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Designing super selectivity in multivalent nano-particle binding

机译:设计多价纳米粒子结合中的超选择性

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A key challenge in nano-science is to design ligand-coated nano particles that can bind selectively to surfaces that display the cognate receptors above a threshold (surface) concentration. Nano particles that bind monovalently to a target surface do not discri minate sharply between surfaces with high and low receptor coverage. In contrast "multivalent" nano-particles that can bind to a larger number of ligands simultaneously, display regimes of "super selectivity" where the fraction of bound particles varies sharply with the receptor concentration. We present numerical simulations that show that multivalent nano-particles can be designed such that they approach the "on-off" binding behavior ideal for receptor-concentration selective targeting. We propose a simple analytical model that accounts for the super selective behavior of multivalent nano-particles. The model shows that the super selectivity is due to the fact that the number of distinct ligand-receptor binding arrangements increases in a highly non linear way with receptor coverage. Somewhat counterintuitively, our study shows that selectivity can be improved by making the individual ligand-receptor bonds weaker. We propose a simple rule of thumb to predict the conditions under which super selectivity can be achieved. We validate our model predictions against the Monte Carlo simulations.
机译:纳米科学中的一个关键挑战是设计可以选择性结合到显示出高于阈值(表面)浓度的同源受体的表面的配体涂层纳米颗粒。与受体表面单价结合的纳米粒子在具有高和低受体覆盖率的表面之间不会明显地区分。相反,可以同时与大量配体结合的“多价”纳米颗粒显示出“超选择性”状态,其中结合颗粒的分数随受体浓度而急剧变化。我们目前的数值模拟表明,可以设计多价纳米粒子,使其接近受体浓度选择性靶向的理想“开-关”结合行为。我们提出了一个简单的分析模型,该模型解释了多价纳米粒子的超选择性行为。该模型显示,超选择性是由于以下事实:独特的配体-受体结合排列的数目随着受体的覆盖以高度非线性的方式增加。有点违反直觉的,我们的研究表明,可以通过使各个配体-受体键更弱来提高选择性。我们提出了一个简单的经验法则来预测可以实现超选择性的条件。我们对照蒙特卡洛模拟验证我们的模型预测。

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