MetaMed: Few-shot medical image classification using gradient-based meta-learning

作者:

Highlights:

• Efficacy of a gradient-based meta-learning algorithm for few-shot learning problem on real-world non-uniformly distributed medical image datasets is analyzed.

• Our experiments empirically validate that the use of meta-learning increases the confidence of predictions and robustness.

• Our work proves that normal augmentation strategies fail to regularize the network in gradient-based meta-learning problems.

• Hence, we integrated advanced augmentation strategies that can generate virtual samples as well as labels.

• Showcasing the advantages of advanced augmentation techniques on three complex medical image datasets.

• Our work significantly reduces the need to collect and annotate large data for deep learning applications in the medical domain.

摘要

•Efficacy of a gradient-based meta-learning algorithm for few-shot learning problem on real-world non-uniformly distributed medical image datasets is analyzed.•Our experiments empirically validate that the use of meta-learning increases the confidence of predictions and robustness.•Our work proves that normal augmentation strategies fail to regularize the network in gradient-based meta-learning problems.•Hence, we integrated advanced augmentation strategies that can generate virtual samples as well as labels.•Showcasing the advantages of advanced augmentation techniques on three complex medical image datasets.•Our work significantly reduces the need to collect and annotate large data for deep learning applications in the medical domain.

论文关键词:Few-shot learning,Meta-learning,Multi-shot learning,Medical image classification,Image augmentation,Histopathological image classification

论文评审过程:Received 12 January 2021, Revised 9 March 2021, Accepted 18 April 2021, Available online 17 June 2021, Version of Record 6 July 2021.

论文官网地址:https://doi.org/10.1016/j.patcog.2021.108111