4.6 Article

Extracting relations from traditional Chinese medicine literature via heterogeneous entity networks

Journal

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/jamia/ocv092

Keywords

traditional Chinese medicine; relation extraction; heterogeneous entity networks; collective inference; factor graph model

Funding

  1. National High-tech RD Program [2014AA015103]
  2. National Basic Research Program of China [2014CB340500, 2012CB316006]
  3. National Natural Science Foundation of China [61222212, 61103065, 61035004]
  4. NSFC-ANR [61261130588]
  5. Tsinghua University
  6. KU Leuven

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Objective Traditional Chinese medicine (TCM) is a unique and complex medical system that has developed over thousands of years. This article studies the problem of automatically extracting meaningful relations of entities from TCM literature, for the purposes of assisting clinical treatment or poly-pharmacology research and promoting the understanding of TCM in Western countries. Methods Instead of separately extracting each relation from a single sentence or document, we propose to collectively and globally extract multiple types of relations (eg, herb-syndrome, herb-disease, formula-syndrome, formula-disease, and syndrome-disease relations) from the entire corpus of TCM literature, from the perspective of network mining. In our analysis, we first constructed heterogeneous entity networks from the TCM literature, in which each edge is a candidate relation, then used a heterogeneous factor graph model (HFGM) to simultaneously infer the existence of all the edges. We also employed a semi-supervised learning algorithm estimate the model's parameters. Results We performed our method to extract relations from a large dataset consisting of more than 100 000 TCM article abstracts. Our results show that the performance of the HFGM at extracting all types of relations from TCM literature was significantly better than a traditional support vector machine (SVM) classifier (increasing the average precision by 11.09%, the recall by 13.83%, and the F1-measure by 12.47% for different types of relations, compared with a traditional SVM classifier). Conclusion This study exploits the power of collective inference and proposes an HFGM based on heterogeneous entity networks, which significantly improved our ability to extract relations from TCM literature.

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