Systematic Review and Meta-analysis of AI-driven MRI Motion Artifact Detection and Correction.

ArXiv Pub Date : 2025-09-05
Mojtaba Safari, Zach Eidex, Richard L J Qiu, Matthew Goette, Tonghe Wang, Xiaofeng Yang
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Abstract

Background: To systematically review and perform a meta-analysis of artificial intelligence (AI)-driven methods for detecting and correcting magnetic resonance imaging (MRI) motion artifacts, assessing current developments, effectiveness, challenges, and future research directions.

Methods: A comprehensive systematic review and meta-analysis were conducted, focusing on deep learning (DL) approaches, particularly generative models, for the detection and correction of MRI motion artifacts. Quantitative data were extracted regarding utilized datasets, DL architectures, and performance metrics.

Results: DL, particularly generative models, shows promise for reducing motion artifacts and improving image quality; however, limited generalizability, reliance on paired training data, and risk of visual distortions remain key challenges that motivate standardized datasets and reporting.

Conclusions: AI-driven methods, particularly DL generative models, show significant potential for improving MRI image quality by effectively addressing motion artifacts. However, critical challenges must be addressed, including the need for comprehensive public datasets, standardized reporting protocols for artifact levels, and more advanced, adaptable DL techniques to reduce reliance on extensive paired datasets. Addressing these aspects could substantially enhance MRI diagnostic accuracy, reduce healthcare costs, and improve patient care outcomes.

人工智能驱动的MRI运动伪影检测与校正的系统综述与元分析。
背景:对人工智能(AI)驱动的磁共振成像(MRI)运动伪影检测和校正方法进行系统回顾和荟萃分析,评估当前的发展、有效性、挑战和未来的研究方向。方法:进行了全面的系统回顾和荟萃分析,重点关注深度学习(DL)方法,特别是生成模型,用于MRI运动伪影的检测和校正。提取了关于所利用的数据集、深度学习架构和性能指标的定量数据。结果:深度学习,特别是生成模型,显示出减少运动伪影和提高图像质量的希望;然而,有限的通用性、对成对训练数据的依赖以及视觉失真的风险仍然是激发标准化数据集和报告的关键挑战。结论:人工智能驱动的方法,特别是DL生成模型,通过有效地处理运动伪影,显示出改善MRI图像质量的巨大潜力。然而,关键的挑战必须得到解决,包括需要全面的公共数据集、工件级别的标准化报告协议,以及更先进、适应性更强的深度学习技术,以减少对大量成对数据集的依赖。解决这些问题可以大大提高MRI诊断的准确性,降低医疗成本,并改善患者的护理结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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