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Nonparametric Density Flows for MRI Intensity Normalisation

机译:MRI强度归一化的非参数密度流

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摘要

With the adoption of powerful machine learning methods in medical image analysis, it is becoming increasingly desirable to aggregate data that is acquired across multiple sites. However, the underlying assumption of many analysis techniques that corresponding tissues have consistent intensities in all images is often violated in multi-centre databases. We introduce a novel intensity normalisation scheme based on density matching, wherein the histograms are modelled as Dirichlet process Gaussian mixtures. The source mixture model is transformed to minimise its L2 divergence towards a target model, then the voxel intensities are transported through a mass-conserving flow to maintain agreement with the moving density. In a multi-centre study with brain MRI data, we show that the proposed technique produces excellent correspondence between the matched densities and histograms. We further demonstrate that our method makes tissue intensity statistics substantially more compatible between images than a baseline affine transformation and is comparable to state-of-the-art while providing considerably smoother transformations. Finally, we validate that nonlinear intensity normalisation is a step toward effective imaging data harmonisation.
机译:随着医学图像分析中强大的机器学习方法的采用,聚合跨多个站点获取的数据变得越来越可取。但是,在多中心数据库中经常违反许多分析技术的基本假设,即相应的组织在所有图像中具有一致的强度。我们介绍了一种基于密度匹配的新颖强度归一化方案,其中直方图被建模为Dirichlet过程高斯混合。转换源混合模型以最小化其向目标模型的L2散度,然后通过质量守恒流传输体素强度,以保持与移动密度的一致性。在具有大脑MRI数据的多中心研究中,我们表明,提出的技术在匹配的密度和直方图之间产生了极好的对应关系。我们进一步证明,与基线仿射变换相比,我们的方法可使组织强度统计在图像之间更加兼容,并且在提供相当平滑的变换的同时,还可以与最新技术相媲美。最后,我们验证了非线性强度归一化是朝着有效成像数据统一迈出的一步。

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