Transductive Image Segmentation: Self-training and Effect of Uncertainty Estimation

被引:1
作者
Kamnitsas, Konstantinos [1 ]
Winzeck, Stefan [1 ]
Kornaropoulos, Evgenios N. [2 ,5 ]
Whitehouse, Daniel [2 ]
Englman, Cameron [2 ]
Phyu, Poe [3 ]
Pao, Norman [4 ]
Menon, David K. [2 ]
Rueckert, Daniel [1 ,6 ]
Das, Tilak [3 ]
Newcombe, Virginia F. J. [2 ]
Glocker, Ben [1 ]
机构
[1] Imperial Coll London, Dept Comp, London, England
[2] Univ Cambridge, Dept Med, Div Anaesthesia, Cambridge, England
[3] Cambridge Univ Hosp NHS Fdn Trust, Dept Radiol, Cambridge, England
[4] Cambridge Univ Hosp NHS Fdn Trust, Dept Emergency Med, Cambridge, England
[5] Lund Univ, Clin Sci, Diagnost Radiol, Lund, Sweden
[6] Tech Univ Munich, Klinikum Rechts Isar, Munich, Germany
来源
DOMAIN ADAPTATION AND REPRESENTATION TRANSFER, AND AFFORDABLE HEALTHCARE AND AI FOR RESOURCE DIVERSE GLOBAL HEALTH (DART 2021) | 2021年 / 12968卷
关键词
D O I
10.1007/978-3-030-87722-4_8
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Semi-supervised learning (SSL) uses unlabeled data during training to learn better models. Previous studies on SSL for medical image segmentation focused mostly on improving model generalization to unseen data. In some applications, however, our primary interest is not generalization but to obtain optimal predictions on a specific unlabeled database that is fully available during model development. Examples include population studies for extracting imaging phenotypes. This work investigates an often overlooked aspect of SSL, transduction. It focuses on the quality of predictions made on the unlabeled data of interest when they are included for optimization during training, rather than improving generalization. We focus on the self-training framework and explore its potential for transduction. We analyze it through the lens of Information Gain and reveal that learning benefits from the use of calibrated or under-confident models. Our extensive experiments on a large MRI database for multi-class segmentation of traumatic brain lesions shows promising results when comparing transductive with inductive predictions. We believe this study will inspire further research on transductive learning, a well-suited paradigm for medical image analysis.
引用
收藏
页码:79 / 89
页数:11
相关论文
共 25 条
[1]  
Bengio Y., 2005, Advances in Neural Information Processing Systems (NeurIPS)
[2]  
Boudiaf M., 2020, NeurIPS
[3]  
Bucilua C., 2006, P 12 ACM SIGKDD IN, P535
[4]   Causality matters in medical imaging [J].
Castro, Daniel C. ;
Walker, Ian ;
Glocker, Ben .
NATURE COMMUNICATIONS, 2020, 11 (01)
[5]  
Chapelle O., 2006, IEEE T NEURAL NETW 2
[6]   Semi-supervised Brain Lesion Segmentation with an Adapted Mean Teacher Model [J].
Cui, Wenhui ;
Liu, Yanlin ;
Li, Yuxing ;
Guo, Menghao ;
Li, Yiming ;
Li, Xiuli ;
Wang, Tianle ;
Zeng, Xiangzhu ;
Ye, Chuyang .
INFORMATION PROCESSING IN MEDICAL IMAGING, IPMI 2019, 2019, 11492 :554-565
[7]   Tracing retinal vessel trees by transductive inference [J].
De, Jaydeep ;
Li, Huiqi ;
Cheng, Li .
BMC BIOINFORMATICS, 2014, 15
[8]  
Guo CA, 2017, PR MACH LEARN RES, V70
[9]   Why ReLU networks yield high-confidence predictions far away from the training data and how to mitigate the problem [J].
Hein, Matthias ;
Andriushchenko, Maksym ;
Bitterwolf, Julian .
2019 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2019), 2019, :41-50
[10]  
Hendrycks Dan, 2017, INT C LEARN REPR ICL, DOI DOI 10.48550/ARXIV.1610.02136