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Background: With the rising incidence of prostate cancer (PCa), there is a global demand for assistive tools that aid in the diagnosis of high-grade PCa. This study aimed to develop a diagnostic support system for high-grade PCa using innovative magnetic resonance imaging (MRI) sequences in conjunction with artificial intelligence (AI).
Materials And Methods: We examined image sequences of 254 patients with PCa obtained from diffusion-weighted and T2-weighted imaging, using novel MRI sequences before prostatectomy, to elucidate the characteristics of the 3-dimensional (3D) image sequences. The presence of PCa was determined based on the final diagnosis derived from pathological results after prostatectomy. A 3D deep convolutional neural network (3DCNN) was used as the AI for image recognition. Data augmentation was conducted to enhance the image dataset. High-grade PCa was defined as Gleason grade group 4 or higher.
Results: We developed a learning system using a 3DCNN as a diagnostic support system for high-grade PCa. The sensitivity and area under the curve values were 85% and 0.82, respectively.
Conclusions: The 3DCNN-based AI diagnostic support system, developed in this study using innovative 3D multiparametric MRI sequences, has the potential to assist in identifying patients at a higher risk of pretreatment of high-grade PCa.
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http://dx.doi.org/10.1097/CU9.0000000000000271 | DOI Listing |
Curr Urol
September 2025
Department of Urology, Toho University Sakura Medical Center, Sakura, Japan.
Background: With the rising incidence of prostate cancer (PCa), there is a global demand for assistive tools that aid in the diagnosis of high-grade PCa. This study aimed to develop a diagnostic support system for high-grade PCa using innovative magnetic resonance imaging (MRI) sequences in conjunction with artificial intelligence (AI).
Materials And Methods: We examined image sequences of 254 patients with PCa obtained from diffusion-weighted and T2-weighted imaging, using novel MRI sequences before prostatectomy, to elucidate the characteristics of the 3-dimensional (3D) image sequences.
Histopathology
August 2025
Department of Pathology, Indiana University School of Medicine, Indianapolis, Indiana, USA.
Aims: In radical prostatectomy (RP), Grade Group (GG) 4/5 prostate cancer [high-grade prostate cancer (HGPC) hereafter] is often associated with extension beyond the prostate and positive surgical margins. Hence, there is limited information on post-RP outcomes of patients with completely resected HGPC confined to the prostate (pT2).
Materials And Methods: Clinical outcomes were assessed in a cohort of patients with pT2 HGPC and negative surgical margins using Kaplan-Meier statistics and Cox regression analysis.
Interv Neuroradiol
August 2025
Department of Neurosurgery, Chang Gung Memorial Hospital, Linkou Medical Center, Chang Gung University, Taoyuan City, Taiwan.
Pre-operative stage embolization is a valuable strategy for managing large arteriovenous malformations (AVMs). However, reflux of Onyx may be out of control and cause accidental embolization at the feeding artery's opening. We report a case of 27-year-old male suffering from right occipital AVM bleeding with left hemianopia.
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July 2025
Cancer Epidemiology Unit, Centro di Riferimento Oncologico di Aviano (CRO) IRCCS, 33081 Aviano, Italy.
Background: Prostate cancer (PCa) trends have evolved due to changing screening practices. This study assessed long-term trends in PCa incidence and survival according to Gleason score (GS) in Friuli Venezia Giulia, northeastern Italy.
Methods: A population-based study was conducted, encompassing 21,571 PCa cases from the regional Cancer Registry, diagnosed between 2000 and 2020.
Eur J Med Res
August 2025
Dr. Schneiderhan GmbH and ISAR Klinikum Munich, Munich, Germany.
Objective: This study aims to develop a robust and clinically applicable framework for preoperative grading of meningiomas using T1-contrast-enhanced and T2-weighted MRI images. The approach integrates radiomic feature extraction, attention-guided deep learning models, and reproducibility assessment to achieve high diagnostic accuracy, model interpretability, and clinical reliability.
Materials And Methods: We analyzed MRI scans from 2546 patients with histopathologically confirmed meningiomas (1560 low-grade, 986 high-grade).