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  • Article
  • Open Access
303 Views
20 Pages

19 January 2026

Prostate cancer is one of the most lethal cancers in the male population, and accurate localization of intraprostatic lesions on MRI remains challenging. In this study, we investigated methods for improving prostate cancer segmentation on T2-weighted...

  • Brief Report
  • Open Access
12 Citations
4,265 Views
12 Pages

Prostate Ultrasound Image Segmentation Based on DSU-Net

  • Xinyu Wang,
  • Zhengqi Chang,
  • Qingfang Zhang,
  • Cheng Li,
  • Fei Miao and
  • Gang Gao

In recent years, the incidence of prostate cancer in the male population has been increasing year by year. Transrectal ultrasound (TRUS) is an important means of prostate cancer diagnosis. The accurate segmentation of the prostate in TRUS images can...

  • Article
  • Open Access
30 Citations
5,274 Views
21 Pages

A Comparative Study of Automated Deep Learning Segmentation Models for Prostate MRI

  • Nuno M. Rodrigues,
  • Sara Silva,
  • Leonardo Vanneschi and
  • Nickolas Papanikolaou

25 February 2023

Prostate cancer is one of the most common forms of cancer globally, affecting roughly one in every eight men according to the American Cancer Society. Although the survival rate for prostate cancer is significantly high given the very high incidence...

  • Article
  • Open Access
26 Citations
6,409 Views
16 Pages

A Quality Control System for Automated Prostate Segmentation on T2-Weighted MRI

  • Mohammed R. S. Sunoqrot,
  • Kirsten M. Selnæs,
  • Elise Sandsmark,
  • Gabriel A. Nketiah,
  • Olmo Zavala-Romero,
  • Radka Stoyanova,
  • Tone F. Bathen and
  • Mattijs Elschot

18 September 2020

Computer-aided detection and diagnosis (CAD) systems have the potential to improve robustness and efficiency compared to traditional radiological reading of magnetic resonance imaging (MRI). Fully automated segmentation of the prostate is a crucial s...

  • Article
  • Open Access
34 Citations
6,467 Views
19 Pages

U-Net Architecture for Prostate Segmentation: The Impact of Loss Function on System Performance

  • Maryam Montazerolghaem,
  • Yu Sun,
  • Giuseppe Sasso and
  • Annette Haworth

Segmentation of the prostate gland from magnetic resonance images is rapidly becoming a standard of care in prostate cancer radiotherapy treatment planning. Automating this process has the potential to improve accuracy and efficiency. However, the pe...

  • Article
  • Open Access
14 Citations
4,440 Views
20 Pages

CDA-Net for Automatic Prostate Segmentation in MR Images

  • Zhiying Lu,
  • Mingyue Zhao and
  • Yong Pang

24 September 2020

Automatic and accurate prostate segmentation is an essential prerequisite for assisting diagnosis and treatment, such as guiding biopsy procedures and radiation therapy. Therefore, this paper proposes a cascaded dual attention network (CDA-Net) for a...

  • Article
  • Open Access
8 Citations
2,657 Views
11 Pages

Inter-Rater Variability of Prostate Lesion Segmentation on Multiparametric Prostate MRI

  • Thibaut Jeganathan,
  • Emile Salgues,
  • Ulrike Schick,
  • Valentin Tissot,
  • Georges Fournier,
  • Antoine Valéri,
  • Truong-An Nguyen and
  • Vincent Bourbonne

14 December 2023

Introduction: External radiotherapy is a major treatment for localized prostate cancer (PCa). Dose escalation to the whole prostate gland increases biochemical relapse-free survival but also acute and late toxicities. Dose escalation to the dominant...

  • Article
  • Open Access
7 Citations
3,187 Views
13 Pages

Interobserver Agreement in Automatic Segmentation Annotation of Prostate Magnetic Resonance Imaging

  • Liang Jin,
  • Zhuangxuan Ma,
  • Haiqing Li,
  • Feng Gao,
  • Pan Gao,
  • Nan Yang,
  • Dechun Li,
  • Ming Li and
  • Daoying Geng

We aimed to compare the performance and interobserver agreement of radiologists manually segmenting images or those assisted by automatic segmentation. We further aimed to reduce interobserver variability and improve the consistency of radiomics feat...

