基于强化机器学习的相衬增强磁共振血管造影主动脉解剖标志检测

M. M. Córdova, A. Guala, X. Morales, G. Jiménez-Pérez, L. Dux-Santoy, A. Ruiz-Muñoz, G. Teixidó-Tura, I. Ferreira, A. Evangelista, J. Rodríguez-Palomares, O. Camara
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引用次数: 0

摘要

资金来源类型:公共拨款-仅限国家预算。主要资助来源:西班牙科学、创新和大学部;La Marató de TV3医学影像数据自动分析可以通过减少分析时间和提高再现性来提高其临床效果。许多医学成像数据,如4d流磁共振成像(MRI),通常是区域量化的,这意味着需要解剖地标识别来定位提取数据中的对应关系,并在患者之间进行比较。机器学习(ML)技术具有医学成像自动分析的潜力。相衬增强磁共振血管造影(PC-MRA)是一类不需要使用造影剂的血管造影。我们的目的是测试机器学习算法是否可以被训练来识别PC-MRA图像上的关键解剖心血管标志,并将其性能与人类进行比较。323张主动脉PC-MRA手工标注了4个标志的位置:窦小管交界处、肺动脉分叉和第一、第三主动脉上血管(图1),通常用于分区域主动脉的分离。纳入训练数据集的患者包括健康志愿者(40人)、二尖瓣主动脉瓣膜患者(141人)、退行性主动脉疾病患者(60人)和遗传引发的主动脉疾病患者(82人),所有患者此前均未接受过主动脉手术,并有主动脉瓣膜。使用PC-MRA图像和手动注释来训练DQN,这是一种将q学习与深度神经网络相结合的强化学习算法。智能体可以导航图像,并通过遵循训练过程中学习的策略来最佳地找到地标。来自30名患者的数据,根据主动脉状况作为训练集分布,在训练阶段未被算法看到,用于量化观察者内部的可重复性并评估ML算法的性能。点间距离作为比较度量,原始人为注释作为基础真值,重复测量方差分析用于统计检验。人类和机器学习进行同样的识别sinotubular结(点之间的距离为11.0±8.1和11.1±8.6毫米,分别p = 0.949)和第一(6.6±3.9和6.8±5.6毫米,p = 0.886)和第三(6.8±4.0和8.4±7.4毫米,p = 0.161) supra-aortic血管分支但是人类注释优于ML里程碑式的检测识别的肺动脉分叉(10.2±7.0和15.2±13.1毫米,p = 0.008)。在标准计算机上,机器学习标记检测的计算时间在0.8到1.6秒之间,而人类注释大约需要两分钟。基于ml的相衬增强磁共振血管造影主动脉标志检测方法可行,快速,性能与人类相似。强化学习解剖地标识别解锁各种区域主动脉数据的自动提取,包括复杂的四维血流参数。抽象的图
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement machine learning-based aortic anatomical landmarks detection from phase-contrast enhanced magnetic resonance angiography
Type of funding sources: Public grant(s) – National budget only. Main funding source(s): Spanish Ministry of Science, Innovation and Universities; La Marató de TV3 Automatic analysis of medical imaging data may improve their clinical impact by reducing analysis time and improving reproducibility. Many medical imaging data, like 4D-flow magnetic resonance imaging (MRI), are often quantified regionally, implying the need for anatomical landmark identification to locate correspondences in the extracted data and compare among patients. Machine learning (ML) techniques hold potential for automatic analysis of medical imaging. Phase-contrast enhanced magnetic resonance angiography (PC-MRA) is a class of angiograms not requiring the administration of contrast agents. We aimed to test whether a machine learning algorithm can be trained to identify key anatomical cardiovascular landmarks on PC-MRA images and compare its performance with humans. Three-hundred twenty-three aortic PC-MRA were manually annotated with the location of 4 landmarks: sinotubular junction, pulmonary artery bifurcation and first and third supra-aortic vessels (Figure 1), often used to separate the aorta in sub-regions. Patients included in the training dataset comprised healthy volunteers (40), bicuspid aortic valve patients (141), patients with degenerative aortic disease (60) and patients with genetically-triggered aortic disease (82), all without previous aortic surgery and with native aortic valve. PC-MRA images and manual annotations were used to train a DQN, a reinforcement learning algorithm that combines Q-learning with deep neural networks. The agents can navigate the images and optimally find the landmarks by following the policies learned during training. Data from thirty patients, distributed in terms of aortic condition as the training set, unseen by the algorithm in the training phase, were used to quantify intra-observer reproducibility and to assess ML algorithm performance. Distance between points was used as metric for comparisons, original human annotation was used as ground-truth and repeated-measures ANOVA was used for statistical testing. Human and machine learning performed similarly in the identification of the sinotubular junction (distance between points of 11.0 ± 8.1 vs. 11.1 ± 8.6 mm, respectively, p = 0.949) and first (6.6 ± 3.9 vs. 6.8 ± 5.6 mm, p = 0.886) and third (6.8 ± 4.0 vs. 8.4 ± 7.4 mm, p = 0.161) supra-aortic vessels branches but human annotation outperformed ML landmark detection in the identification of the pulmonary artery bifurcation (10.2 ± 7.0 vs. 15.2 ± 13.1 mm, p = 0.008). Computation time for landmark detection by ML was between 0.8 and 1.6 seconds on a standard computer while human annotation took approximatively two minutes. ML-based aortic landmarks detection from phase-contrast enhanced magnetic resonance angiography is feasible and fast and performs similarly to human. Reinforced learning anatomical landmark identification unlock automatic extraction of a variety of regional aortic data, including complex 4D flow parameters. Abstract Figure
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来源期刊
European Journal of Echocardiography
European Journal of Echocardiography 医学-心血管系统
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