Drug Discovery
Page: 1-16 (16)
Author: Manos C. Vlasiou*
DOI: 10.2174/9789815305036124010002
PDF Price: $15
Abstract
Drug discovery is a complex process involving target identification, lead
generation, and clinical development. Recent breakthroughs in genomics and AI-driven
approaches have expedited target identification. Rational drug design and advanced
chemistry techniques have improved lead compound optimization—preclinical testing
benefits from organ-on-a-chip systems and 3D cell culture models. Clinical
development is enhanced by personalized medicine and innovative trial designs. Across
all stages, big data, machine learning, and AI play pivotal roles in data analysis and
candidate selection. Collaboration between academia, industry, and regulators fosters a
more efficient drug development ecosystem. These advancements offer promising
prospects for tackling challenging diseases and enhancing global healthcare.
Molecular Dynamics in Computer-Aided Drug Discovery: Unveiling Insights into Biomolecular Interactions
Page: 17-47 (31)
Author: Manos C. Vlasiou*
DOI: 10.2174/9789815305036124010003
PDF Price: $15
Abstract
Computer-aided drug discovery (CADD) has revolutionized the field of
pharmaceutical research by providing efficient tools for predicting and optimizing
drug-target interactions. Molecular dynamics (MD) simulations, an essential technique
within CADD, play a crucial role in understanding the dynamic behavior of
biomolecules and their interactions with potential drug candidates. In this chapter, we
explore the principles, methodologies, applications, and advancements of MD
simulations in the context of drug discovery. It highlights how MD simulations can
provide detailed insights into biomolecular systems' structural dynamics, energetics,
and kinetics, facilitating the rational design of novel therapeutics. By shedding light on
the remarkable potential of MD simulations, we aim to underscore their significance in
accelerating the drug discovery process and driving the development of targeted drugs.
Pharmacophore Modelling and Virtual Screening
Page: 48-62 (15)
Author: Manos C. Vlasiou*
DOI: 10.2174/9789815305036124010004
PDF Price: $15
Abstract
Pharmacophore modeling and virtual screening are indispensable tools in
modern drug discovery. Pharmacophore models define the essential features and spatial
arrangement required for a molecule to interact with a specific target. Virtual
screening, powered by computational algorithms, efficiently sifts through vast chemical
libraries to identify potential drug candidates. Recent advances in machine learning and
molecular dynamics simulations have further enhanced the accuracy and applicability
of these methods. Pharmacophore modeling and virtual screening continue to play
crucial roles in expediting the drug discovery process, offering a strategic advantage to
pharmaceutical research.
Molecular Docking in Computer-Aided Drug Discovery: A Powerful Tool for Targeted Therapeutics
Page: 63-90 (28)
Author: Manos C. Vlasiou*
DOI: 10.2174/9789815305036124010005
PDF Price: $15
Abstract
Computer-aided drug discovery (CADD) has revolutionized the field of
pharmaceutical research by speeding up the identification of potential drug candidates.
Molecular docking, a well-known technique within CADD, plays a crucial role in
predicting and evaluating the binding affinity of small molecules to target proteins.
This essay explores the principles, methodologies, applications, and advancements of
molecular docking in the context of drug discovery. Additionally, it highlights the
impact of molecular docking in accelerating the development of targeted therapeutics.
By shedding light on the remarkable potential of molecular docking, this essay aims to
underscore its significance in the ongoing pursuit of novel drugs and personalized
medicine.
The Use of Density Functional Theory in Computer-Aided Drug Discovery
Page: 91-102 (12)
Author: Manos C. Vlasiou*
DOI: 10.2174/9789815305036124010006
PDF Price: $15
Abstract
Density Functional Theory (DFT) has become a cornerstone in Computer-Aided Drug Discovery (CADD), providing accurate insights into molecular
interactions and properties. By predicting binding affinities, electronic structure, and
molecular properties, DFT aids in rational drug design. DFT facilitates the exploration
of crucial pharmacological factors, such as protein-ligand interactions and drug
metabolism. Its computational efficiency enables high-throughput virtual screening,
reducing time and costs in drug development. Continuous advancements in DFT
methodologies and computational resources enhance its applicability in CADD. DFT in
CADD is poised to accelerate the discovery of safer and more effective drugs,
revolutionizing pharmaceutical research.
