基于卷积神经网络的早期小儿弥散MRI自动运动伪影检测

Jayse Merle Weaver, Marissa DiPiero, Patrik Goncalves Rodrigues, Hassan Cordash, Richard J. Davidson, Elizabeth M. Planalp, Douglas C. Dean III
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引用次数: 0

摘要

弥散MRI (Diffusion MRI, dMRI)是一种广泛应用于研究大脑微观结构的方法。dMRI数据的质量控制(QC)是在使用扩散张量成像(DTI)或神经突取向弥散和密度成像(NODDI)等模型进行分析之前进行的重要处理步骤。当处理婴儿和幼儿的dMRI数据时,扫描内运动是常见的,运动伪影的识别和去除是至关重要的。dMRI数据的人工QC(1)由于扩散方向多,耗时长;(2)成本高;(3)容易出现主观误差和观察者的可变性。先前的自动化dMRI QC技术大多局限于成人或学龄儿童。在这里,我们提出了一种基于深度学习的运动伪影检测工具,用于婴幼儿的dMRI数据。该框架使用了一个简单的三维卷积神经网络(3DCNN),并在一个早期儿童数据集上进行了训练和测试,该数据集包括2276个dMRI体积,这些数据来自1个月和24个月大的121次检查。经过四次交叉验证,平均分类准确率达到95%。第二个数据集具有不同的采集参数和年龄范围为2-36个月(包括来自26次检查的2,349个dMRI体积),用于测试网络泛化性,达到98%的分类准确率。最后,为了证明运动伪影体积去除在dMRI处理流程中的重要性,将dMRI数据拟合到DTI和NODDI模型中,并比较了去除运动伪影和不去除运动伪影的参数图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Motion Artifact Detection in Early Pediatric Diffusion MRI Using a Convolutional Neural Network
Abstract Diffusion MRI (dMRI) is a widely used method to investigate the microstructure of the brain. Quality control (QC) of dMRI data is an important processing step that is performed prior to analysis using models such as diffusion tensor imaging (DTI) or neurite orientation dispersion and density imaging (NODDI). When processing dMRI data from infants and young children, where intra-scan motion is common, the identification and removal of motion artifacts is of the utmost importance. Manual QC of dMRI data is (1) time-consuming due to the large number of diffusion directions, (2) expensive, and (3) prone to subjective errors and observer variability. Prior techniques for automated dMRI QC have mostly been limited to adults or school-age children. Here, we propose a deep learning-based motion artifact detection tool for dMRI data acquired from infants and toddlers. The proposed framework uses a simple three-dimensional convolutional neural network (3DCNN) trained and tested on an early pediatric dataset of 2,276 dMRI volumes from 121 exams acquired at 1 month and 24 months of age. An average classification accuracy of 95% was achieved following four-fold cross-validation. A second dataset with different acquisition parameters and ages ranging from 2-36 months (consisting of 2,349 dMRI volumes from 26 exams) was used to test network generalizability, achieving 98% classification accuracy. Finally, to demonstrate the importance of motion artifact volume removal in a dMRI processing pipeline, the dMRI data were fit to the DTI and NODDI models and the parameter maps were compared with and without motion artifact removal.
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