Evaluation of Multi-Scale Multiple Instance Learning to Improve Thyroid Cancer Classification

M. Tschuchnig, Philipp Grubmüller, Lea Maria Stangassinger, Christina Kreutzer, S. Couillard-Després, G. Oostingh, A. Hittmair, M. Gadermayr
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引用次数: 3

Abstract

Thyroid cancer is currently the fifth most common malignancy diagnosed in women. Since differentiation of cancer sub-types is important for treatment and current, manual methods are time consuming and subjective, automatic computer-aided differentiation of cancer types is crucial. Manual differentiation of thyroid cancer is based on tissue sections, analysed by pathologists using histological features. Due to the enormous size of gigapixel whole slide images, holistic classification u sing deep learning methods is not feasible. Patch based multiple instance learning approaches, combined with aggre-gations such as bag-of-words, is a common approach. This work's contribution is to extend a patch based state-of-the-art method by generating and combining feature vectors of three different patch resolutions and analysing three distinct ways of combining them. The results showed improvements in one of the three multi-scale approaches, while the others led to decreased scores. This provides motivation for analysis and discussion of the individual approaches.
多尺度多实例学习改进甲状腺癌分类的评价
甲状腺癌是目前女性第五大常见恶性肿瘤。由于癌症亚型的鉴别对治疗很重要,目前,人工方法耗时且主观,因此计算机辅助的癌症类型自动鉴别至关重要。甲状腺癌的人工鉴别是基于组织切片,由病理学家利用组织学特征进行分析。由于十亿像素整张幻灯片图像的巨大尺寸,使用深度学习方法进行整体分类是不可行的。基于Patch的多实例学习方法,结合单词袋等聚合方法,是一种常见的方法。这项工作的贡献是通过生成和组合三种不同补丁分辨率的特征向量并分析三种不同的组合方式来扩展基于最先进的补丁方法。结果显示,三种多尺度方法中的一种方法有所改善,而其他方法则导致得分下降。这为分析和讨论各个方法提供了动力。
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