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免疫组织化学图像的自动化分析可识别癌症的候选定位生物标志物。

Automated analysis of immunohistochemistry images identifies candidate location biomarkers for cancers.

作者信息

Kumar Aparna, Rao Arvind, Bhavani Santosh, Newberg Justin Y, Murphy Robert F

机构信息

Lane Center for Computational Biology.

Center for Bioimage Informatics, Department of Biomedical Engineering.

出版信息

Proc Natl Acad Sci U S A. 2014 Dec 23;111(51):18249-54. doi: 10.1073/pnas.1415120112. Epub 2014 Dec 8.

Abstract

Molecular biomarkers are changes measured in biological samples that reflect disease states. Such markers can help clinicians identify types of cancer or stages of progression, and they can guide in tailoring specific therapies. Many efforts to identify biomarkers consider genes that mutate between normal and cancerous tissues or changes in protein or RNA expression levels. Here we define location biomarkers, proteins that undergo changes in subcellular location that are indicative of disease. To discover such biomarkers, we have developed an automated pipeline to compare the subcellular location of proteins between two sets of immunohistochemistry images. We used the pipeline to compare images of healthy and tumor tissue from the Human Protein Atlas, ranking hundreds of proteins in breast, liver, prostate, and bladder based on how much their location was estimated to have changed. The performance of the system was evaluated by determining whether proteins previously known to change location in tumors were ranked highly. We present a number of candidate location biomarkers for each tissue, and identify biochemical pathways that are enriched in proteins that change location. The analysis technology is anticipated to be useful not only for discovering new location biomarkers but also for enabling automated analysis of biomarker distributions as an aid to determining diagnosis.

摘要

分子生物标志物是在生物样本中检测到的反映疾病状态的变化。这类标志物可帮助临床医生识别癌症类型或疾病进展阶段,并能指导制定特定的治疗方案。许多识别生物标志物的研究都聚焦于正常组织与癌组织之间发生突变的基因,或蛋白质及RNA表达水平的变化。在此,我们定义了定位生物标志物,即那些亚细胞定位发生变化且指示疾病的蛋白质。为了发现这类生物标志物,我们开发了一种自动化流程,用于比较两组免疫组织化学图像中蛋白质的亚细胞定位。我们使用该流程比较了人类蛋白质图谱中健康组织和肿瘤组织的图像,根据蛋白质定位的估计变化程度对乳腺、肝脏、前列腺和膀胱中的数百种蛋白质进行了排名。通过判断先前已知在肿瘤中发生定位变化的蛋白质是否排名靠前,对该系统的性能进行了评估。我们为每个组织提供了一些候选定位生物标志物,并确定了在发生定位变化的蛋白质中富集的生化途径。预计该分析技术不仅有助于发现新的定位生物标志物,还能实现生物标志物分布的自动化分析,辅助疾病诊断。

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