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Comparison of data science workflows for root cause analysis of bioprocesses

机译:用于生物过程根本原因分析的数据科学工作流的比较

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摘要

Root cause analysis (RCA) is one of the most prominent tools used to comprehensively evaluate a biopharmaceutical production process. Despite of its widespread use in industry, the Food and Drug Administration has observed a lot of unsuitable approaches for RCAs within the last years. The reasons for those unsuitable approaches are the use of incorrect variables during the analysis and the lack in process understanding, which impede correct model interpretation. Two major approaches to perform RCAs are currently dominating the chemical and pharmaceutical industry: raw data analysis and feature-based approach. Both techniques are shown to be able to identify the significant variables causing the variance of the response. Although they are different in data unfolding, the same tools as principal component analysis and partial least square regression are used in both concepts. Within this article we demonstrate the strength and weaknesses of both approaches. We proved that a fusion of both results in a comprehensive and effective workflow, which not only increases better process understanding. We demonstrate this workflow along with an example. Hence, the presented workflow allows to save analysis time and to reduce the effort of data mining by easy detection of the most important variables within the given dataset. Subsequently, the final obtained process knowledge can be translated into new hypotheses, which can be tested experimentally and thereby lead to effectively improving process robustness.
机译:根本原因分析(RCA)是用于全面评估生物制药生产过程的最杰出工具之一。尽管它在工业中得到了广泛使用,但在最近几年中,美国食品药品管理局发现了许多不适用于RCA的方法。这些不合适的方法的原因是在分析过程中使用了不正确的变量,以及缺乏对过程的理解,这阻碍了正确的模型解释。当前,执行RCA的两种主要方法主导着化学和制药行业:原始数据分析和基于特征的方法。两种技术都显示出能够识别导致响应变化的重要变量。尽管它们在数据展开方面有所不同,但在两个概念中都使用了与主成分分析和偏最小二乘回归相同的工具。在本文中,我们演示了这两种方法的优点和缺点。我们证明了两者的融合会产生全面而有效的工作流程,不仅增加了对流程的理解。我们将通过示例演示此工作流程。因此,通过轻松检测给定数据集中最重要的变量,提出的工作流程可以节省分析时间并减少数据挖掘的工作量。随后,可以将最终获得的过程知识转换为新的假设,可以对这些假设进行实验测试,从而有效地提高了过程的鲁棒性。

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