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Integration of Stochastic Simulation with Multivariate Analysis: Short-Term Facility Fit Prediction

机译:随机模拟与多元分析的集成:短期设施拟合预测

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This article describes a decision-support tool to help pinpoint the potential root causes of sub-optimal short-term facility fit issues in biopharmaceutical facilities. This was achieved by creating a tool that integrated stochastic simulation with advanced multivariate statistical analysis. Process fluctuations in product titers in cell culture, step yields, and chromatography eluate volumes were mimicked using Monte Carlo simulation data derived using a stochastic discrete-event simulation model. The resulting stochastic datasets, with the computed consequences on key metrics such as product mass loss and cost of goods, were examined using advanced multivariate statistical techniques. Principal component analysis combined with clustering algorithms was used to analyze the complex datasets from complete industrial batch processes for biopharmaceuticals. The challenge of visualizing the multidimensional nature of the dataset was addressed using hierarchical and k-means clustering as well as stacked parallel co-ordinate plots to help identify process fingerprints and characteristics of clusters leading to sub-optimal facility fit issues. Industrially-relevant case studies are presented that focus on technology transfer challenges for therapeutic antibodies moving from early phase to late phase clinical trials. The case study details how sub-optimal facility fit can be alleviated by allocating alternative product pool tanks. The impact of this operational change is then assessed by reviewing an updated process fingerprint.
机译:本文介绍了一种决策支持工具,可帮助查明生物制药设施中次优短期设施适合问题的潜在根本原因。这是通过创建将随机模拟与高级多变量统计分析相集成的工具来实现的。使用随机离散事件模拟模型得出的蒙特卡洛模拟数据模拟细胞培养中产物滴度,步骤收率和色谱洗脱液体积的过程波动。使用先进的多元统计技术检查了所得的随机数据集,并对关键指标(如产品质量损失和商品成本)的计算结果进行了计算。主成分分析与聚类算法相结合,用于分析完整的生物制药工业批处理过程中的复杂数据集。使用分层聚类和k均值聚类以及堆叠的平行坐标图来解决可视化数据集多维性质的难题,以帮助识别过程指纹和聚类特征,从而导致次优的设施拟合问题。提出了与行业相关的案例研究,这些案例研究侧重于治疗抗体从早期临床试验过渡到晚期临床试验的技术转移挑战。案例研究详细说明了如何通过分配备用产品池来缓解次优设施的问题。然后,通过检查更新的过程指纹来评估此操作更改的影响。

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