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Statistical colour models: an automated digital image analysis method for quantification of histological biomarkers

机译:统计颜色模型:一种用于定量组织学生物标记物的自动化数字图像分析方法

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Background Colour is the most important feature used in quantitative immunohistochemistry (IHC) image analysis; IHC is used to provide information relating to aetiology and to confirm malignancy. Methods Statistical modelling is a technique widely used for colour detection in computer vision. We have developed a statistical model of colour detection applicable to detection of stain colour in digital IHC images. Model was first trained by massive colour pixels collected semi-automatically. To speed up the training and detection processes, we removed luminance channel, Y channel of YCbCr colour space and chose 128 histogram bins which is the optimal number. A maximum likelihood classifier is used to classify pixels in digital slides into positively or negatively stained pixels automatically. The model-based tool was developed within ImageJ to quantify targets identified using IHC and histochemistry. Results The purpose of evaluation was to compare the computer model with human evaluation. Several large datasets were prepared and obtained from human oesophageal cancer, colon cancer and liver cirrhosis with different colour stains. Experimental results have demonstrated the model-based tool achieves more accurate results than colour deconvolution and CMYK model in the detection of brown colour, and is comparable to colour deconvolution in the detection of pink colour. We have also demostrated the proposed model has little inter-dataset variations. Conclusions A robust and effective statistical model is introduced in this paper. The model-based interactive tool in ImageJ, which can create a visual representation of the statistical model and detect a specified colour automatically, is easy to use and available freely at http://?rsb.?info.?nih.?gov/?ij/?plugins/?ihc-toolbox/?index.?html . Testing to the tool by different users showed only minor inter-observer variations in results.
机译:背景颜色是用于定量免疫组织化学(IHC)图像分析的最重要特征。 IHC用于提供与病因相关的信息并确认恶性肿瘤。方法统计建模是一种广泛用于计算机视觉颜色检测的技术。我们已经开发了一种颜色检测的统计模型,适用于检测数字IHC图像中的色斑。首先通过半自动收集的大量彩色像素训练模型。为了加快训练和检测过程,我们删除了YCbCr色彩空间的亮度通道和Y通道,并选择了128个直方图bin(最佳数量)。最大似然分类器用于将数字幻灯片中的像素自动分类为阳性或阴性染色的像素。在ImageJ中开发了基于模型的工具,以量化使用IHC和组织化学鉴定的目标。结果评估的目的是将计算机模型与人类评估进行比较。从人食道癌,结肠癌和肝硬化肝中制备了多个大型数据集,并具有不同的色斑。实验结果表明,基于模型的工具在检测棕色时比颜色反卷积和CMYK模型获得更准确的结果,并且在检测粉色时可与颜色反卷积媲美。我们还演示了所提出的模型具有很少的数据集间差异。结论本文介绍了一种健壮有效的统计模型。 ImageJ中基于模型的交互式工具可以轻松创建统计模型的可视化表示并自动检测指定的颜色,该工具易于使用,可在http://?rsb。?info。?nih。?gov /免费获得?ij /?plugins /?ihc-toolbox /?index。?html。不同用户对该工具进行的测试显示,观察者之间的结果差异很小。

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