利用深度学习恢复低剂量儿童肾脏闪烁成像的图像质量。

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Marta Arsénio, Ricardo Vigário, Ana M Mota
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引用次数: 0

摘要

本研究的目的是提出一种先进的图像增强策略,以解决儿童肾脏闪烁成像中降低辐射剂量的挑战。数据来自一个公共动态肾脏扫描数据库。基于去噪图像,对DnCNN、UDnCNN、DUDnCNN和AttnGAN四种去噪神经网络进行了评价。为了在最小细节损失的情况下评估降噪质量,使用了肾信噪比(SNR)和多尺度结构相似性(MS-SSIM)。虽然所有的网络都降低了噪声,但UDnCNN在信噪比和MS-SSIM之间取得了最好的平衡,导致图像质量的改善最为显著。在临床实践中,采集到的数据100%被汇总生成最终图像。为了模拟剂量减少,我们只计算了50%,模拟了辐射的比例减少。所提出的用于图像增强的深度学习方法确保所获得的所有帧中的一半可能产生与完整数据集相当的结果,这表明减少患者暴露于辐射是可行的。本研究表明,所评估的神经网络可以显著改善肾脏扫描图像质量,以更低的辐射剂量实现高质量的成像,这将大大惠及儿科人群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recovering Image Quality in Low-Dose Pediatric Renal Scintigraphy Using Deep Learning.

The objective of this study is to propose an advanced image enhancement strategy to address the challenge of reducing radiation doses in pediatric renal scintigraphy. Data from a public dynamic renal scintigraphy database were used. Based on noisier images, four denoising neural networks (DnCNN, UDnCNN, DUDnCNN, and AttnGAN) were evaluated. To evaluate the quality of the noise reduction, with minimal detail loss, the kidney signal-to-noise ratio (SNR) and multiscale structural similarity (MS-SSIM) were used. Although all the networks reduced noise, UDnCNN achieved the best balance between SNR and MS-SSIM, leading to the most notable improvements in image quality. In clinical practice, 100% of the acquired data are summed to produce the final image. To simulate the dose reduction, we summed only 50%, simulating a proportional decrease in radiation. The proposed deep-learning approach for image enhancement ensured that half of all the frames acquired may yield results that are comparable to those of the complete dataset, suggesting that it is feasible to reduce patients' exposure to radiation. This study demonstrates that the neural networks evaluated can markedly improve the renal scintigraphic image quality, facilitating high-quality imaging with lower radiation doses, which will benefit the pediatric population considerably.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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