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ordinalgmifs: An R Package for Ordinal Regression in High-dimensional Data Settings

机译:ordinalgmifs:高维数据设置中有序回归的R包

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High-throughput genomic assays are performed using tissue samples with the goal of classifying the samples as normal < pre-malignant < malignant or by stage of cancer using a small set of molecular features. In such cases, molecular features monotonically associated with the ordinal response may be important to disease development; that is, an increase in the phenotypic level (stage of cancer) may be mechanistically linked through a monotonic association with gene expression or methylation levels. Though traditional ordinal response modeling methods exist, they assume independence among the predictor variables and require the number of samples (n) to exceed the number of covariates (P) included in the model. In this paper, we describe our ordinalgmifs R package, available from the Comprehensive R Archive Network, which can fit a variety of ordinal response models when the number of predictors (P) exceeds the sample size (n). R code illustrating usage is also provided.
机译:使用组织样品进行高通量基因组测定,目的是使用少量分子特征将样品分类为正常<恶性前<恶性或恶性肿瘤。在这种情况下,与序数响应单调相关的分子特征可能对疾病发展很重要。也就是说,表型水平(癌症分期)的增加可以通过单调关联与基因表达或甲基化水平进行机械关联。尽管存在传统的顺序响应建模方法,但是它们假设预测变量之间具有独立性,并且要求样本数(n)超过模型中包含的协变量(P)的数量。在本文中,我们描述了我们的ordinalgmifs R软件包,该软件包可从Composite R存档网络获得,当预测变量(P)超过样本大小(n)时,该软件包可以适合多种序数响应模型。还提供了说明用法的R代码。

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