Highlights

 

  • Create spatially registered, mosaicked multiparametric (T1, T2, Dynamic Contrast Enhanced, Diffusion) MRI of prostate cancer patients.
  • Identify and generate seven component prostate tumor and Gleason score signatures or image-based biomarkers.
  • Insert transformed (“whitening-dewhitening”) and untransformed signatures into supervised target detection algorithms and create target detection maps.
  • Apply, describe, and test a novel application of supervised target detection algorithms to spatially registered multiparametric MR images in order to non-invasively detect, locate, and score prostate cancer at the voxel level (6 mm3).
  • The Gleason scoring and volume measurements were quantitatively validated by comparing the results from 10 patients to the pathologist’s assessment of the histology and performed well (p<0.02).
  • Assigning red, green, and blue colors to the registered hypercubes effectively highlight tumors relative to normal prostate.
  • This technique may assist those interpreting prostate cancer MRI and help manage patients.

Advanced Algorithm and Image-Based Biomarkers for Cancer Detection, Scoring and Tumor Volume Measurements and Color Display