Variability and reproducibility of multi-echo T2 relaxometry: Insights from multi-site, multi-session and multi-subject MRI acquisitions.

Elda Fischi-Gomez, Gabriel Girard, Philipp J Koch, Thomas Yu, Marco Pizzolato, Julia Brügger, Gian Franco Piredda, Tom Hilbert, Andéol G Cadic-Melchior, Elena Beanato, Chang-Hyun Park, Takuya Morishita, Maximilian J Wessel, Simona Schiavi, Alessandro Daducci, Tobias Kober, Erick J Canales-Rodríguez, Friedhelm C Hummel, Jean-Philippe Thiran
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引用次数: 1

Abstract

Quantitative magnetic resonance imaging (qMRI) can increase the specificity and sensitivity of conventional weighted MRI to underlying pathology by comparing meaningful physical or chemical parameters, measured in physical units, with normative values acquired in a healthy population. This study focuses on multi-echo T2 relaxometry, a qMRI technique that probes the complex tissue microstructure by differentiating compartment-specific T2 relaxation times. However, estimation methods are still limited by their sensitivity to the underlying noise. Moreover, estimating the model's parameters is challenging because the resulting inverse problem is ill-posed, requiring advanced numerical regularization techniques. As a result, the estimates from distinct regularization strategies are different. In this work, we aimed to investigate the variability and reproducibility of different techniques for estimating the transverse relaxation time of the intra- and extra-cellular space (T2IE) in gray (GM) and white matter (WM) tissue in a clinical setting, using a multi-site, multi-session, and multi-run T2 relaxometry dataset. To this end, we evaluated three different techniques for estimating the T2 spectra (two regularized non-negative least squares methods and a machine learning approach). Two independent analyses were performed to study the effect of using raw and denoised data. For both the GM and WM regions, and the raw and denoised data, our results suggest that the principal source of variance is the inter-subject variability, showing a higher coefficient of variation (CoV) than those estimated for the inter-site, inter-session, and inter-run, respectively. For all reconstruction methods studied, the CoV ranged between 0.32 and 1.64%. Interestingly, the inter-session variability was close to the inter-scanner variability with no statistical differences, suggesting that T2IE is a robust parameter that could be employed in multi-site neuroimaging studies. Furthermore, the three tested methods showed consistent results and similar intra-class correlation (ICC), with values superior to 0.7 for most regions. Results from raw data were slightly more reproducible than those from denoised data. The regularized non-negative least squares method based on the L-curve technique produced the best results, with ICC values ranging from 0.72 to 0.92.

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多回声T2舒张测量的可变性和可重复性:来自多部位、多时段和多主体MRI采集的见解。
定量磁共振成像(qMRI)通过比较以物理单位测量的有意义的物理或化学参数与在健康人群中获得的正常值,可以提高常规加权MRI对潜在病理的特异性和敏感性。本研究的重点是多回声T2弛豫测量,这是一种通过区分室特异性T2弛豫时间来探测复杂组织微观结构的qMRI技术。然而,估计方法仍然受到其对潜在噪声的敏感性的限制。此外,估计模型的参数是具有挑战性的,因为所得到的逆问题是病态的,需要先进的数值正则化技术。因此,不同正则化策略的估计是不同的。在这项工作中,我们的目的是研究在临床环境中,使用多地点、多时段、多次运行的T2松弛测量数据集,估计灰质(GM)和白质(WM)组织的细胞内和细胞外空间(T2IE)横向松弛时间的不同技术的可变性和可重复性。为此,我们评估了三种不同的估计T2谱的技术(两种正则化非负最小二乘法和一种机器学习方法)。我们进行了两个独立的分析来研究使用原始数据和去噪数据的效果。对于GM和WM区域,以及原始数据和去噪数据,我们的结果表明,方差的主要来源是主体间变异性,其变异系数(CoV)分别高于站点间、时段间和运行间的估计。所有重建方法的CoV均在0.32 ~ 1.64%之间。有趣的是,会话间变异性与扫描仪间变异性接近,没有统计学差异,这表明T2IE是一个可靠的参数,可用于多部位神经影像学研究。此外,三种测试方法显示出一致的结果和相似的类内相关性(ICC),大多数地区的值都大于0.7。原始数据的结果比去噪数据的结果重现性稍好。基于l曲线技术的正则化非负最小二乘法得到的结果最好,ICC值在0.72 ~ 0.92之间。
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