Volume : 11, Issue : 11, November – 2024

Title:

ROLE OF AI IN DRUG DISCOVERY – A REVIEW

Authors :

P Sowmya , Miss. B. Swapna , Mr. M Gurava Reddy, Dr.K.Venugopal

Abstract :

Recently artificial intelligence has been to be applied more widely in many facets of society, with the pharmaceutical sector leading the way in regard. The effective usage of artificial intelligence (AI) in multiple areas of pharmaceutical industries, drug research and development, medication, repurposing enhancing pharmaceutical production effectively. Consequently, the human workload is reduced and goals are met quickly. The drug discovery is essential to treat new viruses or disease by medications or by developing new drug related to disease. Artificial intelligence aids in drug discovery under COVID-19 in emergency situation. The COVID- 19 pandemic necessitated rapid therapeutic development (BioNTech, Moderna, SARS-CoV-2). Thus reducing the time and cost association with trial- and- error synthesis. Artificial intelligence significantly advances our ability to design and develop safer and more potent drug marking a transformative shift in the landscape of chemistry and pharmaceutical research. Revolutionary progress is expected when artificial intelligence is incorporated into a contemporary, evidence- based drug discovery platform. The AI-based tools are Deepchem, IBM Watson, Alphafold, Shrouding’s Maestro, GANs, ChEMBL and Pubchem, GENTRL, HER, Cortellis. These AI tools are reshaping drug discovery by making processes faster, more cost-effective, and less prone to error.
Keywords: Artificial intelligence, machine learning, deep learning, drug discovery, drug design, AI-driven, drug repurposing, lead optimization, AI tools.

Cite This Article:

Please cite this article in press P Sowmya et al Role Of Ai In Drug Discovery – A Review..,Indo Am. J. P. Sci, 2024; 11 (11).

Number of Downloads : 10

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