Quantifying the uncertainty in model parameters using gaussian process-based markov chain monte carlo: An application to cardiac electrophysiological models

Jwala Dhamala, John L. Sapp, Milan Horacek, Linwei Wang

Résultat de recherche: Conference contribution

5 Citations (Scopus)

Résumé

Estimation of patient-specific model parameters is important for personalized modeling, although sparse and noisy clinical data can introduce significant uncertainty in the estimated parameter values. This importance source of uncertainty, if left unquantified, will lead to unknown variability in model outputs that hinder their reliable adoptions. Probabilistic estimation model parameters, however, remains an unresolved challenge because standard Markov Chain Monte Carlo sampling requires repeated model simulations that are computationally infeasible. A common solution is to replace the simulation model with a computationally-efficient surrogate for a faster sampling. However, by sampling from an approximation of the exact posterior probability density function (pdf) of the parameters, the efficiency is gained at the expense of sampling accuracy. In this paper, we address this issue by integrating surrogate modeling into Metropolis Hasting (MH) sampling of the exact posterior pdfs to improve its acceptance rate. It is done by first quickly constructing a Gaussian process (GP) surrogate of the exact posterior pdfs using deterministic optimization. This efficient surrogate is then used to modify commonly-used proposal distributions in MH sampling such that only proposals accepted by the surrogate will be tested by the exact posterior pdf for acceptance/rejection, reducing unnecessary model simulations at unlikely candidates. Synthetic and real-data experiments using the presented method show a significant gain in computational efficiency without compromising the accuracy. In addition, insights into the non-identifiability and heterogeneity of tissue properties can be gained from the obtained posterior distributions.

Langue d'origineEnglish
Titre de la publication principaleInformation Processing in Medical Imaging - 25th International Conference, IPMI 2017, Proceedings
ÉditeursHongtu Zhu, Marc Niethammer, Martin Styner, Hongtu Zhu, Dinggang Shen, Pew-Thian Yap, Stephen Aylward, Ipek Oguz
Maison d'éditionSpringer Verlag
Pages223-235
Nombre de pages13
ISBN (imprimé)9783319590493
DOI
Statut de publicationPublished - 2017
Événement25th International Conference on Information Processing in Medical Imaging, IPMI 2017 - Boone, United States
Durée: juin 25 2017juin 30 2017

Séries de publication

PrénomLecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Volume10265 LNCS
ISSN (imprimé)0302-9743
ISSN (électronique)1611-3349

Conference

Conference25th International Conference on Information Processing in Medical Imaging, IPMI 2017
Pays/TerritoireUnited States
VilleBoone
Période6/25/176/30/17

Note bibliographique

Funding Information:
This work is supported by the National Science Foundation under CAREER Award ACI-1350374 and the National Institute of Heart, Lung, and Blood of the National Institutes of Health under Award R21Hl125998.

Publisher Copyright:
© Springer International Publishing AG 2017.

ASJC Scopus Subject Areas

  • Theoretical Computer Science
  • General Computer Science

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