Litcius/Paper detail

MedOptNet: Meta-Learning Framework for Few-Shot Medical Image Classification

Liangfu Lu, Xudong Cui, Zhiyuan Tan, Yulei Wu

2023IEEE/ACM Transactions on Computational Biology and Bioinformatics30 citationsDOIOpen Access PDF

Abstract

In the medical research domain, limited data and high annotation costs have made efficient classification under few-shot conditions a popular research area. This paper proposes a meta-learning framework, termed MedOptNet, for few-shot medical image classification. The framework enables the use of various high-performance convex optimization models as classifiers, such as multi-class kernel support vector machines, ridge regression, and other models. End-to-end training is then implemented using dual problems and differentiation in the paper. Additionally, various regularization techniques are employed to enhance the model's generalization capabilities. Experiments on the BreakHis, ISIC2018, and Pap smear medical few-shot datasets demonstrate that the MedOptNet framework outperforms benchmark models. Moreover, the model training time is also compared to prove its effectiveness in the paper, and an ablation study is conducted to validate the effectiveness of each module.

Topics & Concepts

Computer scienceSupport vector machineArtificial intelligenceBenchmark (surveying)Machine learningRegularization (linguistics)Kernel (algebra)GeneralizationDomain (mathematical analysis)Contextual image classificationData miningPattern recognition (psychology)Image (mathematics)MathematicsGeographyCombinatoricsGeodesyMathematical analysisDomain Adaptation and Few-Shot LearningCancer-related molecular mechanisms researchCOVID-19 diagnosis using AI