Feng Fan, Hasaballa Abdallah I, Long Ting, Sun Xinyi, Fernandez Justin, Carlhäll Carl-Johan, Zhao Jichao
Auckland Bioengineering Institute, The University of Auckland, 70 Symonds Street, Auckland, 1010, New Zealand.
Department of Computer Science, University of Oxford, Oxford, UK.
Cardiovasc Diabetol. 2025 Jul 18;24(1):294. doi: 10.1186/s12933-025-02829-y.
Epicardial adipose tissue (EAT) is associated with cardiometabolic risk in type 2 diabetes (T2D), but its spatial distribution and structural alterations remain understudied. We aim to develop a shape-aware, AI-based method for automated segmentation and morphogeometric analysis of EAT in T2D.
A total of 90 participants (45 with T2D and 45 age-, sex-matched controls) underwent cardiac 3D Dixon MRI, enrolled between 2014 and 2018 as part of the sub-study of the Swedish SCAPIS cohort. We developed EAT-Seg, a multi-modal deep learning model incorporating signed distance maps (SDMs) for shape-aware segmentation. Segmentation performance was evaluated using the Dice similarity coefficient (DSC), the 95% Hausdorff distance (HD95), and the average symmetric surface distance (ASSD). Statistical shape analysis combined with partial least squares discriminant analysis (PLS-DA) was applied to point cloud representations of EAT to capture latent spatial variations between groups. Morphogeometric features, including volume, 3D local thickness map, elongation and fragmentation index, were extracted and correlated with PLS-DA latent variables using Pearson correlation. Features with high-correlation were identified as key differentiators and evaluated using a Random Forest classifier.
EAT-Seg achieved a DSC of 0.881, a HD95 of 3.213 mm, and an ASSD of 0.602 mm. Statistical shape analysis revealed spatial distribution differences in EAT between T2D and control groups. Morphogeometric feature analysis identified volume and thickness gradient-related features as key discriminators (r > 0.8, P < 0.05). Random Forest classification achieved an AUC of 0.703.
This AI-based framework enables accurate segmentation for structurally complex EAT and reveals key morphogeometric differences associated with T2D, supporting its potential as a biomarker for cardiometabolic risk assessment.
心外膜脂肪组织(EAT)与2型糖尿病(T2D)的心脏代谢风险相关,但其空间分布和结构改变仍未得到充分研究。我们旨在开发一种基于人工智能的形状感知方法,用于T2D患者EAT的自动分割和形态几何分析。
共有90名参与者(45名T2D患者和45名年龄、性别匹配的对照者)接受了心脏3D Dixon MRI检查,他们于2014年至2018年入组,作为瑞典SCAPIS队列子研究的一部分。我们开发了EAT-Seg,这是一种多模态深度学习模型,结合了符号距离映射(SDM)用于形状感知分割。使用Dice相似系数(DSC)、95%豪斯多夫距离(HD95)和平均对称表面距离(ASSD)评估分割性能。将统计形状分析与偏最小二乘判别分析(PLS-DA)相结合,应用于EAT的点云表示,以捕捉组间潜在的空间变化。提取包括体积、3D局部厚度图、伸长率和碎片化指数在内的形态几何特征,并使用Pearson相关性将其与PLS-DA潜在变量相关联。将具有高相关性的特征确定为关键区分因素,并使用随机森林分类器进行评估。
EAT-Seg的DSC为0.881,HD95为3.213毫米,ASSD为0.602毫米。统计形状分析揭示了T2D组和对照组之间EAT的空间分布差异。形态几何特征分析确定体积和厚度梯度相关特征为关键区分因素(r > 0.8,P < 0.05)。随机森林分类的AUC为0.703。
这个基于人工智能的框架能够对结构复杂的EAT进行准确分割,并揭示与T2D相关的关键形态几何差异,支持其作为心脏代谢风险评估生物标志物的潜力。