Preface
Page: ii-iii (2)
Author: Tahmeena Khan and Saman Raza
DOI: 10.2174/9789815196986123010002
PDF Price: $15
Applications of Computational Toxicology in Pharmaceuticals, Environmental and Industrial Practices
Page: 1-20 (20)
Author: Nidhi Singh*, Seema Joshi and Jaya Pandey
DOI: 10.2174/9789815196986123010004
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Abstract
Computational toxicology is a rapidly developing field that uses
computational logarithms and mathematical models for a better understanding of the
toxicity of compounds and test systems. This recent branch is a combination of various
fields encompassing chemistry, computer science, biology, biochemistry, mathematics,
and engineering. This chapter focuses on the usage of computational toxicology in
various fields. This multifaceted field finds application in almost every pharmaceutical
and industrial process which in turn offers safer environmental practices.
Computational toxicology has revolutionized the field of drug discovery as it has
helped in the production of significantly efficient drug molecules through time-saving
and cost-effective methods. It has also proved a boon for various industries ranging
from often-used cosmetics to daily-use food products, as toxicological assessment of
chemical constituents in them provides quicker and safer production. All these
computational assessments thereby save a lot of chemical wastage and thus give a
helping hand in exercising healthy environmental practices. Besides this, pollutant
categorization and waste management through computational tools have also been
favoured by many agencies that work for environmental sustainability. Thus, to sum
up, computational technology has completely transformed the processes and practices
followed in pharmaceutics, environment protection and industries, and paved the way
for efficient, cost-effective, and less hazardous routes.
Verification, Validation and Sensitivity Studies of Computational Models used in Toxicology Assessment
Page: 21-38 (18)
Author: Viswajit Mulpuru and Nidhi Mishra*
DOI: 10.2174/9789815196986123010005
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Abstract
Complex computational models of biological systems are developed to
simulate and emulate various biological systems, but many times, these models are
subjected to doubt due to inconsistent model verification and validation. The
verification and validation of a model are important aspects of model construction.
Moreover, the techniques used to perform the verification and validation are also
important as the improper selection of the verification and validation techniques can
lead to false conclusions with profound negative effects, especially when the model is
applied in healthcare. The objective of this chapter is to discuss the current verification
and validation techniques used in the analysis and interpretation of biological models.
This chapter aims to increase the efficiency and the peer acceptability of the biological
prediction models by encouraging researchers to adopt verification and validation
processes during biological model construction.
Computational Toxicological Approaches for Drug Profiling and Development of Online Clinical Repositories
Page: 39-62 (24)
Author: Uzma Afreen, Ushna Afreen and Daraksha Bano*
DOI: 10.2174/9789815196986123010006
PDF Price: $15
Abstract
One of the chief reasons for drug attrition and failure to become a marketed
drug is the potential toxicity associated with its administration. Therefore, many drugs
encountered in the past reached the last phase of drug development successfully but
could not be marketed despite their potential drug-likeness due to their inevitable
toxicity properties. This issue can be addressed considerably by employing
computational toxicological approaches for predicting the toxicity parameters of a drug
candidate before its practical synthesis. Pharmaceutical companies utilise computer-based toxicity predictions at the design stage for identifying lead compounds
possessing the least toxic properties, and also at the optimization stage for selecting
candidates as potential drugs. This integrative field has been exploited for various
applications including hazard and risk prioritization of chemicals and safety screening
of drug metabolites. The importance of QSTR models for the computational prediction
of toxicity is also discussed in this chapter. Various important and predominant
software for in silico toxicity prediction including ADMETox, OSIRIS Property
Explorer, TopKat and admetSAR 2.0 are also covered herein. This chapter also
discusses various freely accessible online clinical repositories such as BindingDB,
PubChem, ChEMBL, DrugBank and ChemNavigator iResearch Library. Therefore, the
present chapter focuses on the role played by computational toxicology in the
procedure of drug profiling and in establishing freely accessible online clinical
repositories.
