A review: Deep learning for medical image segmentation using multi-modality fusion

被引:397
作者
Zhou, Tongxue [1 ,2 ]
Ruan, Su [1 ]
Canu, Stephane [2 ]
机构
[1] Univ Rouen Normandie, LITIS QuantIF, F-76183 Rouen, France
[2] INSA Rouen, LITIS Apprentissage, Rouen, France
关键词
Deep learning; Medical image segmentation; Multi-modality fusion; Review; CONVOLUTIONAL NEURAL-NETWORKS; BRAIN-TUMOR SEGMENTATION;
D O I
10.1016/j.array.2019.100004
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Multi -modality is widely used in medical imaging, because it can provide multiinformation about a target (tumor, organ or tissue). Segmentation using multimodality consists of fusing multi -information to improve the segmentation. Recently, deep learning -based approaches have presented the state-of-the-art performance in image classi fication, segmentation, object detection and tracking tasks. Due to their self -learning and generalization ability over large amounts of data, deep learning recently has also gained great interest in multi -modal medical image segmentation. In this paper, we give an overview of deep learning -based approaches for multi -modal medical image segmentation task. Firstly, we introduce the general principle of deep learning and multi -modal medical image segmentation. Secondly, we present different deep learning network architectures, then analyze their fusion strategies and compare their results. The earlier fusion is commonly used, since it 's simple and it focuses on the subsequent segmentation network architecture. However, the later fusion gives more attention on fusion strategy to learn the complex relationship between different modalities. In general, compared to the earlier fusion, the later fusion can give more accurate result if the fusion method is effective enough. We also discuss some common problems in medical image segmentation. Finally, we summarize and provide some perspectives on the future research.
引用
收藏
页数:11
相关论文
共 78 条
[1]  
Aygun M, 2018, Arxiv, DOI arXiv:1809.06191
[2]   Image fusion using intuitionistic fuzzy sets [J].
Balasubramaniam, P. ;
Ananthi, V. P. .
INFORMATION FUSION, 2014, 20 :21-30
[3]  
Bengio P., 2006, Advances in Neural Information Processing Systems 19 (NIPS06), P153, DOI DOI 10.5555/2976456.2976476
[4]  
Bengio Y., 2009, P 26 ANN INT C MACH, P41, DOI [DOI 10.1145/1553374.1553380.EVENT-PLACE, 10.1145/1553374.1553380, DOI 10.1145/1553374.15533802,5]
[5]   Deep convolutional neural networks for brain image analysis on magnetic resonance imaging: a review [J].
Bernal, Jose ;
Kushibar, Kaisar ;
Asfaw, Daniel S. ;
Valverde, Sergi ;
Oliver, Arnau ;
Marti, Robert ;
Llado, Xavier .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2019, 95 :64-81
[6]   A new contrast based multimodal medical image fusion framework [J].
Bhatnagar, Gaurav ;
Wu, Q. M. Jonathan ;
Liu, Zheng .
NEUROCOMPUTING, 2015, 157 :143-152
[7]   Probabilistic segmentation of brain tumors based on multi-modality magnetic resonance images [J].
Cai, Hongmin ;
Verma, Ragini ;
Ou, Yangming ;
Lee, Seung-Koo ;
Melhem, Elias R. ;
Davatzikos, Christos .
2007 4TH IEEE INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING : MACRO TO NANO, VOLS 1-3, 2007, :600-603
[8]  
Chang PD, 2016, P MICCAI BRATS WORKS, P4
[9]   SMOTE: Synthetic minority over-sampling technique [J].
Chawla, Nitesh V. ;
Bowyer, Kevin W. ;
Hall, Lawrence O. ;
Kegelmeyer, W. Philip .
2002, American Association for Artificial Intelligence (16)
[10]   MRI Tumor Segmentation with Densely Connected 3D CNN [J].
Chen, Lele ;
Wu, Yue ;
DSouza, Adora M. ;
Abidin, Anas Z. ;
Wismueller, Axel ;
Xu, Chenliang .
MEDICAL IMAGING 2018: IMAGE PROCESSING, 2018, 10574