Deep Learning-Based Contrast Boosting in Low-Contrast Media Pre-TAVR CT Imaging.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Jeaneun Park, Jung Im Jung, Kyunghwa Han, Suyon Chang
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引用次数: 0

Abstract

Purpose: This study investigates the impact of deep learning-based contrast boosting (DL-CB) on image quality and measurement reliability in low-contrast media (low-CM) CT for pre-transcatheter aortic valve replacement (TAVR) assessment. Methods: This retrospective study included TAVR candidates with renal dysfunction who underwent low-CM (30-mL: 15-mL bolus of contrast followed by 50-mL of 30% iomeprol solution) pre-TAVR CT between April and December 2023, along with matched standard-CM controls (n = 68). Low-CM images were reconstructed as conventional, 50-keV, and DL-CB images. Qualitative and quantitative image quality were compared among image sets. The aortic annulus was measured by 2 independent readers on low-CM CT images, and interobserver reliability was assessed. Results: DL-CB significantly improved contrast-to-noise ratio (CNR) and signal-to-noise ratio (SNR) compared to conventional and 50-keV images (CNR: 12.5-13.4, 18-19.8, and 21.9-24; SNR: 10.8-15.5, 10.7-15.5, and 16.8-26.7 on conventional, 50-keV, and DL-CB images, respectively; P < .001). DL-CB achieved comparable CNR (21.9-24 vs 27-27.7, P = .39-.61) and comparable to slightly higher SNR (16.8-26.7 vs 15.7-20.2, P = .003-.80) to standard-CM images. For aortic annular measurement, DL-CB demonstrated high interobserver reliability, with an intraclass correlation coefficient (ICC) of .96 and small mean differences (area: 0.01 cm², limits of agreement [LoA]: -0.52 to 0.55 cm²; perimeter: 0.02 mm, LoA: -4.49 to 4.53 mm). Conclusions: DL-CB improves image quality and provides high measurement reliability in low-CM CT for pre-TAVR assessment in patients with renal dysfunction, without requiring dual-energy CT.

基于深度学习的低对比度介质tavr前CT成像对比度增强。
目的:本研究探讨基于深度学习的对比度增强(DL-CB)对经导管前主动脉瓣置换术(TAVR)评估中低对比度介质(low-CM) CT图像质量和测量可靠性的影响。方法:这项回顾性研究纳入了2023年4月至12月期间接受低cm (30 ml: 15 ml造影剂,然后50 ml 30%异丙醇溶液)TAVR术前CT治疗的肾功能不全的TAVR候选患者,以及匹配的标准cm对照(n = 68)。将低cm图像重建为常规图像、50 kev图像和DL-CB图像。在图像集之间比较定性和定量图像质量。主动脉环由2个独立的阅读器在低cm CT图像上测量,并评估观察者间的可靠性。结果:与传统图像和50 kev图像相比,DL-CB显著提高了图像的噪比(CNR)和信噪比(SNR) (CNR: 12.5-13.4、18-19.8和21.9-24;在常规图像、50 kev图像和DL-CB图像上,信噪比分别为10.8-15.5、10.7-15.5和16.8-26.7;P < 0.001)。DL-CB与标准cm图像的CNR相当(21.9-24 vs 27-27.7, P = 0.39 - 0.61),信噪比略高(16.8-26.7 vs 15.7-20.2, P = 0.003 - 0.80)。对于主动脉环测量,DL-CB显示出较高的观察者间信度,类内相关系数(ICC)为0.96,平均差异较小(面积:0.01 cm²,一致限[LoA]: -0.52至0.55 cm²;周长:0.02毫米,LoA: -4.49至4.53毫米)。结论:DL-CB改善了低cm CT对肾功能不全患者tavr前评估的图像质量,提供了较高的测量可靠性,无需双能CT。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.20
自引率
12.90%
发文量
98
审稿时长
6-12 weeks
期刊介绍: The Canadian Association of Radiologists Journal is a peer-reviewed, Medline-indexed publication that presents a broad scientific review of radiology in Canada. The Journal covers such topics as abdominal imaging, cardiovascular radiology, computed tomography, continuing professional development, education and training, gastrointestinal radiology, health policy and practice, magnetic resonance imaging, musculoskeletal radiology, neuroradiology, nuclear medicine, pediatric radiology, radiology history, radiology practice guidelines and advisories, thoracic and cardiac imaging, trauma and emergency room imaging, ultrasonography, and vascular and interventional radiology. Article types considered for publication include original research articles, critically appraised topics, review articles, guest editorials, pictorial essays, technical notes, and letter to the Editor.
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