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Understanding the Basics of QSAR for Applications in Pharmaceutical
Sciences and Risk Assessment describes the historical evolution of
quantitative structure-activity relationship (QSAR) approaches and
their fundamental principles. This book includes clear,
introductory coverage of the statistical methods applied in QSAR
and new QSAR techniques, such as HQSAR and G-QSAR. Containing
real-world examples that illustrate important methodologies, this
book identifies QSAR as a valuable tool for many different
applications, including drug discovery, predictive toxicology and
risk assessment. Written in a straightforward and engaging manner,
this is the ideal resource for all those looking for general and
practical knowledge of QSAR methods.
This second edition volume expands on the previous edition with
updated descriptions on different computational methods
encompassing ligand-based, structure-based, and combined approaches
with their recent applications in anti-Alzheimer drug design.
Different background topics like recent advancements in research on
the development of novel therapies and their implications in the
treatment of Alzheimerâs Disease (AD) have also been covered for
completeness. Special topics like basic information science methods
for insight into neurodegenerative pathogenesis, drug repositioning
and network pharmacology, and online tools to predict ADMET
behavior with reference to anti-Alzheimer drug development have
also been included. In the Neuromethods series style, chapter
include the kind of detail and key advice from the specialists
needed to get successful results in your laboratory. Cutting-edge
and thorough, Computational Modeling of Drugs Against Alzheimerâs
Disease, Second Edition is a valuable resource for all researchers
and scientists interested in learning more about this important and
developing field.
Quantitative structure-activity relationships (QSARs) represent
predictive models derived from the application of statistical tools
correlating biological activity or other properties of chemicals
with descriptors representative of molecular structure and/or
property. Quantitative Structure-Activity Relationships in Drug
Design, Predictive Toxicology, and Risk Assessment discusses recent
advancements in the field of QSARs with special reference to their
application in drug development, predictive toxicology, and
chemical risk analysis. Focusing on emerging research in the field,
this book is an ideal reference source for industry professionals,
students, and academicians in the fields of medicinal chemistry and
toxicology.
The book covers theoretical background and methodology as well as
all current applications of Quantitative Structure-Activity
Relationships (QSAR). Written by an international group of
recognized researchers, this edited volume discusses applications
of QSAR in multiple disciplines such as chemistry, pharmacy,
environmental and agricultural sciences addressing data gaps and
modern regulatory requirements. Additionally, the applications of
QSAR in food science and nanoscience have been included - two areas
which have only recently been able to exploit this versatile tool.
This timely addition to the series is aimed at graduate students,
academics and industrial scientists interested in the latest
advances and applications of QSAR.
This essential volume explores a variety of tools and protocols of
structure-based (homology modeling, molecular docking, molecular
dynamics, protein-protein interaction network) and ligand-based
(pharmacophore mapping, quantitative structure-activity
relationships or QSARs) drug design for ranking and prioritization
of candidate molecules in search of effective treatment strategy
against coronaviruses. Beginning with an introductory section that
discusses coronavirus interactions with humanity and COVID-19 in
particular, the book then continues with sections on tools and
methodologies, literature reports and case studies, as well as
online tools and databases that can be used for computational
anti-coronavirus drug research. Written for the Methods in
Pharmacology and Toxicology series, chapters include the kind of
practical detail and implementation advice that ensures high
quality results in the lab. Comprehensive and timely, In Silico
Modeling of Drugs Against Coronaviruses: Computational Tools and
Protocols is an ideal reference for researchers working on the
development of novel anti-coronavirus drugs for SARS-CoV-2 and for
coronaviruses that will likely appear in the future.
This detailed book showcases recent advances in computational
design of multi-target drug candidates involving various ligand and
structure-based strategies. Different chem-bioinformatic modeling
strategies that can be applied for design of multi-target drugs as
well as important databases and web servers in connection with
multi-target drug design are also featured in this collection.
Written for the Methods in Pharmacology and Toxicology series,
chapters include the kind of key implementation advice that will
aid researchers greatly in their laboratory pursuits. Authoritative
and practical, Multi-Target Drug Design Using Chem-Bioinformatic
Approaches seeks to aid all scientists working in the field of drug
discovery research.
