HEp-2 Cell Classification Using Multi-dimensional Local Binary Patterns and Ensemble Classification

G. Schaefer, N. Doshi, B. Krawczyk
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引用次数: 4

Abstract

Indirect immunofluorescence imaging is a fundamental technique for detecting antinuclear antibodies in HEp-2 cells. This is particularly useful for the diagnosis of autoimmune diseases and other important pathological conditions involving the immune system. HEp-2 cells can be categorised into six groups: homogeneous, fine speckled, coarse speckled, nucleolar, cytoplasmic, and Centro mere cells, which give indications on different autoimmune diseases. This categorisation is typically performed by manual evaluation which is time consuming and subjective. In this paper, we present a method for automatic classification of HEp-2 cells using local binary pattern (LBP) based texture descriptors and ensemble classification. In our approach, we utilise multi-dimensional LBP (MD-LBP) histograms, which record multi-scale texture information while maintaining the relationships between the scales. Our dedicated ensemble classification approach is based on a set of heterogeneous base classifiers obtained through application of different feature selection algorithms, a diversity based pruning stage and a neural network classifier fuser. We test our algorithm on the ICPR 2012 HEp-2 contest benchmark dataset, and demonstrate it to outperform all algorithms that were entered in the competition as well as to exceed the performance of a human expert.
基于多维局部二值模式和集成分类的HEp-2细胞分类
间接免疫荧光成像是检测HEp-2细胞抗核抗体的基本技术。这对于自身免疫性疾病和其他涉及免疫系统的重要病理状况的诊断特别有用。HEp-2细胞可分为6类:均质细胞、细斑细胞、粗斑细胞、核仁细胞、细胞质细胞和中心细胞,它们可用于不同的自身免疫性疾病。这种分类通常是通过人工评估来执行的,这既耗时又主观。本文提出了一种基于局部二值模式(LBP)纹理描述符和集合分类的HEp-2细胞自动分类方法。在我们的方法中,我们利用了多维LBP (MD-LBP)直方图,它记录了多尺度纹理信息,同时保持了尺度之间的关系。我们的集成分类方法是基于一组异构基分类器,这些分类器是通过应用不同的特征选择算法、基于多样性的修剪阶段和神经网络分类器融合器获得的。我们在ICPR 2012 HEp-2竞赛基准数据集上测试了我们的算法,并证明它优于所有参加竞赛的算法,并且超过了人类专家的表现。
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