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arxiv 2501.14685 v1 pith:OX7JFJOH submitted 2025-01-24 eess.IV cs.AIcs.CVcs.LG

Rethinking Foundation Models for Medical Image Classification through a Benchmark Study on MedMNIST

classification eess.IV cs.AIcs.CVcs.LG
keywords modelsfoundationimageclassificationmedicaltasksbenchmarkmedmnist
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Foundation models are widely employed in medical image analysis, due to their high adaptability and generalizability for downstream tasks. With the increasing number of foundation models being released, model selection has become an important issue. In this work, we study the capabilities of foundation models in medical image classification tasks by conducting a benchmark study on the MedMNIST dataset. Specifically, we adopt various foundation models ranging from convolutional to Transformer-based models and implement both end-to-end training and linear probing for all classification tasks. The results demonstrate the significant potential of these pre-trained models when transferred for medical image classification. We further conduct experiments with different image sizes and various sizes of training data. By analyzing all the results, we provide preliminary, yet useful insights and conclusions on this topic.

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