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Integrated data-driven modeling and experimental optimization of granular hydrogel matrices

Authors :
Verheyen, Connor A.
Uzel, Sebastien G.M.
Kurum, Armand
Roche, Ellen T.
Lewis, Jennifer A.
Verheyen, Connor A.
Uzel, Sebastien G.M.
Kurum, Armand
Roche, Ellen T.
Lewis, Jennifer A.
Source :
Elsevier BV
Publication Year :
2024

Abstract

Granular hydrogel matrices have emerged as promising candidates for cell encapsulation, bioprinting, and tissue engineering. However, it remains challenging to design and optimize these materials given their broad compositional and processing parameter space. Here, we combine experimentation and computation to create granular matrices composed of alginate-based bioblocks with controlled structure, rheological properties, and injectability profiles. A custom machine learning pipeline is applied after each phase of experimentation to automatically map the multidimensional input-output patterns into condensed data-driven models. These models are used to assess generalizable predictability and define high-level design rules to guide subsequent phases of development and characterization. Our integrated, modular approach opens new avenues to understanding and controlling the behavior of complex soft materials.

Details

Database :
OAIster
Journal :
Elsevier BV
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1434013454
Document Type :
Electronic Resource