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Design of experiment (DOE) applied to artificial neural network architecture enables rapid bioprocess improvement

Daniel Rodriguez-Granrose, Amanda K. Jones, Hannah Loftus, Terry Tandeski, Will Heaton, Kevin T. Foley, Lara Silverman

2021Bioprocess and Biosystems Engineering46 citationsDOIOpen Access PDF

Abstract

Modern bioprocess development employs statistically optimized design of experiments (DOE) and regression modeling to find optimal bioprocess set points. Using modeling software, such as JMP Pro, it is possible to leverage artificial neural networks (ANNs) to improve model accuracy beyond the capabilities of regression models. Herein, we bridge the gap between a DOE skill set and a machine learning skill set by demonstrating a novel use of DOE to systematically create and evaluate ANN architecture using JMP Pro software. Additionally, we run a mammalian cell culture process at historical, one factor at a time, standard least squares regression, and ANN-derived set points. This case study demonstrates the significant differences between one factor at a time bioprocess development, DOE bioprocess development and the relative power of linear regression versus an ANN-DOE hybrid modeling approach.

Topics & Concepts

BioprocessArtificial neural networkDesign of experimentsLeverage (statistics)Industrial and production engineeringEngineeringMachine learningComputer scienceArtificial intelligenceStatisticsMathematicsElectrical engineeringChemical engineeringViral Infectious Diseases and Gene Expression in InsectsFault Detection and Control SystemsComputational Drug Discovery Methods
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