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Identification of Parkinson’s Disease Utilizing a Single Self-recorded 20-step Walking Test Acquired by Smartphone’s Inertial Measurement Unit

机译:通过智能手机惯性测量单元获得的一项自记录的20步步行测试来识别帕金森氏病

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Parkinson's disease (PD) is a degenerative and long-term disorder of the central nervous system, which often causes motor symptoms, e.g., tremor, rigidity, and slowness. Currently, the diagnosis of PD is based on patient history and clinical examination. Technology-derived decision support systems utilizing, for example, sensor-rich smartphones can facilitate more accurate PD diagnosis. These technologies could provide less obtrusive and more comfortable remote symptom monitoring. The recent studies showed that motor symptoms of PD can reliably be detected from data gathered via smartphones. The current study utilized an open-access dataset named ”mPower” to assess the feasibility of discriminating PD from non-PD by analyzing a single self-administered 20-step walking test. From this dataset, 1237 subjects (616 had PD) who were age and gender matched were selected and classified into PD and non-PD categories. Linear acceleration (ACC) and gyroscope (GYRO) were recorded by built-in sensors of smartphones. Walking bouts were extracted by thresholding signal magnitude area of the ACC signals. Features were computed from both ACC and GYRO signals and fed into a random forest classifier of size 128 trees. The classifier was evaluated deploying 100-fold cross-validation and provided an accumulated accuracy rate of 0.7 after 10k validations. The results show that PD and non-PD patients can be separated based on a single short-lasting self-administered walking test gathered by smartphones' built-in inertial measurement units.
机译:帕金森氏病(PD)是中枢神经系统的一种退化性和长期性疾病,通常会导致运动症状,例如震颤,僵硬和缓慢。当前,PD的诊断是基于患者的病史和临​​床检查。利用例如传感器丰富的智能手机的基于技术的决策支持系统可以促进更准确的PD诊断。这些技术可以提供较少的干扰和更舒适的远程症状监测。最近的研究表明,可以通过智能手机收集的数据可靠地检测出PD的运动症状。当前的研究使用了一个名为“ mPower”的开放式数据集,通过分析一个自我管理的20步步行测试来评估将PD与非PD区分的可行性。从该数据集中,选择了1237名年龄和性别匹配的受试者(616名PD),并将其分为PD和非PD类别。线性加速度(ACC)和陀螺仪(GYRO)由智能手机的内置传感器记录。通过对ACC信号的信号幅度区域进行阈值提取来提取步行次数。从ACC和GYRO信号计算特征,然后将其输入大小为128棵树的随机森林分类器中。通过部署100倍交叉验证对分类器进行评估,并在10k验证后提供了0.7的累积准确率。结果表明,可以通过智能手机内置的惯性测量单元收集的单个持续时间短的自我管理步行测试将PD和非PD患者分开。

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