Zhang Zhenrui, Zhou Xianhao, Fang Yongcong, Xiong Zhuo, Zhang Ting
Biomanufacturing Center, Department of Mechanical Engineering, Tsinghua University, Beijing, 100084, PR China.
Biomanufacturing and Rapid Forming Technology Key Laboratory of Beijing, Beijing, 100084, PR China.
Bioact Mater. 2024 Nov 23;45:201-230. doi: 10.1016/j.bioactmat.2024.11.021. eCollection 2025 Mar.
In recent decades, 3D bioprinting has garnered significant research attention due to its ability to manipulate biomaterials and cells to create complex structures precisely. However, due to technological and cost constraints, the clinical translation of 3D bioprinted products (BPPs) from bench to bedside has been hindered by challenges in terms of personalization of design and scaling up of production. Recently, the emerging applications of artificial intelligence (AI) technologies have significantly improved the performance of 3D bioprinting. However, the existing literature remains deficient in a methodological exploration of AI technologies' potential to overcome these challenges in advancing 3D bioprinting toward clinical application. This paper aims to present a systematic methodology for AI-driven 3D bioprinting, structured within the theoretical framework of Quality by Design (QbD). This paper commences by introducing the QbD theory into 3D bioprinting, followed by summarizing the technology roadmap of AI integration in 3D bioprinting, including multi-scale and multi-modal sensing, data-driven design, and in-line process control. This paper further describes specific AI applications in 3D bioprinting's key elements, including bioink formulation, model structure, printing process, and function regulation. Finally, the paper discusses current prospects and challenges associated with AI technologies to further advance the clinical translation of 3D bioprinting.
近几十年来,3D生物打印因其能够精确操控生物材料和细胞以创建复杂结构而受到了广泛的研究关注。然而,由于技术和成本限制,3D生物打印产品(BPPs)从实验室到临床的转化在设计个性化和扩大生产规模方面面临挑战,阻碍了其临床应用。近年来,人工智能(AI)技术的新兴应用显著提升了3D生物打印的性能。然而,现有文献在利用AI技术克服这些挑战以推动3D生物打印临床应用方面的方法探索仍显不足。本文旨在提出一种基于设计质量(QbD)理论框架构建的、由AI驱动的3D生物打印系统方法。本文首先将QbD理论引入3D生物打印,接着总结AI集成于3D生物打印的技术路线图,包括多尺度和多模态传感、数据驱动设计以及在线过程控制。本文进一步阐述了AI在3D生物打印关键要素中的具体应用,包括生物墨水配方、模型结构、打印过程和功能调控。最后,本文讨论了与AI技术相关的当前前景和挑战,以进一步推动3D生物打印的临床转化。