Investigation of Machine Learning and Deep Learning Approaches for Detection of Mild Traumatic Brain Injury from Human Sleep Electroencephalogram.

Manoj Vishwanath, Salar Jafarlou, Ikhwan Shin, Nikil Dutt, Amir M Rahmani, Carolyn E Jones, Miranda M Lim, Hung Cao
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引用次数: 3

Abstract

Traumatic Brain Injury (TBI) is a highly prevalent and serious public health concern. Most cases of TBI are mild in nature, yet some individuals may develop following-up persistent disability. The pathophysiologic causes for those with persistent postconcussive symptoms are most likely multifactorial and the underlying mechanism is not well understood, although it is clear that sleep disturbances feature prominently in those with persistent disability. The sleep electroencephalogram (EEG) provides a direct window into neuronal activity during an otherwise highly stereotyped behavioral state, and represents a promising quantitative measure for TBI diagnosis and prognosis. With the ever-evolving domain of machine learning, deep convolutional neural networks, and the development of better architectures, these approaches hold promise to solve some of the long entrenched challenges of personalized medicine for uses in recommendation systems and/or in health monitoring systems. In particular, advanced EEG analysis to identify putative EEG biomarkers of neurological disease could be highly relevant in the prognostication of mild TBI, an otherwise heterogeneous disorder with a wide range of affected phenotypes and disability levels. In this work, we investigate the use of various machine learning techniques and deep neural network architectures on a cohort of human subjects with sleep EEG recordings from overnight, in-lab, diagnostic polysomnography (PSG). An optimal scheme is explored for the classification of TBI versus non-TBI control subjects. The results were promising with an accuracy of ∼95% in random sampling arrangement and ∼70% in independent validation arrangement when appropriate parameters were used using a small number of subjects (10 mTBI subjects and 9 age- and sex-matched controls). We are thus confident that, with additional data and further studies, we would be able to build a generalized model to detect TBI accurately, not only via attended, in-lab PSG recordings, but also in practical scenarios such as EEG data obtained from simple wearables in daily life.

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机器学习和深度学习方法在轻度创伤性脑损伤睡眠脑电图检测中的应用研究。
外伤性脑损伤(TBI)是一个非常普遍和严重的公共卫生问题。大多数TBI病例本质上是轻微的,但一些个体可能会发展为持续性残疾。持续脑震荡后症状的病理生理原因很可能是多因素的,其潜在机制尚不清楚,尽管睡眠障碍在持续残疾患者中很明显。睡眠脑电图(EEG)提供了在高度刻板的行为状态下神经元活动的直接窗口,代表了一种有希望的TBI诊断和预后的定量测量。随着机器学习领域的不断发展,深度卷积神经网络和更好的架构的发展,这些方法有望解决一些长期存在的个性化医疗挑战,用于推荐系统和/或健康监测系统。特别是,先进的脑电图分析,以确定神经系统疾病的假定脑电图生物标志物,可能与轻度TBI的预后高度相关,轻度TBI是一种异质性疾病,具有广泛的影响表型和残疾水平。在这项工作中,我们研究了各种机器学习技术和深度神经网络架构在一组人类受试者的睡眠脑电图记录上的使用,这些记录来自夜间、实验室、诊断性多导睡眠图(PSG)。探讨了脑外伤与非脑外伤对照对象的最优分类方案。在少量受试者(10名mTBI受试者和9名年龄和性别匹配的对照组)中使用适当的参数时,随机抽样安排的准确度为~ 95%,独立验证安排的准确度为~ 70%,结果很有希望。因此,我们有信心,通过更多的数据和进一步的研究,我们将能够建立一个广义的模型来准确地检测TBI,不仅通过参加,在实验室的PSG记录,而且在实际场景中,如在日常生活中从简单的可穿戴设备获得的脑电图数据。
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