纳米材料
纳米颗粒
纳米技术
材料科学
异三聚体G蛋白
胶体金
生物传感器
折叠(DSP实现)
桥接(联网)
粒径
化学
物理化学
受体
计算机网络
工程类
电气工程
G蛋白
生物化学
计算机科学
作者
Daniel Aili,Piotr Gryko,Borja Sepúlveda,John A. G. Dick,Nigel Kirby,Richard K. Heenan,Ulf J. Nilsson,Bo Liedberg,Mary P. Ryan,Molly M. Stevens
出处
期刊:Nano Letters
[American Chemical Society]
日期:2011-11-08
卷期号:11 (12): 5564-5573
被引量:54
摘要
Responsive hybrid nanomaterials with well-defined properties are of significant interest for the development of biosensors with additional applications in tissue engineering and drug delivery. Here, we present a detailed characterization using UV–vis spectroscopy and small angle X-ray scattering of a hybrid material comprised of polypeptide-decorated gold nanoparticles with highly controllable assembly properties. The assembly is triggered by a folding-dependent bridging of the particles mediated by the heteroassociation of immobilized helix–loop–helix polypeptides and a complementary nonlinear polypeptide present in solution. The polypeptides are de novo designed to associate and fold into a heterotrimeric complex comprised of two disulfide-linked four-helix bundles. The particles form structured assemblies with a highly defined interparticle gap (4.8 ± 0.4 nm) that correlates to the size of the folded polypeptides. Transitions in particle aggregation dynamics, mass-fractal dimensions and ordering, as a function of particle size and the concentration of the bridging polypeptide, are observed; these have significant effects on the optical properties of the assemblies. The assembly and ordering of the particles are highly complex processes that are affected by a large number of variables including the number of polypeptides bridging the particles and the particle mobility within the aggregates. A fundamental understanding of these processes is of paramount interest for the development of novel hybrid nanomaterials with tunable structural and optical properties and for the optimization of nanoparticle-based colorimetric biodetection strategies.
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