基于深度学习的动态集成方法在断层合成图像中检测乳腺肿瘤

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Loay Hassan, Adel Saleh, Vivek Kumar Singh, Domenec Puig, Mohamed Abdel-Nasser
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引用次数: 0

摘要

数字乳腺断层合成(DBT)作为一种高度稳健的筛查技术脱颖而出,能够提高乳腺癌的检出率。它还解决了乳房x光检查固有的某些局限性。尽管如此,手动检查每个案例的大量DBT切片的过程非常耗时。为了解决这个问题,基于深度学习的计算机辅助检测(CAD)系统已经出现,旨在自动识别DBT图像中的乳腺肿瘤。然而,当前的CAD系统受到各种挑战的阻碍。这些挑战包括观察到的乳腺密度的多样性,以及乳腺病变的不同形状、大小和位置。为了克服这些限制,我们提出了一种新的方法来检测乳腺肿瘤在DBT图像。该方法依赖于一种强大的动态集成技术,以及强大的个体乳腺肿瘤检测器(ibtd)。提出的动态集成技术利用深度神经网络根据输入DBT图像的特征选择最优的IBTD来检测乳腺肿瘤。开发的个体乳房肿瘤检测器依赖于弹性深度学习架构和创新的数据增强方法。本文介绍了两种数据扩充策略,即信道复制和信道拼接。这些数据增强方法被用来克服可用数据的稀缺性,并复制不同的场景,包括乳房密度的变化,以及乳房病变的形状、大小和位置。这增强了每个IBTD的检测能力。通过对两种最先进的集成技术(即非最大抑制(NMS)和加权盒融合(WBF))的有效性进行评估,发现在可公开访问的DBT数据集上测试时,所提出的集成方法获得了最佳结果,f1得分为84.96%。当评估不同的模式,如乳房x光检查,所提出的方法始终达到优越的肿瘤检测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Breast Tumors in Tomosynthesis Images Utilizing Deep Learning-Based Dynamic Ensemble Approach
Digital breast tomosynthesis (DBT) stands out as a highly robust screening technique capable of enhancing the rate at which breast cancer is detected. It also addresses certain limitations that are inherent to mammography. Nonetheless, the process of manually examining numerous DBT slices per case is notably time-intensive. To address this, computer-aided detection (CAD) systems based on deep learning have emerged, aiming to automatically identify breast tumors within DBT images. However, the current CAD systems are hindered by a variety of challenges. These challenges encompass the diversity observed in breast density, as well as the varied shapes, sizes, and locations of breast lesions. To counteract these limitations, we propose a novel method for detecting breast tumors within DBT images. This method relies on a potent dynamic ensemble technique, along with robust individual breast tumor detectors (IBTDs). The proposed dynamic ensemble technique utilizes a deep neural network to select the optimal IBTD for detecting breast tumors, based on the characteristics of the input DBT image. The developed individual breast tumor detectors hinge on resilient deep-learning architectures and inventive data augmentation methods. This study introduces two data augmentation strategies, namely channel replication and channel concatenation. These data augmentation methods are employed to surmount the scarcity of available data and to replicate diverse scenarios encompassing variations in breast density, as well as the shapes, sizes, and locations of breast lesions. This enhances the detection capabilities of each IBTD. The effectiveness of the proposed method is evaluated against two state-of-the-art ensemble techniques, namely non-maximum suppression (NMS) and weighted boxes fusion (WBF), finding that the proposed ensemble method achieves the best results with an F1-score of 84.96% when tested on a publicly accessible DBT dataset. When evaluated across different modalities such as breast mammography, the proposed method consistently attains superior tumor detection outcomes.
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来源期刊
Computers
Computers COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
5.40
自引率
3.60%
发文量
153
审稿时长
11 weeks
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