Automatic Aortic Valve Extraction Using Deep Learning with Contrast-Enhanced Cardiac CT Images.

IF 2.3 4区 医学 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS Journal of Cardiovascular Development and Disease Pub Date : 2024-12-25 DOI:10.3390/jcdd12010003
Soichiro Inomata, Takaaki Yoshimura, Minghui Tang, Shota Ichikawa, Hiroyuki Sugimori
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Abstract

Purpose: This study evaluates the use of deep learning techniques to automatically extract and delineate the aortic valve annulus region from contrast-enhanced cardiac CT images. Two approaches, namely, segmentation and object detection, were compared to determine their accuracy.

Materials and methods: A dataset of 32 contrast-enhanced cardiac CT scans was analyzed. The segmentation approach utilized the DeepLabv3+ model, while the object detection approach employed YOLOv2. The dataset was augmented through rotation and scaling, and five-fold cross-validation was applied. The accuracy of both methods was evaluated using the Dice similarity coefficient (DSC), and their performance in estimating the aortic valve annulus area was compared.

Results: The object detection approach achieved a mean DSC of 0.809, significantly outperforming the segmentation approach, which had a mean DSC of 0.711. Object detection also demonstrated higher precision and recall, with fewer false positives and negatives. The aortic valve annulus area estimation had a mean error of 2.55 mm.

Conclusions: Object detection showed superior performance in identifying the aortic valve annulus region, suggesting its potential for clinical application in cardiac imaging. The results highlight the promise of deep learning in improving the accuracy and efficiency of preoperative planning for cardiovascular interventions.

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基于增强心脏CT图像的深度学习自动主动脉瓣提取。
目的:本研究评估使用深度学习技术从增强心脏CT图像中自动提取和描绘主动脉瓣环区域。比较了两种方法,即分割和目标检测,以确定它们的准确性。材料和方法:对32张增强心脏CT扫描数据集进行分析。分割方法采用DeepLabv3+模型,目标检测方法采用YOLOv2模型。通过旋转和缩放增强数据集,并采用五重交叉验证。采用Dice相似系数(DSC)评价两种方法的准确性,并比较两种方法在估计主动脉瓣环面积方面的性能。结果:目标检测方法的平均DSC为0.809,显著优于分割方法的平均DSC为0.711。物体检测也显示出更高的准确率和召回率,假阳性和假阴性更少。结论:物体检测在主动脉瓣环区域的识别上有较好的效果,提示其在心脏影像学中的临床应用潜力。结果强调了深度学习在提高心血管干预术前计划的准确性和效率方面的前景。
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来源期刊
Journal of Cardiovascular Development and Disease
Journal of Cardiovascular Development and Disease CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
2.60
自引率
12.50%
发文量
381
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