2023
DOI: 10.1002/nbm.5075
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Dynamic parametric MRI and deep learning: Unveiling renal pathophysiology through accurate kidney size quantification

Tobias Klein,
Thomas Gladytz,
Jason M. Millward
et al.

Abstract: Renal pathologies often manifest as alterations in kidney size, providing a valuable avenue for employing dynamic parametric MRI as a means to derive kidney size measurements for the diagnosis, treatment, and monitoring of renal disease. Furthermore, this approach holds significant potential in supporting MRI data‐driven preclinical investigations into the intricate mechanisms underlying renal pathophysiology. The integration of deep learning algorithms is crucial in achieving rapid and precise segmentation of… Show more

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