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计算设计的表位介导印迹聚合物与传统表位印迹在检测水中和人血清样本中的人类腺病毒的比较。

Computationally Designed Epitope-Mediated Imprinted Polymers versus Conventional Epitope Imprints for the Detection of Human Adenovirus in Water and Human Serum Samples.

机构信息

Institute of Chemistry, Technical University of Berlin, Straße des 17. Juni 124, 10623 Berlin, Germany.

Institute of Materials Science, Faculty of Engineering, Kiel University, 24143 Kiel, Germany.

出版信息

ACS Sens. 2024 Apr 26;9(4):1831-1841. doi: 10.1021/acssensors.3c02374. Epub 2024 Mar 15.

Abstract

Detection of pathogenic viruses for point-of-care applications has attracted great attention since the COVID-19 pandemic. Current virus diagnostic tools are laborious and expensive, while requiring medically trained staff. Although user-friendly and cost-effective biosensors are utilized for virus detection, many of them rely on recognition elements that suffer major drawbacks. Herein, computationally designed epitope-imprinted polymers (eIPs) are conjugated with a portable piezoelectric sensing platform to establish a sensitive and robust biosensor for the human pathogenic adenovirus (HAdV). The template epitope is selected from the knob part of the HAdV capsid, ensuring surface accessibility. Computational simulations are performed to evaluate the conformational stability of the selected epitope. Further, molecular dynamics simulations are executed to investigate the interactions between the epitope and the different functional monomers for the smart design of eIPs. The HAdV epitope is imprinted via the solid-phase synthesis method to produce eIPs using in silico-selected ingredients. The synthetic receptors show a remarkable detection sensitivity (LOD: 10 pfu mL) and affinity (dissociation constant (): 6.48 × 10 M) for HAdV. Moreover, the computational eIPs lead to around twofold improved binding behavior than the eIPs synthesized with a well-established conventional recipe. The proposed computational strategy holds enormous potential for the intelligent design of ultrasensitive imprinted polymer binders.

摘要

由于 COVID-19 大流行,用于即时护理应用的致病病毒检测引起了极大关注。当前的病毒诊断工具既繁琐又昂贵,而且需要经过医学培训的人员。尽管用于病毒检测的用户友好且具有成本效益的生物传感器已经得到了利用,但其中许多生物传感器依赖于存在重大缺陷的识别元件。在此,计算设计的表位印迹聚合物(eIPs)与便携式压电传感平台相结合,建立了用于检测人类致病腺病毒(HAdV)的灵敏且强大的生物传感器。模板表位是从 HAdV 衣壳的 knob 部分选择的,以确保表面可及性。进行计算模拟以评估所选表位的构象稳定性。此外,还执行分子动力学模拟以研究表位与不同功能单体之间的相互作用,从而实现 eIPs 的智能设计。通过固相合成方法对 HAdV 表位进行印迹,以使用计算机选择的成分来制备 eIPs。合成的受体对 HAdV 具有显著的检测灵敏度(LOD:10 pfu mL)和亲和力(解离常数():6.48×10 M)。此外,与使用成熟的传统配方合成的 eIPs 相比,计算 eIPs 导致结合行为提高了约两倍。该计算策略为智能设计超灵敏印迹聚合物结合物提供了巨大潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/314b/11059108/91f24a1d85ac/se3c02374_0001.jpg

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