Artificial Intelligence in Clinical Trials: Transforming Patient Recruitment, Data Management, and Drug Development Processes

Authors

  • Krati Dhakad*, Pranjali Bawane, Amit Verma, Akanksha, Aiman Sifat, Swagatama Ghosh 1Associate Professor, Universal Institute of Pharmacy, Lalru, Punjab 2Teaching Assistant, Symbiosis law School Nagpur 440008 3Assistant Professor, Dr. K. N. Modi University Newai Rajasthan -304021 4Subject Matter Specialist, ICAR- KVK-East Sikkim, Ranipool, Sikkim 5Assistant Professor, HRIT University, 8km Milestone Delhi Meerut Road, Morta, Ghaziabad 201003 6All India Institute of Hygiene and Public Health, Central Avenue, Kolkata 700073

DOI:

https://doi.org/10.62896/ijpdd.1.11.1

Keywords:

Artificial Intelligence, Clinical Trials, Patient Recruitment, Data Management, Drug Development Processes.

Abstract

The clinical trials are important for the development of medical science since it becomes easier to test novel drugs, medical equipment, and even new methods in the treatment of a person. Only 10% of these studies were able to complete the entire process-from original drug design to post-marketing surveillance, which is slightly worrying. This low completion rate seriously jeopardizes the overall sustainability of clinical research and public health and healthcare economics. Increasing study designs and costs, along with other related difficulties in patient recruitment and data management, also work to worsen this problem. In this respect, AI has become a really powerful instrument that can revolutionize several aspects related to clinical trials. Thus, to gauge the effectiveness of AI in the sphere of patient recruitment efficiency, and the accuracy of data management along with meeting deadlines for the development of drugs, this paper would be carried out by a mixed-methods approach. The paper illustrates considerable achievements in the fields associated with AI technologies through qualitative views of experts along with the quantitative analysis of key indicators. According to the findings, AI has decreased input error in data by 25%, cut average development time for medication by 22%, and reduced total identification of patients by 30%. Besides, AI has also been enhanced to predict the efficacy of drugs with the precision of 13%. These outcomes therefore highlight how AI can accelerate the procedures of clinical trials and increase participant diversity, which may, in the long run, influence the outcome of the trail. This may thus open doors for health breakthroughs to be more efficient and timely delivered.

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Published

2024-09-28

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Section

Articles

How to Cite

Artificial Intelligence in Clinical Trials: Transforming Patient Recruitment, Data Management, and Drug Development Processes. (2024). International Journal of Pharmaceutical Drug Design, 1(11), 1-10. https://doi.org/10.62896/ijpdd.1.11.1

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