Open Access
ARTICLE
Optimizing Digital Integration of Manufacturing Execution Systems to Enhance Quality and Compliance in the Pharmaceutical Sector
Issue Vol. 2 No. 02 (2025): Volume 02 Issue 02 --- Section Articles
Abstract
The pharmaceutical industry has undergone profound shifts propelled by digital transformation, yet the integration of Manufacturing Execution Systems (MES) remains a cornerstone for enhancing operational quality, compliance, and process performance. This research article elucidates the theoretical foundations, operational mechanisms, and strategic implications of MES adoption within pharmaceutical manufacturing environments. Placing an emphasis on business payback beyond return on investment (ROI), this analysis synthesizes multidisciplinary perspectives on MES architectures, regulatory challenges, quality management integration, and digital transformation frameworks. Drawing upon advancements in Industry 4.0, information systems theory, and organizational change paradigms, the work investigates how MES facilitates adaptive quality systems, strengthens compliance with stringent regulatory standards, and enables real-time decision-making. The inquiry foregrounds the strategic deployment of MES as an enabler for pharmaceutical firms to reconcile complex manufacturing requirements with digital operational capabilities. By critically reviewing extant literature, this article exposes a significant gap in empirical analyses linking MES implementation outcomes with measurable performance improvements, suggesting key pathways for future inquiry and practical adoption strategies.
Keywords
References
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