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Explaining the Genetic Basis of Complex Quantitative Traits through Prediction Models

机译:通过预测模型解释复杂数量性状的遗传基础

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Abstract The functional characterization of genes involved in many complex traits (phenotypes) of plants, animals, or humans can be studied from a computational point of view using different tools. We propose prediction—from the machine learning point of view—to search for the genetic basis of these traits. However, trying to predict an exact value of a phenotype can be too difficult to obtain a confident model, but predicting an approximation, in the form of an interval of values, can be easier. We shall see that trustable and useful models can be obtained from this relaxed formulation. These predictors may be built as extensions of conventional classifiers or regressors. Although the prediction performance in both cases are similar, we show that, from the classification field, it is straightforward to obtain a principled and scalable method to select a reduced set of features in these genetic learning tasks. We conclude by comparing the results so achieved in a real-world data set of barley plants with ..." /> rel="meta" type="application/atom+xml" href="http://dx.doi.org/10.1089%2Fcmb.2009.0161" /> rel="meta" type="application/rdf+json" href="http://dx.doi.org/10.1089%2Fcmb.2009.0161" /> rel="meta" type="application/unixref+xml" href="http://dx.doi.org/10.1089%2Fcmb.2009.0161" /> 展开▼
机译:摘要可以使用不同的工具从计算角度研究与植物,动物或人类的许多复杂性状(表型)有关的基因的功能特性。我们从机器学习的角度提出预测,以寻找这些特征的遗传基础。但是,尝试预测表型的确切值可能太难以获取可信模型,但是以值间隔的形式预测近似值可能会更容易。我们将看到,可以从这种放松的表述中获得可信赖和有用的模型。可以将这些预测变量构建为常规分类器或回归变量的扩展。尽管两种情况下的预测性能相似,但我们表明,从分类领域来看,直接获得一种原则上可扩展的方法来选择这些遗传学习任务中减少的特征集是很简单的。我们通过比较在大麦植物的真实世界数据集中获得的结果得出以下结论:...“ /> <元名称=“ dc.Format” content =“文本/ HTML” /> <元名称=“ dc。标识符” scheme =“ publisher-id” content =“ 10.1089 / cmb.2009.0161” /> <元名称= “ dc.Identifier” scheme =“ doi” content =“ 10.1089 / cmb.2009.0161” /> <元名称=“关键字” content =“算法,机器学习” /> rel =“ meta” type =“ application / atom + xml” href =“ http://dx.doi.org/10.1089%2Fcmb.2009.0161“ /> rel =” meta“ type =” app lication / rdf + json“ href =” http://dx.doi.org/10.1089%2Fcmb.2009.0161“ /> rel =” meta“ type =” application / unixref + xml“ href =” http:// dx.doi.org/10.1089%2Fcmb.2009.0161“ /> <元名称=” MSSmartTagsPreventParsing“ content =” true

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