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Enhancements in localized classification for uterine cervical cancer digital histology image assessment

机译:子宫宫颈癌数字组织学图像评估的局部分类的增强

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Background&58; In previous research, we introduced an automated, localized, fusion-based approach for classifying uterine cervix squamous epithelium into Normal, CIN1, CIN2, and CIN3 grades of cervical intraepithelial neoplasia (CIN) based on digitized histology image analysis. As part of the CIN assessment process, acellular and atypical cell concentration features were computed from vertical segment partitions of the epithelium region to quantize the relative distribution of nuclei. Methods&58; Feature data was extracted from 610 individual segments from 61 images for epithelium classification into categories of Normal, CIN1, CIN2, and CIN3. The classification results were compared against CIN labels obtained from two pathologists who visually assessed abnormality in the digitized histology images. In this study, individual vertical segment CIN classification accuracy improvement is reported using the logistic regression classifier for an expanded data set of 118 histology images. Results&58; We analyzed the effects on classification using the same pathologist labels for training and testing versus using one pathologist labels for training and the other for testing. Based on a leave-one-out approach for classifier training and testing, exact grade CIN accuracies of 81.29% and 88.98% were achieved for individual vertical segment and epithelium whole-image classification, respectively. Conclusions&58; The Logistic and Random Tree classifiers outperformed the benchmark SVM and LDA classifiers from previous research. The Logistic Regression classifier yielded an improvement of 10.17% in CIN Exact grade classification results based on CIN labels for training-testing for the individual vertical segments and the whole image from the same single expert over the baseline approach using the reduced features. Overall, the CIN classification rates tended to be higher using the training-testing labels for the same expert than for training labels from one expert and testing labels from the other expert. The Exact class fusion- based CIN discrimination results obtained in this study are similar to the Exact class expert agreement rate.
机译:背景&58;在先前的研究中,我们引入了一种基于融合的自动化,局部化方法,根据数字化组织学图像分析,将子宫颈鳞状上皮分为正常,CIN1,CIN2和CIN3级宫颈上皮内瘤变(CIN)。作为CIN评估过程的一部分,从上皮区域的垂直片段分区中计算出非细胞和非典型细胞浓度特征,以量化细胞核的相对分布。方法&58;从61张图像的610个独立片段中提取特征数据,以将上皮分类为正常,CIN1,CIN2和CIN3。将分类结果与从两位病理学家那里获得的CIN标签进行比较,他们从视觉上评估了数字化组织学图像中的异常。在这项研究中,使用Logistic回归分类器报告了118个组织学图像的扩展数据集,从而提高了个人垂直段CIN分类的准确性。结果&58;我们使用相同的病理学家标签进行训练和测试,而不是使用一个病理学家标签进行训练而使用另一个病理学家标签来分析对分类的影响。基于一劳永逸的分类器训练和测试方法,单个垂直节段和上皮全图像分类的准确CIN准确度分别达到81.29%和88.98%。结论&58; Logistic和Random Tree分类器的性能优于先前研究中的基准SVM和LDA分类器。基于CIN标签的Logistic回归分类器对CIN精确等级的分类结果进行了改进,提高了10.17%,用于对单个垂直线段和整个图像的训练测试,这些人来自同一位专家,并且使用简化后的功能在基线基础上进行了测试。总体而言,对于同一位专家使用培训测试标签,其CIN分类率往往高于一位专家的培训标签和另一位专家的测试标签。在这项研究中获得的基于精确类融合的CIN鉴别结果与精确类专家同意率相似。

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