基于机器学习和脑电图的产后抑郁症临床检测工具综述

Anagha Acharya, Ramya Ramesh, Tasmiya Fathima, Trisha Lakhani, S. S
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摘要

准妈妈在怀孕期间经历了相当大的解剖和生理变化,这些变化会引起压力,对压力的急性反应会引起焦虑状态。当这种压力持续很长时间,抑郁症可能会在不知不觉中发展,损害一个人应对压力的能力。在世界各地,高达15%的新妈妈可能会经历产后抑郁症,这是一种精神疾病。它与母亲和新生儿关系不佳、母乳喂养开始减少以及母亲、儿童和婴儿的心理健康状况不佳有关。尽管它们很常见,但高达50%的产后问题可能未得到诊断或治疗。因此,早期发现症状进行预防和干预势在必行。在本文中,我们回顾了现有的PPD检测和预防技术,并列举了它们的优点和缺点。基于问卷的二级筛查工具只能在抑郁症发作后但在疾病发展之前起作用,而使用强大机器学习算法的一级预防方法可以在症状出现之前以更高的准确性起作用。在绝大多数情况下,支持向量机被证明是最准确的分类器。近年来,脑电图(EEG)因其在实时测量认知能力方面的优越性而受到了广泛的关注。因此,采用基于脑电图的方法可以帮助解决由早期方法引起的不一致。因此,本综述建议探索使用脑电图来提高产后抑郁症的检测,以解释早期干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical tools to detect Postpartum Depression based on Machine learning and EEG: A Review
The expectant mother experiences considerable anatomical and physiological changes during pregnancy that induce stress, and an acute response to stress induces a state of anxiety. When this stress is prolonged, depression may develop insidiously, impairing one's ability to cope with stress. Around the world, up to 15% of new mothers may experience postpartum depression, a mental condition. It has been linked to poor maternal and newborn bonding, reduced breastfeeding initiation, and poor mental health outcomes for mothers, children, and infants. Even though they are common, up to 50% of postpartum issues may go undiagnosed or untreated. Therefore, it is imperative to detect symptoms in the early stages for prevention and intervention. In this paper, we review the existing techniques for PPD detection and prevention and cite their merits and demerits. The secondary questionnaire-based screening tools can only act after the onset of depression but before the development of the disorder, while primary prevention approaches, which use powerful machine learning algorithms, can work before the emergence of symptoms themselves with a higher accuracy. The most accurate classifier has been proven to be Support Vector Machine in the vast majority of instances. Recently, Electroencephalogram (EEG) has received the most research attention because of its superior features in measuring cognitive abilities in real-time. Therefore, adopting EEG-based methodologies could help address inconsistencies caused by earlier approaches. Accordingly, the review suggests exploring the use of EEG for improving the detection of postpartum depression to account for early interventions.
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