会议专题

MC-eLDA:Towards Pathogenesis Analysis in Traditional Chinese Medicine by Multi-Content Embedding LDA

  Traditional Chinese medicine(TCM)is well-known for its unique theory and effective treatment for complicated diseases.In TCM theory,“pathogenesis is the cause of patients disease symptoms and is the basis for prescribing herbs.However,the essence of pathogenesis analysis is not well depicted by current researches.In this paper,we propose a novel topic model called Multi-Content embedding LDA(MC-eLDA),aiming to collaboratively capture the relationships of symptompathogenesis-herb triples,relationship between symptom-symptom,and relationship between herb-herb,which can be used in auxiliary diagnosis and treatment.By projecting discrete symptom words and herb words into two continuous semantic spaces respectively,the semantic equivalence can be encoded by exploiting the contiguity of their corresponding embeddings.Compared with previous models,topic coherence in each pathogenesis cluster can be promoted.Pathogenesis structures that previous topic modeling can not capture can be discovered by MC-eLDA.Then a herb prescription recommendation method is conducted based on MC-eLDA.Experimental results on two real-world TCM medical cases datasets demonstrate the effectiveness of the proposed model for analyzing pathogenesis as well as helping make diagnosis and treatment in clinical practice.

Topic modeling Embedding Traditional Chinese medicine

Ying Zhang Wendi Ji Haofen Wang Xiaoling Wang Jin Chen

Shanghai Key Laboratory of Trustworthy Computing,East China Normal University,Shanghai,China Liaoning University,Shenyang,China Shanghai Leyan Technologies Co.Ltd.,Shanghai,China Department of Computer Science,Institute for Biomedical Informatics Department of Internal Medicine,

国际会议

The 23rd Pacific-Asia Conference on Knowledge Discovery and Data Mining (第23届亚太知识发现和数据挖掘国际会议(PAKDD2019)

澳门

英文

489-500

2019-04-14(万方平台首次上网日期,不代表论文的发表时间)