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Computerized Wrist pulse signal Diagnosis using Gradient Boosting Decision Tree

机译:基于梯度助推决策树的手腕脉冲信号计算机诊断

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In traditional Chinese medicine (TCM), pulse diagnosis is an important diagnostic method that has a long history and has been widely applied. Wrist pulse signals can be used to analyze a person's health status, reflecting the pathologic changes of the person's body condition. With regard to TCM pulse diagnosis, the However, the traditional diagnostic approach has been mainly based on the feel of the doctor, which is non-quantitative and subjective. This paper aims to present a new classification method is proposed for analyzing wrist pulse signals, to provide an automatic and quantitative approach for the diagnosis of TCM based on the pulse. Methods: First, the time domain analysis and hemodynamics method were used to extract and analyze pulse parameters. Then the filtering method was used to select all features. Furthermore, GBDT was used to classify and identify the pulse, and establish a model. Results: The wave peaks, wave valleys and time periods, pulse wave velocity and reflection factors are extracted by time domain analysis and hemodynamic analysis. Then, four important features, including h3/h1, h4/h1, w/t and Rf, were selected using the filter feature selection method. Then, the GBDT classification method was used to classify the pulse image of TCM. The middle GBDT classification method exhibited the best effect. The recognition accuracy of the sliding vein, chord vein and chord pulse was 90.33%, 83.52%, 97.74% and 78.60%, respectively, and the overall recognition accuracy was 90.51%. Conclusion: The parameters of the pulse map were optimized and the classification and recognition model of the pulse image was established to realize the automatic recognition of characteristics of pulse diagnosis in TCM. Based on the GBDT classification recognition method, a more accurate classification and recognition model of TCM was established.
机译:在中医(TCM)中,脉搏诊断是一种历史悠久的重要诊断方法,已得到广泛应用。手腕脉冲信号可用于分析人的健康状况,反映人身体状况的病理变化。关于中医脉诊,然而,传统的诊断方法主要是基于医生的感觉,这是非量化和主观的。本文旨在提出一种新的分类方法,用于分析腕部脉搏信号,为基于脉搏的中医诊断提供一种自动,定量的方法。方法:首先,使用时域分析和血液动力学方法提取和分析脉搏参数。然后使用过滤方法选择所有特征。此外,GBDT用于分类和识别脉冲,并建立模型。结果:通过时域分析和血液动力学分析,提取出波峰,波谷和时间段,脉搏波速度和反射因子。然后,有四个重要特征,包括h3 / h1,h4 / h1,w / t和R f ,是使用过滤器功能选择方法选择的。然后,采用GBDT分类法对中医脉象进行分类。中间的GBDT分类方法表现出最好的效果。滑动静脉,和弦静脉和和弦脉冲的识别准确度分别为90.33%,83.52%,97.74%和78.60%,总体识别准确度为90.51%。结论:优化脉搏图参数,建立脉搏图像分类识别模型,实现中医脉诊特征的自动识别。基于GBDT分类识别方法,建立了更准确的中药分类识别模型。

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