• 1. Jinan Municipal Hospital of Traditional Chinese Medicine, Jinan, 250012, P.R.China;
  • 2. Xiyuan Hospital, China Academy of Chinese Medical Science, Beijing, 100091, P.R.China;
GUO Yan, Email: guoyan0314@126.com
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As an interdisciplinary subject of medicine and artificial intelligence, intelligent diagnosis and treatment has received extensive attention in both academia and industry. Traditional Chinese medicine (TCM) is characterized by individual syndrome differentiation as well as personalized treatment with personality analysis, which makes the common law mining technology of big data and artificial intelligence appear distortion in TCM diagnosis and treatment study. This article put forward an intelligent diagnosis model of TCM, as well as its construction method. It could not only obtain personal diagnosis varying individually through active learning, but also integrate multiple machine learning models for training, so as to form a more accurate model of learning TCM. Firstly, we used big data extraction technique from different case sources to form a structured TCM database under a unified view. Then, taken a pediatric common disease pneumonia with dyspnea and cough as an example, the experimental analysis on large-scale data verified that the TCM intelligent diagnosis model based on active learning is more accurate than the pre-existing machine learning methods, which may provide a new effective machine learning model for studying TCM diagnosis and treatment.

Citation: REN Xue, GUO Yan. Intelligent diagnosis model of traditional Chinese medicine based on active learning in big data. Chinese Journal of Evidence-Based Medicine, 2019, 19(9): 1118-1123. doi: 10.7507/1672-2531.201904028 Copy

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