基于传感器数据和支持向量机的脑卒中患者评估自动化

P. Otten, S. Son, Jonghyun Kim
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引用次数: 4

摘要

脑卒中后偏瘫患者的评估是康复的一个重要方面,特别是评估患者治疗后病情的改善。在治疗性临床试验中也常用于评估脑卒中患者[1]。Fugl-Meyer评估是脑卒中后患者身体功能损害的最广泛认可和使用的测量方法之一[2]。我们提出了一种通过收集监测患者的传感器数据来自动化Fugl-Meyer评估上肢部分的方法。从数据中提取特征并通过支持向量机(SVM)进行处理。支持向量机的输出返回一个值,该值可用于对患者的上肢功能进行评分。该系统将实现自动和廉价的中风患者评估,可以为医生节省每个患者30分钟的时间,为医生和中风研究人员节省大量时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automating Stroke Patient Evaluation Using Sensor Data and SVM
Evaluation of post-stroke hemiplegic patients is an important aspect of rehabilitation, especially for assessing improvement of a patient's condition from a treatment. It is also commonly used to evaluate stroke patients during theraputic clinical trials [1]. The Fugl-Meyer Assessment is one of the most widely recognized and utilized measures of body function impairment for post-stroke patients [2]. We propose a method for automating the upper-limb portion of the Fugl-Meyer Assessment by gathering data from sensors monitoring the patient. Features are extracted from the data and processed by a Support Vector Machine (SVM). The output from the SVM returns a value that can be used to score a patient's upper limb functionality. This system will enable automatic and inexpensive stroke patient evaluation that can save up to 30 minutes per patient for a doctor, providing a huge time-saving service for doctors and stroke researchers.
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