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基于生成对抗网络的肺部图像分类的多领域医学图像翻译生成。

Multi-domain medical image translation generation for lung image classification based on generative adversarial networks.

机构信息

Department of Pulmonary Medicine, The Second Affiliated Hospital of Fujian Medical University, 950 Eastsea street, Fengzhe District, Quanzhou, Fujian 362000, China.

Department of Pulmonary Medicine, The Second Affiliated Hospital of Fujian Medical University, 950 Eastsea street, Fengzhe District, Quanzhou, Fujian 362000, China.

出版信息

Comput Methods Programs Biomed. 2023 Feb;229:107200. doi: 10.1016/j.cmpb.2022.107200. Epub 2022 Nov 2.

Abstract

OBJECTIVE

Lung image classification-assisted diagnosis has a large application market. Aiming at the problems of poor attention to existing translation models, the insufficient ability of key transfer and generation, insufficient quality of generated images, and lack of detailed features, this paper conducts research on lung medical image translation and lung image classification based on generative adversarial networks.

METHODS

This paper proposes a medical image multi-domain translation algorithm MI-GAN based on the key migration branch. After the actual analysis of the imbalanced medical image data, the key target domain images are selected, the key migration branch is established, and a single generator is used to complete the medical image multi-domain translation. The conversion between domains ensures the attention performance of the medical image multi-domain translation model and the quality of the synthesized images. At the same time, a lung image classification model based on synthetic image data augmentation is proposed. The synthetic lung CT medical images and the original real medical images are used as the training set together to study the performance of the auxiliary diagnosis model in the classification of normal healthy subjects, and also of the mild and severe COVID-19 patients.

RESULTS

Based on the chest CT image dataset, MI-GAN has completed the mutual conversion and generation of normal lung images without disease, viral pneumonia and Mild COVID-19 images. The synthetic images GAN-test and GAN-train indicators reached, respectively 92.188% and 85.069%, compared with other generative models in terms of authenticity and diversity, there is a considerable improvement. The accuracy rate of pneumonia diagnosis of the lung image classification model is 93.85%, which is 3.1% higher than that of the diagnosis model trained only with real images; the sensitivity of disease diagnosis is 96.69%, a relative improvement of 7.1%. 1%, the specificity was 89.70%; the area under the ROC curve (AUC) increased from 94.00% to 96.17%.

CONCLUSION

In this paper, a multi-domain translation model of medical images based on the key transfer branch is proposed, which enables the translation network to have key transfer and attention performance. It is verified on lung CT images and achieved good results. The required medical images are synthesized by the above medical image translation model, and the effectiveness of the synthesized images on the lung image classification network is verified experimentally.

摘要

目的

肺部图像分类辅助诊断具有较大的应用市场。针对现有翻译模型对关键信息关注不足、关键信息迁移和生成能力不足、生成图像质量不高、缺乏细节特征等问题,本文对基于生成对抗网络的肺部医学图像翻译和肺部图像分类进行了研究。

方法

本文提出了一种基于关键迁移分支的医学图像多域翻译算法 MI-GAN。在对不平衡的医学图像数据进行实际分析后,选择关键目标域图像,建立关键迁移分支,使用单个生成器完成医学图像多域翻译。域间转换确保了医学图像多域翻译模型的注意力性能和合成图像的质量。同时,提出了一种基于合成图像数据增强的肺部图像分类模型。将合成的肺部 CT 医学图像和原始真实医学图像一起作为训练集,研究辅助诊断模型在正常健康受试者、病毒性肺炎和轻度 COVID-19 患者分类中的性能。

结果

基于胸部 CT 图像数据集,MI-GAN 完成了正常肺部图像、病毒性肺炎和轻度 COVID-19 图像的相互转换和生成。与其他生成模型相比,合成图像 GAN-test 和 GAN-train 指标分别达到 92.188%和 85.069%,在真实性和多样性方面有了相当大的提高。肺部图像分类模型对肺炎的诊断准确率为 93.85%,比仅用真实图像训练的诊断模型提高了 3.1%;疾病诊断的灵敏度为 96.69%,相对提高了 7.1%;特异性为 89.70%;ROC 曲线下面积(AUC)从 94.00%增加到 96.17%。

结论

本文提出了一种基于关键迁移分支的医学图像多域翻译模型,使翻译网络具有关键迁移和注意力性能。在肺部 CT 图像上进行了验证,取得了良好的效果。通过上述医学图像翻译模型合成所需的医学图像,并通过实验验证了合成图像对肺部图像分类网络的有效性。

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