Deep Learning Reconstruction Plus Single-Energy Metal Artifact Reduction for Supra Hyoid Neck CT in Patients With Dental Metals

Author:

Mizuki Masumi1ORCID,Yasaka Koichiro1ORCID,Miyo Rintaro1,Ohtake Yuta1ORCID,Hamada Akiyoshi1,Hosoi Reina1,Abe Osamu1ORCID

Affiliation:

1. Department of Radiology, The University of Tokyo Hospital, Bunkyo-ku, Tokyo, Japan

Abstract

Purpose: We investigated the effect of deep learning reconstruction (DLR) plus single-energy metal artifact reduction (SEMAR) on neck CT in patients with dental metals, comparing it with DLR and with hybrid iterative reconstruction (Hybrid IR)–SEMAR. Methods: In this retrospective study, 32 patients (25 men, 7 women; mean age: 63 ± 15 years) with dental metals underwent contrast-enhanced CT of the oral and oropharyngeal regions. Axial images were reconstructed using DLR, Hybrid IR–SEMAR, and DLR-SEMAR. In quantitative analyses, degrees of image noise and artifacts were evaluated. In one-by-one qualitative analyses, 2 radiologists evaluated metal artifacts, the depiction of structures, and noise on five-point scales. In side-by-side qualitative analyses, artifacts and overall image quality were evaluated by comparing Hybrid IR–SEMAR with DLR-SEMAR. Results: Artifacts were significantly less with DLR-SEMAR than with DLR in quantitative ( P < .001) and one-by-one qualitative ( P < .001) analyses, which resulted in significantly better depiction of most structures ( P < .004). Artifacts in side-by-side analysis and image noise in quantitative and one-by-one qualitative analyses ( P < .001) were significantly less with DLR-SEMAR than with Hybrid IR–SEMAR, resulting in significantly better overall quality of DLR-SEMAR. Conclusions: Compared with DLR and Hybrid IR–SEMAR, DLR-SEMAR provided significantly better supra hyoid neck CT images in patients with dental metals.

Funder

Japan Society for the Promotion of Science

Publisher

SAGE Publications

Subject

Radiology, Nuclear Medicine and imaging,General Medicine

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