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A Mobile Application for Smart Computer-Aided Self-Administered Testing of Cognition Speech and Motor Impairment

机译:用于智能计算机辅助的认知语音和运动障碍自我管理测试的移动应用程序

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摘要

We present a model for digital neural impairment screening and self-assessment, which can evaluate cognitive and motor deficits for patients with symptoms of central nervous system (CNS) disorders, such as mild cognitive impairment (MCI), Parkinson’s disease (PD), Huntington’s disease (HD), or dementia. The data was collected with an Android mobile application that can track cognitive, hand tremor, energy expenditure, and speech features of subjects. We extracted 238 features as the model inputs using 16 tasks, 12 of them were based on a self-administered cognitive testing (SAGE) methodology and others used finger tapping and voice features acquired from the sensors of a smart mobile device (smartphone or tablet). Fifteen subjects were involved in the investigation: 7 patients with neurological disorders (1 with Parkinson’s disease, 3 with Huntington’s disease, 1 with early dementia, 1 with cerebral palsy, 1 post-stroke) and 8 healthy subjects. The finger tapping, SAGE, energy expenditure, and speech analysis features were used for neural impairment evaluations. The best results were achieved using a fusion of 13 classifiers for combined finger tapping and SAGE features (96.12% accuracy), and using bidirectional long short-term memory (BiLSTM) (94.29% accuracy) for speech analysis features.
机译:我们提供了一种用于数字神经损伤筛查和自我评估的模型,该模型可以评估患有中枢神经系统(CNS)症状(例如轻度认知障碍(MCI),帕金森氏病(PD),亨廷顿病)的患者的认知和运动功能障碍疾病(HD)或痴呆症。数据是通过Android移动应用程序收集的,该应用程序可以跟踪受试者的认知,手震,能量消耗和言语特征。我们使用16个任务提取了238个特征作为模型输入,其中12个是基于自我管理的认知测试(SAGE)方法,其他则使用了从智能移动设备(智能手机或平板电脑)的传感器获取的手指敲击和语音特征。 15名受试者参与了调查:7名神经系统疾病患者(1名患有帕金森氏病,3名患有亨廷顿舞蹈病,1名患有早期痴呆,1名患有脑瘫,中风后有1名)和8名健康受试者。手指敲击,SAGE,能量消耗和语音分析功能用于神经损伤评估。通过将13个分类器融合在一起以实现手指敲击和SAGE功能(准确度为96.12%),并使用双向长短期记忆(BiLSTM)(准确度为94.29%)来实现语音分析功能,可以获得最佳结果。

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