Quan Rixiang, Cantero Chinchilla Sergio, Liu Fengyuan
School of Electrical, Electronic and Mechanical Engineering, University of Bristol, Bristol BS8 1TR, UK.
Bioengineering (Basel). 2025 Mar 19;12(3):315. doi: 10.3390/bioengineering12030315.
Scaffolds are critical in regenerative medicine, particularly in bone tissue engineering, where they mimic the extracellular matrix to support tissue regeneration. Scaffold efficacy depends on precise control of 3D printing parameters, which determine geometric and mechanical properties, including Young's modulus. This study examines the impact of nozzle temperature, printing speed, and feed rate on the Young's modulus of polylactic acid (PLA) scaffolds. Using a Prusa MINI+ 3D printer (Prusa Research a.s., Prague, Czech Republic), systematic experiments are conducted to explore these correlations. Results show that higher nozzle temperatures decrease Young's modulus due to reduced viscosity and weaker interlayer bonding, likely caused by thermal degradation and reduced crystallinity. Printing speed exhibits an optimal range, with Young's modulus peaking at moderate speeds (around 2100 mm/min), suggesting a balance that enhances crystallinity and bonding. Material feed rate positively correlates with Young's modulus, with increased material deposition improving scaffold density and strength. The integration of an Artificial Neural Network (ANN) model further optimized the printing parameters, successfully predicting the maximum Young's modulus while maintaining geometric constraints. Notably, the Young's modulus achieved falls within the typical range for cancellous bone, indicating the model's potential to meet specific clinical requirements. These findings offer valuable insights for designing patient-specific bone scaffolds, potentially improving clinical outcomes in bone repair.
支架在再生医学中至关重要,尤其是在骨组织工程领域,在该领域中,它们模拟细胞外基质以支持组织再生。支架的功效取决于对3D打印参数的精确控制,这些参数决定了包括杨氏模量在内的几何和力学性能。本研究考察了喷嘴温度、打印速度和进料速率对聚乳酸(PLA)支架杨氏模量的影响。使用Prusa MINI+ 3D打印机(Prusa Research a.s.,布拉格,捷克共和国)进行了系统实验,以探究这些相关性。结果表明,较高的喷嘴温度会降低杨氏模量,这是由于粘度降低和层间结合力减弱所致,这可能是由热降解和结晶度降低引起的。打印速度呈现出一个最佳范围,杨氏模量在中等速度(约2100毫米/分钟)时达到峰值,这表明存在一种能增强结晶度和结合力的平衡。材料进料速率与杨氏模量呈正相关,材料沉积增加会提高支架的密度和强度。人工神经网络(ANN)模型的整合进一步优化了打印参数,在保持几何约束的同时成功预测了最大杨氏模量。值得注意的是,所获得的杨氏模量落在松质骨的典型范围内,这表明该模型有潜力满足特定的临床需求。这些发现为设计个性化骨支架提供了有价值的见解,有可能改善骨修复的临床效果。