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前列腺癌组织学切片中共定位蛋白表达的自动化分析

Automated analysis of co-localized protein expression in histologic sections of prostate cancer.

作者信息

Tennill Thomas A, Gross Mitchell E, Frieboes Hermann B

机构信息

Department of Bioengineering, University of Louisville, Louisville, KY, United States of America.

Lawrence J. Elliston Institute for Transformational Medicine, University of Southern California, Los Angeles, CA, United States of America.

出版信息

PLoS One. 2017 May 26;12(5):e0178362. doi: 10.1371/journal.pone.0178362. eCollection 2017.

Abstract

An automated approach based on routinely-processed, whole-slide immunohistochemistry (IHC) was implemented to study co-localized protein expression in tissue samples. Expression of two markers was chosen to represent stromal (CD31) and epithelial (Ki-67) compartments in prostate cancer. IHC was performed on whole-slide sections representing low-, intermediate-, and high-grade disease from 15 patients. The automated workflow was developed using a training set of regions-of-interest in sequential tissue sections. Protein expression was studied on digital representations of IHC images across entire slides representing formalin-fixed paraffin embedded blocks. Using the training-set, the known association between Ki-67 and Gleason grade was confirmed. CD31 expression was more heterogeneous across samples and remained invariant with grade in this cohort. Interestingly, the Ki-67/CD31 ratio was significantly increased in high (Gleason ≥ 8) versus low/intermediate (Gleason ≤7) samples when assessed in the training-set and the whole-tissue block images. Further, the feasibility of the automated approach to process Tissue Microarray (TMA) samples in high throughput was evaluated. This work establishes an initial framework for automated analysis of co-localized protein expression and distribution in high-resolution digital microscopy images based on standard IHC techniques. Applied to a larger sample population, the approach may help to elucidate the biologic basis for the Gleason grade, which is the strongest, single factor distinguishing clinically aggressive from indolent prostate cancer.

摘要

实施了一种基于常规处理的全切片免疫组织化学(IHC)的自动化方法,以研究组织样本中共定位的蛋白质表达。选择两种标志物的表达来代表前列腺癌中的基质(CD31)和上皮(Ki-67)成分。对来自15名患者的代表低、中、高分级疾病的全切片进行了免疫组织化学检测。使用连续组织切片中的感兴趣区域训练集开发了自动化工作流程。在代表福尔马林固定石蜡包埋块的整个玻片的免疫组织化学图像的数字表示上研究蛋白质表达。使用训练集,证实了Ki-67与Gleason分级之间的已知关联。在该队列中,CD31表达在样本间更具异质性,并且与分级无关。有趣的是,在训练集和全组织块图像中评估时,高分级(Gleason≥8)样本与低/中分级(Gleason≤7)样本相比,Ki-67/CD31比值显著增加。此外,评估了自动化方法高通量处理组织微阵列(TMA)样本的可行性。这项工作建立了一个基于标准免疫组织化学技术对高分辨率数字显微镜图像中共定位蛋白质表达和分布进行自动化分析的初始框架。应用于更大的样本群体,该方法可能有助于阐明Gleason分级的生物学基础,Gleason分级是区分临床侵袭性前列腺癌和惰性前列腺癌的最强单一因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d5c5/5446169/b2222f2e430c/pone.0178362.g001.jpg

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