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Grey Matter Segmentation in Spinal Cord MRIs via 3D Convolutional Encoder Networks with Shortcut Connections

机译:通过具有快捷连接的3D卷积编码器网络在脊髓MRI中进行灰色物质分割

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Segmentation of grey matter in magnetic resonance images of the spinal cord is an important step in assessing disease state in neurological disorders such as multiple sclerosis. However, manual delineation of spinal cord tissue is time-consuming and susceptible to variability introduced by the rater. We present a novel segmentation method for spinal cord tissue that uses fully convolutional encoder networks (CENs) for direct end-to-end training and includes shortcut connections to combine multi-scale features, similar to a u-net. While CENs with shortcuts have been used successfully for brain tissue segmentation, spinal cord images have very different features, and therefore deserve their own investigation. In particular, we develop the methodology by evaluating the impact of the number of layers, filter sizes, and shortcuts on segmentation accuracy in standard-resolution cord MRIs. This deep learning-based method is trained on data from a recent public challenge, consisting of 40 MRIs from 4 unique scan sites, with each MRI having 4 manual segmentations from 4 expert raters, resulting in a total of 160 image-label pairs. Performance of the method is evaluated using an independent test set of 40 scans and compared against the challenge results. Using a comprehensive suite of performance metrics, including the Dice similarity coefficient (DSC) and Jaccard index, we found shortcuts to have the strongest impact (0.60 to 0.80 in DSC), while filter size (0.76 to 0.80) and the number of layers (0.77 to 0.80) are also important considerations. Overall, the method is highly competitive with other state-of-the-art methods.
机译:脊髓磁共振图像中灰质的分割是评估神经系统疾病(如多发性硬化症)疾病状态的重要步骤。但是,手动描绘脊髓组织很费时,并且容易受到评估者的影响。我们提出了一种新颖的脊髓组织分割方法,该方法使用完全卷积编码器网络(CEN)进行直接的端到端训练,并包括组合多尺度特征的快捷连接,类似于u-net。虽然带有快捷键的CEN已成功用于脑组织分割,但是脊髓图像具有非常不同的功能,因此值得自己研究。特别是,我们通过评估标准分辨率脊髓MRI中层数,滤镜尺寸和捷径对分割精度的影响来开发该方法。这种基于深度学习的方法接受了来自最近一次公开挑战的数据的训练,该挑战由来自4个唯一扫描站点的40幅MRI构成,每个MRI具有来自4个专家评级者的4个手动分割,因此总共有160个图像标签对。使用40次扫描的独立测试集评估该方法的性能,并与挑战结果进行比较。使用包括Dice相似系数(DSC)和Jaccard索引在内的一套全面的性能指标,我们发现快捷方式的影响最大(DSC中为0.60至0.80),而过滤器大小(0.76至0.80)和层数( 0.77至0.80)也是重要的考虑因素。总体而言,该方法与其他最新方法具有很高的竞争力。

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