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Artificial Intelligence and Machine Learning in Drug Design and Development. Edition No. 1. Fintech in a Sustainable Digital Society

  • Book

  • 672 Pages
  • July 2024
  • John Wiley and Sons Ltd
  • ID: 5949252
The book is a comprehensive guide that explores the use of artificial intelligence and machine learning in drug discovery and development covering a range of topics, including the use of molecular modeling, docking, identifying targets, selecting compounds, and optimizing drugs.

The intersection of Artificial Intelligence (AI) and Machine Learning (ML) within the field of drug design and development represents a pivotal moment in the history of healthcare and pharmaceuticals. The remarkable synergy between cutting-edge technology and the life sciences has ushered in a new era of possibilities, offering unprecedented opportunities, formidable challenges, and a tantalizing glimpse into the future of medicine.

AI can be applied to all the key areas of the pharmaceutical industry, such as drug discovery and development, drug repurposing, and improving productivity within a short period. Contemporary methods have shown promising results in facilitating the discovery of drugs to target different diseases. Moreover, AI helps in predicting the efficacy and safety of molecules and gives researchers a much broader chemical pallet for the selection of the best molecules for drug testing and delivery. In this context, drug repurposing is another important topic where AI can have a substantial impact. With the vast amount of clinical and pharmaceutical data available to date, AI algorithms find suitable drugs that can be repurposed for alternative use in medicine.

This book is a comprehensive exploration of this dynamic and rapidly evolving field. In an era where precision and efficiency are paramount in drug discovery, AI and ML have emerged as transformative tools, reshaping the way we identify, design, and develop pharmaceuticals. This book is a testament to the profound impact these technologies have had and will continue to have on the pharmaceutical industry, healthcare, and ultimately, patient well-being.

The editors of this volume have assembled a distinguished group of experts, researchers, and thought leaders from both the AI, ML, and pharmaceutical domains. Their collective knowledge and insights illuminate the multifaceted landscape of AI and ML in drug design and development, offering a roadmap for navigating its complexities and harnessing its potential. In each section, readers will find a rich tapestry of knowledge, case studies, and expert opinions, providing a 360-degree view of AI and ML’s role in drug design and development. Whether you are a researcher, scientist, industry professional, policymaker, or simply curious about the future of medicine, this book offers 19 state-of-the-art chapters providing valuable insights and a compass to navigate the exciting journey ahead.

Audience

The book is a valuable resource for a wide range of professionals in the pharmaceutical and allied industries including researchers, scientists, engineers, and laboratory workers in the field of drug discovery and development, who want to learn about the latest techniques in machine learning and AI, as well as information technology professionals who are interested in the application of machine learning and artificial intelligence in drug development.

Table of Contents

Preface xxi

1 The Rise of Intelligent Machines: An Introduction to Artificial Intelligence 1
Shamik Tiwari

2 Introduction to Bioinformatics 23
Bancha Yingngam

3 Exploring the Intersection of Biology and Computing: Road Ahead to Bioinformatics 67
Ahmed Mateen Buttar, Muhammad Nouman Arshad and Anand Nayyar

4 Machine Learning in Drug Discovery: Methods, Applications, and Challenges 93
Geetha Mani and Gokulakrishnan Jayakumar

5 Artificial Intelligence for Understanding Mechanisms of Antimicrobial Resistance and Antimicrobial Discovery: A New Age Model for Translational Research 117
Yashaswi Dutta Gupta and Suman Bhandary

6 Artificial Intelligence-Powered Molecular Docking: A Promising Tool for Rational Drug Design 157
Nabajit Kumar Borah, Yukti Tripathi, Aastha Tanwar, Deeksha Tiwari, Aditi Sinha, Shailja Sharma, Neetu Jabalia, Ruchi Jakhmola Mani, Seneha Santoshi and Hina Bansal

7 Revolutionizing Drug Discovery: The Role of AI and Machine Learning in Accelerating Medicinal Advancements 189
Anu Sayal, Janhvi Jha, Chaithra N., Atharv Rajesh Gangodkar and Shaziya Banu S.

8 Data Processing Method for AI-Driven Predictive Models or CNS Drug Discovery 223
Ajantha Devi Vairamani, Sudipta Adhikary and Kaushik Banerjee

9 Machine Learning Applications for Drug Repurposing 251
Bancha Yingngam

10 Personalized Drug Treatment: Transforming Healthcare with AI 295
Abhirup Khanna and Sapna Jain

11 Process and Applications of Structure-Based Drug Design 321
Shanmuga Sundari M., Sree Aiswarya Thotakura, Mounika Dharmana, Priyanka Gadela and Mayukha Mandya Ammangatambu

12 AI-Based Personalized Drug Treatment 369
Shanmuga Sundari M., Harshini Reddy Penthala, Akshita Mogullapalli and Mayukha Mandya Ammangatambu

13 AI Models for Biopharmaceutical Property Prediction 407
Bancha Yingngam

14 Deep Learning Tactics for Neuroimaging Genomics Investigations in Alzheimer's Disease 451
Mithun Singh Rajput, Jigna Shah, Viral Patel, Nitin Singh Rajput and Dileep Kumar

15 Artificial Intelligence Techniques in the Classification and Screening of Compounds in Computer-Aided Drug Design (CADD) Process 473
Raghunath Satpathy

16 Empowering Clinical Decision Making: An In-Depth Systematic Review of AI-Driven Scoring Approaches for Liver Transplantation Prediction 499
Devi Rajeev, Remya S. and Anand Nayyar

17 Pushing Boundaries: The Landscape of AI-Driven Drug Discovery and Development with Insights Into Regulatory Aspects 533
Dipak D. Gadade, Deepak A. Kulkarni, Ravi Raj, Swapnil G. Patil and Anuj Modi

18 Feasibility of AI and Robotics in Indian Healthcare: A Narrative Analysis 563
Rahul Joshi and Rhythma Badola

19 The Future of Healthcare: AIoMT--Redefining Healthcare with Advanced Artificial Intelligence and Machine Learning Techniques 605
Wasswa Shafik

References 628

Index 635

Authors

Abhirup Khanna University of Petroleum and Energy Studies, India. May El Barachi University of Wollongong in Dubai, UAE. Sapna Jain University of Petroleum and Energy Studies, Dehradun, India. Manoj Kumar University of Wollongong in Dubai, UAE. Anand Nayyar Duy Tan University, Da Nang, Viet Nam.