Kong Vungsovanreach, Lee Eun Young, Kim Kyung Ah, Shon Ho Sun
Department of Big Data, Chungbuk National University, Cheongju 28644, Republic of Korea.
Department of Oral and Maxillofacial Surgery, Chungbuk National University Hospital, Cheongju 28644, Republic of Korea.
Bioengineering (Basel). 2024 Nov 8;11(11):1130. doi: 10.3390/bioengineering11111130.
Periodontal disease is a widespread global health concern that necessitates an accurate diagnosis for effective treatment. Traditional diagnostic methods based on panoramic radiographs are often limited by subjective evaluation and low-resolution imaging, leading to suboptimal precision. This study presents an approach that integrates Super-Resolution Generative Adversarial Networks (SRGANs) with deep learning-based segmentation models to enhance the segmentation of periodontal bone loss (PBL) areas on panoramic radiographs. By transforming low-resolution images into high-resolution versions, the proposed method reveals critical anatomical details that are essential for precise diagnostics. The effectiveness of this approach was validated using datasets from the Chungbuk National University Hospital and the Kaggle data portal, demonstrating significant improvements in both image resolution and segmentation accuracy. The SRGAN model, evaluated using the Peak Signal-to-Noise Ratio (PSNR) and Structural Similarity Index Measure (SSIM) metrics, achieved a PSNR of 30.10 dB and an SSIM of 0.878, indicating high fidelity in image reconstruction. When applied to semantic segmentation using a U-Net architecture, the enhanced images resulted in a dice similarity coefficient (DSC) of 0.91 and an intersection over union (IoU) of 84.9%, compared with 0.72 DSC and 65.4% IoU for native low-resolution images. These results underscore the potential of SRGAN-enhanced imaging to improve PBL area segmentation and suggest broader applications in medical imaging, where enhanced image clarity is crucial for diagnostic accuracy. This study also highlights the importance of further research to expand the dataset diversity and incorporate clinical validation to fully realize the benefits of super-resolution techniques in medical diagnostics.
牙周病是一个广泛存在的全球健康问题,需要准确诊断以便进行有效治疗。基于全景X光片的传统诊断方法往往受到主观评估和低分辨率成像的限制,导致精度欠佳。本研究提出一种方法,将超分辨率生成对抗网络(SRGAN)与基于深度学习的分割模型相结合,以增强全景X光片上牙周骨丧失(PBL)区域的分割效果。通过将低分辨率图像转换为高分辨率版本,该方法揭示了精确诊断所必需的关键解剖细节。使用忠北国立大学医院和Kaggle数据门户的数据集对该方法的有效性进行了验证,结果表明在图像分辨率和分割准确性方面均有显著提高。使用峰值信噪比(PSNR)和结构相似性指数测量(SSIM)指标对SRGAN模型进行评估,其PSNR达到30.10 dB,SSIM达到0.878,表明图像重建具有高保真度。当应用于使用U-Net架构的语义分割时,增强后的图像的骰子相似系数(DSC)为0.91,交并比(IoU)为84.9%,而原始低分辨率图像的DSC为0.72,IoU为65.4%。这些结果强调了SRGAN增强成像在改善PBL区域分割方面的潜力,并表明其在医学成像中有更广泛的应用,在医学成像中提高图像清晰度对于诊断准确性至关重要。本研究还强调了进一步研究以扩大数据集多样性并纳入临床验证的重要性,以充分实现超分辨率技术在医学诊断中的益处。