NeuroPoly Lab, Institute of Biomedical Engineering, Polytechnique Montreal, Montreal, QC, Canada.
NeuroPoly Lab, Institute of Biomedical Engineering, Polytechnique Montreal, Montreal, QC, Canada; Department of Neuroscience, Faculty of Medicine, University of Montreal, Montreal, QC, Canada.
Neuroimage. 2019 Jan 1;184:901-915. doi: 10.1016/j.neuroimage.2018.09.081. Epub 2018 Oct 6.
The spinal cord is frequently affected by atrophy and/or lesions in multiple sclerosis (MS) patients. Segmentation of the spinal cord and lesions from MRI data provides measures of damage, which are key criteria for the diagnosis, prognosis, and longitudinal monitoring in MS. Automating this operation eliminates inter-rater variability and increases the efficiency of large-throughput analysis pipelines. Robust and reliable segmentation across multi-site spinal cord data is challenging because of the large variability related to acquisition parameters and image artifacts. In particular, a precise delineation of lesions is hindered by a broad heterogeneity of lesion contrast, size, location, and shape. The goal of this study was to develop a fully-automatic framework - robust to variability in both image parameters and clinical condition - for segmentation of the spinal cord and intramedullary MS lesions from conventional MRI data of MS and non-MS cases. Scans of 1042 subjects (459 healthy controls, 471 MS patients, and 112 with other spinal pathologies) were included in this multi-site study (n = 30). Data spanned three contrasts (T-, T-, and T-weighted) for a total of 1943 vol and featured large heterogeneity in terms of resolution, orientation, coverage, and clinical conditions. The proposed cord and lesion automatic segmentation approach is based on a sequence of two Convolutional Neural Networks (CNNs). To deal with the very small proportion of spinal cord and/or lesion voxels compared to the rest of the volume, a first CNN with 2D dilated convolutions detects the spinal cord centerline, followed by a second CNN with 3D convolutions that segments the spinal cord and/or lesions. CNNs were trained independently with the Dice loss. When compared against manual segmentation, our CNN-based approach showed a median Dice of 95% vs. 88% for PropSeg (p ≤ 0.05), a state-of-the-art spinal cord segmentation method. Regarding lesion segmentation on MS data, our framework provided a Dice of 60%, a relative volume difference of -15%, and a lesion-wise detection sensitivity and precision of 83% and 77%, respectively. In this study, we introduce a robust method to segment the spinal cord and intramedullary MS lesions on a variety of MRI contrasts. The proposed framework is open-source and readily available in the Spinal Cord Toolbox.
脊髓经常受到多发性硬化症(MS)患者的萎缩和/或病变的影响。从 MRI 数据中对脊髓和病变进行分割可提供损伤程度的测量,这是 MS 诊断、预后和纵向监测的关键标准。自动化此操作可消除评分者间的变异性并提高高通量分析管道的效率。由于与采集参数和图像伪影相关的较大变异性,对多站点脊髓数据进行稳健且可靠的分割具有挑战性。特别是,病变的精确描绘受到病变对比、大小、位置和形状的广泛异质性的阻碍。本研究的目的是开发一种完全自动化的框架-对图像参数和临床状况的变异性具有鲁棒性-用于从 MS 和非 MS 病例的常规 MRI 数据中分割脊髓和髓内 MS 病变。这项多站点研究纳入了 1042 名受试者(459 名健康对照者、471 名 MS 患者和 112 名患有其他脊髓疾病的患者)的扫描(n=30)。数据跨越三个对比度(T1-、T2-和 T1 加权),共 1943 个容积,在分辨率、方向、覆盖范围和临床状况方面具有很大的异质性。所提出的脊髓和病变自动分割方法基于两个卷积神经网络(CNNs)的序列。为了处理与体积的其余部分相比脊髓和/或病变体素的比例非常小的问题,首先使用具有 2D 扩张卷积的第一个 CNN 检测脊髓中心线,然后使用具有 3D 卷积的第二个 CNN 分割脊髓和/或病变。CNN 分别使用 Dice 损失进行训练。与手动分割相比,我们基于 CNN 的方法显示出 95%的中位数 Dice 与 88%的 PropSeg(p≤0.05)相比,这是一种先进的脊髓分割方法。对于 MS 数据上的病变分割,我们的框架提供了 60%的 Dice、-15%的相对体积差异以及病变特异性检测敏感性和精度分别为 83%和 77%。在这项研究中,我们介绍了一种在各种 MRI 对比中分割脊髓和髓内 MS 病变的稳健方法。所提出的框架是开源的,并可在脊髓工具箱中获得。