Data-driven engineering framework with AI algorithm of Ginkgo Folium tablets manufacturing

Acta Pharm Sin B. 2023 May;13(5):2188-2201. doi: 10.1016/j.apsb.2022.08.011. Epub 2022 Aug 23.

Abstract

Smart manufacturing still remains critical challenges for pharmaceutical manufacturing. Here, an original data-driven engineering framework was proposed to tackle the challenges. Firstly, from sporadic indicators to five kinds of systematic quality characteristics, nearly 2,000,000 real-world data points were successively characterized from Ginkgo Folium tablet manufacturing. Then, from simplex to the multivariate system, the digital process capability diagnosis strategy was proposed by multivariate Cpk integrated Bootstrap-t. The Cpk of Ginkgo Folium extracts, granules, and tablets were discovered, which was 0.59, 0.42, and 0.78, respectively, indicating a relatively weak process capability, especially in granulating. Furthermore, the quality traceability was discovered from unit to end-to-end analysis, which decreased from 2.17 to 1.73. This further proved that attention should be paid to granulating to improve the quality characteristic. In conclusion, this paper provided a data-driven engineering strategy empowering industrial innovation to face the challenge of smart pharmaceutical manufacturing.

Keywords: Artificial intelligence; Data-driven engineering; End-to-end; Information fusion; Process capability index; Quality traceability; Real-world Ginkgo Folium products; Smart manufacturing.