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基于阵列脉搏波容积的脉搏信号分析

Analysis of Pulse Signals Based on Array Pulse Volume.

作者信息

Cui Ji, Tu Li-Ping, Zhang Jian-Feng, Zhang Shao-Liang, Zhang Zhi-Feng, Xu Jia-Tuo

机构信息

School of Basic Medicine, Shanghai University of Traditional Chinese Medicine, Shanghai, 201203, China.

Interdisciplinary Science Institute, Shanghai University of Traditional Chinese Medicine, Shanghai, 201203, China.

出版信息

Chin J Integr Med. 2019 Feb;25(2):103-107. doi: 10.1007/s11655-018-2776-y. Epub 2018 May 22.

Abstract

OBJECTIVE

To collect and analyze multi-dimensional pulse diagram features with the array sensor of a pressure profile system (PPS) and study the characteristic parameters of the new multi-dimensional pulse diagram by pulse diagram analysis technology.

METHODS

The pulse signals at the Guan position of left wrist were acquired from 105 volunteers at the Shanghai University of Traditional Chinese Medicine. We obtained the pulse data using an array sensor with 3×4 channels. Three dimensional pulse diagrams were constructed for the validated pulse data, and the array pulse volume (APV) parameter was computed by a linear interpolation algorithm. The APV differences among normal pulse (NP), wiry pulse (WP) and slippery pulse (SP) were analyzed using one-way analysis of variance. The coefficients of variation (CV) were calculated for WP, SP and NP.

RESULTS

The APV difference between WP and NP in the 105 volunteers was statistically significant (6.26±0.28 vs. 6.04±0.36, P=0.048), as well as the difference between WP and SP (6.26±0.28 vs. 6.07±0.46, P=0.049). However, no statistically significant difference was found between NP and SP (P=0.75). WP showed a similar CV (4.47%) to those of NP (5.96%) and SP (7.58%).

CONCLUSION

The new parameter APV could differentiate between NP or SP and WP. Accordingly, APV could be considered an useful parameter for the analysis of array pulse diagrams in Chinese medicine.

摘要

目的

利用压力分布系统(PPS)的阵列传感器收集并分析多维脉象图特征,通过脉象图分析技术研究新型多维脉象图的特征参数。

方法

从上海中医药大学的105名志愿者左手腕关部采集脉象信号。我们使用具有3×4通道的阵列传感器获取脉象数据。为经验证的脉象数据构建三维脉象图,并通过线性插值算法计算阵列脉容积(APV)参数。采用单因素方差分析方法分析正常脉(NP)、弦脉(WP)和滑脉(SP)之间的APV差异。计算WP、SP和NP的变异系数(CV)。

结果

105名志愿者中WP与NP之间的APV差异具有统计学意义(6.26±0.28对6.04±0.36,P = 0.048),WP与SP之间的差异也具有统计学意义(6.26±0.28对6.07±0.46,P = 0.049)。然而,NP与SP之间未发现统计学显著差异(P = 0.75)。WP的CV(4.47%)与NP(5.96%)和SP(7.58%)的CV相似。

结论

新参数APV可区分NP或SP与WP。因此,APV可被认为是中医阵列脉象图分析的一个有用参数。

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