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一种用于纵向图像对图像回归的时空模型。

A Spatio-Temporal Model for Longitudinal Image-on-Image Regression.

作者信息

Hazra Arnab, Reich Brian J, Reich Daniel S, Shinohara Russell T, Staicu Ana-Maria

机构信息

North Carolina State University, Raleigh, NC, USA.

National Institute of Neurological Disorders and Stroke, Bethesda, MD, USA.

出版信息

Stat Biosci. 2019 Apr;11(1):22-46. Epub 2017 Oct 23.

Abstract

Neurologists and radiologists often use magnetic resonance imaging (MRI) in the management of subjects with multiple sclerosis (MS) because it is sensitive to inflammatory and demyelinative changes in the white matter of the brain and spinal cord. Two conventional modalities used for identifying lesions are T1-weighted (T1) and T2-weighted fluid-attenuated inversion recovery (FLAIR) imaging, which are used clinically and in research studies. Magnetization transfer ratio (MTR), which is available only in research settings, is an advanced MRI modality that has been used extensively for measuring disease-related demyelination both in white matter lesions as well across normal-appearing white matter. Acquiring MTR is not standard in clinical practice, due to the increased scan time and cost. Hence, prediction of MTR based on the modalities T1 and FLAIR could have great impact on the availability of these promising measures for improved patient management. We propose a spatio-temporal regression model for image response and image predictors that are acquired longitudinally, with images being co-registered within the subject but not across subjects. The model is additive, with the response at a voxel being dependent on the available covariates not only through the current voxel but also on the imaging information from the voxels within a neighboring spatial region as well as their temporal gradients. We propose a dynamic Bayesian estimation procedure that updates the parameters of the subject-specific regression model as data accummulates. To bypass the computational challenges associated with a Bayesian approach for high-dimensional imaging data, we propose an approximate Bayesian inference technique. We assess the model fitting and the prediction performance using longitudinally acquired MRI images from 46 MS patients.

摘要

神经科医生和放射科医生在多发性硬化症(MS)患者的管理中经常使用磁共振成像(MRI),因为它对大脑和脊髓白质中的炎症和脱髓鞘变化敏感。用于识别病变的两种传统模式是T1加权(T1)和T2加权液体衰减反转恢复(FLAIR)成像,它们在临床和研究中都有应用。磁化传递率(MTR)仅在研究环境中可用,是一种先进的MRI模式,已广泛用于测量白质病变以及正常外观白质中的疾病相关脱髓鞘。由于扫描时间和成本增加,在临床实践中获取MTR并不标准。因此,基于T1和FLAIR模式预测MTR可能会对这些有前景的测量方法在改善患者管理方面的可用性产生重大影响。我们提出了一种时空回归模型,用于纵向获取的图像响应和图像预测因子,图像在个体内部进行配准,但不在个体之间进行配准。该模型是加性的,体素处的响应不仅通过当前体素依赖于可用协变量,还依赖于相邻空间区域内体素的成像信息及其时间梯度。我们提出了一种动态贝叶斯估计程序,随着数据积累更新个体特定回归模型的参数。为了绕过与贝叶斯方法处理高维成像数据相关的计算挑战,我们提出了一种近似贝叶斯推理技术。我们使用46名MS患者纵向获取的MRI图像评估模型拟合和预测性能。

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