Microarray image gridding with stochastic search based approaches

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The paper reports a novel approach for the problem of automatic gridding in Microarray images. Such problem often requires human intervention; therefore, the development of automated procedures is a fundamental issue for large-scale functional genomic experiments involving many microarray images. Our method uses a two-step process. First a regular rectangular grid is superimposed on the image by interpolating a set of guide spots, this is done by solving a non-linear optimization process with a stochastic search producing the best interpolating grid parameterized by a six values vector. Second, the interpolating grid is adapted, with a Markov Chain Monte Carlo method, to local deformations. This is done by modeling the solution a Markov random field with a Gibbs prior possibly containing first order cliques (1-clique). The algorithm is completely automatic and no human intervention is required, it efficiently accounts arbitrary grid rotations, irregularities and various spot sizes.

论文关键词:Markov random fields,Gridding,Genetic algorithm,Microarray

论文评审过程:Received 22 April 2004, Revised 22 July 2005, Accepted 31 January 2006, Available online 30 June 2006.

论文官网地址:https://doi.org/10.1016/j.imavis.2006.01.023