Unlocking the Potential of Artificial Intelligence in Pharma Research and Development: Insights from Investor and Researcher Perspectives

The integration of artificial intelligence into drug discovery processes represents a major innovation in pharmaceutical research and development. This study investigates the role of AI investments in enhancing research efficiency, addressing implementation challenges, and shaping stakeholder perspe...

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Bibliographic Details
Main Authors: Iakovos Kritikos, Andreas Sarantopoulos, Anastasios Roumeliotis, Julia Vasiliades, Ioannis Matsinas
Format: Article
Language:English
Published: Academic Research and Publishing UG (i. G.) 2025-07-01
Series:Health Economics and Management Review
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Online Access:https://armgpublishing.com/wp-content/uploads/2025/07/HEM_2_2025_1.pdf
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Summary:The integration of artificial intelligence into drug discovery processes represents a major innovation in pharmaceutical research and development. This study investigates the role of AI investments in enhancing research efficiency, addressing implementation challenges, and shaping stakeholder perspectives. Via a structured explanatory research design, the study applies a quantitative methodology based on survey data collected from researchers, investors, and pharmaceutical executives across the USA and United Kingdom. The questionnaire examined respondents’ experiences with artificial intelligence tools, investment patterns, and perceived research outcomes. Statistical methods such as logistic regression and chi-square tests were employed to analyze correlations between investment strategies and research efficiency. Findings indicate that while artificial intelligence improves productivity – in predictive modeling and data analysis – barriers such as high infrastructure costs, inadequate training, and regulatory uncertainty persist. Notably, 70% of participants plan to increase AI investments within the next five years, and 80% regard artificial intelligence as essential or very important to the future of drug discovery. However, successful implementation appears to correlate with firm size and access to technical resources, suggesting disparities in AI readiness across the industry. Recommendations include expanding artificial intelligence training programs, strengthening infrastructure, and fostering closer collaboration between investors and researchers. Ethical considerations, including data privacy and regulatory compliance, are also emphasized. The pilot study provides foundational insights for a full-scale investigation and offers practical guidance for optimizing artificial intelligence integration in pharmaceutical research and development.
ISSN:2786-4626
2786-4634