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Automating Drug Discovery using Machine Learning
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Abstract:
Drug discovery and development have been sped up because of the advances in computational
science. In both industry and academics, artificial intelligence (AI) has been widely used. Machine
learning (ML), an important component of AI, has been used in a variety of domains, including
data production and analytics. One area that stands to gain significantly from this achievement of machine
learning is drug discovery. The process of bringing a new drug to market is complicated and
time-consuming. Traditional drug research takes a long time, costs a lot of money, and has a high failure
rate. Scientists test millions of compounds, but only a small number make it to preclinical or clinical
testing. It is crucial to embrace innovation, especially automated technologies, to lessen the complexity
involved in drug research and avoid the high cost and lengthy process of bringing a medicine
to the market. A rapidly developing field, a branch of artificial intelligence called machine learning
(ML), is being used by numerous pharmaceutical businesses. Automating repetitive data processing
and analysis processes can be achieved by incorporating ML methods into the drug development process.
ML techniques can be used at numerous stages of the drug discovery process. In this study, we
will discuss the steps of drug discovery and methods of machine learning that can be applied in these
steps, as well as give an overview of each of the research works in this field.
Bentham Science Publishers Ltd.
Title: Automating Drug Discovery using Machine Learning
Description:
Abstract:
Drug discovery and development have been sped up because of the advances in computational
science.
In both industry and academics, artificial intelligence (AI) has been widely used.
Machine
learning (ML), an important component of AI, has been used in a variety of domains, including
data production and analytics.
One area that stands to gain significantly from this achievement of machine
learning is drug discovery.
The process of bringing a new drug to market is complicated and
time-consuming.
Traditional drug research takes a long time, costs a lot of money, and has a high failure
rate.
Scientists test millions of compounds, but only a small number make it to preclinical or clinical
testing.
It is crucial to embrace innovation, especially automated technologies, to lessen the complexity
involved in drug research and avoid the high cost and lengthy process of bringing a medicine
to the market.
A rapidly developing field, a branch of artificial intelligence called machine learning
(ML), is being used by numerous pharmaceutical businesses.
Automating repetitive data processing
and analysis processes can be achieved by incorporating ML methods into the drug development process.
ML techniques can be used at numerous stages of the drug discovery process.
In this study, we
will discuss the steps of drug discovery and methods of machine learning that can be applied in these
steps, as well as give an overview of each of the research works in this field.
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