How to Neutralize Chemicals that Kill the Environment and Humans: An Application of Computational Toxicology
Page: 63-85 (23)
Author: Shristi Modanwal*, Nidhi Mishra and Ashutosh Mishra
DOI: 10.2174/9789815196986123010007
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Abstract
Computational toxicology is an applied science that combines the use of the
most recent developments in biology, chemistry, computer technology, and
mathematics. Integrating all of these fields into a biologically based computer model to
better understand and anticipate the negative health impacts of substances like
environmental contaminants and medications. As public demand rises to eliminate
animal testing while maintaining public safety from chemical exposure, computational
approaches have the potential of being both rapid and inexpensive to operate, with the
ability to process thousands of chemical structures in a short amount of time. The
agency's computational toxicology lab is always working on new models for decisionsupport tools such as physiologically based pharmacokinetic (PBPK) models,
benchmark dose (BMD) models, computational fluid dynamics (CFD) models, and
quantitative structure-activity relationship (QSAR) models. The models are being used
to analyze the toxicological effects of chemicals on mammals and the environment in a
variety of industries, including cosmetics, foods, industrial chemicals, and medicines.
Additionally, the toolbox’s understanding of toxicity pathways will be immediately
applicable to the study of biological responses at a variety of dosage levels, including
those more likely to be typical of human exposures. The uses of computational
toxicology in environmental, pharmacological, and industrial processes are covered in
this study.
Adverse Environmental Impact of Pharmaceutical Waste and its Computational Assessment
Page: 86-105 (20)
Author: Tuba Siddiqui, Saima Arif, Saman Raza and Tahmeena Khan*
DOI: 10.2174/9789815196986123010008
PDF Price: $15
Abstract
Pharmaceuticals are necessary products that have indubitable benefits for
people's health and way of life. Following their use, there is a corresponding increase in
the production of pharmaceutical waste. We need to figure out how to lessen the
production of pharmaceutical waste and prevent its release into the environment, which
could eventually pose major health risks to the rest of the living world. If handled
incorrectly, pharmaceutical waste increases the danger, which is inversely correlated
with the active concentration of chemical components in various environmental
compartments. As a result, when drugs and their unaltered metabolites are dispersed
into the environment through several sources and channels, they may influence both
animals and humans. Finding the sources and points of entry of pharmaceutical waste
into the ecosystem is the first step in understanding pharmaceutical ecotoxicity. Several
techniques, like the Structure-Activity Relationship (SAR) and Quantitative StructureActivity Relationship (QSAR) models, help assess and manage environmental risks
caused by pharmaceutical waste. The persistency, mobility, and toxicity (PMT) of
pharmaceutical compounds have been predicted computationally using QSAR models
from OPERA QSAR, VEGA QSAR, the EPI Suite, the ECOSAR, and the QSAR
toolbox. In silico predictions have been made for molecular weight, STP total removal,
sewage treatment plant, Octanol-water partition coefficient (KOW), ready
biodegradability, soil organic adsorption coefficient, short- and long-term ecological
assessments, carcinogenicity, mutagenicity, estrogen receptor binding, and Cramer
decision tree. The adverse effects of medications on the living world, as well as risk
assessment and management, have been covered in this chapter. Several computational
methods that are employed to counteract the negative consequences of pharmaceutical
waste have also been addressed. The goal is to better understand how to minimize the
concentration of pharmaceutical waste in our environment.
