Motion Artifact Detection for T1-Weighted Brain MR Images Using Convolutional Neural Networks.

International journal of neural systems Pub Date : 2024-10-01 Epub Date: 2024-07-12 DOI:10.1142/S0129065724500527
Erik Roecher, Lucas Mösch, Jana Zweerings, Frank O Thiele, Svenja Caspers, Arnim Johannes Gaebler, Patrick Eisner, Pegah Sarkheil, Klaus Mathiak
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Abstract

Quality assessment (QA) of magnetic resonance imaging (MRI) encompasses several factors such as noise, contrast, homogeneity, and imaging artifacts. Quality evaluation is often not standardized and relies on the expertise, and vigilance of the personnel, posing limitations especially with large datasets. Machine learning based on convolutional neural networks (CNNs) is a promising approach to address these challenges by performing automated inspection of MR images. In this study, a CNN for the detection of random head motion artifacts (RHM) in T1-weighted MRI as one aspect of image quality is proposed. A two-step approach aimed to first identify images exhibiting pronounced motion artifacts, and second to evaluate the feasibility of a more detailed three-class classification. The utilized dataset consisted of 420 T1-weighted whole-brain image volumes with isotropic resolution. Human experts assigned each volume to one of three classes of artifact prominence. Results demonstrate an accuracy of 95% for the identification of images with pronounced artifact load. The addition of an intermediate class retained an accuracy of 76%. The findings highlight the potential of CNN-based approaches to increase the efficiency of post-hoc QAs in large datasets by flagging images with potentially relevant artifact loads for closer inspection.

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利用卷积神经网络检测 T1 加权脑 MR 图像的运动伪影
磁共振成像(MRI)的质量评估(QA)包括噪声、对比度、均匀性和成像伪影等多个因素。质量评估通常没有标准化,依赖于工作人员的专业知识和警惕性,特别是在处理大型数据集时存在局限性。基于卷积神经网络(CNN)的机器学习是一种很有前途的方法,可通过对磁共振图像进行自动检查来应对这些挑战。本研究提出了一种用于检测 T1 加权磁共振成像中随机头部运动伪影(RHM)的 CNN,作为图像质量的一个方面。该方法分两步进行,第一步是识别表现出明显运动伪影的图像,第二步是评估更详细的三类分类的可行性。所使用的数据集包括 420 个具有各向同性分辨率的 T1 加权全脑图像卷。人类专家将每张图像划分为三类伪影突出度。结果表明,识别具有明显伪影负荷的图像的准确率为 95%。增加一个中间类别后,准确率保持在 76%。研究结果凸显了基于 CNN 的方法在大型数据集中提高事后质量检测效率的潜力,它可以标记出具有潜在相关伪影负荷的图像,以便进行更仔细的检查。
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