BronchoGAN: anatomically consistent and domain-agnostic image-to-image translation for video bronchoscopy.

IF 2.3 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Ahmad Soliman, Ron Keuth, Marian Himstedt
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引用次数: 0

Abstract

Purpose The limited availability of bronchoscopy images makes image synthesis particularly interesting for training deep learning models. Robust image translation across different domains-virtual bronchoscopy, phantom as well as in vivo and ex vivo image data-is pivotal for clinical applications. Methods This paper proposes BronchoGAN introducing anatomical constraints for image-to-image translation being integrated into a conditional GAN. In particular, we force bronchial orifices to match across input and output images. We further propose to use foundation model-generated depth images as intermediate representation ensuring robustness across a variety of input domains establishing models with substantially less reliance on individual training datasets. Moreover, our intermediate depth image representation allows to easily construct paired image data for training. Results Our experiments showed that input images from different domains (e.g., virtual bronchoscopy, phantoms) can be successfully translated to images mimicking realistic human airway appearance. We demonstrated that anatomical settings (i.e., bronchial orifices) can be robustly preserved with our approach which is shown qualitatively and quantitatively by means of improved FID, SSIM and dice coefficients scores. Our anatomical constraints enabled an improvement in the Dice coefficient of up to 0.43 for synthetic images. Conclusion Through foundation models for intermediate depth representations and bronchial orifice segmentation integrated as anatomical constraints into conditional GANs, we are able to robustly translate images from different bronchoscopy input domains. BronchoGAN allows to incorporate public CT scan data (virtual bronchoscopy) in order to generate large-scale bronchoscopy image datasets with realistic appearance. BronchoGAN enables to bridge the gap of missing public bronchoscopy images.

BronchoGAN:解剖学上一致和领域不可知论的视频支气管镜图像到图像的转换。
支气管镜图像的有限可用性使得图像合成对训练深度学习模型特别有趣。跨不同领域的鲁棒图像转换-虚拟支气管镜,幻影以及体内和离体图像数据-对临床应用至关重要。方法本文提出了BronchoGAN,引入了图像到图像转换的解剖学约束,并将其集成到条件GAN中。特别是,我们强迫支气管孔在输入和输出图像之间匹配。我们进一步建议使用基础模型生成的深度图像作为中间表示,确保在各种输入域上建立对单个训练数据集的依赖程度大大降低的模型的鲁棒性。此外,我们的中间深度图像表示可以很容易地构建成对的图像数据进行训练。我们的实验表明,来自不同领域的输入图像(例如,虚拟支气管镜检查,幻象)可以成功地转化为模拟真实人类气道外观的图像。通过改进的FID、SSIM和dice系数评分,我们证明了解剖设置(即支气管孔)可以被强有力地保存。我们的解剖约束使得合成图像的Dice系数提高到0.43。结论通过将中间深度表示和支气管孔分割的基础模型作为解剖学约束集成到条件gan中,我们能够鲁棒地翻译来自不同支气管镜输入域的图像。BronchoGAN允许合并公共CT扫描数据(虚拟支气管镜),以生成具有逼真外观的大规模支气管镜图像数据集。BronchoGAN可以弥补公共支气管镜检查图像缺失的缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Computer Assisted Radiology and Surgery
International Journal of Computer Assisted Radiology and Surgery ENGINEERING, BIOMEDICAL-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
5.90
自引率
6.70%
发文量
243
审稿时长
6-12 weeks
期刊介绍: The International Journal for Computer Assisted Radiology and Surgery (IJCARS) is a peer-reviewed journal that provides a platform for closing the gap between medical and technical disciplines, and encourages interdisciplinary research and development activities in an international environment.
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