Human ACE2-Functionalized Gold “Virus-Trap” Nanostructures for Accurate Capture of SARS-CoV-2 and Single-Virus SERS Detection

Yong Yang(Chinese Academy of Sciences), Yusi Peng(Chinese Academy of Sciences), Chenglong Lin(Chinese Academy of Sciences), Long Li(Chinese Academy of Sciences), Jingying Hu(Renji Hospital), Jun He(Anhui Medical University), Hui Zeng(Shanghai Traditional Chinese Medicine Hospital), Zhengren Huang(Chinese Academy of Sciences), Zhiyuan Li(South China University of Technology), Masaki Tanemura(Nagoya Institute of Technology), Jianlin Shi(Chinese Academy of Sciences), John R. Lombardi(City College of New York), Xiaoying Luo(Renji Hospital)
Nano-Micro Letters
April 13, 2021
Cited by 194Open Access
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Abstract

Abstract The current COVID-19 pandemic urges the extremely sensitive and prompt detection of SARS-CoV-2 virus. Here, we present a Human Angiotensin-converting-enzyme 2 (ACE2)-functionalized gold “virus traps” nanostructure as an extremely sensitive SERS biosensor, to selectively capture and rapidly detect S-protein expressed coronavirus, such as the current SARS-CoV-2 in the contaminated water, down to the single-virus level. Such a SERS sensor features extraordinary 10 6 -fold virus enrichment originating from high-affinity of ACE2 with S protein as well as “virus-traps” composed of oblique gold nanoneedles, and 10 9 -fold enhancement of Raman signals originating from multi-component SERS effects. Furthermore, the identification standard of virus signals is established by machine-learning and identification techniques, resulting in an especially low detection limit of 80 copies mL −1 for the simulated contaminated water by SARS-CoV-2 virus with complex circumstance as short as 5 min, which is of great significance for achieving real-time monitoring and early warning of coronavirus. Moreover, here-developed method can be used to establish the identification standard for future unknown coronavirus, and immediately enable extremely sensitive and rapid detection of novel virus.


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