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Impact of Deep Learning-Based Image Conversion on Fully Automated Coronary Artery Calcium Scoring Using Thin-Slice, Sharp-Kernel, Non-Gated, Low-Dose Chest CT Scans: A Multi-Center Study

Authors
 Cherry Kim  ;  Sehyun Hong  ;  Hangseok Choi  ;  Won-Seok Yoo  ;  Jin Young Kim  ;  Suyon Chang  ;  Chan Ho Park  ;  Su Jin Hong  ;  Dong Hyun Yang  ;  Hwan Seok Yong  ;  Marly van Assen  ;  Carlo N De Cecco  ;  Young Joo Suh 
Citation
 KOREAN JOURNAL OF RADIOLOGY, Vol.26(8) : 759-770, 2025-08 
Journal Title
KOREAN JOURNAL OF RADIOLOGY
ISSN
 1229-6929 
Issue Date
2025-08
MeSH
Aged ; Coronary Artery Disease* / diagnostic imaging ; Coronary Vessels* / diagnostic imaging ; Deep Learning* ; Female ; Humans ; Male ; Middle Aged ; Radiation Dosage ; Radiographic Image Interpretation, Computer-Assisted* / methods ; Radiography, Thoracic / methods ; Retrospective Studies ; Tomography, X-Ray Computed* / methods ; Vascular Calcification* / diagnostic imaging
Keywords
Artificial intelligence ; Calcium ; Coronary vessels ; Thorax ; Tomography, X-ray computed
Abstract
Objective: To evaluate the impact of deep learning-based image conversion on the accuracy of automated coronary artery calcium quantification using thin-slice, sharp-kernel, non-gated, low-dose chest computed tomography (LDCT) images collected from multiple institutions.

Materials and methods: A total of 225 pairs of LDCT and calcium scoring CT (CSCT) images scanned at 120 kVp and acquired from the same patient within a 6-month interval were retrospectively collected from four institutions. Image conversion was performed for LDCT images using proprietary software programs to simulate conventional CSCT. This process included 1) deep learning-based kernel conversion of low-dose, high-frequency, sharp kernels to simulate standard-dose, low-frequency kernels, and 2) thickness conversion using the raysum method to convert 1-mm or 1.25-mm thickness images to 3-mm thickness. Automated Agaston scoring was conducted on the LDCT scans before (LDCT-Orgauto) and after the image conversion (LDCT-CONVauto). Manual scoring was performed on the CSCT images (CSCTmanual) and used as a reference standard. The accuracy of automated Agaston scores and risk severity categorization based on the automated scoring on LDCT scans was analyzed compared to the reference standard, using the Bland-Altman analysis, concordance correlation coefficient (CCC), and weighted kappa (κ) statistic.

Results: LDCT-CONVauto demonstrated a reduced bias for Agaston score, compared with CSCTmanual, than LDCT-Orgauto did (-3.45 vs. 206.7). LDCT-CONVauto showed a higher CCC than LDCT-Orgauto did (0.881 [95% confidence interval {CI}, 0.750-0.960] vs. 0.269 [95% CI, 0.129-0.430]). In terms of risk category assignment, LDCT-Orgauto exhibited poor agreement with CSCTmanual (weighted κ = 0.115 [95% CI, 0.082-0.154]), whereas LDCT-CONVauto achieved good agreement (weighted κ = 0.792 [95% CI, 0.731-0.847]).

Conclusion: Deep learning-based conversion of LDCT images originally obtained with thin slices and a sharp kernel can enhance the accuracy of automated coronary artery calcium score measurement using the images.
Files in This Item:
T202505562.pdf Download
DOI
10.3348/kjr.2025.0177
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Radiology (영상의학교실) > 1. Journal Papers
Yonsei Authors
Suh, Young Joo(서영주) ORCID logo https://orcid.org/0000-0002-2078-5832
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/207238
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