用于脑部MRI的量子潜变量GAN增强的受控基准测试 / A Controlled Benchmark of Quantum-Latent GAN Augmentation for Brain MRI
1️⃣ 一句话总结
该论文通过严格控制的实验对比,发现量子生成对抗网络在脑部MRI数据增强中并未带来比经典模型更好的效果,任何低数据下的性能提升都源于正则化而非有效数据扩充。
Medical image classification is often constrained by limited labeled data, motivating generative augmentation; recently, quantum generative models have been proposed for this purpose, frequently reporting accuracy gains. However, such claims are typically based on single training runs, do not match the parameter budgets of the quantum and classical generators, and do not characterize the data regime in which any benefit appears. We present a controlled benchmark that isolates the contribution of a quantum generator to brain-MRI augmentation. Images are encoded into a KL-regularized latent space in which a conditional Wasserstein GAN with gradient penalty is trained using either a variational quantum generator or a classical generator of near-identical parameter count (1648 vs. 1632). Synthetic samples are decoded and used to augment a pretrained classifier across labeled data fractions from 5% to 100%, evaluated over eight random seeds with paired significance testing (with multiple-comparison correction) and with intraset diversity and latent-distribution analyses. Across all fractions, no augmentation variant significantly outperforms real-data-only training, and the quantum and classical generators are statistically indistinguishable. Any low-data benefit behaves as regularization rather than faithful data expansion:synthetic samples are off distribution and severely mode collapsed precisely where data is scarce, and the quantum generator is no more diverse thanits classical counterpart. We release the protocol as a testbed for rigorous evaluation of quantum generative augmentation in medical imaging.
用于脑部MRI的量子潜变量GAN增强的受控基准测试 / A Controlled Benchmark of Quantum-Latent GAN Augmentation for Brain MRI
该论文通过严格控制的实验对比,发现量子生成对抗网络在脑部MRI数据增强中并未带来比经典模型更好的效果,任何低数据下的性能提升都源于正则化而非有效数据扩充。
源自 arXiv: 2606.18970