用随机抽样和剩余网络数据对乳腺癌组病理学进行分类

W. Setiawan
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引用次数: 0

摘要

分类之间的数据不平衡是图像分类的问题之一。每个类中的数据不相等,在分类结果不理想的情况下产生较大的差异。理想情况下,每个类中的数据是相等的,或者略有不同。本文讨论了乳腺癌组织病理学影像的分类。数据由8类不平衡数据组成。平衡每一类数据的方法使用随机重采样,这种方法只适用于训练数据。BreakHist使用的数据,放大倍数为40倍、100倍、200倍和400倍。分类使用残留网络(ResNet) 18和50。在放大倍数为400倍的图像上获得最佳效果。使用ResNet18的分类结果平均正确率为79.82%,平均精密度为71.39%,平均查全率为82.37%。同时,使用ResNet50的平均正确率为81.67%,平均精密度为78.41%,平均召回率为82.91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Klasifikasi Citra Histopatologi Kanker Payudara menggunakan Data Resampling Random dan Residual Network
Data imbalance between classes is one of the problems on image classification. The data in each class is not equal and has a relatively large difference generated in less than optimal classification results. Ideally, the data in each class is equal or have a slight difference. This article discusses the classification of the histopathology breast cancer image. The data consist of  8 classes with unbalanced data. The method for balancing the data in each class uses random resampling which is applied to training data only. The data used from BreakHist with magnifications of 40x, 100x, 200x, and 400x . The classification uses Residual Network (ResNet) 18 and 50. The best results are obtained on images with a magnification of 400x. Classification results using ResNet18 has an average accuracy of 79.82%, an average precision of 71.39%, and an average recall of 82.37%. Meanwhile using ResNet50 showed an average accuracy of 81.67%, average precision of 78.41%, and an average recall of 82.91%.
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