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Supervised learning of maternal cigarette-smoking signatures from placental gene expression data: A case study

机译:胎盘基因表达数据对孕妇吸烟特征的监督学习:一个案例研究

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This paper aims to conduct supervised learning of the cigarette-smoking signatures from the placental gene expression data sets under the neural network framework and build classifiers to identify the cigarette-smoking moms during pregnancy. First, a unified model for gene selection is proposed to single out a set of informative gene sets (up-or down-regulated genes). The selected signature gene sets are subject to refinement, and then so refined informative gene sets are fed into three supervised statistical learning algorithms, linear discriminant function (LDF), probabilistic neural network (PNN) and support vector machine (SVM) for training and testing. It shows that SVM is the best classifier in predicting the cigarette-smoking moms compared to other methods tested.
机译:本文旨在在神经网络框架下,通过胎盘基因表达数据集对香烟吸烟特征进行有监督的学习,并建立分类器以识别怀孕期间吸烟母亲的身份。首先,提出了用于基因选择的统一模型,以挑选出一组有用的基因集(上调或下调的基因)。选定的签名基因集经过精炼,然后将精炼的信息基因集馈入三种监督统计学习算法,线性判别函数(LDF),概率神经网络(PNN)和支持向量机(SVM)进行训练和测试。结果表明,与其他测试方法相比,支持向量机是预测吸烟妈妈的最佳分类器。

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