Garg Shankey, Singh Pradeep
IEEE/ACM Trans Comput Biol Bioinform. 2023 Mar-Apr;20(2):1529-1539. doi: 10.1109/TCBB.2022.3174091. Epub 2023 Apr 3.
Automated classification of breast cancer can often save lives, as manual detection is usually time-consuming & expensive. Since the last decade, deep learning techniques have been most widely used for the automatic classification of breast cancer using histopathology images. This paper has performed the binary and multi-class classification of breast cancer using a transfer learning-based ensemble model. To analyze the correctness and reliability of the proposed model, we have used an imbalance IDC dataset, an imbalance BreakHis dataset in the binary class scenario, and a balanced BACH dataset for the multi-class classification. A lightweight shallow CNN model with batch normalization technology to accelerate convergence is aggregated with lightweight MobileNetV2 to improve learning and adaptability. The aggregation output is fed into a multilayer perceptron to complete the final classification task. The experimental study on all three datasets was performed and compared with the recent works. We have fine-tuned three different pre-trained models (ResNet50, InceptionV4, and MobilNetV2) and compared it with the proposed lightweight ensemble model in terms of execution time, number of parameters, model size, etc. In both the evaluation phases, it is seen that our model outperforms in all three datasets.
乳腺癌的自动分类通常可以挽救生命,因为人工检测通常既耗时又昂贵。自上一个十年以来,深度学习技术已最广泛地用于利用组织病理学图像对乳腺癌进行自动分类。本文使用基于迁移学习的集成模型对乳腺癌进行了二分类和多分类。为了分析所提出模型的正确性和可靠性,我们在二分类场景中使用了不平衡的IDC数据集、不平衡的BreakHis数据集,并在多分类中使用了平衡的BACH数据集。一个采用批量归一化技术以加速收敛的轻量级浅层卷积神经网络模型与轻量级的MobileNetV2聚合,以提高学习能力和适应性。聚合输出被输入到一个多层感知器中以完成最终的分类任务。对所有三个数据集进行了实验研究,并与近期的研究成果进行了比较。我们对三个不同的预训练模型(ResNet50、InceptionV4和MobilNetV2)进行了微调,并在执行时间、参数数量、模型大小等方面将其与所提出的轻量级集成模型进行了比较。在两个评估阶段都可以看到,我们的模型在所有三个数据集中都表现更优。