Book Volume 7
The Computational Chemistry in Adsorption Studies: The Cases of Drug Carriers and Biosensors
Page: 1-35 (35)
Author: Erwin García-Hernández*
DOI: 10.2174/9789815179033124070001
PDF Price: $30
Abstract
The study of new nanomaterials with potential applications as drug carriers
and biosensors is based on the interactions between adsorbate (drug/biomolecule) and
adsorbent (nanomaterial). Experimentally, the study of these cases has several
economic efforts because of the high cost of carrying out all experiments. In this sense,
computational chemistry is beginning to become a useful tool for designing and
developing new nanostructures with the possible application as drug carriers and
biosensors, with less economic resources. In literature, several works evidence the
usefulness of computational chemistry in this area, promoting the proposal of new
nanomaterials with peculiar characteristics.
In this regard, the present chapter shows an overview of the study of drug carriers and
biosensors from an adsorption process point of view. Also, some adsorbent materials
are exemplified, as well as the main interactions present at the adsorbate-adsorbent
complex formation. Later, a bridge between computational chemistry and the
adsorption phenomena is highlighted, as well as some electronic parameters in the
framework of the density functional theory useful in these studies. Finally, two cases
are represented: the application of molecular modeling for the study of drug-carrier
nanostructures, and the design and modeling of biosensors based on nanostructures.
Perspective on the Role of Quantum Mechanical Calculations on Cellular Molecular Interactions
Page: 1-78 (78)
Author: Mouhmad Elayyan, Binglin Sui and Mark R. Hoffmann*
DOI: 10.2174/9789815179033124070002
PDF Price: $30
Abstract
Most computational studies of biologically relevant systems have used
Molecular Mechanics (MM). While MM is generally reliable for many applications,
chemical reactions and bond formations/breakage are not describable in MM. In
contrast, Quantum Mechanics (QM) is an approach that utilizes wavefunctions and/or
electron density functions for property and structural analyses and hence does not
suffer from such limitations. QM methods can be classified into two main frameworks,
ab initio and semi-empirical. Semi-empirical methods utilize experimental or ab initio
results to make additional approximations, thereby using a combination of some ab
initio calculations and fitted experimental data. Despite the accuracy and general
applicability of QM, the major disadvantages are limitations due to the system size. Not
surprisingly, hybrid methods that partition the problem at hand into subsystems have
been developed. Some of these methods mix QM with MM, and others are strictly QM,
but limit the range of interactions. As a result, there exists a plethora of methods, some
with fanatical followers, with the result that researchers are often faced with
bewildering choices.
This review, perhaps more accurately described as a mini-review or perspective,
examines recent calculations on biologically relevant (including biomimetic molecules)
in which QM is necessary, to a greater or lesser degree, to obtain results that are
consistent with the experiment. The review is not an exposition on the theoretical
foundations of different methods, but rather a practical guide for the researcher with an
interest in using computational methods to produce biologically, or at least
biochemically, useful results. Because of our own specific interests, the Arg-Gly-Asp
sequence, or so-called RGD, figures prominently in the work, in terms of size,
including oligomers of RGD, and strengths of interactions. A key feature of RGD is its
role in the binding of cells to the Extra Cellular Matrix (ECM) depending on the cell
type and receptor protein on the cell itself. The ECM is comprised of spectra of
biological compounds such as proteoglycans and fibrous proteins; RGD is located and
found as a motif on these fibrous proteins. The cell bindings to the ECM are done via
integrin-RGD binding. Because metal interactions and hydrogen bonding significantly
affect integrin-RGD binding, theoretical methodology beyond MM is needed. IntegrinRGD binding affects the adhesion and movement of cells along the ECM. Hence, these
interactions are highly relevant to understanding the spread of cancer in an organism.
Computational Approaches in Evaluating the 5-HT Subtype Receptor Mechanism of Action for Developing Novel Chemical Entities
Page: 1-41 (41)
Author: Arushi Chauhan and Pramod K Avti*
DOI: 10.2174/9789815179033124070003
PDF Price: $30
Abstract
The G-protein coupled receptor GPCR family is the most numerous and
diversified set of membrane receptors linked with various neurological disorders like
Epilepsy, Alzheimer's disease, Fronto-temporal dementia, Vascular dementia,
Parkinson's disease, and Huntington's disease. They provide messages to the cell by
interacting with various ligands, which include hormones, neurotransmitters, and
photons. They are the focus of roughly one-third of the medications on the market
today. Similarly, the subtype of the serotonin receptor, 5-hydroxytryptamine 2B
(5-HT2B), belongs to the G-protein receptor (GPCR) class-A family and is a sensitive
class prone to deactivation and activation. There has been an increasing interest in the
structural geometry of the receptor upon ligand binding to the allosteric site. The
cavities at the receptor-lipid interface are an unusual allosteric binding region that
presents numerous issues concerning ligand interactions and stability, binding site
conformation, and how the lipid molecules alter all these molecular modeling
mechanisms provide an insight into the docking and binding of drug and structural
variations. For instance, ligand recognition in the neuronal adenosine receptor type 2A
(hA2AR), a GPCR related to various neurodegenerative disorders, was investigated for
its affinity against an inhibitor in a solvated neuronal-like membrane in metadynamics.
