iScience (Jul 2024)

Integrated edge information and pathway topology for drug-disease associations

  • Xianbin Li,
  • Xiangzhen Zan,
  • Tao Liu,
  • Xiwei Dong,
  • Haqi Zhang,
  • Qizhang Li,
  • Zhenshen Bao,
  • Jie Lin

Journal volume & issue
Vol. 27, no. 7
p. 110025

Abstract

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Summary: Drug repurposing is a promising approach to find new therapeutic indications for approved drugs. Many computational approaches have been proposed to prioritize candidate anticancer drugs by gene or pathway level. However, these methods neglect the changes in gene interactions at the edge level. To address the limitation, we develop a computational drug repurposing method (iEdgePathDDA) based on edge information and pathway topology. First, we identify drug-induced and disease-related edges (the changes in gene interactions) within pathways by using the Pearson correlation coefficient. Next, we calculate the inhibition score between drug-induced edges and disease-related edges. Finally, we prioritize drug candidates according to the inhibition score on all disease-related edges. Case studies show that our approach successfully identifies new drug-disease pairs based on CTD database. Compared to the state-of-the-art approaches, the results demonstrate our method has the superior performance in terms of five metrics across colorectal, breast, and lung cancer datasets.

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