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Classification of Hematoxylin and Eosin-Stained Breast Cancer Histology Microscopy Images Using Transfer Learning with EfficientNets

机译:使用EfficientNets的迁移学习对苏木精和曙红染色的乳腺癌组织学显微镜图像进行分类

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摘要

Breast cancer is a fatal disease and is a leading cause of death in women worldwide. The process of diagnosis based on biopsy tissue is nontrivial, time-consuming, and prone to human error, and there may be conflict about the final diagnosis due to interobserver variability. Computer-aided diagnosis systems have been designed and implemented to combat these issues. These systems contribute significantly to increasing the efficiency and accuracy and reducing the cost of diagnosis. Moreover, these systems must perform better so that their determined diagnosis can be more reliable. This research investigates the application of the Effi-cientNet architecture for the classification of hematoxylin and eosin-stained breast cancer histology images provided by the ICIAR2018 dataset. Specifically, seven EfficientNets were fine-tuned and evaluated on their ability to classify images into four classes: normal, benign, in situ carcinoma, and invasive carcinoma. Moreover, two standard stain normalization techniques, Reinhard and Macenko, were observed to measure the impact of stain normalization on performance. The outcome of this approach reveals that the EfficientNet-B2 model yielded an accuracy and sensitivity of 98.33 using Reinhard stain normalization method on the training images and an accuracy and sensitivity of 96.67 using the Macenko stain normalization method. These satisfactory results indicate that transferring generic features from natural images to medical images through fine-tuning on EfficientNets can achieve satisfactory results.
机译:乳腺癌是一种致命的疾病,是全世界女性死亡的主要原因。基于活检组织的诊断过程是非平凡的、耗时的,并且容易出现人为错误,并且由于观察者之间的差异,最终诊断可能存在冲突。计算机辅助诊断系统已经设计和实施,以解决这些问题。这些系统为提高效率和准确性以及降低诊断成本做出了重大贡献。此外,这些系统必须表现得更好,以便其确定的诊断更加可靠。本研究探讨了 Effi-cientNet 架构在 ICIAR2018 数据集提供的苏木精和伊红染色乳腺癌组织学图像分类中的应用。具体来说,对七个 EfficientNet 进行了微调和评估,以评估它们将图像分为四类的能力:正常、良性、原位癌和浸润性癌。此外,观察到两种标准染色归一化技术 Reinhard 和 Macenko 来衡量污渍归一化对性能的影响。结果表明,使用Reinhard染色归一化方法,EfficientNet-B2模型在训练图像上的准确率为98.33%,使用Macenko染色归一化方法的准确率为96.67%。这些令人满意的结果表明,通过在EfficientNets上进行微调,将通用特征从自然图像转移到医学图像可以取得令人满意的结果。

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