使用智能手机和梯度增强评估脑卒中后患者

Hussein Sarwat, Hassan Sarwat, M. Awad, S. Maged
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引用次数: 3

摘要

中风是全世界第二大死亡原因和致残的主要原因。在中风中幸存下来可能会导致需要特殊护理的损伤,只有10%的中风患者能够完全康复。帮助恢复所需的税收和物理治疗师的短缺使得中风患者很难寻求治疗,而且非常昂贵。尽管成本很高,但这已经导致了向自动化治疗过程的转变,并使用康复机器人来治疗和诊断中风患者。本文演示了一种使用通用工具和开源机器学习算法的廉价诊断技术。通过使用智能手机内置的惯性测量单元和开源梯度增强,可以在执行Fugl-Meyer上肢评估的3个任务时诊断患者的分数。采用5倍交叉验证对模型的准确性进行评价,准确率为95.56%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of Post-Stroke Patients Using Smartphones and Gradient Boosting
Stroke is the second leading cause of death and a major cause of disability worldwide. Surviving a stroke will likely result in impairments that will need special care, with only 10%of stroke patients making a full recovery. The taxing amount required to assist in recovery and the scarcity of physiotherapists makes it hard and very expensive for stroke patients to seek treatment. This has caused a shift towards robotizing the process and using rehabilitation robotics for therapy and diagnosis of stroke patients, despite the high cost. This paper demonstrates a cheap diagnosing technique that uses common tools and an open-source machine learning algorithm. By using the built-in inertial measurement unit of smartphones and open-source gradient boosting, it was possible to diagnose a patient’s score when performing 3 tasks of the Fugl-Meyer upper-extremity assessment. The accuracy of the model was evaluated using 5-fold cross-validation and yielded an accuracy of 95.56%.
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