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Multi-instance Multi-label Learning for Multi-class Classification of Whole Slide Breast Histopathology Images

机译:多实例多标签学习对滑膜乳腺组织病理学图像进行多类分类

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摘要

Digital pathology has entered a new era with the availability of whole slide scanners that create high-resolution images of full biopsy slides. Consequently, the uncertainty regarding the correspondence between the image areas and the diagnostic labels assigned by pathologists at the slide level, and the need for identifying regions that belong to multiple classes with different clinical significance have emerged as two new challenges. However, generalizability of the state-of-the-art algorithms, whose accuracies were reported on carefully selected regions of interest (ROI) for the binary benign versus cancer classification, to these multi-class learning and localization problems is currently unknown. This paper presents our potential solutions to these challenges by exploiting the viewing records of pathologists and their slide-level annotations in weakly supervised learning scenarios. First, we extract candidate ROIs from the logs of pathologists’ image screenings based on different behaviors, such as zooming, panning, and fixation. Then, we model each slide with a bag of instances represented by the candidate ROIs and a set of class labels extracted from the pathology forms. Finally, we use four different multi-instance multi-label learning algorithms for both slide-level and ROI-level predictions of diagnostic categories in whole slide breast histopathology images. Slide-level evaluation using 5-class and 14-class settings showed average precision values up to 81% and 69%, respectively, under different weakly-labeled learning scenarios. ROI-level predictions showed that the classifier could successfully perform multi-class localization and classification within whole slide images that were selected to include the full range of challenging diagnostic categories.
机译:数字病理学已经进入了一个新时代,整个切片机扫描仪可提供完整活检切片的高分辨率图像。因此,关于图像区域与病理学家在载玻片水平上分配的诊断标签之间的对应关系的不确定性以及对识别属于具有不同临床意义的多个类别的区域的需求已成为两个新的挑战。但是,目前尚不知道最新算法的可推广性,这些准确性已在针对二元良性与癌症分类的精心选择的感兴趣区域(ROI)上进行了报道,目前尚无法将其推广到这些多类学习和定位问题。本文通过在弱监督学习场景中利用病理学家的观察记录及其幻灯片级别的注释,提出了针对这些挑战的潜在解决方案。首先,我们根据缩放,平移和注视等不同行为,从病理学家的图像筛查日志中提取候选ROI。然后,我们使用由候选ROI代表的实例包和从病理形式中提取的一组类别标签对每个幻灯片进行建模。最后,我们使用四种不同的多实例多标签学习算法,对整个幻灯片乳房组织病理学图像中的诊断类别进行幻灯片级别和ROI级别的预测。使用5级和14级设置的幻灯片级别评估显示,在不同的弱标签学习场景下,平均精度值分别高达81%和69%。投资回报率水平的预测表明,分类器可以成功地对整个幻灯片图像执行多类定位和分类,而整个幻灯片图像被选择为包括所有具有挑战性的诊断类别。

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