|国家预印本平台
首页|Rapid cardiac activation prediction for cardiac resynchronization therapy planning using geometric deep learning

Rapid cardiac activation prediction for cardiac resynchronization therapy planning using geometric deep learning

Rapid cardiac activation prediction for cardiac resynchronization therapy planning using geometric deep learning

来源:Arxiv_logoArxiv
英文摘要

Cardiac resynchronization therapy (CRT) is a common intervention for patients with dyssynchronous heart failure, yet approximately one-third of recipients fail to respond due to suboptimal lead placement. Identifying optimal pacing sites remains challenging, largely due to patient-specific anatomical variability and the limitations of current individualized planning strategies. In a step towards constructing an in-silico approach to help address this issue, we develop two geometric deep learning (DL) models, based on graph neural network (GNN) and geometry-informed neural operator (GINO), to predict cardiac activation time map in real-time for CRT planning and optimization. Both models are trained on a large synthetic dataset generated from finite-element (FE) simulations over a wide range of left ventricular (LV) geometries, pacing site configurations, and tissue conductivities. The GINO model significantly outperforms the GNN model, with lower prediction errors (1.14% vs 3.14%) and superior robustness to noise and various mesh discretization. Using the GINO model, we also develop a workflow for optimizing the pacing site in CRT from given activation time map and LV geometry. Compared to randomly selecting a pacing site, the CRT optimization workflow produces a larger reduction in maximum activation time (20% vs. 8%). In conjunction with an interactive web-based graphical user interface (GUI) available at https://dcsim.egr.msu.edu/, the GINO model shows promising potential as a clinical decision-support tool for personalized pre-procedural CRT optimization.

Ehsan Naghavi、Haifeng Wang、Vahid Ziaei Rad、Julius Guccione、Ghassan Kassab、Vishnu Boddeti、Seungik Baek、Lik-Chuan Lee

医学研究方法医学现状、医学发展

Ehsan Naghavi,Haifeng Wang,Vahid Ziaei Rad,Julius Guccione,Ghassan Kassab,Vishnu Boddeti,Seungik Baek,Lik-Chuan Lee.Rapid cardiac activation prediction for cardiac resynchronization therapy planning using geometric deep learning[EB/OL].(2025-06-10)[2025-06-30].https://arxiv.org/abs/2506.08987.点此复制

评论