Department of Advanced General Dentistry, College of Dentistry, Yonsei University, Seoul, Korea.
Department of Oral and Maxillofacial Radiology, Aichi Gakuin University, 2-11 Seuemori-Dori, Chikusa-Ku, Nagoya, 464-8651, Japan.
Sci Rep. 2023 Oct 21;13(1):18038. doi: 10.1038/s41598-023-45290-1.
This study evaluated the performance of generative adversarial network (GAN)-synthesized periapical images for classifying C-shaped root canals, which are challenging to diagnose because of their complex morphology. GANs have emerged as a promising technique for generating realistic images, offering a potential solution for data augmentation in scenarios with limited training datasets. Periapical images were synthesized using the StyleGAN2-ADA framework, and their quality was evaluated based on the average Frechet inception distance (FID) and the visual Turing test. The average FID was found to be 35.353 (± 4.386) for synthesized C-shaped canal images and 25.471 (± 2.779) for non C-shaped canal images. The visual Turing test conducted by two radiologists on 100 randomly selected images revealed that distinguishing between real and synthetic images was difficult. These results indicate that GAN-synthesized images exhibit satisfactory visual quality. The classification performance of the neural network, when augmented with GAN data, showed improvements compared with using real data alone, and could be advantageous in addressing data conditions with class imbalance. GAN-generated images have proven to be an effective data augmentation method, addressing the limitations of limited training data and computational resources in diagnosing dental anomalies.
本研究评估了生成对抗网络 (GAN) 合成的根尖图像在分类 C 形根管中的性能,由于其复杂的形态,C 形根管的诊断具有挑战性。GAN 作为生成逼真图像的一种有前途的技术已经出现,为在训练数据集有限的情况下提供了数据扩充的潜在解决方案。根尖图像使用 StyleGAN2-ADA 框架进行合成,并根据平均 Frechet inception 距离 (FID) 和视觉图灵测试评估其质量。合成 C 形根管图像的平均 FID 为 35.353(±4.386),非 C 形根管图像的平均 FID 为 25.471(±2.779)。两位放射科医生对 100 张随机选择的图像进行的视觉图灵测试表明,区分真实图像和合成图像具有一定难度。这些结果表明 GAN 合成的图像具有令人满意的视觉质量。与仅使用真实数据相比,神经网络在加入 GAN 数据后的分类性能有所提高,并且在解决数据不平衡的情况下具有优势。GAN 生成的图像已被证明是一种有效的数据扩充方法,可以解决诊断牙齿异常时训练数据和计算资源有限的问题。