Beliveau Vincent, Nørgaard Martin, Birkl Christoph, Seppi Klaus, Scherfler Christoph
Department of Neurology, Medical University of Innsbruck, Innsbruck, Austria.
Neuroimaging Research Core Facility, Medical University of Innsbruck, Innsbruck, Austria.
Hum Brain Mapp. 2021 Oct 15;42(15):4809-4822. doi: 10.1002/hbm.25604. Epub 2021 Jul 29.
The advent of susceptibility-sensitive MRI techniques, such as susceptibility weighted imaging (SWI), has enabled accurate in vivo visualization and quantification of iron deposition within the human brain. Although previous approaches have been introduced to segment iron-rich brain regions, such as the substantia nigra, subthalamic nucleus, red nucleus, and dentate nucleus, these methods are largely unavailable and manual annotation remains the most used approach to label these regions. Furthermore, given their recent success in outperforming other segmentation approaches, convolutional neural networks (CNN) promise better performances. The aim of this study was thus to evaluate state-of-the-art CNN architectures for the labeling of deep brain nuclei from SW images. We implemented five CNN architectures and considered ensembles of these models. Furthermore, a multi-atlas segmentation model was included to provide a comparison not based on CNN. We evaluated two prediction strategies: individual prediction, where a model is trained independently for each region, and combined prediction, which simultaneously predicts multiple closely located regions. In the training dataset, all models performed with high accuracy with Dice coefficients ranging from 0.80 to 0.95. The regional SWI intensities and volumes from the models' labels were strongly correlated with those obtained from manual labels. Performances were reduced on the external dataset, but were higher or comparable to the intrarater reliability and most models achieved significantly better results compared to multi-atlas segmentation. CNNs can accurately capture the individual variability of deep brain nuclei and represent a highly useful tool for their segmentation from SW images.
诸如磁敏感加权成像(SWI)等磁敏感MRI技术的出现,使得在体精确可视化和量化人脑中的铁沉积成为可能。尽管之前已经引入了一些方法来分割富含铁的脑区,如黑质、丘脑底核、红核和齿状核,但这些方法大多不可用,手动标注仍然是标记这些区域最常用的方法。此外,鉴于卷积神经网络(CNN)最近在优于其他分割方法方面取得的成功,它们有望实现更好的性能。因此,本研究的目的是评估用于从SW图像标记脑深部核团的先进CNN架构。我们实现了五种CNN架构,并考虑了这些模型的集成。此外,还纳入了一个多图谱分割模型,以提供一种不基于CNN的比较。我们评估了两种预测策略:个体预测,即针对每个区域独立训练一个模型;以及联合预测,即同时预测多个位置相近的区域。在训练数据集中,所有模型的准确率都很高,Dice系数在0.80到0.95之间。模型标签中的区域SWI强度和体积与手动标签获得的结果高度相关。在外部数据集上性能有所下降,但高于或与评分者内信度相当,并且大多数模型与多图谱分割相比取得了显著更好的结果。CNNs能够准确捕捉脑深部核团的个体变异性,是从SW图像分割这些核团的非常有用的工具。