论文标题
充气2D卷积权重,以有效地生成3D医疗图像
Inflating 2D Convolution Weights for Efficient Generation of 3D Medical Images
论文作者
论文摘要
三维(3D)医学图像的产生具有巨大的应用潜力,因为它考虑了3D解剖结构。有两个问题阻止了3D医疗生成模型的有效培训:(1)3D医学图像获取和注释昂贵,导致训练图像不足,以及(2)3D卷积涉及大量参数。 方法:我们提出了一种称为3D Split&Shuffle-Gan的新型GAN模型。为了解决3D数据稀缺问题,我们首先使用丰富的图像切片预先培训二维(2D)GAN模型,然后夸大2D卷积权重以改善3D GAN的初始化。提出了针对GAN模型的发生器和歧视器的新型3D网络体系结构,以显着减少参数的数量,同时保持图像产生的质量。研究了几种体重通胀策略和参数效率的3D架构。 结果:对心脏(Stanford Aimi冠状动脉钙)和大脑(阿尔茨海默氏病神经成像计划)数据集进行的实验表明,我们的方法可提高3D图像产生质量的提高(Fréchet成立距离的14.7改善)具有明显较少的参数(仅基线方法的48.5%)。 结论:我们建立了一个参数效率的3D医学图像生成模型。由于效率和有效性,它有可能为真实用例生成高质量的3D大脑和心脏图像。
The generation of three-dimensional (3D) medical images has great application potential since it takes into account the 3D anatomical structure. Two problems prevent effective training of a 3D medical generative model: (1) 3D medical images are expensive to acquire and annotate, resulting in an insufficient number of training images, and (2) a large number of parameters are involved in 3D convolution. Methods: We propose a novel GAN model called 3D Split&Shuffle-GAN. To address the 3D data scarcity issue, we first pre-train a two-dimensional (2D) GAN model using abundant image slices and inflate the 2D convolution weights to improve the initialization of the 3D GAN. Novel 3D network architectures are proposed for both the generator and discriminator of the GAN model to significantly reduce the number of parameters while maintaining the quality of image generation. Several weight inflation strategies and parameter-efficient 3D architectures are investigated. Results: Experiments on both heart (Stanford AIMI Coronary Calcium) and brain (Alzheimer's Disease Neuroimaging Initiative) datasets show that our method leads to improved 3D image generation quality (14.7 improvements on Fréchet inception distance) with significantly fewer parameters (only 48.5% of the baseline method). Conclusions: We built a parameter-efficient 3D medical image generation model. Due to the efficiency and effectiveness, it has the potential to generate high-quality 3D brain and heart images for real use cases.