Traditional Chinese Medicine Aided Diagnosis and Treatment System for Rheumatoid Arthritis Based on Artificial Intelligence
SUN Mingjun1, ZHANG Dan2, ZHENG Mingzhi3, MEI Shuhuan2
1. Cloud Computing and Big Data Research Institute, China Academy of Information and Communications Technology, Beijing 100191 2. Technical Department, Nanjing Research Institute of Next-Generation Artificial Intelligence, Nanjing 210046 3. Hangzhou Research Center of Artificial Intelligence, China Academy of Information and Communications Technology, Hangzhou 311121
Abstract:Rheumatoid arthritis(RA) is a widespread, chronic and refractory systemic immune rheumatism. Traditional Chinese medicine(TCM) presents the advantages of less side effects and low price. However, the spread of RA TCM diagnosis and treatment scheme with curative effect advantages is limited due to the lack of experienced TCM practitioners, especially in primary medical institutions. In this paper, a traditional Chinese medicine aided diagnosis and treatment system for RA based on artificial intelligence is proposed. RA and pattern of syndrome in RA can be determined after learning patient medical records and medical imaging of joints, and then TCM prescription is recommended intelligently according to the pattern. Next, the information is exploited to assist doctors in diagnosis. Based on RA TCM knowledge, the knowledge graph is built. It provides doctors with knowledge guidance in the process of diagnosis and treatment. The system can assist less experienced doctors in making treatment decisions, improving the treatment level of RA, and studying and promoting RA treatment.
孙明俊, 张丹, 郑明智, 梅舒欢. 基于人工智能的类风湿性关节炎中医辅助诊疗系统[J]. 模式识别与人工智能, 2021, 34(4): 343-352.
SUN Mingjun, ZHANG Dan, ZHENG Mingzhi, MEI Shuhuan. Traditional Chinese Medicine Aided Diagnosis and Treatment System for Rheumatoid Arthritis Based on Artificial Intelligence. , 2021, 34(4): 343-352.
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