Catalytic amplification by transition-state molecular switches for direct and sensitive detection of SARS-CoV-2

Noah R. Sundah(National University of Singapore), Auginia Natalia(National University of Singapore), Yu Liu(National University of Singapore), Nicholas R. Y. Ho(Agency for Science, Technology and Research), Haitao Zhao(National University Health System), Yuan Chen(National University of Singapore), Qing Hao Miow(National University of Singapore), Yu Wang(National University of Singapore), Darius Beh(National University Hospital), Ka Lip Chew(National University Hospital), Douglas Chan(Ng Teng Fong General Hospital), Paul Anantharajah Tambyah(National University of Singapore), Ong C(National University of Singapore), Huilin Shao(Agency for Science, Technology and Research)
Science Advances
March 17, 2021
Cited by 23Open Access
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Abstract

Despite the importance of nucleic acid testing in managing the COVID-19 pandemic, current detection approaches remain limited due to their high complexity and extensive processing. Here, we describe a molecular nanotechnology that enables direct and sensitive detection of viral RNA targets in native clinical samples. The technology, termed catalytic amplification by transition-state molecular switch (CATCH), leverages DNA-enzyme hybrid complexes to form a molecular switch. By ratiometric tuning of its constituents, the multicomponent molecular switch is prepared in a hyperresponsive state-the transition state-that can be readily activated upon the binding of sparse RNA targets to turn on substantial enzymatic activity. CATCH thus achieves superior performance (~8 RNA copies/μl), direct fluorescence detection that bypasses all steps of PCR (<1 hour at room temperature), and versatile implementation (high-throughput 96-well format and portable microfluidic assay). When applied for clinical COVID-19 diagnostics, CATCH demonstrated direct and accurate detection in minimally processed patient swab samples.


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