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一种用于腹部计算机断层扫描成像的新型深度学习图像重建算法与两种迭代重建算法相比对图像质量和剂量降低的影响:一项体模研究

Effect of a new deep learning image reconstruction algorithm for abdominal computed tomography imaging on image quality and dose reduction compared with two iterative reconstruction algorithms: a phantom study.

作者信息

Greffier Joël, Dabli Djamel, Hamard Aymeric, Belaouni Asmaa, Akessoul Philippe, Frandon Julien, Beregi Jean-Paul

机构信息

Department of Medical Imaging, CHU Nimes, Univ Montpellier, Medical Imaging Group Nîmes, EA 2992, Nîmes, France.

出版信息

Quant Imaging Med Surg. 2022 Jan;12(1):229-243. doi: 10.21037/qims-21-215.

Abstract

BACKGROUND

New reconstruction algorithms based on deep learning have been developed to correct the image texture changes related to the use of iterative reconstruction algorithms. The purpose of this study was to evaluate the impact of a new deep learning image reconstruction [Advanced intelligent Clear-IQ Engine (AiCE)] algorithm on image-quality and dose reduction compared to a hybrid iterative reconstruction (AIDR 3D) algorithm and a model-based iterative reconstruction (FIRST) algorithm.

METHODS

Acquisitions were carried out using the ACR 464 phantom (and its body ring) at six dose levels (volume computed tomography dose index 15/10/7.5/5/2.5/1 mGy). Raw data were reconstructed using three levels (Mild/Standard/Strong) of AIDR 3D, of FIRST and AiCE. Noise-power-spectrum (NPS) and task-based transfer function (TTF) were computed. Detectability index was computed to model the detection of a small calcification (1.5-mm diameter and 500 HU) and a large mass in the liver (25-mm diameter and 120 HU).

RESULTS

NPS peaks were lower with AiCE than with AIDR 3D (-41%±6% for all levels) or FIRST (-15%±6% for Strong level and -41%±11% for both other levels). The average NPS spatial frequency was lower with AICE than AIDR 3D (-9%±2% using Mild and -3%±2% using Strong) but higher than FIRST for Standard (6%±3%) and Strong (25%±3%) levels. For acrylic insert, values of TTF at 50 percent were higher with AICE than AIDR 3D and FIRST, except for Mild level (-6%±6% and -13%±3%, respectively). For bone insert, values of TTF at 50 percent were higher with AICE than AIDR 3D but lower than FIRST (-19%±14%). For both simulated lesions, detectability index values were higher with AICE than AIDR 3D and FIRST (except for Strong level and for the small feature; -21%±14%). Using the Standard level, dose could be reduced by -79% for the small calcification and -57% for the large mass using AICE compared to AIDR 3D.

CONCLUSIONS

The new deep learning image reconstruction algorithm AiCE generates an image-quality with less noise and/or less smudged/smooth images and a higher detectability than the AIDR 3D or FIRST algorithms. The outcomes of our phantom study suggest a good potential of dose reduction using AiCE but it should be confirmed clinically in patients.

摘要

背景

基于深度学习的新重建算法已被开发出来,以纠正与迭代重建算法使用相关的图像纹理变化。本研究的目的是评估一种新的深度学习图像重建算法[高级智能清晰图像质量增强引擎(AiCE)]与混合迭代重建算法(AIDR 3D)和基于模型的迭代重建算法(FIRST)相比,对图像质量和剂量降低的影响。

方法

使用ACR 464体模(及其体环)在六个剂量水平(容积计算机断层扫描剂量指数15/10/7.5/5/2.5/1 mGy)下进行采集。原始数据使用AIDR 3D、FIRST和AiCE的三个级别(轻度/标准/强度)进行重建。计算噪声功率谱(NPS)和基于任务的传递函数(TTF)。计算可检测性指数,以模拟对小钙化灶(直径1.5毫米,500 HU)和肝脏中较大肿块(直径25毫米,120 HU)的检测。

结果

与AIDR 3D相比,AiCE的NPS峰值更低(所有级别均低-41%±6%),与FIRST相比,在强度级别低-15%±6%,在其他两个级别低-41%±11%。与AIDR 3D相比,AICE的平均NPS空间频率更低(轻度级别低-9%±2%,强度级别低-3%±2%),但在标准级别(6%±3%)和强度级别(25%±3%)高于FIRST。对于丙烯酸插入物,除轻度级别外(分别低-6%±6%和-13%±3%),AICE在50%时的TTF值高于AIDR 3D和FIRST。对于骨插入物,AICE在50%时的TTF值高于AIDR 3D,但低于FIRST(低-19%±14%)。对于两种模拟病变,与AIDR 3D和FIRST相比,AICE的可检测性指数值更高(强度级别和小特征除外;低-21%±14%)。使用标准级别,与AIDR 3D相比,使用AICE时小钙化灶的剂量可降低-79%,大肿块的剂量可降低-57%。

结论

新的深度学习图像重建算法AiCE生成的图像质量具有更少的噪声和/或更少的模糊/平滑图像,并且比AIDR 3D或FIRST算法具有更高的可检测性。我们体模研究的结果表明使用AiCE有很好的剂量降低潜力,但应在患者中进行临床验证。

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