首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >DeepHarmony: A deep learning approach to contrast harmonization across scanner changes
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DeepHarmony: A deep learning approach to contrast harmonization across scanner changes

机译:DeepHarmony:一种深入的学习方法,以扫描仪对比互动变化

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Magnetic resonance imaging (MRI) is a flexible medical imaging modality that often lacks reproducibility between protocols and scanners. It has been shown that even when care is taken to standardize acquisitions, any changes in hardware, software, or protocol design can lead to differences in quantitative results. This greatly impacts the quantitative utility of MRI in multi-site or long-term studies, where consistency is often valued over image quality. We propose a method of contrast harmonization, called DeepHarmony, which uses a U-Net-based deep learning architecture to produce images with consistent contrast. To provide training data, a small overlap cohort (n = 8) was scanned using two different protocols. Images harmonized with DeepHarmony showed significant improvement in consistency of volume quantification between scanning protocols. A longitudinal MRI dataset of patients with multiple sclerosis was also used to evaluate the effect of a protocol change on atrophy calculations in a clinical research setting. The results show that atrophy calculations were substantially and significantly affected by protocol change, whereas such changes have a less significant effect and substantially reduced overall difference when using DeepHarmony. This establishes that DeepHarmony can be used with an overlap cohort to reduce inconsistencies in segmentation caused by changes in scanner protocol, allowing for modernization of hardware and protocol design in long-term studies without invalidating previously acquired data.
机译:磁共振成像(MRI)是一种柔性的医学成像模型,通常缺乏协议和扫描仪之间的可重复性。已经表明,即使小心用于标准化采集时,硬件,软件或协议设计的任何变化也会导致定量结果的差异。这极大地影响了MRI在多场或长期研究中的定量效用,其中一致性往往在图像质量上受到重视。我们提出了一种对比协调的方法,称为DeepHarmony,它使用基于U-Net的深度学习架构来产生一致对比的图像。为了提供培训数据,使用两个不同的协议扫描小重叠队列(n = 8)。与Deepharmony协调的图像表明扫描协议之间的体积量化一致性的显着提高。多发性硬化患者的纵向MRI数据集也用于评估协议变化对临床研究环境中萎缩计算的影响。结果表明,萎缩计算基本上并受到议定书变化的显着影响,而此类变化具有较差的效果,并且在使用Deepharmony时大大降低了整体差异。这建立了Deepharmony可以与重叠队员一起使用,以减少由扫描仪协议的变化引起的分割中的不一致,允许在长期研究中进行硬件和协议设计的现代化,而不使先前获取的数据无效。

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