Automatization of neuroblastoma image analysis in the decision support system at histological diagnostics
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Abstract
The structure of measuring-and-computer complex for carrying out of emergency analysis of malignant grade and effectiveness treatment evaluation of neuroblastoma based on innovation segmentation method of digital image of neuroblastoma based on determinate chaos of digital image of histological specimens is offered. The algorithm for malignant grade evaluation based on three-level malignant classification of neuroblastoma cell’s on coefficient of morphometric ratio of numerical characteristics is offered.
Reference 10, figures 4.
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References
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