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Application of Artificial Neural Networks in the Process Analytical Technology of Pharmaceutical Manufacturing-a Review

Journal

AAPS JOURNAL
Volume 24, Issue 4, Pages -

Publisher

SPRINGER
DOI: 10.1208/s12248-022-00706-0

Keywords

artificial neural network; machine learning; Pharma 4.0; Process Analytical Technology; real-time release testing

Funding

  1. Budapest University of Technology and Economics
  2. National Laboratory of Artificial Intelligence - NRDIO under Ministry for Innovation and Technology
  3. New National Excellence Program of the Ministry for Innovation and Technology from National Research, Development and Innovation Fund [UNKP21-4]
  4. OTKA [FK-132133]
  5. Eotvos Lorand Research Network

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This paper assesses the potential of machine learning techniques in pharmaceutical manufacturing and identifies future directions. By evaluating the application of artificial neural networks in pharmaceutical production, it provides guidance for the implementation of intelligent manufacturing lines in the pharmaceutical industry.
Industry 4.0 has started to transform the manufacturing industries by embracing digitalization, automation, and big data, aiming for interconnected systems, autonomous decisions, and smart factories. Machine learning techniques, such as artificial neural networks (ANN), have emerged as potent tools to address the related computational tasks. These advancements have also reached the pharmaceutical industry, where the Process Analytical Technology (PAT) initiative has already paved the way for the real-time analysis of the processes and the science- and risk-based flexible production. This paper aims to assess the potential of ANNs within the PAT concept to aid the modernization of pharmaceutical manufacturing. The current state of ANNs is systematically reviewed for the most common manufacturing steps of solid pharmaceutical products, and possible research gaps and future directions are identified. In this way, this review could aid the further development of machine learning techniques for pharmaceutical production and eventually contribute to the implementation of intelligent manufacturing lines with automated quality assurance.

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