JOURNAL ARTICLE

Computerized Wrist pulse signal Diagnosis using Gradient Boosting Decision Tree

Abstract

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 R f , 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.

Keywords:
Time domain Artificial intelligence Pattern recognition (psychology) Computer science Pulse (music) Decision tree Chord (peer-to-peer) Feature extraction Pulse Wave Analysis Boosting (machine learning) Filter (signal processing) Pulse wave Gradient boosting Computer vision Random forest

Metrics

13
Cited By
2.88
FWCI (Field Weighted Citation Impact)
3
Refs
0.88
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Traditional Chinese Medicine Studies
Health Sciences →  Medicine →  Complementary and alternative medicine
Non-Invasive Vital Sign Monitoring
Physical Sciences →  Engineering →  Biomedical Engineering
EEG and Brain-Computer Interfaces
Life Sciences →  Neuroscience →  Cognitive Neuroscience

Related Documents

BOOK-CHAPTER

Computerized Wrist Pulse Signal Diagnosis Using KPCA

Yunlian SunBo ShenYinghui ChenYong Xu

Lecture notes in computer science Year: 2010 Pages: 334-343
JOURNAL ARTICLE

Computerized Wrist Pulse Signal Diagnosis Using Modified Auto-Regressive Models

Yinghui ChenLei ZhangDavid ZhangDongyu Zhang

Journal:   Journal of Medical Systems Year: 2009 Vol: 35 (3)Pages: 321-328
JOURNAL ARTICLE

Wrist blood flow signal-based computerized pulse diagnosis using spatial and spectrum features

Dong-Yu ZhangWangmeng ZuoDavid ZhangHongzhi ZhangNai-Min Li

Journal:   Journal of Biomedical Science and Engineering Year: 2010 Vol: 03 (04)Pages: 361-366
JOURNAL ARTICLE

Drought classification using gradient boosting decision tree

Ali Danandeh Mehr

Journal:   Acta Geophysica Year: 2021 Vol: 69 (3)Pages: 909-918
© 2026 ScienceGate Book Chapters — All rights reserved.