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Statistical Approaches to Identifying Androgen Response Elements

机译:识别雄激素响应元素的统计方法

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DNA-binding transcription factors play an integral role in regulating gene expression. Transcription factor binding sites (TFBS) in the gene promoter regions can be predicted by using computational methods, such as Support Vector Machine (SVM), Hidden Markov Model (HMM), and Random Forest (RF), all of which summarize sequence patterns of experimentally determined TFBSs. Androgen receptor (AR), a ligand-dependent transcription factor, plays an important role in male reproductive functions by regulating gene transcription through directly binding to androgen response elements (ARE) in target gene promoters. The aim of this study is to use data mining tools to identify and characterize AREs based on sequence information. Three statistical methods were explored to strengthen the prediction of putative AREs in the human genome. Cross-validation results indicated that all of the three models provided good sensitivity and specificity in identifying AREs, with an accuracy of at least 80% It is the first time that HMM, SVM and RF have all been applied to constructing ARE prediction models.
机译:DNA结合的转录因子在调节基因表达的不可或缺的作用。在基因的启动子区的转录因子结合位点(TFBS)可以通过使用计算方法,例如支持向量机(SVM),隐马尔可夫模型(HMM),和随机森林(RF),所有的这些总结序列模式来预测实验确定TFBSs。雄激素受体(AR)的配体依赖性转录因子,发挥男性生殖功能通过直接结合于雄激素应答元件调节基因转录的靶基因的启动子中起重要作用(ARE)。这项研究的目的是利用基于序列信息的数据挖掘工具来识别和描述的ARE。三种统计方法进行了探讨,加强公认的战神预测在人类基因组。交叉验证的结果表明所有三种模型中识别的ARE提供了良好的灵敏度和特异性,具有至少80%的准确度是第一次,HMM,SVM和RF都被施加到构造ARE预测模型。

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