ANCA: artificial nucleic acid circuit with argonaute protein for one-step isothermal detection of antibiotic-resistant bacteria

Hyowon Jang(Korea Research Institute of Bioscience and Biotechnology), Jayeon Song(Harvard University), Sun‐Joo Kim(Gyeongsang National University Hospital), Jung‐Hyun Byun(Gyeongsang National University Hospital), Kyoung G. Lee(National NanoFab Center), Kwang-Hyun Park(Korea Research Institute of Bioscience and Biotechnology), Eui‐Jeon Woo(Korea Research Institute of Bioscience and Biotechnology), Eun‐Kyung Lim(Korea Research Institute of Bioscience and Biotechnology), Juyeon Jung(Korea Research Institute of Bioscience and Biotechnology), Taejoon Kang(Korea Research Institute of Bioscience and Biotechnology)
Nature Communications
December 5, 2023
Cited by 46Open Access
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Abstract

Endonucleases have recently widely used in molecular diagnostics. Here, we report a strategy to exploit the properties of Argonaute (Ago) proteins for molecular diagnostics by introducing an artificial nucleic acid circuit with Ago protein (ANCA) method. The ANCA is designed to perform a continuous autocatalytic reaction through cross-catalytic cleavage of the Ago protein, enabling one-step, amplification-free, and isothermal DNA detection. Using the ANCA method, carbapenemase-producing Klebsiella pneumoniae (CPKP) are successfully detected without DNA extraction and amplification steps. In addition, we demonstrate the detection of carbapenem-resistant bacteria in human urine and blood samples using the method. We also demonstrate the direct identification of CPKP swabbed from surfaces using the ANCA method in conjunction with a three-dimensional nanopillar structure. Finally, the ANCA method is applied to detect CPKP in rectal swab specimens from infected patients, achieving sensitivity and specificity of 100% and 100%, respectively. The developed method can contribute to simple, rapid and accurate diagnosis of CPKP, which can help prevent nosocomial infections.


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