Computational and Structural Biotechnology Journal (Jan 2019)

Herb Target Prediction Based on Representation Learning of Symptom related Heterogeneous Network

  • Ning Wang,
  • Peng Li,
  • Xiaochen Hu,
  • Kuo Yang,
  • Yonghong Peng,
  • Qiang Zhu,
  • Runshun Zhang,
  • Zhuye Gao,
  • Hao Xu,
  • Baoyan Liu,
  • Jianxin Chen,
  • Xuezhong Zhou

Journal volume & issue
Vol. 17
pp. 282 – 290

Abstract

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Traditional Chinese Medicine (TCM) has received increasing attention as a complementary approach or alternative to modern medicine. However, experimental methods for identifying novel targets of TCM herbs heavily relied on the current available herb-compound-target relationships. In this work, we present an Herb-Target Interaction Network (HTINet) approach, a novel network integration pipeline for herb-target prediction mainly relying on the symptom related associations. HTINet focuses on capturing the low-dimensional feature vectors for both herbs and proteins by network embedding, which incorporate the topological properties of nodes across multi-layered heterogeneous network, and then performs supervised learning based on these low-dimensional feature representations. HTINet obtains performance improvement over a well-established random walk based herb-target prediction method. Furthermore, we have manually validated several predicted herb-target interactions from independent literatures. These results indicate that HTINet can be used to integrate heterogeneous information to predict novel herb-target interactions. Keywords: Network medicine, Herb target prediction, Symptoms, Network embedding