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首页> 外文期刊>EURASIP journal on bioinformatics and systems biology >MicroRNA Target Detection and Analysis for Genes Related to Breast Cancer Using MDLcompress
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MicroRNA Target Detection and Analysis for Genes Related to Breast Cancer Using MDLcompress

机译:使用MDLcompress对与乳腺癌相关的基因进行MicroRNA靶标检测和分析

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摘要

We describe initial results of miRNA sequence analysis with the optimal symbol compression ratio (OSCR) algorithm and recast this grammar inference algorithm as an improved minimum description length (MDL) learning tool: MDLcompress . We apply this tool to explore the relationship between miRNAs, single nucleotide polymorphisms (SNPs), and breast cancer. Our new algorithm outperforms other grammar-based coding methods, such as DNA Sequitur, while retaining a two-part code that highlights biologically significant phrases. The deep recursion of MDLcompress , together with its explicit two-part coding, enables it to identify biologically meaningful sequence without needlessly restrictive priors. The ability to quantify cost in bits for phrases in the MDL model allows prediction of regions where SNPs may have the most impact on biological activity. MDLcompress improves on our previous algorithm in execution time through an innovative data structure, and in specificity of motif detection (compression) through improved heuristics. An MDLcompress analysis of 144 over expressed genes from the breast cancer cell line BT474 has identified novel motifs, including potential microRNA (miRNA) binding sites that are candidates for experimental validation.
机译:我们使用最佳符号压缩比(OSCR)算法描述miRNA序列分析的初步结果,并将此语法推断算法重铸为改进的最小描述长度(MDL)学习工具:MDLcompress。我们应用此工具来探索miRNA,单核苷酸多态性(SNP)和乳腺癌之间的关系。我们的新算法优于其他基于语法的编码方法,例如DNA Sequitur,同时保留了由两部分组成的代码,该代码突出了具有生物学意义的短语。 MDLcompress的深度递归及其明确的两部分编码,使其无需不必要的先验限制即可识别生物学上有意义的序列。对MDL模型中短语的比特成本进行量化的能力可以预测SNP对生物活性影响最大的区域。 MDLcompress通过创新的数据结构在执行时间上进行了改进,并通过改进的启发式方法在图案检测(压缩)的特异性方面进行了改进。对来自乳腺癌细胞系BT474的144个过表达基因的MDLcompress分析已鉴定出新的基序,包括潜在的微RNA(miRNA)结合位点,这些位点可用于实验验证。

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