Department of Computer Science and Engineering, Lovely Professional University, Jalandhar, India.
SIES Graduate School of Technology, Navi Mumbai, India.
Front Public Health. 2022 Apr 25;10:885212. doi: 10.3389/fpubh.2022.885212. eCollection 2022.
Percentage mammographic breast density (MBD) is one of the most notable biomarkers. It is assessed visually with the support of radiologists with the four qualitative Breast Imaging Reporting and Data System (BIRADS) categories. It is demanding for radiologists to differentiate between the two variably allocated BIRADS classes, namely, "BIRADS C and BIRADS D." Recently, convolution neural networks have been found superior in classification tasks due to their ability to extract local features with shared weight architecture and space invariance characteristics. The proposed study intends to examine an artificial intelligence (AI)-based MBD classifier toward developing a latent computer-assisted tool for radiologists to distinguish the BIRADS class in modern clinical progress. This article proposes a multichannel DenseNet architecture for MBD classification. The proposed architecture consists of four-channel DenseNet transfer learning architecture to extract significant features from a single patient's two a mediolateral oblique (MLO) and two craniocaudal (CC) views of digital mammograms. The performance of the proposed classifier is evaluated using 200 cases consisting of 800 digital mammograms of the different BIRADS density classes with validated density ground truth. The classifier's performance is assessed with quantitative metrics such as precision, responsiveness, specificity, and the area under the curve (AUC). The concluding preliminary outcomes reveal that this intended multichannel model has delivered good performance with an accuracy of 96.67% during training and 90.06% during testing and an average AUC of 0.9625. Obtained results are also validated qualitatively with the help of a radiologist expert in the field of MBD. Proposed architecture achieved state-of-the-art results with a fewer number of images and with less computation power.
乳腺密度的百分比(MBD)是最显著的生物标志物之一。它在放射科医生的支持下通过视觉评估,使用四个定性的乳腺影像报告和数据系统(BIRADS)类别。区分两个不同分配的 BIRADS 类别,即“BIRADS C 和 BIRADS D”,对放射科医生来说是一项具有挑战性的任务。最近,卷积神经网络在分类任务中表现出色,因为它们能够提取具有共享权重架构和空间不变性特征的局部特征。本研究旨在检验一种基于人工智能(AI)的 MBD 分类器,以开发一种潜在的计算机辅助工具,帮助放射科医生在现代临床进展中区分 BIRADS 类别。本文提出了一种用于 MBD 分类的多通道 DenseNet 架构。该架构由四通道 DenseNet 迁移学习架构组成,用于从单个患者的两个内外斜位(MLO)和两个头尾位(CC)数字乳腺 X 线照片中提取重要特征。使用包含不同 BIRADS 密度类别的 200 个病例,每个病例包含 800 个数字乳腺 X 线照片的 200 个病例来评估所提出的分类器的性能,这些照片都经过了密度验证的真实密度。使用定量指标(如精度、反应性、特异性和曲线下面积(AUC))评估分类器的性能。初步的结论性结果表明,在训练期间,该意图的多通道模型的性能良好,准确率为 96.67%,在测试期间为 90.06%,平均 AUC 为 0.9625。在 MBD 领域的放射科专家的帮助下,还通过定性方法验证了结果。所提出的架构使用较少的图像和较少的计算能力实现了最先进的结果。