A Two-stream Convolutional Network for Musculoskeletal and Neurological Disorders Prediction
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Published:2022-10-06
Issue:11
Volume:46
Page:
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ISSN:1573-689X
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Container-title:Journal of Medical Systems
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language:en
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Short-container-title:J Med Syst
Author:
Zhu Manli, Men Qianhui, Ho Edmond S. L.ORCID, Leung Howard, Shum Hubert P. H.ORCID
Abstract
AbstractMusculoskeletal and neurological disorders are the most common causes of walking problems among older people, and they often lead to diminished quality of life. Analyzing walking motion data manually requires trained professionals and the evaluations may not always be objective. To facilitate early diagnosis, recent deep learning-based methods have shown promising results for automated analysis, which can discover patterns that have not been found in traditional machine learning methods. We observe that existing work mostly applies deep learning on individual joint features such as the time series of joint positions. Due to the challenge of discovering inter-joint features such as the distance between feet (i.e. the stride width) from generally smaller-scale medical datasets, these methods usually perform sub-optimally. As a result, we propose a solution that explicitly takes both individual joint features and inter-joint features as input, relieving the system from the need of discovering more complicated features from small data. Due to the distinctive nature of the two types of features, we introduce a two-stream framework, with one stream learning from the time series of joint position and the other from the time series of relative joint displacement. We further develop a mid-layer fusion module to combine the discovered patterns in these two streams for diagnosis, which results in a complementary representation of the data for better prediction performance. We validate our system with a benchmark dataset of 3D skeleton motion that involves 45 patients with musculoskeletal and neurological disorders, and achieve a prediction accuracy of 95.56%, outperforming state-of-the-art methods.
Publisher
Springer Science and Business Media LLC
Subject
Health Information Management,Health Informatics,Information Systems,Medicine (miscellaneous)
Reference45 articles.
1. Mahlknecht, P., Kiechl, S., Bloem, B.R., Willeit, J., Scherfler, C., Gasperi, A., Rungger, G., Poewe, W., Seppi, K.: Prevalence and burden of gait disorders in elderly men and women aged 60–97 years: a population-based study. PLoS One 8(7), 69627 (2013) 2. Muro-de-la-Herran, A., Garcia-Zapirain, B., M´endez-Zorrilla, A.: Gait analysis methods: An overview of wearable and non-wearable systems, highlighting clinical applications. Sensors 14(2), 3362–3394 (2014) 3. Lee, D.-W., Jun, K., Lee, S., Ko, J.-K., Kim, M.S.: Abnormal gait recognition using 3d joint information of multiple kinects system and rnn-lstm. In: 2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), pp. 542–545 (2019) 4. V´asquez-Correa, J.C., Arias-Vergara, T., Orozco-Arroyave, J.R., Eskofier, B., Klucken, J., Nöth, E.: Multimodal assessment of parkinson’s disease: A deep learning approach. IEEE Journal of Biomedical and Health Informatics 23(4), 1618–1630 (2019) 5. Abtahi, M., Bahram Borgheai, S., Jafari, R., Constant, N., Diouf, R., Shahriari, Y., Mankodiya, K.: Merging fnirs-eeg brain monitoring and body motion capture to distinguish parkinsons disease. IEEE Transactions on Neural Systems and Rehabilitation Engineering 28(6), 1246–1253 (2020). https://doi.org/10.1109/TNSRE.2020.2987888
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