首页> 外文会议>2011 4th International Conference on Biomedical Engineering and Informatics >Artificial neural networks and support vector machine identify Alu elements as being associated with human housekeeping genes
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Artificial neural networks and support vector machine identify Alu elements as being associated with human housekeeping genes

机译:人工神经网络和支持向量机将Alu元素识别为与人类管家基因相关

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The human genome contains the most common 75S-and tRNA-derived short interspersed nuclear repetitive DNA elements (SINEs), named Alu. Alu elements, other SINEs, and processed pseudogenes are all processed by the same retrotransposition machinery. Most housekeeping genes contain multiple copies of processed pseudogenes. The present study showed that mean percentage of SINEs in the sequences of housekeeping genes was significantly higher than that of neuron-(p < 0.001) and myocyte-specific genes (p < 0.01). Consistently, GEP, RBF, MLP, PNN, and SVM showed that SINEs were the most important factor associated with housekeeping genes, with the value > 19.54% being most predictive. Based on the area under the receiver operating characteristic curves, there was no significant difference among these classifiers. Detailed analysis of the components of SINEs showed that housekeeping genes contained more Alus than neuron- and myocyte-specific genes (p < 0.001), which were supported by all neural networks and SVM.
机译:人类基因组包含最常见的源自75S和tRNA的短散布的核重复性DNA元素(SINE),称为Alu。 Alu元素,其他SINE和已处理的假基因均由相同的逆转座机处理。大多数管家基因都包含加工后的假基因的多个副本。本研究表明,持家基因序列中SINE的平均百分比显着高于神经元-(p <0.001)和肌细胞特异性基因(p <0.01)。一致地,GEP,RBF,MLP,PNN和SVM显示SINE是与管家基因相关的最重要因素,其值> 19.54%是最可预测的。基于接收器工作特性曲线下的面积,这些分类器之间没有显着差异。对SINEs成分的详细分析表明,管家基因比神经元和肌细胞特异性基因包含的Alus多(p <0.001),所有神经网络和SVM都支持这种基因。

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