Publication date: Feb 04, 2025
Accurate identification of single-nucleotide variants (SNVs) is paramount for disease diagnosis. Despite the facile design of DNA hybridization probes, their limited specificity poses challenges in clinical applications. Here, a differential reaction pathway probe (DRPP) based on a dynamic DNA reaction network is presented. DRPP leverages differences in reaction intermediate concentrations between SNV and WT groups, directing them into distinct reaction pathways. This generates a strong pulse-like signal for SNV and a weak unidirectional increase signal for wild-type (WT). Through the application of machine learning to fluorescence kinetic data analysis, the classification of SNV and WT signals is automated with an accuracy of 99. 6%, significantly exceeding the 80. 7% accuracy of conventional methods. Additionally, sensitivity for variant allele frequency (VAF) is enhanced down to 0. 1%, representing a ten-fold improvement over conventional approaches. DRPP accurately identified D614G and N501Y SNVs in the S gene of SARS-CoV-2 variants in patient swab samples with accuracy over 99% (n = 82). It determined the VAF of ovarian cancer-related mutations KRAS-G12R, NRAS-G12C, and BRAF-V600E in both tissue and blood samples (n = 77), discriminating cancer patients and healthy individuals with significant difference (p
Concepts | Keywords |
---|---|
Cancer | classification |
Fingerprinting | DNA reaction network |
Fluorescence | kinetics |
Ovarian | machine learning |
variant allele frequency |
Semantics
Type | Source | Name |
---|---|---|
drug | DRUGBANK | Pentaerythritol tetranitrate |
disease | MESH | ovarian cancer |
disease | IDO | blood |
disease | MESH | cancer |