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Kernel-imbedded Gaussian processes for disease classification using microarray gene expression data
Authors:Xin Zhao  Leo Wang-Kit Cheung
Affiliation:(1) Department of Information and Computer Sciences, University of Hawaii, 1680 East-West Road, Honolulu, Hawaii 96822, USA;(2) Bioinformatics Core, Stritch School of Medicine, Loyola University Medical Center, 2160 South First Avenue, Maywood, Illinois 60153, USA;(3) Department of Preventive Medicine and Epidemiology, Stritch School of Medicine, Loyola University Medical Center, 2160 South First Avenue, Maywood, Illinois 60153, USA
Abstract:

Background  

Designing appropriate machine learning methods for identifying genes that have a significant discriminating power for disease outcomes has become more and more important for our understanding of diseases at genomic level. Although many machine learning methods have been developed and applied to the area of microarray gene expression data analysis, the majority of them are based on linear models, which however are not necessarily appropriate for the underlying connection between the target disease and its associated explanatory genes. Linear model based methods usually also bring in false positive significant features more easily. Furthermore, linear model based algorithms often involve calculating the inverse of a matrix that is possibly singular when the number of potentially important genes is relatively large. This leads to problems of numerical instability. To overcome these limitations, a few non-linear methods have recently been introduced to the area. Many of the existing non-linear methods have a couple of critical problems, the model selection problem and the model parameter tuning problem, that remain unsolved or even untouched. In general, a unified framework that allows model parameters of both linear and non-linear models to be easily tuned is always preferred in real-world applications. Kernel-induced learning methods form a class of approaches that show promising potentials to achieve this goal.
Keywords:
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