This volume describes different computational methods encompassing
ligand-based approaches (QSAR, pharmcophore), structure-based
approaches (homology modeling, docking, molecular dynamics
simulation), and combined approaches (virtual screening) with
applications in anti-Alzheimer drug design. Different background
topics like molecular etiologies of Alzheimer's disease, targets
for new drug development, and different cheminformatic modeling
strategies are covered for completeness. Special topics like
multi-target drug development, natural products, protein
misfolding, and nanomaterials are also included in connection with
computational modeling of anti-Alzheimer drug development. In
Neuromethods series style, chapters include the kind of detail and
key advice from the specialists needed to get successful results in
your laboratory. Cutting-edge and authoritative, Computational
Modeling of Drugs Against Alzheimer's Disease is a valuable
resource for learning about the latest computational techniques
used to study this disease.
This essential volume explores a variety of tools and protocols of
structure-based (homology modeling, molecular docking, molecular
dynamics, protein-protein interaction network) and ligand-based
(pharmacophore mapping, quantitative structure-activity
relationships or QSARs) drug design for ranking and prioritization
of candidate molecules in search of effective treatment strategy
against coronaviruses. Beginning with an introductory section that
discusses coronavirus interactions with humanity and COVID-19 in
particular, the book then continues with sections on tools and
methodologies, literature reports and case studies, as well as
online tools and databases that can be used for computational
anti-coronavirus drug research. Written for the Methods in
Pharmacology and Toxicology series, chapters include the kind of
practical detail and implementation advice that ensures high
quality results in the lab. Comprehensive and timely, In Silico
Modeling of Drugs Against Coronaviruses: Computational Tools and
Protocols is an ideal reference for researchers working on the
development of novel anti-coronavirus drugs for SARS-CoV-2 and for
coronaviruses that will likely appear in the future.
The book covers theoretical background and methodology as well as
all current applications of Quantitative Structure-Activity
Relationships (QSAR). Written by an international group of
recognized researchers, this edited volume discusses applications
of QSAR in multiple disciplines such as chemistry, pharmacy,
environmental and agricultural sciences addressing data gaps and
modern regulatory requirements. Additionally, the applications of
QSAR in food science and nanoscience have been included - two areas
which have only recently been able to exploit this versatile tool.
This timely addition to the series is aimed at graduate students,
academics and industrial scientists interested in the latest
advances and applications of QSAR.
In Silico Drug Design: Repurposing Techniques and Methodologies
explores the application of computational tools that can be
utilized for this approach. The book covers theoretical background
and methodologies of chem-bioinformatic techniques and network
modeling and discusses the various applied strategies to
systematically retrieve, integrate and analyze datasets from
diverse sources. Other topics include in silico drug design
methods, computational workflows for drug repurposing, and
network-based in silico screening for drug efficacy. With
contributions from experts in the field and the inclusion of
practical case studies, this book gives scientists, researchers and
R&D professionals in the pharmaceutical industry valuable
insights into drug design.
This volume focuses on computational modeling of the ecotoxicity of
chemicals and presents applications of quantitative
structure-activity relationship models (QSARs) in the predictive
toxicology field in a regulatory context. The extensive book covers
a variety of protocols for descriptor computation, data curation,
feature selection, learning algorithms, validation of models,
applicability domain assessment, confidence estimation for
predictions, and much more, as well as case studies and literature
reviews on a number of hot topics. Written for the Methods in
Pharmacology and Toxicology series, chapters include the kind of
practical advice that is essential for researchers everywhere.
Authoritative and comprehensive, Ecotoxicological QSARs is an ideal
source to update readers in the field with current practices and
introduce to them new developments and should therefore be very
useful for researchers in academia, industries, and regulatory
bodies.
This brief goes back to basics and describes the Quantitative
structure-activity/property relationships (QSARs/QSPRs) that
represent predictive models derived from the application of
statistical tools correlating biological activity (including
therapeutic and toxic) and properties of chemicals
(drugs/toxicants/environmental pollutants) with descriptors
representative of molecular structure and/or properties. It
explains how the sub-discipline of Cheminformatics is used for many
applications such as risk assessment, toxicity prediction, property
prediction and regulatory decisions apart from drug discovery and
lead optimization. The authors also present, in basic terms, how
QSARs and related chemometric tools are extensively involved in
medicinal chemistry, environmental chemistry and agricultural
chemistry for ranking of potential compounds and prioritizing
experiments. At present, there is no standard or introductory
publication available that introduces this important topic to
students of chemistry and pharmacy. With this in mind, the authors
have carefully compiled this brief in order to provide a thorough
and painless introduction to the fundamental concepts of QSAR/QSPR
modelling. The brief is aimed at novice readers.
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