Process analytics 4.0: A paradigm shift in rapid analytics for biologics development

被引:11
|
作者
Wasalathanthri, Dhanuka P. [1 ]
Shah, Ruchir [1 ]
Ding, Julia [1 ]
Leone, Anthony [1 ]
Li, Zheng Jian [2 ]
机构
[1] Bristol Myers Squibb Co, Global Proc Dev Analyt, 38 Jackson Rd, Devens, MA 01434 USA
[2] Bristol Myers Squibb Co, Biol Analyt Dev & Attribute Sci, Devens, MA USA
关键词
automation; cyber-physical systems; process analytical technology; process analytics 4.0; PROCESS ANALYTICAL TECHNOLOGY; AUTOMATED SAMPLE PREPARATION; MAMMALIAN-CELL CULTURE; HIGH-THROUGHPUT; RAMAN-SPECTROSCOPY; RECOMBINANT ANTIBODY; OPPORTUNITIES; PROTEINS; QUALITY; QUANTITATION;
D O I
10.1002/btpr.3177
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Analytical testing of product quality attributes and process parameters during the biologics development (Process analytics) has been challenging due to the rapid growth of biomolecules with complex modalities to support unmet therapeutic needs. Thus, the expansion of the process analytics tool box for rapid analytics with the deployment of cutting-edge technologies and cyber-physical systems is a necessity. We introduce the term, Process Analytics 4.0; which entails not only technology aspects such as process analytical technology (PAT), assay automation, and high-throughput analytics, but also cyber-physical systems that enable data management, visualization, augmented reality, and internet of things (IoT) infrastructure for real time analytics in process development environment. This review is exclusively focused on dissecting high-level features of PAT, automation, and data management with some insights into the business aspects of implementing during process analytical testing in biologics process development. Significant technological and business advantages can be gained with the implementation of digitalization, automation, and real time testing. A systematic development and employment of PAT in process development workflows enable real time analytics for better process understanding, agility, and sustainability. Robotics and liquid handling workstations allow rapid assay and sample preparation automation to facilitate high-throughput testing of attributes and molecular properties which are otherwise challenging to monitor with PAT tools due to technological and business constraints. Cyber-physical systems for data management, visualization, and repository must be established as part of Process Analytics 4.0 framework. Furthermore, we review some of the challenges in implementing these technologies based on our expertise in process analytics for biopharmaceutical drug substance development.
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页数:13
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