Analysis of deep learning approaches for automated prostate segmentation: literature review

被引:1
|
作者
Talyshinskii, A. E. [1 ]
Guliev, B. G. [2 ,3 ]
Kamyshanskaya, I. G. [1 ,3 ,4 ]
Novikov, A. I. [2 ,5 ]
Zhanbyrbekuly, U. [6 ]
Mamedov, A. E. [7 ]
Povago, I. A. [2 ]
Andriyanov, A. A. [2 ]
机构
[1] Med Ray, Build 1,11 Serebryakova Proezd, Moscow 129343, Russia
[2] II Mechnikov North West State Med Univ, Minist Hlth Russia, 41 Kirochnaya St, St Petersburg 191015, Russia
[3] Mariinsky Hosp, 56 Liteynyy Prospekt, St Petersburg 191014, Russia
[4] St Petersburg State Univ, 7-9 Univ Skaya Naberezhnaya, St Petersburg 199034, Russia
[5] NP Napalkov St Petersburg Clin Sci & Pract Ctr Sp, Lit A,68A Leningradskaya St, St Petersburg 197758, Russia
[6] Astana Med Univ, Dept Urol & Androl, 49A Beybitshilik St, Astana 010000, Kazakhstan
[7] Samara Univ, 34 Moskovskoye Shosse, Samara 443086, Russia
来源
ONKOUROLOGIYA | 2023年 / 19卷 / 02期
关键词
prostate cancer; multiparametric magnetic resonance imaging; artificial intelligence; prostate segmentation; NETWORK;
D O I
10.17650/1726-9776-2023-19-2-101-110
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background. Delineation of the prostate boundaries represents the initial step in understanding the state of the whole organ and is mainly manually performed, which takes a long time and directly depends on the experience of the radiologists. Automated prostate selection can be carried out by various approaches, including using artificial intelligence and its subdisciplines - machine and deep learning. Aim. To reveal the most accurate deep learning-based methods for prostate segmentation on multiparametric magnetic resonance images. Materials and methods. The search was conducted in July 2022 in the PubMed database with a special clinical query (((AI) OR (machine learning)) OR (deep learning)) AND (prostate) AND (MRI). The inclusion criteria were availability of the full article, publication date no more than five years prior to the time of the search, availability of a quantitative assessment of the reconstruction accuracy by the Dice similarity coefficient (DSC) calculation. Results. The search returned 521 articles, but only 24 papers including descriptions of 33 different deep learning networks for prostate segmentation were selected for the final review. The median number of cases included for artificial intelligence training was 100 with a range from 25 to 365. The optimal DSC value threshold (0.9), in which automated segmentation is only slightly inferior to manual delineation, was achieved in 21 studies. Conclusion. Despite significant achievements in the development of deep learning-based prostate segmentation algorithms, there are still problems and limitations that should be resolved before artificial intelligence can be implemented in clinical practice.
引用
收藏
页码:101 / 110
页数:10
相关论文
共 50 条
  • [21] Deep learning approaches for bad smell detection: a systematic literature review
    Alazba, Amal
    Aljamaan, Hamoud
    Alshayeb, Mohammad
    EMPIRICAL SOFTWARE ENGINEERING, 2023, 28 (03)
  • [22] Deep learning techniques in CT image reconstruction and segmentation: a systematic literature review
    Devi, Manju
    Singh, Sukhdip
    Tiwari, Shailendra
    INTERNATIONAL JOURNAL OF NANOTECHNOLOGY, 2023, 20 (5-10) : 790 - 828
  • [23] Deep learning-based automated image segmentation for concrete petrographic analysis
    Song, Yu
    Huang, Zilong
    Shen, Chuanyue
    Shi, Humphrey
    Lange, David A.
    CEMENT AND CONCRETE RESEARCH, 2020, 135 (135)
  • [24] Deep learning models and traditional automated techniques for brain tumor segmentation in MRI: a review
    Parvathy Jyothi
    A. Robert Singh
    Artificial Intelligence Review, 2023, 56 : 2923 - 2969
  • [25] Deep learning models and traditional automated techniques for brain tumor segmentation in MRI: a review
    Jyothi, Parvathy
    Singh, A. Robert
    ARTIFICIAL INTELLIGENCE REVIEW, 2023, 56 (04) : 2923 - 2969
  • [26] Segmentation of prostate and prostate zones using deep learning A multi-MRI vendor analysis
    Zavala-Romero, Olmo
    Breto, Adrian L.
    Xu, Isaac R.
    Chang, Yu-Cherng C.
    Gautney, Nicole
    Pra, Alan Dal
    Abramowitz, Matthew C.
    Pollack, Alan
    Stoyanova, Radka
    STRAHLENTHERAPIE UND ONKOLOGIE, 2020, 196 (10) : 932 - 942
  • [27] Bacterial Behaviour Analysis Through Image Segmentation Using Deep Learning Approaches
    Rahman, Afroza
    Rahman, Miraz
    Ahad, Md Atiqur Rahman
    ARTIFICIAL INTELLIGENCE IN HEALTHCARE, PT II, AIIH 2024, 2024, 14976 : 172 - 185
  • [28] Comparative analysis of training approaches for deep learning geographic atrophy segmentation models
    Musial, Gwen
    Zhang, Qinqin
    Salehi, Ali
    Herrera, Gissel
    Shen, Mengxi
    Gregori, Giovanni
    Rosenfeld, Philip J.
    Cheng, Yuxuan
    Wang, Ruikang K.
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2024, 65 (07)
  • [29] Deep Learning for Visual Segmentation: A Review
    Sun, Jiaxing
    Li, Yujie
    Lu, Huimin
    Kamiya, Tohru
    Serikawa, Seiichi
    2020 IEEE 44TH ANNUAL COMPUTERS, SOFTWARE, AND APPLICATIONS CONFERENCE (COMPSAC 2020), 2020, : 1256 - 1260
  • [30] Advances in Medical Image Segmentation: A Comprehensive Review of Traditional, Deep Learning and Hybrid Approaches
    Xu, Yan
    Quan, Rixiang
    Xu, Weiting
    Huang, Yi
    Chen, Xiaolong
    Liu, Fengyuan
    BIOENGINEERING-BASEL, 2024, 11 (10):