Segmentation of B-mode cardiac ultrasound data by Bayesian Probability Maps

Nils Mattias Hansson, Sami Sebastian Brandt, Johan Lindström, Petri Gudmundsson, Amra Jujić, Andreas Malmgren, Yuanji Cheng

13 Citations (Scopus)

Abstract

In this paper we present a model for describing the position distribution of the endocardium in the two-chamber apical long-axis view of the heart in clinical B-mode ultrasound cycles. We propose a novel Bayesian formulation, including priors for spatial and temporal smoothness, and preferred shapes and position. The shape model takes into account both endocardium, atrial region and apex. The likelihood is built using a statistical signal model, which attempts to closely model a censored signal. In addition, the use of a censored Gamma mixture model with unknown censoring point, to handle artefacts resulting from left-censoring of the in US clinical B-mode, is to our knowledge novel. The posterior density is sampled by the Gibbs method to estimate the expected latent variable representation of the endocardium, which we call the Bayesian Probability Map; the map describes the probability of pixels being classified as being within the endocardium. The regularization parameters of the model are estimated by cross-validation, and the results are compared against the two-chamber apical model of Chen et al.

Original languageEnglish
JournalMedical Image Analysis
Volume18
Issue number7
Pages (from-to)1184-1199
Number of pages16
ISSN1361-8415
DOIs
Publication statusPublished - Oct 2014

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