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Validation of Freezing-of-Gait Monitoring Using Smartphone

机译:使用智能手机验证步态冻结监控

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Background:Freezing of gait (FOG) is a commonly observed motor symptom for patients with Parkinson's disease (PD). The symptoms of FOG include reduced step lengths or motor blocks, even with an evident intention of walking. FOG should be monitored carefully because it not only lowers the patient's quality of life, but also significantly increases the risk of injury.Introduction:In previous studies, patients had to wear several sensors on the body and another computing device was needed to run the FOG detection algorithm. Moreover, the features used in the algorithm were based on low-level and hand-crafted features. In this study, we propose a FOG detection system based on a smartphone, which can be placed in the patient's daily wear, with a novel convolutional neural network (CNN).Methods:The walking data of 32 PD patients were collected from the accelerometer and gyroscope embedded in the smartphone, located in the trouser pocket. The motion signals measured by the sensors were converted into the frequency domain and stacked into a 2D image for the CNN input. A specialized CNN model for FOG detection was determined through a validation process.Results:We compared our performances with the results acquired by the previously reported settings. The proposed architecture discriminated the freezing events from the normal activities with an average sensitivity of 93.8% and a specificity of 90.1%.Conclusions:Using our methodology, the precise and continuous monitoring of freezing events with unconstrained sensing can assist patients in managing their chronic disease in daily life effectively.
机译:背景:步态冻结(雾)是帕金森病(PD)患者的常见运动症状。雾的症状包括降低的步长或电机块,即使是走路的明显意图。雾应仔细监测,因为它不仅降低了患者的生活质量,而且还显着提高了伤害的风险。表现出:在以前的研究中,患者必须在身体上佩戴几个传感器,并且需要另一个计算装置来运行雾检测算法。此外,算法中使用的功能基于低电平和手工制作的功能。在这项研究中,我们提出了一种基于智能手机的雾检测系统,该系统可以放置在患者的日常磨损中,具有新的卷积神经网络(CNN)。方法:32个PD患者的行走数据从加速度计收集和陀螺嵌入智能手机,位于裤子口袋里。由传感器测量的运动信号被转换为频域并堆叠到用于CNN输入的2D图像中。通过验证过程确定了用于雾检测的专用CNN模型。结果:我们将我们的性能与先前报告的设置获得的结果进行了比较。拟议的架构将冻结事件与平均敏感性的平均灵敏度鉴定为93.8%,特异性为90.1%。结论:使用我们的方法,对无约束感测的冷冻事件的精确和连续监测可以帮助患者进行患者管理其慢性疾病在日常生活中有效。

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