基于合成鼓室图像的中耳疾病深度学习多分类。

IF 1.2 4区 医学 Q3 OTORHINOLARYNGOLOGY
Acta Oto-Laryngologica Pub Date : 2025-02-01 Epub Date: 2025-01-10 DOI:10.1080/00016489.2024.2448829
Yoshimaru Mizoguchi, Taku Ito, Masato Yamada, Takeshi Tsutsumi
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引用次数: 0

摘要

背景:近年来,人工智能技术的发展促进了内窥镜鼓膜成像对中耳疾病的自动诊断。目的:将深度学习技术应用于常规临床实践中获得的鼓膜图像,开发中耳疾病的自动诊断系统。材料和方法:为了增强训练数据集,我们探索了使用生成对抗网络(gan)来生成高质量的合成鼓室图像,这些图像随后被添加到训练数据中。2016年至2021年间,我们收集了472张内镜图像,代表了四种鼓膜状况:正常、急性中耳炎、积液中耳炎和慢性化脓性中耳炎。这些图像被用于基于InceptionV3模型的机器学习,该模型在ImageNet上进行预训练。此外,使用StyleGAN3生成的200张合成图像被认为适合每个疾病类别,并被纳入再训练。结果:与仅使用真实图像进行训练相比,将合成图像与真实内窥镜图像一起使用并没有显著提高诊断准确性。然而,当仅对合成图像进行训练时,该模型的诊断准确率约为70%。结论和意义:GANs生成的合成图像在医学诊断机器学习模型的开发中具有潜在的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning multi-classification of middle ear diseases using synthetic tympanic images.

Background: Recent advances in artificial intelligence have facilitated the automatic diagnosis of middle ear diseases using endoscopic tympanic membrane imaging.

Aim: We aimed to develop an automated diagnostic system for middle ear diseases by applying deep learning techniques to tympanic membrane images obtained during routine clinical practice.

Material and methods: To augment the training dataset, we explored the use of generative adversarial networks (GANs) to produce high-quality synthetic tympanic images that were subsequently added to the training data. Between 2016 and 2021, we collected 472 endoscopic images representing four tympanic membrane conditions: normal, acute otitis media, otitis media with effusion, and chronic suppurative otitis media. These images were utilized for machine learning based on the InceptionV3 model, which was pretrained on ImageNet. Additionally, 200 synthetic images generated using StyleGAN3 and considered appropriate for each disease category were incorporated for retraining.

Results: The inclusion of synthetic images alongside real endoscopic images did not significantly improve the diagnostic accuracy compared to training solely with real images. However, when trained solely on synthetic images, the model achieved a diagnostic accuracy of approximately 70%.

Conclusions and significance: Synthetic images generated by GANs have potential utility in the development of machine-learning models for medical diagnosis.

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来源期刊
Acta Oto-Laryngologica
Acta Oto-Laryngologica 医学-耳鼻喉科学
CiteScore
2.50
自引率
0.00%
发文量
99
审稿时长
3-6 weeks
期刊介绍: Acta Oto-Laryngologica is a truly international journal for translational otolaryngology and head- and neck surgery. The journal presents cutting-edge papers on clinical practice, clinical research and basic sciences. Acta also bridges the gap between clinical and basic research.
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