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Motion-robust parameter estimation in abdominal diffusion-weighted MRI by simultaneous image registration and model estimation

机译:腹部扩散加权MRI通过同时图像配准和模型估计运动 - 鲁棒参数估计

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Quantitative body DW-MRI can detect abdominal abnormalities as well as monitor response-to-therapy for applications including cancer and inflammatory bowel disease with increased accuracy. Parameter estimates are obtained by fitting a forward model of DW-MRI signal decay to the observed data acquired with several b-values. The DW-MRI signal decay models typically used do not account for respiratory, cardiac and peristaltic motion, however, which may deteriorate the accuracy and robustness of parameter estimates. In this work, we introduce a new model of DW-MRI signal decay that explicitly accounts for motion. Specifically, we estimated motion-compensated model parameters by simultaneously solving image registration and model estimation (SIR-ME) problems utilizing the interdependence of acquired volumes along the diffusion-weighting dimension. To accomplish this, we applied the SIR-ME model to the in-vivo DW-MRI data sets of 26 Crohn's disease (CD) patients and achieved improved precision of the estimated parameters by reducing the coefficient of variation by 8%, 24% and 8% for slow diffusion (D), fast diffusion (D*) and fast diffusion fraction (f) parameters respectively, compared to parameters estimated with independent registration in normal-appearing bowel regions. Moreover, the parameters estimated with the SIR-ME model reduced the error rate in classifying normal and abnormal bowel loops to 12% for D and 10% for f parameter with a reduction in error rate by 13% and 11% for D and f parameters, respectively, compared to the error rate in classifying parameter estimates obtained with independent registration. The experiments in DW-MRI of liver in 20 subjects also showed that the SIR-ME model improved the precision of parameter estimation by reducing the coefficient of variation to 7% for D, 23% for D*, and 8% for the f parameter. Using the SIR-ME model, the coefficient of variation was reduced by 4%, 14% and 6% for D, D* and f parameters, respectively, compared to parameters estimated with independent registration. These results demonstrate that the proposed SIR-ME model improves the accuracy and robustness of quantitative body DW-MRI in characterizing tissue microstructure. (C) 2017 Elsevier B.V. All rights reserved.
机译:定量体DW-MRI可以检测腹部异常以及监测响应对治疗的应用,适用于癌症和炎症性肠病的应用,具有提高的准确性。通过将DW-MRI信号衰减的前向模型拟合到具有多个B值获取的观察数据来获得参数估计。通常使用的DW-MRI信号衰减模型不考虑呼吸,心脏和蠕动运动,但是,这可能会降低参数估计的准确性和鲁棒性。在这项工作中,我们介绍了一种新的DW-MRI信号衰减模型,明确地占运动。具体地,我们通过同时求解图像配准和模型估计(SIR-ME)沿着扩散加权维度的相互依存来估计运动补偿的模型参数。为了实现这一目标,我们将先生ME模型应用于26克罗恩病(CD)患者的体内DW-MRI数据集,并通过将变异系数降低8%,24%和达到估计参数的改善精度与在正常出现的肠区的独立配准估计的参数相比,慢扩散(D),快速扩散(D *)和快速扩散级分(F)参数分别为8%。此外,使用SIR-ME模型估计的参数将正常和异常排便的错误率降低至12%的D和10%的F参数,误差率降低13%和11%,对于D和F参数分别与分类参数估计的错误率相比,与独立注册获得的误差率相比。 20个科目中肝脏DW-MRI的实验还表明,主先生模型通过将D *为7%的变化系数降低到7%,对于F参数的8%而改善了参数估计的精度。与具有独立配准的参数相比,使用SIR-ME模型,分别对D,D *和F参数的变化系数分别降低了4%,14%和6%。这些结果表明,所提出的SIR-ME模型提高了定量体DW-MRI的精度和稳健性,表征组织微观结构。 (c)2017 Elsevier B.v.保留所有权利。

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