Salazar-Castro Jose A, Peluffo-Ordonez Diego H, Lopez Diego M
Telematics Department and the Telematics Engineering Group (GIT)University of Cauca Cauca 190003 Colombia.
College of ComputingMohammed VI Polytechnic University Ben Guerir 43150 Morocco.
IEEE Open J Eng Med Biol. 2025 Feb 5;6:332-344. doi: 10.1109/OJEMB.2025.3538498. eCollection 2025.
Post-traumatic stress disorder (PTSD) is a psychophysiological condition caused by traumatic experiences. Its diagnosis typically relies on subjective tools like clinical interviews and self-reports. This scoping review analyzes computational methods using EEG signal processing for PTSD diagnosis, differentiation, and therapy. It provides a comprehensive overview of the entire EEG analysis pipeline, from acquisition to statistical and machine learning techniques for PTSD diagnosis. Using the PRISMA-ScR protocol, studies published between 2013 and 2024 were reviewed from databases including Scopus, Web of Science, and PubMed. A total of 73 studies were analyzed: 52 on diagnosis, 8 on differentiation, and 15 on therapy. EEG Bands and Event-Related Potentials (ERP) were the dominant techniques. The Alpha band demonstrated strong performance in diagnosis and therapy. LPP ERP was most effective for diagnosis, and P300 for differentiation. Supervised SVM models achieved the highest accuracy in diagnosis (ACC = 0.997), differentiation (ACC = 0.841), and psychotherapy (ACC = 0.78). Random Forest multimodal models integrating EEG with other modalities (e.g., ECG, GSR, Speech) achieved ACC = 0.993. Unsupervised approach is employed to cluster patients to identify PTSD subtypes or to differentiate PTSD from other mental disorders. Veterans and combatants were the primary study population, and only three studies reported open datasets. EEG-based methods hold promise as objective tools for PTSD diagnosis and therapy. The review identified limitations in the use of ERP, sleep characterization and full-band EEG. Broader datasets representing diverse populations are essential to mitigate bias and facilitate robust inter-model comparisons. Future research should focus on deep learning, adaptive signal decomposition, and multimodal approaches.
创伤后应激障碍(PTSD)是一种由创伤经历引起的心理生理疾病。其诊断通常依赖于临床访谈和自我报告等主观工具。本综述分析了使用脑电图(EEG)信号处理进行PTSD诊断、鉴别和治疗的计算方法。它全面概述了从采集到用于PTSD诊断的统计和机器学习技术的整个EEG分析流程。使用PRISMA-ScR协议,对2013年至2024年期间发表在包括Scopus、科学网和PubMed在内的数据库中的研究进行了综述。共分析了73项研究:52项关于诊断,8项关于鉴别,15项关于治疗。EEG频段和事件相关电位(ERP)是主要技术。阿尔法频段在诊断和治疗方面表现出强大性能。晚期正电位ERP对诊断最有效,P300对鉴别最有效。监督支持向量机模型在诊断(ACC = 0.997)、鉴别(ACC = 0.841)和心理治疗(ACC = 0.78)方面取得了最高准确率。将EEG与其他模态(如心电图、皮肤电反应、语音)相结合的随机森林多模态模型的准确率为ACC = 0.993。采用无监督方法对患者进行聚类,以识别PTSD亚型或将PTSD与其他精神障碍区分开来。退伍军人和参战人员是主要研究人群,只有三项研究报告了开放数据集。基于EEG的方法有望成为PTSD诊断和治疗的客观工具。该综述确定了ERP使用、睡眠特征和全频段EEG方面的局限性。代表不同人群的更广泛数据集对于减少偏差和促进稳健的模型间比较至关重要。未来的研究应侧重于深度学习、自适应信号分解和多模态方法。