Title of article :
Multivariate approach for selecting sets of differentially expressed genes
Author/Authors :
Suren Chilingaryan، نويسنده , , A and Gevorgyan، نويسنده , , N and Vardanyan، نويسنده , , A and Jones، نويسنده , , D and Szabo، نويسنده , , A، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
An important problem addressed using cDNA microarray data is the detection of genes differentially expressed in two tissues of interest. Currently used approaches ignore the multidimensional structure of the data. However it is well known that correlation among covariates can enhance the ability to detect less pronounced differences. We use the Mahalanobis distance between vectors of gene expressions as a criterion for simultaneously comparing a set of genes and develop an algorithm for maximizing it. To overcome the problem of instability of covariance matrices we propose a new method of combining data from small-scale random search experiments. We show that by utilizing the correlation structure the multivariate method, in addition to the genes found by the one-dimensional criteria, finds genes whose differential expression is not detectable marginally.
Keywords :
Microarray , Random search , simulation study , Mahalanobis distance
Journal title :
Mathematical Biosciences
Journal title :
Mathematical Biosciences