FL-DTD: an integrated pipeline to predict the drug interacting targets by feedback loop-based network analysis

Brief Bioinform. 2022 Jul 18;23(4):bbac263. doi: 10.1093/bib/bbac263.

Abstract

Drug target discovery is an essential step to reveal the mechanism of action (MoA) underlying drug therapeutic effects and/or side effects. Most of the approaches are usually labor-intensive while unable to identify the tissue-specific interacting targets, especially the targets with weaker drug binding affinity. In this work, we proposed an integrated pipeline, FL-DTD, to predict the drug interacting targets of novel compounds in a tissue-specific manner. This method was built based on a hypothesis that cells under a status of homeostasis would take responses to drug perturbation by activating feedback loops. Therefore, the drug interacting targets can be predicted by analyzing the network responses after drug perturbation. We evaluated this method using the expression data of estrogen stimulation, gene manipulation and drug perturbation and validated its good performance to identify the annotated drug targets. Using STAT3 as a target protein, we applied this method to drug perturbation data of 500 natural compounds and predicted five compounds with STAT3 interacting activities. Experimental assay validated the STAT3-interacting activities of four compounds. Overall, our evaluation suggests that FL-DTD predicts the drug interacting targets with good accuracy and can be used for drug target discovery.

Keywords: differential expression; drug target discovery; feedback loops; network.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Drug Delivery Systems*
  • Drug Discovery* / methods
  • Feedback