Literature DB >> 33721769

Ultra-low-dose CT combined with noise reduction techniques for quantification of emphysema in COPD patients: An intra-individual comparison study with standard-dose CT.

H J Wisselink1, G J Pelgrim1, M Rook2, K Imkamp3, P M A van Ooijen4, M van den Berge3, G H de Bock5, R Vliegenthart6.   

Abstract

PURPOSE: Phantom studies in CT emphysema quantification show that iterative reconstruction and deep learning-based noise reduction (DLNR) allow lower radiation dose. We compared emphysema quantification on ultra-low-dose CT (ULDCT) with and without noise reduction, to standard-dose CT (SDCT) in chronic obstructive pulmonary disease (COPD).
METHOD: Forty-nine COPD patients underwent ULDCT (third generation dual-source CT; 70ref-mAs, Sn-filter 100kVp; median CTDIvol 0.38 mGy) and SDCT (64-multidetector CT; 40mAs, 120kVp; CTDIvol 3.04 mGy). Scans were reconstructed with filtered backprojection (FBP) and soft kernel. For ULDCT, we also applied advanced modelled iterative reconstruction (ADMIRE), levels 1/3/5, and DLNR, levels 1/3/5/9. Emphysema was quantified as Low Attenuation Value percentage (LAV%, ≤-950HU). ULDCT measures were compared to SDCT as reference standard.
RESULTS: For ULDCT, the median radiation dose was 84 % lower than for SDCT. Median extent of emphysema was 18.6 % for ULD-FBP and 15.4 % for SDCT (inter-quartile range: 11.8-28.4 % and 9.2 %-28.7 %, p = 0.002). Compared to SDCT, the range in limits of agreement of emphysema quantification as measure of variability was 14.4 for ULD-FBP, 11.0-13.1 for ULD-ADMIRE levels and 10.1-13.9 for ULD-DLNR levels. Optimal settings were ADMIRE 3 and DLNR 3, reducing variability of emphysema quantification by 24 % and 27 %, at slight underestimation of emphysema extent (-1.5 % and -2.9 %, respectively).
CONCLUSIONS: Ultra-low-dose CT in COPD patients allows dose reduction by 84 %. State-of-the-art noise reduction methods in ULDCT resulted in slight underestimation of emphysema compared to SDCT. Noise reduction methods (especially ADMIRE 3 and DLNR 3) reduced variability of emphysema quantification in ULDCT by up to 27 % compared to FBP.
Copyright © 2021 The Author(s). Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Deep learning; Multidetector computed tomography; Pulmonary emphysema; Radiation dosage; Reproducibility of results

Mesh:

Year:  2021        PMID: 33721769     DOI: 10.1016/j.ejrad.2021.109646

Source DB:  PubMed          Journal:  Eur J Radiol        ISSN: 0720-048X            Impact factor:   3.528


  4 in total

Review 1.  [Computed tomographic imaging in chronic obstructive pulmonary disease : What pulmonologists and thoracic surgeons want to know].

Authors:  Felix Döllinger; Aron Elsner; Ralf-Harto Hübner
Journal:  Radiologie (Heidelb)       Date:  2022-07-12

Review 2.  Quantitative Computed Tomography: What Clinical Questions Can it Answer in Chronic Lung Disease?

Authors:  Marcelo Cardoso Barros; Stephan Altmayer; Alysson Roncally Carvalho; Rosana Rodrigues; Matheus Zanon; Tan-Lucien Mohammed; Pratik Patel; Al-Ani Mohammad; Borna Mehrad; Jose Miguel Chatkin; Bruno Hochhegger
Journal:  Lung       Date:  2022-06-25       Impact factor: 3.777

3.  Emphysema Quantification Using Ultra-Low-Dose Chest CT: Efficacy of Deep Learning-Based Image Reconstruction.

Authors:  Jeong-A Yeom; Ki-Uk Kim; Minhee Hwang; Ji-Won Lee; Kun-Il Kim; You-Seon Song; In-Sook Lee; Yeon-Joo Jeong
Journal:  Medicina (Kaunas)       Date:  2022-07-15       Impact factor: 2.948

Review 4.  Innovations in thoracic imaging: CT, radiomics, AI and x-ray velocimetry.

Authors:  Rozemarijn Vliegenthart; Andreas Fouras; Colin Jacobs; Nickolas Papanikolaou
Journal:  Respirology       Date:  2022-08-14       Impact factor: 6.175

  4 in total

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