Salvi Massimo, Michielli Nicola, Molinari Filippo
Politecnico di Torino, PoliToBIOMed Lab, Biolab, Department of Electronics and Telecommunications, Corso Duca degli Abruzzi 24, 10129, Turin, Italy.
Politecnico di Torino, PoliToBIOMed Lab, Biolab, Department of Electronics and Telecommunications, Corso Duca degli Abruzzi 24, 10129, Turin, Italy.
Comput Methods Programs Biomed. 2020 Sep;193:105506. doi: 10.1016/j.cmpb.2020.105506. Epub 2020 Apr 17.
The diagnosis of histopathological images is based on the visual analysis of tissue slices under a light microscope. However, the histological tissue appearance may assume different color intensities depending on the staining process, operator ability and scanner specifications. This stain variability affects the diagnosis of the pathologist and decreases the accuracy of computer-aided diagnosis systems. In this context, the stain normalization process has proved to be a powerful tool to cope with this issue, allowing to standardize the stain color appearance of a source image respect to a reference image.
In this paper, novel fully automated stain separation and normalization approaches for hematoxylin and eosin stained histological slides are presented. The proposed algorithm, named SCAN (Stain Color Adaptive Normalization), is based on segmentation and clustering strategies for cellular structures detection. The SCAN algorithm is able to improve the contrast between histological tissue and background and preserve local structures without changing the color of the lumen and the background.
Both stain separation and normalization techniques were qualitatively and quantitively validated on a multi-tissue and multiscale dataset, with highly satisfactory results, outperforming the state-of-the-art approaches. SCAN was also tested on whole-slide images with high performances and low computational times.
The potential contribution of the proposed standardization approach is twofold: the improvement of visual diagnosis in digital histopathology and the development of powerful pre-processing strategies to automated classification techniques for cancer detection.
组织病理学图像的诊断基于在光学显微镜下对组织切片的视觉分析。然而,根据染色过程、操作者能力和扫描仪规格,组织学组织外观可能呈现不同的颜色强度。这种染色变异性会影响病理学家的诊断,并降低计算机辅助诊断系统的准确性。在这种情况下,染色归一化过程已被证明是应对这一问题的有力工具,它能够使源图像的染色颜色外观相对于参考图像进行标准化。
本文提出了用于苏木精和伊红染色的组织学切片的新型全自动染色分离和归一化方法。所提出的算法名为SCAN(染色颜色自适应归一化),基于用于细胞结构检测的分割和聚类策略。SCAN算法能够提高组织学组织与背景之间的对比度,并保留局部结构,而不改变管腔和背景的颜色。
在一个多组织和多尺度数据集上对染色分离和归一化技术进行了定性和定量验证,结果非常令人满意,优于现有方法。SCAN还在全切片图像上进行了测试,具有高性能和低计算时间。
所提出的标准化方法的潜在贡献有两方面:改善数字组织病理学中的视觉诊断,以及为癌症检测的自动分类技术开发强大的预处理策略。