MUSCLE: Multi-task Self-supervised Continual Learning to Pre-train Deep Models for X-Ray Images of Multiple Body Parts

被引:14
作者
Liao, Weibin [1 ]
Xiong, Haoyi [1 ]
Wang, Qingzhong [1 ]
Mo, Yan [1 ]
Li, Xuhong [1 ]
Liu, Yi [1 ]
Chen, Zeyu [1 ]
Huang, Siyu [2 ]
Dou, Dejing [1 ]
机构
[1] Baidu Inc, Beijing, Peoples R China
[2] Harvard Univ, Cambridge, MA USA
来源
MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION, MICCAI 2022, PT VIII | 2022年 / 13438卷
关键词
X-ray images (X-ray); Self-supervised learning; NEURAL-NETWORKS;
D O I
10.1007/978-3-031-16452-1_15
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
While self-supervised learning (SSL) algorithms have been widely used to pre-train deep models, few efforts [11] have been done to improve representation learning of X-ray image analysis with SSL pre-trained models. In this work, we study a novel self-supervised pre-training pipeline, namely Multi-task Self-super-vised Continual Learning (MUSCLE), for multiple medical imaging tasks, such as classification and segmentation, using X-ray images collected from multiple body parts, including heads, lungs, and bones. Specifically, MUSCLE aggregates X-rays collected from multiple body parts for MoCo-based representation learning, and adopts a well-designed continual learning (CL) procedure to further pre-train the backbone subject various X-ray analysis tasks jointly. Certain strategies for image pre-processing, learning schedules, and regularization have been used to solve data heterogeneity, overfitting, and catastrophic forgetting problems for multi-task/dataset learning in MUSCLE. We evaluate MUSCLE using 9 real-world X-ray datasets with various tasks, including pneumonia classification, skeletal abnormality classification, lung segmentation, and tuberculosis (TB) detection. Comparisons against other pre-trained models [7] confirm the proof-of-concept that self-supervised multi-task/dataset continual pre-training could boost the performance of X-ray image analysis.
引用
收藏
页码:151 / 161
页数:11
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