“频率分布”是否足以检测PD患者在手腕上佩戴的加速度计的震颤?

Claas Ahlrichs, A. Samà
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引用次数: 12

摘要

本文介绍了两种利用腕式加速度计检测帕金森病患者震颤的方法。这两种方法都在特异性和敏感性方面进行了评估,以及它们对实时实施的适用性。一种方法完全基于带窗时间序列的频率分布,而第二种方法利用了文献中常用的特征(例如FFT、熵、峰值频率、相关性)。这两种算法在带窗时间序列中检测静止时的震颤。研究了不同窗长和检测阈值的影响。结果表明,具有线性核的支持向量机,结合频率分布,可能已经足以准确可靠地检测带窗时间序列中的震颤。在使用来自12名患者的第一个信号数据集进行训练后,该方法在来自64名PD患者的第二个数据集中获得了88.4%的灵敏度和89.4%的特异性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Is "frequency distribution" enough to detect tremor in PD patients using a wrist worn accelerometer?
This paper presents two approaches on detecting tremor in patients with Parkinson's Disease by means of a wrist-worn accelerometer. Both approaches are evaluated in terms of specificity and sensitivity as well as their applicability for a real-time implementation. One approach is solely based on the frequency distribution of a windowed time series, while the second approach utilizes commonly employed features found in the literature (e.g. FFT, entropy, peak frequency, correlation). The two algorithms detect tremor at rest in windowed time series. The effects of varying window lengths and detection thresholds are studied. The results indicate that an SVM with a linear kernel, in combination with the frequency distribution, may already be enough to accurately and reliably detect tremor in windowed time series. The approach, after being trained with a first dataset of signals obtained from 12 patients, achieved a sensitivity of 88.4% and specificity of 89.4% in a second dataset from 64 PD patients.
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