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用于定量检测人乳腺癌中雌激素和孕激素受体免疫反应性的半自动成像系统。

Semi-automated imaging system to quantitate estrogen and progesterone receptor immunoreactivity in human breast cancer.

作者信息

Sharangpani G M, Joshi A S, Porter K, Deshpande A S, Keyhani S, Naik G A, Gholap A S, Barsky S H

机构信息

BioImagene, Inc., 1601 S. De Anza Blvd., Suite 212, Cupertino, California, USA.

出版信息

J Microsc. 2007 Jun;226(Pt 3):244-55. doi: 10.1111/j.1365-2818.2007.01772.x.

Abstract

A semi-automated imaging system is described to quantitate estrogen and progesterone receptor immunoreactivity in human breast cancer. The system works for any conventional method of image acquisition using microscopic slides that have been processed for immunohistochemical analysis of the estrogen receptor and progesterone receptor. Estrogen receptor and progesterone receptor immunohistochemical staining produce colorimetric differences in nuclear staining that conventionally have been interpreted manually by pathologists and expressed as percentage of positive tumoral nuclei. The estrogen receptor and progesterone receptor status of human breast cancer represent important prognostic and predictive markers of human breast cancer that dictate therapeutic decisions but their subjective interpretation result in interobserver, intraobserver and fatigue variability. Subjective measurements are traditionally limited to a determination of percentage of tumoral nuclei that show positive immunoreactivity. To address these limitations, imaging algorithms utilizing both colorimetric (RGB) as well as intensity (gray scale) determinations were used to analyze pixels of the acquired image. Image acquisition utilized either scanner or microscope with attached digital or analogue camera capable of producing images with a resolution of 20 pixels /10 mu. Areas of each image were screened and the area of interest richest in tumour cells manually selected for image processing. Images were processed initially by JPG conversion of SVS scanned virtual slides or direct JPG photomicrograph capture. Following image acquisition, images were screened for quality, enhanced and processed. The algorithm-based values for estrogen receptor and progesterone receptor percentage nuclear positivity both strongly correlated with the subjective measurements (intraclass correlation: 0.77; 95% confidence interval: 0.59, 0.95) yet exhibited no interobserver, intraobserver or fatigue variability. In addition the algorithms provided measurements of nuclear estrogen receptor and progesterone receptor staining intensity (mean, mode and median staining intensity of positive staining nuclei), parameters that subjective review could not assess. Other semi-automated image analysis systems have been used to measure estrogen receptor and progesterone receptor immunoreactivity but these either have required proprietary hardware or have been based on luminosity differences alone. By contrast our algorithms were independent of proprietary hardware and were based on not just luminosity and colour but also many other imaging features including epithelial pattern recognition and nuclear morphology. These features provide a more accurate, versatile and robust imaging analysis platform that can be fully automated in the near future. Because of all these properties, our semi-automated imaging system 'adds value' as a means of measuring these important nuclear biomarkers of human breast cancer.

摘要

本文描述了一种用于定量人乳腺癌中雌激素和孕激素受体免疫反应性的半自动成像系统。该系统适用于任何使用经过雌激素受体和孕激素受体免疫组织化学分析处理的显微玻片进行图像采集的传统方法。雌激素受体和孕激素受体免疫组织化学染色在细胞核染色中产生比色差异,传统上由病理学家手动解读,并表示为肿瘤细胞核阳性的百分比。人乳腺癌的雌激素受体和孕激素受体状态是决定治疗决策的重要预后和预测标志物,但其主观解读会导致观察者间、观察者内和疲劳变异性。传统上,主观测量仅限于确定显示阳性免疫反应性的肿瘤细胞核的百分比。为了解决这些局限性,利用比色法(RGB)以及强度(灰度)测定的成像算法被用于分析采集图像的像素。图像采集使用扫描仪或配备数字或模拟相机的显微镜,能够生成分辨率为20像素/10微米的图像。对每个图像的区域进行筛选,并手动选择肿瘤细胞最丰富的感兴趣区域进行图像处理。图像最初通过将SVS扫描的虚拟玻片转换为JPG格式或直接捕获JPG显微照片进行处理。图像采集后,对图像进行质量筛选、增强和处理。基于算法的雌激素受体和孕激素受体细胞核阳性百分比值与主观测量结果高度相关(组内相关性:0.77;95%置信区间:0.59,0.95),且未表现出观察者间、观察者内或疲劳变异性。此外,该算法还提供了细胞核雌激素受体和孕激素受体染色强度的测量值(阳性染色细胞核的平均、众数和中位数染色强度),这些参数是主观评估无法评估的。其他半自动图像分析系统已被用于测量雌激素受体和孕激素受体免疫反应性,但这些系统要么需要专有硬件要么仅基于亮度差异。相比之下,我们的算法独立于专有硬件,不仅基于亮度和颜色,还基于许多其他成像特征,包括上皮模式识别和核形态。这些特征提供了一个更准确、通用和强大的成像分析平台,在不久的将来可以完全自动化。由于所有这些特性,我们的半自动成像系统作为测量人乳腺癌这些重要核生物标志物的一种手段“增加了价值”。

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