Childhood Medulloblastoma Classification Using EfficientNets

C. Bhuma, Ramanjaneyulu Kongara
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引用次数: 2

Abstract

In this work, a deep learning methodology for accurate classification of histological images of the patients suffering from childhood medulloblastoma is proposed. Pre trained EfficientNets trained on the ImageNet dataset are considered in this work. Features are extracted from the average pooling layer of EfficienNets and are given to an error correcting output code classifier. Ensemble prediction from the selected pre-trained EfficientNets is employed. For the multi class classification, the proposed approach is able to predict with a mean classification accuracy of 98.78% for 10x level images and 95.67% for the 100x level images for an 80% train and 20% test split. The peak classification accuracy is 100% for both binary and multiclass case at cell level and architectural level. For the binary classification with same split, 100% mean classification accuracy is achieved even without ensemble prediction. The results are compared with an existing work on a similar dataset and the significant improvement is demonstrated with the experimental simulations.
儿童髓母细胞瘤的高效分类
在这项工作中,提出了一种用于准确分类儿童髓母细胞瘤患者组织学图像的深度学习方法。在这项工作中考虑了在ImageNet数据集上训练的预训练的高效率网络。从EfficienNets的平均池化层中提取特征,并给出纠错输出码分类器。使用来自选定的预训练的高效率网络的集合预测。对于多类分类,在训练分割率为80%、测试分割率为20%的情况下,该方法对10倍水平图像的平均分类准确率为98.78%,对100倍水平图像的平均分类准确率为95.67%。在单元级别和体系结构级别上,二元和多类情况的最高分类准确率均为100%。对于相同分割的二分类,即使不进行集合预测,也能达到100%的平均分类准确率。将结果与已有的类似数据集上的工作进行了比较,并通过实验模拟证明了显著的改进。
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