基于AMOSA特征选择的转录起始位点预测。

Xi Wang, Sanghamitra Bandyopadhyay, Zhenyu Xuan, Xiaoyue Zhao, Michael Q Zhang, Xuegong Zhang
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引用次数: 0

摘要

转录起始位点(transcription start sites, tss)的鉴定是了解基因表达调控的首要和重要步骤。为了提高计算预测的准确性,我们将重点放在最具挑战性的任务上,即识别非cpg相关启动子区域50 bp内的tss。由于非cpg相关启动子的多样性,提取了大量的特征。有效的特征选择可以最大限度地减少噪声,提高预测精度,也可以发现有生物学意义的内在特性。本文提出了一种新的基于多目标模拟退火的优化方法——存档多目标模拟退火(AMOSA),并将其与线性判别分析(LDA)相结合,得到了一个结合特征选择和分类的系统。人们发现,就不同的定量绩效衡量标准而言,这一系统可与几种现有方法相媲美,往往优于它们。
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Prediction of transcription start sites based on feature selection using AMOSA.

To understand the regulation of the gene expression, the identification of transcription start sites (TSSs) is a primary and important step. With the aim to improve the computational prediction accuracy, we focus on the most challenging task, i.e., to identify the TSSs within 50 bp in non-CpG related promoter regions. Due to the diversity of non-CpG related promoters, a large number of features are extracted. Effective feature selection can minimize the noise, improve the prediction accuracy, and also to discover biologically meaningful intrinsic properties. In this paper, a newly proposed multi-objective simulated annealing based optimization method, Archive Multi-Objective Simulated Annealing (AMOSA), is integrated with Linear Discriminant Analysis (LDA) to yield a combined feature selection and classification system. This system is found to be comparable to, often better than, several existing methods in terms of different quantitative performance measures.

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