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Prediction of clinical scores from neuroimaging data with censored likelihood gaussian processes

机译:通过审查的似然高斯过程从神经影像数据预测临床评分

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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.
机译:在本文中,当从神经影像数据预测有限的临床评分时,我们探索了高斯过程回归中删失似然的使用。使用高斯似然法的标准方法不遵守临床评分是有界的事实,因此可能会产生次优模型。相反,“被检查的可能性”显式地对此类临床评分的受限范围建模,并通过推断来体现此属性。我们将标准方法和删失似然方法都应用于结构性MRI对MMSE评分的预测。总体而言,使用删失似然法时,我们发现均方误差有微小改善,此外,从贝叶斯角度看,删失模型更受青睐。我们还将讨论两种方法的预测的定性性质。

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