Ultrasensitive Detection of Cancer-Associated Nucleic Acids and Mutations by Primer Exchange Reaction-Based Signal Amplification and Flow Cytometry

核酸 底漆(化妆品) 流式细胞术 分子生物学 化学 聚合酶链反应 色谱法 生物 生物化学 基因 有机化学
作者
Samet Kocabey,Sarah Cattin,Isabelle Gray,Curzio Rüegg
出处
期刊:Biosensors and Bioelectronics [Elsevier]
卷期号:267: 116839-116839 被引量:2
标识
DOI:10.1016/j.bios.2024.116839
摘要

The detection of cancer-associated nucleic acids and mutations through liquid biopsy has emerged as a highly promising non-invasive approach for early cancer detection and monitoring. In this study, we report the development of primer exchange reaction (PER) based signal amplification strategy that enables the rapid, sensitive and specific detection of nucleic acids bearing cancer specific single nucleotide mutations using flow cytometry. Using micrometer size beads as support for immobilizing oligonucleotides and programmable PER assembly for target oligonucleotide recognition and fluorescence signal amplification, we demonstrated the versatile detection of target nucleic acids including KRAS oligonucleotide, fragmented mRNAs, and miR-21. Moreover, our detection system can discriminate single base mutations frequently occurred in cancer-associated genes including KRAS, PIK3CA and P53 from cell extracts and circulating tumor DNAs (ctDNAs). The detection is highly sensitive, with a limit of detection down to 27 fM without pre-amplification. In view of a clinical application, we demonstrate the detection of single mutations after extraction and pre-amplification of ctDNAs from the plasma of breast cancer patients. Importantly, our detection strategy enabled the detection of single KRAS mutation even in the presence of 1000-fold excess of wild type (WT) DNA using multi-color flow cytometry detection approach. Overall, our strategy holds immense potential for clinical applications, offering significant improvements for early cancer detection and monitoring.

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