基于拉普拉斯方程的深度学习框架改进皮层灰质深沟分割

S. Ravikumar, Ranjit Itttyerah, Sydney A. Lim, L. Xie, Sandhitsu R. Das, Pulkit Khandelwal, L. Wisse, M. Bedard, John L. Robinson, Terry K. Schuck, M. Grossman, J. Trojanowski, Eddie B. Lee, M. Tisdall, K. Prabhakaran, J. Detre, D. Irwin, Winifred Trotman, G. Mizsei, Emilio Artacho-P'erula, Maria Mercedes Iniguez de Onzono Martin, Maria del Mar Arroyo Jim'enez, M. Muñoz, Francisco Javier Molina Romero, M. Rabal, Sandra Cebada-S'anchez, J. Gonz'alez, C. Rosa-Prieto, Marta Córcoles Parada, D. Wolk, R. Insausti, Paul Yushkevich
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引用次数: 0

摘要

在开发自动皮层分割工具时,为了计算几何上有效的形态测量,生成拓扑正确分割的能力是很重要的。在实践中,准确的皮层分割受到图像伪影和皮层本身高度复杂的解剖结构的挑战。为了解决这个问题,我们提出了一种新的基于深度学习的皮层分割方法,该方法在训练过程中将皮层几何形状的先验知识整合到网络中。我们设计了一个损失函数,该函数使用拉普拉斯方程理论应用于皮层,以局部惩罚紧密折叠沟之间未解决的边界。使用人类内侧颞叶标本的离体MRI数据集,我们证明了我们的方法在定量和定性上都优于基线分割网络。
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Improved Segmentation of Deep Sulci in Cortical Gray Matter Using a Deep Learning Framework Incorporating Laplace's Equation
When developing tools for automated cortical segmentation, the ability to produce topologically correct segmentations is important in order to compute geometrically valid morphometry measures. In practice, accurate cortical segmentation is challenged by image artifacts and the highly convoluted anatomy of the cortex itself. To address this, we propose a novel deep learning-based cortical segmentation method in which prior knowledge about the geometry of the cortex is incorporated into the network during the training process. We design a loss function which uses the theory of Laplace's equation applied to the cortex to locally penalize unresolved boundaries between tightly folded sulci. Using an ex vivo MRI dataset of human medial temporal lobe specimens, we demonstrate that our approach outperforms baseline segmentation networks, both quantitatively and qualitatively.
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