Kopriva Ivica, Popović Hadžija Marijana, Hadžija Mirko, Aralica Gorana
Division of Laser and Atomic Research and Development, Ruđer Bošković Institute, Bijenička cesta 54, 10002 Zagreb, Croatia.
Division of Molecular Medicine, Ruđer Bošković Institute, Bijenička cesta 54, 10002 Zagreb, Croatia.
Sci Rep. 2015 Jun 23;5:11576. doi: 10.1038/srep11576.
Low-contrast images, such as color microscopic images of unstained histological specimens, are composed of objects with highly correlated spectral profiles. Such images are very hard to segment. Here, we present a method that nonlinearly maps low-contrast color image into an image with an increased number of non-physical channels and a decreased correlation between spectral profiles. The method is a proof-of-concept validated on the unsupervised segmentation of color images of unstained specimens, in which case the tissue components appear colorless when viewed under the light microscope. Specimens of human hepatocellular carcinoma, human liver with metastasis from colon and gastric cancer and mouse fatty liver were used for validation. The average correlation between the spectral profiles of the tissue components was greater than 0.9985, and the worst case correlation was greater than 0.9997. The proposed method can potentially be applied to the segmentation of low-contrast multichannel images with high spatial resolution that arise in other imaging modalities.
低对比度图像,如未染色组织学标本的彩色显微图像,是由具有高度相关光谱轮廓的物体组成的。这类图像很难分割。在此,我们提出一种方法,该方法将低对比度彩色图像非线性映射到一个具有更多非物理通道且光谱轮廓之间相关性降低的图像。该方法是一个概念验证,已在未染色标本彩色图像的无监督分割上得到验证,在这种情况下,组织成分在光学显微镜下观察时是无色的。使用人类肝细胞癌、有结肠癌和胃癌转移的人类肝脏以及小鼠脂肪肝的标本进行验证。组织成分光谱轮廓之间的平均相关性大于0.9985,最坏情况下的相关性大于0.9997。所提出的方法有可能应用于其他成像模态中出现的具有高空间分辨率的低对比度多通道图像的分割。