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Facial Recognition Task for the Classification of Mild Cognitive Impairment with Ensemble Sparse Classifier

机译:整体稀疏分类器对轻度认知障碍分类的面部识别任务

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Conventional methods for detecting mild cognitive impairment (MCI) require cognitive exams and follow-up neuroimaging, which can be time-consuming and expensive. A great need exists for objective and cost-effective biomarkers for the early detection of MCI. This study uses a sequential imaging oddball paradigm to determine if familiar, unfamiliar, or inverted faces are effective visual stimuli for the early detection of MCI. Unlike the traditional approach where the amplitude and latency of certain deflection points of event-related potentials (ERPs) are selected as electrophysiological biomarkers (or features) of MCI, we used the entire ERPs as potential biomarkers and relied on an advanced machine-learning technique, i.e. an ensemble of sparse classifier (ESC), to choose the set of features to best discriminate MCI from healthy controls. Five MCI subjects and eight age-matched controls were given the MoCA exam before EEG recordings in a sensory-deprived room. Traditional time-domain comparisons of averaged ERPs between the two groups did not yield any statistical significance. However, ESC was able to discriminate MCI from controls with 95% classification accuracy based on the averaged ERPs elicited by familiar faces. By adopting advanced machine-learning techniques such as ESC, it may be possible to accurately diagnose MCI based on the ERPs that are specifically elicited by familiar faces.
机译:用于检测轻度认知障碍(MCI)的常规方法需要进行认知检查和后续的神经成像检查,这可能既耗时又昂贵。迫切需要客观且具有成本效益的生物标记物,以用于MCI的早期检测。这项研究使用顺序成像的奇异球范例来确定熟悉,不熟悉或颠倒的面孔对于早期检测MCI是否有效的视觉刺激。与传统方法不同,在传统方法中,将事件相关电位(ERP)的某些偏转点的幅度和潜伏期选择为MCI的电生理生物标记(或特征),我们将整个ERP用作潜在生物标记,并依靠先进的机器学习技术,即稀疏分类器(ESC)的集合,以选择特征集以最好地将MCI与健康对照区分开。在感官匮乏的房间中进行脑电图记录之前,对5名MCI受试者和8名年龄匹配的对照组进行了MoCA考试。两组之间平均ERP的传统时域比较没有任何统计学意义。但是,ESC能够根据熟悉的面孔得出的平均ERP值,以95%的分类准确率将MCI与控件区分开。通过采用诸如ESC之类的高级机器学习技术,有可能基于熟悉的面孔特别引出的ERP来准确诊断MCI。

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