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Classification of Prostate Histopathology Images Based on Multifractal Analysis

机译:基于多重分形分析的前列腺组织病理学图像分类

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Histopathology is a microscopic anatomical study of body tissues and widely used as a cancer diagnosing method. Generally, pathologists examine the structural deviation of cellular and sub-cellular components to diagnose the malignancy of body tissues. These judgments may often subjective to pathologists' skills and personal experiences. However, computational diagnosis tools may circumvent these limitations and improve the reliability of the diagnosis decisions. This paper proposes a prostate image classification method by extracting textural behavior using multifractal analysis. Fractal geometry is used to describe the complexity of self-similar structures as a non-integer exponent called fractal dimension. Natural complex structures (or images) are not self-similar, thus a single exponent (the fractal dimension) may not be adequate to describe the complexity of such structures. Multifractal analysis technique has been introduced to describe the complexity as a spectrum of fractal dimensions. Based on multifractal computation of digital imaging, we obtain two textural feature descriptors; i) local irregularity: α and ii) global regularity: f (α). We exploit these multifractal feature descriptors with a texton dictionary based classification model to discriminate canceron-cancer tissues of histopathology images of H&E stained prostate biopsy specimens. Moreover, we examine other three feature descriptors; Gabor filter bank, LM filter bank and Haralick features to benchmark the performance of the proposed method. Experiment results indicated that the performance of the proposed multifractal feature descriptor outperforms the other feature descriptors by achieving over 94% of correct classification accuracy.
机译:组织病理学是对人体组织的微观解剖学研究,并广泛用作癌症诊断方法。通常,病理学家检查细胞和亚细胞成分的结构偏差,以诊断身体组织的恶性肿瘤。这些判断通常可能取决于病理学家的技能和个人经验。但是,计算诊断工具可以规避这些限制并提高诊断决策的可靠性。本文提出了一种通过多重分形分析提取纹理行为的前列腺图像分类方法。分形几何学被用来描述自相似结构的复杂性,这是一个称为分形维数的非整数指数。自然复杂的结构(或图像)不是自相似的,因此单个指数(分形维)可能不足以描述此类结构的复杂性。引入了多重分形分析技术,以分形维数谱描述复杂性。基于数字成像的多重分形计算,我们获得了两个纹理特征描述符。 i)局部不规则:α和ii)整体不规则:f(α)。我们利用基于texton词典的分类模型利用这些多重分形特征描述符,以区分H&E染色的前列腺活检标本的组织病理学图像的癌/非癌组织。此外,我们检查了其他三个特征描述符。 Gabor滤波器组,LM滤波器组和Haralick功能可对所提出方法的性能进行基准测试。实验结果表明,所提出的多重分形特征描述符的性能超过了正确分类精度的94%,优于其他特征描述符。

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