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Harmonizing Diffusion MRI Data Across Magnetic Field Strengths

机译:跨磁场强度协调扩散MRI数据

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Diffusion MRI (dMRI) data is increasingly being acquired on multiple scanners as part of large multi-center neuroimaging studies. However, diffusion imaging is particularly sensitive to scanner-specific differences in coil sensitivity, reconstruction algorithms, acquisition parameters as well as the scanner magnetic field strength, which precludes joint analysis of such multi-site data. Earlier works on dMRI data harmonization were limited to data acquired on different scanners but with the same magnetic field strength (3T). In this work, we explore the possibility of harmonizing dMRI data acquired on scanners with different magnetic field strengths, i.e., 3T and 7T. We propose a linear and several machine learning based non-linear mapping algorithms that use rotation invariant spherical harmonic (RISH) features to map the dMRI data (the raw signal) between scanners without changing the fiber orientations. We extensively validate our algorithms on in-vivo data from the Human Connectome Project (HCP) where we used data from 40 subjects with scans done on both 7T and 3T scanners (10 training + 30 test). Using several quantitative metrics such as the root mean squared error (RMSE) in the harmonized dMRI signal and diffusion measures as well as a fiber bundle overlap measure, our preliminary results on 30 test subjects shows that the convolutional neural network (CNN) based algorithm can reliably harmonize the raw dMRI signal across magnetic field strengths. The algorithms proposed are general and can be used for dMRI data harmonization in multi-site studies.
机译:作为大型多中心神经影像学研究的一部分,越来越多地在多台扫描仪上获取扩散MRI(dMRI)数据。但是,扩散成像对扫描仪特定的线圈灵敏度,重建算法,采集参数以及扫描仪磁场强度特别敏感,这使得无法对此类多站点数据进行联合分析。早期关于dMRI数据协调的工作仅限于在不同扫描仪上获得的数据,但具有相同的磁场强度(3T)。在这项工作中,我们探索了协调在具有不同磁场强度(即3T和7T)的扫描仪上获取的dMRI数据的可能性。我们提出了一种基于线性和几种基于机器学习的非线性映射算法,该算法使用旋转不变球谐(RISH)功能在扫描器之间映射dMRI数据(原始信号),而无需更改光纤方向。我们对来自人类连接基因组计划(HCP)的体内数据的算法进行了广泛的验证,在该数据中,我们使用了来自40位受试者的数据,并在7T和3T扫描仪上进行了扫描(10次训练+ 30次测试)。使用多个定量指标,例如协调的dMRI信号中的均方根误差(RMSE),扩散测度以及纤维束重叠测度,我们对30个测试对象的初步结果表明,基于卷积神经网络(CNN)的算法可以在磁场强度范围内可靠地协调原始dMRI信号。提出的算法是通用的,可用于多站点研究中的dMRI数据协调。

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