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Deep Learning-Based Image Conversion Improves the Reproducibility of Computed Tomography Radiomics Features: A Phantom Study

Authors
 Seul Bi Lee  ;  Yeon Jin Cho  ;  Youngtaek Hong  ;  Dawun Jeong  ;  Jina Lee  ;  Soo-Hyun Kim  ;  Seunghyun Lee  ;  Young Hun Choi 
Citation
 INVESTIGATIVE RADIOLOGY, Vol.57(5) : 308-317, 2022-05 
Journal Title
INVESTIGATIVE RADIOLOGY
ISSN
 0020-9996 
Issue Date
2022-05
MeSH
Deep Learning* ; Image Processing, Computer-Assisted / methods ; Phantoms, Imaging ; Reproducibility of Results ; Tomography Scanners, X-Ray Computed ; Tomography, X-Ray Computed / methods
Abstract
Objectives: This study aimed to evaluate the usefulness of deep learning-based image conversion to improve the reproducibility of computed tomography (CT) radiomics features.

Materials and methods: This study was conducted using an abdominal phantom with liver nodules. We developed an image conversion algorithm using a residual feature aggregation network to reproduce radiomics features with CT images under various CT protocols and reconstruction kernels. External validation was performed using images from different scanners, consisting of 8 different protocols. To evaluate the variability of radiomics features, regions of interest (ROIs) were drawn by targeting the liver parenchyma, vessels, paraspinal area, and liver nodules. We extracted 18 first-order, 68 second-order, and 688 wavelet radiomics features. Measurement variability was assessed using the concordance correlation coefficient (CCC), compared with the ground-truth image.

Results: In the ROI-based analysis, there was an 83.3% improvement of CCC (80/96; 4 ROIs with 3 categories of radiomics features and 8 protocols) in synthetic images compared with the original images. Among them, the 56 CCC pairs showed a significant increase after image synthesis. In the radiomics feature-based analysis, 62.0% (3838 of 6192; 774 radiomics features with 8 protocols) features showed increased CCC after image synthesis, and a significant increase was noted in 26.9% (1663 of 6192) features. In particular, the first-order feature (79.9%, 115/144) showed better improvement in terms of the reproducibility of radiomics feature than the second-order (59.9%, 326/544) or wavelet feature (61.7%, 3397/5504).

Conclusions: Our study demonstrated that a deep learning model for image conversion can improve the reproducibility of radiomics features across various CT protocols, reconstruction kernels, and CT scanners.
Full Text
https://journals.lww.com/investigativeradiology/Fulltext/2022/05000/Deep_Learning_Based_Image_Conversion_Improves_the.4.aspx
DOI
10.1097/RLI.0000000000000839
Appears in Collections:
1. College of Medicine (의과대학) > Research Institute (부설연구소) > 1. Journal Papers
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/194431
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