首页> 外文会议>2011 IEEE International Conference on Bioinformatics and Biomedicine >Prediction and Evaluation of miRNA -- Target Gene Pairs Using K-means Clustering and Bipartite Graphs with Statistical Scoring
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Prediction and Evaluation of miRNA -- Target Gene Pairs Using K-means Clustering and Bipartite Graphs with Statistical Scoring

机译:使用K-means聚类和具有统计评分的二分图对miRNA-靶基因对进行预测和评估

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Identifying micro RNAs (miRNAs) and their target genes plays an increasingly important role in better understanding the regulatory activities in the cell. Most computational methods focus on the sequence complementarity between miRNAs and target genes without using actual expression data, which, even when used, has been primarily just for validation of the predicted relationship between specific miRNAs and genes. Recent findings have shown that many targets are missed by sequence-based approaches. In this work, we present a robust method to predict and evaluatemi RNA-gene pairs based on their positional (time-course)expression data from next-generation sequencing and DNA microarray. The method first uses K-means clustering to group miRNAs and genes respectively, and then assigns miRNA-gene pairs to a bipartite graph with statistical scoring. The method is tested by ten-fold cross validation on two datasets in Arabidopsis, achieving a performance of about 0.70 ROCscore.
机译:微小RNA(miRNA)及其靶基因的鉴定在更好地了解细胞中的调节活性中起着越来越重要的作用。大多数计算方法着眼于miRNA与靶基因之间的序列互补性,而不使用实际的表达数据,即使使用这些表达数据,其主要也只是用于验证特定miRNA与基因之间的预测关系。最近的发现表明,基于序列的方法错过了许多靶标。在这项工作中,我们提出了一种强大的方法,可以根据来自下一代测序和DNA微阵列的mi RNA基因对的位置(时间过程)表达数据来预测和评估mi RNA基因对。该方法首先使用K-means聚类分别将miRNA和基因分组,然后将miRNA-基因对分配给具有统计评分的二分图。该方法通过对拟南芥中的两个数据集进行十倍交叉验证的测试,实现约0.70 ROCscore的性能。

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