Literature DB >> 33680505

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

Albert Comelli1,2, Navdeep Dahiya3, Alessandro Stefano2, Federica Vernuccio4, Marzia Portoghese4, Giuseppe Cutaia4, Alberto Bruno4, Giuseppe Salvaggio4, Anthony Yezzi3.   

Abstract

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 time-consuming task, we present three deep-learning (DL) approaches, namely UNet, efficient neural network (ENet), and efficient residual factorized convNet (ERFNet), whose aim is to tackle the fully-automated, real-time, and 3D delineation process of the prostate gland on T2-weighted MRI. While UNet is used in many biomedical image delineation applications, ENet and ERFNet are mainly applied in self-driving cars to compensate for limited hardware availability while still achieving accurate segmentation. We apply these models to a limited set of 85 manual prostate segmentations using the k-fold validation strategy and the Tversky loss function and we compare their results. We find that ENet and UNet are more accurate than ERFNet, with ENet much faster than UNet. Specifically, ENet obtains a dice similarity coefficient of 90.89% and a segmentation time of about 6 s using central processing unit (CPU) hardware to simulate real clinical conditions where graphics processing unit (GPU) is not always available. In conclusion, ENet could be efficiently applied for prostate delineation even in small image training datasets with potential benefit for patient management personalization.

Entities:  

Keywords:  ENet; ERFNet; MRI; UNet; deep learning; prostate; radiomics; segmentation

Year:  2021        PMID: 33680505      PMCID: PMC7932306          DOI: 10.3390/app11020782

Source DB:  PubMed          Journal:  Appl Sci (Basel)        ISSN: 2076-3417            Impact factor:   2.679


  5 in total

1.  Advanced Imaging Analysis in Prostate MRI: Building a Radiomic Signature to Predict Tumor Aggressiveness.

Authors:  Anna Damascelli; Francesca Gallivanone; Giulia Cristel; Claudia Cava; Matteo Interlenghi; Antonio Esposito; Giorgio Brembilla; Alberto Briganti; Francesco Montorsi; Isabella Castiglioni; Francesco De Cobelli
Journal:  Diagnostics (Basel)       Date:  2021-03-26

2.  Development and validation of the 3D U-Net algorithm for segmentation of pelvic lymph nodes on diffusion-weighted images.

Authors:  Xiang Liu; Zhaonan Sun; Chao Han; Yingpu Cui; Jiahao Huang; Xiangpeng Wang; Xiaodong Zhang; Xiaoying Wang
Journal:  BMC Med Imaging       Date:  2021-11-13       Impact factor: 1.930

3.  Can machine learning-based analysis of multiparameter MRI and clinical parameters improve the performance of clinically significant prostate cancer diagnosis?

Authors:  Tao Peng; JianMing Xiao; Lin Li; BingJie Pu; XiangKe Niu; XiaoHui Zeng; ZongYong Wang; ChaoBang Gao; Ci Li; Lin Chen; Jin Yang
Journal:  Int J Comput Assist Radiol Surg       Date:  2021-10-22       Impact factor: 2.924

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

Authors:  Pritesh Mehta; Michela Antonelli; Saurabh Singh; Natalia Grondecka; Edward W Johnston; Hashim U Ahmed; Mark Emberton; Shonit Punwani; Sébastien Ourselin
Journal:  Cancers (Basel)       Date:  2021-12-06       Impact factor: 6.639

5.  Impact of Denoising on Deep-Learning-Based Automatic Segmentation Framework for Breast Cancer Radiotherapy Planning.

Authors:  Jung Ho Im; Ik Jae Lee; Yeonho Choi; Jiwon Sung; Jin Sook Ha; Ho Lee
Journal:  Cancers (Basel)       Date:  2022-07-22       Impact factor: 6.575

  5 in total

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