Computational Aspects of Organochlorine Compounds: DFT Study and Molecular Docking Calculations
Page: 106-124 (19)
Author: Nikita Tiwari*, Dinesh Kumar Mishra and Anil Mishra
DOI: 10.2174/9789815196986123010009
PDF Price: $15
Abstract
The paper and pulp industry generates enormous amounts of wastewater
containing high quantities of chlorinated toxicants. These volatile organochlorine
compounds are widespread toxic chemicals that may cause harmful effects on humans
via interaction with human α-amino-β-carboxymuconate-ε-semialdehyde
decarboxylase (hACMSD) which is a vital enzyme of the kynurenine pathway in
tryptophan metabolism. It averts the accumulation of quinolinic acid (QA) and supports
the maintenance of the basal Trp-niacin ratio. Herein, we report the optimization of
organochlorine compounds employing density functional theory (DFT) with B3LYP/6-
311G+(d,p) basis set to elucidate their frontier molecular orbitals as well as the
chemical reactivity descriptors. The DFT outcome revealed that organochlorine
compounds show a lower HOMO-LUMO gap as well as a higher electrophilicity index
and basicity as compared to the substrate analogue, Dipicolinic acid. To assess the
structure-based inhibitory action of organochlorine compounds, these were docked into
the active site cavity of hACMSD. The docking simulation studies predicted that
organochlorine compounds require lower binding energy (-3.86 to -6.42 kcal/mol)
which is in good agreement with the DFT calculations and might serve as potent
inhibitors to hACMSD comparable with its substrate analogue, Dipicolinic acid which
has a binding affinity of -4.41 kcal/mol. Organochlorine compounds interact with key
residues such as Arg47 and Trp191 and lie within the active site of hACMSD. The high
binding affinity of organochlorine compounds was attributed to the presence of several
chlorine atoms, important for hydrophobic interactions between the organochlorine
compounds and the critical amino acid residues of the receptor (hACMSD). The results
emphasized that organochlorine compounds can structurally mimic the binding pattern
of Dipicolinic acid to hACMSD.
Toxicology Studies of Anisole and Glyoxylic Acid Derivatives by Computational Methods
Page: 125-158 (34)
Author: Sakshi Gupta* and Seema Joshi
DOI: 10.2174/9789815196986123010010
PDF Price: $15
Abstract
Toxicology is a domain imbricating biology, chemistry, pharmacology, and
medicine that involves observing and analyzing inauspicious consequences of chemical
exposure on living beings thus identifying and manifesting toxins and toxicants.
Progress in computer sciences and hardware in combination with equally remarkable
growth in molecular biology and chemistry are providing toxicology with a reigning
new tool case. This tool case of computational models assures to enhance the efficacy
by which the hazards and risks of environmental chemicals are driven. In this study, we
investigated two compounds namely: Phenylgloxylic acid (PGA) and 4-ethynyl anisole
(MOPA) experimentally as well as quantum chemically. Density functional theory was
employed to investigate the tilted compounds theoretically. All the Quantum chemical
calculations were performed by implying the Density functional theory technique,
B3LYP method and 6-311++G (d, p) basis set. The reactive areas of the molecule were
obtained by Fukui functions. The ADME properties and drug-likeness nature of the
derivatives were obtained by SwissADME Tool [1]. Molecular docking studies were
also performed with different receptor proteins to study the best ligand-protein
interactions. The biological study-drug-likeness was also performed to check the druglike nature of the molecule.
Computational Toxicology Studies of Chemical Compounds Released from Firecrackers
Page: 159-182 (24)
Author: Alfred J. Lawrence, Nikita Tiwari and Tahmeena Khan*
DOI: 10.2174/9789815196986123010011
PDF Price: $15
Abstract
Customary firework burning during different festivals and occasions have
been reported from different parts of the world. The pollutants emitted from fireworks
exert toxicological effects on human health and the environment. A virtual study was
performed to assess the extent of binding of sixteen important components of fireworks
including Al2O3
, Ba(NO3
)2
, C6H6
, CO, Ethylbenzene (C8H10) Fe2O3
.H2O, KClO3
, KClO4
,
KNO3
, Na2C2O4, NH3
, NO, o-Xylene (C8H10), SO2
, Sr(NO3
)2
and Toluene (C7H8
) with
human superoxide dismutase (SOD), human serum albumin (HSA), and estrogen
related receptor gamma (ERR-gamma) proteins. AutoDock 4.2.6 was employed to
perform rigid docking. Against HSA, NH3
exhibited the least binding energy i.e. -5.19
kcal/mol. Against ERR-gamma, Al2O3
showed the least binding energy i.e., -4.08
kcal/mol. With SOD, ethylbenzene exhibited binding energy of -4.62 kcal/mol. A
molecular dynamics simulation of 10 ns was performed on the ERR-gamma-o-xylene
complex at 300K at the molecular mechanics level using GROMACS 5.1.2., showing
conformational changes within the protein due to the o-xylene binding. The average
Root Mean Square Fluctuation of the complex was 0.0821 nm. The results can be
further elaborated and may guide future research for the intervention of protein targets
for chemical toxins.
