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Synergies between texture features: an abstract feature based framework for meningioma subtypes classification

机译:纹理特征之间的协同作用:基于抽象特征的脑膜瘤亚型分类框架

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摘要

Histopathology is the gold standard for accurate diagnosis of cancer, tumors and similar diseases. Real-world pathological images, due to non-homogeneous nature and unorganized spatial intensity variations, are complex to analyze and classify. The major challenge in classifying pathological images is the complexity due to high intra-class variability and low inter-class variation in texture. Accuracy of histopathological image classification is highly dependent on the relevancy of the selected features to the problem. This paper is an effort in the same direction and presents an abstract feature based framework called abstract feature framework (AFF) to select optimal set of the most relevant features to classify pathological images. An abstract feature is created by identifying interlinked run-length texture features and grouping them. AFF is comprised of a new data structure called Abstract Feature Tree (AFT) and an algorithm for manipulating it. AFT is a tree structure in which nodes are abstract features. The Linkage Learning Algorithm for manipulating AFT is the brain of this framework and inspired by genetic algorithm. It creates better abstract features by first identifying interlinked abstract features and then combining them. This process is repeated until no improvement is found. On termination, the final list of abstract features is used for classifying pathological images. The proposed framework was tested on real-world histopathological meningioma dataset. Results obtained proved that the proposed framework outperformed the best-known rank-based feature selection techniques by using, on average, approximately three times less features to achieve 22% higher classification accuracy.
机译:组织病理学是准确诊断癌症,肿瘤和类似疾病的金标准。由于不均匀的性质和无组织的空间强度变化,现实世界中的病理图像很难分析和分类。对病理图像进行分类的主要挑战是由于类内变异高和类间变异低而导致的复杂性。组织病理学图像分类的准确性高度取决于所选特征与问题的相关性。本文朝同一个方向努力,提出了一种基于抽象特征的框架,称为抽象特征框架(AFF),用于选择最相关特征的最佳集合以对病理图像进行分类。通过标识互连的行程长度纹理特征并将其分组来创建抽象特征。 AFF由称为抽象特征树(AFT)的新数据结构和用于操纵它的算法组成。 AFT是树结构,其中节点是抽象特征。用于操纵AFT的链接学习算法是该框架的核心,并受到遗传算法的启发。通过首先确定互连的抽象特征,然后将它们组合在一起,它可以创建更好的抽象特征。重复该过程,直到没有发现改善为止。终止时,将使用抽象特征的最终列表对病理图像进行分类。在现实世界中的组织病理学脑膜瘤数据集上对提出的框架进行了测试。获得的结果证明,提出的框架通过平均减少大约三倍的特征来实现22%的更高分类精度,从而胜过了最著名的基于等级的特征选择技术。

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