Shin Jaemyung, Lee Yoonjung, Li Zhangkang, Hu Jinguang, Park Simon S, Kim Keekyoung
Biomedical Engineering Graduate Program, Schulich School of Engineering, University of Calgary, Calgary, AB T2N 1N4, Canada.
Department of Mechanical and Manufacturing Engineering, Schulich School of Engineering, University of Calgary, Calgary, AB T2N 1N4, Canada.
Micromachines (Basel). 2022 Feb 25;13(3):363. doi: 10.3390/mi13030363.
The need for organ transplants has risen, but the number of available organ donations for transplants has stagnated worldwide. Regenerative medicine has been developed to make natural organs or tissue-like structures with biocompatible materials and solve the donor shortage problem. Using biomaterials and embedded cells, a bioprinter enables the fabrication of complex and functional three-dimensional (3D) structures of the organs or tissues for regenerative medicine. Moreover, conventional surgical 3D models are made of rigid plastic or rubbers, preventing surgeons from interacting with real organ or tissue-like models. Thus, finding suitable biomaterials and printing methods will accelerate the printing of sophisticated organ structures and the development of realistic models to refine surgical techniques and tools before the surgery. In addition, printing parameters (e.g., printing speed, dispensing pressure, and nozzle diameter) considered in the bioprinting process should be optimized. Therefore, machine learning (ML) technology can be a powerful tool to optimize the numerous bioprinting parameters. Overall, this review paper is focused on various ideas on the ML applications of 3D printing and bioprinting to optimize parameters and procedures.
器官移植的需求不断上升,但全球范围内可用于移植的器官捐赠数量却停滞不前。再生医学应运而生,旨在利用生物相容性材料制造天然器官或类组织结构,解决供体短缺问题。生物打印机利用生物材料和嵌入细胞,能够制造用于再生医学的复杂且功能性的三维(3D)器官或组织结构。此外,传统的手术3D模型由硬质塑料或橡胶制成,阻碍了外科医生与真实器官或类组织模型进行互动。因此,找到合适的生物材料和打印方法将加速复杂器官结构的打印以及逼真模型的开发,以便在手术前完善手术技术和工具。此外,生物打印过程中所考虑的打印参数(如打印速度、挤出压力和喷嘴直径)应予以优化。因此,机器学习(ML)技术可以成为优化众多生物打印参数的有力工具。总体而言,这篇综述论文聚焦于3D打印和生物打印在机器学习应用方面的各种观点,以优化参数和程序。