Applications of Machine Learning Algorithms in Predicting Drug-Drug Interactions

Authors

  • Dr. Emily Davis Author

Keywords:

Drug-Drug Interactions (DDIs), Machine Learning Algorithms, Pharmacology, Predictive Modeling, Personalized Medicine.

Abstract

The increasing prevalence of polypharmacy and the complex nature of drug interactions pose significant challenges in modern healthcare. Drug-Drug Interactions (DDIs) can lead to adverse effects, reduced therapeutic efficacy, and compromised patient safety. Traditional methods for predicting DDIs are often time-consuming and limited in their ability to handle the vast and dynamic landscape of drug interactions. In recent years, the application of machine learning (ML) algorithms has emerged as a promising approach to address these challenges. This paper provides an overview of the applications of various ML algorithms in predicting DDIs. The study reviews the current landscape of drug interaction prediction and highlights the limitations of traditional methods. It then delves into the potential benefits offered by ML techniques, such as improved accuracy, efficiency, and scalability. The paper discusses the key features and data sources utilized in ML-based DDI prediction models, including chemical structures, pharmacokinetics, genomics, and clinical data. Several ML algorithms, including but not limited to support vector machines, random forests, neural networks, and ensemble methods, have been explored for their effectiveness in predicting DDIs. The paper examines the strengths and limitations of these algorithms in the context of DDI prediction, considering factors such as model interpretability, data quality, and computational requirements. Furthermore, the study discusses the integration of ML models into clinical practice, emphasizing the potential impact on personalized medicine and patient care. The development of reliable DDI prediction models holds the promise of reducing adverse drug reactions, optimizing treatment regimens, and enhancing overall healthcare outcomes.

Downloads

Published

17-03-2018

How to Cite

Applications of Machine Learning Algorithms in Predicting Drug-Drug Interactions. (2018). International Journal of Transcontinental Discoveries, ISSN: 3006-628X, 5(1), 14-19. https://internationaljournals.org/index.php/ijtd/article/view/27