Transfer learning for medical image classification: a literature review

被引:413
作者
Kim, Hee E. [1 ]
Cosa-Linan, Alejandro [1 ]
Santhanam, Nandhini [1 ]
Jannesari, Mahboubeh [1 ]
Maros, Mate E. [1 ]
Ganslandt, Thomas [1 ,2 ]
机构
[1] Heidelberg Univ, Dept Biomed Informat, Ctr Prevent Med & Digital Hlth CPD BW, Theodor Kutzer Ufer 1-3, D-68167 Mannheim, Germany
[2] Friedrich Alexander Univ Erlangen Nurnberg, Chair Med Informat, Wetterkreuz 15, D-91058 Erlangen, Germany
关键词
Deep learning; Transfer learning; Fine-tuning; Convolutional neural network; Medical image analysis; CONVOLUTIONAL NEURAL-NETWORKS; COMPUTER-AIDED DIAGNOSIS; ULTRASOUND IMAGES; ARTIFICIAL-INTELLIGENCE; TOMOGRAPHY IMAGES; DEEP; IDENTIFICATION; SEGMENTATION; PERFORMANCE; FEATURES;
D O I
10.1186/s12880-022-00793-7
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Background Transfer learning (TL) with convolutional neural networks aims to improve performances on a new task by leveraging the knowledge of similar tasks learned in advance. It has made a major contribution to medical image analysis as it overcomes the data scarcity problem as well as it saves time and hardware resources. However, transfer learning has been arbitrarily configured in the majority of studies. This review paper attempts to provide guidance for selecting a model and TL approaches for the medical image classification task. Methods 425 peer-reviewed articles were retrieved from two databases, PubMed and Web of Science, published in English, up until December 31, 2020. Articles were assessed by two independent reviewers, with the aid of a third reviewer in the case of discrepancies. We followed the PRISMA guidelines for the paper selection and 121 studies were regarded as eligible for the scope of this review. We investigated articles focused on selecting backbone models and TL approaches including feature extractor, feature extractor hybrid, fine-tuning and fine-tuning from scratch. Results The majority of studies (n = 57) empirically evaluated multiple models followed by deep models (n = 33) and shallow (n = 24) models. Inception, one of the deep models, was the most employed in literature (n = 26). With respect to the TL, the majority of studies (n = 46) empirically benchmarked multiple approaches to identify the optimal configuration. The rest of the studies applied only a single approach for which feature extractor (n = 38) and fine-tuning from scratch (n = 27) were the two most favored approaches. Only a few studies applied feature extractor hybrid (n = 7) and fine-tuning (n = 3) with pretrained models. Conclusion The investigated studies demonstrated the efficacy of transfer learning despite the data scarcity. We encourage data scientists and practitioners to use deep models (e.g. ResNet or Inception) as feature extractors, which can save computational costs and time without degrading the predictive power.
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页数:13
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