Dynamic multi feature-class Gaussian process models

12/08/2021
by   Jean-Rassaire Fouefack, et al.
0

In model-based medical image analysis, three features of interest are the shape of structures of interest, their relative pose, and image intensity profiles representative of some physical property. Often, these are modelled separately through statistical models by decomposing the object's features into a set of basis functions through principal geodesic analysis or principal component analysis. This study presents a statistical modelling method for automatic learning of shape, pose and intensity features in medical images which we call the Dynamic multi feature-class Gaussian process models (DMFC-GPM). A DMFC-GPM is a Gaussian process (GP)-based model with a shared latent space that encodes linear and non-linear variation. Our method is defined in a continuous domain with a principled way to represent shape, pose and intensity feature classes in a linear space, based on deformation fields. A deformation field-based metric is adapted in the method for modelling shape and intensity feature variation as well as for comparing rigid transformations (pose). Moreover, DMFC-GPMs inherit properties intrinsic to GPs including marginalisation and regression. Furthermore, they allow for adding additional pose feature variability on top of those obtained from the image acquisition process; what we term as permutation modelling. For image analysis tasks using DMFC-GPMs, we adapt Metropolis-Hastings algorithms making the prediction of features fully probabilistic. We validate the method using controlled synthetic data and we perform experiments on bone structures from CT images of the shoulder to illustrate the efficacy of the model for pose and shape feature prediction. The model performance results suggest that this new modelling paradigm is robust, accurate, accessible, and has potential applications including the management of musculoskeletal disorders and clinical decision making

READ FULL TEXT

page 3

page 8

page 9

page 10

page 11

page 12

page 13

research
01/22/2020

Dynamic multi-object Gaussian process models: A framework for data-driven functional modelling of human joints

Statistical shape models (SSMs) are state-of-the-art medical image analy...
research
03/23/2016

Gaussian Process Morphable Models

Statistical shape models (SSMs) represent a class of shapes as a normal ...
research
09/28/2021

Unsupervised Diffeomorphic Surface Registration and Non-Linear Modelling

Registration is an essential tool in image analysis. Deep learning based...
research
08/01/2014

Functional Principal Component Analysis and Randomized Sparse Clustering Algorithm for Medical Image Analysis

Due to advances in sensors, growing large and complex medical image data...
research
07/03/2019

A Variational Model Dedicated to Joint Segmentation, Registration and Atlas Generation for Shape Analysis

In medical image analysis, constructing an atlas, i.e. a mean representa...
research
10/26/2022

Continuum Robot State Estimation Using Gaussian Process Regression on SE(3)

Continuum robots have the potential to enable new applications in medici...
research
07/17/2019

Patient-specific Conditional Joint Models of Shape, Image Features and Clinical Indicators

We propose and demonstrate a joint model of anatomical shapes, image fea...

Please sign up or login with your details

Forgot password? Click here to reset