新生儿大脑中基于学习的纤维方向分布估计中的地面实况效应。

ArXiv Pub Date : 2024-09-02
Rizhong Lin, Hamza Kebiri, Ali Gholipour, Yufei Chen, Jean-Philippe Thiran, Davood Karimi, Meritxell Bach Cuadra
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引用次数: 0

摘要

弥散磁共振成像(dMRI)是一种描绘体内大脑微观结构的无创方法。纤维定向分布(FOD)是一种数学表示方法,广泛用于绘制白质纤维配置图。最近,利用深度神经网络估算纤维定向分布取得了越来越多的成功,尤其是利用较少的扩散测量估算新生儿的纤维定向分布。这些方法大多是根据多壳多组织约束球形去卷积(MSMT-CSD)重建的目标 FOD 进行训练的,而对于发育中的大脑来说,这可能并不是理想的地面实况。在这里,我们通过在 MSMT-CSD 和单壳三组织约束球面解卷积(SS3T-CSD)上训练基于 U-Net 架构的最先进模型来研究这一假设。我们的研究结果表明,SS3T-CSD 可能更适合新生儿大脑,因为与 MSMT-CSD 相比,SS3T-CSD 估算的单纤维和多纤维体素之间的比例更符合实际情况。此外,与 MSMT-CSD 相比,增加输入梯度方向的数量能显著提高 SS3T-CSD 的性能。最后,在年龄域偏移设置中,SS3T-CSD 在不同年龄组都能保持稳定的性能,这表明它有潜力用于更精确的新生儿大脑成像。
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Ground-truth effects in learning-based fiber orientation distribution estimation in neonatal brains.

Diffusion Magnetic Resonance Imaging (dMRI) is a noninvasive method for depicting brain microstructure in vivo. Fiber orientation distributions (FODs) are mathematical representations extensively used to map white matter fiber configurations. Recently, FOD estimation with deep neural networks has seen growing success, in particular, those of neonates estimated with fewer diffusion measurements. These methods are mostly trained on target FODs reconstructed with multi-shell multi-tissue constrained spherical deconvolution (MSMT-CSD), which might not be the ideal ground truth for developing brains. Here, we investigate this hypothesis by training a state-of-the-art model based on the U-Net architecture on both MSMT-CSD and single-shell three-tissue constrained spherical deconvolution (SS3T-CSD). Our results suggest that SS3T-CSD might be more suited for neonatal brains, given that the ratio between single and multiple fiber-estimated voxels with SS3T-CSD is more realistic compared to MSMT-CSD. Additionally, increasing the number of input gradient directions significantly improves performance with SS3T-CSD over MSMT-CSD. Finally, in an age domain-shift setting, SS3T-CSD maintains robust performance across age groups, indicating its potential for more accurate neonatal brain imaging.

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