4.6 Article

Automatic Post-Stroke Severity Assessment Using Novel Unsupervised Consensus Learning for Wearable and Camera-Based Sensor Datasets

Journal

SENSORS
Volume 23, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/s23125513

Keywords

stroke; Wearable Sensor (Xsens); camera-based system; automated assessment; level of severity; clustering; consensus clustering; trunk displacement

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Stroke survivors often experience movement impairments that affect their daily activities. Advances in sensor technology and IoT have opened up possibilities for automating post-stroke assessment and rehabilitation using AI-driven models. This paper introduces a smart post-stroke severity assessment approach that uses unsupervised learning and trunk displacement features in the frequency domain. The proposed consensus clustering algorithm, PSA-NMF, combines different clusterings to produce more stable and robust results. Experimental results show improved evaluation metrics, such as accuracy and F-score, which can contribute to a more effective and automated stroke rehabilitation process in clinical settings.
Stroke survivors often suffer from movement impairments that significantly affect their daily activities. The advancements in sensor technology and IoT have provided opportunities to automate the assessment and rehabilitation process for stroke survivors. This paper aims to provide a smart post-stroke severity assessment using AI-driven models. With the absence of labelled data and expert assessment, there is a research gap in providing virtual assessment, especially for unlabeled data. Inspired by the advances in consensus learning, in this paper, we propose a consensus clustering algorithm, PSA-NMF, that combines various clusterings into one united clustering, i.e., cluster consensus, to produce more stable and robust results compared to individual clustering. This paper is the first to investigate severity level using unsupervised learning and trunk displacement features in the frequency domain for post-stroke smart assessment. Two different methods of data collection from the U-limb datasets-the camera-based method (Vicon) and wearable sensor-based technology (Xsens)-were used. The trunk displacement method labelled each cluster based on the compensatory movements that stroke survivors employed for their daily activities. The proposed method uses the position and acceleration data in the frequency domain. Experimental results have demonstrated that the proposed clustering method that uses the post-stroke assessment approach increased the evaluation metrics such as accuracy and F-score. These findings can lead to a more effective and automated stroke rehabilitation process that is suitable for clinical settings, thus improving the quality of life for stroke survivors.

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