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结合超高性能梯度扩散成像和基于模型的深度学习,利用三维多层采集技术在高b值和高分辨率下进行的高级微观结构成像。

Advanced microstructure imaging at high b-values and high resolution combining ultra-high performance gradient diffusion imaging and model-based deep learning demonstrated using 3D multi-slab acquisition.

作者信息

Lee Chu-Yu, Ghorbani Reza, Rajabi Mahsa, Mani Merry

机构信息

Department of Radiology, University of Iowa, Iowa City, Iowa, USA.

Department of Electrical and Computer Engineering, University of Virginia, Charlottesville, USA.

出版信息

Magn Reson Med. 2025 Aug 24. doi: 10.1002/mrm.70046.

Abstract

PURPOSE

To demonstrate the extended capabilities of 3D multi-slab diffusion-weighted acquisition (3D-msDWI) on high-performance gradients (HPG) to support advanced microstructure modeling for in-vivo human studies at high resolutions.

METHODS

Despite optimal SNR-efficiency, the application of 3D-msDWI has been limited by the long volume acquisition times (VAT) required for encoding the 3D k-space using multi-shot approaches. Substantial reduction of VAT is possible by employing optimized 3D k-space under-sampling methods. We demonstrate that with reduced VAT, 3D-msDWI can be successfully utilized for advanced brain microstructure modeling at high resolution. HPG systems (e.g.,  mT/m,  T/m/s) enable further optimization through shorter echo times at high b-values. We evaluated the accelerated 3D-msDWI method's ability to support diffusion studies at 1mm isotropic resolution using data collected across three shells, with b-values extended up to 6000  , and employing compartment models. The reconstruction employed a navigator-based, motion-compensated approach using a regularized, iterative model-based algorithm.

RESULTS

The accelerated 3D-msDWI framework enabled the generation of whole-brain parametric maps of a three-compartment model, at 1mm isotropic resolution, using a 3-shell, 66-direction acquisition completed in 15 min. The intra-axonal diffusivities (in ) and volume fractions reported from the method are as follows: 2.27 0.14; 0.6 0.04 in corpus-callosum, 2.17 0.09; 0.66 0.03 in anterior limb of internal capsule, 2.18 0.08; 0.68 0.04 in posterior limb of internal capsule, 2.07 0.06; 0.62 0.04 in corona radiata, 2.25 0.08; 0.68 0.04 in cortico-spinal tract, 2.12 0.04; 0.63 0.05 in superior longitudinal fasciculus, with a coefficient of variation % across subjects for all regions studied. The quantified values were validated using standard single-diffusion and multi-dimensional q-trajectory encoding acquisitions.

CONCLUSION

The inherent optimal SNR-efficiency of the 3D-msDWI framework can be harnessed for whole-brain high-resolution advanced microstructure modeling for in-vivo human studies, using advanced hardware and reconstruction.

摘要

目的

展示高性能梯度(HPG)上的三维多层扩散加权采集(3D-msDWI)的扩展能力,以支持高分辨率的体内人体研究的高级微观结构建模。

方法

尽管具有最佳的信噪比效率,但3D-msDWI的应用受到使用多次激发方法编码三维k空间所需的长时间容积采集时间(VAT)的限制。通过采用优化的三维k空间欠采样方法,可以大幅减少VAT。我们证明,随着VAT的减少,3D-msDWI可以成功用于高分辨率的高级脑微观结构建模。HPG系统(例如,mT/m,T/m/s)能够通过在高b值下缩短回波时间来进一步优化。我们使用跨三个壳层收集的数据,评估了加速的3D-msDWI方法在1mm各向同性分辨率下支持扩散研究的能力,b值扩展到6000,并采用了隔室模型。重建采用基于导航器的运动补偿方法,使用正则化的基于迭代模型的算法。

结果

加速的3D-msDWI框架能够在1mm各向同性分辨率下生成三室模型的全脑参数图,使用在15分钟内完成的三壳层、66方向采集。该方法报告的轴突内扩散率(单位:)和体积分数如下:胼胝体为2.27±0.14;0.6±0.04,内囊前肢为2.17±0.09;0.66±0.03,内囊后肢为2.18±0.08;0.68±0.04,放射冠为2.07±0.06;0.62±0.04,皮质脊髓束为2.25±0.08;0.68±0.04,上纵束为2.12±0.04;0.63±0.05,所有研究区域的受试者变异系数为%。使用标准的单扩散和多维q轨迹编码采集对量化值进行了验证。

结论

3D-msDWI框架固有的最佳信噪比效率可用于体内人体研究的全脑高分辨率高级微观结构建模,采用先进的硬件和重建技术。

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