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TRACE:一种用于自动脑沟曲线提取的拓扑图表示方法。

TRACE: A Topological Graph Representation for Automatic Sulcal Curve Extraction.

出版信息

IEEE Trans Med Imaging. 2018 Jul;37(7):1653-1663. doi: 10.1109/TMI.2017.2787589.

Abstract

A proper geometric representation of the cortical regions is a fundamental task for cortical shape analysis and landmark extraction. However, a significant challenge has arisen due to the highly variable, convoluted cortical folding patterns. In this paper, we propose a novel topological graph representation for automatic sulcal curve extraction (TRACE). In practice, the reconstructed surface suffers from noise influences introduced during image acquisition/surface reconstruction. In the presence of noise on the surface, TRACE determines stable sulcal fundic regions by employing the line simplification method that prevents the sulcal folding pattern from being significantly smoothed out. The sulcal curves are then traced over the connected graph in the determined regions by the Dijkstra's shortest path algorithm. For validation, we used the state-of-the-art surface reconstruction pipelines on a reproducibility data set. The experimental results showed higher reproducibility and robustness to noise in TRACE than the existing method (Li et al. 2010) with over 20% relative improvement in error for both surface reconstruction pipelines. In addition, the extracted sulcal curves by TRACE were well-aligned with manually delineated primary sulcal curves. We also provided a choice of parameters to control quality of the extracted sulcal curves and showed the influences of the parameter selection on the resulting curves.

摘要

皮质区域的适当几何表示是皮质形状分析和地标提取的基本任务。然而,由于皮质折叠模式高度可变且错综复杂,因此出现了重大挑战。在本文中,我们提出了一种新的拓扑图表示方法,用于自动沟回曲线提取(TRACE)。在实践中,重建表面会受到图像采集/表面重建过程中引入的噪声影响。在表面存在噪声的情况下,TRACE 通过采用线简化方法来确定稳定的沟回底部区域,从而防止沟回折叠模式被显著平滑。然后,通过 Dijkstra 最短路径算法在确定的区域中的连通图上追踪沟回曲线。为了验证,我们在可重现性数据集上使用了最先进的表面重建管道。实验结果表明,与现有方法(Li 等人,2010 年)相比,TRACE 具有更高的可重复性和对噪声的鲁棒性,两种表面重建管道的误差都提高了 20%以上。此外,TRACE 提取的沟回曲线与手动描绘的主要沟回曲线很好地对齐。我们还提供了一组参数选择来控制提取的沟回曲线的质量,并展示了参数选择对生成曲线的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/58cc/6889090/eff454deb7e6/nihms-979235-f0001.jpg

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