Purpose: To evaluate the diagnostic sensitivity of computed diffusion-weighted (DW)-MR imaging for the detection of breast cancer. Materials and Methods: Local research ethics approval was obtained. A total of 61 women (median 48 years) underwent dynamic contrast enhanced (DCE)- and DW-MR between January 2011 and March 2012, including 27 with breast cancer on core biopsy and 34 normal cases. Standard ADC maps using all four b values (0, 350, 700, 1150) were used to generate computed DW-MR images at b = 1500 s/mm2 and b = 2000 s/mm2. Four image sets were read sequentially by two readers: acquired b = 1150 s/mm2, computed b = 1500 s/mm2 and b = 2000 s/mm2, and DCE-MR at an early time point. Cancer detection was rated using a five-point scale; image quality and background suppression were rated using a four-point scale. The diagnostic sensitivity for breast cancer detection was compared using the McNemar test and inter-reader agreement with a Kappa value. Results: Computed DW-MR resulted in higher overall diagnostic sensitivity with b = 2000 s/mm2 having a mean diagnostic sensitivity of 76% (range 49.8-93.7%) and b = 1500 s/mm2 having a mean diagnostic sensitivity of 70.3% (range 32-97.7%) compared with 44.4% (range 25.5-64.7%) for acquired b = 1150 s/mm2 (both p = 0.0001). Computed DW-MR images produced better image quality and background suppression (mean scores for both readers: 2.55 and 2.9 for b 1500 s/mm2; 2.55 and 3.15 for b 2000 s/mm2, respectively) than the acquired b value 1150 s/mm2 images (mean scores for both readers: 2.4 and 2.45, respectively). Conclusion: Computed DW-MR imaging has the potential to improve the diagnostic sensitivity of breast cancer detection compared to acquired DW-MR. J. Magn. Reson. Imaging 2016;44:130–137.
CITATION STYLE
O’Flynn, E. A. M., Blackledge, M., Collins, D., Downey, K., Doran, S., Patel, H., … Koh, D. M. (2016). Evaluating the diagnostic sensitivity of computed diffusion-weighted MR imaging in the detection of breast cancer. Journal of Magnetic Resonance Imaging, 44(1), 130–137. https://doi.org/10.1002/jmri.25131
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