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Smartphone- and Smartwatch-Based Remote Characterisation of Ambulation in Multiple Sclerosis During the Two-Minute Walk Test

机译:两分钟步行测试期间,智能手机和SmartWatch的遥控器遥控器中的常规表征多发性硬化症

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Leveraging consumer technology such as smartphone and smartwatch devices to objectively assess people with multiple sclerosis (PwMS) remotely could capture unique aspects of disease progression. This study explores the feasibility of assessing PwMS and Healthy Control's (HC) physical function by characterising gait-related features, which can be modelled using machine learning (ML) techniques to correctly distinguish subgroups of PwMS from healthy controls. A total of 97 subjects (24 HC subjects, 52 mildly disabled (PwMSmild, EDSS [0-3]) and 21 moderately disabled (PwMSmod, EDSS [3.5-5.5]) contributed data which was recorded from a Two-Minute Walk Test (2MWT) performed out-of-clinic and daily over a 24-week period. Signal-based features relating to movement were extracted from sensors in smartphone and smartwatch devices. A large number of features (n = 156) showed fair-to-strong (R > 0.3) correlations with clinical outcomes. LASSO feature selection was applied to select and rank subsets of features used for dichotomous classification between subject groups, which were compared using Logistic Regression (LR), Support Vector Machines (SVM) and Random Forest (RF) models. Classifications of subject types were compared using data obtained from smartphone, smartwatch and the fusion of features from both devices. Models built on smartphone features alone achieved the highest classification performance, indicating that accurate and remote measurement of the ambulatory characteristics of HC and PwMS can be achieved with only one device. It was observed however that smartphone-based performance was affected by inconsistent placement location (running belt versus pocket). Results show that PwMSmod could be distinguished from HC subjects (Acc. 82.2 +/- 2.9%, Sen. 80.1 +/- 3.9%, Spec. 87.2 +/- 4.2%, F-1 84.3 +/- 3.8), and PwMSmild (Acc. 82.3 +/- 1.9%, Sen. 71.6 +/- 4.2%, Spec. 87.0 +/- 3.2%, F-1 75.1 +/- 2.2) using an SVM classifier with a Radial Basis Function (RBF). PwMSmild were shown to exhibit HC-like behaviour and were thus less distinguishable from HC (Acc. 66.4 +/- 4.5%, Sen. 67.5 +/- 5.7%, Spec. 60.3 +/- 6.7%, F-1 58.6 +/- 5.8). Finally, it was observed that subjects in this study demonstrated low intra- and high inter-subject variability which was representative of subject-specific gait characteristics.
机译:利用智能手机和智能手术设备等消费者技术客观地评估具有多发性硬化症(PWMS)的人可以远程捕获疾病进展的独特方面。本研究探讨了通过表征与步态相关的特征来评估PWM和健康控制(HC)物理功能的可行性,这可以使用机器学习(ML)技术来建模,以便将PWMS的子组与健康控制进行建模。总共97个受试者(24个HC受试者,52次轻度禁用(PWMSMild,EDSS [0-3])和21个适度禁用(PWMSMOD,EDSS [3.5-5.5])贡献的数据从两分钟的步行测试中记录( 2MWT)在24周的时间内进行诊所和每日。与运动有关的信号的特征是从智能手机和SmartWatch设备中的传感器提取的。大量的特征(n = 156)显示了公平的(r> 0.3)与临床结果的相关性。套索特征选择应用于使用逻辑回归(LR),支持向量机(SVM)和随机林(SVM)和随机森林( rf)模型。使用从智能手机,smartwatch和两个设备的功能的功能获得的数据进行比较主题类型的分类。单独构建在智能手机功能上的型号实现了最高的分类性能,表明准确和远程测量只有一个设备可以实现HC和PWMS的动态特性的讨论。然而,观察到,基于智能手机的性能受到不一致的位置位置(运行带与口袋)的影响。结果表明,PWMSMod可以与HC科目(ACC。82.2 +/- 2.9%,Sen.80.1 +/- 3.9%,Spec。87.2 +/- 4.2%,F-1 84.3 +/- 3.8)和PWMSMild (ACC。82.3 +/- 1.9%,SEN。71.6 +/- 4.2%,规格。87.0 +/- 3.2%,F-1 75.1 +/- 2.2)使用具有径向基函数(RBF)的SVM分类器。显示PWMSMILD表现出类似的HC样行为,从而从HC(ACC 66.4 +/- 4.5%,SEN.67.5 +/- 5.7%,SPEC。60.3 +/- 6.7%,F-1 58.6 + / - 5.8)。最后,观察到本研究中的受试者表现出具有代表特异性特异性步态特征的低互受对象间变异性。

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