Department of Electronic Science, Fujian Provincial Key Laboratory of Plasma and Magnetic Resonance, Xiamen University, Xiamen 361005, People's Republic of China.
Phys Med Biol. 2024 Jan 30;69(3). doi: 10.1088/1361-6560/ad1d6d.
. Diffusion tensor imaging (DTI) is excellent for non-invasively quantifying tissue microstructure. Theoretically DTI can be achieved with six different diffusion weighted images and one reference image, but the tensor estimation accuracy is poor in this case. Increasing the number of diffusion directions has benefits for the tensor estimation accuracy, which results in long scan time and makes DTI sensitive to motion. It would be beneficial to decrease the scan time of DTI by using fewer diffusion-weighted images without compromising reconstruction quality.. A novel DTI scan scheme was proposed to achieve fast DTI, where only three diffusion directions per slice was required under a specific direction switching manner, and a deep-learning based reconstruction method was utilized using multi-slice information sharing and corresponding-weighted image for high-quality DTI reconstruction. A network with two encoders developed from U-Net was implemented for better utilizing the diffusion data redundancy between neighboring slices. The method performed direct nonlinear mapping from diffusion-weighted images to diffusion tensor.. The performance of the proposed method was verified on the Human Connectome Project public data and clinical patient data. High-quality mean diffusivity, fractional anisotropy, and directionally encoded colormap can be achieved with only three diffusion directions per slice.. High-quality DTI-derived maps can be achieved in less than one minute of scan time. The great reduction of scan time will help push the wider application of DTI in clinical practice.
弥散张量成像(DTI)是一种非常出色的非侵入性方法,可以定量分析组织的微观结构。理论上,可以通过 6 张不同的弥散加权图像和 1 张参考图像来实现 DTI,但在这种情况下,张量估计的准确性较差。增加弥散方向的数量可以提高张量估计的准确性,但这会导致扫描时间延长,并且使 DTI 对运动敏感。如果能够在不影响重建质量的情况下,通过使用较少的弥散加权图像来减少 DTI 的扫描时间,将是有益的。
我们提出了一种新的 DTI 扫描方案,以实现快速 DTI,该方案要求在特定的方向切换方式下,每个切片仅需要三个弥散方向,并且利用基于深度学习的重建方法,通过多切片信息共享和相应加权图像实现高质量的 DTI 重建。该方法利用了相邻切片之间弥散数据的冗余性,实现了两个来自 U-Net 的编码器的网络,以更好地利用弥散数据。该方法可以直接从弥散加权图像到弥散张量进行非线性映射。
在 HCP 公共数据集和临床患者数据上验证了所提出方法的性能。仅使用每个切片的三个弥散方向,就可以获得高质量的平均弥散度、各向异性分数和方向编码色图。
在不到一分钟的扫描时间内即可获得高质量的 DTI 衍生图。扫描时间的大幅减少将有助于推动 DTI 在临床实践中的更广泛应用。