RNA基因发现的二级结构元件投票

N. Erho, K. Wiese
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引用次数: 2

摘要

探索使用多个二级结构元件的结构RNA基因发现进行。二级结构模型通过多层投票系统进行组合,该投票系统首先结合支持向量机的概率输出,然后结合投票结果来预测序列是否为结构RNA基因。研究发现,系统第一层的投票对单个二级结构单元模型的性能有显著影响,分类结果的改善幅度高达56%。同样,当两个二级结构元素模型预测一起投票时,可以看到分类f值超过0.6的收益。当使用所有二级结构元件模型进行投票时,二级结构RNA基因分类系统的准确率达到93%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secondary structure element voting for RNA gene finding
An exploration of the use of multiple secondary structure elements for structural RNA gene finding is conducted. The secondary structure models are combined through a multilayer voting system which first combines the probability output of support vector machines and then combines the results of those votes to predict whether a sequence is a structural RNA gene or not. It is found that the voting in the first layer of the system has significant impact on the performance of individual secondary structure element models with improvements in classification results of up to 56%. Likewise, gains in classification F-measure over 0.6 were seen when two secondary structure element model predictions were voted together. When all the secondary structure element models were used in voting, an accuracy of over 93% was achieved by the secondary structure RNA gene classification system.
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