systems, decision support systems, medical and biological imaging informatics, wearable systems, body area/sensor networks, and more. Integration-related topics like interoperability, evidence-based medicine, and secure patient data are also addressed.
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