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深度学习降噪对肾和输尿管结石CT值、图像噪声及特征的影响

Influence of a Deep Learning Noise Reduction on the CT Values, Image Noise and Characterization of Kidney and Ureter Stones.

作者信息

Steuwe Andrea, Valentin Birte, Bethge Oliver T, Ljimani Alexandra, Niegisch Günter, Antoch Gerald, Aissa Joel

机构信息

Department of Diagnostic and Interventional Radiology, Medical Faculty, University Dusseldorf, D-40225 Dusseldorf, Germany.

Department of Urology, Medical Faculty, University Dusseldorf, D-40225 Dusseldorf, Germany.

出版信息

Diagnostics (Basel). 2022 Jul 5;12(7):1627. doi: 10.3390/diagnostics12071627.

Abstract

Deep-learning (DL) noise reduction techniques in computed tomography (CT) are expected to reduce the image noise while maintaining the clinically relevant information in reduced dose acquisitions. This study aimed to assess the size, attenuation, and objective image quality of reno-ureteric stones denoised using DL-software in comparison to traditionally reconstructed low-dose abdominal CT-images and evaluated its clinical impact. In this institutional review-board-approved retrospective study, 45 patients with renal and/or ureteral stones were included. All patients had undergone abdominal CT between August 2019 and October 2019. CT-images were reconstructed using the following three methods: filtered back-projection, iterative reconstruction, and PixelShine (DL-software) with both sharp and soft kernels. Stone size, CT attenuation, and objective image quality (signal-to-noise ratio (SNR), contrast-to-noise ratio (CNR)) were evaluated and compared using Bonferroni-corrected Friedman tests. Objective image quality was measured in six regions-of-interest. Stone size ranged between 4.4 × 3.1−4.4 × 3.2 mm (sharp kernel) and 5.1 × 3.8−5.6 × 4.2 mm (soft kernel). Mean attenuation ranged between 704−717 Hounsfield Units (HU) (soft kernel) and 915−1047 HU (sharp kernel). Differences in measured stone sizes were ≤1.3 mm. DL-processed images resulted in significantly higher CNR and SNR values (p < 0.001) by decreasing image noise significantly (p < 0.001). DL-software significantly improved objective image quality while maintaining both correct stone size and CT-attenuation values. Therefore, the clinical impact of stone assessment in denoised image data sets remains unchanged. Through the relevant noise suppression, the software additionally offers the potential to further reduce radiation exposure.

摘要

计算机断层扫描(CT)中的深度学习(DL)降噪技术有望在低剂量采集时降低图像噪声,同时保留临床相关信息。本研究旨在评估与传统重建的低剂量腹部CT图像相比,使用DL软件去噪后的肾输尿管结石的大小、衰减及客观图像质量,并评估其临床影响。在这项经机构审查委员会批准的回顾性研究中,纳入了45例患有肾和/或输尿管结石的患者。所有患者均于2019年8月至2019年10月期间接受了腹部CT检查。CT图像采用以下三种方法重建:滤波反投影、迭代重建以及使用锐利内核和柔和内核的PixelShine(DL软件)。使用Bonferroni校正的Friedman检验评估并比较结石大小、CT衰减和客观图像质量(信噪比(SNR)、对比噪声比(CNR))。在六个感兴趣区域测量客观图像质量。结石大小在4.4×3.1 - 4.4×3.2毫米(锐利内核)至5.1×3.8 - 5.6×4.2毫米(柔和内核)之间。平均衰减在704 - 717亨氏单位(HU)(柔和内核)至915 - 1047 HU(锐利内核)之间。测量的结石大小差异≤1.3毫米。DL处理的图像通过显著降低图像噪声(p < 0.001),使CNR和SNR值显著更高(p < 0.001)。DL软件在保持结石大小和CT衰减值正确的同时,显著提高了客观图像质量。因此,去噪图像数据集中结石评估的临床影响保持不变。通过相关的噪声抑制,该软件还具有进一步降低辐射暴露的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a95d/9317055/9f2dd93a9436/diagnostics-12-01627-g001.jpg

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