A hybrid ensemble deep learning approach for reliable breast cancer detection

M. Elshafey, T. Ghoniemy
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引用次数: 2

Abstract

Article history Received January 18, 2021 Revised March 29, 2021 Accepted April 2, 2021 Available online April 20, 2021 Among the cancer diseases, breast cancer is considered one of the most prevalent threats requiring early detection for a higher recovery rate. Meanwhile, the manual evaluation of malignant tissue regions in histopathology images is a critical and challenging task. Nowadays, deep learning becomes a leading technology for automatic tumor feature extraction and classification as malignant or benign. This paper presents a proposed hybrid deep learning-based approach, for reliable breast cancer detection, in three consecutive stages: 1) fine-tuning the pre-trained Xception-based classification model, 2) merging the extracted features with the predictions of a two-layer stacked LSTM-based regression model, and finally, 3) applying the support vector machine, in the classification phase, to the merged features. For the three stages of the proposed approach, training and testing phases are performed on the BreakHis dataset with nine adopted different augmentation techniques to ensure generalization of the proposed approach. A comprehensive performance evaluation of the proposed approach, with diverse metrics, shows that employing the LSTM-based regression model improves accuracy and precision metrics of the fine-tuned Xception-based model by 10.65% and 11.6%, respectively. Additionally, as a classifier, implementing the support vector machine further boosts the model by 3.43% and 5.22% for both metrics, respectively. Experimental results exploit the proposed approach's efficiency with outstanding reliability in comparison with the recent stateof-the-art approaches.
一种用于可靠乳腺癌检测的混合集成深度学习方法
文章历史2021年1月18日收到2021年3月29日修订2021年4月2日接受2021年4月2日在线2021年4月20日在癌症疾病中,乳腺癌被认为是最普遍的威胁之一,需要早期发现以获得更高的治愈率。同时,组织病理图像中恶性组织区域的人工评估是一项关键而具有挑战性的任务。目前,深度学习已成为肿瘤特征自动提取和恶性或良性分类的领先技术。本文提出了一种基于深度学习的混合乳腺癌检测方法,该方法分为三个阶段:1)对预训练的基于exception的分类模型进行微调,2)将提取的特征与基于两层堆叠lstm的回归模型的预测合并,最后,3)在分类阶段对合并的特征应用支持向量机。对于所提出方法的三个阶段,在BreakHis数据集上进行了训练和测试阶段,采用了九种不同的增强技术来确保所提出方法的泛化。采用多种指标对所提方法进行的综合性能评估表明,采用基于lstm的回归模型将基于exception的精细模型的准确度和精度指标分别提高了10.65%和11.6%。此外,作为分类器,实现支持向量机对两个指标的模型分别提高了3.43%和5.22%。实验结果表明,与目前的先进方法相比,该方法效率高,可靠性好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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