Purpose: Tensor-valued diffusion encoding provides more specific information than conventional diffusion-weighted imaging (DWI), but has mainly been applied in neuroimaging studies. This study aimed to assess its potential for the imaging of prostate cancer (PCa).
Methods: Seventeen patients with histologically proven PCa were enrolled. DWI of the prostate was performed with linear and spherical tensor encoding using a maximal b-value of 1.5 ms/µm and a voxel size of 3 × 3 × 4 mm . The gamma-distribution model was used to estimate the mean diffusivity (MD), the isotropic kurtosis (MK ), and the anisotropic kurtosis (MK ). Regions of interest were placed in MR-defined cancerous tissues, as well as in apparently healthy tissues in the peripheral and transitional zones (PZs and TZs).
Results: DWI with linear and spherical encoding yielded different image contrasts at high b-values, which enabled the estimation of MK and MK . Compared with healthy tissue (PZs and TZs combined) the cancers displayed a significantly lower MD (P < .05), higher MK (P < 10 ), and lower MK (P < .05). Compared with the TZ, tissue in the PZ showed lower MD (P < 10 ) and higher MK (P < 10 ). No significant differences were found between cancers of different Gleason scores, possibly because of the limited sample size.
Conclusion: Tensor-valued diffusion encoding enabled mapping of MK and MK in the prostate. The elevated MK in PCa compared with normal tissues suggests an elevated heterogeneity in the cancers. Increased in-plane resolution could improve tumor delineation in future studies.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9272946 | PMC |
http://dx.doi.org/10.1002/mrm.28856 | DOI Listing |
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