Department of Industrial Engineering and BIOtech Research Center, University of Trento, Via Sommarive 9, 38123 Trento, Italy.
European Institute of Excellence on Tissue Engineering and Regenerative Medicine Unit, Via delle Regole 101, 38123 Trento, Italy.
ACS Biomater Sci Eng. 2023 Mar 13;9(3):1320-1331. doi: 10.1021/acsbiomaterials.2c01143. Epub 2023 Feb 27.
Extrusion-based bioprinting is one of the most widespread technologies due to its affordability, wide range of processable materials, and ease of use. However, the formulation of new inks for this technique is based on time-consuming trial-and-error processes to establish the optimal ink composition and printing parameters. Here, a dynamic printability window was modeled for the assessment of the printability of polysaccharide blend inks of alginate and hyaluronic acid with the intent to build a versatile predictive tool to speed up the testing procedures. The model considers both the rheological properties of the blends (viscosity, shear thinning behavior, and viscoelasticity) and their printability (in terms of extrudability and the ability of forming a well-defined filament and detailed geometries). By imposing some conditions on the model equations, it was possible to define empirical bands in which the printability is ensured. The predictive capability of the built model was successfully verified on an untested blend of alginate and hyaluronic acid chosen to simultaneously optimize the printability index and minimize the size of the deposited filament.
基于挤出的生物打印是最广泛使用的技术之一,因为它具有成本效益、广泛的可加工材料和易于使用的特点。然而,这种技术的新型墨水的配方是基于耗时的反复试验过程来确定最佳的墨水组成和打印参数。在这里,为了评估藻酸盐和透明质酸的多糖混合墨水的可打印性,建立了一个动态可打印性窗口,旨在建立一个通用的预测工具来加速测试过程。该模型考虑了混合物的流变性质(粘度、剪切变稀行为和粘弹性)及其可打印性(挤出性以及形成定义良好的细丝和详细几何形状的能力)。通过对模型方程施加一些条件,可以定义保证可打印性的经验带。所建立的模型的预测能力在选择同时优化打印性能指数和最小化沉积细丝尺寸的未测试的藻酸盐和透明质酸混合物上得到了成功验证。