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HPRNA: Predicting synergistic drug combinations for angina pectoris based on human pathway relationship network algorithm

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  • Mengyao Zhou
  • Mengfan Xu
  • Xiangling Zhang
  • Xiaochun Xing
  • Yang Li
  • Guanghui Wang
  • Guiying Yan

Abstract

Over the years, synergistic drug combinations therapies have attracted widespread attention due to its advantages of overcoming drug resistance, increasing treatment efficacy and decreasing toxicity. Compared to lengthy medical drugs experimental screening, mathematical models and algorithms show great potential in synergistic drug combinations prediction. In this paper, we introduce a novel mathematical algorithm, the Human Pathway Relationship Network Algorithm (HPRNA), which is designed to predict synergistic drug combinations for angina pectoris. We first reconstruct a novel angina pectoris drug dataset, which include drug name, drug metabolism, chemical formula, targets and pathways, then construct a comprehensive human pathway network based on the genetic similarity of the pathways which contain information about the targets. Finally, we introduce a novel indicator to calculate drug pair scores which measure the likelihood of forming synergistic drug combination. Experimental results on angina pectoris drug datasets convincingly demonstrate that the HPRNA makes efficient use of target and pathway information and is superior to previous algorithms.

Suggested Citation

  • Mengyao Zhou & Mengfan Xu & Xiangling Zhang & Xiaochun Xing & Yang Li & Guanghui Wang & Guiying Yan, 2025. "HPRNA: Predicting synergistic drug combinations for angina pectoris based on human pathway relationship network algorithm," PLOS ONE, Public Library of Science, vol. 20(2), pages 1-15, February.
  • Handle: RePEc:plo:pone00:0318368
    DOI: 10.1371/journal.pone.0318368
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