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A Comparative Study of Vision Transformer Encoders and Few-shot Learning for Medical Image Classification

Maxat Nurgazin, Nguyen Anh Tu

202315 citationsDOI

Abstract

Recently, computer vision has been significantly impacted by Vision Transformer (ViT) networks. These deep models have also succeeded in medical image classification. However, most existing deep learning-based methods primarily rely on a lot of labeled data to train reliable classifiers for accurate prediction. This requirement might be impractical in the medical field, where the data is limited and manual annotation is expensive. Therefore, this study explores the application of ViT in few-shot learning scenarios for medical image analysis, addressing the challenges posed by limited data availability. We evaluate various ViT models alongside few-shot learning algorithms (i.e., ProtoNet, MatchingNet, and Reptile), perform cross-domain experiments, and analyze the impact of data augmentation techniques. Our findings indicate that when combined with ProtoNets, ViT architectures outperform CNN-based counterparts and achieve competitive performance against state-of-the-art approaches on benchmark datasets. Cross-domain experiments further reveal the effectiveness of ViT models in few-shot medical image classification.

Topics & Concepts

Computer scienceArtificial intelligenceDeep learningMachine learningEncoderBenchmark (surveying)TransformerContextual image classificationDomain (mathematical analysis)Image (mathematics)Pattern recognition (psychology)EngineeringVoltageMathematical analysisGeographyGeodesyElectrical engineeringOperating systemMathematicsCOVID-19 diagnosis using AIDomain Adaptation and Few-Shot LearningAI in cancer detection