论文标题
分割各向同性三维流体上的白质超强度减弱反转恢复磁共振图像:评估挪威成像数据库上的深度学习工具
Segmenting white matter hyperintensities on isotropic three-dimensional Fluid Attenuated Inversion Recovery magnetic resonance images: Assessing deep learning tools on norwegian imaging database
论文作者
论文摘要
白质超强度(WMHS)的自动分割是磁共振成像(MRI)神经成像分析的重要步骤。流体减弱反转恢复(FLAIR加权)是MRI对比度,对于可视化和量化WMHS,这是脑小血管疾病和阿尔茨海默氏病(AD)特别有用的。临床MRI方案迁移到三维(3D)FLAIR加权的采集,以在所有三个体素维度中实现高空间分辨率。当前的研究详细介绍了深度学习工具的部署,以使自动化的WMH细分和表征从获得的3D Flair加权图像作为国家广告成像计划的一部分获得。 在DDI研究中,有441名参与者(194名男性,平均年龄:(64.91 +/- 9.32)年),在五个国家收集地点进行了两个内部网络的培训和验证。在441名参与者的内部数据和一个外部数据集中,对三个模型进行了测试,其中包含来自国际合作者的29个案例。这些测试集进行了独立评估。使用了五个已建立的WMH性能指标与地面真理人体分割进行比较。 测试的三个网络的结果,3D NNU-NET具有最佳性能,平均骰子相似性系数得分为0.76 +/- 0.16,其性能要比内部开发的2.5D 2.5D模型和SOTA深贝叶斯网络的表现更好。 随着MRI协议中3D Flair加权图像的越来越多,我们的结果表明,WMH分割模型可以在3D数据上进行培训,并产生WMH分割性能,与不需要T1加权图像序列相当或更好,而WMH分割性能可相当或更好。
Automated segmentation of white matter hyperintensities (WMHs) is an essential step in neuroimaging analysis of Magnetic Resonance Imaging (MRI). Fluid Attenuated Inversion Recovery (FLAIR-weighted) is an MRI contrast that is particularly useful to visualize and quantify WMHs, a hallmark of cerebral small vessel disease and Alzheimer's disease (AD). Clinical MRI protocols migrate to a three-dimensional (3D) FLAIR-weighted acquisition to enable high spatial resolution in all three voxel dimensions. The current study details the deployment of deep learning tools to enable automated WMH segmentation and characterization from 3D FLAIR-weighted images acquired as part of a national AD imaging initiative. Among 441 participants (194 male, mean age: (64.91 +/- 9.32) years) from the DDI study, two in-house networks were trained and validated across five national collection sites. Three models were tested on a held-out subset of the internal data from the 441 participants and an external dataset with 29 cases from an international collaborator. These test sets were evaluated independently. Five established WMH performance metrics were used for comparison against ground truth human-in-the-loop segmentation. Results of the three networks tested, the 3D nnU-Net had the best performance with an average dice similarity coefficient score of 0.76 +/- 0.16, performing better than both the in-house developed 2.5D model and the SOTA Deep Bayesian network. With the increasing use of 3D FLAIR-weighted images in MRI protocols, our results suggest that WMH segmentation models can be trained on 3D data and yield WMH segmentation performance that is comparable to or better than state-of-the-art without the need for including T1-weighted image series.