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Automated quantification of nuclear immunohistochemical markers with different complexity

机译:自动定量不同复杂程度的核免疫组化标记

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摘要

Manual quantification of immunohistochemically stained nuclear markers is still laborious and subjective and the use of computerized systems for digital image analysis have not yet resolved the problems of nuclear clustering. In this study, we designed a new automatic procedure for quantifying various immunohistochemical nuclear markers with variable clustering complexity. This procedure consisted of two combined macros. The first, developed with a commercial software, enabled the analysis of the digital images using color and morphological segmentation including a masking process. All information extracted with this first macro was automatically exported to an Excel datasheet, where a second macro composed of four different algorithms analyzed all the information and calculated the definitive number of positive nuclei for each image. One hundred and eighteen images with different levels of clustering complexity was analyzed and compared with the manual quantification obtained by a trained observer. Statistical analysis indicated a great reliability (intra-class correlation coefficient > 0.950) and no significant differences between the two methods. Bland–Altman plot and Kaplan–Meier curves indicated that the results of both methods were concordant around 90% of analyzed images. In conclusion, this new automated procedure is an objective, faster and reproducible method that has an excellent level of accuracy, even with digital images with a high complexity.
机译:免疫组织化学染色的核标记物的手动定量仍是费力和主观的,并且用于数字图像分析的计算机系统的使用尚未解决核聚类的问题。在这项研究中,我们设计了一种新的自动程序,用于量化具有可变聚类复杂性的各种免疫组织化学核标记。此过程由两个组合的宏组成。第一个是使用商业软件开发的,可以使用包括遮罩过程在内的颜色和形态分割来分析数字图像。用第一个宏提取的所有信息都将自动导出到Excel数据表中,在该数据表中,由四种不同算法组成的第二个宏分析了所有信息,并为每个图像计算了确定的正核数。分析了118个具有不同聚类复杂度级别的图像,并将其与训练有素的观察者获得的手动定量进行了比较。统计分析表明,该方法具有很高的可靠性(类内相关系数> 0.950),并且两种方法之间没有显着差异。 Bland–Altman图和Kaplan–Meier曲线表明,两种方法的结果在所分析图像的90%左右是一致的。总之,这种新的自动化过程是一种客观,快速且可重现的方法,即使对于具有高复杂度的数字图像,也具有极好的准确性。

著录项

  • 来源
    《Histochemistry and Cell Biology》 |2008年第3期|379-387|共9页
  • 作者单位

    Department of Pathology Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Pathology Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Pathology Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Pathology Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Pathology Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Pathology Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Pathology Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Informatics Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Informatics Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Informatics Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

    Department of Pathology Hospital de Tortosa Verge de la Cinta C/Esplanetes n° 14 Tortosa 43500 Tarragona Spain;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Quantification; Nuclei; Image; Immunohistochemistry; Algorithm;

    机译:定量;核;图像;免疫组织化学;算法;

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