Department of Radiology and Biomedical Imaging, UCSF, San Francisco, CA, USA.
Department of Radiology and Biomedical Imaging, UCSF, San Francisco, CA, USA; UCSF/UC Berkeley Graduate Program in Bioengineering, San Francisco & Berkeley, CA, USA; Meta Platforms, Inc., Mountain View, CA, USA.
Neuroimage. 2023 Jan;265:119788. doi: 10.1016/j.neuroimage.2022.119788. Epub 2022 Dec 5.
Quantitative susceptibility mapping (QSM) is a promising tool for investigating iron dysregulation in neurodegenerative diseases, including Huntington's disease (HD). Many diverse methods have been proposed to generate accurate and robust QSM images. In this study, we evaluated the performance of different dipole inversion algorithms for iron-sensitive susceptibility imaging at 7T on healthy subjects of a large age range and patients with HD. We compared an iterative least-squares-based method (iLSQR), iterative methods that use regularization, single-step approaches, and deep learning-based techniques. Their performance was evaluated by comparing: (1) deviations from a multiple-orientation QSM reference; (2) visual appearance of QSM maps and the presence of artifacts; (3) susceptibility in subcortical brain regions with age; (4) regional brain susceptibility with published postmortem brain iron quantification; and (5) susceptibility in HD-affected basal ganglia regions between HD subjects and healthy controls. We found that single-step QSM methods with either total variation or total generalized variation constraints (SSTV/SSTGV) and the single-step deep learning method iQSM generally provided the best performance in terms of correlation with iron deposition and were better at differentiating between healthy controls and premanifest HD individuals, while deep learning QSM methods trained with multiple-orientation susceptibility data created QSM maps that were most similar to the multiple orientation reference and with the best visual scores.
定量磁化率映射(QSM)是研究神经退行性疾病中铁失调的一种很有前途的工具,包括亨廷顿病(HD)。已经提出了许多不同的方法来生成准确和稳健的 QSM 图像。在这项研究中,我们评估了不同偶极子反演算法在 7T 下对大年龄范围的健康受试者和 HD 患者进行铁敏感磁化率成像的性能。我们比较了基于迭代最小二乘的方法(iLSQR)、使用正则化的迭代方法、单步方法和基于深度学习的技术。通过比较以下方面来评估它们的性能:(1)与多方位 QSM 参考的偏差;(2)QSM 图的视觉外观和伪影的存在;(3)皮质下脑区的磁化率与年龄的关系;(4)与发表的死后脑铁定量的区域脑磁化率的关系;(5)HD 患者和健康对照者之间受影响的基底节区的磁化率。我们发现,具有全变分或全广义变分约束的单步 QSM 方法(SSTV/SSTGV)和单步深度学习方法 iQSM 通常在与铁沉积的相关性方面表现最好,并且在区分健康对照者和前manifest HD 个体方面表现更好,而使用多方位磁化率数据训练的深度学习 QSM 方法生成的 QSM 图与多方位参考最相似,视觉评分最好。