RT Conference Proceedings T1 Coevolutionary generative adversarial networks for medical image augumentation at scale A1 Flores, Diana A1 Toutouh-el-Alamin, Jamal A1 Hemberg, Erik A1 O’Reilly, Una-May K1 Fotografía médica AB Medical image processing can lack images for diagnosis. Generative Adversarial Networks (GANs) provide a method to train generative models for data augmentation. Synthesized images can be used to improve the robustness of computer-aided diagnosis systems. However, GANs are difficult to train due to unstable training dynamics that may arise during the learning process, e.g., mode collapse and vanishing gradients. This paper focuses on Lipizzaner, a GAN training framework that combines spatial coevolution with gradient-based learning, which has been used to mitigate GAN training pathologies. Lipizzaner improves performance by taking advantage of its distributed nature and running at scale. Thus, the Lipizzaner algorithm and implementation robustness can be scaled to high-performance computing (HPC) systems to provide more accurate generative models. We address medical imaging data augmentation to create chest X-Ray images by using Lipizzaner on the HPC infrastructure provided by Oak Ridge National Labs' Summit Supercomputer. The experimental analysis shows improved performance by increasing the scale of the Lipizzaner GAN training. We also demonstrate that distributed coevolutionary learning improves performance even when using suboptimal neural network architectures due to hardware constraints. YR 2022 FD 2022-07-08 LK https://hdl.handle.net/10630/25055 UL https://hdl.handle.net/10630/25055 LA spa NO Es un trabajo de investigación presentado durante el congreso internacional The Genetic and Evolutionary Computation Conference (GECCO 2022) en Boston. DS RIUMA. Repositorio Institucional de la Universidad de Málaga RD 19 ene 2026