Cancers (Dec 2022)

Beyond Multiparametric MRI and towards Radiomics to Detect Prostate Cancer: A Machine Learning Model to Predict Clinically Significant Lesions

  • Caterina Gaudiano,
  • Margherita Mottola,
  • Lorenzo Bianchi,
  • Beniamino Corcioni,
  • Arrigo Cattabriga,
  • Maria Adriana Cocozza,
  • Antonino Palmeri,
  • Francesca Coppola,
  • Francesca Giunchi,
  • Riccardo Schiavina,
  • Michelangelo Fiorentino,
  • Eugenio Brunocilla,
  • Rita Golfieri,
  • Alessandro Bevilacqua

DOI
https://doi.org/10.3390/cancers14246156
Journal volume & issue
Vol. 14, no. 24
p. 6156

Abstract

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The risk of misclassifying clinically significant prostate cancer (csPCa) by multiparametric magnetic resonance imaging is consistent, also using the updated PIRADS score and although different definitions of csPCa, patients with Gleason Grade group (GG) ≥ 3 have a significantly worse prognosis. This study aims to develop a machine learning model predicting csPCa (i.e., any GG ≥ 3 lesion at target biopsy) by mpMRI radiomic features and analyzing similarities between GG groups. One hundred and two patients with 117 PIRADS ≥ 3 lesions at mpMRI underwent target+systematic biopsy, providing histologic diagnosis of PCa, 61 GG p p p = 0.26), whilst clear separations between either GG[1,2] and GG ≥ 3 exist (p −6). On the test set, the area under the curve = 0.88 (95% CI, 0.68–0.94), with positive and negative predictive values being 84%. The features retain a histological interpretation. Our model hints at GG2 being much more similar to GG1 than GG ≥ 3.

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