Advanced Biomedical Engineering
Online ISSN : 2187-5219
ISSN-L : 2187-5219
Image Augmentation Using Fractals for Medical Image Diagnosis
Hitoshi HABEYuken YOSHIOKADaichi IKEFUJITomokazu FUNATSUTakashi NAGAOKATakenori KOZUKAMitsutaka NEMOTOTakahiro YAMADAYuichi KIMURAKazunari ISHII
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JOURNAL OPEN ACCESS

2024 Volume 13 Pages 327-334

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Abstract

We propose data augmentation using fractal images to train deep learning models for medical image diagnosis. Deep learning models for image classification typically demand large datasets, which can be challenging in the context of medical image diagnosis. Current approaches often involve pre-training of model parameters using natural image databases such as ImageNet and fine-tuning of the parameters with specific medical image data. However, natural and medical images have distinct characteristics, which questions the suitability of pre-training using natural image data. Moreover, the scalability of natural image databases is limited; thus, acquiring sufficient data for large-scale deep learning models is difficult. In contrast, Kataoka et al. introduced a mathematical model for generating image data and demonstrated its effectiveness when used in pre-training for natural image classification. In this study, we employed a pre-trained model utilizing fractals among mathematical models and experimentally classified CT images of COVID-19 pneumonia. The experimental results demonstrated that this fractal-based pre-training model achieved accuracy comparable to conventional natural image-based approach. Fractal images are easily generated compared to natural images. Furthermore, generating appropriate data for specific applications may be possible by adjusting the parameters. This flexibility in generating data allows customization and optimization of the model for different scenarios or specific requirements. We believe that this approach holds promise in medical image diagnosis, where the number of samples is often limited.

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© 2024 Japanese Society for Medical and Biological Engineering

Copyright: ©2024 The Author(s). This is an open access article distributed under the terms of the Creative Commons BY 4.0 International (Attribution) License (https://creativecommons.org/licenses/by/4.0/legalcode), which permits the unrestricted distribution, reproduction and use of the article provided the original source and authors are credited.
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