Computational Nanotoxicology and its Applications
Page: 183-213 (31)
Author: Sabeeha Jabeen, Vasi Uddin Siddiqui, Shashi Bala, Abdul Rahman Khan, Saman Raza and Tahmeena Khan*
DOI: 10.2174/9789815196986123010012
PDF Price: $15
Abstract
The trial on non-testing approaches for nanostructured materials and the
prediction of toxicity that may cause cell disruption is needed for the risk assessment,
to recognize, evaluate, and categorize possible risks. Another tactic for examining the
toxicologic characteristics of a nanostructure is using in silico methods that interpret
how nano-specific structures correlate to noxiousness and permit its prediction.
Nanotoxicology is the study of the toxicity of nanostructures and has been broadly
functional in medical research to predict the toxicity in numerous biotic systems.
Exploring biotic systems through in vivo and in vitro approaches is affluent and time-consuming. However, computational toxicology is a multi-discipline ground that
operates In silico strategies and algorithms to inspect the toxicology of biotic systems
and also has gained attention for many years. Molecular dynamics (MD) simulations of
biomolecules such as proteins and deoxyribonucleic acid (DNA) are prevalent for
considering connections between biotic systems and chemicals in computational
toxicology. This chapter summarizes the works predicting nanotoxicological endpoints
using (ML) machine learning models. Instead of looking for mechanistic clarifications,
the chapter plots the ways that are followed, linking biotic features concerning
exposure to nanostructure materials, their physicochemical features, and the commonly
predicted conclusions. The outcomes and conclusions obtained from the research, and
review papers from indexing databases like SCOPUS, Web of Science, and PubMed
were studied and included in the chapter. The chapter maps current models developed
precisely for nanostructures to recognize the threat potential upon precise exposure
circumstances. The authors have provided computational nano-toxicological effects
with the collective vision of applied machine learning tools.
Subject Index
Page: 214-218 (5)
Author: Tahmeena Khan and Saman Raza
DOI: 10.2174/9789815196986123010013
PDF Price: $15
Introduction
Computational Toxicology for Drug Safety and a Sustainable Environment is a primer on computational techniques in environmental toxicology for scholars. The book presents 9 in-depth chapters authored by expert academicians and scientists aimed to give readers an understanding of how computational models, software and algorithms are being used to predict toxicological profiles of chemical compounds. The book also aims to help academics view toxicological assessment from the lens of sustainability by providing an overview of the recent developments in environmentally-friendly practices. The chapters review the strengths and weaknesses of the existing methodologies, and cover new developments in computational tools to explain how researchers aim to get accurate results. Each chapter features a simple introduction and list of references to benefit a broad range of academic readers. List of topics: 1. Applications of computational toxicology in pharmaceuticals, environmental and industrial practices 2. Verification, validation and sensitivity studies of computational models used in toxicology assessment 3. Computational toxicological approaches for drug profiling and development of online clinical repositories 4. How to neutralize chemicals that kill environment and humans: an application of computational toxicology 5. Adverse environmental impact of pharmaceutical waste and its computational assessment 6. Computational aspects of organochlorine compounds: DFT study and molecular docking calculations 7. In-silico studies of anisole and glyoxylic acid derivatives 8. Computational toxicology studies of chemical compounds released from firecrackers 9. Computational nanotoxicology and its applications.