基于决策森林的磁共振成像运动伪影自动检测。

Journal of medical engineering Pub Date : 2017-01-01 Epub Date: 2017-06-11 DOI:10.1155/2017/4501647
Benedikt Lorch, Ghislain Vaillant, Christian Baumgartner, Wenjia Bai, Daniel Rueckert, Andreas Maier
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引用次数: 29

摘要

磁共振(MR)扫描的获取通常需要比受试者保持静止时间更长的时间。受试者的运动,如病人的整体运动或呼吸运动,会产生诸如重影、模糊和涂抹等图像伪影,从而降低图像质量及其诊断价值。本文主要研究运动对重建切片的影响,并利用基于随机决策森林的监督学习方法检测重建过程中的运动伪影。研究了头部扫描采集过程中不同时间点患者整体运动的影响以及呼吸运动对心脏扫描的影响。对合成图像进行评估,其中通过根据运动轨迹改变k空间数据引入了运动伪影,使用三种常见的k空间采样模式:笛卡尔、径向和螺旋。结果表明,机器学习方法能够很好地学习运动伪影的特征,并随后以依赖于采样模式的置信度检测运动伪影。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated Detection of Motion Artefacts in MR Imaging Using Decision Forests.

Automated Detection of Motion Artefacts in MR Imaging Using Decision Forests.

Automated Detection of Motion Artefacts in MR Imaging Using Decision Forests.

Automated Detection of Motion Artefacts in MR Imaging Using Decision Forests.

The acquisition of a Magnetic Resonance (MR) scan usually takes longer than subjects can remain still. Movement of the subject such as bulk patient motion or respiratory motion degrades the image quality and its diagnostic value by producing image artefacts like ghosting, blurring, and smearing. This work focuses on the effect of motion on the reconstructed slices and the detection of motion artefacts in the reconstruction by using a supervised learning approach based on random decision forests. Both the effects of bulk patient motion occurring at various time points in the acquisition on head scans and the effects of respiratory motion on cardiac scans are studied. Evaluation is performed on synthetic images where motion artefacts have been introduced by altering the k-space data according to a motion trajectory, using the three common k-space sampling patterns: Cartesian, radial, and spiral. The results suggest that a machine learning approach is well capable of learning the characteristics of motion artefacts and subsequently detecting motion artefacts with a confidence that depends on the sampling pattern.

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