论文标题
通过分层CNN的野外脑部MRI的稳健分割,没有再培训
Robust Segmentation of Brain MRI in the Wild with Hierarchical CNNs and no Retraining
论文作者
论文摘要
对诊所中获得的大脑MRI扫描的回顾性分析有可能使神经影像学研究具有比研究数据集中发现的样本量大得多的样本量。但是,分析“野外”的临床图像是充满挑战的,因为受试者被高度可变的方案(MR对比度,分辨率,方向等)进行了扫描。然而,最新的卷积神经网络(CNN)和图像分割的域随机化的进展,最能以公开可用的方法代表,可以使临床MRI的形态计量计算。在这项工作中,我们首先在马萨诸塞州综合医院获得了10,000多次扫描的未经切割的,异质的数据集中评估Synthseg。我们表明,合成剂通常是稳健的,但经常在信噪比低或组织对比度较差的扫描方面步履蹒跚。接下来,我们提出SynthSeg+,这是一种新颖的方法,可以使用条件分割和降解CNN的层次结构极大地减轻这些问题。我们表明,该方法比合成器更强大,同时表现优于级联网络和最新的分割denoising方法。最后,我们将方法应用于对衰老的概念证明体积研究,在该研究中,它在对高质量,1mm,T1加权扫描的研究研究中观察到的萎缩模式。代码和训练有素的模型可在https://github.com/bbillot/synthseg上公开获得。
Retrospective analysis of brain MRI scans acquired in the clinic has the potential to enable neuroimaging studies with sample sizes much larger than those found in research datasets. However, analysing such clinical images "in the wild" is challenging, since subjects are scanned with highly variable protocols (MR contrast, resolution, orientation, etc.). Nevertheless, recent advances in convolutional neural networks (CNNs) and domain randomisation for image segmentation, best represented by the publicly available method SynthSeg, may enable morphometry of clinical MRI at scale. In this work, we first evaluate SynthSeg on an uncurated, heterogeneous dataset of more than 10,000 scans acquired at Massachusetts General Hospital. We show that SynthSeg is generally robust, but frequently falters on scans with low signal-to-noise ratio or poor tissue contrast. Next, we propose SynthSeg+, a novel method that greatly mitigates these problems using a hierarchy of conditional segmentation and denoising CNNs. We show that this method is considerably more robust than SynthSeg, while also outperforming cascaded networks and state-of-the-art segmentation denoising methods. Finally, we apply our approach to a proof-of-concept volumetric study of ageing, where it closely replicates atrophy patterns observed in research studies conducted on high-quality, 1mm, T1-weighted scans. The code and trained model are publicly available at https://github.com/BBillot/SynthSeg.