  • Article
  • Open Access
9 Citations
3,981 Views
17 Pages

Robust Resolution-Enhanced Prostate Segmentation in Magnetic Resonance and Ultrasound Images through Convolutional Neural Networks

  • Oscar J. Pellicer-Valero,
  • Victor Gonzalez-Perez,
  • Juan Luis Casanova Ramón-Borja,
  • Isabel Martín García,
  • María Barrios Benito,
  • Paula Pelechano Gómez,
  • José Rubio-Briones,
  • María José Rupérez and
  • José D. Martín-Guerrero

18 January 2021

Prostate segmentations are required for an ever-increasing number of medical applications, such as image-based lesion detection, fusion-guided biopsy and focal therapies. However, obtaining accurate segmentations is laborious, requires expertise and,...

  • Article
  • Open Access
17 Citations
4,801 Views
17 Pages

Integration of Deep Learning and Active Shape Models for More Accurate Prostate Segmentation in 3D MR Images

  • Massimo Salvi,
  • Bruno De Santi,
  • Bianca Pop,
  • Martino Bosco,
  • Valentina Giannini,
  • Daniele Regge,
  • Filippo Molinari and
  • Kristen M. Meiburger

Magnetic resonance imaging (MRI) has a growing role in the clinical workup of prostate cancer. However, manual three-dimensional (3D) segmentation of the prostate is a laborious and time-consuming task. In this scenario, the use of automated algorith...

  • Article
  • Open Access
2 Citations
2,387 Views
17 Pages

Comparing AI and Manual Segmentation of Prostate MRI: Towards AI-Driven 3D-Model-Guided Prostatectomy

  • Thierry N. Boellaard,
  • Roy van Erck,
  • Sophia H. van der Graaf,
  • Lisanne de Boer,
  • Henk G. van der Poel,
  • Laura S. Mertens,
  • Pim J. van Leeuwen and
  • Behdad Dashtbozorg

Background: Robot-assisted radical prostatectomy (RARP) is a common treatment option for prostate cancer. A 3D model for surgical guidance can improve surgical outcomes. Manual expert radiologist segmentation of the prostate and tumor in prostate MRI...

  • Article
  • Open Access
4 Citations
2,258 Views
12 Pages

Semantic Segmentation of the Prostate Based on Onefold and Joint Multimodal Medical Images Using YOLOv4 and U-Net

  • Estera Kot,
  • Tomasz Les,
  • Zuzanna Krawczyk-Borysiak,
  • Andrey Vykhodtsev and
  • Krzysztof Siwek

27 October 2024

Magnetic Resonance Imaging is increasing in importance in prostate cancer diagnosis due to the high accuracy and quality of the examination procedure. However, this process requires a time-consuming analysis of the results. Currently, machine vision...

  • Article
  • Open Access
4 Citations
4,518 Views
16 Pages

A Comparative Analysis of U-Net and Vision Transformer Architectures in Semi-Supervised Prostate Zonal Segmentation

  • Guantian Huang,
  • Bixuan Xia,
  • Haoming Zhuang,
  • Bohan Yan,
  • Cheng Wei,
  • Shouliang Qi,
  • Wei Qian and
  • Dianning He

The precise segmentation of different regions of the prostate is crucial in the diagnosis and treatment of prostate-related diseases. However, the scarcity of labeled prostate data poses a challenge for the accurate segmentation of its different regi...

  • Feature Paper
  • Article
  • Open Access
76 Citations
8,338 Views
13 Pages

Deep Learning-Based Methods for Prostate Segmentation in Magnetic Resonance Imaging

  • Albert Comelli,
  • Navdeep Dahiya,
  • Alessandro Stefano,
  • Federica Vernuccio,
  • Marzia Portoghese,
  • Giuseppe Cutaia,
  • Alberto Bruno,
  • Giuseppe Salvaggio and
  • Anthony Yezzi

15 January 2021

Magnetic Resonance Imaging-based prostate segmentation is an essential task for adaptive radiotherapy and for radiomics studies whose purpose is to identify associations between imaging features and patient outcomes. Because manual delineation is a t...

