Next-Gen pharmaceutical program management: Integrating AI, predictive analytics, and machine learning for better decision-making

George Stephen *

Gilead Sciences, USA.
 
Research Article
International Journal of Science and Research Archive, 2024, 13(02), 4146-4158.
Article DOI: 10.30574/ijsra.2024.13.2.2384
Publication history: 
Received on 28 October 2024; revised on 14 December 2024; accepted on 17 December 2024
 
Abstract: 
Modern pharmaceutical program management advances through integrating artificial intelligence (AI) systems, predictive analytics, and machine learning algorithms. The advanced tools enable researchers, clinicians, and stakeholders to increase their decision quality, accelerate development periods, and minimize costs while focusing on patient wellness. Through large dataset analyses, AI-based algorithms help researchers find therapeutic goals before establishing trial success predictions and perfect scientific study designs. Predictive analytical models help physicians detect side effects before approval, and they direct regulatory review processes to enhance product safety while maintaining effectiveness. Through machine learning algorithms, the healthcare industry identifies novel patterns in patient data that standard clinical approaches would not normally detect. Pharmaceutical decision-making still faces difficulties because of complicated data structures and high research failures among various patient groups. Program management tools of the next generation aim to eliminate current gaps by delivering real-time information that decreases drug development failures, minimizes processing periods, and maximizes global health outcomes. The research investigates the integration method alongside the advantages and future possibilities of AI-based pharmaceutical program management systems.
 
Keywords: 
Ai Integration; Predictive Analytics; Clinical Trials; Drug Discovery; Machine Learning; Program Management
 
Full text article in PDF: