使用球形卷积神经网络自动标记发育队列中的皮质沟。

Lingyan Hao, Shunxing Bao, Yucheng Tang, Riqiang Gao, Prasanna Parvathaneni, Jacob A Miller, Willa Voorhies, Jewelia Yao, Silvia A Bunge, Kevin S Weiner, Bennett A Landman, Ilwoo Lyu
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引用次数: 0

摘要

在本文中,我们介绍了人类外侧前额叶皮层(PFC)沟的自动标记框架。我们将现有的球形 U-Net 架构与最新的表面数据增强技术相结合,提高了发育队列中沟槽标注的准确性。具体来说,我们的框架由以下关键部分组成:(1) 在皮层表面注册过程中生成增强几何特征;(2) 采用球形 U-Net 架构有效拟合增强特征;(3) 通过图切割技术优化空间一致性,对颅沟标记进行后精炼。我们在 30 名健康受试者身上验证了我们的方法,并对前脑功能区内的脑沟区域进行了人工标注。实验表明,与多图谱法(0.6410)和标准球形 U-Net 法(0.7011)相比,我们的平均 Dice 重叠率(0.7749)显著提高(p < 0.05)。此外,在这一发育队列中,所提出的方法可在 20 秒内完成全套脑沟标签。
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AUTOMATIC LABELING OF CORTICAL SULCI USING SPHERICAL CONVOLUTIONAL NEURAL NETWORKS IN A DEVELOPMENTAL COHORT.

In this paper, we present the automatic labeling framework for sulci in the human lateral prefrontal cortex (PFC). We adapt an existing spherical U-Net architecture with our recent surface data augmentation technique to improve the sulcal labeling accuracy in a developmental cohort. Specifically, our framework consists of the following key components: (1) augmented geometrical features being generated during cortical surface registration, (2) spherical U-Net architecture to efficiently fit the augmented features, and (3) postrefinement of sulcal labeling by optimizing spatial coherence via a graph cut technique. We validate our method on 30 healthy subjects with manual labeling of sulcal regions within PFC. In the experiments, we demonstrate significantly improved labeling performance (0.7749) in mean Dice overlap compared to that of multi-atlas (0.6410) and standard spherical U-Net (0.7011) approaches, respectively (p < 0.05). Additionally, the proposed method achieves a full set of sulcal labels in 20 seconds in this developmental cohort.

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