3D Lymphoma Segmentation in PET/CT Images Based on Fully Connected CRFs

被引:8
|
作者
Yu, Yuntao [1 ,2 ]
Decazes, Pierre [2 ]
Gardin, Isabelle [2 ]
Vera, Pierre [2 ]
Ruan, Su [1 ]
机构
[1] Univ Rouen, LITIS EA 4108, F-76031 Rouen, France
[2] CHB Hosp, Rue Amiens,CS11516, F-76038 Rouen 1, France
来源
MOLECULAR IMAGING, RECONSTRUCTION AND ANALYSIS OF MOVING BODY ORGANS, AND STROKE IMAGING AND TREATMENT | 2017年 / 10555卷
关键词
Positron Emission Tomography (PET); Lymphoma segmentation; Fully connected conditional random fields; Anatomical atlas; TUMOR VOLUME; RADIOTHERAPY; DELINEATION; TISSUE; TARGET;
D O I
10.1007/978-3-319-67564-0_1
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Positron Emission Tomography (PET) is widely used for lymphoma detection. It is often combined with the CT scan in order to provide anatomical information for helping lymphoma detection. Two common types of approaches can be distinguished for lymphoma detection and segmentation in PET. The first one is ROI dependent which needs a ROI defined by physicians who firstly detect where lymphomas are. The second one is based on machine learning methods which need a large learning database. However, such a large standard database is quite rare in medical field. Considering these problems, we propose a new approach which combines a multi-atlas segmentation of the CT with CRFs (Conditional Random Fields) segmentation method in PET. It consists of 3 steps. Firstly, an anatomical multi-atlas segmentation is applied on CT to locate and remove the organs having hyper metabolism in PET. Secondly, CRFs detect and segment the lymphoma regions in PET. The conditional probabilities used in CRFs are usually estimated by a learning step. In this work, we propose to estimate them in an unsupervised way. A list of the detected regions in 3D is visualized. The final step is to select real lymphomas by simply clicking on them. Our method is tested on ten patients. The rate of good detection is 100%. The average of Dice index over 10 patients for measuring the lymphoma is 80% compared to manual lymphoma segmentation. Comparing with other methods in terms of Dice index shows the best performance of our method.
引用
收藏
页码:3 / 12
页数:10
相关论文
共 50 条
  • [41] Fully 3D Active Surface with Machine Learning for PET Image Segmentation
    Comelli, Albert
    JOURNAL OF IMAGING, 2020, 6 (11)
  • [42] Open-source AI-based networks for automatic segmentation of NSCLC on 3D and 4D PET/CT images
    Radicioni, Gianluca
    Kuhn, Dejan
    Fechter, Tobias
    Baltas, Dimos
    Mix, Michael
    Nestle, Ursula
    Grosu, Anca-Ligia
    Marti-Bonmati, Luis
    Gkika, Eleni
    Carles, Montserrat
    RADIOTHERAPY AND ONCOLOGY, 2024, 194 : S1819 - S1821
  • [43] Automatic Segmentation of Kidney and Renal Tumor in CT Images Based on 3D Fully Convolutional Neural Network with Pyramid Pooling Module
    Yang, Guanyu
    Li, Guoqing
    Pan, Tan
    Kong, Youyong
    Wu, Jiasong
    Shu, Huazhong
    Luo, Limin
    Dillenseger, Jean-Louis
    Coatrieux, Jean-Louis
    Tang, Lijun
    Zhu, Xiaomei
    2018 24TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2018, : 3790 - 3795
  • [44] 3D fully convolutional network-based segmentation of lung nodules in CT images with a clinically inspired data synthesis method
    Yaguchi, Atsushi
    Aoyagi, Kota
    Tanizawa, Akiyuki
    Ohno, Yoshiharu
    MEDICAL IMAGING 2019: COMPUTER-AIDED DIAGNOSIS, 2019, 10950
  • [45] Fully Automatic Localization and Segmentation of 3D Vertebral Bodies from CT/MR Images via a Learning-Based Method
    Chu, Chengwen
    Belavy, Daniel L.
    Armbrecht, Gabriele
    Bansmann, Martin
    Felsenberg, Dieter
    Zheng, Guoyan
    PLOS ONE, 2015, 10 (11):
  • [46] Segmentation of Aorta 3D CT Images Based on 2D Convolutional Neural Networks
    Bonechi, Simone
    Andreini, Paolo
    Mecocci, Alessandro
    Giannelli, Nicola
    Scarselli, Franco
    Neri, Eugenio
    Bianchini, Monica
    Dimitri, Giovanna Maria
    ELECTRONICS, 2021, 10 (20)
  • [47] 3D Point Cloud Segmentation Using a Fully Connected Conditional Random Field
    Lin, Xiao
    Casas, Josep R.
    Pardas, Montse
    2017 25TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO), 2017, : 66 - 70
  • [48] IMPROVING TUMOR CO-SEGMENTATION ON PET-CT IMAGES WITH 3D CO-MATTING
    Zhong, Zisha
    Kim, Yusung
    Zhou, Leixin
    Plichta, Kristin
    Allen, Bryan
    Buatti, John
    Wu, Xiaodong
    2018 IEEE 15TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING (ISBI 2018), 2018, : 224 - 227
  • [49] 3D PET/CT tumor segmentation based on nnU-Net with GCN refinement
    Xue, Hengzhi
    Fang, Qingqing
    Yao, Yudong
    Teng, Yueyang
    PHYSICS IN MEDICINE AND BIOLOGY, 2023, 68 (18):
  • [50] A combined learning algorithm for prostate segmentation on 3D CT images
    Ma, Ling
    Guo, Rongrong
    Zhang, Guoyi
    Schuster, David M.
    Fei, Baowei
    MEDICAL PHYSICS, 2017, 44 (11) : 5768 - 5781