Official implementation of the Nature Machine Intelligence 2025 paper
Qiao M., McGurk K.A., Wang S., Matthews P., O'Regan D., Bai W.
MeshHeart is a geometric deep generative model that reconstructs and generates personalized 3D+t cardiac mesh sequences from demographic and anthropometric conditions (age, sex, weight, height). It models cardiac motion dynamics using a graph-based latent VAE and temporal transformer, enabling normative modelling and disease deviation quantification across large-scale population data.


MeshHeart generates temporally smooth, anatomically realistic 4D cardiac meshes conditioned on age, sex, weight, and height.
```bash git clone https://github.com/your-username/MeshHeart.git cd MeshHeart conda env create -f environment.yml conda activate meshheart
$ claude mcp add MeshHeart \
-- python -m otcore.mcp_server <graph>