Adaptation of Deep Learning Image Reconstruction for Pediatric Head CT: A Focus on the Image Quality.

Q4 Medicine
Nim Lee, Hyun-Hae Cho, So Mi Lee, Sun Kyoung You
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引用次数: 2

Abstract

Purpose: To assess the effect of deep learning image reconstruction (DLIR) for head CT in pediatric patients.

Materials and methods: We collected 126 pediatric head CT images, which were reconstructed using filtered back projection, iterative reconstruction using adaptive statistical iterative reconstruction (ASiR)-V, and all three levels of DLIR (TrueFidelity; GE Healthcare). Each image set group was divided into four subgroups according to the patients' ages. Clinical and dose-related data were reviewed. Quantitative parameters, including the signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR), and qualitative parameters, including noise, gray matter-white matter (GM-WM) differentiation, sharpness, artifact, acceptability, and unfamiliar texture change were evaluated and compared.

Results: The SNR and CNR of each level in each age group increased among strength levels of DLIR. High-level DLIR showed a significantly improved SNR and CNR (p < 0.05). Sequential reduction of noise, improvement of GM-WM differentiation, and improvement of sharpness was noted among strength levels of DLIR. Those of high-level DLIR showed a similar value as that with ASiR-V. Artifact and acceptability did not show a significant difference among the adapted levels of DLIR.

Conclusion: Adaptation of high-level DLIR for the pediatric head CT can significantly reduce image noise. Modification is needed while processing artifacts.

Abstract Image

Abstract Image

Abstract Image

深度学习图像重建在儿童头部CT中的应用:对图像质量的关注。
目的:探讨深度学习图像重建(DLIR)在小儿头部CT中的应用效果。材料和方法:我们收集了126张儿童头部CT图像,使用滤波反投影法重建,使用自适应统计迭代重建(ASiR)-V进行迭代重建,并使用三个级别的DLIR (truefidfidelity;通用电气医疗集团)。每个图像集组根据患者年龄分为4个亚组。回顾了临床和剂量相关数据。定量参数包括信噪比(SNR)和噪声对比比(CNR),定性参数包括噪声、灰质-白质(GM-WM)分化、清晰度、伪影、可接受性和不熟悉纹理变化进行了评估和比较。结果:各年龄组各水平的信噪比和CNR随DLIR强度水平的增加而增加。高水平DLIR显著提高了SNR和CNR (p < 0.05)。在DLIR的强度水平之间,可以注意到噪声的顺序降低,GM-WM区分的改善以及清晰度的提高。高水平DLIR的数值与ASiR-V相似。伪影和可接受性在不同DLIR适应水平间无显著差异。结论:儿童头部CT采用高水平DLIR可显著降低图像噪声。在处理工件时需要进行修改。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of the Korean Society of Radiology
Journal of the Korean Society of Radiology Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
0.40
自引率
0.00%
发文量
98
审稿时长
16 weeks
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