Integrating Deep Learning and Real-Time Imaging to Visualize In Situ Self-Assembly of Self-Healing Interpenetrating Polymer Networks Formed by Protein and Polysaccharide Fibers
Metadatos
Mostrar el registro completo del ítemAutor
Pelayo Punzano, Gloria; Cuesta, Rafael; Calvino, José J.; Domínguez-Vera, Jose M.; López Haro, Miguel; Vicente Álvarez-Manzaneda, Juan De; Gálvez Rodríguez, NatividadEditorial
American Chemical Society
Materia
Hydrogels Protein fibers Fibrillar polysaccharide
Fecha
2025-08-05Referencia bibliográfica
Pelayo-Punzano, G., Cuesta, R., Calvino, J. J., Domínguez-Vera, J. M., López-Haro, M., de Vicente, J., & Gálvez, N. (2025). Integrating deep learning and real-time imaging to visualize in situ self-assembly of self-healing interpenetrating polymer networks formed by protein and polysaccharide fibers. ACS Applied Materials & Interfaces, 17(33), 46771–46785. https://doi.org/10.1021/acsami.5c11459
Patrocinador
MCIN/AEI/10.13039/ 501100011033 - ERDF (PID2023-1525370B100, TED2021.129384B.C22, PID2022-138990NB-I00, and PID2022-142312NB-I00); Universidad de Granada / CBUA (Open access)Resumen
Fibrillar protein hydrogels are promising sustainable
biomaterials for biomedical applications, but their practical use is
often limited by insufficient mechanical strength and stability. To
address these challenges, we transformed native proteins into
amyloid fibrils (AFs) and incorporated a fibrillar polysaccharide,
phytagel (PHY), to engineer interpenetrating polymer network
(IPN) hydrogels. Notably, we report for the first time the
formation of an amyloid-based hydrogel from apoferritin (APO),
with PHY reinforcing the network’s mechanical integrity. In situ
self-assembly of APO within the PHY matrix yields fully natural,
biopolymer-based IPNs. Rheological analyses confirm synergistic
interactions between AF and PHY fibers, with the composite
hydrogels exhibiting significantly enhanced viscoelastic moduli
compared with individual components. The AF−PHY hydrogels also demonstrate excellent self-healing behavior, rapidly restoring
their storage modulus after high-strain deformation. A major advancement of this study is the application of deep learning (DL)-
based image analysis, using convolutional neural networks, to automate the identification, segmentation, and quantification of
fibrillar components in high-resolution scanning electron microscopy images. This AI-driven method enables precise differentiation
between AF and PHY fibers and reveals the three-dimensional microarchitecture of the IPN, overcoming key limitations of
traditional image analysis. Complementary real-time confocal laser scanning microscopy, with selective fluorescent labeling of
protein and polysaccharide components, further validates the IPN structure of the hybrid hydrogels. Our results demonstrate that
DL significantly enhances structural characterization and provides insights into gelation processes. This approach sets a new guide
for the analysis of complex soft materials and underlines the potential of AF−PHY hydrogels as mechanically robust, self-healing, and
fully sustainable biomaterials for biomedical engineering applications.





