Department of Biotechnology, Delhi Technological University, New Delhi, 110042, India.
Biotechnol Lett. 2024 Aug;46(4):497-519. doi: 10.1007/s10529-024-03499-8. Epub 2024 Jun 21.
One of the most remarkable techniques recently introduced into the field of bioprocess engineering is machine learning. Bioprocess engineering has drawn much attention due to its vast application in different domains like biopharmaceuticals, fossil fuel alternatives, environmental remediation, and food and beverage industry, etc. However, due to their unpredictable mechanisms, they are very often challenging to optimize. Furthermore, biological systems are extremely complicated; hence, machine learning algorithms could potentially be utilized to improve and build new biotechnological processes. Gaining insight into the fundamental mathematical understanding of commonly used machine learning algorithms, including Support Vector Machine, Principal Component Analysis, Partial Least Squares and Reinforcement Learning, the present study aims to discuss various case studies related to the application of machine learning in bioprocess engineering. Recent advancements as well as challenges posed in this area along with their potential solutions are also presented.
最近引入生物工艺工程领域的一项杰出技术是机器学习。由于其在生物制药、化石燃料替代品、环境修复以及食品和饮料行业等不同领域的广泛应用,生物工艺工程引起了广泛关注。然而,由于其不可预测的机制,它们通常很难进行优化。此外,生物系统非常复杂;因此,机器学习算法有可能被用于改进和构建新的生物技术工艺。本研究旨在讨论与机器学习在生物工艺工程中的应用相关的各种案例研究,从而深入了解常用机器学习算法(包括支持向量机、主成分分析、偏最小二乘法和强化学习)的基本数学理解。还介绍了该领域的最新进展以及面临的挑战,以及它们的潜在解决方案。