Automated Region-based Prostate Cancer Cell Nuclei Localization. Part of a Prognostic Modality Tool for Prostate Cancer Patients.

IF 0.1 4区 医学 Q4 Medicine Analytical and Quantitative Cytopathology and Histopathology Pub Date : 2016-04-01
Nilgoon Zarei, Amir Bakhtiari, Jagoda Korbelik, Anita Carraro, Mira Keyes, Martial Guillaud, Calum MacAulay
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引用次数: 0

Abstract

Background: Prostate cancer is a disease of disrupted cell genomes. Quantification of DNA from cytology preparations can yield prognostic information about tissue biological behaviors; however, this process is very labor-intensive to perform. Quantitative digital pathology can measure the structural chromatin changes associated with neoplasia and can enable prognostic and predictive assays based on imaging of sectioned prostate tissue.

Objective: To design an automated system to recognize and localize cell nuclei in images of stained sectioned tissue (first step in enabling quantitative digital pathology).

Study design: Images of Feulgen-thionin-stained prostate cancer tissue microarray constructed from the surgical specimens of 33 prostate cancer patients were acquired for this study. We implemented a new image segmentation technique to overcome tissue complexity, cell clusters, background noise, image and tissue inhomogeneities, and other imaging issues that introduce uncertainties into the segmentation method and developed a fully automated system to localized prostate cell nuclei.

Results: We applied our algorithm on our dataset and obtained a 96.6% true-positive rate and a 12% false-positive rate.

Conclusion: In this paper we present a new method to automatically localize thionin-stained prostate cancer cells, enabling the extraction of various nuclear and cell sociology features with high precision.

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基于区域的前列腺癌细胞核自动定位。前列腺癌患者预后模式工具的一部分。
背景:前列腺癌是一种细胞基因组被破坏的疾病。细胞学制剂中DNA的定量可以提供有关组织生物学行为的预后信息;然而,这个过程是非常劳动密集型的。定量数字病理学可以测量与肿瘤相关的结构染色质变化,并且可以基于前列腺组织切片的成像进行预后和预测分析。目的:设计一种自动识别和定位染色组织切片图像中的细胞核的系统(实现定量数字病理学的第一步)。研究设计:本研究获取33例前列腺癌患者手术标本构建的feulgen -thion染色前列腺癌组织微阵列图像。我们实现了一种新的图像分割技术,克服了组织复杂性、细胞簇、背景噪声、图像和组织不均匀性以及其他成像问题,这些问题给分割方法带来了不确定性,并开发了一种全自动定位前列腺细胞核的系统。结果:我们将算法应用于我们的数据集,获得了96.6%的真阳性率和12%的假阳性率。结论:本文提出了一种自动定位亚硫蛋白染色前列腺癌细胞的新方法,可以高精度地提取各种核和细胞社会学特征。
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期刊介绍: AQCH is an Official Periodical of The International Academy of Cytology and the Italian Society of Urologic Pathology.
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Automated Region-based Prostate Cancer Cell Nuclei Localization. Part of a Prognostic Modality Tool for Prostate Cancer Patients. Distribution and Developmental Changes of Neuropeptide Y and Its Y1 Receptor-like Immunoreactive Cells in the Duck Thymus. Immunohistochemical Expression and Clinical Significance of Wnt11 and BCL2A1 in Complete Moles. Malignant Bilateral Basifrontal Solitary Fibrous Tumor. A Case Report. Gentian Violet Used as an Epithelial Cell Monolayer Stain in the Scratch Wound Healing Assay.
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