YI Kai,ZHANG Mengdi,GUO Shen,et al.Research review on data annotation for intelligent pulse diagnosis devices in traditional Chinese medicine[J].Shanghai Journal of Traditional Chinese Medicine,2024,58(10):5-10.
YI Kai,ZHANG Mengdi,GUO Shen,et al.Research review on data annotation for intelligent pulse diagnosis devices in traditional Chinese medicine[J].Shanghai Journal of Traditional Chinese Medicine,2024,58(10):5-10. DOI: 10.16305/j.1007-1334.2024.z20240620006.
Research review on data annotation for intelligent pulse diagnosis devices in traditional Chinese medicine
In recent years, there has been a surge of interest in the research on the intelligentization of traditional Chinese medicine (TCM) diagnostics, with intelligent pulse diagnosis being a focal point. The intelligentization of pulse diagnosis primarily focuses on pulse acquisition and data processing. The challenges in pulse acquisition mainly lie in sensors and pulse acquisition tools, and there is currently no unified industry standard for data sources or processing methods. Present research predominantly focuses on pulse waveform variations and radial artery ultrasound data. This paper introduces data annotation methods based on the eight key elements of pulse diagnosis (pulse position, pulse strength, pulse beats, pulse rhythm, pulse length, pulse width, fluency and tension), compares the advantages and disadvantages of pulse waveform and radial artery ultrasound, and explores the feasibility of using three-dimensional pulse waveforms as a form of pulse diagnosis data annotation. It further discusses the current front-end processing methods for pulse waveforms and the application of artificial intelligence and machine learning in pulse waveform data annotation, aiming to provide new research perspectives for the objectification of pulse diagnosis.
关键词
中医诊断人工智能脉诊仪智能化设备算法模型
Keywords
traditional Chinese medicine diagnosisartificial intelligencepulse diagnosis devicesintelligent equipmentalgorithm models
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