Lin Liyan, Tao Xi, Pang Shumao, Su Zhihai, Lu Hai, Li Shuo, Feng Qianjin, Chen Bo
IEEE J Biomed Health Inform. 2020 Nov;24(11):3248-3257. doi: 10.1109/JBHI.2020.2977224. Epub 2020 Nov 4.
Automatic estimation of axial spine indices is clinically desired for various spine computer aided procedures, such as disease diagnosis, therapeutic evaluation, pathophysiological understanding, risk assessment, and biomechanical modeling. Currently, the spine indices are manually measured by physicians, which is time-consuming and laborious. Even worse, the tedious manual procedure might result in inaccurate measurement. To deal with this problem, in this paper, we aim at developing an automatic method to estimate multiple indices from axial spine images. Inspired by the success of deep learning for regression problems and the densely connected network for image classification, we propose a dense enhancing network (DE-Net) which uses the dense enhancing blocks (DEBs) as its main body, where a feature enhancing layer is added to each of the bypass in a dense block. The DEB is designed to enhance discriminative feature embedding from the intervertebral disc and the dural sac areas. In addition, the cross-space distance-preserving regularization (CSDPR), which enforces consistent inter-sample distances between the output and the label spaces, is proposed to regularize the loss function of the DE-Net. To train and validate the proposed method, we collected 895 axial spine MRI images from 143 subjects and manually measured the indices as the ground truth. The results show that all deep learning models obtain very small prediction errors, and the proposed DE-Net with CSDPR acquires the smallest error among all methods, indicating that our method has great potential for spine computer aided procedures.
对于各种脊柱计算机辅助程序,如疾病诊断、治疗评估、病理生理理解、风险评估和生物力学建模,临床上需要自动估计脊柱轴向指标。目前,脊柱指标由医生手动测量,既耗时又费力。更糟糕的是,繁琐的手动程序可能导致测量不准确。为了解决这个问题,在本文中,我们旨在开发一种从脊柱轴向图像估计多个指标的自动方法。受深度学习在回归问题上的成功以及用于图像分类的密集连接网络的启发,我们提出了一种密集增强网络(DE-Net),它以密集增强块(DEB)为主体,在密集块的每个旁路中添加了一个特征增强层。DEB旨在增强来自椎间盘和硬脊膜囊区域的判别性特征嵌入。此外,还提出了交叉空间距离保持正则化(CSDPR),以强制输出空间和标签空间之间的样本间距离一致,从而对DE-Net的损失函数进行正则化。为了训练和验证所提出的方法,我们从143名受试者中收集了895张脊柱轴向MRI图像,并手动测量指标作为 ground truth。结果表明,所有深度学习模型都获得了非常小的预测误差,并且所提出的带有CSDPR的DE-Net在所有方法中获得了最小的误差,这表明我们的方法在脊柱计算机辅助程序方面具有很大的潜力。