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Histopathologic Patterns of Nervous System Tumors Based on Computer Vision Methods and Whole Slide Imaging (WSI)

Slawomir Walkowski, Janusz Szymaś

发表年份
2012
引用次数
3
访问权限
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摘要

Background : Making an automatic diagnosis based on virtual slides and whole slide imaging or even determining whether a case belongs to a single class, representing a specific disease, is a big challenge. In this work we focus on WHO Classification of Tumours of the Central Nervous System. We try to design a method which allows to automatically distinguish virtual slides which contain histopathologic patterns characteristic of glioblastoma – pseudopalisading necrosis and discriminate cases with neurinoma (schwannoma), which contain similar structures – palisading (Verocay bodies). Methods : Our method is based on computer vision approaches like structural analysis and shape descriptors. We start with image segmentation in a virtual slide, find specific patterns and use a set of features which can describe pseudopalisading necrosis and distinguish it from palisades. Type of structures found in a slide decides about its classification. Results : Described method is tested on a set of 49 virtual slides, captured using robotic microscope. Results show that 82% of glioblastoma cases and 90% of neurinoma cases were correctly identified by the proposed algorithm. Conclusion : Our method is a promising approach to automatic detection of nervous system tumors using virtual slides.

关键词

Computer scienceArtificial intelligenceSegmentationGlioblastomaSet (abstract data type)Focus (optics)SchwannomaPattern recognition (psychology)Image segmentationComputer vision

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