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Towards Automatic Protein Co-Expression Quantification in Immunohistochemical TMA Slides

机译:在免疫组化TMA载玻片中朝向自动蛋白质共表达量化

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摘要

Immunohistochemical (IHC) analysis of tissue biopsies is currently used for clinical screening of solid cancers to assess protein expression. The large amount of image data produced from these tissue samples requires specialized computational pathology methods to perform integrative analysis. Even though proteins are traditionally studied independently, the study of protein co-expression may offer new insights towards patients' clinical and therapeutic decisions. To explore protein co-expression, we constructed a modular image analysis pipeline to spatially align tissue microarray (TMA) image slides, evaluate alignment quality, define tumor regions, and ultimately quantify protein expression, before and after tumor segmentation. The pipeline was built with open-source tools that can manage gigapixel slides. To evaluate the consensus between pathologist and computer, we characterized a cohort of 142 gastric cancer (GC) cases regarding the extent of E-cadherin and CD44v6 expression. We performed IHC analysis in consecutive TMA slides and compared the automated quantification with the pathologists' manual assessment. Our results show that automated quantification within tumor regions improves agreement with the pathologists' classification. A co-expression map was created to identify the cores co-expressing both proteins. The proposed pipeline provides not only computational tools forwarding current pathology practices to explore co-expression, but also a framework for merging data and transferring information in learning-based approaches to pathology.
机译:免疫组织化学(IHC)组织活检的分析目前用于固体癌症的临床筛查以评估蛋白质表达。由这些组织样本产生的大量图像数据需要专门的计算病理方法来执行整合分析。尽管传统上蛋白质独立研究,但蛋白质共同表达的研究可能对患者的临床和治疗决策提供新的见解。为了探索蛋白质共表达,我们构建了模块化图像分析管道,在空间对齐组织微阵列(TMA)图像滑动,评估对准质量,定义肿瘤区域,并最终定量蛋白表达,肿瘤分割前后。管道采用开源工具构建,可管理千锥幻灯片。为了评估病理学家和计算机之间的共识,我们表征了关于E-Cadherin和CD44V6表达的程度的142例胃癌(GC)病例。我们在连续TMA幻灯片中进行了IHC分析,并将自动化量化与病理学家手动评估进行了比较。我们的研究结果表明,肿瘤区域内的自动化量化会改善与病理学家分类的一致性。创建一个共表达图以识别共同表达两种蛋白质的核心。该提议的管道不仅提供了计算工具转发当前的病理学实践来探索共同表达,还提供了一种合并数据和将信息转移到基于学习的病理方法的框架的框架。

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    Uppsala Univ Dept Informat Technol S-75236 Uppsala Sweden|Uppsala Univ SciLifeLab S-75236 Uppsala Sweden;

    Univ Porto I3S Inst Invest & Inovacao Saude P-4099002 Porto Portugal|Univ Porto Inst Mol Pathol & Immunol IPATIMUP P-4099002 Porto Portugal;

    Univ Porto I3S Inst Invest & Inovacao Saude P-4099002 Porto Portugal|Polytech Inst Coimbra Dept Biomed Lab Sci P-3045093 Coimbra Portugal;

    Univ Porto I3S Inst Invest & Inovacao Saude Inst Mol Pathol & Immunol IPATIMUP Fac Sci P-4099002 Porto Portugal|Univ Porto Fac Med P-4099002 Porto Portugal;

    Univ Porto I3S Inst Invest & Inovacao Saude Inst Mol Pathol & Immunol IPATIMUP Fac Sci P-4099002 Porto Portugal|Univ Porto Fac Med Dept Pathol P-4099002 Porto Portugal;

    Univ Porto Fac Med P-4099002 Porto Portugal|Univ Porto I3S Inst Vestigacao & Inovacao Saude Inst Mol Pathol & Immunol IPATIMUP P-4099002 Porto Portugal;

    Univ Porto Fac Med P-4099002 Porto Portugal|Univ Porto I3S Inst Vestigacao & Inovacao Saude Inst Mol Pathol & Immunol IPATIMUP P-4099002 Porto Portugal;

    Uppsala Univ Dept Informat Technol S-75236 Uppsala Sweden|Uppsala Univ SciLifeLab S-75236 Uppsala Sweden;

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

    Co-expression; computational pathology; gastric cancer; image analysis; immunohistochemistry; protein; registration;

    机译:共表达;计算病理;胃癌;图像分析;免疫组织化学;蛋白质;注册;

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