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Graphical Abstract
Abstract
BACKGROUND AND PURPOSE: Perfusion and perfusion-related parameter maps obtained by using DSC MRI and dynamic contrast-enhanced (DCE) MRI are both useful for clinical diagnosis and research. However, using both DSC and DCE MRI in the same scan session requires 2 doses of gadolinium contrast agent. The objective was to develop deep learning–based methods to synthesize DSC-derived parameter maps from DCE MRI data.
MATERIALS AND METHODS: Independent analysis of data collected in previous studies was performed. The database contained 64 participants, including patients with and without brain tumors. The reference parameter maps were measured from DSC MRI performed after DCE MRI. A conditional generative adversarial network (cGAN) was designed and trained to generate synthetic DSC-derived maps from DCE MRI data. The median parameter values and distributions between synthetic and real maps were compared by using linear regression and Bland-Altman plots.
RESULTS: Using cGAN, realistic DSC parameter maps could be synthesized from DCE MRI data. For controls without brain tumors, the synthesized parameters had distributions similar to the ground truth values. For patients with brain tumors, the synthesized parameters in the tumor region correlated linearly with the ground truth values. In addition, areas not visible due to susceptibility artifacts in real DSC maps could be visualized by using DCE-derived DSC maps.
CONCLUSIONS: DSC-derived parameter maps could be synthesized by using DCE MRI data, including susceptibility-artifact-prone regions. This shows the potential to obtain both DSC and DCE parameter maps from DCE MRI by using a single dose of contrast agent.
ABBREVIATIONS:
- cGAN
- conditional generative adversarial network
- DCE
- dynamic contrast-enhanced
- GAN
- generative adversarial network
- MTT
- mean transit time
- QIN
- Quantitative Imaging Network
- rCBV
- relative CBV
- rCBF
- relative CBF
- s-rCBF
- synthetic relative CBF
- s-rCBV
- synthetic relative CBV
- s-MTT
- synthetic mean transit time
- Vp
- plasma volume
- © 2025 by American Journal of Neuroradiology
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