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Genome-enabled prediction using probabilistic neural network classifiers

机译:使用概率神经网络分类器进行基因组预测

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摘要

BackgroundMulti-layer perceptron (MLP) and radial basis function neural networks (RBFNN) have been shown to be effective in genome-enabled prediction. Here, we evaluated and compared the classification performance of an MLP classifier versus that of a probabilistic neural network (PNN), to predict the probability of membership of one individual in a phenotypic class of interest, using genomic and phenotypic data as input variables. We used 16 maize and 17 wheat genomic and phenotypic datasets with different trait-environment combinations (sample sizes ranged from 290 to 300 individuals) with 1.4 k and 55 k SNP chips. Classifiers were tested using continuous traits that were categorized into three classes (upper, middle and lower) based on the empirical distribution of each trait, constructed on the basis of two percentiles (15–85 % and 30–70 %). We focused on the 15 and 30 % percentiles for the upper and lower classes for selecting the best individuals, as commonly done in genomic selection. Wheat datasets were also used with two classes. The criteria for assessing the predictive accuracy of the two classifiers were the area under the receiver operating characteristic curve (AUC) and the area under the precision-recall curve (AUCpr). Parameters of both classifiers were estimated by optimizing the AUC for a specific class of interest.
机译:背景技术多层感知器(MLP)和径向基函数神经网络(RBFNN)已被证明在启用基因组的预测中有效。在这里,我们使用基因组和表型数据作为输入变量,对MLP分类器与概率神经网络(PNN)的分类性能进行了评估并进行了比较,从而预测了一个人感兴趣的表型类别中成员身份的概率。我们使用具有1.4k和55k SNP芯片的16个玉米和17个具有不同性状-环境组合(样本量介于290至300个人之间)的小麦基因组和表型数据集。分类器使用连续性状进行测试,这些性状基于每个性状的经验分布分为三个类别(上,中,下),以两个百分位数(15-85%和30-70%)为基础。我们专注于上,下阶层的15%和30%百分位数,以选择最佳个体,这在基因组选择中很常见。小麦数据集也用于两个类别。评估两个分类器的预测准确性的标准是接收器工作特性曲线(AUC)下的面积和精确召回曲线(AUCpr)下的面积。通过针对特定兴趣类别优化AUC来估算两个分类器的参数。

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