  • Article
  • Open Access
6 Citations
4,477 Views
22 Pages

4 September 2020

Medical support systems used to assist in the diagnosis of prostate lesions generally related to prostate segmentation is one of the majors focus of interest in recent literature. The main problem encountered in the diagnosis of a prostate study is t...

  • Article
  • Open Access
3 Citations
2,183 Views
17 Pages

The accurate segmentation of prostate cancer (PCa) from multiparametric MRI is crucial in clinical practice for guiding biopsy and treatment planning. Existing automated methods often lack the necessary accuracy and robustness in localizing PCa, wher...

  • Article
  • Open Access
13 Citations
6,269 Views
15 Pages

Investigating the Performance of Generative Adversarial Networks for Prostate Tissue Detection and Segmentation

  • Ufuk Cem Birbiri,
  • Azam Hamidinekoo,
  • Amélie Grall,
  • Paul Malcolm and
  • Reyer Zwiggelaar

The manual delineation of region of interest (RoI) in 3D magnetic resonance imaging (MRI) of the prostate is time-consuming and subjective. Correct identification of prostate tissue is helpful to define a precise RoI to be used in CAD systems in clin...

  • Article
  • Open Access
22 Citations
3,663 Views
15 Pages

The Reproducibility of Deep Learning-Based Segmentation of the Prostate Gland and Zones on T2-Weighted MR Images

  • Mohammed R. S. Sunoqrot,
  • Kirsten M. Selnæs,
  • Elise Sandsmark,
  • Sverre Langørgen,
  • Helena Bertilsson,
  • Tone F. Bathen and
  • Mattijs Elschot

16 September 2021

Volume of interest segmentation is an essential step in computer-aided detection and diagnosis (CAD) systems. Deep learning (DL)-based methods provide good performance for prostate segmentation, but little is known about the reproducibility of these...

  • Review
  • Open Access
326 Views
13 Pages

AI in High-Frequency Micro-Ultrasound: Advancing Prostate Imaging from Segmentation to Cancer Detection

  • Ludovica Cella,
  • Marco Paciotti,
  • Pier Paolo Avolio,
  • Vittorio Fasulo,
  • Andrea Piccolini,
  • Rebecca Canneto,
  • Giacomo Cavadini,
  • Luca Di Stefano,
  • Alberto Saita and
  • Giovanni Lughezzani
  • + 3 authors

18 February 2026

Background/Objective: High-frequency micro-ultrasound (micro-US) offers real-time, high-resolution imaging for prostate cancer. Although artificial intelligence (AI) has shown potential in enhancing micro-US interpretation, a comprehensive review of...

  • Article
  • Open Access
4 Citations
3,067 Views
12 Pages

Masked Image Modeling Meets Self-Distillation: A Transformer-Based Prostate Gland Segmentation Framework for Pathology Slides

  • Haoyue Zhang,
  • Sushant Patkar,
  • Rosina Lis,
  • Maria J. Merino,
  • Peter A. Pinto,
  • Peter L. Choyke,
  • Baris Turkbey and
  • Stephanie Harmon

21 November 2024

Detailed evaluation of prostate cancer glands is an essential yet labor-intensive step in grading prostate cancer. Gland segmentation can serve as a valuable preliminary step for machine-learning-based downstream tasks, such as Gleason grading, patie...

  • Article
  • Open Access
2 Citations
3,172 Views
16 Pages

Auto-Segmentation and Auto-Planning in Automated Radiotherapy for Prostate Cancer

  • Sijuan Huang,
  • Jingheng Wu,
  • Xi Lin,
  • Guangyu Wang,
  • Ting Song,
  • Li Chen,
  • Lecheng Jia,
  • Qian Cao,
  • Ruiqi Liu and
  • Liru He
  • + 3 authors

Objective: The objective of this study was to develop and assess the clinical feasibility of auto-segmentation and auto-planning methodologies for automated radiotherapy in prostate cancer. Methods: A total of 166 patients were used to train a 3D Une...

