Bayesian Volumetric Autoregressive generative models for better semisupervised learning

07/26/2019
by   Guilherme Pombo, et al.
0

Deep generative models are rapidly gaining traction in medical imaging. Nonetheless, most generative architectures struggle to capture the underlying probability distributions of volumetric data, exhibit convergence problems, and offer no robust indices of model uncertainty. By comparison, the autoregressive generative model PixelCNN can be extended to volumetric data with relative ease, it readily attempts to learn the true underlying probability distribution and it still admits a Bayesian reformulation that provides a principled framework for reasoning about model uncertainty. Our contributions in this paper are two fold: first, we extend PixelCNN to work with volumetric brain magnetic resonance imaging data. Second, we show that reformulating this model to approximate a deep Gaussian process yields a measure of uncertainty that improves the performance of semi-supervised learning, in particular classification performance in settings where the proportion of labelled data is low. We quantify this improvement across classification, regression, and semantic segmentation tasks, training and testing on clinical magnetic resonance brain imaging data comprising T1-weighted and diffusion-weighted sequences.

READ FULL TEXT
research
04/03/2019

Bayesian Pharmacokinetic Modeling of Dynamic Contrast-Enhanced Magnetic Resonance Imaging: Validation and Application

Tracer-kinetic analysis of dynamic contrast-enhanced magnetic resonance ...
research
11/29/2021

Equitable modelling of brain imaging by counterfactual augmentation with morphologically constrained 3D deep generative models

We describe Countersynth, a conditional generative model of diffeomorphi...
research
08/15/2022

One-shot Generative Prior Learned from Hankel-k-space for Parallel Imaging Reconstruction

Magnetic resonance imaging serves as an essential tool for clinical diag...
research
08/24/2013

A comparative analysis of methods for estimating axon diameter using DWI

The importance of studying the brain microstructure is described and the...
research
04/27/2021

SrvfNet: A Generative Network for Unsupervised Multiple Diffeomorphic Shape Alignment

We present SrvfNet, a generative deep learning framework for the joint m...
research
11/27/2020

Progressively Volumetrized Deep Generative Models for Data-Efficient Contextual Learning of MR Image Recovery

Magnetic resonance imaging (MRI) offers the flexibility to image a given...

Please sign up or login with your details

Forgot password? Click here to reset