| Literature DB >> 30081733 |
Yuxin Lin1, Wentao Wu1, Zhandong Sun1, Li Shen1,2, Bairong Shen1,3,4.
Abstract
MicroRNAs (miRNAs) are small non-coding RNAs with the potential as biomarkers for disease diagnosis, prognosis and therapy. In the era of big data and biomedical informatics, computer-aided biomarker discovery has become the current frontier. However, most of the computational models are highly dependent on specific prior knowledge and training-testing procedures, very few are mechanism-guided or evidence-based. To the best of our knowledge, untill now no general rules have been uncovered and applied to miRNA biomarker screening. In this study, we manually collected literature-reported cancer miRNA biomarkers and analyzed their regulatory patterns, including the regulatory modes, biological functions and evolutionary characteristics of their targets in the human miRNA-mRNA network. Two evidences were statistically detected and used to distinguish biomarker miRNAs from others. Based on these observations, we developed a novel bioinformatics model and software tool for miRNA biomarker discovery ( http://sysbio.suda.edu.cn/MiRNA-BD/ ). In contrast to routine methods that focus on miRNA synergic functions, our method searches for vulnerable sites in the miRNA-mRNA network and considers the independent regulatory power of miRNAs, i.e., single-line regulations between miRNAs and mRNAs. The performance comparison demonstrates the generality and precision of our model, which identifies miRNA biomarkers for cancers as well as other complex diseases without training or specific prior knowledge.Entities:
Keywords: Evidence-based bioinformatics model; miRNA biomarker discovery; miRNA-mRNA network analysis; single-line regulation mode
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Year: 2018 PMID: 30081733 PMCID: PMC6161673 DOI: 10.1080/15476286.2018.1502590
Source DB: PubMed Journal: RNA Biol ISSN: 1547-6286 Impact factor: 4.652