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Promoter Analysis with Wavelets and Support Vector Machines

机译:用小波和支持向量机的启动子分析

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Promoters are key control regions for the transcription regulation of genes, usually lying upstream of the genes they control. Promoter prediction is worthwhile not only for the detection of orphan genes but also for understanding the mechanisms that regulate gene expression. Promoter prediction therefore remains one of the primary challenges subjects in bioinformatics in the post-genome era. Many methods are used for promoter prediction, such as the presence of the CpG islands, sequence motifs of transcription factor binding sites, and the statistical and chemophysical properties in the vicinity of transcription start sites. Among these strategies, we have focused on a method which employs wavelet analysis and support vector machine for promoter prediction. The wavelet analysis is based on localized wave packets characterized by both a range of frequency and a location. In our scheme, information from promoter and non-promoter regions is converted to wavelet space as a positive and a negative set, respectively, and the 2 sets are subsequently used to train a support vector machine. Finally, the support vector machine is utilized for promoter prediction. In this study, we improved the coding method of our prediction strategy and analysed a new set of test data.
机译:促进剂是基因转录调节的关键控制区域,通常躺在它们控制的基因上游。启动子预测不仅用于检测孤儿基因,而且用于了解调节基因表达的机制。因此,启动子预测仍然是在基因组时代生物信息学中的主要挑战之一。许多方法用于启动子预测,例如CpG岛的存在,转录因子结合位点的序列基序,以及转录起始位点附近的统计和化学神科性质。在这些策略中,我们专注于采用小波分析和支持向量机的方法进行启动子预测。小波分析基于频率范围和位置的局部波分组。在我们的方案中,来自启动子和非启动子区域的信息分别被转换为小波空间,分别为正和负集合,并且随后用于训练支撑矢量机器。最后,支持向量机用于启动子预测。在本研究中,我们改进了我们预测策略的编码方法,并分析了一组新的测试数据。

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