Literature DB >> 33594351

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

Austin Gentry, William M Mongan1, Brent Lee2, Owen Montgomery3, Kapil R Dandekar2.   

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%.

Entities:  

Keywords:  Biomedical Computing; Classification Algorithms; Wearable Sensors

Year:  2019        PMID: 33594351      PMCID: PMC7884185          DOI: 10.1109/compsac.2019.10252

Source DB:  PubMed          Journal:  Proc COMPSAC


  1 in total

1.  Energy-Efficient Respiratory Anomaly Detection in Premature Newborn Infants.

Authors:  Ankita Paul; Md Abu Saleh Tajin; Anup Das; William M Mongan; Kapil R Dandekar
Journal:  Electronics (Basel)       Date:  2022-02-23       Impact factor: 2.690

  1 in total

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