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本文引用的文献

1
A fusion-based approach for uterine cervical cancer histology image classification.基于融合的子宫颈癌组织学图像分类方法。
Comput Med Imaging Graph. 2013 Oct-Dec;37(7-8):475-87. doi: 10.1016/j.compmedimag.2013.08.001. Epub 2013 Sep 1.
2
Automatic nuclei segmentation in H&E stained breast cancer histopathology images.H&E 染色乳腺癌组织病理学图像中的自动细胞核分割。
PLoS One. 2013 Jul 29;8(7):e70221. doi: 10.1371/journal.pone.0070221. Print 2013.
3
Molecular mapping of high-grade cervical intraepithelial neoplasia shows etiological dominance of HPV16.高级别宫颈上皮内瘤变的分子图谱显示 HPV16 的病因优势。
Int J Cancer. 2012 Sep 15;131(6):E946-53. doi: 10.1002/ijc.27532. Epub 2012 Apr 16.
4
Evaluation of colposcopically directed cervical biopsies yielding a histologic diagnosis of CIN 1,2.对经阴道镜引导下宫颈活检组织进行评估,这些活检组织的组织学诊断为CIN 1、2级。
J Low Genit Tract Dis. 2002 Apr;6(2):80-3. doi: 10.1097/00128360-200204000-00003.
5
Subvisual chromatin changes in cervical epithelium measured by texture image analysis and correlated with HPV.通过纹理图像分析测量宫颈上皮中视觉下的染色质变化,并与HPV相关联。
Gynecol Oncol. 2005 Dec;99(3 Suppl 1):S16-23. doi: 10.1016/j.ygyno.2005.07.037. Epub 2005 Sep 26.
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An automated machine vision system for the histological grading of cervical intraepithelial neoplasia (CIN).一种用于宫颈上皮内瘤变(CIN)组织学分级的自动化机器视觉系统。
J Pathol. 2000 Nov;192(3):351-62. doi: 10.1002/1096-9896(2000)9999:9999<::AID-PATH708>3.0.CO;2-I.
7
Inter- and intra-observer variation in the histopathological reporting of cervical squamous intraepithelial lesions using a modified Bethesda grading system.使用改良的贝塞斯达分级系统对宫颈鳞状上皮内病变进行组织病理学报告时观察者间和观察者内的差异。
Br J Obstet Gynaecol. 1998 Feb;105(2):206-10. doi: 10.1111/j.1471-0528.1998.tb10054.x.
8
Reporting cervical intra-epithelial neoplasia (CIN): intra- and interpathologist variation and factors associated with disagreement.宫颈上皮内瘤变(CIN)的报告:病理学家内部和之间的差异以及与分歧相关的因素。
Histopathology. 1990 Apr;16(4):371-6. doi: 10.1111/j.1365-2559.1990.tb01141.x.

基于细胞核特征的子宫颈癌组织学图像分析及融合分类法

Nuclei-Based Features for Uterine Cervical Cancer Histology Image Analysis With Fusion-Based Classification.

作者信息

Guo Peng, Banerjee Koyel, Joe Stanley R, Long Rodney, Antani Sameer, Thoma George, Zuna Rosemary, Frazier Shelliane R, Moss Randy H, Stoecker William V

出版信息

IEEE J Biomed Health Inform. 2016 Nov;20(6):1595-1607. doi: 10.1109/JBHI.2015.2483318. Epub 2015 Oct 26.

DOI:10.1109/JBHI.2015.2483318
PMID:26529792
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6760851/
Abstract

Cervical cancer, which has been affecting women worldwide as the second most common cancer, can be cured if detected early and treated well. Routinely, expert pathologists visually examine histology slides for cervix tissue abnormality assessment. In previous research, we investigated an automated, localized, fusion-based approach for classifying squamous epithelium into Normal, CIN1, CIN2, and CIN3 grades of cervical intraepithelial neoplasia (CIN) based on image analysis of 61 digitized histology images. This paper introduces novel acellular and atypical cell concentration features computed from vertical segment partitions of the epithelium region within digitized histology images to quantize the relative increase in nuclei numbers as the CIN grade increases. Based on the CIN grade assessments from two expert pathologists, image-based epithelium classification is investigated with voting fusion of vertical segments using support vector machine and linear discriminant analysis approaches. Leave-one-out is used for the training and testing for CIN classification, achieving an exact grade labeling accuracy as high as 88.5%.

摘要

宫颈癌是全球影响女性的第二大常见癌症,若能早期发现并得到良好治疗是可以治愈的。通常,专业病理学家会通过肉眼检查组织学切片来评估宫颈组织异常情况。在之前的研究中,我们基于对61张数字化组织学图像的分析,研究了一种基于自动化、局部化、融合的方法,将鳞状上皮分类为宫颈上皮内瘤变(CIN)的正常、CIN1、CIN2和CIN3等级。本文介绍了从数字化组织学图像上皮区域的垂直段分区计算出的新型无细胞和非典型细胞浓度特征,以量化随着CIN等级增加细胞核数量的相对增加。基于两位专家病理学家的CIN等级评估,使用支持向量机和线性判别分析方法,通过垂直段的投票融合来研究基于图像的上皮分类。留一法用于CIN分类的训练和测试,实现了高达88.5%的精确等级标注准确率。