Deep evidential fusion with uncertainty quantification and reliability learning for multimodal medical image segmentation

被引:4
|
作者
Huang, Ling [1 ]
Ruan, Su [2 ]
Decazes, Pierre [3 ]
Denoeux, Thierry [1 ,4 ]
机构
[1] Univ Technol Compiegne, CNRS, Heudiasyc, Compiegne, France
[2] Univ Rouen Normandie, LITIS, Quantif, Rouen, France
[3] Univ Rouen Normandie, Ctr Henri Becquerel, Rouen, France
[4] Inst Univ France, Paris, France
关键词
Dempster-Shafer theory; Evidence theory; Medical image processing; Deep learning; Decision-level fusion; SENSOR RELIABILITY; BELIEF FUNCTIONS; FRAMEWORK; NETWORK; COMBINATION; CHALLENGES; FILTER;
D O I
10.1016/j.inffus.2024.102648
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Single-modality medical images generally do not contain enough information to reach an accurate and reliable diagnosis. For this reason, physicians commonly rely on multimodal medical images for comprehensive diagnostic assessments. This study introduces a deep evidential fusion framework designed for segmenting multimodal medical images, leveraging the Dempster-Shafer theory of evidence in conjunction with deep neural networks. In this framework, features are first extracted from each imaging modality using a deep neural network, and features are mapped to Dempster-Shafer mass functions that describe the evidence of each modality at each voxel. The mass functions are then corrected by the contextual discounting operation, using learned coefficients quantifying the reliability of each source of information relative to each class. The discounted evidence from each modality is then combined using Dempster's rule of combination. Experiments were carried out on a PET-CT dataset for lymphoma segmentation and a multi-MRI dataset for brain tumor segmentation. The results demonstrate the ability of the proposed fusion scheme to quantify segmentation uncertainty and improve segmentation accuracy. Moreover, the learned reliability coefficients provide some insight into the contribution of each modality to the segmentation process.
引用
收藏
页数:17
相关论文
共 50 条
  • [21] A review of deep learning-based information fusion techniques for multimodal medical image classification
    Li Y.
    El Habib Daho M.
    Conze P.-H.
    Zeghlache R.
    Le Boité H.
    Tadayoni R.
    Cochener B.
    Lamard M.
    Quellec G.
    Computers in Biology and Medicine, 2024, 177
  • [22] Deep Evidential Fusion Network for Image Classification
    Xu, Shaoxun
    Chen, Yufei
    Ma, Chao
    Yue, Xiaodong
    BELIEF FUNCTIONS: THEORY AND APPLICATIONS (BELIEF 2021), 2021, 12915 : 185 - 193
  • [23] Uncertainty quantification via localized gradients for deep learning-based medical image assessments
    Schott, Brayden
    Pinchuk, Dmitry
    Santoro-Fernandes, Victor
    Klanecek, Zan
    Rivetti, Luciano
    Deatsch, Alison
    Perlman, Scott
    Li, Yixuan
    Jeraj, Robert
    PHYSICS IN MEDICINE AND BIOLOGY, 2024, 69 (15):
  • [24] Estimating uncertainty in deep learning for reporting confidence to clinicians in medical image segmentation and diseases detection
    Ghoshal, Biraja
    Tucker, Allan
    Sanghera, Bal
    Lup Wong, Wai
    COMPUTATIONAL INTELLIGENCE, 2021, 37 (02) : 701 - 734
  • [25] Evidential Deep Learning to Quantify Classification Uncertainty
    Sensoy, Murat
    Kaplan, Lance
    Kandemir, Melih
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 31 (NIPS 2018), 2018, 31
  • [26] DEEP FUSION OF SHIFTED MLP AND CNN FOR MEDICAL IMAGE SEGMENTATION
    Yuan, Chengyu
    Xiong, Hao
    Shangguan, Guoqing
    Shen, Hualei
    Liu, Dong
    Zhang, Haojie
    Liu, Zhonghua
    Qian, Kun
    Hu, Bin
    Schuller, Bjoern W.
    Yamamoto, Yoshiharu
    Berkovsky, Shlomo
    2024 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING, ICASSP 2024, 2024, : 1676 - 1680
  • [27] Improving the Reliability of Semantic Segmentation of Medical Images by Uncertainty Modeling with Bayesian Deep Networks and Curriculum Learning
    Iwamoto, Sora
    Raytchev, Bisser
    Tamaki, Toru
    Kaneda, Kazufumi
    UNCERTAINTY FOR SAFE UTILIZATION OF MACHINE LEARNING IN MEDICAL IMAGING, AND PERINATAL IMAGING, PLACENTAL AND PRETERM IMAGE ANALYSIS, 2021, 12959 : 34 - 43
  • [28] A comprehensive review of deep learning for medical image segmentation
    Xia, Qingling
    Zheng, Hong
    Zou, Haonan
    Luo, Dinghao
    Tang, Hongan
    Li, Lingxiao
    Jiang, Bin
    NEUROCOMPUTING, 2025, 613
  • [29] Medical image semantic segmentation based on deep learning
    Jiang, Feng
    Grigorev, Aleksei
    Rho, Seungmin
    Tian, Zhihong
    Fu, YunSheng
    Jifara, Worku
    Adil, Khan
    Liu, Shaohui
    NEURAL COMPUTING & APPLICATIONS, 2018, 29 (05): : 1257 - 1265
  • [30] Variability and reproducibility in deep learning for medical image segmentation
    Renard, Felix
    Guedria, Soulaimane
    De Palma, Noel
    Vuillerme, Nicolas
    SCIENTIFIC REPORTS, 2020, 10 (01)