Identification of CpG islands in DNA sequences using statistically optimal null filters.

Rajasekhar Kakumani, Omair Ahmad, Vijay Devabhaktuni
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引用次数: 19

Abstract

: CpG dinucleotide clusters also referred to as CpG islands (CGIs) are usually located in the promoter regions of genes in a deoxyribonucleic acid (DNA) sequence. CGIs play a crucial role in gene expression and cell differentiation, as such, they are normally used as gene markers. The earlier CGI identification methods used the rich CpG dinucleotide content in CGIs, as a characteristic measure to identify the locations of CGIs. The fact, that the probability of nucleotide G following nucleotide C in a CGI is greater as compared to a non-CGI, is employed by some of the recent methods. These methods use the difference in transition probabilities between subsequent nucleotides to distinguish between a CGI from a non-CGI. These transition probabilities vary with the data being analyzed and several of them have been reported in the literature sometimes leading to contradictory results. In this article, we propose a new and efficient scheme for identification of CGIs using statistically optimal null filters. We formulate a new CGI identification characteristic to reliably and efficiently identify CGIs in a given DNA sequence which is devoid of any ambiguities. Our proposed scheme combines maximum signal-to-noise ratio and least squares optimization criteria to estimate the CGI identification characteristic in the DNA sequence. The proposed scheme is tested on a number of DNA sequences taken from human chromosomes 21 and 22, and proved to be highly reliable as well as efficient in identifying the CGIs.

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利用统计上最优的零滤波器鉴定DNA序列中的CpG岛。
CpG二核苷酸簇也被称为CpG岛(cgi),通常位于脱氧核糖核酸(DNA)序列中基因的启动子区域。cgi在基因表达和细胞分化中起着至关重要的作用,因此,它们通常被用作基因标记。早期的CGI识别方法利用CGI中丰富的CpG二核苷酸含量作为识别CGI位置的特征度量。事实上,与非CGI相比,CGI中核苷酸G紧随核苷酸C的概率更大,这一事实被一些最新的方法所采用。这些方法使用后续核苷酸之间的转换概率差异来区分CGI和非CGI。这些转移概率随所分析的数据而变化,其中一些已经在文献中报道,有时会导致相互矛盾的结果。在本文中,我们提出了一种新的和有效的方案来识别gis使用统计最优的零滤波器。本文提出了一种新的无歧义、可靠、高效的DNA序列CGI识别特征。我们提出的方案结合最大信噪比和最小二乘优化准则来估计DNA序列中的CGI识别特性。对人类21号和22号染色体的DNA序列进行了测试,结果表明该方法具有较高的可靠性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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