Analysis of the Research Status and Hot Spot of Intelligent Four-Diagnosis in TCM
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摘要: 中医四诊作为中医诊断辨证的基本手段,近年来在人工智能的赋能下进一步传承创新。汇总了近十年中医四诊智能化研究的中英文文献,在此基础上分析其现状,完成基于知识图谱的可视化分析,并进一步对该领域的研究热点进行了深入探讨。最后,结合已有的研究现状,对中医四诊智能化的下一步发展提出思考和展望,以期对该领域的研究提供参考和借鉴。Abstract: As the basic means of traditional Chinese medicine (TCM) diagnosis and syndrome differentiation, the four-diagnosis of TCM has been further inherited and innovated under the empowerment of artificial intelligence in recent years. In this paper, we summarized the Chinese and English literature of the four-diagnosis intelligent research of TCM in the past ten years, analyzed its current research status, completed the visual analysis based on the knowledge graph, and further discussed the research hot-spots in this field. Finally, based on the existing research status, we proposed thinking and prospects for the next development of the intellectualization of the TCM four-diagnostics, in order to provide reference value and significance for the future research in this area.
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Key words:
- the four-diagnosis of TCM /
- intelligence /
- research status /
- research hot-spots /
- visualization
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表 1 中医四诊智能化主要团队及研究内容
Table 1. The main team and research contents of intelligent four-diagnosis in TCM
序号 学者及合作团队 研究内容 1 王忆勤,燕海霞,夏春明,等 舌面诊,脉图分类识别预测血压,人脸解析,智能问诊,四诊合参等 2 许家佗,屠立平,胡晓娟, 等 舌像采集标准化及颜色校正,舌色特征提取,舌像质量评估,面色识别,基于舌诊的体质辨别、糖尿病预测等 3 温川飚,宋海贝,程小恩, 等 舌面部特征提取,四诊诊疗信息数据仓库构建及中医体检服务体系构想等 4 李灿东,罗志明,李绍滋, 等 舌像分割,舌像中齿痕和裂纹检测,中西医结合的代谢综合征预测,中医健康状态辨识系统构建等 5 王泓午,王东军,关媛媛, 等 舌像特征客观化,中医肺癌诊疗等 6 文贵华,韦佳,江丽君, 等 舌苔检测和标定,舌体结构识别,在舌像识别基础上智能问诊问卷设计,舌像、面像与中药处方的关联性等 -
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