Drug Design using Machine Learning

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Molecular docking

active sites
adverse drug reactions (adr)
Age Group_Uncategorized
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artificial intelligence
automatic-update
B01=Inamuddin
B01=Jorddy Neves Cruz
B01=Moamen Salah El-Deen Refat
B01=Tariq Altalhi
binding site prediction
biodegradable
Category1=Non-Fiction
Category=PN
cavity searching
chemoinformatics
COP=United States
data resources
deep learning
Delivery_Delivery within 10-20 working days
docking
drug design
drug repurposing
ensemble
eq_bestseller
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_science
flavonoids
in silico techniques
in vitro techniques
in vivo techniques
Language_English
learning
machine learning
mathematical models
microarray
network-based approach
neural network
neural networks
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polymers
polypharmacology
Price_€100 and above
protein
proteins
PS=Active
random forest
RNA-seq

scoring function
scoring functions
search algorithm
semantics-based approaches
softlaunch
supercritical
support vector machine
text mining

Product details

  • ISBN 9781394166282
  • Weight: 771g
  • Publication Date: 27 Oct 2022
  • Publisher: John Wiley & Sons Inc
  • Publication City/Country: US
  • Product Form: Hardback
  • Language: English
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DRUG DESIGN USING MACHINE LEARNING

The use of machine learning algorithms in drug discovery has accelerated in recent years and this book provides an in-depth overview of the still-evolving field.

The objective of this book is to bring together several chapters that function as an overview of the use of machine learning and artificial intelligence applied to drug development. The initial chapters discuss drug-target interactions through machine learning for improving drug delivery, healthcare, and medical systems. Further chapters also provide topics on drug repurposing through machine learning, drug designing, and ultimately discuss drug combinations prescribed for patients with multiple or complex ailments.

This excellent overview

  • Provides a broad synopsis of machine learning and artificial intelligence applications to the advancement of drugs;
  • Details the use of molecular recognition for drug development through various mathematical models;
  • Highlights classical as well as machine learning-based approaches to study target-drug interactions in the field of drug discovery;
  • Explores computer-aided technics for prediction of drug effectiveness and toxicity.

Audience

The book will be useful for information technology professionals, pharmaceutical industry workers, engineers, university researchers, medical practitioners, and laboratory workers who have a keen interest in the area of machine learning and artificial intelligence approaches applied to drug advancements.

Inamuddin, PhD, is an assistant professor at King Abdulaziz University, Jeddah, Saudi Arabia, and is also an assistant professor in the Department of Applied Chemistry, Aligarh Muslim University, Aligarh, India. He has extensive research experience in multidisciplinary fields of analytical chemistry, materials chemistry, electrochemistry, renewable energy, and environmental science. He has published about 190 research articles in various international scientific journals, 18 book chapters, and edited 60 books.

Tariq Altalhi is Head of the Department of Chemistry and Vice Dean of Science College at Taif University, Saudi Arabia. He received his PhD from the University of Adelaide, Australia in 2014. His research interests include developing advanced chemistry-based solutions for solid and liquid municipal waste management, converting plastic bags to carbon nanotubes, and fly ash to efficient adsorbent material.

Jorddy Neves Cruz is a researcher at the Federal University of Pará and the Emilio Goeldi Museum, Brazil. He has experience in multidisciplinary research in the areas of medicinal chemistry, drug design, extraction of bioactive compounds, extraction of essential oils, food chemistry, and biological testing.

Moamen Salah El-Deen Refat is a professor of Inorganic Chemistry at the Department of Chemistry Science at Taif University, Saudi Arabia. He has received multiple prizes such as the Distinguished Researcher Award, Taif University from 2009-2021, Gold Medal Telesio-Galilei Academy of Science for pioneering work in chemistry in 2013, and the Arab Prize in Chemistry for Young Arab Researchers in 2010.