Multimodal Learning 相关度: 6/10

Learning Disease-Sensitive Latent Interaction Graphs From Noisy Cardiac Flow Measurements

Viraj Patel, Marko Grujic, Philipp Aigner, Theodor Abart, Marcus Granegger, Deblina Bhattacharjee, Katharine Fraser
arXiv: 2602.23035v1 发布: 2026-02-26 更新: 2026-02-26

AI 摘要

提出一种基于物理信息的潜在关系图框架,用于建模心脏血流特征,以诊断心脏疾病。

主要贡献

  • 提出基于物理信息的潜在关系图模型
  • 应用于主动脉缩窄和左心室辅助装置数据
  • 潜在图熵可作为疾病严重程度的标志物

方法论

结合神经关系推理架构、物理启发式交互能量和生灭动力学,构建潜在关系图。

原文摘要

Cardiac blood flow patterns contain rich information about disease severity and clinical interventions, yet current imaging and computational methods fail to capture underlying relational structures of coherent flow features. We propose a physics-informed, latent relational framework to model cardiac vortices as interacting nodes in a graph. Our model combines a neural relational inference architecture with physics-inspired interaction energy and birth-death dynamics, yielding a latent graph sensitive to disease severity and intervention level. We first apply this to computational fluid dynamics simulations of aortic coarctation. Learned latent graphs reveal that as the aortic radius narrows, vortex interactions become stronger and more frequent. This leads to a higher graph entropy, correlating monotonically with coarctation severity ($R^2=0.78$, Spearman $|ρ|=0.96$). We then extend this method to ultrasound datasets of left ventricles under varying levels of left ventricular assist device support. Again the latent graph representation captures the weakening of coherent vortical structures, thereby demonstrating cross-modal generalisation. Results show latent interaction graphs and entropy serve as robust and interpretable markers of cardiac disease and intervention.

标签

心脏血流 关系图 深度学习 疾病诊断

arXiv 分类

cs.LG