Computational gait analysis for post-stroke rehabilitation purposes using fuzzy numbers, fractal dimension and neural networks

IF 1.2 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY
Piotr Prokopowicz, D. Mikołajewski, K. Tyburek, E. Mikołajewska
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引用次数: 17

Abstract

Computational gait analysis constitutes a useful tool for quantitative assessment of gait disturbances, improving functional diag nosis, assessment of treatment planning, and monitoring of disease progress. There is little research on use of computational gait analysis in neurorehabilitation of post-stroke survivors, but current evidence on its clinical application supports a favorable cost-benefit ratio. The research was conducted among 50 adult people: 25 of them after ischemic stroke constituted the study group, and 25 healthy volunteers constituted the reference group. Study group members were treated for 2 weeks (10 neurorehabilitation sessions). Spatio-temporal gait parameters were assessed before and after therapy and compared using a novel fuzzy-based assessment tool, fractal dimension measurement and gait classification based on artificial neural networks. Measured results of rehabilitation (changes of gait parameters) were statistically relevant and reflected recovery. There is good evidence to extend its use to patients with various gait diseases undergoing neurorehabilitation. However, methodology for properly conducting and interpreting the proposed assessment and analysis procedures, providing validity and reliability of their results remains a key issue. More objective clinical reasoning, based on proposed novel tools, requires further research.
基于模糊数、分形维数和神经网络的脑卒中后康复步态分析
计算步态分析是定量评估步态障碍、改善功能诊断、评估治疗计划和监测疾病进展的有用工具。关于计算步态分析在脑卒中后幸存者神经康复中的应用的研究很少,但目前的临床应用证据支持良好的成本效益比。研究对象为50名成年人,其中25名缺血性中风后的志愿者为研究组,25名健康志愿者为参照组。实验组成员治疗2周(10个神经康复疗程)。采用一种新的基于模糊的评估工具,分形维数测量和基于人工神经网络的步态分类,对治疗前后的时空步态参数进行了评估和比较。康复的测量结果(步态参数的变化)具有统计学相关性,反映了康复。有很好的证据可以将其应用于接受神经康复治疗的各种步态疾病患者。然而,适当地进行和解释拟议的评估和分析程序,提供其结果的有效性和可靠性的方法仍然是一个关键问题。更客观的临床推理,基于提出的新工具,需要进一步的研究。
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来源期刊
CiteScore
2.80
自引率
16.70%
发文量
0
审稿时长
6-12 weeks
期刊介绍: The Bulletin of the Polish Academy of Sciences: Technical Sciences is published bimonthly by the Division IV Engineering Sciences of the Polish Academy of Sciences, since the beginning of the existence of the PAS in 1952. The journal is peer‐reviewed and is published both in printed and electronic form. It is established for the publication of original high quality papers from multidisciplinary Engineering sciences with the following topics preferred: Artificial and Computational Intelligence, Biomedical Engineering and Biotechnology, Civil Engineering, Control, Informatics and Robotics, Electronics, Telecommunication and Optoelectronics, Mechanical and Aeronautical Engineering, Thermodynamics, Material Science and Nanotechnology, Power Systems and Power Electronics.
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