Koopman Thomas, Martens Roland, Gurney-Champion Oliver J, Yaqub Maqsood, Lavini Cristina, de Graaf Pim, Castelijns Jonas, Boellaard Ronald, Marcus J Tim
Department of Radiology and Nuclear Medicine, Amsterdam UMC, Vrije Universiteit Amsterdam, Amsterdam, the Netherlands.
Department of Radiology, Amsterdam UMC, University of Amsterdam, Amsterdam, the Netherlands.
Magn Reson Med. 2021 Jun;85(6):3394-3402. doi: 10.1002/mrm.28671. Epub 2021 Jan 26.
The intravoxel incoherent motion (IVIM) model for DWI might provide useful biomarkers for disease management in head and neck cancer. This study compared the repeatability of three IVIM fitting methods to the conventional nonlinear least-squares regression: Bayesian probability estimation, a recently introduced neural network approach, IVIM-NET, and a version of the neural network modified to increase consistency, IVIM-NET .
Ten healthy volunteers underwent two imaging sessions of the neck, two weeks apart, with two DWI acquisitions per session. Model parameters (ADC, diffusion coefficient , perfusion fraction , and pseudo-diffusion coefficient ) from each fit method were determined in the tonsils and in the pterygoid muscles. Within-subject coefficients of variation (wCV) were calculated to assess repeatability. Training of the neural network was repeated 100 times with random initialization to investigate consistency, quantified by the coefficient of variance.
The Bayesian and neural network approaches outperformed nonlinear regression in terms of wCV. Intersession wCV of in the tonsils was 23.4% for nonlinear regression, 9.7% for Bayesian estimation, 9.4% for IVIM-NET, and 11.2% for IVIM-NET . However, results from repeated training of the neural network on the same data set showed differences in parameter estimates: The coefficient of variances over the 100 repetitions for IVIM-NET were 15% for both and , and 94% for ; for IVIM-NET , these values improved to 5%, 9%, and 62%, respectively.
Repeatabilities from the Bayesian and neural network approaches are superior to that of nonlinear regression for estimating IVIM parameters in the head and neck.
扩散加权成像(DWI)的体素内不相干运动(IVIM)模型可能为头颈癌的疾病管理提供有用的生物标志物。本研究比较了三种IVIM拟合方法与传统非线性最小二乘回归的可重复性:贝叶斯概率估计、最近引入的神经网络方法IVIM-NET,以及为提高一致性而修改的神经网络版本IVIM-NET 。
10名健康志愿者在相隔两周的时间内对颈部进行了两次成像检查,每次检查进行两次DWI采集。在扁桃体和翼状肌中确定每种拟合方法的模型参数(表观扩散系数[ADC]、扩散系数 、灌注分数 和伪扩散系数 )。计算受试者内变异系数(wCV)以评估可重复性。对神经网络进行100次随机初始化重复训练,以研究一致性,用方差系数进行量化。
在wCV方面,贝叶斯和神经网络方法优于非线性回归。扁桃体中 的组间wCV对于非线性回归为23.4%,对于贝叶斯估计为9.7%,对于IVIM-NET为9.4%,对于IVIM-NET 为11.2%。然而,在同一数据集上对神经网络进行重复训练的结果显示参数估计存在差异:IVIM-NET在100次重复中的方差系数对于 和 均为15%,对于 为94%;对于IVIM-NET ,这些值分别提高到5%、9%和62%。
在估计头颈部位的IVIM参数方面,贝叶斯和神经网络方法的可重复性优于非线性回归。