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

被引:21
作者
Greffier, Joel [1 ]
Dabli, Djamel [1 ]
Hamard, Aymeric [1 ]
Belaouni, Asmaa [1 ]
Akessoul, Philippe [1 ]
Frandon, Julien [1 ]
Beregi, Jean-Paul [1 ]
机构
[1] Univ Montpellier, CHU Nimes, Med Imaging Grp Nimes, Dept Med Imaging,EA 2992, Nimes, France
关键词
Task-based image quality assessment; computed tomography scan (CT scan); iterative reconstruction algorithm; deep learning image reconstruction algorithm; FILTERED BACK-PROJECTION; TASK-BASED PERFORMANCE; CHEST CT; NOISE; RESOLUTION; RADIATION; TEXTURE; 3D;
D O I
10.21037/qims-21-215
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
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.
引用
收藏
页码:229 / +
页数:18
相关论文
共 50 条
  • [1] Comparison of two versions of a deep learning image reconstruction algorithm on CT image quality and dose reduction: A phantom study
    Greffier, Joel
    Dabli, Djamel
    Frandon, Julien
    Hamard, Aymeric
    Belaouni, Asmaa
    Akessoul, Philippe
    Fuamba, Yannick
    Le Roy, Julien
    Guiu, Boris
    Beregi, Jean-Paul
    MEDICAL PHYSICS, 2021, 48 (10) : 5743 - 5755
  • [2] Evaluation of Image Quality for 7 Iterative Reconstruction Algorithms in Chest Computed Tomography Imaging: A Phantom Study
    Jensen, Kristin
    Hagemo, Guro
    Tingberg, Anders
    Steinfeldt-Reisse, Claudius
    Mynarek, Georg Karl
    Rivero, Rodriguez Jezabel
    Fosse, Erik
    Martinsen, Anne Catrine
    JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY, 2020, 44 (05) : 673 - 680
  • [3] Image quality and dose reduction opportunity of deep learning image reconstruction algorithm for CT: a phantom study
    Greffier, Joel
    Hamard, Aymeric
    Pereira, Fabricio
    Barrau, Corinne
    Pasquier, Hugo
    Beregi, Jean Paul
    Frandon, Julien
    EUROPEAN RADIOLOGY, 2020, 30 (07) : 3951 - 3959
  • [4] Computed Tomography Effective Dose and Image Quality in Deep Learning Image Reconstruction in Intensive Care Patients Compared to Iterative Algorithms
    Quaia, Emilio
    de Cristoforis, Elena Kiyomi Lanza
    Agostini, Elena
    Zanon, Chiara
    TOMOGRAPHY, 2024, 10 (06) : 912 - 921
  • [5] Deep learning image reconstruction for improvement of image quality of abdominal computed tomography: comparison with hybrid iterative reconstruction
    Ichikawa, Yasutaka
    Kanii, Yoshinori
    Yamazaki, Akio
    Nagasawa, Naoki
    Nagata, Motonori
    Ishida, Masaki
    Kitagawa, Kakuya
    Sakuma, Hajime
    JAPANESE JOURNAL OF RADIOLOGY, 2021, 39 (06) : 598 - 604
  • [6] Improved image quality and dose reduction in abdominal CT with deep-learning reconstruction algorithm: a phantom study
    Greffier, Joel
    Durand, Quentin
    Frandon, Julien
    Si-Mohamed, Salim
    Loisy, Maeliss
    de Oliveira, Fabien
    Beregi, Jean-Paul
    Dabli, Djamel
    EUROPEAN RADIOLOGY, 2023, 33 (01) : 699 - 710
  • [7] Characterization of a computed tomography iterative reconstruction algorithm by image quality evaluations with an anthropomorphic phantom
    Rampado, O.
    Bossi, L.
    Garabello, D.
    Davini, O.
    Ropolo, R.
    EUROPEAN JOURNAL OF RADIOLOGY, 2012, 81 (11) : 3172 - 3177
  • [8] Performance of clinically available deep learning image reconstruction in computed tomography: a phantom study
    Kawashima, Hiroki
    Ichikawa, Katsuhiro
    Takata, Tadanori
    Mitsui, Wataru
    Ueta, Hiroshi
    Yoneda, Norihide
    Kobayashi, Satoshi
    JOURNAL OF MEDICAL IMAGING, 2020, 7 (06)
  • [9] Image Quality Improvement of Low-dose Abdominal CT using Deep Learning Image Reconstruction Compared with the Second Generation Iterative Reconstruction
    Kang, Hyo-Jin
    Lee, Jeong Min
    Park, Sae Jin
    Lee, Sang Min
    Joo, Ijin
    Yoon, Jeong Hee
    CURRENT MEDICAL IMAGING, 2024, 20
  • [10] Deep learning image reconstruction in pediatric abdominal and chest computed tomography: a comparison of image quality and radiation dose
    Zhang, Kun
    Shi, Xiang
    Xie, Shuang-Shuang
    Sun, Ji-Hang
    Liu, Zhuo-Heng
    Zhang, Shuai
    Song, Jia-Yang
    Shen, Wen
    QUANTITATIVE IMAGING IN MEDICINE AND SURGERY, 2022, 12 (06) : 3238 - +