论文标题
量化胎儿fMRI数据中的残余运动伪影
Quantifying Residual Motion Artifacts in Fetal fMRI Data
论文作者
论文摘要
胎儿功能磁共振成像(fMRI)已成为研究子宫内脑发育的强大工具,有望产生发育性疾病生物标志物并支持产前诊断。但是,迄今为止,其临床应用受到图像获取过程中不可预测的胎儿和母体运动的限制。即使在空间实现之后,这些引起虚假的信号波动,将功能连通性的衡量标准和连通性和个体差异之间关系的统计推断造成了偏见。由于大脑的功能结构没有地面真理,尤其是在出生之前,量化运动质量的质量是具有挑战性的。在本文中,我们提出了通过评估功能连通性与估计运动的残余关系以及与区域之间的距离的残留关系,以评估不同回归方法在重新调整后去除运动伪像的疗效。结果表明,我们评估标准的敏感性揭示了不同的伪影方法之间的相对优势和劣势,并强调在处理胎儿运动时需要更大的护理。
Fetal functional Magnetic Resonance Imaging (fMRI) has emerged as a powerful tool for investigating brain development in utero, holding promise for generating developmental disease biomarkers and supporting prenatal diagnosis. However, to date its clinical applications have been limited by unpredictable fetal and maternal motion during image acquisition. Even after spatial realigment, these cause spurious signal fluctuations confounding measures of functional connectivity and biasing statistical inference of relationships between connectivity and individual differences. As there is no ground truth for the brain's functional structure, especially before birth, quantifying the quality of motion correction is challenging. In this paper, we propose evaluating the efficacy of different regression based methods for removing motion artifacts after realignment by assessing the residual relationship of functional connectivity with estimated motion, and with the distance between areas. Results demonstrate the sensitivity of our evaluation's criteria to reveal the relative strengths and weaknesses among different artifact removal methods, and underscore the need for greater care when dealing with fetal motion.