2024
DOI: 10.3389/fbioe.2023.1285945
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Prediction of stroke patients’ bedroom-stay duration: machine-learning approach using wearable sensor data

Takayuki Ogasawara,
Masahiko Mukaino,
Kenichi Matsunaga
et al.

Abstract: Background: The importance of being physically active and avoiding staying in bed has been recognized in stroke rehabilitation. However, studies have pointed out that stroke patients admitted to rehabilitation units often spend most of their day immobile and inactive, with limited opportunities for activity outside their bedrooms. To address this issue, it is necessary to record the duration of stroke patients staying in their bedrooms, but it is impractical for medical providers to do this manually during the… Show more

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