The study provided a factual description of atomic interactions between the ligand and
the receptor. It was supported by in vitro binding affinity studies for highlighting the
importance of membrane lipids and protein extracellular loop regions, thus, providing
valuable input for ligand design and targeting GPCR. Since 5HT is essential as a target
for various pharmaceutical and recreational drugs, studies are gaining pace regarding
its seven subtypes. In research, general molecular design is carried out, including
homology modeling, docking, dynamics, and a hallucinogen-specific chemogenomics
database for pharmacological analysis of small molecules and their potential targets.
The analogs of piperidine and piperazine moieties were investigated against the 5HT2A
receptor via pharmacophore modeling, 3D-Quantitative Structure-Activity
Relationship (3D-QSAR), Molecular docking, and Absorption Distribution Metabolism
Excretion (ADME) studies. With the onset of multiscale molecular modeling, it is now
possible to apply multiple levels of theory to a system of interest, such as assigning chemically relevant regions to high quantum mechanics (QM) theory while treating the
rest of the system with a classical force field (molecular mechanics (MM) potential).
Several groups have explored the atomic level of interaction between the ligand and the
allosteric site via molecular docking and dynamics simulations, followed by quantum
chemical calculations to achieve specific results and strengthen the analysis. Quantum
Mechanics/Molecular Mechanics (QM/MM) is employed by considering
conformational plasticity to identify the critical binding site residues responsible for
modifying GPCR function. By this path, the geometry of the receptor is analyzed either
by fixing its position w.r.t. to the ligand or by choosing a bound ligand. Finally,
structure-based drug design (SBDD) methodologies will be more efficient. Density
Functional Theory (DFT) calculations reveal the stabilization of the molecular structure
to depict the interactions. Various study groups also practice Fragment-based lead
discovery methods for GPCR-based drug discovery. Creating leads from fragments is
complicated, accurate, and dependable computational methods are employed to explore
G protein-coupled receptor as a target via molecular dynamics simulations and the free
energy perturbation approaches (MD/FEP). The overall knowledge of GPCR-mediated
signaling can be expanded using such computational approaches.
Current Trends in Molecular Modeling to Discover New Anti-inflammatory Drugs Targeting mPGES1
Page: 1-34 (34)
Author: Yvnni Maria Sales de Medeiros e Silva, Marianny de Souza, Daniel Calazans Medeiros, Washley Phyama De Jesus Marinho, Anne Dayse Soares da Silva, Ricardo Olimpio de Moura and Igor José dos Santos Nascimento*
DOI: 10.2174/9789815179033124070004
PDF Price: $30
Abstract
Inflammation is a natural response to external stimuli related to the
protection of the organism. However, their exaggerated reaction can cause severe
damage to the body and is related to several diseases, including allergies, rheumatoid
arthritis, diabetes, cancer, and various infections. Furthermore, inflammation is mainly
characterized by increased temperature, pain, flushing, and edema due to the
production of pro-inflammatory cytokines, such as prostaglandins, and can be
controlled using anti-inflammatory drugs. In this sense, selective prostaglandin E2
(PGE2
) inhibition has been targeted and explored for designing new compounds for
anti-inflammatory drugs because it can show fewer side effects than non-steroidal antiinflammatory drugs (NSAIDs) and corticosteroids. It is a bioactive lipid overproduced
during an inflammatory process, produced mainly by COX-1, COX-2, and microsomal
prostaglandin E2
synthase-1 (mPGES-1). Recently, studies have demonstrated that
mPGES-1 inhibition is an excellent strategy for designing anti-inflammatory drugs,
which could protect against pain, arthritis, acute inflammation, autoimmune diseases,
and different types of cancers. Also, in recent years, Computer-Aided Drug Design
(CADD) approaches have been increasingly used to design new inhibitors, decreasing
costs and increasing the probability of discovering active substances and constantly
applying them to discover mPGES-1 inhibitors. Thus, here, this chapter will approach
the latest advances in computational methods to discover new mPGES-1 inhibitors that
can be promising against several inflammatory conditions. The focus is on techniques
such as molecular docking and dynamics, virtual screenings, pharmacophore modeling, fragment-based drug design, quantitative structure-activity relationship (QSAR), and
others explored by researchers worldwide that can lead to the design of a promising
drug against this target.
Introduction