COMPARISON OF SUPERVISED MRI SEGMENTATION METHODS FOR TUMOR VOLUME DETERMINATION DURING THERAPY

被引:69
|
作者
VAIDYANATHAN, M
CLARKE, LP
VELTHUIZEN, RP
PHUPHANICH, S
BENSAID, AM
HALL, LO
BEZDEK, JC
GREENBERG, H
TROTTI, A
SILBIGER, M
机构
[1] Department of Radiology, University of South Florida, Tampa
[2] H. Lee Moffitt Cancer Center, Research Institute, Tampa
[3] Department of Computer Science and Engineering, University of South Florida, Tampa
[4] Department of Computer Science, University of West Florida, Pensacola
[5] Neuro-oncology Program, H. Lee Moffitt Cancer Center, Research Institute, Tampa
[6] Radiation-oncology Program, H. Lee Moffitt Cancer Center, Research Institute, Tampa
关键词
IMAGE SEGMENTATION; PATTERN RECOGNITION METHODS; BRAIN TUMOR; MAGNETIC RESONANCE IMAGING (MRI); VOLUMETRIC ANALYSIS;
D O I
10.1016/0730-725X(95)00012-6
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Two different multispectral pattern recognition methods are used to segment magnetic resonance images (MRI) of the brain for quantitative estimation of tumor volume and volume changes with therapy. A supervised k-nearest neighbor (kNN) rule and a semi-supervised fuzzy c-means (SFCM) method are used to segment MRI slice data, Tumor volumes as determined by the kNN and SFCM segmentation methods are compared with two reference methods, based on image grey scale, as a basis for an estimation of ground truth, namely: (a) a commonly used seed growing method that is applied to the contrast enhanced T-1-weighted image, and (b) a manual segmentation method using a custom-designed graphical user interface applied to the same raw image (T-1-weighted) dataset, Emphasis is placed on measurement of intra and inter observer reproducibility using the proposed methods. Intra-and interobserver variation for the kNN method was 9% and 5%, respectively, The results for the SFCM method was a little better at 6% and 4%, respectively, For the seed growing method, the intra-observer variation was 6% and the interobserver variation was 17%, significantly larger when compared with the multispectral methods. The absolute tumor volume determined by the multispectral segmentation methods was consistently smaller than that observed for the reference methods. The results of this study are found to be very patient case-dependent. The results for SFCM suggest that it should be useful for relative measurements of tumor volume during therapy, but further studies are required, This work demonstrates the need for minimally supervised or unsupervised methods for tumor volume measurements.
引用
收藏
页码:719 / 728
页数:10
相关论文
共 50 条
  • [1] Tumor volume measurements using supervised and semi-supervised MRI segmentation methods
    Vaidyanathan, M.
    Velthuizen, R.P.
    Venugopal, P.
    Clarke, L.P.
    Hall, L.O.
    Artificial Neural Networks in Engineering - Proceedings (ANNIE'94), 1994, 4 : 629 - 637
  • [2] Combining cluster analysis with supervised segmentation methods for MRI
    Soltanian-Zadeh, H
    Windham, JP
    Peck, DJ
    Emery, L
    MEDICAL IMAGING 1998: IMAGE PROCESSING, PTS 1 AND 2, 1998, 3338 : 1411 - 1421
  • [3] A COMPARISON OF SUPERVISED AND UNSUPERVISED METHODS FOR POLYP SEGMENTATION
    Zhong, Jiayang
    Dupont, Johannes
    Aslanian, Harry R.
    Onofrey, John
    Shung, Dennis
    GASTROENTEROLOGY, 2023, 164 (06) : S154 - S154
  • [4] Comparison of automatic segmentation methods on multicenter PET images for tumor volume definition
    de Brouwer, Thomas
    Vanderlinden, Bruno
    Guiot, Thomas
    Garcia, Camilo
    Flamen, Patrick
    JOURNAL OF NUCLEAR MEDICINE, 2012, 53
  • [5] Supervised and unsupervised methods for prostate cancer segmentation with multispectral MRI
    Ozer, Sedat
    Langer, Deanna L.
    Liu, Xin
    Haider, Masoom A.
    van der Kwast, Theodorus H.
    Evans, Andrew J.
    Yang, Yongyi
    Wernick, Miles N.
    Yetik, Imam S.
    MEDICAL PHYSICS, 2010, 37 (04) : 1873 - 1883
  • [6] Supervised methods for detection and segmentation of tissues in clinical lumbar MRI
    Ghosh, Subarna
    Chaudhary, Vipin
    COMPUTERIZED MEDICAL IMAGING AND GRAPHICS, 2014, 38 (07) : 639 - 649
  • [7] A Performance Comparison of Supervised and Unsupervised Image Segmentation Methods
    Baby D.
    Devaraj S.J.
    Mathew S.
    Anishin Raj M.M.
    Karthikeyan B.
    SN Computer Science, 2020, 1 (3)
  • [8] Brain tumor target volume determination for radiation treatment planning through automated MRI segmentation
    Mazzara, GP
    Velthuizen, RP
    Pearlman, JL
    Greenberg, HM
    Wagner, H
    INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2004, 59 (01): : 300 - 312
  • [9] Comparison of Total Metabolic Tumor Volume Segmentation Methods and Their Prognostic Impact in Follicular Lymphoma
    Durmo, R.
    Guerra, L.
    Chauvie, S.
    Bergesio, F.
    Fallanca, F.
    Marcheselli, L.
    Anastasia, A.
    Minoia, C.
    Arcaini, L.
    Federico, M.
    Versari, A.
    Luminari, S.
    EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2024, 51 : S234 - S235
  • [10] Efficient Segmentation Methods for Tumor Detection in MRI Images
    Sinha, Kailash
    Sinha, G. R.
    2014 IEEE STUDENTS' CONFERENCE ON ELECTRICAL, ELECTRONICS AND COMPUTER SCIENCE (SCEECS), 2014,