Samani Zahra Riahi, Alappatt Jacob Antony, Parker Drew, Ismail Abdol Aziz Ould, Verma Ragini
Diffusion and Connectomics in Precision Healthcare Research Lab, Department of Radiology, University of Pennsylvania, Philadelphia, PA, United States.
Front Neurosci. 2020 Jan 22;13:1456. doi: 10.3389/fnins.2019.01456. eCollection 2019.
Quality assessment of diffusion MRI (dMRI) data is essential prior to any analysis, so that appropriate pre-processing can be used to improve data quality and ensure that the presence of MRI artifacts do not affect the results of subsequent image analysis. Manual quality assessment of the data is subjective, possibly error-prone, and infeasible, especially considering the growing number of consortium-like studies, underlining the need for automation of the process. In this paper, we have developed a deep-learning-based automated quality control (QC) tool, , for dMRI data, that can handle a variety of artifacts such as motion, multiband interleaving, ghosting, susceptibility, herringbone, and chemical shifts. QC-Automator uses convolutional neural networks along with transfer learning to train the automated artifact detection on a labeled dataset of ∼332,000 slices of dMRI data, from 155 unique subjects and 5 scanners with different dMRI acquisitions, achieving a 98% accuracy in detecting artifacts. The method is fast and paves the way for efficient and effective artifact detection in large datasets. It is also demonstrated to be replicable on other datasets with different acquisition parameters.
在进行任何分析之前,对扩散磁共振成像(dMRI)数据进行质量评估至关重要,这样才能使用适当的预处理来提高数据质量,并确保MRI伪影的存在不会影响后续图像分析的结果。对数据进行人工质量评估具有主观性,可能容易出错且不可行,特别是考虑到类似联盟研究的数量不断增加,这凸显了该过程自动化的必要性。在本文中,我们开发了一种基于深度学习的dMRI数据自动质量控制(QC)工具,即QC-Automator,它可以处理各种伪影,如运动、多频段交织、鬼影、磁化率、鱼骨状和化学位移。QC-Automator使用卷积神经网络以及迁移学习,在来自155个独特受试者和5台具有不同dMRI采集设备的约332,000片dMRI数据的标记数据集上训练自动伪影检测,在检测伪影方面达到了98%的准确率。该方法速度快,为在大型数据集中高效有效地检测伪影铺平了道路。它还被证明在具有不同采集参数的其他数据集上具有可复制性。