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Experiments on Automatic Classification of Tissue Malignancy in the Field of Digital Pathology

机译:数字病理学领域中组织恶性肿瘤自动分类的实验

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Automated analysis of histological images helps diagnose and further classify breast cancer. Totally automated approaches can be used to pinpoint images for further analysis by the medical doctor. But tissue images are especially challenging for either manual or automated approaches, due to mixed patterns and textures, where malignant regions are sometimes difficult to detect unless they are in very advanced stages. Some of the major challenges are related to irregular and very diffuse patterns, as well as difficulty to define winning features and classifier models. Although it is also hard to segment correctly into regions, due to the diffuse nature, it is still crucial to take low-level features over individualized regions instead of the whole image, and to select those with the best outcomes. In this paper we report on our experiments building a region classifier with a simple subspace division and a feature selection model that improves results over image-wide and/or limited feature sets. Experimental results show modest accuracy for a set of classifiers applied over the whole image, while the conjunction of image division, per-region low-level extraction of features and selection of features, together with the use of a neural network classifier achieved the best levels of accuracy for the dataset and settings we used in the experiments. Future work involves deep learning techniques, adding structures semantics and embedding the approach as a tumor finding helper in a practical Medical Imaging Application.
机译:组织学图像的自动分析有助于诊断和进一步分类乳腺癌。完全自动化的方法可用于查明图像,以供医生进一步分析。但是由于混合的图案和纹理,对于手动或自动方法而言,组织图像特别具有挑战性,在这些组织图像中,除非处于非常晚期,否则有时很难检测到恶性区域。一些主要挑战与不规则和非常分散的模式有关,以及难以定义获胜功能和分类器模型。尽管由于分散的性质,也很难正确地将其分割成多个区域,但仍然重要的是在各个区域而不是整个图像上使用低级特征,并选择效果最佳的特征。在本文中,我们报告了我们的实验,该实验建立了一个具有简单子空间划分和特征选择模型的区域分类器,该模型可改善整个图像范围和/或有限特征集的结果。实验结果表明,应用于整个图像的一组分类器的准确性适中,而图像分割,特征的每区域低层提取和特征选择的结合以及神经网络分类器的使用达到了最佳水平实验中使用的数据集和设置的准确性。未来的工作涉及深度学习技术,添加结构语义并将该方法嵌入到实际医学成像应用程序中作为寻找肿瘤的助手。

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