Optimal condition-based harvesting policies for biomanufacturing operations with failure risks

Tugce G. Martagan, A. Krishnamurthy, C. Maravelias
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引用次数: 34

Abstract

ABSTRACT The manufacture of biological products from live systems such as bacteria, mammalian, or insect cells is called biomanufacturing. The use of live cells introduces several operational challenges including batch-to-batch variability, parallel growth of both desired antibodies and unwanted toxic byproducts in the same batch, and random shocks leading to multiple competing failure processes. In this article, we develop a stochastic model that integrates the cell-level dynamics of biological processes with operational dynamics to identify optimal harvesting policies that balance the risks of batch failures and yield/quality tradeoffs in fermentation operations. We develop an infinite horizon, discrete-time Markov decision model to derive the structural properties of the optimal harvesting policies. We use IgG1 antibody production as an example to demonstrate the optimal harvesting policy and compare its performance against harvesting policies used in practice. We leverage insights from the optimal policy to propose smart stationary policies that are easier to implement in practice.
具有失效风险的生物制造作业中基于条件的最佳收获策略
从细菌、哺乳动物或昆虫细胞等活体系统中生产生物制品被称为生物制造。活细胞的使用带来了一些操作上的挑战,包括批与批之间的可变性,在同一批中需要的抗体和不需要的有毒副产物同时生长,以及导致多个竞争失败过程的随机冲击。在本文中,我们开发了一个随机模型,该模型将生物过程的细胞水平动力学与操作动力学相结合,以确定最佳收获策略,平衡发酵操作中批次失败的风险和产量/质量权衡。我们建立了一个无限视界的离散马尔可夫决策模型来推导最优收获策略的结构性质。我们以IgG1抗体生产为例来演示最佳收获策略,并将其性能与实践中使用的收获策略进行比较。我们利用最优政策的见解来提出更容易在实践中实施的智能固定政策。
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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来源期刊
IIE Transactions
IIE Transactions 工程技术-工程:工业
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审稿时长
4.5 months
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