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深度学习重建联合单能量金属伪影降低技术在有牙科金属的颏下颈部 CT 中的应用。

Deep Learning Reconstruction Plus Single-Energy Metal Artifact Reduction for Supra Hyoid Neck CT in Patients With Dental Metals.

机构信息

Department of Radiology, The University of Tokyo Hospital, Bunkyo-ku, Tokyo, Japan.

出版信息

Can Assoc Radiol J. 2024 Feb;75(1):74-81. doi: 10.1177/08465371231182904. Epub 2023 Jun 30.

DOI:10.1177/08465371231182904
PMID:37387607
Abstract

We investigated the effect of deep learning reconstruction (DLR) plus single-energy metal artifact reduction (SEMAR) on neck CT in patients with dental metals, comparing it with DLR and with hybrid iterative reconstruction (Hybrid IR)-SEMAR. In this retrospective study, 32 patients (25 men, 7 women; mean age: 63 ± 15 years) with dental metals underwent contrast-enhanced CT of the oral and oropharyngeal regions. Axial images were reconstructed using DLR, Hybrid IR-SEMAR, and DLR-SEMAR. In quantitative analyses, degrees of image noise and artifacts were evaluated. In one-by-one qualitative analyses, 2 radiologists evaluated metal artifacts, the depiction of structures, and noise on five-point scales. In side-by-side qualitative analyses, artifacts and overall image quality were evaluated by comparing Hybrid IR-SEMAR with DLR-SEMAR. Artifacts were significantly less with DLR-SEMAR than with DLR in quantitative ( < .001) and one-by-one qualitative ( < .001) analyses, which resulted in significantly better depiction of most structures ( < .004). Artifacts in side-by-side analysis and image noise in quantitative and one-by-one qualitative analyses ( < .001) were significantly less with DLR-SEMAR than with Hybrid IR-SEMAR, resulting in significantly better overall quality of DLR-SEMAR. Compared with DLR and Hybrid IR-SEMAR, DLR-SEMAR provided significantly better supra hyoid neck CT images in patients with dental metals.

摘要

我们研究了深度学习重建(DLR)加单能金属伪影减少(SEMAR)对有牙科金属的颈部 CT 的影响,并将其与 DLR 和混合迭代重建(Hybrid IR)-SEMAR 进行了比较。在这项回顾性研究中,32 名(25 名男性,7 名女性;平均年龄:63 ± 15 岁)有牙科金属的患者接受了口腔和口咽区域的对比增强 CT。使用 DLR、Hybrid IR-SEMAR 和 DLR-SEMAR 对轴向图像进行重建。在定量分析中,评估了图像噪声和伪影的程度。在逐一的定性分析中,2 位放射科医生使用五分制评估了金属伪影、结构的描绘和噪声。在并排的定性分析中,通过比较 Hybrid IR-SEMAR 与 DLR-SEMAR,评估了伪影和整体图像质量。在定量和逐一的定性分析中,DLR-SEMAR 的伪影明显少于 DLR( <.001),这导致大多数结构的描绘明显更好( <.004)。在并排分析中,伪影和图像噪声在定量和逐一的定性分析中( <.001)均明显少于 Hybrid IR-SEMAR,这使得 DLR-SEMAR 的整体质量明显更好。与 DLR 和 Hybrid IR-SEMAR 相比,DLR-SEMAR 为有牙科金属的患者提供了明显更好的颏下颈部 CT 图像。

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