Prioritizing candidate disease miRNAs by integrating phenotype associations of multiple diseases with matched miRNA and mRNA expression profiles.

@article{Xu2014PrioritizingCD,
  title={Prioritizing candidate disease miRNAs by integrating phenotype associations of multiple diseases with matched miRNA and mRNA expression profiles.},
  author={Chaohan Xu and Yanyan Ping and Xiang Li and Hongying Zhao and Li Wang and Huihui Fan and Yun Xiao and Xia Li},
  journal={Molecular bioSystems},
  year={2014},
  volume={10 11},
  pages={
          2800-9
        }
}
MicroRNAs (miRNAs) have been validated to show widespread disruption of function in many cancers. However, despite concerted efforts to develop prioritization approaches based on a priori knowledge of disease-associated miRNAs, uncovering oncogene or tumor-suppressor miRNAs remains a challenge. Here, based on the assumption that diverse diseases with phenotype associations show similar molecular mechanisms, we present an approach for the systematic prioritization of disease-specific miRNAs by… 
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