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Development of a Mental Disorder Screening System Using Support Vector Machine for Classification of Heart Rate Variability Measured from Single-lead Electrocardiography

机译:使用支持向量机进行精神障碍筛查系统,用于从单引出心电图测量的心率变异性分类

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The diagnosis of psychiatric disorders, such as major depressive disorder (MDD), depends on clinical interviews and assessment of symptoms. However, due to the fact that mental states cannot be objectively assessed, diagnosis procedures are often influenced by clinical experience of psychiatrist. Hence, the aim of this study is to develop a simple, objective, highly accurate self-check system for screening of psychiatric disorders based on heart rate variability (HRV) measured from single- lead electrocardiography (ECG) or photoplethysmogram (PPG) for home healthcare monitoring. HRV is widely used as objective biomarker for assessment of autonomic nerve system. The low frequency (LF) of HRV originates from the sympathetic and parasympathetic nerves. The high frequency (HF) originates from the parasympathetic nerves. In our previous clinical trial, we confirmed that HRV of MDD patients is less reactive than healthy subjects during a mental task (generate random numbers) condition. However, mental task alone is difficult to assess HRV accurately owing to influence of measurement condition and individual differences. In this study, we implemented a single-lead ECG system based on reactivity of HRV, and combined mental task and paced deep breathing thereby improving the screening accuracy. Moreover, support vector machine (SVM) model was applied for classification of HRV indices. We tested the system on 16 healthy subjects and 7 psychiatric patients with depression or somatoform disorder. A significant difference was found between the healthy group and the patient group for the response of the HRV indices on dual mental tasks. The SVM non-linear classification model achieved a sensitivity of 71.4% and specificity of 93.8%.
机译:精神病疾病的诊断,例如重大抑郁症(MDD),取决于临床访谈和对症状的评估。然而,由于精神状态不能客观地评估,诊断程序通常受到精神科医生的临床经验的影响。因此,本研究的目的是开发一种简单,客观,高度准确的自我检查系统,用于筛查根据心率变异(HRV)从单引前心电图(ECG)或PHEROPLETHESYMACH(PPG)用于家庭的心率变异性(HRV)医疗保健监测。 HRV广泛用作客观生物标志物,用于评估自主神经系统。 HRV的低频(LF)来自同情和副交感神经。高频(HF)源自副交感神经。在我们以前的临床试验中,我们确认MDD患者的HRV在精神任务(产生随机数)条件下的健康受试者的反应性较小。然而,由于测量条件和个体差异的影响,单独的精神任务难以准确地评估HRV。在这项研究中,我们基于HRV的反应性实现了一个单引脚ECG系统,以及组合精神任务和节奏深呼吸,从而提高了筛选精度。此外,支持支持向量机(SVM)模型用于HRV指数的分类。我们在16名健康受试者和7名精神病患者的抑郁症或躯体造型症患者中测试了该系统。在健康组和患者组之间发现了一个重要的差异,以获得HRV指数对双重精神任务的响应。 SVM非线性分类模型达到71.4%的敏感性,特异性为93.8%。

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