National Engineering Research Center of Advanced Magnetic Resonance Technologies for Diagnosis and Therapy, School of Biomedical Engineering, Shanghai Jiao Tong University, 415 S Med-X Center, 1954 Huashan Road, Shanghai, 200030, China.
Department of Cardiovascular Medicine, Heart Failure Center, Ruijin Hospital Lu Wan Branch, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
J Cardiovasc Magn Reson. 2023 Nov 23;25(1):68. doi: 10.1186/s12968-023-00988-z.
To develop a partially interpretable neural network for joint suppression of banding and flow artifacts in non-phase-cycled bSSFP cine imaging.
A dual-stage neural network consisting of a voxel-identification (VI) sub-network and artifact-suppression (AS) sub-network is proposed. The VI sub-network provides identification of artifacts, which guides artifact suppression and improves interpretability. The AS sub-network reduces banding and flow artifacts. Short-axis cine images of 12 frequency offsets from 28 healthy subjects were used to train and test the dual-stage network. An additional 77 patients were retrospectively enrolled to evaluate its clinical generalizability. For healthy subjects, artifact suppression performance was analyzed by comparison with traditional phase cycling. The partial interpretability provided by the VI sub-network was analyzed via correlation analysis. Generalizability was evaluated for cine obtained with different sequence parameters and scanners. For patients, artifact suppression performance and partial interpretability of the network were qualitatively evaluated by 3 clinicians. Cardiac function before and after artifact suppression was assessed via left ventricular ejection fraction (LVEF).
For the healthy subjects, visual inspection and quantitative analysis found a considerable reduction of banding and flow artifacts by the proposed network. Compared with traditional phase cycling, the proposed network improved flow artifact scores (4.57 ± 0.23 vs 3.40 ± 0.38, P = 0.002) and overall image quality (4.33 ± 0.22 vs 3.60 ± 0.38, P = 0.002). The VI sub-network well identified the location of banding and flow artifacts in the original movie and significantly correlated with the change of signal intensities in these regions. Changes of imaging parameters or the scanner did not cause a significant change of overall image quality relative to the baseline dataset, suggesting a good generalizability. For the patients, qualitative analysis showed a significant improvement of banding artifacts (4.01 ± 0.50 vs 2.77 ± 0.40, P < 0.001), flow artifacts (4.22 ± 0.38 vs 2.97 ± 0.57, P < 0.001), and image quality (3.91 ± 0.45 vs 2.60 ± 0.43, P < 0.001) relative to the original cine. The artifact suppression slightly reduced the LVEF (mean bias = -1.25%, P = 0.01).
The dual-stage network simultaneously reduces banding and flow artifacts in bSSFP cine imaging with a partial interpretability, sparing the need for sequence modification. The method can be easily deployed in a clinical setting to identify artifacts and improve cine image quality.
开发一种部分可解释的神经网络,用于联合抑制非相位循环 bSSFP 电影成像中的条纹和流动伪影。
提出了一种由体素识别(VI)子网和伪影抑制(AS)子网组成的两级神经网络。VI 子网提供伪影的识别,指导伪影抑制并提高可解释性。AS 子网减少条纹和流动伪影。使用来自 28 名健康受试者的 12 个频率偏移的短轴电影图像来训练和测试两级网络。另外招募了 77 名患者以评估其临床通用性。对于健康受试者,通过与传统相位循环的比较来分析伪影抑制性能。通过相关分析分析 VI 子网提供的部分可解释性。评估了不同序列参数和扫描仪的通用性。对于患者,三位临床医生通过定性评估来评估网络的伪影抑制性能和部分可解释性。通过左心室射血分数(LVEF)评估伪影抑制前后的心脏功能。
对于健康受试者,视觉检查和定量分析发现,所提出的网络显著减少了条纹和流动伪影。与传统相位循环相比,该网络提高了流动伪影评分(4.57±0.23 对 3.40±0.38,P=0.002)和整体图像质量(4.33±0.22 对 3.60±0.38,P=0.002)。VI 子网很好地识别了原始电影中条纹和流动伪影的位置,并与这些区域信号强度的变化显著相关。成像参数或扫描仪的变化与基线数据集相比不会导致整体图像质量的显著变化,这表明通用性良好。对于患者,定性分析显示条纹伪影(4.01±0.50 对 2.77±0.40,P<0.001)、流动伪影(4.22±0.38 对 2.97±0.57,P<0.001)和图像质量(3.91±0.45 对 2.60±0.43,P<0.001)有明显改善与原始电影相比。伪影抑制略微降低了 LVEF(平均偏差=−1.25%,P=0.01)。
两级网络通过部分可解释性同时减少 bSSFP 电影成像中的条纹和流动伪影,无需修改序列。该方法可以轻松部署在临床环境中,以识别伪影并提高电影图像质量。