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Application of machine learning methods to pathogen safety evaluation in biological manufacturing processes

机译:机器学习方法在生物制造过程中对病原体安全评估的应用

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The production of recombinant therapeutic proteins from animal or human cell lines entails the risk of endogenous viral contamination from cell substrates and adventitious agents from raw materials and environment. One of the approaches to control such potential viral contamination is to ensure the manufacturing process can adequately clear the potential viral contaminants. Viral clearance for production of human monoclonal antibodies is achieved by dedicated unit operations, such as low pH inactivation, viral filtration, and chromatographic separation. The process development of each viral clearance step for a new antibody production requires significant effort and resources invested in wet laboratory experiments for process characterization studies. Machine learning methods have the potential to help streamline the development and optimization of viral clearance unit operations for new therapeutic antibodies. The current work focuses on evaluating the usefulness of machine learning methods for process understanding and predictive modeling for viral clearance via a case study on low pH viral inactivation.
机译:来自动物或人细胞系的重组治疗蛋白的产生需要来自细胞基材的内源性病毒污染的风险和来自原料和环境的偶诱导剂。控制这种潜在病毒污染的方法之一是确保制造过程可以充分清除潜在的病毒污染物。用于生产人单克隆抗体的病毒清除是通过专用的单元操作实现的,例如低pH灭活,病毒过滤和色谱分离。新抗体生产的每个病毒清除步骤的过程开发需要在工艺表征研究的湿实验室实验中投入的重大努力和资源。机器学习方法有可能帮助简化新治疗抗体的病毒清除单元操作的开发和优化。目前的工作侧重于评估机器学习方法的有用性,以通过对低pH病毒灭活的情况研究来评估过程理解和预测性建模的病毒清除。

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