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Dimension Reduction Parameters for Leukemia Diagnostic based in Subspace Arrangement Segmentation |
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PP: 2789-2794 |
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Author(s) |
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Leticia Flores-Pulido,
Gustavo Rodríguez-Gómez,
Jesús A. A. González,
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Abstract |
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This paper presents a novel approach for the classification of acute leukemia subtypes using image processing and
mathematical techniques. The preprocessing phase analyses 376 features from abdnormal leukocytes images. The features or
parameters are Leukemia Parameters that helps to lymphoblastic subtypes detection which come from bone marrow images with
heterogeneous staining. The second phase imply the robust generalized principal component analysis as segmentation method for data
classification into a subspace arrangement with tree dimensions for each plane of lymphoblastic subtype and four dimension for the
subspace arrangement. The novel of our proposal states that the two subtypes of acute leukemia can be classified into a subspace
arrangement trough robust generalized principal component analysis method. The subspace arrangement is achieved with singular
value decomposition, an hibrid linear model to noise samples detection and homogeneus polynomial. Test reveals that variation in
dimension of subspace arrangement depends on features size, the outliers percentage and noise parameters are tunned, dimension of
subspace and effective dimension are adjusted, time in execution algorithm and segmentation percentage are measured to lymphoblastic
subtypes classification with only 4 parameters from 376 attributes set that are previously computed from cell images and their respective
nucleous and cytoplasm. |
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