论文标题
DeepMir:用于MRI中脑微粒和铁沉积物差异检测的深神网络
DEEPMIR: A DEEP neural network for differential detection of cerebral Microbleeds and IRon deposits in MRI
论文作者
论文摘要
基底神经节中的Lobar脑大脑微粒(CMB)和局部的非肿瘤铁沉积物与脑老化,血管疾病和神经退行性疾病有关。特别是,CMB是小病变,需要多种神经影像学方式才能准确检测。从体内磁共振成像(MRI)得出的定量敏感性映射(QSM)对于区分铁含量和矿化是必要的。我们着手开发一种基于深度学习的分割方法,适合分割CMB和铁矿床。我们包括了来自MESA队列的24名参与者的便利样本,并使用了T2加权图像,易感加权成像(SWI)和QSM,以分割两种类型的病变。我们开发了一种协议,用于同时对基底神经节中CMB和非渗透铁矿沉积物进行手动注释。然后,该手动注释被用来训练深层卷积神经网络(CNN)。具体而言,我们对U-NET模型进行了更高数量的分辨率层调整,以便能够从标准分辨率MRI中检测小病变,例如CMB。我们测试了三种方式的不同组合,以确定检测任务最有用的数据源。在使用单类和多类模型检测CMB时,我们的平均灵敏度和精度分别在0.84-0.88和0.40-0.59之间。相同的框架检测到平均灵敏度和精度分别为0.75-0.81和0.62-0.75的非渗透铁矿沉积物。我们的结果表明,深度学习可以自动检测小血管疾病病变,包括多模式MR数据(尤其是QSM)可以改善具有敏感性和精度的CMB和非脾气暴躁的铁沉积物的检测,与大规模研究相兼容。
Lobar cerebral microbleeds (CMBs) and localized non-hemorrhage iron deposits in the basal ganglia have been associated with brain aging, vascular disease and neurodegenerative disorders. Particularly, CMBs are small lesions and require multiple neuroimaging modalities for accurate detection. Quantitative susceptibility mapping (QSM) derived from in vivo magnetic resonance imaging (MRI) is necessary to differentiate between iron content and mineralization. We set out to develop a deep learning-based segmentation method suitable for segmenting both CMBs and iron deposits. We included a convenience sample of 24 participants from the MESA cohort and used T2-weighted images, susceptibility weighted imaging (SWI), and QSM to segment the two types of lesions. We developed a protocol for simultaneous manual annotation of CMBs and non-hemorrhage iron deposits in the basal ganglia. This manual annotation was then used to train a deep convolution neural network (CNN). Specifically, we adapted the U-Net model with a higher number of resolution layers to be able to detect small lesions such as CMBs from standard resolution MRI. We tested different combinations of the three modalities to determine the most informative data sources for the detection tasks. In the detection of CMBs using single class and multiclass models, we achieved an average sensitivity and precision of between 0.84-0.88 and 0.40-0.59, respectively. The same framework detected non-hemorrhage iron deposits with an average sensitivity and precision of about 0.75-0.81 and 0.62-0.75, respectively. Our results showed that deep learning could automate the detection of small vessel disease lesions and including multimodal MR data (particularly QSM) can improve the detection of CMB and non-hemorrhage iron deposits with sensitivity and precision that is compatible with use in large-scale research studies.