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 < 3 and 56 GG ≥ 3. Features were generated locally from an apparent diffusion coefficient and selected, using the LASS...
Purpose To develop and validate a classifier system for prediction of prostate cancer (PCa) Gle...
PurposeThis bi-institutional study aimed to establish a robust model for predicting clinically signi...
Purpose: Use of quantitative imaging features and encoding the intra-tumoral heterogeneity from mult...
The risk of misclassifying clinically significant prostate cancer (csPCa) by multiparametric magneti...
The risk of misclassifying clinically significant prostate cancer (csPCa) by multiparametric magneti...
The Prostate Imaging and Reporting Data System (PI-RADS) has a key role in the management of prostat...
The Prostate Imaging and Reporting Data System (PI-RADS) has a key role in the management of prostat...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Purpose To develop and validate a classifier system for prediction of prostate cancer (PCa) Gle...
PurposeThis bi-institutional study aimed to establish a robust model for predicting clinically signi...
Purpose: Use of quantitative imaging features and encoding the intra-tumoral heterogeneity from mult...
The risk of misclassifying clinically significant prostate cancer (csPCa) by multiparametric magneti...
The risk of misclassifying clinically significant prostate cancer (csPCa) by multiparametric magneti...
The Prostate Imaging and Reporting Data System (PI-RADS) has a key role in the management of prostat...
The Prostate Imaging and Reporting Data System (PI-RADS) has a key role in the management of prostat...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Background: Texture features based on the spatial relationship of pixels, known as the gray-level co...
Purpose To develop and validate a classifier system for prediction of prostate cancer (PCa) Gle...
PurposeThis bi-institutional study aimed to establish a robust model for predicting clinically signi...
Purpose: Use of quantitative imaging features and encoding the intra-tumoral heterogeneity from mult...