Software in Computer-Aided Drug Discovery: Empowering Scientific Exploration and Innovation
Page: 103-111 (9)
Author: Manos C. Vlasiou*
DOI: 10.2174/9789815305036124010007
PDF Price: $15
Abstract
Software has become an indispensable driving force in Computer-Aided
Drug Discovery (CADD), facilitating target identification, molecular modeling, and
virtual screening. Through bioinformatics and computational biology, software aids in
the efficient identification of drug targets. Molecular modeling software empowers
rational drug design by predicting molecular interactions and structures. Virtual
screening software accelerates hit-to-lead optimization, efficiently sifting through
chemical libraries. Machine learning algorithms and big data analytics enhance
predictive modeling and biomarker discovery, enabling personalized medicine.
Collaborative platforms and cloud-based solutions foster interdisciplinary
collaboration, streamlining the drug discovery process. Software in CADD reduces
costs, shortens development timelines, and fuels innovation, offering unprecedented
possibilities for novel therapeutics and improved healthcare outcomes.
Success Stories in Computer-Aided Drug Discovery
Page: 112-125 (14)
Author: Manos C. Vlasiou*
DOI: 10.2174/9789815305036124010008
PDF Price: $15
Abstract
Computer-Aided Drug Discovery (CADD) has yielded remarkable
successes, transforming the pharmaceutical landscape. Notable achievements include
the development of kinase inhibitors for cancer treatment and repurposing of drugs for
emerging health crises like COVID-19. CADD's role in personalized medicine is
exemplified by tailored therapies for genetically defined patient groups in cancer
treatment. Moreover, CADD has enhanced drug development efficiency, minimizing
attrition rates and reducing costs for pharmaceutical companies. These successes
illustrate the pivotal role of CADD in addressing complex diseases, streamlining drug
development, and improving healthcare outcomes. Continuous advancements in
computational techniques and interdisciplinary collaboration promise further
breakthroughs in the field.
The Future of Computer-Aided Drug Discovery Methods: Advancements and Opportunities
Page: 126-130 (5)
Author: Manos C. Vlasiou*
DOI: 10.2174/9789815305036124010009
PDF Price: $15
Abstract
The future of Computer-Aided Drug Discovery (CADD) methods is
characterized by transformative innovations. Artificial intelligence and machine
learning are enhancing accuracy in predicting drug-target interactions and
pharmacokinetics, with deep learning models leading in performance. Quantum
computing is poised to revolutionize molecular simulations. Big data and omics
integration enable precision medicine, tailoring treatments to individual patient
profiles. Cloud-based platforms democratize CADD tools and promote global
collaboration. Ethical considerations, data privacy, and regulatory challenges are
gaining prominence. With robust ethical guidelines and regulatory frameworks, the
future of CADD promises safer and more efficient drug discovery, ensuring that novel
therapies meet the diverse needs of patients worldwide.
Introduction
Computer-Aided Drug Discovery Methods: A Brief Introduction explores the cutting-edge field at the intersection of computational science and medicinal chemistry. This comprehensive volume navigates from foundational concepts to advanced methodologies, illuminating how computational tools accelerate the discovery of new therapeutics. Beginning with an overview of drug discovery principles, the book explains topics such as pharmacophore modeling, molecular dynamics simulations, and molecular docking. It discusses the application of density functional theory and the role of artificial intelligence in therapeutic development, showcasing successful case studies and innovations in COVID-19 research. Ideal for undergraduate and graduate students, as well as researchers in academia and industry, this book serves as a vital resource in understanding the complex landscape of modern drug discovery. It emphasizes the synergy between computational methods and experimental validation, shaping the future of pharmaceutical sciences toward more effective and targeted therapies.