论文标题

研究组织病理学图像的数字染色分离对图像搜索性能的影响

Studying the Effect of Digital Stain Separation of Histopathology Images on Image Search Performance

论文作者

Cheeseman, Alison K., Tizhoosh, Hamid R., Vrscay, Edward R.

论文摘要

由于技术的最新进展,数字化的组织病理学图像现已广泛用于临床和研究目的。因此,数字组织病理学图像的计算机图像分析算法的研究一直在迅速发展。在这项工作中,我们专注于数字组织病理学图像的图像检索。图像检索算法可用于查找相似的图像,并可以帮助病理学家快速准确诊断。组织病理学图像通常用染料染色,以突出组织的特征,因此,组织病理学的图像分析算法应能够处理颜色图像并确定存在的染色颜色的相关信息。在这项研究中,我们对染色分离为其单个污渍组件对图像搜索性能的影响感兴趣。为此,我们从两个公开可用的数据集(IDC和Breakhis)中实现了基本的K-Neartheent邻居(KNN)搜索算法,该算法是:a)转换为Greyscale,b)数字性染色性分离和C)原始RGB颜色图像。这项研究的结果表明,使用H \ e分离的图像可以在使用原始RGB图像获得的搜索精度中产生搜索精度,并且在我们测试的大多数情况下,使用H \&E图像观察到了出色的性能。

Due to recent advances in technology, digitized histopathology images are now widely available for both clinical and research purposes. Accordingly, research into computerized image analysis algorithms for digital histopathology images has been progressing rapidly. In this work, we focus on image retrieval for digital histopathology images. Image retrieval algorithms can be used to find similar images and can assist pathologists in making quick and accurate diagnoses. Histopathology images are typically stained with dyes to highlight features of the tissue, and as such, an image analysis algorithm for histopathology should be able to process colour images and determine relevant information from the stain colours present. In this study, we are interested in the effect that stain separation into their individual stain components has on image search performance. To this end, we implement a basic k-nearest neighbours (kNN) search algorithm on histopathology images from two publicly available data sets (IDC and BreakHis) which are: a) converted to greyscale, b) digitally stain-separated and c) the original RGB colour images. The results of this study show that using H\&E separated images yields search accuracies within one or two percent of those obtained with original RGB images, and that superior performance is observed using the H\&E images in most scenarios we tested.

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