Automated detection of motion artifacts in brain MR images using deep learning

Marina Manso Jimeno, Keerthi Sravan Ravi, Maggie Fung, Dotun Oyekunle, Godwin Ogbole, John Thomas Vaughan Jr, Sairam Geethanath

Published: 01 Jan 2025, Last Modified: 12 Nov 2025NMR in BiomedicineEveryoneRevisionsCC BY-SA 4.0
Abstract: Quality assessment, including inspecting the images for artifacts, is a critical step during magnetic resonance imaging (MRI) data acquisition to ensure data quality and downstream analysis or interpretation success. This study demonstrates a deep learning (DL) model to detect rigid motion in T1-weighted brain images. We leveraged a 2D convolutional neural network (CNN) trained on motion-synthesized data for three-class classification and tested it on publicly available retrospective and prospective datasets. Grad-CAM heatmaps enabled the identification of failure modes and provided an interpretation of the model's results. The model achieved average precision and recall metrics of 85% and 80% on six motion-simulated retrospective datasets. Additionally, the model's classifications on the prospective dataset showed 93% agreement with the labeling of a radiologist a strong inverse correlation (−0.84) compared to average edge strength, an image quality metric indicative of motion. This model is aimed at inline automatic detection of motion artifacts, accelerating part of the time-consuming quality assessment (QA) process and augmenting expertise on-site, particularly relevant in low-resource settings where local MR knowledge is scarce.
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