Peer-reviewed veterinary case report
Coupling CFD and Machine Learning to Assess Flow Properties in Porous Scaffolds for Tissue Engineering.
- Year:
- 2025
- Authors:
- Rodríguez-Guerra J et al.
- Affiliation:
- Departamento de Biomateriales Cerámicos y Metálicos
Abstract
Computational fluid dynamics and machine learning (ML) models are employed to investigate the relationships between scaffold topology and key flow parameters, including permeability (<i>k</i>), average wall shear stress (WSSa), and the 25th and 75th percentiles of WSS. Statistical analysis showed that WSSa values are consistent with those found in common scaffold architectures, while percentile-based WSS properties provided insight into shear environments relevant for bone and cartilage differentiation. No significant effect of pore shape was observed on <i>k</i> and WSSa. Correlation analysis revealed that <i>k</i> was positively associated with topological features of the scaffold, whereas WSS metrics were negatively correlated with these properties. ML models trained on six topological and flow inputs achieved a performance of R2 above 0.9 for predicting <i>k</i> and WSSa, demonstrating strong predictive capability based on the topology. Their performance decreased for WSS25% and WSS75%, reflecting the difficulty in capturing more specific shear events. These findings highlight the potential of ML to guide scaffold design by linking topology to flow conditions critical for osteogenesis.
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Search related cases →Original publication: https://europepmc.org/article/MED/41156345