Controllable Lung Nodule Synthesis via Histogram-Regularized Latent Diffusion Models 文章

ArXiv CS.CV2026-06-01NEWSen作者: Arunkumar Kannan, Yanbo Zhang, Han Liu, Michael Baumgartner, Jianing Wang, Alexander Hertel, Bogdan Georgescu, Sasa Grbic

摘要

arXiv:2605.30631v1 Announce Type: new Abstract: While automated diagnosis systems have achieved remarkable success in computed tomography (CT)-based lung cancer screening, their development remains limited by the scarcity of diverse, annotated pulmonary nodule datasets. Diffusion-based generative models offer a promising strategy for data synthesis; however, many existing conditional approaches primarily optimize spatial reconstruction losses, which encourage voxel-wise similarity but may inadequately constrain lesion-level intensity distributions. As a result, these methods may produce over-smoothed texture profiles and underrepresent the distinct attenuation characteristics of different nodule subtypes, including solid, part-solid, and ground-glass nodules. To address this challenge, we propose a controllable latent diffusion model that synthesizes pulmonary nodules within full 3D CT volumes while accurately modeling nodule-specific intensity distributions.