학술논문

Prediction of clinical scores from neuroimaging data with censored likelihood gaussian processes
Document Type
Conference
Source
2016 International Workshop on Pattern Recognition in Neuroimaging (PRNI) Pattern Recognition in Neuroimaging (PRNI), 2016 International Workshop on. :1-4 Jun, 2016
Subject
Bioengineering
Signal Processing and Analysis
Predictive models
Gaussian processes
Standards
Data models
Neuroimaging
Bayes methods
Ground penetrating radar
gaussian processes
clinical scores
Language
Abstract
In this paper, we explore the use of Censored Likelihoods in Gaussian Process Regression when predicting bounded clinical scores from neuroimaging data. The standard approach, which uses a Gaussian Likelihood, does not respect the fact that the clinical scores are bounded, and so may produce suboptimal models. Conversely, Censored Likelihoods explicitly model the restricted range of such clinical scores and carry this property through inference. We apply both the standard approach and the Censored Likelihood approach to the prediction of the MMSE score from structural MRI. Overall, we find small improvements in mean squared error when using the Censored Likelihood and in addition, the censored models are more favoured from a Bayesian perspective. We also discuss the qualitative nature of the predictions of the two approaches.