Deep learning: A game changer in drug design and development.

Journal: Advances in pharmacology (San Diego, Calif.)
PMID:

Abstract

The lengthy and costly drug discovery process is transformed by deep learning, a subfield of artificial intelligence. Deep learning technologies expedite the procedure, increasing treatment success rates and speeding life-saving procedures. Deep learning stands out in target identification and lead selection. Deep learning greatly accelerates initial stage by analyzing large datasets of biological data to identify possible therapeutic targets and rank targeted drug molecules with desired features. Predicting possible adverse effects is another significant challenge. Deep learning offers prompt and efficient assistance with toxicology prediction in a very short time, deep learning algorithms can forecast a new drug's possible harm. This enables to concentrate on safer alternatives and steer clear of late-stage failures brought on by unanticipated toxicity. Deep learning unlocks the possibility of drug repurposing; by examining currently available medications, it is possible to find whole new therapeutic uses. This method speeds up development of diseases that were previously incurable. De novo drug discovery is made possible by deep learning when combined with sophisticated computational modeling, it can create completely new medications from the ground. Deep learning can recommend and direct towards new drug candidates with high binding affinities and intended therapeutic effects by examining molecular structures of disease targets. This provides focused and personalized medication. Lastly, drug characteristics can be optimized with aid of deep learning. Researchers can create medications with higher bioavailability and fewer toxicity by forecasting drug pharmacokinetics. In conclusion, deep learning promises to accelerate drug development, reduce costs, and ultimately save lives.

Authors

  • Sushanta Kumar Das
    Mata Gujri College of Pharmacy, Mata Gujri University, Kishanganj, Bihar, India. Electronic address: sushanta.mgcop@gmail.com.
  • Rahul Mishra
    Department of Dentistry, Uttar Pradesh University of Medical Sciences, Saifai, Etawah, Uttar Pradesh, India.
  • Amit Samanta
    Mata Gujri College of Pharmacy, Mata Gujri University, Kishanganj, Bihar, India.
  • Dibyendu Shil
    Mata Gujri College of Pharmacy, Mata Gujri University, Kishanganj, Bihar, India.
  • Saumendu Deb Roy
    Mata Gujri College of Pharmacy, Mata Gujri University, Kishanganj, Bihar, India.