Sofue Keitaro, Ueno Yoshiko, Yabe Shinji, Ueshima Eisuke, Yamaguchi Takeru, Masuda Atsuhiro, Sakai Arata, Toyama Hirochika, Fukumoto Takumi, Hori Masatoshi, Murakami Takamichi
Department of Radiology, Kobe University Graduate School of Medicine, 7-5-2, Kusunoki-Cho, Chuo-Ku, Kobe, 650-0017, Japan.
Division of Gastroenterology, Department of Internal Medicine, Kobe University Graduate School of Medicine, Kobe, Japan.
Jpn J Radiol. 2025 May 30. doi: 10.1007/s11604-025-01804-7.
This study aimed to evaluate the image quality and clinical utility of a deep learning reconstruction (DLR) algorithm in ultra-high-resolution computed tomography (UHR-CT) for the diagnosis of pancreatic cystic neoplasms (PCNs).
This retrospective study included 45 patients with PCNs between March 2020 and February 2022. Contrast-enhanced UHR-CT images were obtained and reconstructed using DLR and hybrid iterative reconstruction (IR). Image noise and contrast-to-noise ratio (CNR) were measured. Two radiologists assessed the diagnostic performance of the imaging findings associated with PCNs using a 5-point Likert scale. The diagnostic performance metrics, including sensitivity, specificity, and area under the receiver operating characteristic curve (AUROC), were calculated. Quantitative and qualitative features were compared between CT with DLR and hybrid IR. Interobserver agreement for qualitative assessments was also analyzed.
DLR significantly reduced image noise and increased CNR compared to hybrid IR for all objects (p < 0.001). Radiologists rated DLR images as superior in overall quality, lesion delineation, and vessel conspicuity (p < 0.001). DLR produced higher AUROC values for diagnostic imaging findings (ductal communication: 0.887‒0.938 vs. 0.816‒0.827 and enhanced mural nodule: 0.843‒0.916 vs. 0.785‒0.801), although DLR did not directly improve sensitivity, specificity, and accuracy. Interobserver agreement for qualitative assessments was higher in CT with DLR (κ = 0.69‒0.82 vs. 0.57‒0.73).
DLR improved image quality and diagnostic performance by effectively reducing image noise and improving lesion conspicuity in the diagnosis of PCNs on UHR-CT. The DLR demonstrated greater diagnostic confidence for the assessment of imaging findings associated with PCNs.
本研究旨在评估深度学习重建(DLR)算法在超高分辨率计算机断层扫描(UHR-CT)中对胰腺囊性肿瘤(PCNs)诊断的图像质量和临床效用。
这项回顾性研究纳入了2020年3月至2022年2月期间的45例PCNs患者。获取对比增强的UHR-CT图像,并使用DLR和混合迭代重建(IR)进行重建。测量图像噪声和对比噪声比(CNR)。两名放射科医生使用5分李克特量表评估与PCNs相关的影像表现的诊断性能。计算诊断性能指标,包括敏感性、特异性和受试者工作特征曲线下面积(AUROC)。比较DLR CT和混合IR CT之间的定量和定性特征。还分析了定性评估的观察者间一致性。
与混合IR相比,DLR显著降低了所有物体的图像噪声并提高了CNR(p < 0.001)。放射科医生将DLR图像的整体质量、病变轮廓和血管清晰度评为更优(p < 0.001)。尽管DLR没有直接提高敏感性、特异性和准确性,但对于诊断性影像表现,DLR产生了更高的AUROC值(导管相通:0.887‒0.938对0.816‒0.827;强化壁结节:0.843‒0.916对0.785‒0.801)。DLR CT定性评估的观察者间一致性更高(κ = 0.69‒0.82对0.57‒0.73)。
在UHR-CT对PCNs的诊断中,DLR通过有效降低图像噪声和提高病变清晰度,改善了图像质量和诊断性能。DLR对与PCNs相关的影像表现评估显示出更高的诊断信心。