DeepN4: Learning N4ITK Bias Field Correction for T1-weighted Images.

IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Neuroinformatics Pub Date : 2024-04-01 Epub Date: 2024-03-25 DOI:10.1007/s12021-024-09655-9
Praitayini Kanakaraj, Tianyuan Yao, Leon Y Cai, Ho Hin Lee, Nancy R Newlin, Michael E Kim, Chenyu Gao, Kimberly R Pechman, Derek Archer, Timothy Hohman, Angela Jefferson, Lori L Beason-Held, Susan M Resnick, Eleftherios Garyfallidis, Adam Anderson, Kurt G Schilling, Bennett A Landman, Daniel Moyer
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Abstract

T1-weighted (T1w) MRI has low frequency intensity artifacts due to magnetic field inhomogeneities. Removal of these biases in T1w MRI images is a critical preprocessing step to ensure spatially consistent image interpretation. N4ITK bias field correction, the current state-of-the-art, is implemented in such a way that makes it difficult to port between different pipelines and workflows, thus making it hard to reimplement and reproduce results across local, cloud, and edge platforms. Moreover, N4ITK is opaque to optimization before and after its application, meaning that methodological development must work around the inhomogeneity correction step. Given the importance of bias fields correction in structural preprocessing and flexible implementation, we pursue a deep learning approximation / reinterpretation of the N4ITK bias fields correction to create a method which is portable, flexible, and fully differentiable. In this paper, we trained a deep learning network "DeepN4" on eight independent cohorts from 72 different scanners and age ranges with N4ITK-corrected T1w MRI and bias field for supervision in log space. We found that we can closely approximate N4ITK bias fields correction with naïve networks. We evaluate the peak signal to noise ratio (PSNR) in test dataset against the N4ITK corrected images. The median PSNR of corrected images between N4ITK and DeepN4 was 47.96 dB. In addition, we assess the DeepN4 model on eight additional external datasets and show the generalizability of the approach. This study establishes that incompatible N4ITK preprocessing steps can be closely approximated by naïve deep neural networks, facilitating more flexibility. All code and models are released at https://github.com/MASILab/DeepN4 .

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DeepN4:学习 T1 加权图像的 N4ITK 偏场校正。
T1 加权(T1w)磁共振成像因磁场不均匀而产生低频强度伪影。去除 T1w MRI 图像中的这些偏差是确保图像解读空间一致性的关键预处理步骤。目前最先进的 N4ITK 偏场校正技术的实现方式使其很难在不同的管道和工作流程之间移植,因此很难在本地、云和边缘平台上重新实现和复制结果。此外,N4ITK 在应用前后的优化是不透明的,这意味着方法论的发展必须围绕不均匀性校正步骤进行。鉴于偏场校正在结构预处理和灵活实施中的重要性,我们追求对 N4ITK 偏场校正进行深度学习近似/重新解释,以创建一种可移植、灵活且完全可微分的方法。在本文中,我们对来自 72 个不同扫描仪和年龄段的 8 个独立队列进行了深度学习网络 "DeepN4 "的训练,这些队列都具有 N4ITK 校正的 T1w MRI 和对数空间监督偏倚场。我们发现,我们可以用天真网络近似地进行 N4ITK 偏场校正。我们根据 N4ITK 校正图像评估了测试数据集的峰值信噪比(PSNR)。N4ITK 和 DeepN4 校正图像的 PSNR 中值为 47.96 dB。此外,我们还在另外八个外部数据集上评估了 DeepN4 模型,并展示了该方法的通用性。这项研究证明,不兼容的 N4ITK 预处理步骤可以用天真深度神经网络进行近似,从而提高了灵活性。所有代码和模型都发布在 https://github.com/MASILab/DeepN4 上。
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来源期刊
Neuroinformatics
Neuroinformatics 医学-计算机:跨学科应用
CiteScore
6.00
自引率
6.70%
发文量
54
审稿时长
3 months
期刊介绍: Neuroinformatics publishes original articles and reviews with an emphasis on data structure and software tools related to analysis, modeling, integration, and sharing in all areas of neuroscience research. The editors particularly invite contributions on: (1) Theory and methodology, including discussions on ontologies, modeling approaches, database design, and meta-analyses; (2) Descriptions of developed databases and software tools, and of the methods for their distribution; (3) Relevant experimental results, such as reports accompanie by the release of massive data sets; (4) Computational simulations of models integrating and organizing complex data; and (5) Neuroengineering approaches, including hardware, robotics, and information theory studies.
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