  • Article
  • Open Access
59 Citations
9,996 Views
28 Pages

Automated Prostate Gland Segmentation Based on an Unsupervised Fuzzy C-Means Clustering Technique Using Multispectral T1w and T2w MR Imaging

  • Leonardo Rundo,
  • Carmelo Militello,
  • Giorgio Russo,
  • Antonio Garufi,
  • Salvatore Vitabile,
  • Maria Carla Gilardi and
  • Giancarlo Mauri

28 April 2017

Prostate imaging analysis is difficult in diagnosis, therapy, and staging of prostate cancer. In clinical practice, Magnetic Resonance Imaging (MRI) is increasingly used thanks to its morphologic and functional capabilities. However, manual detection...

  • Article
  • Open Access
3 Citations
2,876 Views
26 Pages

Neural Network Models for Prostate Zones Segmentation in Magnetic Resonance Imaging

  • Saman Fouladi,
  • Luca Di Palma,
  • Fatemeh Darvizeh,
  • Deborah Fazzini,
  • Alessandro Maiocchi,
  • Sergio Papa,
  • Gabriele Gianini and
  • Marco Alì

28 February 2025

Prostate cancer (PCa) is one of the most common tumors diagnosed in men worldwide, with approximately 1.7 million new cases expected by 2030. Most cancerous lesions in PCa are located in the peripheral zone (PZ); therefore, accurate identification of...

  • Article
  • Open Access
2 Citations
2,859 Views
18 Pages

16 February 2025

Prostate cancer, a prevalent malignancy affecting males globally, underscores the critical need for precise prostate segmentation in diagnostic imaging. However, accurate delineation via MRI still faces several challenges: (1) The distinction of the...

  • Feature Paper
  • Article
  • Open Access
13 Citations
7,519 Views
20 Pages

Optimisation of 2D U-Net Model Components for Automatic Prostate Segmentation on MRI

  • Indriani P. Astono,
  • James S. Welsh,
  • Stephan Chalup and
  • Peter Greer

9 April 2020

In this paper, we develop an optimised state-of-the-art 2D U-Net model by studying the effects of the individual deep learning model components in performing prostate segmentation. We found that for upsampling, the combination of interpolation and co...

  • Article
  • Open Access
2,128 Views
12 Pages

Deep Learning-Based Tumor Segmentation of Murine Magnetic Resonance Images of Prostate Cancer Patient-Derived Xenografts

  • Satvik Nayak,
  • Henry Salkever,
  • Ernesto Diaz,
  • Avantika Sinha,
  • Nikhil Deveshwar,
  • Madeline Hess,
  • Matthew Gibbons,
  • Sule Sahin,
  • Abhejit Rajagopal and
  • Renuka Sriram
  • + 1 author

22 February 2025

Background/Objective: Longitudinal in vivo studies of murine xenograft models are widely utilized in oncology to study cancer biology and develop therapies. Magnetic resonance imaging (MRI) of these tumors is an invaluable tool for monitoring tumor g...

  • Article
  • Open Access
19 Citations
5,149 Views
16 Pages

Region Segmentation of Whole-Slide Images for Analyzing Histological Differentiation of Prostate Adenocarcinoma Using Ensemble EfficientNetB2 U-Net with Transfer Learning Mechanism

  • Kobiljon Ikromjanov,
  • Subrata Bhattacharjee,
  • Rashadul Islam Sumon,
  • Yeong-Byn Hwang,
  • Hafizur Rahman,
  • Myung-Jae Lee,
  • Hee-Cheol Kim,
  • Eunhyang Park,
  • Nam-Hoon Cho and
  • Heung-Kook Choi

26 January 2023

Recent advances in computer-aided detection via deep learning (DL) now allow for prostate cancer to be detected automatically and recognized with extremely high accuracy, much like other medical diagnoses and prognoses. However, researchers are still...

  • Article
  • Open Access
3 Citations
2,710 Views
15 Pages

21 November 2023

U-Net, based on a deep convolutional network (CNN), has been clinically used to auto-segment normal organs, while still being limited to the planning target volume (PTV) segmentation. This work aims to address the problems in two aspects: 1) apply on...

