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Meningioma Subtype Classification using Morphology Features and Random Forests

机译:脑膜瘤亚型分类的形态学特征和随机森林

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The majority of meningiomas belong to one of four subtypes: fibroblastic, meningothelial, transitional and psammomatous. Classification of histopathology images of these meningioma is a time consuming and error prone task, and as such automatic methods aim to help reduce time spent and errors made. This work is concerned with classifying histopathology images into the above subtypes by extracting simple morphology features to represent each image subtype. Morphology features are identified based on the pathology of the meningioma subtypes and are used to classify each image into one of the four WHO Grade I subtypes. The morphology features correspond to visual changes in the appearance of cells, and the presence of psammoma bodies. Using morphological image processing these features can be extracted and the presence of each detected feature is used to build a vector for each meningioma image. These feature vectors are then classified using a Random Forest based classifier. A set of 80 images was used for experimentation with each subtype being represented by 20 images, and a ten-fold cross validation approach was used to obtain an overall classification accuracy. Using the above methodology a maximum classification accuracy of 91.25% is achieved across the four subtypes with coherent misclassification (e.g. no misclassification between fibroblastic and meningothelial). This work demonstrates that morphology features can be used to perform meningioma subtype classification and provide an understandable link between the features identified in the images and the classification results obtained.
机译:大多数脑膜瘤属于四种亚型之一:成纤维细胞,脑膜内皮,过渡型和皮脂瘤。这些脑膜瘤的组织病理学图像分类是一项耗时且容易出错的任务,因此,这种自动方法旨在帮助减少花费的时间和出错的机会。这项工作与通过提取代表每个图像亚型的简单形态特征将组织病理学图像分类为上述亚型有关。根据脑膜瘤亚型的病理学鉴定形态学特征,并将其用于将每个图像分类为四种WHO I类亚型之一。形态学特征对应于细胞外观的视觉变化,以及肺腺瘤体的存在。使用形态学图像处理,可以提取这些特征,并且使用每个检测到的特征的存在来为每个脑膜瘤图像建立载体。然后使用基于随机森林的分类器对这些特征向量进行分类。一组80张图像用于实验,每个亚型由20张图像表示,并且使用十倍交叉验证方法来获得总体分类精度。使用上述方法,在具有连贯错误分类(例如在成纤维细胞和脑膜内皮之间没有错误分类)的四个亚型中,可达到91.25%的最大分类精度。这项工作表明形态特征可用于执行脑膜瘤亚型分类,并在图像中识别的特征与获得的分类结果之间提供可理解的联系。

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