Abstract

PurposeTo evaluate the utility of deep learning-based image reconstruction (DLIR) algorithm in unenhanced abdominal low-dose CT (LDCT).Materials and methodsTwo patient groups were included in this prospective study: 58 consecutive patients who underwent unenhanced abdominal standard-dose CT reconstructed with hybrid iterative reconstruction (SDCT group) and 48 consecutive patients who underwent unenhanced abdominal LDCT reconstructed with high strength level of DLIR (LDCT group). The background noise and signal-to-noise ratio (SNR) of the liver, pancreas, spleen, kidney, abdominal aorta, inferior vena cava, and portal vein were calculated. Two radiologists qualitatively assessed the overall image noise, overall image quality, and abdominal anatomical structures depiction. Quantitative and qualitative parameters and size-specific dose estimates (SSDE) were compared between SDCT and LDCT groups.ResultsThe background noise was lower in LDCT group than in SDCT group (P = 0.02). SNRs were higher in LDCT group than in SDCT group (P < 0.001–0.004) except for the liver. Overall image noise was superior in LDCT group than in SDCT group (P < 0.001). Overall image quality was not different between SDCT and LDCT groups (P = 0.25–0.26). Depiction of almost all abdominal anatomical structures was equal to or better in LDCT group than in SDCT group (P < 0.001–0.88). The SSDE was lower in LDCT group (4.0 mGy) than in SDCT group (20.6 mGy) (P < 0.001).ConclusionsDLIR facilitates substantial radiation dose reduction of > 75% and significantly reduces background noise. DLIR can maintain image quality and anatomical structure depiction in unenhanced abdominal LDCT.

Highlights

  • Unenhanced computed tomography (CT) has become indispensable in modern medicine in applications such as screening and diagnosis of acute diseases, assessmentImage reconstruction techniques for the acquisition of CT images have been remarkably evolved in recent years [4]

  • The noise power spectrum (NPS) curve analysis showed similar spatial frequency profile between low-dose CT (LDCT) protocol reconstructed with high strength level of deep learning-based image reconstruction (DLIR) and standard-dose CT (SDCT) protocol reconstructed with adaptive statistical iteration reconstruction-Veo (ASiR-V) of 40%, but the NPS value was higher in LDCT protocol reconstructed with high strength level of DLIR than in SDCT protocol reconstructed with ASiR-V of 40%. ­MTF10% values were 0.65 in LDCT reconstructed with high strength level of DLIR and 0.65 in SDCT reconstructed with ASiR-V of

  • The NPS value was higher in LDCT protocol reconstructed with DLIR algorithm than SDCT protocol reconstructed with ASiR-V of 40%

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Summary

Introduction

Unenhanced computed tomography (CT) has become indispensable in modern medicine in applications such as screening and diagnosis of acute diseases, assessmentImage reconstruction techniques for the acquisition of CT images have been remarkably evolved in recent years [4]. LDCT images reconstructed with hybrid-IR were inferior to standard-dose CT (SDCT) images reconstructed with FBP in terms of detectability of low-contrast lesions and spatial resolution [6–9]. Noda et al [12, 13] have reported the impact of DLIR on whole-body and abdominal contrast-enhanced LDCT protocols, and achieved extremely low radiation dose (2.9 mGy and 2.3 mGy in CT dose-index volumes [­CTDIvol]), while maintaining effective image quality and lesion detectability. Jensen et al [14] reported that contrast-enhanced LDCT reconstructed with DLIR achieve 65% radiation dose reduction and while maintaining the detectability of liver lesions compared to SDCT reconstructed with FBP. In this study, we aim to evaluate the usefulness of the DLIR technique in unenhanced abdominal LDCT protocol for the assessment of image quality and to compare with SDCT reconstructed using hybrid-IR technique

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