Rajesh Kumar kanji Reviewer
15 Apr 2025 10:23 AM

This is a well-researched and insightful paper that explores how machine learning and big data analytics can enhance data management across the pharmaceutical value chain. The topic is highly relevant, especially as the industry embraces digital transformation to improve R&D, compliance, and supply chain operations.
Strengths
- The proposed Pharmaceutical Data Management (PDM) Framework is practical and comprehensive, addressing real-world challenges.
- The paper integrates quantitative and qualitative insights, with examples from major Indian pharmaceutical companies, adding strong industry relevance.
- Tables are informative and clearly demonstrate the benefits of machine learning across different pharmaceutical functions.
- Ethical aspects like patient data consent and GDPR compliance are appropriately addressed.
Suggestions for Improvement
- Literature Review: While several useful references are cited, consider adding more global studies from 2022–2024 to reflect current advancements.
- Data Integration Challenges: Expand slightly on how legacy systems and data silos can be practically addressed—consider mentioning middleware or data lake solutions.
- Results Section: Clearly highlight the metrics that validate the proposed framework’s impact (e.g., regulatory audit scores, time savings).
- Future Work: Consider briefly outlining how the framework could be adapted to support real-world evidence (RWE) or personalized medicine on a global scale.
Rajesh Kumar kanji Reviewer
15 Apr 2025 10:22 AM