학술논문

DNA-based molecular classifiers for the profiling of gene expression signatures.
Document Type
Article
Source
Journal of Nanobiotechnology. 4/17/2024, Vol. 22 Issue 1, p1-11. 11p.
Subject
*GENE expression profiling
*GENE expression
*DEOXYRIBOZYMES
*HEPATOCELLULAR carcinoma
*PRIMARY care
Language
ISSN
1477-3155
Abstract
Although gene expression signatures offer tremendous potential in diseases diagnostic and prognostic, but massive gene expression signatures caused challenges for experimental detection and computational analysis in clinical setting. Here, we introduce a universal DNA-based molecular classifier for profiling gene expression signatures and generating immediate diagnostic outcomes. The molecular classifier begins with feature transformation, a modular and programmable strategy was used to capture relative relationships of low-concentration RNAs and convert them to general coding inputs. Then, competitive inhibition of the DNA catalytic reaction enables strict weight assignment for different inputs according to their importance, followed by summation, annihilation and reporting to accurately implement the mathematical model of the classifier. We validated the entire workflow by utilizing miRNA expression levels for the diagnosis of hepatocellular carcinoma (HCC) in clinical samples with an accuracy 85.7%. The results demonstrate the molecular classifier provides a universal solution to explore the correlation between gene expression patterns and disease diagnostics, monitoring, and prognosis, and supports personalized healthcare in primary care. [ABSTRACT FROM AUTHOR]