Uncertainty Quantification Using Ensemble Learning and Monte Carlo Sampling for Performance Prediction and Monitoring in Cell Culture Processes

Thanh Tung Khuat, Robert Bassett, Ellen Otte, Bogdan Gabrys
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Abstract

Biopharmaceutical products, particularly monoclonal antibodies (mAbs), have gained prominence in the pharmaceutical market due to their high specificity and efficacy. As these products are projected to constitute a substantial portion of global pharmaceutical sales, the application of machine learning models in mAb development and manufacturing is gaining momentum. This paper addresses the critical need for uncertainty quantification in machine learning predictions, particularly in scenarios with limited training data. Leveraging ensemble learning and Monte Carlo simulations, our proposed method generates additional input samples to enhance the robustness of the model in small training datasets. We evaluate the efficacy of our approach through two case studies: predicting antibody concentrations in advance and real-time monitoring of glucose concentrations during bioreactor runs using Raman spectra data. Our findings demonstrate the effectiveness of the proposed method in estimating the uncertainty levels associated with process performance predictions and facilitating real-time decision-making in biopharmaceutical manufacturing. This contribution not only introduces a novel approach for uncertainty quantification but also provides insights into overcoming challenges posed by small training datasets in bioprocess development. The evaluation demonstrates the effectiveness of our method in addressing key challenges related to uncertainty estimation within upstream cell cultivation, illustrating its potential impact on enhancing process control and product quality in the dynamic field of biopharmaceuticals.
利用集合学习和蒙特卡罗采样进行不确定性量化,用于细胞培养过程的性能预测和监测
生物制药产品,尤其是单克隆抗体(mAbs),因其高度的特异性和有效性而在医药市场中占据重要地位。由于这些产品预计将在全球药品销售中占据相当大的比例,因此机器学习模型在 mAb 开发和制造中的应用正日益壮大。本文探讨了机器学习预测中不确定性量化的关键需求,尤其是在训练数据有限的情况下。利用集合学习和蒙特卡罗模拟,我们提出的方法生成了额外的输入样本,以增强模型在小训练数据集中的鲁棒性。我们通过两个案例研究评估了我们方法的有效性:提前预测抗体浓度和使用拉曼光谱数据实时监控生物反应器运行过程中的葡萄糖浓度。我们的发现证明了所提出的方法在估算与工艺性能预测相关的不确定性水平和促进生物制药生产中的实时决策方面的有效性。这一贡献不仅为不确定性量化引入了一种新方法,还为克服生物工艺开发中因训练数据集较小而带来的挑战提供了见解。评估证明了我们的方法在解决上游细胞培养中与不确定性估计相关的关键挑战方面的有效性,说明了它对加强生物制药动态领域的过程控制和产品质量的潜在影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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