HF-DDI: Predicting Drug-Drug Interaction Events Based on Multimodal Hybrid Fusion.

J Comput Biol

College of Computer Science and Electronic Engineering, Hunan University, Changsha, China.

Published: September 2023

AI Article Synopsis

  • Drug-drug interactions (DDIs) can seriously affect patient safety, so predicting them is crucial in drug development to avoid adverse effects.
  • The study introduces a new method called HF-DDI, which predicts DDIs using various drug characteristics like molecular structure and target information, employing both early and late fusion strategies.
  • The model was tested on a large dataset and achieved an impressive accuracy of 0.948, indicating that using multiple drug features can significantly enhance the prediction of these interactions, potentially improving drug safety.

Article Abstract

Drug-drug interactions (DDIs) can have a significant impact on patient safety and health. Predicting potential DDIs before administering drugs to patients is a critical step in drug development and can help prevent adverse drug events. In this study, we propose a novel method called HF-DDI for predicting DDI events based on various drug features, including molecular structure, target, and enzyme information. Specifically, we design our model with both early fusion and late fusion strategies and utilize a score calculation module to predict the likelihood of interactions between drugs. Our model was trained and tested on a large data set of known DDIs, achieving an overall accuracy of 0.948. The results suggest that incorporating multiple drug features can improve the accuracy of DDI event prediction and may be useful for improving drug safety and patient outcomes.

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Source
http://dx.doi.org/10.1089/cmb.2023.0068DOI Listing

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HF-DDI: Predicting Drug-Drug Interaction Events Based on Multimodal Hybrid Fusion.

J Comput Biol

September 2023

College of Computer Science and Electronic Engineering, Hunan University, Changsha, China.

Article Synopsis
  • Drug-drug interactions (DDIs) can seriously affect patient safety, so predicting them is crucial in drug development to avoid adverse effects.
  • The study introduces a new method called HF-DDI, which predicts DDIs using various drug characteristics like molecular structure and target information, employing both early and late fusion strategies.
  • The model was tested on a large dataset and achieved an impressive accuracy of 0.948, indicating that using multiple drug features can significantly enhance the prediction of these interactions, potentially improving drug safety.
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