Kopriva Ivica, Hadžija Marijana Popovic, Hadžija Mirko, Aralica Gorana
Ruder Boškovic Institute, Division of Laser and Atomic R&D, Bijenicka cesta 54, Zagreb 10002, Croatia.
Ruder Boškovic Institute, Division of Molecular Medicine, Bijenicka cesta 54, Zagreb 10002, Croatia.
J Biomed Opt. 2015 Jul;20(7):76012. doi: 10.1117/1.JBO.20.7.076012.
We propose an offset-sparsity decomposition method for the enhancement of a color microscopic image of a stained specimen. The method decomposes vectorized spectral images into offset terms and sparse terms. A sparse term represents an enhanced image, and an offset term represents a "shadow." The related optimization problem is solved by computational improvement of the accelerated proximal gradient method used initially to solve the related rank-sparsity decomposition problem. Removal of an image-adapted color offset yields an enhanced image with improved colorimetric differences among the histological structures. This is verified by a no-reference colorfulness measure estimated from 35 specimens of the human liver, 1 specimen of the mouse liver stained with hematoxylin and eosin, 6 specimens of the mouse liver stained with Sudan III, and 3 specimens of the human liver stained with the anti-CD34 monoclonal antibody. The colorimetric difference improves on average by 43.86% with a 99% confidence interval (CI) of [35.35%, 51.62%]. Furthermore, according to the mean opinion score, estimated on the basis of the evaluations of five pathologists, images enhanced by the proposed method exhibit an average quality improvement of 16.60% with a 99% CI of [10.46%, 22.73%].
我们提出了一种偏移-稀疏分解方法,用于增强染色标本的彩色显微图像。该方法将矢量化光谱图像分解为偏移项和稀疏项。稀疏项表示增强后的图像,偏移项表示“阴影”。通过对最初用于解决相关秩-稀疏分解问题的加速近端梯度方法进行计算改进,来解决相关的优化问题。去除适应图像的颜色偏移会产生一个增强后的图像,其组织学结构之间的比色差异得到改善。这通过对35个人类肝脏标本、1个用苏木精和伊红染色的小鼠肝脏标本、6个用苏丹III染色的小鼠肝脏标本以及3个用抗CD34单克隆抗体染色的人类肝脏标本估计的无参考色彩度测量得到验证。比色差异平均提高了43.86%,99%置信区间(CI)为[35.35%,51.62%]。此外,根据五位病理学家评估得出的平均意见得分,所提方法增强后的图像平均质量提高了16.60%,99%CI为[10.46%,22.73%]。