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Analysis of 903 voice signals of patients with five organs illness and normal persons in traditional Chinese medicine auscultation

机译:中医听诊五脏器疾病和正常人903声音信号分析

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The purpose of this paper is to provide objective gist for organ differentiation of traditional Chinese medicine (TCM). In this paper, we collected 803 voice signals of patients with five internal organs illness and 100 voice signals of normal persons. We extracted the sample entropy characteristic of each group when embedded dimension was 2. By analyzing the statistics result, we found: (1) the sample entropy characteristic of six groups were significantly different in multiple frequencies (P≤0.05); (2) the sample entropy characteristic of normal group was much lower than that of patients (P≤0.05); (3) the sample entropy characteristic of lung illness group was much higher than that of other illness groups and normal group (P≤0.05). Finally, using the method of sample entropy combined with the Wuyin theory, we have got some objective gist for organ differentiation of TCM auscultation.
机译:本文的目的是为中医器官的分化提供客观依据。本文收集了五种内脏器官疾病患者的803个语音信号和100个正常人的语音信号。当嵌入维数为2时,提取各组的样本熵特征。通过对统计结果的分析,发现:(1)六组样本的熵特征在多个频率上有显着差异(P≤0.05); (2)正常组的样本熵特征远低于患者(P≤0.05); (3)肺部疾病组的样本熵特征明显高于其他疾病组和正常组(P≤0.05)。最后,结合样本熵的方法,结合五印理论,为中医听诊器官分化提供了客观依据。

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