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Chemoinformatics is broadly a scientific discipline encompassing
the design, creation, organization, management, retrieval,
analysis, dissemination, visualization and use of chemical
information. It is distinct from other computational molecular
modeling approaches in that it uses unique representations of
chemical structures in the form of multiple chemical descriptors;
has its own metrics for defining similarity and diversity of
chemical compound libraries; and applies a wide array of
statistical, data mining and machine learning techniques to very
large collections of chemical compounds in order to establish
robust relationships between chemical structure and its physical or
biological properties. Chemoinformatics addresses a broad range of
problems in chemistry and biology; however, the most commonly known
applications of chemoinformatics approaches have been arguably in
the area of drug discovery where chemoinformatics tools have played
a central role in the analysis and interpretation of
structure-property data collected by the means of modern high
throughput screening. Early stages in modern drug discovery often
involved screening small molecules for their effects on a selected
protein target or a model of a biological pathway. In the past
fifteen years, innovative technologies that enable rapid synthesis
and high throughput screening of large libraries of compounds have
been adopted in almost all major pharmaceutical and biotech
companies. As a result, there has been a huge increase in the
number of compounds available on a routine basis to quickly screen
for novel drug candidates against new targets/pathways. In
contrast, such technologies have rarely become available to the
academic research community, thus limiting its ability to conduct
large scale chemical genetics or chemical genomics research.
However, the landscape of publicly available experimental data
collection methods for chemoinformatics has changed dramatically in
very recent years. The term "virtual screening" is commonly
associated with methodologies that rely on the explicit knowledge
of three-dimensional structure of the target protein to identify
potential bioactive compounds. Traditional docking protocols and
scoring functions rely on explicitly defined three dimensional
coordinates and standard definitions of atom types of both
receptors and ligands. Albeit reasonably accurate in many cases,
conventional structure based virtual screening approaches are
relatively computationally inefficient, which has precluded them
from screening really large compound collections. Significant
progress has been achieved over many years of research in
developing many structure based virtual screening approaches. This
book is the first monograph that summarizes innovative applications
of efficient chemoinformatics approaches towards the goal of
screening large chemical libraries. The focus on virtual screening
expands chemoinformatics beyond its traditional boundaries as a
synthetic and data-analytical area of research towards its
recognition as a predictive and decision support scientific
discipline. The approaches discussed by the contributors to the
monograph rely on chemoinformatics concepts such as:
-representation of molecules using multiple descriptors of chemical
structures -advanced chemical similarity calculations in
multidimensional descriptor spaces -the use of advanced machine
learning and data mining approaches for building quantitative and
predictive structure activity models -the use of chemoinformatics
methodologies for the analysis of drug-likeness and property
prediction -the emerging trend on combining chemoinformatics and
bioinformatics concepts in structure based drug discovery The
chapters of the book are organized in a logical flow that a typical
chemoinformatics project would follow - from structure
representation and comparison to data analysis and model building
to applications of structure-property relationship models for hit
identification and chemical library design. It opens with the
overview of modern methods of compounds library design, followed by
a chapter devoted to molecular similarity analysis. Four sections
describe virtual screening based on the using of molecular
fragments, 2D pharmacophores and 3D pharmacophores. Application of
fuzzy pharmacophores for libraries design is the subject of the
next chapter followed by a chapter dealing with QSAR studies based
on local molecular parameters. Probabilistic approaches based on 2D
descriptors in assessment of biological activities are also
described with an overview of the modern methods and software for
ADME prediction. The book ends with a chapter describing the new
approach of coding the receptor binding sites and their respective
ligands in multidimensional chemical descriptor space that affords
an interesting and efficient alternative to traditional docking and
screening techniques. Ligand-based approaches, which are in the
focus of this work, are more computationally efficient compared to
structure-based virtual screening and there are very few books
related to modern developments in this field. The focus on
extending the experiences accumulated in traditional areas of
chemoinformatics research such as Quantitative Structure Activity
Relationships (QSAR) or chemical similarity searching towards
virtual screening make the theme of this monograph essential
reading for researchers in the area of computer-aided drug
discovery. However, due to its generic data-analytical focus there
will be a growing application of chemoinformatics approaches in
multiple areas of chemical and biological research such as
synthesis planning, nanotechnology, proteomics, physical and
analytical chemistry and chemical genomics.
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