Cadamuro Francesca, Piazzoni Marco, Gamba Elia, Sonzogni Beatrice, Previdi Fabio, Nicotra Francesco, Ferramosca Antonio, Russo Laura
University of Milano-Bicocca, School of Medicine and Surgery, Monza, Italy.
University of Bergamo, Department of Management, Information and Production Engineering, Bergamo, Italy.
Biomater Adv. 2025 Oct;175:214323. doi: 10.1016/j.bioadv.2025.214323. Epub 2025 Apr 28.
A user-friendly machine learning (ML) predictive tool is reported for designing extracellular matrix (ECM)-mimetic hydrogels with tailored rheological properties. Developed for regenerative medicine and 3D bioprinting, the model leverages click chemistry crosslinking to fine-tune the mechanical behaviour of gelatin- and hyaluronic acid-based hydrogels. Using both experimental rheological data and synthetic datasets, our supervised ML approach accurately predicts hydrogel compositions, significantly reducing the cost and time associated with trial-and-error approach. Despite advancements in the field, existing models remain limited in their ability to mimic the ECM due to the use of non-natural polymers, reliance on a single type of biologically active macromolecule, and physical crosslinking reactions with limited tuneability. Additionally, their lack of generalizability confines them to specific formulations and demands extensive experimental data for training. This predictive platform represents a major advancement in biomaterial design, improving reproducibility, scalability, and efficiency. By integrating rational design, it accelerates tissue engineering research and expands access to customized ECM-mimetic hydrogels with tailored viscoelastic properties for biomedical applications, enabling both experts and non-experts in materials design.
据报道,一种用户友好型机器学习(ML)预测工具可用于设计具有定制流变特性的细胞外基质(ECM)模拟水凝胶。该模型是为再生医学和3D生物打印而开发的,利用点击化学交联来微调基于明胶和透明质酸的水凝胶的力学行为。通过使用实验流变学数据和合成数据集,我们的监督式ML方法能够准确预测水凝胶的组成,显著降低了与试错法相关的成本和时间。尽管该领域取得了进展,但由于使用非天然聚合物、依赖单一类型的生物活性大分子以及物理交联反应的可调性有限,现有模型在模拟ECM方面的能力仍然有限。此外,它们缺乏通用性,只能局限于特定配方,并且需要大量实验数据进行训练。这个预测平台代表了生物材料设计的一项重大进展,提高了可重复性、可扩展性和效率。通过整合合理设计,它加速了组织工程研究,并扩大了获得具有定制粘弹性特性的定制ECM模拟水凝胶的途径,以用于生物医学应用,无论是材料设计专家还是非专家都能使用。