Hue-saturation-density (HSD) model for stain recognition in digital images from transmitted light microscopy.

Cytometry Pub Date : 2000-04-01
J A van Der Laak, M M Pahlplatz, A G Hanselaar, P C de Wilde
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Abstract

Background: Transmitted light microscopy is used in pathology to examine stained tissues. Digital image analysis is gaining importance as a means to quantify alterations in tissues. A prerequisite for accurate and reproducible quantification is the possibility to recognise stains in a standardised manner, independently of variations in the staining density.

Methods: The usefulness of three colour models was studied using data from computer simulations and experimental data from an immuno-doublestained tissue section. Direct use of the three intensities obtained by a colour camera results in the red-green-blue (RGB) model. By decoupling the intensity from the RGB data, the hue-saturation-intensity (HSI) model is obtained. However, the major part of the variation in perceived intensities in transmitted light microscopy is caused by variations in staining density. Therefore, the hue-saturation-density (HSD) transform was defined as the RGB to HSI transform, applied to optical density values rather than intensities for the individual RGB channels.

Results: In the RGB model, the mixture of chromatic and intensity information hampers standardisation of stain recognition. In the HSI model, mixtures of stains that could be distinguished from other stains in the RGB model could not be separated. The HSD model enabled all possible distinctions in a two-dimensional, standardised data space.

Conclusions: In the RGB model, standardised recognition is only possible by using complex and time-consuming algorithms. The HSI model is not suitable for stain recognition in transmitted light microscopy. The newly derived HSD model was found superior to the existing models for this purpose.

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色相-饱和度-密度(HSD)模型用于透射光显微镜数字图像的染色识别。
背景:透射光显微镜用于病理检查染色组织。数字图像分析作为一种量化组织变化的手段正变得越来越重要。准确和可重复量化的先决条件是以标准化的方式识别污渍的可能性,独立于染色密度的变化。方法:利用计算机模拟数据和免疫双染色组织切片的实验数据,研究三种颜色模型的有效性。直接使用彩色相机获得的三种强度会产生红绿蓝(RGB)模型。通过将亮度与RGB数据解耦,得到了色调-饱和度-强度(HSI)模型。然而,在透射光显微镜中感知强度变化的主要部分是由染色密度的变化引起的。因此,色调-饱和度-密度(HSD)变换被定义为RGB到HSI的变换,应用于光密度值而不是单个RGB通道的强度。结果:在RGB模型中,颜色信息和强度信息的混合妨碍了染色识别的标准化。在HSI模型中,可以与RGB模型中其他污渍区分的污渍混合物无法分离。HSD模型在一个二维、标准化的数据空间中实现了所有可能的区别。结论:在RGB模型中,标准化识别只能通过使用复杂且耗时的算法来实现。HSI模型不适用于透射光显微镜下的染色识别。新导出的HSD模型优于现有的模型。
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