Thomas M Vollbrecht, Christopher Hart, Christoph Katemann, Alexander Isaak, Marilia B Voigt, Claus C Pieper, Daniel Kuetting, Annegret Geipel, Brigitte Strizek, Julian A Luetkens
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Low-resolution cine data was subsequently reconstructed using a deep learning super-resolution framework (cine<sub>DL</sub>). Acquisition times, apparent signal-to-noise ratio, contrast-to-noise ratio, and edge rise distance were assessed. Volumetry and functional analysis were performed. Qualitative image scores were rated on a 5-point Likert scale. Cardiovascular structures and pathological findings visible in cine<sub>DL</sub> images only were assessed. Statistical analysis included the Student paired <i>t</i> test and the Wilcoxon test.</p><p><strong>Results: </strong>A total of 42 participants were included (median gestational age, 35.9 weeks [interquartile range (IQR), 35.1-36.4]). Cine<sub>DL</sub> acquisition was faster than cine images acquired at normal resolution (134±9.6 s versus 252±8.8 s; <i>P</i><0.001). Quantitative image quality metrics and image quality scores for cine<sub>DL</sub> were higher or comparable with those of cine images acquired at normal-resolution images (eg, fetal motion, 4.0 [IQR, 4.0-5.0] versus 4.0 [IQR, 3.0-4.0]; <i>P</i><0.001). Nonpatient-related artifacts (eg, backfolding) were more pronounced in Cine<sub>DL</sub> compared with cine images acquired at normal-resolution images (4.0 [IQR, 4.0-5.0] versus 5.0 [IQR, 3.0-4.0]; <i>P</i><0.001). Volumetry and functional results were comparable. Cine<sub>DL</sub> revealed additional structures in 10 of 42 fetuses (24%) and additional pathologies in 5 of 42 fetuses (12%), including partial anomalous pulmonary venous connection.</p><p><strong>Conclusions: </strong>Deep learning super-resolution reconstructions of low-resolution acquisitions shorten acquisition times and achieve diagnostic quality comparable with standard images, while being less sensitive to fetal bulk movements, leading to additional diagnostic findings. 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引用次数: 0
摘要
背景:胎儿心血管磁共振是一种新兴的产前先天性心脏病评估工具,但较长的获取时间和胎儿运动限制了其临床应用。本研究评估了深度学习超分辨率重建用于快速获得的低分辨率胎儿心血管磁共振的临床应用。方法:这项前瞻性研究纳入了患有胎儿先天性心脏病的孕妇,在妊娠晚期接受了胎儿心血管磁共振,并获得了正常分辨率和低分辨率的轴向电影图像。随后使用深度学习超分辨率框架(cineDL)重建低分辨率电影数据。评估了采集时间、表观信噪比、对比噪声比和边缘上升距离。进行体积测定和功能分析。定性图像评分是5分李克特量表。评估仅在cineDL图像上可见的心血管结构和病理表现。统计分析采用Student配对t检验和Wilcoxon检验。结果:共纳入42例受试者(中位胎龄,35.9周[四分位数间距(IQR), 35.1-36.4])。CineDL的采集速度比正常分辨率下的电影图像采集速度快(134±9.6 s vs 252±8.8 s);PDL高于或与正常分辨率下获得的电影图像相当(例如,胎儿运动,4.0 [IQR, 4.0-5.0] vs . 4.0 [IQR, 3.0-4.0];PDL与正常分辨率下获得的电影图像的比较(4.0 [IQR, 4.0-5.0]与5.0 [IQR, 3.0-4.0]);PDL在42个胎儿中发现了10个(24%)额外的结构,在42个胎儿中发现了5个(12%)额外的病理,包括部分肺静脉连接异常。结论:低分辨率图像的深度学习超分辨率重建缩短了采集时间,达到了与标准图像相当的诊断质量,同时对胎儿体积运动不太敏感,导致了额外的诊断结果。因此,深度学习超分辨率可以提高胎儿心血管磁共振在先天性心脏病产前准确评估中的临床应用。
Improving Clinical Utility of Fetal Cine CMR Using Deep Learning Super-Resolution.
Background: Fetal cardiovascular magnetic resonance is an emerging tool for prenatal congenital heart disease assessment, but long acquisition times and fetal movements limit its clinical use. This study evaluates the clinical utility of deep learning super-resolution reconstructions for rapidly acquired, low-resolution fetal cardiovascular magnetic resonance.
Methods: This prospective study included participants with fetal congenital heart disease undergoing fetal cardiovascular magnetic resonance in the third trimester of pregnancy, with axial cine images acquired at normal resolution and low resolution. Low-resolution cine data was subsequently reconstructed using a deep learning super-resolution framework (cineDL). Acquisition times, apparent signal-to-noise ratio, contrast-to-noise ratio, and edge rise distance were assessed. Volumetry and functional analysis were performed. Qualitative image scores were rated on a 5-point Likert scale. Cardiovascular structures and pathological findings visible in cineDL images only were assessed. Statistical analysis included the Student paired t test and the Wilcoxon test.
Results: A total of 42 participants were included (median gestational age, 35.9 weeks [interquartile range (IQR), 35.1-36.4]). CineDL acquisition was faster than cine images acquired at normal resolution (134±9.6 s versus 252±8.8 s; P<0.001). Quantitative image quality metrics and image quality scores for cineDL were higher or comparable with those of cine images acquired at normal-resolution images (eg, fetal motion, 4.0 [IQR, 4.0-5.0] versus 4.0 [IQR, 3.0-4.0]; P<0.001). Nonpatient-related artifacts (eg, backfolding) were more pronounced in CineDL compared with cine images acquired at normal-resolution images (4.0 [IQR, 4.0-5.0] versus 5.0 [IQR, 3.0-4.0]; P<0.001). Volumetry and functional results were comparable. CineDL revealed additional structures in 10 of 42 fetuses (24%) and additional pathologies in 5 of 42 fetuses (12%), including partial anomalous pulmonary venous connection.
Conclusions: Deep learning super-resolution reconstructions of low-resolution acquisitions shorten acquisition times and achieve diagnostic quality comparable with standard images, while being less sensitive to fetal bulk movements, leading to additional diagnostic findings. Therefore, deep learning super-resolution may improve the clinical utility of fetal cardiovascular magnetic resonance for accurate prenatal assessment of congenital heart disease.
期刊介绍:
Circulation: Cardiovascular Imaging, an American Heart Association journal, publishes high-quality, patient-centric articles focusing on observational studies, clinical trials, and advances in applied (translational) research. The journal features innovative, multimodality approaches to the diagnosis and risk stratification of cardiovascular disease. Modalities covered include echocardiography, cardiac computed tomography, cardiac magnetic resonance imaging and spectroscopy, magnetic resonance angiography, cardiac positron emission tomography, noninvasive assessment of vascular and endothelial function, radionuclide imaging, molecular imaging, and others.
Article types considered by Circulation: Cardiovascular Imaging include Original Research, Research Letters, Advances in Cardiovascular Imaging, Clinical Implications of Molecular Imaging Research, How to Use Imaging, Translating Novel Imaging Technologies into Clinical Applications, and Cardiovascular Images.