Ning Hongwei, Zhou Teng, Joo Sang Woo
College of Information and Network Engineering, Anhui Science and Technology University, Bengbu, Anhui, China.
Mechanical and Electrical Engineering College, Hainan University, Haikou, Hainan, China.
Int J Bioprint. 2023 Apr 27;9(4):739. doi: 10.18063/ijb.739. eCollection 2023.
Three-dimensional (3D) bioprinting is a computer-controlled technology that combines biological factors and bioinks to print an accurate 3D structure in a layer- by-layer fashion. 3D bioprinting is a new tissue engineering technology based on rapid prototyping and additive manufacturing technology, combined with various disciplines. In addition to the problems in culture process, the bioprinting procedure is also afflicted with a few issues: (1) difficulty in looking for the appropriate bioink to match the printing parameters to reduce cell damage and mortality; and (2) difficulty in improving the printing accuracy in the printing process. Data- driven machine learning algorithms with powerful predictive capabilities have natural advantages in behavior prediction and new model exploration. Combining machine learning algorithms with 3D bioprinting helps to find more efficient bioinks, determine printing parameters, and detect defects in the printing process. This paper introduces several machine learning algorithms in detail, summarizes the role of machine learning in additive manufacturing applications, and reviews the research progress of the combination of 3D bioprinting and machine learning in recent years, especially the improvement of bioink generation, the optimization of printing parameter, and the detection of printing defect.
三维(3D)生物打印是一种计算机控制技术,它将生物因子和生物墨水结合起来,以逐层方式打印出精确的三维结构。3D生物打印是一种基于快速成型和增材制造技术,并融合了多学科的新型组织工程技术。除了培养过程中存在的问题外,生物打印过程也面临一些问题:(1)难以找到合适的生物墨水来匹配打印参数,以减少细胞损伤和死亡率;(2)在打印过程中难以提高打印精度。具有强大预测能力的数据驱动型机器学习算法在行为预测和新模型探索方面具有天然优势。将机器学习算法与3D生物打印相结合,有助于找到更高效的生物墨水、确定打印参数并检测打印过程中的缺陷。本文详细介绍了几种机器学习算法,总结了机器学习在增材制造应用中的作用,并综述了近年来3D生物打印与机器学习相结合的研究进展,特别是生物墨水生成的改进、打印参数的优化以及打印缺陷的检测。