Signal and Image Processing Lab. (SIMPLAB), YTU, Istanbul, Turkey.
Graduate School of Natural and Applied Science, Yildiz Technical University, 34220, Istanbul, Turkey.
Med Biol Eng Comput. 2017 Oct;55(10):1829-1848. doi: 10.1007/s11517-017-1630-1. Epub 2017 Feb 28.
In many computerized methods for cell detection, segmentation, and classification in digital histopathology that have recently emerged, the task of cell segmentation remains a chief problem for image processing in designing computer-aided diagnosis (CAD) systems. In research and diagnostic studies on cancer, pathologists can use CAD systems as second readers to analyze high-resolution histopathological images. Since cell detection and segmentation are critical for cancer grade assessments, cellular and extracellular structures should primarily be extracted from histopathological images. In response, we sought to identify a useful cell segmentation approach with histopathological images that uses not only prominent deep learning algorithms (i.e., convolutional neural networks, stacked autoencoders, and deep belief networks), but also spatial relationships, information of which is critical for achieving better cell segmentation results. To that end, we collected cellular and extracellular samples from histopathological images by windowing in small patches with various sizes. In experiments, the segmentation accuracies of the methods used improved as the window sizes increased due to the addition of local spatial and contextual information. Once we compared the effects of training sample size and influence of window size, results revealed that the deep learning algorithms, especially convolutional neural networks and partly stacked autoencoders, performed better than conventional methods in cell segmentation.
在最近出现的许多用于数字组织病理学中细胞检测、分割和分类的计算机化方法中,细胞分割仍然是设计计算机辅助诊断 (CAD) 系统中图像处理的主要问题。在癌症的研究和诊断研究中,病理学家可以将 CAD 系统用作辅助阅读者来分析高分辨率组织病理学图像。由于细胞检测和分割对于癌症分级评估至关重要,因此应主要从组织病理学图像中提取细胞和细胞外结构。为此,我们试图找到一种使用组织病理学图像的有用的细胞分割方法,该方法不仅使用了突出的深度学习算法(即卷积神经网络、堆叠自动编码器和深度置信网络),还使用了空间关系,这些信息对于获得更好的细胞分割结果至关重要。为此,我们通过用各种大小的小窗口对组织病理学图像中的细胞和细胞外样本进行了采集。在实验中,由于添加了局部空间和上下文信息,所使用的方法的分割精度随着窗口大小的增加而提高。一旦我们比较了训练样本大小的影响和窗口大小的影响,结果表明,深度学习算法,尤其是卷积神经网络和部分堆叠自动编码器,在细胞分割方面的表现优于传统方法。