Kim Dae Hoe, Kim Seong Tae, Chang Jung Min, Ro Yong Man
School of Electrical Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon 34141, Korea.
Phys Med Biol. 2017 Feb 7;62(3):1009-1031. doi: 10.1088/1361-6560/aa504e. Epub 2017 Jan 12.
Characterization of masses in computer-aided detection systems for digital breast tomosynthesis (DBT) is an important step to reduce false positive (FP) rates. To effectively differentiate masses from FPs in DBT, discriminative mass feature representation is required. In this paper, we propose a new latent feature representation boosted by depth directional long-term recurrent learning for characterizing malignant masses. The proposed network is designed to encode mass characteristics in two parts. First, 2D spatial image characteristics of DBT slices are encoded as a slice feature representation by convolutional neural network (CNN). Then, depth directional characteristics of masses among the slice feature representations are encoded by the proposed depth directional long-term recurrent learning. In addition, to further improve the class discriminability of latent feature representation, we have devised three objective functions aiming to (a) minimize classification error, (b) minimize intra-class variation within the same class, and (c) preserve feature representation consistency in a central slice. Experimental results have demonstrated that the proposed latent feature representation achieves a higher level of classification performance in terms of receiver operating characteristic (ROC) curves and the area under the ROC curve values compared to performance with feature representation learned by conventional CNN and hand-crafted features.
数字乳腺断层合成(DBT)计算机辅助检测系统中肿块的特征描述是降低假阳性(FP)率的重要一步。为了在DBT中有效区分肿块与假阳性,需要有判别性的肿块特征表示。在本文中,我们提出了一种通过深度方向长期递归学习增强的新潜在特征表示,用于表征恶性肿块。所提出的网络设计为在两个部分对肿块特征进行编码。首先,DBT切片的二维空间图像特征由卷积神经网络(CNN)编码为切片特征表示。然后,通过所提出的深度方向长期递归学习对切片特征表示中的肿块深度方向特征进行编码。此外,为了进一步提高潜在特征表示的类可区分性,我们设计了三个目标函数,旨在(a)最小化分类误差,(b)最小化同一类内的类内变化,以及(c)保持中心切片中特征表示的一致性。实验结果表明,与通过传统CNN学习的特征表示和手工特征相比,所提出的潜在特征表示在接收器操作特性(ROC)曲线和ROC曲线下面积值方面实现了更高水平的分类性能。