Decuzzi Paolo, Ferrari Mauro
BioNEM-Center of Bio-/Nanotechnology and -/Engineering for Medicine, University of Magna Graecia, Viale Europa-Loc. Germaneto, 88100 Catanzaro, Italy.
Biomaterials. 2008 Jan;29(3):377-84. doi: 10.1016/j.biomaterials.2007.09.025. Epub 2007 Oct 22.
Systemically administered ligand-coated nanoparticles have been proved to recognize biological targets in-vivo. This can provide breakthrough solutions for the early detection, imaging and cure of diseases. In cardiovascular applications, nanoparticles have been targeted directly to the diseased vasculature, and such delivery approach is becoming increasingly popular even in cancer research, supported by the growing body of evidences on the biological differences between normal and tumor vasculature. This work focuses on the optimal design of nanoparticles for vascular targeting throughout mathematical modeling. Such nanoparticles should be engineered so as to recognize specifically and adhere firmly to the diseased vessel walls withstanding the hydrodynamic dislodging forces and control uptake by the endothelial cells. A stochastic approach for predicting the adhesion strength of nanoparticles to a cell layer under flow has been coupled to a mathematical model for the receptor-mediated endocytosis of nanoparticles. The main geometrical, biophysical and biological parameters governing both events have been identified and their relative importance highlighted. Three different states for the particle/cell system have been predicted, namely no adhesion, adhesion with no endocytosis and adhesion with endocytosis, based upon the geometrical and biophysical properties of the particle and the biological conditions at the site of adhesion. Design maps have been generated to be used as a preliminary reference for choosing the properties of the nanoparticle as a function of physiological parameters, as the wall shear stress and the receptors surface density, at the site of desired adhesion within the target vasculature.
经系统给药的配体包被纳米颗粒已被证明可在体内识别生物靶点。这可为疾病的早期检测、成像和治疗提供突破性解决方案。在心血管应用中,纳米颗粒已直接靶向病变血管系统,而且在正常血管与肿瘤血管生物学差异方面越来越多的证据支持下,这种递送方法在癌症研究中也日益流行。这项工作通过数学建模专注于用于血管靶向的纳米颗粒的优化设计。此类纳米颗粒应经过工程设计,以便特异性识别并牢固粘附于病变血管壁,承受流体动力的驱离力,并控制内皮细胞的摄取。一种预测纳米颗粒在流动状态下与细胞层粘附强度的随机方法已与纳米颗粒受体介导的内吞作用数学模型相结合。已确定了控制这两个过程的主要几何、生物物理和生物学参数,并突出了它们的相对重要性。基于颗粒的几何和生物物理特性以及粘附部位的生物学条件,预测了颗粒/细胞系统的三种不同状态,即无粘附、有粘附但无内吞作用以及有粘附且有内吞作用。已生成设计图,用作根据目标血管系统内期望粘附部位的生理参数(如壁面剪应力和受体表面密度)选择纳米颗粒特性的初步参考。
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