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Implementation of an iPod wireless accelerometer application using machine learning to classify disparity of hemiplegic and healthy patellar tendon reflex pair

机译:使用机器学习对偏瘫和健康的tell骨腱反射对的差异进行分类的iPod无线加速度计应用程序的实现

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摘要

The characteristics of the patellar tendon reflex provide fundamental insight regarding the diagnosis of neurological status. Based on the features of the tendon reflex response, a clinician may establish preliminary perspective regarding the global condition of the nervous system. Current techniques for quantifying the observations of the reflex response involve the application of ordinal scales, requiring the expertise of a highly skilled clinician. However, the reliability of the ordinal scale approach is debatable. Highly skilled clinicians have even disputed the presence of asymmetric reflex pairs. An alternative strategy was the implementation of an iPod wireless accelerometer application to quantify the reflex response acceleration waveform. An application enabled the recording of the acceleration waveform and later wireless transmission as an email attachment by connectivity to the Internet. A potential energy impact pendulum enabled the patellar tendon reflex to be evoked in a predetermined and targeted manner. Three feature categories of the reflex response acceleration waveform (global parameters, temporal organization, and spectral features) were incorporated into machine learning to distinguish a subject's hemiplegic and healthy reflex pair. Machine learning attained perfect classification of the hemiplegic and healthy reflex pair. The research findings implicate the promise of machine learning for providing increased diagnostic acuity regarding the acceleration waveform of the tendon reflex response.
机译:tell腱反射的特征为诊断神经系统状况提供了基本见识。基于腱反射反应的特征,临床医生可以建立有关神经系统整体状况的初步观点。用于量化反射反应的观察结果的当前技术涉及顺序量表的应用,需要高级临床医生的专业知识。但是,序数标度方法的可靠性值得商bat。熟练的临床医生甚至对不对称反射对的存在提出了质疑。一种替代策略是实施iPod无线加速度计应用程序,以量化反射响应加速度波形。一个应用程序可以记录加速度波形,并随后通过与Internet的连接以电子邮件附件的形式进行无线传输。潜在的能量冲击摆使enabled骨腱反射能够以预定的针对性方式引起。反射响应加速波形的三个特征类别(全局参数,时间组织和频谱特征)已被纳入机器学习中,以区分受试者的偏瘫和健康反射对。机器学习获得了偏瘫和健康反射对的完美分类。研究发现暗示了机器学习的前景,即可以提供有关肌腱反射反应的加速波形的更高的诊断敏锐度。

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