Deep Learning Image Processing Enables 40% Faster Spinal MR Scans Which Match or Exceed Quality of Standard of Care A Prospective Multicenter Multireader Study

被引:35
作者
Bash, S. [1 ]
Johnson, B. [2 ]
Gibbs, W. [3 ]
Zhang, T. [4 ]
Shankaranarayanan, A. [5 ]
Tanenbaum, L. N. [1 ,6 ]
机构
[1] RadNet San Fernando Intervent Radiol, 1510 Cotner Ave, Los Angeles, CA 90025 USA
[2] Rayus Radiol, 5775 Wayzata Blvd Suite 190, St Louis Pk, MN 55416 USA
[3] Mayo Clin, Dept Neuroradiol, 5777 E Mayo Blvd, Phoenix, AZ 85054 USA
[4] Apple, One Apple Pk Way, Cupertino, CA 95014 USA
[5] Subtle Med, 883 Santa Cruz Ave, Menlo Pk, CA 94025 USA
[6] Radnet Lenox Hill Radiol, 755 Second Ave, New York, NY 10017 USA
关键词
MRI; Deep learning; Artificial intelligence; Spine; Imaging; MOTION;
D O I
10.1007/s00062-021-01121-2
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Objective This prospective multicenter multireader study evaluated the performance of 40% scan-time reduced spinal magnetic resonance imaging (MRI) reconstructed with deep learning (DL). Methods A total of 61 patients underwent standard of care (SOC) and accelerated (FAST) spine MRI. DL was used to enhance the accelerated set (FAST-DL). Three neuroradiologists were presented with paired side-by-side datasets (666 series). Datasets were blinded and randomized in sequence and left-right display order. Image features were preference rated. Structural similarity index (SSIM) and per pixel L1 was assessed for the image sets pre and post DL-enhancement as a quantitative assessment of image integrity impact. Results FAST-DL was qualitatively better than SOC for perceived signal-to-noise ratio (SNR) and artifacts and equivalent for other features. Quantitative SSIM was high, supporting the absence of image corruption by DL processing. Conclusion DL enables 40% spine MRI scan time reduction while maintaining diagnostic integrity and image quality with perceived benefits in SNR and artifact reduction, suggesting potential for clinical practice utility.
引用
收藏
页码:197 / 203
页数:7
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