论文标题
部分可观测时空混沌系统的无模型预测
Improved $α$-GAN architecture for generating 3D connected volumes with an application to radiosurgery treatment planning
论文作者
论文摘要
生成的对抗网络(GAN)在几项生成高质量合成数据的计算机视觉任务中引起了极大的关注。包括诊断成像和放射疗法在内的各种医疗应用,由于域中的数据稀缺,可以从合成数据生成中受益匪浅。但是,医疗图像数据通常保存在3D空间中,生成模型在生成此类合成数据时遭受了维度问题的诅咒。在本文中,我们研究了GAN产生连接的3D体积的潜力。通过结合各种建筑增强功能,我们提出了改进的3D $α$ gan版本。在连接的3D球体和椭圆形的合成数据集上,我们的模型可以生成具有与训练数据相似的几何特性的完全连接的3D形状。我们还表明,我们的3D GAN模型可以成功产生高质量的3D肿瘤体积和相关的治疗规范(例如,同性恋位置)。与训练数据以及完全连接的3D形状相似的时刻不变,确认改进的3D $α$ gan隐含地学习了训练数据分布,并生成了真实的样本。改进的3D $α$ gan的能力使其成为生成合成医学图像数据的宝贵来源,可以帮助该领域的未来研究。
Generative Adversarial Networks (GANs) have gained significant attention in several computer vision tasks for generating high-quality synthetic data. Various medical applications including diagnostic imaging and radiation therapy can benefit greatly from synthetic data generation due to data scarcity in the domain. However, medical image data is typically kept in 3D space, and generative models suffer from the curse of dimensionality issues in generating such synthetic data. In this paper, we investigate the potential of GANs for generating connected 3D volumes. We propose an improved version of 3D $α$-GAN by incorporating various architectural enhancements. On a synthetic dataset of connected 3D spheres and ellipsoids, our model can generate fully connected 3D shapes with similar geometrical characteristics to that of training data. We also show that our 3D GAN model can successfully generate high-quality 3D tumor volumes and associated treatment specifications (e.g., isocenter locations). Similar moment invariants to the training data as well as fully connected 3D shapes confirm that improved 3D $α$-GAN implicitly learns the training data distribution, and generates realistic-looking samples. The capability of improved 3D $α$-GAN makes it a valuable source for generating synthetic medical image data that can help future research in this domain.