Abdulkareem Musa, Brahier Mark S, Zou Fengwei, Rauseo Elisa, Uchegbu Ijeoma, Taylor Alexandra, Thomaides Athanasios, Bergquist Peter J, Srichai Monvadi B, Lee Aaron M, Vargas Jose D, Petersen Steffen E
Barts Heart Centre, Barts Health National Health Service (NHS) Trust, EC1A 4NP London, UK.
National Institute for Health Research (NIHR) Barts Biomedical Research Centre, William Harvey Research Institute, Queen Mary University of London, E1 4NS London, UK.
Rev Cardiovasc Med. 2022 Dec 20;23(12):412. doi: 10.31083/j.rcm2312412. eCollection 2022 Dec.
Recent studies have shown that epicardial adipose tissue (EAT) is an independent atrial fibrillation (AF) prognostic marker and has influence on the myocardial function. In computed tomography (CT), EAT volume (EATv) and density (EATd) are parameters that are often used to quantify EAT. While increased EATv has been found to correlate with the prevalence and the recurrence of AF after ablation therapy, higher EATd correlates with inflammation due to arrest of lipid maturation and with high risk of plaque presence and plaque progression. Automation of the quantification task diminishes the variability in readings introduced by different observers in manual quantification and results in high reproducibility of studies and less time-consuming analysis. Our objective is to develop a fully automated quantification of EATv and EATd using a deep learning (DL) framework.
We proposed a framework that consists of image classification and segmentation DL models and performs the task of selecting images with EAT from all the CT images acquired for a patient, and the task of segmenting the EAT from the output images of the preceding task. EATv and EATd are estimated using the segmentation masks to define the region of interest. For our experiments, a 300-patient dataset was divided into two subsets, each consisting of 150 patients: Dataset 1 (41,979 CT slices) for training the DL models, and Dataset 2 (36,428 CT slices) for evaluating the quantification of EATv and EATd.
The classification model achieved accuracies of 98% for precision, recall and scores, and the segmentation model achieved accuracies in terms of mean ( std.) and median dice similarity coefficient scores of 0.844 ( 0.19) and 0.84, respectively. Using the evaluation set (Dataset 2), our approach resulted in a Pearson correlation coefficient of 0.971 ( = 0.943) between the label and predicted EATv, and the correlation coefficient of 0.972 ( = 0.945) between the label and predicted EATd.
We proposed a framework that provides a fast and robust strategy for accurate EAT segmentation, and volume (EATv) and attenuation (EATd) quantification tasks. The framework will be useful to clinicians and other practitioners for carrying out reproducible EAT quantification at patient level or for large cohorts and high-throughput projects.
最近的研究表明,心外膜脂肪组织(EAT)是心房颤动(AF)的独立预后标志物,并对心肌功能有影响。在计算机断层扫描(CT)中,EAT体积(EATv)和密度(EATd)是常用于量化EAT的参数。虽然已发现EATv增加与消融治疗后AF的患病率和复发相关,但较高的EATd与脂质成熟停滞导致的炎症以及斑块存在和斑块进展的高风险相关。量化任务的自动化减少了不同观察者在手动量化中引入的读数变异性,并导致研究具有高重现性且分析耗时更少。我们的目标是使用深度学习(DL)框架开发一种对EATv和EATd的全自动量化方法。
我们提出了一个由图像分类和分割DL模型组成的框架,该框架执行从为患者采集的所有CT图像中选择有EAT的图像的任务,以及从先前任务的输出图像中分割EAT的任务。使用分割掩码来定义感兴趣区域,从而估计EATv和EATd。对于我们的实验,一个包含300名患者的数据集被分为两个子集,每个子集由150名患者组成:数据集1(41,979个CT切片)用于训练DL模型,数据集2(36,428个CT切片)用于评估EATv和EATd的量化。
分类模型在精确率、召回率和F1分数方面达到了98%的准确率,分割模型在平均(±标准差)和中位数骰子相似系数分数方面分别达到了0.844(±0.19)和0.84的准确率。使用评估集(数据集2),我们的方法在标签与预测的EATv之间产生了0.971(R² = 0.943)的皮尔逊相关系数,在标签与预测的EATd之间产生了0.972(R² = 0.945)的相关系数。
我们提出了一个框架,该框架为准确的EAT分割以及体积(EATv)和衰减(EATd)量化任务提供了一种快速且稳健的策略。该框架将对临床医生和其他从业者在患者层面或针对大型队列及高通量项目进行可重现的EAT量化很有用。