Accelerometer-based Bed Occupancy Detection for Automatic, Non-invasive
Long-term Cough Monitoring
- URL: http://arxiv.org/abs/2202.03936v1
- Date: Tue, 8 Feb 2022 15:38:34 GMT
- Title: Accelerometer-based Bed Occupancy Detection for Automatic, Non-invasive
Long-term Cough Monitoring
- Authors: Madhurananda Pahar, Igor Miranda, Andreas Diacon and Thomas Niesler
- Abstract summary: We present a machine learning based long-term cough monitoring system by detecting patient's bed occupancy from a bed-attached smartphone-inbuilt accelerometer automatically.
We have compiled a 249-hour dataset of manually-labelled acceleration signals from seven adult male patients undergoing treatment for tuberculosis (TB)
The results show that patients who improve under TB treatment have decreasing daily cough rates.
- Score: 7.755952127616406
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present a machine learning based long-term cough monitoring system by
detecting patient's bed occupancy from a bed-attached smartphone-inbuilt
accelerometer automatically. Previously this system was used to detect cough
events successfully and long-term cough monitoring requires bed occupancy
detection, as the initial experiments show that patients leave their bed very
often for long period of time and using video-monitoring or pressure sensors
are not patient-favourite alternatives. We have compiled a 249-hour dataset of
manually-labelled acceleration signals gathered from seven adult male patients
undergoing treatment for tuberculosis (TB). The bed occupancy detection process
consists of three detectors, among which the first one classifies
occupancy-change with high sensitivity, low specificity and the second one
classifies occupancy-interval with high specificity, low sensitivity. The final
state detector corrects the miss-classified sections. After using a
leave-one-patient-out cross-validation scheme to train and evaluate four
classifiers such as LR, MLP, CNN and LSTM; LSTM produces the highest area under
the curve (AUC) of 0.94 while comparing the predicted bed occupancy as the
output from the final state detector with the actual bed occupancy sample by
sample. We have also calculated colony forming unit and time to positivity of
the sputum samples of TB positive patients who were monitored for 14 days and
the proposed system was used to predict daily cough rates. The results show
that patients who improve under TB treatment have decreasing daily cough rates,
indicating the proposed automatic, quick, non-invasive, non-intrusive,
cost-effective long-term cough monitoring system can be extremely useful in
monitoring patients' recovery rate.
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