Early Mobility Recognition for Intensive Care Unit Patients Using
Accelerometers
- URL: http://arxiv.org/abs/2106.15017v1
- Date: Mon, 28 Jun 2021 22:59:31 GMT
- Title: Early Mobility Recognition for Intensive Care Unit Patients Using
Accelerometers
- Authors: Rex Liu, Sarina A Fazio, Huanle Zhang, Albara Ah Ramli, Xin Liu, Jason
Yeates Adams
- Abstract summary: We propose a new healthcare application of human activity recognition, early mobility recognition for Intensive Care Unit(ICU) patients.
Our system includes accelerometer-based data collection from ICU patients and an AI model to recognize patients' early mobility.
Our results show that our system improves model accuracy from 77.78% to 81.86% and reduces the model instability (standard deviation) from 16.69% to 6.92%.
- Score: 3.772793938066986
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the development of the Internet of Things(IoT) and Artificial
Intelligence(AI) technologies, human activity recognition has enabled various
applications, such as smart homes and assisted living. In this paper, we target
a new healthcare application of human activity recognition, early mobility
recognition for Intensive Care Unit(ICU) patients. Early mobility is essential
for ICU patients who suffer from long-time immobilization. Our system includes
accelerometer-based data collection from ICU patients and an AI model to
recognize patients' early mobility. To improve the model accuracy and
stability, we identify features that are insensitive to sensor orientations and
propose a segment voting process that leverages a majority voting strategy to
recognize each segment's activity. Our results show that our system improves
model accuracy from 77.78\% to 81.86\% and reduces the model instability
(standard deviation) from 16.69\% to 6.92\%, compared to the same AI model
without our feature engineering and segment voting process.
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