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KMID : 1103720230840010240
Journal of the Korean Society of Radiology
2023 Volume.84 No. 1 p.240 ~ p.252
Adaptation of Deep Learning Image Reconstruction for Pediatric Head CT: A Focus on the Image Quality
Lee Nim

Cho Hyun-Hae
Lee So-Mi
You Sun-Kyung
Abstract
Purpose To assess the effect of deep learning image reconstruction (DLIR) for head CT in pediatric patients.

Materials and Methods We collected 126 pediatric head CT images, which were reconstructed using filtered back projection, iterative reconstruction using adaptive statistical iterative reconstruction (ASiR)-V, and all three levels of DLIR (TrueFidelity; GE Healthcare). Each image set group was divided into four subgroups according to the patients¡¯ ages. Clinical and dose-related data were reviewed.
Quantitative parameters, including the signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR), and qualitative parameters, including noise, gray matter-white matter (GM-WM) differentiation, sharpness, artifact, acceptability, and unfamiliar texture change were evaluated and compared.

Results The SNR and CNR of each level in each age group increased among strength levels of DLIR. Highlevel DLIR showed a significantly improved SNR and CNR (p < 0.05). Sequential reduction of noise, improvement of GM-WM differentiation, and improvement of sharpness was noted among strength levels of DLIR. Those of high-level DLIR showed a similar value as that with ASiR-V. Artifact and acceptability did not show a significant difference among the adapted levels of DLIR.

Conclusion Adaptation of high-level DLIR for the pediatric head CT can significantly reduce image noise. Modification is needed while processing artifacts.
KEYWORD
Brain, Children, Computed Tomography, X-Ray, Image Quality Enhancement, Deep Learning, Image Processing, Computer-Assisted
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