一种有效的Adaboost算法启动子检测方法

Xudong Xie, Shuanhu Wu, K. Lam, Hong Yan
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引用次数: 1

摘要

本文提出了一种有效的启动子检测算法——PromoterExplorer。在我们的方法中,各种特征,即五聚体的局部分布,位置CpG岛特征和数字化DNA序列,结合起来构建一个高维输入向量。采用基于AdaBoost的级联学习过程,选择最具“信息量”或“判别性”的特征构建弱分类器序列。多个弱分类器组成一个强分类器,可以获得更好的性能。为了减少误报,采用级联结构进行检测。PromoterExplorer基于来自不同数据库的大规模DNA序列进行测试,包括EPD, Genbank和人类22号染色体。所提出的方法始终优于PromoterInspector和Dragon Promoter Finder。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Promoter Detection Method using the Adaboost Algorithm
In this paper, an effective promoter detection algorithm, which is called PromoterExplorer, is proposed. In our approach, various features, i.e. local distribution of pentamers, positional CpG island features and digitized DNA sequence, are combined to build a high-dimensional input vector. A cascade AdaBoost based learning procedure is adopted to select the most “informative” or “discriminating” features to build a sequence of weak classifiers. A number of weak classifiers construct a strong classifier, which can achieve a better performance. In order to reduce the false positive, a cascade structure is used for detection. PromoterExplorer is tested based on large-scale DNA sequences from different databases, including EPD, Genbank and human chromosome 22. The proposed method consistently outperforms PromoterInspector and Dragon Promoter Finder.
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