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Clinically-inspired automatic classification of ovarian carcinoma subtypes

机译:临床启发性卵巢癌亚型的自动分类

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Context&58; It has been shown that ovarian carcinoma subtypes are distinct pathologic entities with differing prognostic and therapeutic implications. Histotyping by pathologists has good reproducibility, but occasional cases are challenging and require immunohistochemistry and subspecialty consultation. Motivated by the need for more accurate and reproducible diagnoses and to facilitate pathologists′ workflow, we propose an automatic framework for ovarian carcinoma classification. Materials and Methods&58; Our method is inspired by pathologists′ workflow. We analyse imaged tissues at two magnification levels and extract clinically-inspired color, texture, and segmentation-based shape descriptors using image-processing methods. We propose a carefully designed machine learning technique composed of four modules&58; A dissimilarity matrix, dimensionality reduction, feature selection and a support vector machine classifier to separate the five ovarian carcinoma subtypes using the extracted features. Results&58; This paper presents the details of our implementation and its validation on a clinically derived dataset of eighty high-resolution histopathology images. The proposed system achieved a multiclass classification accuracy of 95.0% when classifying unseen tissues. Assessment of the classifier′s confusion (confusion matrix) between the five different ovarian carcinoma subtypes agrees with clinician′s confusion and reflects the difficulty in diagnosing endometrioid and serous carcinomas. Conclusions&58; Our results from this first study highlight the difficulty of ovarian carcinoma diagnosis which originate from the intrinsic class-imbalance observed among subtypes and suggest that the automatic analysis of ovarian carcinoma subtypes could be valuable to clinician′s diagnostic procedure by providing a second opinion.
机译:上下文&58;已经表明,卵巢癌亚型是不同的病理学实体,具有不同的预后和治疗意义。病理学家进行的组织学分型具有良好的可重复性,但偶发病例具有挑战性,需要进行免疫组织化学和专科咨询。出于对更准确和可再现的诊断的需求以及促进病理学家工作流程的推动,我们提出了一种用于卵巢癌分类的自动框架。材料与方法&58;我们的方法受到病理学家工作流程的启发。我们在两个放大倍率水平上分析成像的组织,并使用图像处理方法提取临床启发的颜色,纹理和基于分割的形状描述符。我们提出了一种精心设计的机器学习技术,该技术由四个模块组成; 58;差异矩阵,降维,特征选择和支持向量机分类器,可使用提取的特征来分离五个卵巢癌亚型。结果&58;本文介绍了我们的实施方法及其在80幅高分辨率组织病理学图像的临床衍生数据集上的验证的细节。当对看不见的组织进行分类时,提出的系统实现了95.0%的多分类精度。对五种不同的卵巢癌亚型之间分类器的混淆(混淆矩阵)的评估与临床医生的混淆一致,并反映出诊断子宫内膜样和浆液性癌的困难。结论&58;我们从这项第一项研究得出的结果突出了卵巢癌诊断的困难,其源于亚型之间观察到的内在类别失衡,并建议通过提供第二种意见对卵巢癌亚型进行自动分析对于临床医生的诊断程序可能有价值。

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