Litcius/Paper detail

About Model Validation in Bioprocessing

Vignesh Rajamanickam

2021MDPI (MDPI AG)44 citationsDOIOpen Access PDF

Abstract

In bioprocess engineering the Qualtiy by Design (QbD) initiative encourages the use of models to define design spaces. However, clear guidelines on how models for QbD are validated are still missing. In this review we provide a comprehensive overview of the validation methods, mathematical approaches, and metrics currently applied in bioprocess modeling. The methods cover analytics for data used for modeling, model training and selection, measures for predictiveness, and model uncertainties. We point out the general issues in model validation and calibration for different types of models and put this into the context of existing health authority recommendations. This review provides a starting point for developing a guide for model validation approaches. There is no one-fits-all approach, but this review should help to identify the best fitting validation method, or combination of methods, for the specific task and the type of bioprocess model that is being developed.

Topics & Concepts

BioprocessComputer scienceContext (archaeology)Model validationTask (project management)Model selectionBiochemical engineeringManagement scienceMachine learningSystems engineeringData scienceEngineeringBiologyChemical engineeringPaleontologyAdvanced Multi-Objective Optimization AlgorithmsForecasting Techniques and ApplicationsMineral Processing and Grinding