The Changing Face of Drug Development, Trends and Challenges

Authors

  • Patnana Vikas Intern, Clinoxy Solutions Pvt., Ltd., KPHB 9th Phase, Kukatpally, Back side Nexus Mall (Forum Mall), Near JUNTH University, Hyderabad. Telangana. 500085
  • Kudupudi Jahnavi Sravanthi Intern, Clinoxy Solutions Pvt., Ltd., KPHB 9th Phase, Kukatpally, Back side Nexus Mall (Forum Mall), Near JUNTH University, Hyderabad. Telangana. 500085
  • Kotipalli Bhavani Intern, Clinoxy Solutions Pvt., Ltd., KPHB 9th Phase, Kukatpally, Back side Nexus Mall (Forum Mall), Near JUNTH University, Hyderabad. Telangana. 500085
  • Satish Kumar Vemavarapu Founder and CEO, Clinoxy Solutions Pvt., Ltd., KPHB 9th Phase, Kukatpally, Back side Nexus Mall (Forum Mall), Near JUNTH University, Hyderabad. Telangana. 500085

Keywords:

Drug development, Drug discovery, Target identification, Artificial intelligence / Machine learning, Gene therapy, Cell therapy, RNA therapeutics (mRNA, siRNA, aptamers), Regulatory harmonization, Data privacy / Cybersecurity

Abstract

Drug development remains a lengthy, costly, and high-risk endeavour, typically spanning 10–15 years and requiring approximately $2.6 billion in capitalized expenditure per approved therapy, a figure that does not account for the substantial variation across therapeutic areas. Traditional discovery methods, while historically impactful, suffer from low efficiency and high attrition rates. In response, a transformative shift is underway, fuelled by breakthroughs in artificial intelligence (AI), gene and RNA therapeutics, decentralized clinical trials, and real-world evidence. AI and machine learning are revolutionizing key early-stage processes, including target identification, virtual screening, predictive toxicology, and adaptive trial designs, which help reduce cycle times by up to 18% and propel multiple compounds into clinical evaluation. Although no AI-designed drug has reached the market yet. CRISPR, CAR‑T, and mRNA therapeutics, principally driven by pandemic-era successes, are redefining treatment possibilities for genetic and infectious diseases. Parallel technical advances in digital health have enabled decentralized clinical trials, incorporating telemedicine, wearable sensors, and real-time data capture, enhancing efficiency and patient inclusion. Likewise, the integration of real-world evidence from electronic health records and patient-reported outcomes is enhancing regulatory decision-making and post-market safety assessments. However, this progress brings significant challenges: regulatory frameworks are struggling to adapt across jurisdictions; biologics manufacturing remains expensive and complex; data privacy and cybersecurity concerns are growing; and scalability risks widening global health disparities. Additionally, the recruitment of diverse and representative patient populations continues to be a major hurdle.         

Dimensions

Published

2025-08-18

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