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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Visual learning and classification of human epithelial type 2 cell images through spontaneous activity patterns
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Visual learning and classification of human epithelial type 2 cell images through spontaneous activity patterns

机译:通过自发活动模式对人2型上皮细胞图像的视觉学习和分类

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摘要

Identifying the presence of anti-nuclear antibody (ANA) in human epithelial type 2 (HEp-2) cells via the indirect immunofluorescence (IIF) protocol is commonly used to diagnose various connective tissue diseases in clinical pathology tests. As it is a labour and time intensive diagnostic process, several computer aided diagnostic (CAD) systems have been proposed. However, the existing CAD systems suffer from numerous shortcomings due to the selection of features, which is commonly based on expert experience. Such a choice of features may not work well when the CAD systems are re tasked to another dataset. To address this, in our previous work, we proposed a novel approach that learns a set of filters from HEp-2 cell images. It is inspired by the receptive fields in the mammalian's vision system, since the receptive fields can be thought as a set of filters for similar shapes. We obtain robust filters for HEp-2 cell classification by employing the independent component analysis (ICA) framework. Although, this approach may be held back due to one particular problem; ICA learning requires a sufficiently large volume of training data which is not always available. In this paper, we demonstrate a biologically inspired solution to address this issue via the use of spontaneous activity patterns (SAP). The spontaneous activity patterns, which are related to the spontaneous neural activities initialised by the chemical release in the brain, are found as the typical stimuli for the visual cell development of newborn animals. In the classification system for HEp-2 cells, we propose to model SAP as a set of small image patches containing randomly positioned Gaussian spots. The SAP image patches are generated and mixed with the training images in order to learn filters via the ICA framework. The obtained filters are adopted to extract the set of responses from a HEp-2 cell image. We then employ regions from this set of responses and stack them into "cubic regions", and apply a classification based on the correlation information of the features. We show that applying the additional SAP leads to a better classification performance on HEp-2 cell images compared to using only the existing patterns for training ICA filters. The improvement on classification is particularly significant when there are not enough specimen images available in the training set, as SAP adds more variations to the existing data that makes the learned ICA model more robust. We show that the proposed approach consistently outperforms three recently proposed CAD systems on two publicly available datasets: ICPR HEp-2 contest and SNPHEp-2.
机译:通过间接免疫荧光(IIF)协议鉴定人上皮2型(HEp-2)细胞中抗核抗体(ANA)的存在通常用于临床病理测试中诊断各种结缔组织疾病。由于这是费时费力的诊断过程,因此已经提出了几种计算机辅助诊断(CAD)系统。然而,现有的CAD系统由于特征的选择而遭受许多缺点,这通常基于专家经验。当将CAD系统重新分配给另一个数据集时,这种功能选择可能无法很好地起作用。为了解决这个问题,在我们以前的工作中,我们提出了一种新颖的方法,可以从HEp-2细胞图像中学习一组过滤器。它的灵感来自哺乳动物视觉系统中的感受野,因为可以将感受野视为一组用于相似形状的过滤器。通过采用独立成分分析(ICA)框架,我们获得了用于HEp-2细胞分类的强大过滤器。虽然,由于一个特定的问题,这种方法可能会被推迟; ICA学习需要足够数量的训练数据,而这些数据并不总是可用。在本文中,我们演示了一种生物学启发的解决方案,可通过使用自发活动模式(SAP)解决此问题。发现自发活动模式与通过大脑中化学释放而引发的自发神经活动有关,是新生动物视觉细胞发育的典型刺激。在HEp-2细胞分类系统中,我们建议将SAP建模为一组包含随机放置的高斯斑点的小图像块。生成SAP图像补丁并将其与训练图像混合,以便通过ICA框架学习过滤器。采用获得的滤波器从HEp-2细胞图像中提取响应集。然后,我们从这组响应中采用区域并将其堆叠为“立方区域”,然后根据特征的相关性信息进行分类。我们表明,与仅使用现有模式训练ICA过滤器相比,应用其他SAP可以在HEp-2细胞图像上实现更好的分类性能。当训练集中没有足够的样本图像时,分类的改进就特别重要,因为SAP向现有数据添加了更多变化,从而使学习到的ICA模型更加可靠。我们表明,在两个可公开获得的数据集:ICPR HEp-2竞赛和SNPHEp-2方面,所提出的方法始终优于三个最新提出的CAD系统。

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