Aykora Damla, Taşçı Burak, Şahin Muhammed Zahid, Tekeoğlu Ibrahim, Uzun Metehan, Sarafian Victoria, Docheva Denitsa
Health Services Vocational School, Department of Medical Services and Techniques, First and Emergency Aid, Bitlis Eren University, Bitlis, Türkiye.
Vocational School of Technical Sciences, Fırat University, Elazığ, Türkiye.
Front Bioeng Biotechnol. 2025 Apr 25;13:1580490. doi: 10.3389/fbioe.2025.1580490. eCollection 2025.
Tendon regeneration has been one of the most challenging issues in orthopedics. Despite various surgical techniques and rehabilitation methods, tendon tears or ruptures cannot wholly regenerate and gain the load-bearing capacity the tendon tissue had before the injury. The enhancement of tendon regeneration mostly requires grafting or an artificial tendon-like tissue to replace the damaged tendon. Tendon tissue engineering offers promising regenerative effects with numerous techniques in the additive manufacturing context. 3D bioprinting is a widely used additive manufacturing method to produce tendon-like artificial tissues based on biocompatible substitutes. There are multiple techniques and bio-inks for fabricating innovative scaffolds for tendon applications. Nevertheless, there are still many drawbacks to overcome for the successful regeneration of injured tendon tissue. The most important target is to catch the highest similarity to the tissue requirements such as anisotropy, porosity, viscoelasticity, mechanical strength, and cell-compatible constructs. To achieve the best-designed artificial tendon-like structure, novel AI-based systems in the field of 3D bioprinting may unveil excellent final products to re-establish tendon integrity and functionality. AI-driven optimization can enhance bio-ink selection, scaffold architecture, and printing parameters, ensuring better alignment with the biomechanical properties of native tendons. Furthermore, AI algorithms facilitate real-time process monitoring and adaptive adjustments, improving reproducibility and precision in scaffold fabrication. Thus, biocompatibility and application-based experimental processes will make it possible to accelerate tendon healing and reach the required mechanical strength. Integrating AI-based predictive modeling can further refine these experimental processes to evaluate scaffold performance, cell viability, and mechanical durability, ultimately improving translation into clinical applications. Here in this review, 3D bioprinting approaches and AI-based technology incorporation were given in addition to models.
肌腱再生一直是骨科领域最具挑战性的问题之一。尽管有各种手术技术和康复方法,但肌腱撕裂或断裂后无法完全再生并恢复到损伤前肌腱组织的承重能力。增强肌腱再生大多需要移植或人工肌腱样组织来替代受损肌腱。在增材制造背景下,肌腱组织工程通过众多技术展现出了有前景的再生效果。3D生物打印是一种广泛应用的增材制造方法,用于基于生物相容性替代物制造肌腱样人工组织。有多种技术和生物墨水可用于制造用于肌腱应用的创新支架。然而,要成功实现受损肌腱组织的再生,仍有许多缺点需要克服。最重要的目标是使人工组织在各向异性、孔隙率、粘弹性、机械强度和细胞相容性结构等方面最大程度地符合组织要求。为了实现最佳设计的人工肌腱样结构,3D生物打印领域基于人工智能的新系统可能会推出出色的最终产品,以重建肌腱的完整性和功能。人工智能驱动的优化可以改进生物墨水的选择、支架结构和打印参数,确保与天然肌腱的生物力学特性更好地匹配。此外,人工智能算法有助于实时过程监测和自适应调整,提高支架制造的可重复性和精度。因此,生物相容性和基于应用的实验过程将有可能加速肌腱愈合并达到所需的机械强度。整合基于人工智能的预测模型可以进一步优化这些实验过程,以评估支架性能、细胞活力和机械耐久性,最终改善向临床应用的转化。在这篇综述中,除了模型之外,还介绍了3D生物打印方法和基于人工智能的技术整合。