Literature DB >> 32286872

Image Quality Assessment of Abdominal CT by Use of New Deep Learning Image Reconstruction: Initial Experience.

Corey T Jensen1, Xinming Liu2, Eric P Tamm1, Adam G Chandler2, Jia Sun3, Ajaykumar C Morani1, Sanaz Javadi1, Nicolaus A Wagner-Bartak1.   

Abstract

OBJECTIVE. The purpose of this study was to perform quantitative and qualitative evaluation of a deep learning image reconstruction (DLIR) algorithm in contrast-enhanced oncologic CT of the abdomen. MATERIALS AND METHODS. Retrospective review (April-May 2019) of the cases of adults undergoing oncologic staging with portal venous phase abdominal CT was conducted for evaluation of standard 30% adaptive statistical iterative reconstruction V (30% ASIR-V) reconstruction compared with DLIR at low, medium, and high strengths. Attenuation and noise measurements were performed. Two radiologists, blinded to examination details, scored six categories while comparing reconstructions for overall image quality, lesion diagnostic confidence, artifacts, image noise and texture, lesion conspicuity, and resolution. RESULTS. DLIR had a better contrast-to-noise ratio than 30% ASIR-V did; high-strength DLIR performed the best. High-strength DLIR was associated with 47% reduction in noise, resulting in a 92-94% increase in contrast-to-noise ratio compared with that of 30% ASIR-V. For overall image quality and image noise and texture, DLIR scored significantly higher than 30% ASIR-V with significantly higher scores as DLIR strength increased. A total of 193 lesions were identified. The lesion diagnostic confidence, conspicuity, and artifact scores were significantly higher for all DLIR levels than for 30% ASIR-V. There was no significant difference in perceived resolution between the reconstruction methods. CONCLUSION. Compared with 30% ASIR-V, DLIR improved CT evaluation of the abdomen in the portal venous phase. DLIR strength should be chosen to balance the degree of desired denoising for a clinical task relative to mild blurring, which increases with progressively higher DLIR strengths.

Keywords:  artificial intelligence; deep learning; iterative reconstruction; radiation reduction

Year:  2020        PMID: 32286872     DOI: 10.2214/AJR.19.22332

Source DB:  PubMed          Journal:  AJR Am J Roentgenol        ISSN: 0361-803X            Impact factor:   3.959


  32 in total

Review 1.  Advanced CT techniques for assessing hepatocellular carcinoma.

Authors:  Yuko Nakamura; Toru Higaki; Yukiko Honda; Fuminari Tatsugami; Chihiro Tani; Wataru Fukumoto; Keigo Narita; Shota Kondo; Motonori Akagi; Kazuo Awai
Journal:  Radiol Med       Date:  2021-05-05       Impact factor: 3.469

2.  The influence of a deep learning image reconstruction algorithm on the image quality and auto-analysis of pulmonary nodules at ultra-low dose chest CT: a phantom study.

Authors:  Xiaohui Li; Lei Deng; Yue Yao; Baobin Guo; Jianying Li; Quanxin Yang
Journal:  Quant Imaging Med Surg       Date:  2022-05

3.  Deep learning reconstruction allows low-dose imaging while maintaining image quality: comparison of deep learning reconstruction and hybrid iterative reconstruction in contrast-enhanced abdominal CT.

Authors:  Akio Tamura; Eisuke Mukaida; Yoshitaka Ota; Iku Nakamura; Kazumasa Arakita; Kunihiro Yoshioka
Journal:  Quant Imaging Med Surg       Date:  2022-05

4.  Evaluation of Apparent Noise on CT Images Using Moving Average Filters.

Authors:  Keisuke Fujii; Keiichi Nomura; Kuniharu Imai; Yoshihisa Muramatsu; So Tsushima; Hiroyuki Ota
Journal:  J Digit Imaging       Date:  2021-11-10       Impact factor: 4.056

5.  Efficient Evaluation of Low-contrast Detectability of Deep-CNN-based CT Reconstruction Using Channelized Hotelling Observer on the ACR Accreditation Phantom.

Authors:  Mingdong Fan; Zhongxing Zhou; Thomas Vrieze; Jia Wang; Cynthia McCollough; Lifeng Yu
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2022-04-04

6.  Commentary On: Image Quality Evaluation in Dual Energy CT of the Chest, Abdomen and Pelvis in Obese Patients with Deep Learning Image Reconstruction.

Authors:  Corey T Jensen
Journal:  J Comput Assist Tomogr       Date:  2022-06-23       Impact factor: 2.081

7.  Performance of clinically available deep learning image reconstruction in computed tomography: a phantom study.

Authors:  Hiroki Kawashima; Katsuhiro Ichikawa; Tadanori Takata; Wataru Mitsui; Hiroshi Ueta; Norihide Yoneda; Satoshi Kobayashi
Journal:  J Med Imaging (Bellingham)       Date:  2020-12-16

8.  Low-dose CT urography using deep learning image reconstruction: a prospective study for comparison with conventional CT urography.

Authors:  Yannan Cheng; Yangyang Han; Jianying Li; Ganglian Fan; Le Cao; Junjun Li; Xiaoqian Jia; Jian Yang; Jianxin Guo
Journal:  Br J Radiol       Date:  2021-02-24       Impact factor: 3.039

9.  Superior objective and subjective image quality of deep learning reconstruction for low-dose abdominal CT imaging in comparison with model-based iterative reconstruction and filtered back projection.

Authors:  Akio Tamura; Eisuke Mukaida; Yoshitaka Ota; Masayoshi Kamata; Shun Abe; Kunihiro Yoshioka
Journal:  Br J Radiol       Date:  2021-07-01       Impact factor: 3.039

Review 10.  Current and emerging artificial intelligence applications for pediatric abdominal imaging.

Authors:  Jonathan R Dillman; Elan Somasundaram; Samuel L Brady; Lili He
Journal:  Pediatr Radiol       Date:  2021-04-12
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