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Model-Based Learning for Quantitative Susceptibility Mapping

机译:基于模型的定量易感性测绘学习

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摘要

Quantitative susceptibility mapping (QSM) is a magnetic resonance imaging (MRI) technique that estimates magnetic susceptibility of tissue from Larmor frequency offset measurements. The generation of QSM requires solving a challenging ill-posed field-to-source inversion problem. Inaccurate field-to-source inversion often causes large susceptibility estimation errors that appear as streaking artifacts in the QSM, especially in massive hernorrhagic regions. Recently, several deep learning (DL) QSM techniques have been proposed and demonstrated impressive performance. Due to the inherent non-existent ground-truth QSM references, these DL techniques used either calculation of susceptibility through multiple orientation sampling (COSMOS) maps or synthetic data for network training. Therefore, they were constrained by the availability and accuracy of COSMOS maps, or suffered from performance drop when the training and testing domains were different. To address these limitations, we present a model-based DL method, denoted as uQSM. Without accessing to QSM labels, uQSM is trained using the well-established physical model. When evaluating on multi-orientation QSM datasets, uQSM achieves higher levels of quantitative accuracy compared to TKD, TV-FANSI, MEDI, and DIP approaches. When qualitatively evaluated on single-orientation datasets, uQSM outperforms other methods and reconstructed high quality QSM.
机译:定量敏感性映射(QSM)是一种磁共振成像(MRI)技术,其估计来自大学频率偏移测量的组织的磁化率。 QSM的生成需要解决一个挑战的弊端对源反演问题。不准确的现场到源反转常常导致大的易感性估计误差在QSM中出现在QSM中的条纹伪像,尤其是在大规模的河流区域中。最近,已经提出了几种深度学习(DL)QSM技术,并表现出令人印象深刻的性能。由于固有的不存在地面真值QSM参考文献,这些DL技术使用通过多个​​方向采样(COSMOS)地图或合成数据来计算易感性来计算网络训练。因此,它们受到宇宙地图的可用性和准确性的限制,或者当训练和测试域不同时遭受性能下降。为了解决这些限制,我们介绍了一种基于模型的DL方法,表示为UQSM。如果不访问QSM标签,则使用良好的物理模型培训UQSM。在评估多向QSM数据集时,与TKD,TV-Fansi,Medi和DIP方法相比,UQSM实现了更高的定量精度。在单向数据集上定性评估时,UQSM优于其他方法并重建高质量的QSM。

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