人工智能辅助乳腺x线摄影中乳腺癌检测的创新多视角策略

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Beibit Abdikenov, Tomiris Zhaksylyk, Aruzhan Imasheva, Yerzhan Orazayev, Temirlan Karibekov
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引用次数: 0

摘要

乳房x光检查是早期发现乳腺癌的主要方法,这仍然是一个主要的全球健康问题。然而,解读者之间的差异和解释细微放射学特征的固有困难往往限制了诊断的准确性。在这项工作中提出了深度卷积神经网络(cnn)用于自动乳房x线照片分类的全面评估,以及两种创新的多视图集成技术:双分支集成(DBE)和合并双视图(MDV)。通过留出两个数据集用于样本外测试,我们使用代表不同人群和成像系统的六种不同的乳房x光检查数据集来评估模型的泛化性。我们在单独和组合数据集上比较了许多尖端架构,包括ResNet, DenseNet, EfficientNet, MobileNet, Vision Transformers和VGG19。实验结果表明,MDV和DBE策略都提高了分类性能。VGG19和DenseNet在MDV方法下均获得较高的ROC AUC得分,分别为0.9051和0.7960。DenseNet在DBE设置中表现出色,实现了0.8033的ROC AUC,而ResNet50的ROC AUC为0.8042。这些增强证明了多视图融合对增强模型鲁棒性是多么有益。泛化测试进一步强调了域转移的影响,这强调了训练中需要不同的数据集。这些结果为改进CNN架构和集成策略提供了实用建议,这将有助于创建值得信赖的、广泛适用的人工智能辅助乳腺癌筛查工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Innovative Multi-View Strategies for AI-Assisted Breast Cancer Detection in Mammography.

Mammography is the main method for early detection of breast cancer, which is still a major global health concern. However, inter-reader variability and the inherent difficulty of interpreting subtle radiographic features frequently limit the accuracy of diagnosis. A thorough assessment of deep convolutional neural networks (CNNs) for automated mammogram classification is presented in this work, along with the introduction of two innovative multi-view integration techniques: Dual-Branch Ensemble (DBE) and Merged Dual-View (MDV). By setting aside two datasets for out-of-sample testing, we evaluate the generalizability of the model using six different mammography datasets that represent various populations and imaging systems. We compare a number of cutting-edge architectures on both individual and combined datasets, including ResNet, DenseNet, EfficientNet, MobileNet, Vision Transformers, and VGG19. Both MDV and DBE strategies improve classification performance, according to experimental results. VGG19 and DenseNet both obtained high ROC AUC scores of 0.9051 and 0.7960 under the MDV approach. DenseNet demonstrated strong performance in the DBE setting, achieving a ROC AUC of 0.8033, while ResNet50 recorded a ROC AUC of 0.8042. These enhancements demonstrate how beneficial multi-view fusion is for boosting model robustness. The impact of domain shift is further highlighted by generalization tests, which emphasize the need for diverse datasets in training. These results offer practical advice for improving CNN architectures and integration tactics, which will aid in the creation of trustworthy, broadly applicable AI-assisted breast cancer screening tools.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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