| Literature DB >> 32171168 |
Jwala Dhamala1, Pradeep Bajracharya2, Hermenegild J Arevalo3, John L Sapp4, B Milan Horácek4, Katherine C Wu3, Natalia A Trayanova3, Linwei Wang5.
Abstract
The estimation of patient-specific tissue properties in the form of model parameters is important for personalized physiological models. Because tissue properties are spatially varying across the underlying geometrical model, it presents a significant challenge of high-dimensional (HD) optimization at the presence of limited measurement data. A common solution to reduce the dimension of the parameter space is to explicitly partition the geometrical mesh. In this paper, we present a novel concept that uses a generative variational auto-encoder (VAE) to embed HD Bayesian optimization into a low-dimensional (LD) latent space that represents the generative code of HD parameters. We further utilize VAE-encoded knowledge about the generative code to guide the exploration of the search space. The presented method is applied to estimating tissue excitability in a cardiac electrophysiological model in a range of synthetic and real-data experiments, through which we demonstrate its improved accuracy and substantially reduced computational cost in comparison to existing methods that rely on geometry-based reduction of the HD parameter space.Entities:
Keywords: High-dimensional Bayesian optimization; personalized modeling; variational autoencoder
Mesh:
Year: 2020 PMID: 32171168 PMCID: PMC7237332 DOI: 10.1016/j.media.2020.101670
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545