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A classification-based framework for predicting and analyzing gene regulatory response

机译:基于分类的框架用于预测和分析基因调控反应

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摘要

BackgroundWe have recently introduced a predictive framework for studying gene transcriptional regulation in simpler organisms using a novel supervised learning algorithm called GeneClass. GeneClass is motivated by the hypothesis that in model organisms such as Saccharomyces cerevisiae, we can learn a decision rule for predicting whether a gene is up- or down-regulated in a particular microarray experiment based on the presence of binding site subsequences ("motifs") in the gene's regulatory region and the expression levels of regulators such as transcription factors in the experiment ("parents"). GeneClass formulates the learning task as a classification problem — predicting +1 and -1 labels corresponding to up- and down-regulation beyond the levels of biological and measurement noise in microarray measurements. Using the Adaboost algorithm, GeneClass learns a prediction function in the form of an alternating decision tree, a margin-based generalization of a decision tree.
机译:背景我们最近引入了一种预测框架,该框架使用一种称为GeneClass的新型监督学习算法来研究简单生物中的基因转录调控。 GeneClass受以下假设的启发:在诸如酿酒酵母的模型生物中,我们可以基于结合位点亚序列(“基序”)的存在,学习在特定微阵列实验中预测基因是上调还是下调的决策规则。 )在基因的调控区域内以及实验中调控因子(例如转录因子)的表达水平(“亲本”)。 GeneClass将学习任务表述为分类问题-预测+1和-1标签对应于微阵列测量中超出生物学和测量噪声水平的上调和下调。通过使用Adaboost算法,GeneClass学习了交替决策树形式的预测函数,即决策树基于边距的概括。

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