Abstract

Brain age estimation from anatomical features has been attracting more attention in recent years. This interest in brain age estimation is motivated by the importance of biological age prediction in health informatics, with an application to early prediction of neurocognitive disorders. It is well-known that normal brain aging follows a specific pattern, which enables researchers and practitioners to predict the age of a human's brain from its degeneration. In this paper, we model brain age predicted by cortical thickness data gathered from large cohort brain images. We collected 2,911 cognitively normal subjects (age 45–91 years) at a single medical center and acquired their brain magnetic resonance (MR) images. All images were acquired using the same scanner with the same protocol. We propose to first apply Sparse Group Lasso (SGL) for feature selection by utilizing the brain's anatomical grouping. Once the features are selected, a non-parametric non-linear regression using the Gaussian Process Regression (GPR) algorithm is applied to fit the final age prediction model. Experimental results demonstrate that the proposed method achieves the mean absolute error of 4.05 years, which is comparable with or superior to several recent methods. Our method can also be a critical tool for clinicians to differentiate patients with neurodegenerative brain disease by extracting a cortical thinning pattern associated with normal aging.

Highlights

  • Aging is a biological process that exhibits distinct attributes from childhood to old age

  • We propose the prediction of brain age based on cortical thickness data by first applying Sparse Group Lasso (SGL) (Simon et al, 2013) for selecting important features from each major cortical lobe and using Gaussian Process Regression (GPR) (Rasmussen and Williams, 2006) for fitting the age prediction model

  • The performance results of root mean square error (RMSE) and mean absolute error (MAE) are in years and computed on the test dataset

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Summary

INTRODUCTION

Aging is a biological process that exhibits distinct attributes from childhood to old age. This prediction result is obtained by the combination of cortical thickness and fractal dimension Another recent study by Valizadeh et al (2017) presented a detailed feasibility analysis of age prediction from surface-based measures. They described brain age prediction using anatomical measures such as cortical thickness, surface area, cortical volume, and their combinations from a human brain MRI using 148 regional cortex compartments. Their overall analysis showed the plausibility of age prediction from brain surface-based features with high accuracy.

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RESULTS AND DISCUSSION
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