A study on Deep Convolutional Neural Networks, Transfer Learning and Ensemble Model for Breast Cancer Detection

Md Taimur Ahad, Sumaya Mustofa, Faruk Ahmed, Yousuf Rayhan Emon, Aunirudra Dey Anu
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Abstract

In deep learning, transfer learning and ensemble models have shown promise in improving computer-aided disease diagnosis. However, applying the transfer learning and ensemble model is still relatively limited. Moreover, the ensemble model's development is ad-hoc, overlooks redundant layers, and suffers from imbalanced datasets and inadequate augmentation. Lastly, significant Deep Convolutional Neural Networks (D-CNNs) have been introduced to detect and classify breast cancer. Still, very few comparative studies were conducted to investigate the accuracy and efficiency of existing CNN architectures. Realising the gaps, this study compares the performance of D-CNN, which includes the original CNN, transfer learning, and an ensemble model, in detecting breast cancer. The comparison study of this paper consists of comparison using six CNN-based deep learning architectures (SE-ResNet152, MobileNetV2, VGG19, ResNet18, InceptionV3, and DenseNet-121), a transfer learning, and an ensemble model on breast cancer detection. Among the comparison of these models, the ensemble model provides the highest detection and classification accuracy of 99.94% for breast cancer detection and classification. However, this study also provides a negative result in the case of transfer learning, as the transfer learning did not increase the accuracy of the original SE-ResNet152, MobileNetV2, VGG19, ResNet18, InceptionV3, and DenseNet-121 model. The high accuracy in detecting and categorising breast cancer detection using CNN suggests that the CNN model is promising in breast cancer disease detection. This research is significant in biomedical engineering, computer-aided disease diagnosis, and ML-based disease detection.
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关于用于乳腺癌检测的深度卷积神经网络、迁移学习和集合模型的研究
在深度学习中,迁移学习和集合模型在改进计算机辅助疾病诊断方面已显示出前景。然而,迁移学习和集合模型的应用仍然相对有限。此外,集合模型的开发是临时性的,忽略了冗余层,存在数据集不平衡和增强不足的问题。最后,深度卷积神经网络(D-CNN)已被引入乳腺癌的检测和分类。认识到这些差距,本研究比较了包括原始 CNN、迁移学习和集合模型在内的 D-CNN 在检测乳腺癌方面的性能。本文的比较研究包括使用六种基于 CNN 的深度学习架构(SE-ResNet152、MobileNetV2、VGG19、ResNet18、InceptionV3 和 DenseNet-121)、迁移学习和集合模型检测乳腺癌。在这些模型的比较中,集合模型的乳腺癌检测和分类准确率最高,达到 99.94%。然而,本研究在迁移学习方面也得出了负面结果,因为迁移学习并没有提高原始 SE-ResNet152、MobileNetV2、VGG19、ResNet18、InceptionV3 和 DenseNet-121 模型的准确率。使用 CNN 检测和分类乳腺癌的高准确率表明,CNN 模型在乳腺癌疾病检测方面大有可为。这项研究对生物医学工程、计算机辅助疾病诊断和基于 ML 的疾病检测具有重要意义。
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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