Department of Radiology, West China Hospital, Sichuan University, 37 Guo Xue Xiang, Chengdu, 610041, Sichuan, China.
Clinical Science, Philips Healthcare, Chengdu, Sichuan, China.
Eur Radiol. 2024 Feb;34(2):842-851. doi: 10.1007/s00330-023-09996-0. Epub 2023 Aug 22.
To explore the use of deep learning-constrained compressed sensing (DLCS) in improving image quality and acquisition time for 3D MRI of the brachial plexus.
Fifty-four participants who underwent contrast-enhanced imaging and forty-one participants who underwent unenhanced imaging were included. Sensitivity encoding with an acceleration of 2 × 2 (SENSE4x), CS with an acceleration of 4 (CS4x), and DLCS with acceleration of 4 (DLCS4x) and 8 (DLCS8x) were used for MRI of the brachial plexus. Apparent signal-to-noise ratios (aSNRs), apparent contrast-to-noise ratios (aCNRs), and qualitative scores on a 4-point scale were evaluated and compared by ANOVA and the Friedman test. Interobserver agreement was evaluated by calculating the intraclass correlation coefficients.
DLCS4x achieved higher aSNR and aCNR than SENSE4x, CS4x, and DLCS8x (all p < 0.05). For the root segment of the brachial plexus, no statistically significant differences in the qualitative scores were found among the four sequences. For the trunk segment, DLCS4x had higher scores than SENSE4x (p = 0.04) in the contrast-enhanced group and had higher scores than SENSE4x and DLCS8x in the unenhanced group (all p < 0.05). For the divisions, cords, and branches, DLCS4x had higher scores than SENSE4x, CS4x, and DLCS8x (all p ≤ 0.01). No overt difference was found among SENSE4x, CS4x, and DLCS8x in any segment of the brachial plexus (all p > 0.05).
In three-dimensional MRI for the brachial plexus, DLCS4x can improve image quality compared with SENSE4x and CS4x, and DLCS8x can maintain the image quality compared to SENSE4x and CS4x.
Deep learning-constrained compressed sensing can improve the image quality or accelerate acquisition of 3D MRI of the brachial plexus, which should be benefit in evaluating the brachial plexus and its branches in clinical practice.
•Deep learning-constrained compressed sensing showed higher aSNR, aCNR, and qualitative scores for the brachial plexus than SENSE and CS at the same acceleration factor with similar scanning time. •Deep learning-constrained compressed sensing at acceleration factor of 8 had comparable aSNR, aCNR, and qualitative scores to SENSE4x and CS4x with approximately half the examination time. •Deep learning-constrained compressed sensing may be helpful in clinical practice for improving image quality and acquisition time in three-dimensional MRI of the brachial plexus.
探讨深度学习约束压缩感知(DLCS)在改善臂丛 3D MRI 图像质量和采集时间方面的应用。
共纳入 54 例接受增强成像和 41 例接受非增强成像的参与者。采用灵敏度编码加速 2×2(SENSE4x)、CS 加速 4(CS4x)和 DLCS 加速 4(DLCS4x)和 8(DLCS8x)对臂丛进行 MRI 检查。通过 ANOVA 和 Friedman 检验评估并比较表观信噪比(aSNR)、表观对比噪声比(aCNR)和 4 分制的定性评分。通过计算组内相关系数评估观察者间的一致性。
DLCS4x 比 SENSE4x、CS4x 和 DLCS8x 具有更高的 aSNR 和 aCNR(均 P<0.05)。对于臂丛的神经根段,四种序列之间的定性评分无统计学差异。对于干段,增强组中 DLCS4x 的评分高于 SENSE4x(P=0.04),非增强组中 DLCS4x 的评分高于 SENSE4x 和 DLCS8x(均 P<0.05)。对于分支、索和分支,DLCS4x 的评分高于 SENSE4x、CS4x 和 DLCS8x(均 P≤0.01)。在臂丛的任何节段,SENSE4x、CS4x 和 DLCS8x 之间均无明显差异(均 P>0.05)。
在臂丛 3D MRI 中,与 SENSE4x 和 CS4x 相比,DLCS4x 可以提高图像质量,与 SENSE4x 和 CS4x 相比,DLCS8x 可以保持图像质量。
深度学习约束压缩感知可以提高臂丛 MRI 的图像质量或加速采集,这将有助于在临床实践中评估臂丛及其分支。
与相同加速因子的 SENSE 和 CS 相比,深度学习约束压缩感知在相同的扫描时间内显示出更高的 SNR、CNR 和臂丛定性评分。
加速因子为 8 的深度学习约束压缩感知与 SENSE4x 和 CS4x 的 SNR、CNR 和定性评分相当,检查时间约为其一半。
深度学习约束压缩感知可能有助于改善臂丛 3D MRI 的图像质量和采集时间,从而有助于临床实践。