Khishigdelger Anudari, Salem Ahmed, Kang Hyun-Soo
Department of Information and Communication Engineering, School of Electrical and Computer Engineering, Chungbuk National University, Cheongju 28644, Republic of Korea.
Electrical Engineering Department, Faculty of Engineering, Assiut University, Assiut 71515, Egypt.
J Imaging. 2024 Mar 4;10(3):64. doi: 10.3390/jimaging10030064.
Chest X-ray (CXR) imaging plays a pivotal role in diagnosing various pulmonary diseases, which account for a significant portion of the global mortality rate, as recognized by the World Health Organization (WHO). Medical practitioners routinely depend on CXR images to identify anomalies and make critical clinical decisions. Dramatic improvements in super-resolution (SR) have been achieved by applying deep learning techniques. However, some SR methods are very difficult to utilize due to their low-resolution inputs and features containing abundant low-frequency information, similar to the case of X-ray image super-resolution. In this paper, we introduce an advanced deep learning-based SR approach that incorporates the innovative residual-in-residual (RIR) structure to augment the diagnostic potential of CXR imaging. Specifically, we propose forming a light network consisting of residual groups built by residual blocks, with multiple skip connections to facilitate the efficient bypassing of abundant low-frequency information through multiple skip connections. This approach allows the main network to concentrate on learning high-frequency information. In addition, we adopted the dense feature fusion within residual groups and designed high parallel residual blocks for better feature extraction. Our proposed methods exhibit superior performance compared to existing state-of-the-art (SOTA) SR methods, delivering enhanced accuracy and notable visual improvements, as evidenced by our results.
胸部X光(CXR)成像在诊断各种肺部疾病中起着关键作用,正如世界卫生组织(WHO)所认识到的,肺部疾病在全球死亡率中占很大比例。医学从业者通常依靠CXR图像来识别异常并做出关键的临床决策。通过应用深度学习技术,超分辨率(SR)已取得了显著进展。然而,一些SR方法由于其低分辨率输入和包含丰富低频信息的特征而很难使用,这与X光图像超分辨率的情况类似。在本文中,我们介绍了一种先进的基于深度学习的SR方法,该方法结合了创新的残差嵌套残差(RIR)结构,以增强CXR成像的诊断潜力。具体来说,我们提出构建一个由残差块组成的残差组构成的轻量级网络,并通过多个跳跃连接来促进丰富的低频信息通过多个跳跃连接高效绕过。这种方法使主网络能够专注于学习高频信息。此外,我们在残差组内采用了密集特征融合,并设计了高并行残差块以实现更好的特征提取。我们提出的方法与现有的最先进(SOTA)SR方法相比表现出卓越的性能,如我们的结果所示,提供了更高的准确性和显著的视觉改进。