A comparison of three types of pulse signals: Physical meaning and diagnosis performance

Peng Wang, Hongzhi Zhang, W. Zuo, David Zhang, Qiufeng Wu
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引用次数: 7

Abstract

Pulse diagnosis has been extensively applied in China and Ayuredic for thousands of years. Recently more and more research interests have been given on computerized pulse diagnosis where sensor techniques are used to acquire the pulse signal and machine learning techniques are adopted to analyze the health condition based on the acquired pulse signals. By far, a number of sensors had been employed for pulse signal acquisition, which can be grouped into three categories, i.e., the pressure sensor, the photoelectric sensor, and the ultrasound sensor. To guide the sensor selection for computational pulse diagnosis, in this paper we analyze the physical meanings and sensitivities of signals sampled by these three types of sensors. The complementary information of different sensors is discussed from both cardiovascular fluid dynamics and comparative experiments by evaluating the disease classification performance. Signals acquired using different sensors are sensitive to different physiological and pathological factors. By combining signals from different sensor, improved diagnosis performance can be obtained.
三种脉冲信号的比较:物理意义和诊断性能
脉诊在中国和亚洲有着数千年的历史。近年来,利用传感器技术采集脉搏信号,利用机器学习技术对采集到的脉搏信号进行健康状况分析的计算机脉搏诊断越来越受到人们的关注。到目前为止,用于脉冲信号采集的传感器有很多,大致可以分为三类,即压力传感器、光电传感器和超声传感器。为了指导计算脉冲诊断的传感器选择,本文分析了这三种传感器采集的信号的物理意义和灵敏度。从心血管流体动力学和对比实验两方面讨论了不同传感器的互补信息,评价了不同传感器的疾病分类性能。利用不同的传感器获取的信号对不同的生理和病理因素敏感。通过对不同传感器的信号进行组合,可以提高诊断性能。
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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