4.7 Article

Deep learning enables reduced gadolinium dose for contrast-enhanced brain MRI

Journal

JOURNAL OF MAGNETIC RESONANCE IMAGING
Volume 48, Issue 2, Pages 330-340

Publisher

WILEY
DOI: 10.1002/jmri.25970

Keywords

deep learning; contrast enhanced MRI; gadolinium deposition; low dose; image quality; machine learning

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BackgroundThere are concerns over gadolinium deposition from gadolinium-based contrast agents (GBCA) administration. PurposeTo reduce gadolinium dose in contrast-enhanced brain MRI using a deep learning method. Study typeRetrospective, crossover. PopulationSixty patients receiving clinically indicated contrast-enhanced brain MRI. Sequence3D T-1-weighted inversion-recovery prepped fast-spoiled-gradient-echo (IR-FSPGR) imaging was acquired at both 1.5T and 3T. In 60 brain MRI exams, the IR-FSPGR sequence was obtained under three conditions: precontrast, postcontrast images with 10% low-dose (0.01mmol/kg) and 100% full-dose (0.1 mmol/kg) of gadobenate dimeglumine. We trained a deep learning model using the first 10 cases (with mixed indications) to approximate full-dose images from the precontrast and low-dose images. Synthesized full-dose images were created using the trained model in two test sets: 20 patients with mixed indications and 30 patients with glioma. AssessmentFor both test sets, low-dose, true full-dose, and the synthesized full-dose postcontrast image sets were compared quantitatively using peak-signal-to-noise-ratios (PSNR) and structural-similarity-index (SSIM). For the test set comprised of 20 patients with mixed indications, two neuroradiologists scored blindly and independently for the three postcontrast image sets, evaluating image quality, motion-artifact suppression, and contrast enhancement compared with precontrast images. Statistical AnalysisResults were assessed using paired t-tests and noninferiority tests. ResultsThe proposed deep learning method yielded significant (n=50, P<0.001) improvements over the low-dose images (>5 dB PSNR gains and >11.0% SSIM). Ratings on image quality (n=20, P=0.003) and contrast enhancement (n=20, P<0.001) were significantly increased. Compared to true full-dose images, the synthesized full-dose images have a slight but not significant reduction in image quality (n=20, P=0.083) and contrast enhancement (n=20, P=0.068). Slightly better (n=20, P=0.039) motion-artifact suppression was noted in the synthesized images. The noninferiority test rejects the inferiority of the synthesized to true full-dose images for image quality (95% CI: -14-9%), artifacts suppression (95% CI: -5-20%), and contrast enhancement (95% CI: -13-6%). Data ConclusionWith the proposed deep learning method, gadolinium dose can be reduced 10-fold while preserving contrast information and avoiding significant image quality degradation. Level of Evidence: 3 Technical Efficacy: Stage 5 J. MAGN. RESON. IMAGING 2018;48:330-340.

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