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Improving the Accuracy of Intrahepatic Cholangiocarcinoma Subtype Classification by Hidden Class Detection via Label Smoothing

机译:通过标签平滑通过隐藏类检测提高隐式胆管癌亚型分类的准确性

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Obtaining ground-truth labels for supervised training is a labor-intensive and time-consuming task. Owning to their large size, only slide-level labels or a handful of coarse annotations are usually provided for pathology images, which makes the training of the classifier challenging. In this study, we propose a conceptually simple, two-stage approach to classify small and large duct types in intrahepatic chalongio-carcinoma using only slide-level labels. Unlike conventional pathology image analysis methods employ multiple instance learning (MIL) applied to overcome the problem of the slide-level label, we introduce a novel label smoothing method to progressively refine the training labels to improve the classification accuracy. The main idea is that we introduce the hidden class, which is assumed to be mutually inclusive of all ground-truth classes and less confident for classification. By iteratively refining (i.e., smoothing) per-patch labels, we can extract and discard the hidden class from the training data. We demonstrate that the proposed label filtering scheme improves the classification accuracy by up to 30% compared to the baseline MIL method and 10% compared to the state-of-the-art noisy label cleaning method. In addition, we demonstrate the effectiveness of gene mutation prior information in the classification of two different duct types. The experimental results suggest that the proposed method may provide pathologists insight into the study of correlations between genetic and histologic subtypes.
机译:获得受监督培训的地面真理标签是一种劳动密集型和耗时的任务。拥有其大尺寸,只有滑动级标签或少量粗略注释通常用于病理图像,这使得分类器挑战的培训。在这项研究中,我们提出了一种概念上简单的两阶段方法,仅使用滑动级标签对肝内核心癌中的小型和大型管道类型进行分类。与传统的病理学图像分析方法不同,采用多实例学习(MIL)克服幻灯片级标签的问题,我们介绍了一种新颖的标签平滑方法,逐步改进训练标签以提高分类准确性。主要思想是我们介绍了隐藏的课程,这被认为是相互包容的所有地面真理课程和对分类的信心不太有信心。通过迭代炼油(即,平滑)每个补丁标签,我们可以从培训数据中提取和丢弃隐藏的类。我们证明,与基线MIL方法相比,所提出的标签过滤方案将分类精度提高至多30%,与最先进的嘈杂标签清洁方法相比,10%。此外,我们证明了基因突变在两种不同管道类型分类中的事先信息的有效性。实验结果表明,所提出的方法可以提供病理学家洞察遗传和组织学亚型之间的相关性研究。

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