融合在乳腺癌组织学分类中的应用。

Juan Vizcarra, Ryan Place, Li Tong, David Gutman, May D Wang
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引用次数: 19

摘要

乳腺癌是一种致命的疾病,影响着全世界数百万妇女。2018年图像分析与识别国际会议提出了乳腺癌组织学(ICIAR2018 BACH)图像数据挑战,要求计算机工具协助病理学家和医生进行乳腺癌亚型的临床诊断。使用BACH数据集,我们开发了一个图像分类管道,该管道结合了浅学习器(支持向量机)和深度学习器(卷积神经网络)。浅层学习器和深度学习器分别达到了79%和81%的中等准确率。当通过融合算法集成时,该系统以92%的最高准确率优于任何单个学习者。这种融合为改善临床设计支持提供了巨大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Fusion in Breast Cancer Histology Classification.

Fusion in Breast Cancer Histology Classification.

Fusion in Breast Cancer Histology Classification.

Fusion in Breast Cancer Histology Classification.

Breast cancer is a deadly disease that affects millions of women worldwide. The International Conference on Image Analysis and Recognition in 2018 presents the BreAst Cancer Histology (ICIAR2018 BACH) image data challenge that calls for computer tools to assist pathologists and doctors in the clinical diagnosis of breast cancer subtypes. Using the BACH dataset, we have developed an image classification pipeline that combines both a shallow learner (support vector machine) and a deep learner (convolutional neural network). The shallow learner and deep learners achieved moderate accuracies of 79% and 81% individually. When being integrated by fusion algorithms, the system outperformed any individual learner with the highest accuracy as 92%. The fusion presents big potential for improving clinical design support.

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