Department of Computer Science and Engineering, The Chinese University of Hong Kong, Hong Kong, China.
Department of Computer Science and Engineering, The Chinese University of Hong Kong, Hong Kong, China.
Med Image Anal. 2018 Apr;45:41-54. doi: 10.1016/j.media.2018.01.004. Epub 2018 Feb 2.
Intervertebral discs (IVDs) are small joints that lie between adjacent vertebrae. The localization and segmentation of IVDs are important for spine disease diagnosis and measurement quantification. However, manual annotation is time-consuming and error-prone with limited reproducibility, particularly for volumetric data. In this work, our goal is to develop an automatic and accurate method based on fully convolutional networks (FCN) for the localization and segmentation of IVDs from multi-modality 3D MR data. Compared with single modality data, multi-modality MR images provide complementary contextual information, which contributes to better recognition performance. However, how to effectively integrate such multi-modality information to generate accurate segmentation results remains to be further explored. In this paper, we present a novel multi-scale and modality dropout learning framework to locate and segment IVDs from four-modality MR images. First, we design a 3D multi-scale context fully convolutional network, which processes the input data in multiple scales of context and then merges the high-level features to enhance the representation capability of the network for handling the scale variation of anatomical structures. Second, to harness the complementary information from different modalities, we present a random modality voxel dropout strategy which alleviates the co-adaption issue and increases the discriminative capability of the network. Our method achieved the 1st place in the MICCAI challenge on automatic localization and segmentation of IVDs from multi-modality MR images, with a mean segmentation Dice coefficient of 91.2% and a mean localization error of 0.62 mm. We further conduct extensive experiments on the extended dataset to validate our method. We demonstrate that the proposed modality dropout strategy with multi-modality images as contextual information improved the segmentation accuracy significantly. Furthermore, experiments conducted on extended data collected from two different time points demonstrate the efficacy of our method on tracking the morphological changes in a longitudinal study.
椎间盘(IVD)是位于相邻椎骨之间的小关节。IVD 的定位和分割对于脊柱疾病的诊断和测量量化非常重要。然而,手动注释耗时且容易出错,并且重复性有限,尤其是对于体积数据。在这项工作中,我们的目标是开发一种基于全卷积网络(FCN)的自动且准确的方法,用于从多模态 3D MR 数据中定位和分割 IVD。与单模态数据相比,多模态 MR 图像提供了互补的上下文信息,有助于提高识别性能。然而,如何有效地整合这种多模态信息以生成准确的分割结果仍有待进一步探索。在本文中,我们提出了一种新颖的多尺度和模态随机失活学习框架,用于从四模态 MR 图像中定位和分割 IVD。首先,我们设计了一个 3D 多尺度上下文全卷积网络,该网络以多个尺度的上下文处理输入数据,然后合并高层特征,以增强网络的表示能力,从而处理解剖结构的尺度变化。其次,为了利用不同模态的互补信息,我们提出了一种随机模态体素失活策略,该策略减轻了共同适应问题并提高了网络的判别能力。我们的方法在 MICCAI 挑战赛中获得了自动定位和分割多模态 MR 图像中 IVD 的第一名,平均分割 Dice 系数为 91.2%,平均定位误差为 0.62mm。我们进一步在扩展数据集上进行了广泛的实验来验证我们的方法。我们证明了使用多模态图像作为上下文信息的模态随机失活策略显著提高了分割精度。此外,在从两个不同时间点收集的扩展数据上进行的实验证明了我们的方法在纵向研究中跟踪形态变化的有效性。