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Role of Docking in Anticancer Drug Discovery
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Abstract:
The computational method is widely used in the field of drug design as well as discovery. It
aids the drug discovery and design process by making the procedure faster while also ensuring fewer
human errors. Cancer is a condition with the development of abnormal cells expressing features like uncontrolled
growth and cell division. This leads to abnormal tissue enlargement and interrupts the normal
functioning of the tissue. Computational methods, mainly the molecular docking method, have been utilised
extensively in the field of anticancer drug discovery. Docking is a virtual screening method that can
be performed on a large database of compounds. Molecular docking helps in identifying the predominant
binding modes of a ligand with a protein whose three-dimensional structure is known. The docking process
can predict the method of inhibition of the target molecule by the ligand molecule. Utilities of molecular
docking include structure-activity relationship studies, lead identification by virtual screening,
optimization of the identified lead, combinatorial library design and more. This review discusses the process
of docking, its role in anticancer drug discovery, and a comparison of different docking software.
Docking programs are used to make the docking process much more quick, efficient, and with fewer human
errors, as it mostly depends on computational algorithms. A description of some representative studies
in anticancer drug discovery related to selected docking software, Autodock, SwissDock, ICM, GOLD
and Glide, are also mentioned. This paper concludes by emphasizing the importance of docking programs
in the field of drug discovery and how it influences the modern drug discovery processes.
Title: Role of Docking in Anticancer Drug Discovery
Description:
Abstract:
The computational method is widely used in the field of drug design as well as discovery.
It
aids the drug discovery and design process by making the procedure faster while also ensuring fewer
human errors.
Cancer is a condition with the development of abnormal cells expressing features like uncontrolled
growth and cell division.
This leads to abnormal tissue enlargement and interrupts the normal
functioning of the tissue.
Computational methods, mainly the molecular docking method, have been utilised
extensively in the field of anticancer drug discovery.
Docking is a virtual screening method that can
be performed on a large database of compounds.
Molecular docking helps in identifying the predominant
binding modes of a ligand with a protein whose three-dimensional structure is known.
The docking process
can predict the method of inhibition of the target molecule by the ligand molecule.
Utilities of molecular
docking include structure-activity relationship studies, lead identification by virtual screening,
optimization of the identified lead, combinatorial library design and more.
This review discusses the process
of docking, its role in anticancer drug discovery, and a comparison of different docking software.
Docking programs are used to make the docking process much more quick, efficient, and with fewer human
errors, as it mostly depends on computational algorithms.
A description of some representative studies
in anticancer drug discovery related to selected docking software, Autodock, SwissDock, ICM, GOLD
and Glide, are also mentioned.
This paper concludes by emphasizing the importance of docking programs
in the field of drug discovery and how it influences the modern drug discovery processes.
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