Test–retest reliability of rapid whole body and compartmental fat volume quantification on a widebore 3T MR system in normal‐weight, overweight, and obese subjects

To measure the test–retest reliability of rapid (<15 min) whole body and visceral fat volume quantification in normal and obese subjects on a widebore 3T MR system and compare it with conventional manual segmentation.

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