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用于二维医学图像高效超分辨率重建的邻域评估器。

Neighborhood evaluator for efficient super-resolution reconstruction of 2D medical images.

机构信息

School of Electronic Information and Electrical Engineering, Shanghai Jiao Tong University, 800 Dongchuan RD, Shanghai, 200240, China.

Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine, 639 Zhizaoju RD, Shanghai, 200011, China.

出版信息

Comput Biol Med. 2024 Mar;171:108212. doi: 10.1016/j.compbiomed.2024.108212. Epub 2024 Feb 28.

Abstract

BACKGROUND

Deep learning-based super-resolution (SR) algorithms aim to reconstruct low-resolution (LR) images into high-fidelity high-resolution (HR) images by learning the low- and high-frequency information. Experts' diagnostic requirements are fulfilled in medical application scenarios through the high-quality reconstruction of LR digital medical images.

PURPOSE

Medical image SR algorithms should satisfy the requirements of arbitrary resolution and high efficiency in applications. However, there is currently no relevant study available. Several SR research on natural images have accomplished the reconstruction of resolutions without limitations. However, these methodologies provide challenges in meeting medical applications due to the large scale of the model, which significantly limits efficiency. Hence, we suggest a highly effective method for reconstructing medical images at any desired resolution.

METHODS

Statistical features of medical images exhibit greater continuity in the region of neighboring pixels than natural images. Hence, the process of reconstructing medical images is comparatively less challenging. Utilizing this property, we develop a neighborhood evaluator to represent the continuity of the neighborhood while controlling the network's depth.

RESULTS

The suggested method has superior performance across seven scales of reconstruction, as evidenced by experiments conducted on panoramic radiographs and two external public datasets. Furthermore, the proposed network significantly decreases the parameter count by over 20× and the computational workload by over 10× compared to prior researches. On large-scale reconstruction, the inference speed can be enhanced by over 5×.

CONCLUSION

The novel proposed SR strategy for medical images performs efficient reconstruction at arbitrary resolution, marking a significant breakthrough in the field. The given scheme facilitates the implementation of SR in mobile medical platforms.

摘要

背景

基于深度学习的超分辨率(SR)算法旨在通过学习低、高频信息,将低分辨率(LR)图像重建为高保真的高分辨率(HR)图像。在医学应用场景中,通过对 LR 数字医学图像的高质量重建,可以满足专家的诊断需求。

目的

医学图像 SR 算法应满足应用中任意分辨率和高效率的要求。然而,目前尚无相关研究。一些自然图像的 SR 研究已经完成了无限制分辨率的重建。然而,由于模型规模较大,这些方法在满足医学应用方面存在挑战,效率显著受限。因此,我们提出了一种高效的方法,可在任意期望的分辨率下重建医学图像。

方法

医学图像的统计特征在相邻像素区域表现出更大的连续性,自然图像则不具备这一特征。因此,医学图像的重建过程相对较不具有挑战性。利用这一特性,我们开发了一个邻域评估器来表示邻域的连续性,同时控制网络的深度。

结果

实验在全景射线照片和两个外部公共数据集上进行,结果表明,所提出的方法在七个重建尺度上均具有优越的性能。此外,与之前的研究相比,所提出的网络显著减少了 20 倍以上的参数数量和 10 倍以上的计算工作量。在大规模重建中,推理速度可以提高 5 倍以上。

结论

所提出的用于医学图像的新型 SR 策略能够高效地在任意分辨率下进行重建,这是该领域的重大突破。所提出的方案有助于在移动医疗平台中实现 SR。

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