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Optimization of SVM parameters for recognition of regulatory DNA sequences

机译:优化SVM参数以识别调节性DNA序列

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Identification and recognition of specific functionally-important DNA sequence fragments such as regulatory sequences are considered the most important problems in bioinformatics. One type of such fragments are promoters, i.e., short regulatory DNA sequences located upstream of a gene. Detection of regulatory DNA sequences is important for successful gene prediction and gene expression studies. In this paper, Support Vector Machine (SVM) is used for classification of DNA sequences and recognition of the regulatory sequences. For optimal classification, various SVM learning and kernel parameters (hyperparameters) and their optimization methods are analyzed. In a case study, optimization of the SVM hyperparameters for linear, polynomial and power series kernels is performed using a modification of the Nelder–Mead (downhill simplex) algorithm. The method allows for improving the precision of identification of the regulatory DNA sequences. The results of promoter recognition for the drosophila sequence datasets are presented.
机译:特定功能上重要的DNA序列片段(例如调控序列)的识别和识别被认为是生物信息学中最重要的问题。这种片段的一种类型是启动子,即位于基因上游的短调控DNA序列。调节性DNA序列的检测对于成功进行基因预测和基因表达研究非常重要。在本文中,支持向量机(SVM)用于DNA序列的分类和调控序列的识别。为了进行最佳分类,分析了各种SVM学习和内核参数(超参数)及其优化方法。在一个案例研究中,使用对Nelder-Mead(下坡单纯形)算法的修改,对线性,多项式和幂级数内核的SVM超参数进行了优化。该方法允许提高调节DNA序列的鉴定精度。给出了果蝇序列数据集启动子识别的结果。

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