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A STOCHASTIC VARIABLE SELECTION METHOD FOR MODEL SELECTION

机译:模型选择的随机变量选择方法

摘要

A method of identifying differentially-expressed genes includes deriving an analysis of variance (ANOVA) or analysis of covariance (ANCOVA) model for expression data associated with a number of genes; from the ANOVA or ANCOVA model, deriving a linear regression model defined at least in part by an observation vector representative of an observed subset of the gene-expression data, a design matrix of regressor variables, a vector of regression coefficients representing gene contribution to the observation vector, and a measurement error vector; and to the linear regression model, applying a hierarchical selection algorithm to designate a subset of the regression coefficients as significant regression coefficients, the selection algorithm representing at least one of the observation vector, the design matrix, and the measurement error vector as being hierarchically dependent on parameters having predetermined probabilistic properties, wherein the designated subset corresponds to a respective subset of the genes identified as differentially expressed.
机译:一种鉴定差异表达基因的方法包括获得与多个基因相关的表达数据的方差分析(ANOVA)或协方差分析(ANCOVA)模型。从ANOVA或ANCOVA模型中,得出线性回归模型,该模型至少部分由代表观察到的基因表达数据子集的观察向量,回归变量的设计矩阵,代表基因对基因表达贡献的回归系数向量定义观测向量和测量误差向量;对于线性回归模型,应用层次选择算法将回归系数的子集指定为有效回归系数,该选择算法将观察向量,设计矩阵和测量误差向量中的至少一个表示为层次依赖在具有预定概率性质的参数上,其中指定子集对应于鉴定为差异表达的基因的相应子集。

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