Analysis of pathological tremors using the autoregression model.

K. Okada, S. Hando, M. Teranishi, Y. Matsumoto, I. Fukumoto
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引用次数: 3

Abstract

The usefulness of analysis of acceleration data using an autoregression model (AR) for differential diagnosis of Parkinson's disease and other diseases with tremors was investigated. The order of the AR model used in this study was 7, in accordance with Akaike's final prediction error criterion. The subjects included 19 patients with Parkinson's disease; 21 patients with essential tremor, which mainly appears in old people, as well as Parkinson's disease; and 13 healthy old people as a control group. The results of analysis of acceleration data showed that the first prediction coefficient, just as the main tremor frequency, was a useful parameter for differentiating patients in the Parkinson's disease patient group and essential tremor patient group. The seventh prediction coefficient was found to be a useful parameter for distinguishing pathological tremors observed in Parkinson's disease and essential tremor disease from physiological tremors observed in healthy people. Although the usefulness of other prediction coefficients for differential diagnosis of Parkinson's disease and other diseases with tremors has not yet been clarified, the results of this study showed that information obtained from AR model parameters in addition to information on main tremor frequency is useful for the diagnosis of Parkinson's disease.
病理性震颤的自回归模型分析。
利用自回归模型(AR)分析加速度数据对帕金森病和其他伴有震颤的疾病的鉴别诊断的有用性进行了研究。本研究使用的AR模型阶数为7,符合赤池的最终预测误差准则。研究对象包括19名帕金森病患者;特发性震颤21例,主要见于老年人,同时伴有帕金森病;13名健康老年人作为对照组。加速度数据分析结果表明,第一预测系数作为主要震颤频率,是区分帕金森病患者组和特发性震颤患者组的有用参数。第七个预测系数是区分帕金森病和特发性震颤病的病理性震颤和健康人的生理性震颤的有用参数。虽然其他预测系数对帕金森病和其他伴有震颤的疾病的鉴别诊断的有用性尚未明确,但本研究结果表明,除了主震颤频率信息外,从AR模型参数中获得的信息对帕金森病的诊断是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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