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基于非对比 CT 的心脏外膜和胸腔脂肪组织定量的深度学习。

Deep Learning for Quantification of Epicardial and Thoracic Adipose Tissue From Non-Contrast CT.

出版信息

IEEE Trans Med Imaging. 2018 Aug;37(8):1835-1846. doi: 10.1109/TMI.2018.2804799. Epub 2018 Feb 9.

Abstract

Epicardial adipose tissue (EAT) is a visceral fat deposit related to coronary artery disease. Fully automated quantification of EAT volume in clinical routine could be a timesaving and reliable tool for cardiovascular risk assessment. We propose a new fully automated deep learning framework for EAT and thoracic adipose tissue (TAT) quantification from non-contrast coronary artery calcium computed tomography (CT) scans. The first multi-task convolutional neural network (ConvNet) is used to determine heart limits and perform segmentation of heart and adipose tissues. The second ConvNet, combined with a statistical shape model, allows for pericardium detection. EAT and TAT segmentations are then obtained from outputs of both ConvNets. We evaluate the performance of the method on CT data sets from 250 asymptomatic individuals. Strong agreement between automatic and expert manual quantification is obtained for both EAT and TAT with median Dice score coefficients of 0.823 (inter-quartile range (IQR): 0.779-0.860) and 0.905 (IQR: 0.862-0.928), respectively; with excellent correlations of 0.924 and 0.945 for EAT and TAT volumes. Computations are performed in <6 s on a standard personal computer for one CT scan. Therefore, the proposed method represents a tool for rapid fully automated quantification of adipose tissue and may improve cardiovascular risk stratification in patients referred for routine CT calcium scans.

摘要

心外膜脂肪组织 (EAT) 是一种与冠状动脉疾病相关的内脏脂肪沉积。在临床常规中,全自动量化 EAT 体积可能是一种节省时间且可靠的心血管风险评估工具。我们提出了一种新的全自动深度学习框架,用于从非对比冠状动脉钙 CT 扫描中量化 EAT 和胸脂肪组织 (TAT)。第一个多任务卷积神经网络 (ConvNet) 用于确定心脏边界,并对心脏和脂肪组织进行分割。第二个 ConvNet 与统计形状模型相结合,允许检测心包。然后从两个 ConvNet 的输出中获得 EAT 和 TAT 的分割。我们在来自 250 名无症状个体的 CT 数据集上评估了该方法的性能。自动和专家手动量化之间获得了 EAT 和 TAT 的强烈一致性,Dice 得分系数的中位数分别为 0.823(四分位距 (IQR):0.779-0.860)和 0.905(IQR:0.862-0.928);EAT 和 TAT 体积的相关性分别为 0.924 和 0.945。对于一个 CT 扫描,在标准个人计算机上的计算时间不到 6 秒。因此,该方法代表了一种用于快速全自动量化脂肪组织的工具,并且可能会改善因常规 CT 钙扫描而就诊的患者的心血管风险分层。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/71c7/6076348/223198edde0f/nihms943682f1.jpg

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