  • Article
  • Open Access
11 Citations
2,580 Views
15 Pages

Machine Learning CT-Based Automatic Nodal Segmentation and PET Semi-Quantification of Intraoperative 68Ga-PSMA-11 PET/CT Images in High-Risk Prostate Cancer: A Pilot Study

  • Guido Rovera,
  • Serena Grimaldi,
  • Marco Oderda,
  • Monica Finessi,
  • Valentina Giannini,
  • Roberto Passera,
  • Paolo Gontero and
  • Désirée Deandreis

21 September 2023

High-resolution intraoperative PET/CT specimen imaging, coupled with prostate-specific membrane antigen (PSMA) molecular targeting, holds great potential for the rapid ex vivo identification of disease localizations in high-risk prostate cancer patie...

  • Article
  • Open Access
3 Citations
2,391 Views
17 Pages

Tumor Segmentation on PSMA PET/CT Predicts Survival in Biochemical Recurrence of Prostate Cancer: A Retrospective Study Using [68Ga]Ga-PSMA-11 and [18F]-PSMA-1007

  • Ken Kudura,
  • Yves Schaulin,
  • Arnoud J. Templeton,
  • Tobias Zellweger,
  • Wolfgang Harms,
  • Raphael Georis,
  • Michael C. Kreissl and
  • Robert Foerster

4 July 2025

Background: PSMA PET/CT imaging has become a cornerstone in the management of prostate cancer, particularly in the setting of biochemical recurrence (BCR). While semi-quantitative parameters such as SUVmean have been evaluated as prognostic biomarker...

  • Article
  • Open Access
3 Citations
2,653 Views
33 Pages

Autonomous Prostate Segmentation in 2D B-Mode Ultrasound Images

  • Jay Carriere,
  • Ron Sloboda,
  • Nawaid Usmani and
  • Mahdi Tavakoli

15 March 2022

Prostate brachytherapy is a treatment for prostate cancer; during the planning of the procedure, ultrasound images of the prostate are taken. The prostate must be segmented out in each of the ultrasound images, and to assist with the procedure, an au...

  • Article
  • Open Access
2 Citations
923 Views
19 Pages

Enhanced Deep Neural Network for Prostate Segmentation in Micro-Ultrasound Images

  • Ahmed AL-Qurri,
  • Asem Thaher and
  • Mohamed Khaled Almekkawy

7 November 2025

Prostate cancer is a global health concern, and early diagnosis plays a vital role in improving the survival rate. Accurate segmentation is a key step in the automated diagnosis of prostate cancer; however, manual segmentation remains time-consuming...

  • Article
  • Open Access
68 Citations
8,855 Views
17 Pages

Evaluation of Deep Neural Networks for Semantic Segmentation of Prostate in T2W MRI

  • Zia Khan,
  • Norashikin Yahya,
  • Khaled Alsaih,
  • Syed Saad Azhar Ali and
  • Fabrice Meriaudeau

3 June 2020

In this paper, we present an evaluation of four encoder–decoder CNNs in the segmentation of the prostate gland in T2W magnetic resonance imaging (MRI) image. The four selected CNNs are FCN, SegNet, U-Net, and DeepLabV3+, which was originally pr...

  • Article
  • Open Access
12 Citations
4,589 Views
12 Pages

31 May 2020

Accurate segmentation for transrectal ultrasound imaging (TRUS) is often a challenging medical image processing task. The problem of weak boundary between adjacent prostate tissue and non-prostate tissue, and high similarity between artifact area and...

  • Article
  • Open Access
1 Citations
1,357 Views
27 Pages

25 October 2024

Over the past decade, the development of computer-aided detection tools for medical image analysis has seen significant advancements. However, tasks such as the automatic differentiation of tissues or regions in medical images remain challenging. Mag...

  • Review
  • Open Access
3 Citations
2,545 Views
16 Pages

Advances in Deep Learning Methods for Prostate Segmentation and Volume Estimation in Ultrasound Imaging

  • Liza M. Kurucz,
  • Tiziano Natali,
  • Matteo Fusaglia and
  • Behdad Dashtbozorg

26 July 2024

Accurate prostate volume estimation is crucial for effective prostate disease management. Ultrasound (US) imaging, particularly transrectal ultrasound, offers a cost-effective and rapid assessment. However, US images often suffer from artifacts and p...

