ASPECTS OF UTILIZATION AND LIMITATIONS OF ARTIFICIAL INTELLIGENCE IN DRUG SAFETY

Authors

  • SUJITH T Department of Pharmacology, Osmania Medical College, Koti, Hyderabad, India.
  • CHAKRADHAR T Department of Pharmacology, Osmania Medical College, Koti, Hyderabad, India.
  • SRAVANI MARPAKA Adverse drug reaction monitoring centre, Osmania Medical College, Koti, Pharmacovigilance Programme of India, Indian Pharmacopoeia Commission, Hyderabad, India.
  • SOWMINI K Department of Pharmacology, Osmania Medical College, Koti, Hyderabad, India.

DOI:

https://doi.org/10.22159/ajpcr.2021.v14i8.41979

Keywords:

Artificial intelligence, Machine learning, Pharmacovigilance

Abstract

Previously, it was thought that computers cannot perform the works on its own and need the human intelligence but now it is possible with the help of artificial intelligence (AI). AI has the potential to impact nearly every aspect of medical science. As pharmacovigilance (PV) deals with data concerning drug safety, it is being considered the field to be enormously transforming in near future with the emergence of AI. This article explores and gives an overall review of the researches done to implement AI technologies in PV activities. Among many of the PV activities, case processing is the most resource-consuming area, and signal detection is considered to be a poorly functioning area due to various limitations. Introducing AI will potentially fulfill the limitations in these areas and help us to use the resources in a focused way to get the real-world risk-benefit ratio for a better understanding of the safety profile of drugs and to take timely action for the well-being of people.

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Author Biographies

SUJITH T, Department of Pharmacology, Osmania Medical College, Koti, Hyderabad, India.

Post Graduate, Department of Pharmacology

CHAKRADHAR T, Department of Pharmacology, Osmania Medical College, Koti, Hyderabad, India.

Professor & HOD, Department of Pharmacology

SRAVANI MARPAKA, Adverse drug reaction monitoring centre, Osmania Medical College, Koti, Pharmacovigilance Programme of India, Indian Pharmacopoeia Commission, Hyderabad, India.

Senior Pharmacovigilance Associate

SOWMINI K, Department of Pharmacology, Osmania Medical College, Koti, Hyderabad, India.

Post Graduate, Department of Pharmacology

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Published

07-08-2021

How to Cite

T, S., C. T, S. MARPAKA, and S. K. “ASPECTS OF UTILIZATION AND LIMITATIONS OF ARTIFICIAL INTELLIGENCE IN DRUG SAFETY”. Asian Journal of Pharmaceutical and Clinical Research, vol. 14, no. 8, Aug. 2021, pp. 34-39, doi:10.22159/ajpcr.2021.v14i8.41979.

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Section

Review Article(s)