Deep Learning-Based Automated Labeling of Coronary Segments for Structured Reporting of Coronary Computed Tomography Angiography in Accordance With Society of Cardiovascular Computed Tomography Guidelines.

IF 2 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Thoracic Imaging Pub Date : 2024-03-01 Epub Date: 2023-10-11 DOI:10.1097/RTI.0000000000000753
Verena Brandt, Andreas Fischer, Uwe Joseph Schoepf, Raffi Bekeredjian, Christian Tesche, Gilberto J Aquino, Jim O'Doherty, Puneet Sharma, Mehmet A Gülsün, Paul Klein, Asik Ali, William Evans Few, Tilman Emrich, Akos Varga-Szemes, Josua A Decker
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引用次数: 0

Abstract

Purpose: To evaluate a novel deep learning (DL)-based automated coronary labeling approach for structured reporting of coronary artery disease according to the guidelines of the Society of Cardiovascular Computed Tomography (CT) on coronary CT angiography (CCTA).

Patients and methods: A retrospective cohort of 104 patients (60.3 ± 10.7 y, 61% males) who had undergone prospectively electrocardiogram-synchronized CCTA were included. Coronary centerlines were automatically extracted, labeled, and validated by 2 expert readers according to Society of Cardiovascular CT guidelines. The DL algorithm was trained on 706 radiologist-annotated cases for the task of automatically labeling coronary artery centerlines. The architecture leverages tree-structured long short-term memory recurrent neural networks to capture the full topological information of the coronary trees by using a two-step approach: a bottom-up encoding step, followed by a top-down decoding step. The first module encodes each sub-tree into fixed-sized vector representations. The decoding module then selectively attends to the aggregated global context to perform the local assignation of labels. To assess the performance of the software, percentage overlap was calculated between the labels of the algorithm and the expert readers.

Results: A total number of 1491 segments were identified. The artificial intelligence-based software approach yielded an average overlap of 94.4% compared with the expert readers' labels ranging from 87.1% for the posterior descending artery of the right coronary artery to 100% for the proximal segment of the right coronary artery. The average computational time was 0.5 seconds per case. The interreader overlap was 96.6%.

Conclusions: The presented fully automated DL-based coronary artery labeling algorithm provides fast and precise labeling of the coronary artery segments bearing the potential to improve automated structured reporting for CCTA.

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根据心血管计算机断层扫描学会指南,基于深度学习的冠状动脉段自动标记用于冠状动脉计算机断层扫描血管造影的结构化报告。
目的:根据心血管计算机断层扫描学会(CT)关于冠状动脉CT血管造影术(CCTA)的指南,评估一种新的基于深度学习(DL)的自动冠状动脉标记方法,用于结构化报告冠状动脉疾病。患者和方法:一个由104名患者(60.3±10.7岁,61%男性)组成的回顾性队列包括心电图同步CCTA。根据心血管CT学会指南,由2名专家读者自动提取、标记和验证冠状动脉中心线。DL算法在706个放射科医生注释的病例上进行了训练,用于自动标记冠状动脉中心线。该架构利用树结构的长短期记忆递归神经网络,通过使用两步方法来捕获冠状动脉树的完整拓扑信息:自下而上的编码步骤,然后是自上而下的解码步骤。第一模块将每个子树编码为固定大小的向量表示。解码模块然后选择性地关注聚合的全局上下文以执行标签的本地分配。为了评估软件的性能,计算了算法标签和专家读者之间的重叠百分比。结果:共鉴定出1491个片段。与专家读者的标签相比,基于人工智能的软件方法产生了94.4%的平均重叠,从右冠状动脉后降支的87.1%到右冠状动脉近端的100%。平均计算时间为每种情况0.5秒。标题间重叠为96.6%。结论:所提出的基于DL的全自动冠状动脉标记算法提供了对冠状动脉节段的快速精确标记,有可能改进CCTA的自动化结构化报告。
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来源期刊
Journal of Thoracic Imaging
Journal of Thoracic Imaging 医学-核医学
CiteScore
7.10
自引率
9.10%
发文量
87
审稿时长
6-12 weeks
期刊介绍: Journal of Thoracic Imaging (JTI) provides authoritative information on all aspects of the use of imaging techniques in the diagnosis of cardiac and pulmonary diseases. Original articles and analytical reviews published in this timely journal provide the very latest thinking of leading experts concerning the use of chest radiography, computed tomography, magnetic resonance imaging, positron emission tomography, ultrasound, and all other promising imaging techniques in cardiopulmonary radiology. Official Journal of the Society of Thoracic Radiology: Japanese Society of Thoracic Radiology Korean Society of Thoracic Radiology European Society of Thoracic Imaging.
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