School of Biomedical Engineering, Shanghai Jiao Tong University, Shanghai, China.
School of Psychology, Shanghai University of Sport, Shanghai, China.
Neuroimage. 2021 Oct 15;240:118376. doi: 10.1016/j.neuroimage.2021.118376. Epub 2021 Jul 8.
Quantitative susceptibility mapping (QSM) has demonstrated great potential in quantifying tissue susceptibility in various brain diseases. However, the intrinsic ill-posed inverse problem relating the tissue phase to the underlying susceptibility distribution affects the accuracy for quantifying tissue susceptibility. Recently, deep learning has shown promising results to improve accuracy by reducing the streaking artifacts. However, there exists a mismatch between the observed phase and the theoretical forward phase estimated by the susceptibility label. In this study, we proposed a model-based deep learning architecture that followed the STI (susceptibility tensor imaging) physical model, referred to as MoDL-QSM. Specifically, MoDL-QSM accounts for the relationship between STI-derived phase contrast induced by the susceptibility tensor terms (χ, χ and χ) and the acquired single-orientation phase. The convolutional neural networks are embedded into the physical model to learn a regularization term containing prior information. χ and phase induced by χ and χ terms were used as the labels for network training. Quantitative evaluation metrics were compared with recently developed deep learning QSM methods. The results showed that MoDL-QSM achieved superior performance, demonstrating its potential for future applications.
定量磁化率映射(QSM)在定量各种脑部疾病的组织磁化率方面具有巨大的潜力。然而,组织相位与潜在磁化率分布之间的固有不适定逆问题会影响量化组织磁化率的准确性。最近,深度学习通过减少条纹伪影显示出提高准确性的有前景的结果。然而,观察到的相位与磁化率标签估计的理论正向相位之间存在不匹配。在这项研究中,我们提出了一种基于模型的深度学习架构,遵循磁化张量成像(STI)物理模型,称为 MoDL-QSM。具体来说,MoDL-QSM 考虑了由磁化率张量项(χ、χ 和 χ)引起的 STI 衍生相位对比度与获得的单取向相位之间的关系。卷积神经网络被嵌入到物理模型中,以学习包含先验信息的正则化项。χ 和 χ 和 χ 项引起的相位被用作网络训练的标签。定量评估指标与最近开发的深度学习 QSM 方法进行了比较。结果表明,MoDL-QSM 表现出卓越的性能,展示了其在未来应用中的潜力。