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A Mahalanobis Distance Based Approach towards the Reliable Detection of Geriatric Depression Symptoms Co-existing with Cognitive Decline

机译:基于哈尔纳诺比斯距离的距离抑郁症与认知下降共存的老年抑郁症状的距离

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摘要

Geriatric depression is a highly frequent medical condition that influences independent living and social life of senior citizens. It also affects their medical condition due to reduced commitment to the appropriate treatment. Coexistence of depressive symptoms in Mild Cognitive Impairment (MCI) and lack of objective tools towards their reliable distinction from neurodegeneration, motivated this study to propose a computerized approach of depression recognition. Resting state electroencephalographic data of both rhythmic activity and synchronization features were extracted and the Mahalanobis Distance (MD) classifier was adopted in order to differentiate 33 depressive patients from an equal number of age-matched controls. Both groups demonstrated cognitive decline within the context of MCI. The promising results (89.39% overall classification accuracy, 93.94% sensitivity and 84.85% specificity) imply that combination of neurophysiological (EEG) and neuropsychological tools with pattern recognition techniques may provide an integrative diagnosis of geriatric depression with high accuracy.
机译:老年抑郁症是一种高度频繁的医疗状况,影响高级公民的独立生活和社会生活。由于对适当治疗的承诺减少,它也会影响其医疗状况。轻度认知障碍(MCI)中抑郁症状的共存(MCI)和缺乏对神经变性的可靠区分的客观工具,激励了这项研究,提出了一种计算机化的抑郁识别方法。提取了休息状态的节奏活性和同步特征的型脑电图数据,采用Mahalanobis距离(MD)分类剂以区分33名抑郁患者,从相同的年龄匹配的对照。两组在MCI的背景下表现出认知下降。有希望的结果(总体分类准确性89.39%,灵敏度和84.85%的特异性)暗示了具有模式识别技术的神经生理学(EEG)和神经心理学工具的组合可以具有高精度的Geriatric抑郁症的一致性诊断。

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