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基于深度学习的心脏 CT 血管造影图像中多种心血管结构的自动分割。

Automatic segmentation of multiple cardiovascular structures from cardiac computed tomography angiography images using deep learning.

机构信息

Dalio Institute of Cardiovascular Imaging, Weill Cornell Medicine, New York, New York, United States of America.

Department of Radiology, New York-Presbyterian Hospital and Weill Cornell Medicine, New York, New York, United States of America.

出版信息

PLoS One. 2020 May 6;15(5):e0232573. doi: 10.1371/journal.pone.0232573. eCollection 2020.

Abstract

OBJECTIVES

To develop, demonstrate and evaluate an automated deep learning method for multiple cardiovascular structure segmentation.

BACKGROUND

Segmentation of cardiovascular images is resource-intensive. We design an automated deep learning method for the segmentation of multiple structures from Coronary Computed Tomography Angiography (CCTA) images.

METHODS

Images from a multicenter registry of patients that underwent clinically-indicated CCTA were used. The proximal ascending and descending aorta (PAA, DA), superior and inferior vena cavae (SVC, IVC), pulmonary artery (PA), coronary sinus (CS), right ventricular wall (RVW) and left atrial wall (LAW) were annotated as ground truth. The U-net-derived deep learning model was trained, validated and tested in a 70:20:10 split.

RESULTS

The dataset comprised 206 patients, with 5.130 billion pixels. Mean age was 59.9 ± 9.4 yrs., and was 42.7% female. An overall median Dice score of 0.820 (0.782, 0.843) was achieved. Median Dice scores for PAA, DA, SVC, IVC, PA, CS, RVW and LAW were 0.969 (0.979, 0.988), 0.953 (0.955, 0.983), 0.937 (0.934, 0.965), 0.903 (0.897, 0.948), 0.775 (0.724, 0.925), 0.720 (0.642, 0.809), 0.685 (0.631, 0.761) and 0.625 (0.596, 0.749) respectively. Apart from the CS, there were no significant differences in performance between sexes or age groups.

CONCLUSIONS

An automated deep learning model demonstrated segmentation of multiple cardiovascular structures from CCTA images with reasonable overall accuracy when evaluated on a pixel level.

摘要

目的

开发、验证并评估一种用于多心血管结构分割的自动化深度学习方法。

背景

心血管图像分割是一项资源密集型工作。我们设计了一种自动化深度学习方法,用于从冠状动脉 CT 血管造影(CCTA)图像中分割多个结构。

方法

该研究使用了一个多中心患者注册中心的图像,这些患者接受了临床指征明确的 CCTA。近端升主动脉和降主动脉(PAA、DA)、上腔静脉和下腔静脉(SVC、IVC)、肺动脉(PA)、冠状窦(CS)、右心室壁(RVW)和左心房壁(LAW)被标注为真实值。基于 U-net 的深度学习模型在 70:20:10 的分割中进行了训练、验证和测试。

结果

该数据集包含 206 名患者,共计 51.3 亿像素。平均年龄为 59.9±9.4 岁,其中 42.7%为女性。整体平均 Dice 评分达到 0.820(0.782,0.843)。PAA、DA、SVC、IVC、PA、CS、RVW 和 LAW 的平均 Dice 评分分别为 0.969(0.979,0.988)、0.953(0.955,0.983)、0.937(0.934,0.965)、0.903(0.897,0.948)、0.775(0.724,0.925)、0.720(0.642,0.809)、0.685(0.631,0.761)和0.625(0.596,0.749)。除 CS 外,性别和年龄组之间的性能没有显著差异。

结论

在像素水平上进行评估时,一种自动化深度学习模型能够对 CCTA 图像中的多个心血管结构进行分割,整体准确性较好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/31be/7202628/fc569de233c4/pone.0232573.g001.jpg

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