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A Compact Representation of Histopathology Images Using Digital Stain Separation and Frequency-Based Encoded Local Projections

机译:使用数字污渍分离和基于频率的编码局部投影的组织病理学图像的紧凑表示

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In recent years, histopathology images have been increasingly used as a diagnostic tool in the medical field. The process of accurately diagnosing a biopsy sample requires significant expertise in the field, and as such can be time-consuming and is prone to uncertainty and error. With the advent of digital pathology, using image recognition systems to highlight problem areas or locate similar images can aid pathologists in making quick and accurate diagnoses. In this paper, we specifically consider the encoded local projections (ELP) algorithm, which has previously shown some success as a tool for classification and recognition of histopathology images. We build on the success of the ELP algorithm as a means for image classification and recognition by proposing a modified algorithm which captures the local frequency information of the image. The proposed algorithm estimates local frequencies by quantifying the changes in multiple projections in local windows of greyscale images. By doing so we remove the need to store the full projections, thus significantly reducing the histogram size, and decreasing computation time for image retrieval and classification tasks. Furthermore, we investigate the effectiveness of applying our method to histopathology images which have been digitally separated into their hematoxylin and eosin stain components. The proposed algorithm is tested on the publicly available invasive ductal carcinoma (IDC) data set. The histograms are used to train an SVM to classify the data. The experiments showed that the proposed method outperforms the original ELP algorithm in image retrieval tasks. On classification tasks, the results are found to be comparable to state-of-the-art deep learning methods and better than many handcrafted features from the literature.
机译:近年来,组织病理学图像已被越来越多地用作医学领域的诊断工具。准确诊断活检样本的过程需要在该领域具有丰富的专业知识,因此可能很耗时,并且容易出现不确定性和错误。随着数字病理学的到来,使用图像识别系统突出显示问题区域或定位类似图像可以帮助病理学家进行快速,准确的诊断。在本文中,我们专门考虑编码局部投影(ELP)算法,该算法先前已显示出成功的分类和识别组织病理学图像的工具。我们通过提出一种改进的算法来捕获图像的本地频率信息,从而将ELP算法的成功作为一种用于图像分类和识别的手段。所提出的算法通过量化灰度图像局部窗口中多个投影的变化来估计局部频率。通过这样做,我们无需存储完整的投影,从而显着减小了直方图的大小,并减少了图像检索和分类任务的计算时间。此外,我们调查了将我们的方法应用于组织病理学图像的有效性,这些图像已被数字化地分为苏木精和曙红染色成分。在公开的浸润性导管癌(IDC)数据集上对提出的算法进行了测试。直方图用于训练SVM对数据进行分类。实验表明,该方法在图像检索任务中优于原始的ELP算法。在分类任务上,发现结果可与最新的深度学习方法相媲美,并且优于文献中的许多手工制作的功能。

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