Prostate cancer identification: quantitative analysis of T2-weighted MR images based on a back propagation artificial neural network model

被引:0
|
作者
ZHAO Kai [1 ]
WANG ChengYan [2 ]
HU Juan [1 ]
YANG XueDong [1 ]
WANG He [1 ]
LI FeiYu [1 ]
ZHANG XiaoDong [1 ]
ZHANG Jue [2 ]
WANG XiaoYing [1 ,2 ]
机构
[1] Department of Radiology, Peking University First Hospital
[2] Academy for Advanced Interdisciplinary Studies, Peking University
关键词
prostate cancer; magnetic resonance imaging; T2WI; diagnosis; computer-assisted;
D O I
暂无
中图分类号
R737.25 [前列腺肿瘤];
学科分类号
100214 ;
摘要
Computer-aided diagnosis(CAD) systems have been proposed to assist radiologists in making diagnostic decisions by providing helpful information. As one of the most important sequences in prostate magnetic resonance imaging(MRI), image features from T2-weighted images(T2WI) were extracted and evaluated for the diagnostic performances by using CAD. We extracted 12 quantitative image features from prostate T2-weighted MR images. The importance of each feature in cancer identification was compared in the peripheral zone(PZ) and central gland(CG), respectively. The performance of the computer-aided diagnosis system supported by an artificial neural network was tested. With computer-aided analysis of T2-weighted images, many characteristic features with different diagnostic capabilities can be extracted. We discovered most of the features(10/12) had significant difference(P<0.01) between PCa and non-PCa in the PZ, while only five features(sum average, minimum value, standard deviation, 10 th percentile, and entropy) had significant difference in CG. CAD prediction by features from T2 w images can reach high accuracy and specificity while maintaining acceptable sensitivity. The outcome is convictive and helpful in medical diagnosis.
引用
收藏
页码:666 / 676
页数:11
相关论文
共 50 条
  • [1] Prostate cancer identification: quantitative analysis of T2-weighted MR images based on a back propagation artificial neural network model
    Zhao Kai
    Wang ChengYan
    Hu Juan
    Yang XueDong
    Wang He
    Li FeiYu
    Zhang XiaoDong
    Zhang Jue
    Wang XiaoYing
    SCIENCE CHINA-LIFE SCIENCES, 2015, 58 (07) : 666 - 673
  • [2] Prostate cancer identification: quantitative analysis of T2-weighted MR images based on a back propagation artificial neural network model
    Kai Zhao
    ChengYan Wang
    Juan Hu
    XueDong Yang
    He Wang
    FeiYu Li
    XiaoDong Zhang
    Jue Zhang
    XiaoYing Wang
    Science China Life Sciences, 2015, 58 : 666 - 673
  • [3] Dictionary-based through-plane interpolation of prostate cancer T2-weighted MR images
    Jurek, Jakub
    Kocinski, Marek
    Materka, Andrzej
    Losnegard, Are
    Reisaeter, Lars
    Halvorsen, Ole J.
    Beisland, Christian
    Rorvik, Jarle
    Lundervold, Arvid
    2018 SIGNAL PROCESSING: ALGORITHMS, ARCHITECTURES, ARRANGEMENTS, AND APPLICATIONS (SPA), 2018, : 168 - 173
  • [4] Application of texture analysis based on T2-weighted magnetic resonance images in discriminating Gleason scores of prostate cancer
    Pan, Ruigen
    Yang, Xueli
    Shu, Zhenyu
    Gu, Yifeng
    Weng, Lihua
    Jia, Yuezhu
    Feng, Jianju
    JOURNAL OF X-RAY SCIENCE AND TECHNOLOGY, 2020, 28 (06) : 1207 - 1218
  • [5] Registration of T2-weighted and diffusion-weighted MR images of the prostate: Comparison between manual and landmark-based methods
    Peng, Yahui
    Jiang, Yulei
    Soylu, Fatma Nur
    Tomek, Mark
    Sensakovic, William
    Oto, Aytekin
    MEDICAL IMAGING 2012: IMAGE PERCEPTION, OBSERVER PERFORMANCE, AND TECHNOLOGY ASSESSMENT, 2012, 8318
  • [6] Effect of Echo Times on Prostate Cancer Detection on T2-Weighted Images
    Chatterjee, Aritrick
    Nolan, Paul
    Sun, Chongpeng
    Mathew, Melvy
    Dwivedi, Durgesh
    Yousuf, Ambereen
    Antic, Tatjana
    Karczmar, Gregory S.
    Oto, Aytekin
    ACADEMIC RADIOLOGY, 2020, 27 (11) : 1555 - 1563
  • [7] Integrated framework for quantitative T2-weighted MRI analysis following prostate cancer radiotherapy
    Zacharaki, Evangelia I.
    Breto, Adrian L.
    Algohary, Ahmad
    Wallaengen, Veronica
    Gaston, Sandra M.
    Punnen, Sanoj
    Castillo, Patricia
    Pattany, Pradip M.
    Kryvenko, Oleksandr N.
    Spieler, Benjamin
    Ford, John C.
    Abramowitz, Matthew C.
    Dal Pra, Alan
    Pollack, Alan
    Stoyanova, Radka
    PHYSICS & IMAGING IN RADIATION ONCOLOGY, 2024, 32
  • [8] Texture analysis of T1-and T2-weighted MR images and use of probabilistic neural network to discriminate posterior fossa tumours in children
    Orphanidou-Vlachou, Eleni
    Vlachos, Nikolaos
    Davies, Nigel P.
    Arvanitis, Theodoros N.
    Grundy, Richard G.
    Peet, Andrew C.
    NMR IN BIOMEDICINE, 2014, 27 (06) : 632 - 639
  • [9] Quantitative Analysis and Pathological Basis of Signal Intensity on T2-Weighted MR Images in Benign and Malignant Parotid Tumors
    Wei, Peiying
    Shao, Chang
    Tian, Min
    Wu, Mengwei
    Wang, Haibin
    Han, Zhijiang
    Hu, Hongjie
    CANCER MANAGEMENT AND RESEARCH, 2021, 13 : 5423 - 5431
  • [10] Combined model-based and deep learning-based automated 3D zonal segmentation of the prostate on T2-weighted MR images: clinical evaluation
    Olivier Rouvière
    Paul Cezar Moldovan
    Anna Vlachomitrou
    Sylvain Gouttard
    Benjamin Riche
    Alexandra Groth
    Mark Rabotnikov
    Alain Ruffion
    Marc Colombel
    Sébastien Crouzet
    Juergen Weese
    Muriel Rabilloud
    European Radiology, 2022, 32 : 3248 - 3259