A novel deep sequential learning architecture for drug drug interaction prediction using DDINet.

Journal: Scientific reports
PMID:

Abstract

Drug drug Interactions (DDI) present considerable challenges in healthcare, often resulting in adverse effects or decreased therapeutic efficacy. This article proposes a novel deep sequential learning architecture called DDINet to predict and classify DDIs between pairs of drugs based on different mechanisms viz., Excretion, Absorption, Metabolism, and Excretion rate (higher serum level) etc. Chemical features such as Hall Smart, Amino Acid count and Carbon types are extracted from each drug (pairs) to apply as an input to the proposed model. Proposed DDINet incorporates attention mechanism and deep sequential learning architectures, such as Long Short-Term Memory and gated recurrent unit. It utilizes the Rcpi toolkit to extract biochemical features of drugs from their chemical composition in Simplified Molecular-Input Line-Entry System format. Experiments are conducted on publicly available DDI datasets from DrugBank and Kaggle. The model's efficacy in predicting and classifying DDIs is evaluated using various performance measures. The experimental results show that DDINet outperformed eight counterpart techniques achieving [Formula: see text] overall accuracy which is also statistically confirmed by Confidence Interval tests and paired t-tests. This architecture may act as an effective computational technique for drug drug interaction with respect to mechanism which may act as a complementary tool to reduce costly wet lab experiments for DDI prediction and classification.

Authors

  • Anindya Halder
    Dept. of Computer Applications, North-Eastern Hill University, Tura Campus, Meghalaya 794002, India.
  • Biswanath Saha
    Department of Computer Application, School of Technology, North-Eastern Hill University, Tura Campus, Tura, Meghalaya, 794002, India. biswanathsaha@nehu.ac.in.
  • Moumita Roy
  • Sukanta Majumder
    Department of Computer Science and Engineering, University of Kalyani, Kalyani, West Bengal, 741235, India. majumder.sukanta85@gmail.com.