  • Article
  • Open Access
4 Citations
2,797 Views
22 Pages

Stability of Multi-Parametric Prostate MRI Radiomic Features to Variations in Segmentation

  • Sithin Thulasi Seetha,
  • Enrico Garanzini,
  • Chiara Tenconi,
  • Cristina Marenghi,
  • Barbara Avuzzi,
  • Mario Catanzaro,
  • Silvia Stagni,
  • Sergio Villa,
  • Barbara Noris Chiorda and
  • Antonella Messina
  • + 8 authors

22 July 2023

Stability analysis remains a fundamental step in developing a successful imaging biomarker to personalize oncological strategies. This study proposes an in silico contour generation method for simulating segmentation variations to identify stable rad...

  • Article
  • Open Access
13 Citations
3,193 Views
18 Pages

A Critical Analysis of the Robustness of Radiomics to Variations in Segmentation Methods in 18F-PSMA-1007 PET Images of Patients Affected by Prostate Cancer

  • Giovanni Pasini,
  • Giorgio Russo,
  • Cristina Mantarro,
  • Fabiano Bini,
  • Selene Richiusa,
  • Lucrezia Morgante,
  • Albert Comelli,
  • Giorgio Ivan Russo,
  • Maria Gabriella Sabini and
  • Alessandro Stefano
  • + 3 authors

11 December 2023

Background: Radiomics shows promising results in supporting the clinical decision process, and much effort has been put into its standardization, thus leading to the Imaging Biomarker Standardization Initiative (IBSI), that established how radiomics...

  • Article
  • Open Access
1 Citations
1,930 Views
16 Pages

Comparison of Vendor-Pretrained and Custom-Trained Deep Learning Segmentation Models for Head-and-Neck, Breast, and Prostate Cancers

  • Xinru Chen,
  • Yao Zhao,
  • Hana Baroudi,
  • Mohammad D. El Basha,
  • Aji Daniel,
  • Skylar S. Gay,
  • Cenji Yu,
  • He Wang,
  • Jack Phan and
  • Jinzhong Yang
  • + 9 authors

18 December 2024

Background/Objectives: We assessed the influence of local patients and clinical characteristics on the performance of commercial deep learning (DL) segmentation models for head-and-neck (HN), breast, and prostate cancers. Methods: Clinical computed t...

  • Article
  • Open Access
13 Citations
3,537 Views
12 Pages

Multistage Segmentation of Prostate Cancer Tissues Using Sample Entropy Texture Analysis

  • Tariq Ali,
  • Khalid Masood,
  • Muhammad Irfan,
  • Umar Draz,
  • Arfan Ali Nagra,
  • Muhammad Asif,
  • Bandar M. Alshehri,
  • Adam Glowacz,
  • Ryszard Tadeusiewicz and
  • Sana Yasin
  • + 1 author

4 December 2020

In this study, a multistage segmentation technique is proposed that identifies cancerous cells in prostate tissue samples. The benign areas of the tissue are distinguished from the cancerous regions using the texture of glands. The texture is modeled...

  • Article
  • Open Access
571 Views
17 Pages

4 December 2025

Background: Precise delineation of the rectum is crucial in treatment planning for cancers in the pelvic region, such as prostate and cervical cancers. Manual segmentation is also still time-consuming and suffers from inter-observer variability. Sinc...

  • Article
  • Open Access
22 Citations
6,432 Views
21 Pages

AutoProstate: Towards Automated Reporting of Prostate MRI for Prostate Cancer Assessment Using Deep Learning

  • Pritesh Mehta,
  • Michela Antonelli,
  • Saurabh Singh,
  • Natalia Grondecka,
  • Edward W. Johnston,
  • Hashim U. Ahmed,
  • Mark Emberton,
  • Shonit Punwani and
  • Sébastien Ourselin

6 December 2021

Multiparametric magnetic resonance imaging (mpMRI) of the prostate is used by radiologists to identify, score, and stage abnormalities that may correspond to clinically significant prostate cancer (CSPCa). Automatic assessment of prostate mpMRI using...

  • Article
  • Open Access
2,127 Views
16 Pages

PRONOBIS: A Robotic System for Automated Ultrasound-Based Prostate Reconstruction and Biopsy Planning

  • Matija Markulin,
  • Luka Matijević,
  • Janko Jurdana,
  • Luka Šiktar,
  • Branimir Ćaran,
  • Toni Zekulić,
  • Filip Šuligoj,
  • Bojan Šekoranja,
  • Tvrtko Hudolin and
  • Marko Švaco
  • + 2 authors

22 July 2025

This paper presents the PRONOBIS project, an ultrasound-only, robotically assisted, deep learning-based system for prostate scanning and biopsy treatment planning. The proposed system addresses the challenges of precise prostate segmentation, reconst...

