Handling imbalanced medical image data: A deep-learning-based one-class classification approach

被引:86
作者
Gao, Long [1 ,2 ]
Zhang, Lei [2 ]
Liu, Chang [3 ]
Wu, Shandong [2 ,3 ,4 ,5 ]
机构
[1] Natl Univ Def Technol, Coll Comp, Changsha 410073, Peoples R China
[2] Univ Pittsburgh, Sch Med, Dept Radiol, 4200 Fifth Ave, Pittsburgh, PA 15260 USA
[3] Univ Pittsburgh, Dept Bioengn, Swanson Sch Engn, 4200 Fifth Ave, Pittsburgh, PA 15260 USA
[4] Univ Pittsburgh, Dept Biomed Informat, 4200 Fifth Ave, Pittsburgh, PA 15260 USA
[5] Univ Pittsburgh, Intelligent Syst Program, 4200 Fifth Ave, Pittsburgh, PA 15260 USA
基金
美国国家科学基金会; 美国国家卫生研究院;
关键词
Medical image classification; Data imbalance; Deep learning; Image complexity; NOVELTY DETECTION; TUMOR-DETECTION;
D O I
10.1016/j.artmed.2020.101935
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In clinical settings, a lot of medical image datasets suffer from the imbalance problem which hampers the detection of outliers (rare health care events), as most classification methods assume an equal occurrence of classes. In this way, identifying outliers in imbalanced datasets has become a crucial issue. To help address this challenge, one-class classification, which focuses on learning a model using samples from only a single given class, has attracted increasing attention. Previous one-class modeling usually uses feature mapping or feature fitting to enforce the feature learning process. However, these methods are limited for medical images which usually have complex features. In this paper, a novel method is proposed to enable deep learning models to optimally learn single-class-relevant inherent imaging features by leveraging the concept of imaging complexity. We investigate and compare the effects of simple but effective perturbing operations applied to images to capture imaging complexity and to enhance feature learning. Extensive experiments are performed on four clinical datasets to show that the proposed method outperforms four state-of-the-art methods.
引用
收藏
页数:8
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