Motivation: Arterial spin labeling (ASL), an MRI technique reflecting perfusion without contrast agents, can diagnose chronic kidney disease (CKD) but increases scan imaging cost and scan time. Goal(s): To explore the feasibility of generating virtual ASL from conventional MRI sequences. Approach: A model was developed using the pix2pix algorithm to generate virtual renal ASL sequences from T1 and T2-weighted imaging and diffusion-weighted imaging, and to measure renal blood flow values. Intraclass correlation coefficients, paired t tests, and receiver operating characteristic curves were used for data analysis. Results: Virtual ASL sequences could be generated through deep learning using conventional MRI sequences and could diagnose CKD. Impact: This virtual ASL technique enables non-invasive renal perfusion assessment based on conventional MRI sequences, potentially expanding access to perfusion imaging in CKD diagnosis and monitoring. Future studies can explore its application in treatment response prediction.
Chen et al. (Tue,) studied this question.
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