  • Article
  • Open Access
9 Citations
3,189 Views
11 Pages

1 August 2023

Background: We investigated the feasibility of a deep learning algorithm (DLA) based on apparent diffusion coefficient (ADC) maps for the segmentation and discrimination of clinically significant cancer (CSC, Gleason score ≥ 7) from non-CSC in pat...

  • Article
  • Open Access
6 Citations
4,546 Views
20 Pages

A Fusion Biopsy Framework for Prostate Cancer Based on Deformable Superellipses and nnU-Net

  • Nicola Altini,
  • Antonio Brunetti,
  • Valeria Pia Napoletano,
  • Francesca Girardi,
  • Emanuela Allegretti,
  • Sardar Mehboob Hussain,
  • Gioacchino Brunetti,
  • Vito Triggiani,
  • Vitoantonio Bevilacqua and
  • Domenico Buongiorno

In prostate cancer, fusion biopsy, which couples magnetic resonance imaging (MRI) with transrectal ultrasound (TRUS), poses the basis for targeted biopsy by allowing the comparison of information coming from both imaging modalities at the same time....

  • Article
  • Open Access
63 Citations
8,437 Views
11 Pages

A Deep Learning-Based Automated CT Segmentation of Prostate Cancer Anatomy for Radiation Therapy Planning-A Retrospective Multicenter Study

  • Timo Kiljunen,
  • Saad Akram,
  • Jarkko Niemelä,
  • Eliisa Löyttyniemi,
  • Jan Seppälä,
  • Janne Heikkilä,
  • Kristiina Vuolukka,
  • Okko-Sakari Kääriäinen,
  • Vesa-Pekka Heikkilä and
  • Jani Keyriläinen
  • + 16 authors

17 November 2020

A commercial deep learning (DL)-based automated segmentation tool (AST) for computed tomography (CT) is evaluated for accuracy and efficiency gain within prostate cancer patients. Thirty patients from six clinics were reviewed with manual- (MC), auto...

  • Article
  • Open Access
22 Citations
5,655 Views
15 Pages

Cross-Domain Data Augmentation for Deep-Learning-Based Male Pelvic Organ Segmentation in Cone Beam CT

  • Jean Léger,
  • Eliott Brion,
  • Paul Desbordes,
  • Christophe De Vleeschouwer,
  • John A. Lee and
  • Benoit Macq

8 February 2020

For prostate cancer patients, large organ deformations occurring between radiotherapy treatment sessions create uncertainty about the doses delivered to the tumor and surrounding healthy organs. Segmenting those regions on cone beam CT (CBCT) scans a...

  • Article
  • Open Access
4 Citations
2,661 Views
13 Pages

9 July 2023

The Gleason score (GS) is essential in categorizing prostate cancer risk using biopsy. The aim of this study was to propose a two-class GS classification (< and ≥GS 7) methodology using a three-dimensional convolutional neural network with sema...

  • Systematic Review
  • Open Access
6 Citations
3,117 Views
26 Pages

11 March 2025

As yet, there is no systematic review focusing on benefits and issues of commercial deep learning-based auto-segmentation (DLAS) software for prostate cancer (PCa) radiation therapy (RT) planning despite that NRG Oncology has underscored such necessi...

  • Article
  • Open Access
21 Citations
4,170 Views
13 Pages

Automated Diagnosis of Prostate Cancer Using mpMRI Images: A Deep Learning Approach for Clinical Decision Support

  • Anil B. Gavade,
  • Rajendra Nerli,
  • Neel Kanwal,
  • Priyanka A. Gavade,
  • Shridhar Sunilkumar Pol and
  • Syed Tahir Hussain Rizvi

Prostate cancer (PCa) is a significant health concern for men worldwide, where early detection and effective diagnosis can be crucial for successful treatment. Multiparametric magnetic resonance imaging (mpMRI) has evolved into a significant imaging...

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