Activity Segmentation Using Wearable Sensors for DVT/PE Risk Detection.

Austin Gentry, William M Mongan, Brent Lee, Owen Montgomery, Kapil R Dandekar
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Abstract

Using a wearable electromyography (EMG) and an accelerometer sensor, classification of subject activity state (i.e., walking, sitting, standing, or ankle circles) enables detection of prolonged "negative" activity states in which the calf muscles do not facilitate blood flow return via the deep veins of the leg. By employing machine learning classification on a multi-sensor wearable device, we are able to classify human subject state between "positive" and "negative" activities, and among each activity state, with greater than 95% accuracy. Some negative activity states cannot be accurately discriminated due to their similar presentation from an accelerometer (i.e., standing vs. sitting); however, it is desirable to separate these states to better inform the risk of developing a Deep Vein Thrombosis (DVT). Augmentation with a wearable EMG sensor improves separability of these activities by 30%.

Abstract Image

Abstract Image

Abstract Image

利用可穿戴传感器进行活动分段,以检测深静脉血栓/肺栓塞风险。
通过使用可穿戴肌电图(EMG)和加速度传感器,对受试者的活动状态(即行走、坐姿、站姿或踝关节绕圈)进行分类,可以检测出小腿肌肉不能促进血液通过腿部深静脉回流的长时间 "消极 "活动状态。通过在多传感器可穿戴设备上采用机器学习分类法,我们能够在 "积极 "和 "消极 "活动之间以及每种活动状态之间对人体状态进行分类,准确率超过 95%。由于加速度计的表现形式相似(如站立与坐姿),一些负面活动状态无法准确区分;然而,我们希望将这些状态区分开来,以便更好地了解深静脉血栓(DVT)的发病风险。使用可穿戴肌电图传感器可将这些活动的可分离性提高 30%。
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