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Automatic Segmentation of Vestibular Schwannoma from T2-Weighted MRI by Deep Spatial Attention with Hardness-Weighted Loss

机译:T2加权MRI自动分割前庭神经鞘瘤的深层空间分布,硬度加权加权损失

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Automatic segmentation of vestibular schwannoma (VS) tumors from magnetic resonance imaging (MRI) would facilitate efficient and accurate volume measurement to guide patient management and improve clinical workflow. The accuracy and robustness is challenged by low contrast, small target region and low through-plane resolution. We introduce a 2.5D convolutional neural network (CNN) able to exploit the different in-plane and through-plane resolutions encountered in standard of care imaging protocols. We propose an attention module with explicit supervision on the attention maps to enable the CNN to focus on the small target for more accurate segmentation. We also propose a hardness-weighted Dice loss function that gives higher weights to harder voxels to boost the training of CNNs. Experiments with ablation studies on the VS tumor segmentation task show that: (1) our 2.5D CNN outperforms its 2D and 3D counterparts, (2) our supervised attention mechanism outperforms unsupervised attention, (3) the voxel-level hardness-weighted Dice loss improves the segmentation accuracy. Our method achieved an average Dice score and ASSD of 0.87 and 0.43 mm respectively. This will facilitate patient management decisions in clinical practice.
机译:通过磁共振成像(MRI)自动分割前庭神经鞘瘤(VS)肿瘤将有助于进行高效,准确的体积测量,以指导患者管理并改善临床工作流程。低对比度,较小的目标区域和较低的平面分辨率对精度和鲁棒性提出了挑战。我们引入了一个2.5D卷积神经网络(CNN),该网络能够利用在护理成像协议标准中遇到的不同平面内和平面内分辨率。我们提出了一种对注意力图进行显式监控的注意力模块,以使CNN可以将注意力集中在较小的目标上,从而实现更准确的细分。我们还提出了一种硬度加权的骰子损失函数,该函数可以给较硬的体素赋予更高的权重,以促进CNN的训练。对VS肿瘤分割任务进行消融研究的实验表明:(1)我们的2.5D CNN胜过其2D和3D对应物;(2)我们的监督注意力机制胜过无监督注意力;(3)体素级硬度加权骰子损失提高分割精度。我们的方法获得的平均Dice得分和ASSD分别为0.87和0.43 mm。这将有助于临床实践中的患者管理决策。

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