Generative Adversarial Networks with Radiomics Supervision for Lung Lesion Generation.

IF 4.4 2区 医学 Q2 ENGINEERING, BIOMEDICAL IEEE Transactions on Biomedical Engineering Pub Date : 2024-08-29 DOI:10.1109/TBME.2024.3451409
Junyuan Li, Shaoyan Pan, Xiaoxuan Zhang, Cheng Ting Lin, J Webster Stayman, Grace J Gang
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Abstract

Data-driven methods for lesion generation are quickly emerging due to the need for realistic imaging targets for image quality assessment and virtual clinical trials. We proposed a generative adversarial network (GAN) architecture for conditional generation of lung lesions based on user-specified classes of lesion size and solidity. The network consists of two discriminators, one for volumetric lesion data, and one for radiomics features derived from the lesion volume. A Wasserstein loss with gradient penalty was adopted for each discriminator. Training data were drawn from contoured and annotated lesions from a public lung CT database. Four quantitative evaluation methods were devised to assess the network performance: 1) overfitting (similarity between generated and real lesions), 2) diversity (similarity among generated lesions), 3) conditional consistency (capability of generating lesions according to user-specified classes), and 4) similarity in distributions of various lesion properties between the generated and real lesions. Ablation studies were also performed to investigate the importance of individual network component. The proposed network was found to generate lesions that resemble real lesions by visual inspection. Solid lesions are distinct from non-solid ones, and lesion sizes largely correspond to their specified classes. With a classifier trained on real lesions, the classification accuracies of generated and real lesions in both solid and non-solid classes are similar. Radiomics features of generated and real lesions were found to have similar distributions, indicated by the relatively low Kullback-Leibler (KL) divergence values. Furthermore, the correlations between pairwise radiomics features in generated lesions were comparable to those of real lesions. The proposed network presents a promising approach for generating realistic lesions with clinically relevant features crucial for the comprehensive assessment of medical imaging systems.

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用于肺部病变生成的辐射组学监督生成式对抗网络
由于图像质量评估和虚拟临床试验需要真实的成像目标,数据驱动的病灶生成方法迅速兴起。我们提出了一种生成式对抗网络(GAN)架构,用于根据用户指定的病变大小和实体类别有条件地生成肺部病变。该网络由两个判别器组成,一个用于体积病变数据,另一个用于从病变体积得出的放射组学特征。每个判别器都采用了带梯度惩罚的 Wasserstein 损失。训练数据来自公共肺部 CT 数据库中的轮廓和注释病灶。设计了四种定量评估方法来评估网络性能:1)过拟合(生成的病灶与真实病灶之间的相似性);2)多样性(生成的病灶之间的相似性);3)条件一致性(根据用户指定的类别生成病灶的能力);4)生成的病灶与真实病灶之间各种病灶属性分布的相似性。还进行了消融研究,以调查各个网络组件的重要性。通过目测,发现所提出的网络生成的病灶与真实病灶相似。实性病变与非实性病变截然不同,病变大小基本符合其指定的类别。用真实病变训练的分类器,生成的病变和真实病变在实性和非实性类别中的分类准确率相似。生成病灶和真实病灶的放射组学特征具有相似的分布,Kullback-Leibler(KL)发散值相对较低。此外,生成病变的成对放射组学特征之间的相关性与真实病变的相关性相当。所提出的网络为生成具有临床相关特征的真实病变提供了一种可行的方法,对医学成像系统的综合评估至关重要。
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来源期刊
IEEE Transactions on Biomedical Engineering
IEEE Transactions on Biomedical Engineering 工程技术-工程:生物医学
CiteScore
9.40
自引率
4.30%
发文量
880
审稿时长
2.5 months
期刊介绍: IEEE Transactions on Biomedical Engineering contains basic and applied papers dealing with biomedical engineering. Papers range from engineering development in methods and techniques with biomedical applications to experimental and clinical investigations with engineering contributions.
期刊最新文献
Table of Contents Front Cover IEEE Transactions on Biomedical Engineering Handling Editors Information IEEE Engineering in Medicine and Biology Society Information IEEE Transactions on Biomedical Engineering Information for Authors
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