Yu Junjie, Yao Danyu, Wang Ling, Xu Mingen
School of Automation, Hangzhou Dianzi University, Hangzhou 310018, China.
Provincial Key Laboratory of Medical Additive Manufacturing and Information Integration, Hangzhou Dianzi University, Hangzhou 310018, China.
Polymers (Basel). 2025 Jul 4;17(13):1873. doi: 10.3390/polym17131873.
Three-dimensional (3D) bioprinting has emerged as a highly promising technology within the realms of tissue engineering and regenerative medicine. The assessment of printability is essential for ensuring the quality of bio-printed constructs and the functionality of the resultant tissues. Polymer materials, extensively utilized as bioink materials in extrusion-based bioprinting, have garnered significant attention from researchers due to the critical need for evaluating and optimizing their printability. Machine learning, a powerful data-driven technology, has attracted increasing attention in the evaluation and optimization of 3D bioprinting printability in recent years. This review provides an overview of the application of machine learning in the printability research of polymers for 3D bioprinting, encompassing the analysis of factors influencing printability (such as material and printing parameters), the development of predictive models, and the formulation of optimization strategies. Additionally, the review briefly explores the utilization of machine learning in predicting cell viability, evaluates the advanced nature and developmental potential of machine learning in 3D bioprinting, and examines the current challenges and future trends.
三维(3D)生物打印已成为组织工程和再生医学领域中一项极具前景的技术。可打印性评估对于确保生物打印构建体的质量和所得组织的功能至关重要。聚合物材料在基于挤出的生物打印中被广泛用作生物墨水材料,由于迫切需要评估和优化其可打印性,因此受到了研究人员的极大关注。机器学习作为一种强大的数据驱动技术,近年来在3D生物打印可打印性的评估和优化中受到越来越多的关注。本文综述了机器学习在用于3D生物打印的聚合物可打印性研究中的应用,包括对影响可打印性的因素(如材料和打印参数)的分析、预测模型的开发以及优化策略的制定。此外,该综述还简要探讨了机器学习在预测细胞活力方面的应用,评估了机器学习在3D生物打印中的先进性和发展潜力,并审视了当前的挑战和未来趋势。