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Understanding Body MRI Sequences and Their Ability to Characterize Tissues

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Figure

Table 1.  Summary of Imaging Characteristics Based on Tissue Type
Figure 1.  Standard abdominal MRI protocol including sequences with high sensitivity for free and bound water, microscopic and macroscopic fat, paramagnetic substances, fibrosis, and solid tissue
Figure 3.  Out of phase (A) and in phase (B) gradient echo sequences demonstrating punctate foci of susceptibility artifact (blooming) within the spleen in a patient with splenomegaly and cirrhosis
Figure 5A.  Pre-gadonlium fat saturated 3D gradient echo sequence demonstrating an exophytic left renal mass
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