Machine Learning Approaches to Rational Drug Design

Thumbnail Image

Date

2020

Journal Title

Journal ISSN

Volume Title

Publisher

Springer

Abstract

Pharmaceutical industries are multibillionaire setups with a diligent team ofscientists, researchers, technical manpower, and investors. A major concern ofsuch industries is to always curtail the time and cost factor associated with them.Bioinformatics involving machine learning (ML) methods have come to theforefront to address this problem. The predictive and statistical efficacy of MLmethodologies has even proven to propose better leads than a wet lab pipeline.This chapter aims to give a brief overview of underlying principles of mainly GAsand ANNs as popular ML algorithms and deeper insight into their robustapplications in the field of modern day drug design. It also attempts to share thefuture prospects of such ML techniques and their limitations with possiblesolutions hereafter.

Description

Book: Computer-Aided Drug Design Editor Dev Bukhsh Singh

Keywords

Machine learning, Genetic algorithms, Artificial neural networks, Drugdesigning, Deep learning, Support vector machines

Citation

Endorsement

Review

Supplemented By

Referenced By