The effect of deep learning reconstruction on abdominal CT densitometry and image quality

a systematic review and meta-analysis

Journal Article (2021)
Author(s)

J.A. van Stiphout (TU Delft - Science Centre & Programmering)

J. Driessen (Student TU Delft)

L.R. Koetzier (Student TU Delft)

L.B. Ruules (TU Delft - Teaching & Learning Services)

Martin Willemink (Stanford University School of Medicine)

Jan W.T. Heemskerk (Leiden University Medical Center)

Aart J. van der Molen (Leiden University Medical Center)

Research Group
Science Centre & Programmering
DOI related publication
https://doi.org/10.1007/s00330-021-08438-z
More Info
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Publication Year
2021
Language
English
Research Group
Science Centre & Programmering
Issue number
5
Volume number
32
Pages (from-to)
2921-2929
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Abstract

Objective: To determine the difference in CT values and image quality of abdominal CT images reconstructed by filtered back-projection (FBP), hybrid iterative reconstruction (IR), and deep learning reconstruction (DLR). Methods: PubMed and Embase were systematically searched for articles regarding CT densitometry in the abdomen and the image reconstruction techniques FBP, hybrid IR, and DLR. Mean differences in CT values between reconstruction techniques were analyzed. A comparison between signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR) of FBP, hybrid IR, and DLR was made. A comparison of diagnostic confidence between hybrid IR and DLR was made. Results: Sixteen articles were included, six being suitable for meta-analysis. In the liver, the mean difference between hybrid IR and DLR was − 0.633 HU (p = 0.483, SD ± 0.902 HU). In the spleen, the mean difference between hybrid IR and DLR was − 0.099 HU (p = 0.925, SD ± 1.061 HU). In the pancreas, the mean difference between hybrid IR and DLR was − 1.372 HU (p = 0.353, SD ± 1.476 HU). In 14 articles, CNR was described. In all cases, DLR showed a significantly higher CNR. In 9 articles, SNR was described. In all cases but one, DLR showed a significantly higher SNR. In all cases, DLR showed a significantly higher diagnostic confidence. Conclusions: There were no significant differences in CT values reconstructed by FBP, hybrid IR, and DLR in abdominal organs. This shows that these reconstruction techniques are consistent in reconstructing CT values. DLR images showed a significantly higher SNR and CNR, compared to FBP and hybrid IR. Key Points: CT values of abdominal CT images are similar between deep learning reconstruction (DLR), filtered back-projection (FBP), and hybrid iterative reconstruction (IR).DLR results in improved image quality in terms of SNR and CNR compared to FBP and hybrid IR images.DLR can thus be safely implemented in the clinical setting resulting in improved image quality without affecting CT values.