Comparison of fine-tuning strategies for transfer learning in medical image classification

被引:10
|
作者
Davila, Ana [1 ]
Colan, Jacinto [2 ]
Hasegawa, Yasuhisa [1 ]
机构
[1] Nagoya Univ, Inst Innovat Future Soc, Furo Cho,Chikusa Ku, Nagoya, Aichi 4648601, Japan
[2] Nagoya Univ, Dept Micronano Mech Sci & Engn, Furo Cho,Chikusa Ku, Nagoya, Aichi 4648603, Japan
基金
日本学术振兴会;
关键词
Medical image analysis; Fine-tuning; Transfer learning; Convolutional neural network; Image classification;
D O I
10.1016/j.imavis.2024.105012
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In the context of medical imaging and machine learning, one of the most pressing challenges is the effective adaptation of pre-trained models to specialized medical contexts. Despite the availability of advanced pre-trained models, their direct application to the highly specialized and diverse field of medical imaging often falls short due to the unique characteristics of medical data. This study provides a comprehensive analysis on the performance of various fine-tuning methods applied to pre-trained models across a spectrum of medical imaging domains, including X-ray, MRI, Histology, Dermoscopy, and Endoscopic surgery. We evaluated eight fine-tuning strategies, including standard techniques such as fine-tuning all layers or fine-tuning only the classifier layers, alongside methods such as gradually unfreezing layers, regularization based fine-tuning and adaptive learning rates. We selected three well-established CNN architectures (ResNet-50, DenseNet-121, and VGG-19) to cover a range of learning and feature extraction scenarios. Although our results indicate that the efficacy of these finetuning methods significantly varies depending on both the architecture and the medical imaging type, strategies such as combining Linear Probing with Full Fine-tuning resulted in notable improvements in over 50% of the evaluated cases, demonstrating general effectiveness across medical domains. Moreover, Auto-RGN, which dynamically adjusts learning rates, led to performance enhancements of up to 11% for specific modalities. Additionally, the DenseNet architecture showed more pronounced benefits from alternative fine-tuning approaches compared to traditional full fine-tuning. This work not only provides valuable insights for optimizing pre-trained models in medical image analysis but also suggests the potential for future research into more advanced architectures and fine-tuning methods.
引用
收藏
页数:17
相关论文
共 50 条
  • [31] Transfer Learning Gaussian Anomaly Detection by Fine-tuning Representations
    Rippel, Oliver
    Chavan, Arnav
    Lei, Chucai
    Merhof, Dorit
    IMPROVE: PROCEEDINGS OF THE 2ND INTERNATIONAL CONFERENCE ON IMAGE PROCESSING AND VISION ENGINEERING, 2022, : 45 - 56
  • [32] Top-tuning: A study on transfer learning for an efficient alternative to fine tuning for image classification with fast kernel methods
    Alfano, Paolo Didier
    Pastore, Vito Paolo
    Rosasco, Lorenzo
    Odone, Francesca
    IMAGE AND VISION COMPUTING, 2024, 142
  • [33] RAFNet: Interdomain Representation Alignment and Fine-Tuning for Image Series Classification
    Gong, Maoguo
    Qiao, Wenyuan
    Li, Hao
    Qin, A. K.
    Gao, Tianqi
    Luo, Tianshi
    Xing, Lining
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2023, 61
  • [34] Role of inter- and extra-lesion tissue, transfer learning, and fine-tuning in the robust classification of breast lesions
    Nastase, Iulia-Nela Anghelache
    Moldovanu, Simona
    Biswas, Keka C.
    Moraru, Luminita
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [35] Fine-tuning ConvNets with Novel Leather Image Data for Species Identification
    Varghese, Anjli
    Jawahar, Malathy
    Prince, A. Amalin
    FIFTEENTH INTERNATIONAL CONFERENCE ON MACHINE VISION, ICMV 2022, 2023, 12701
  • [36] Aerial Scene Classification through Fine-Tuning with Adaptive Learning Rates and Label Smoothing
    Petrovska, Biserka
    Atanasova-Pacemska, Tatjana
    Corizzo, Roberto
    Mignone, Paolo
    Lameski, Petre
    Zdravevski, Eftim
    APPLIED SCIENCES-BASEL, 2020, 10 (17):
  • [37] Enhancing Alzheimer's Disease Classification with Transfer Learning: Fine-tuning a Pre-trained Algorithm
    Boudi, Abdelmounim
    He, Jingfei
    Abd El Kader, Isselmou
    CURRENT MEDICAL IMAGING, 2024,
  • [38] Classification of Focal Liver Lesions Using Deep Learning with Fine-Tuning
    Wang, Weibin
    Iwamoto, Yutaro
    Han, Xianhua
    Chen, Yen-Wei
    Chen, Qingqing
    Liang, Dong
    Lin, Lanfen
    Hu, Hongjie
    Zhang, Qiaowei
    PROCEEDINGS OF 2018 INTERNATIONAL CONFERENCE ON DIGITAL MEDICINE AND IMAGE PROCESSING (DMIP 2018), 2018, : 56 - 60
  • [39] Diagnosis of Salivary Gland Tumors Using Transfer Learning with Fine-Tuning and Gradual Unfreezing
    Cheng, Ping-Chia
    Chiang, Hui-Hua Kenny
    DIAGNOSTICS, 2023, 13 (21)
  • [40] Bread Browning Stage Classification Model using VGG-16 Transfer Learning and Fine-tuning with Small Training Dataset
    Tantiphanwadi, Prapassorn
    Malithong, Kritsanun
    ENGINEERING JOURNAL-THAILAND, 2022, 26 (11): : 1 - 12