头部CT深度学习与迭代图像重建:对图像质量和辐射剂量降低的影响-比较研究。

IF 0.8 Q4 NEUROIMAGING
Michal Pula, Emilia Kucharczyk, Agata Zdanowicz-Ratajczyk, Mateusz Dorochowicz, Maciej Guzinski
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引用次数: 0

摘要

背景与目的:本研究的重点是客观评价一种新的重建算法-深度学习图像重建(DLIR)-与自适应统计迭代重建- v (ASIR-V)的既定标准相比,在非增强头部计算机断层扫描(CT)中提高图像质量和降低辐射剂量的能力。材料与方法:回顾性分析163例连续未增强头颅ct。根据5个感兴趣区域(ROI)得出的信噪比(SNR)和对比噪声比(CNR)的客观参数计算图像质量评估。DLIR减剂量能力的评价基于PACS导出的剂量长度积和ct剂量指数体积(CTDIvol)参数的分析。结果:遵循严格的标准,研究纳入了35例患者。采用DLIR后,图像质量得到了显著改善,幕上和幕下区域的信噪比分别提高了145%和160%。CNR测量进一步证实了DLIR优于ASIR-V,在幕上区域增加了171.5%,在幕下区域增加了59.3%。尽管信号改善和噪声降低,DLIR促进CTDIvol的辐射剂量降低高达44%。结论:与标准ASIR-V相比,在头部CT扫描中实施DLIR可以显著改善图像质量和降低剂量。然而,剂量减少的特点被证明不足以抵消缺乏龙门角在宽探测器扫描仪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning and iterative image reconstruction for head CT: Impact on image quality and radiation dose reduction-Comparative study.

Background and purpose: This study focuses on an objective evaluation of a novel reconstruction algorithm-Deep Learning Image Reconstruction (DLIR)-ability to improve image quality and reduce radiation dose compared to the established standard of Adaptive Statistical Iterative Reconstruction-V (ASIR-V), in unenhanced head computed tomography (CT). Materials and methods: A retrospective analysis of 163 consecutive unenhanced head CTs was conducted. Image quality assessment was computed on the objective parameters of Signal-to-Noise Ratio (SNR) and Contrast-to-Noise Ratio (CNR), derived from 5 regions of interest (ROI). The evaluation of DLIR dose reduction abilities was based on the analysis of the PACS derived parameters of dose length product and computed tomography dose index volume (CTDIvol). Results: Following the application of rigorous criteria, the study comprised 35 patients. Significant image quality improvement was achieved with the implementation of DLIR, as evidenced by up to a 145% and 160% increase in SNR in supra- and infratentorial regions, respectively. CNR measurements further confirmed the superiority of DLIR over ASIR-V, with an increase of 171.5% in the supratentorial region and a 59.3% increase in the infratentorial region. Despite the signal improvement and noise reduction DLIR facilitated radiation dose reduction of up to 44% in CTDIvol. Conclusion: Implementation of DLIR in head CT scans enables significant image quality improvement and dose reduction abilities compared to standard ASIR-V. However, the dose reduction feature was proven insufficient to counteract the lack of gantry angulation in wide-detector scanners.

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来源期刊
Neuroradiology Journal
Neuroradiology Journal NEUROIMAGING-
CiteScore
2.50
自引率
0.00%
发文量
101
期刊介绍: NRJ - The Neuroradiology Journal (formerly Rivista di Neuroradiologia) is the official journal of the Italian Association of Neuroradiology and of the several Scientific Societies from all over the world. Founded in 1988 as Rivista di Neuroradiologia, of June 2006 evolved in NRJ - The Neuroradiology Journal. It is published bimonthly.
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