Literature DB >> 27807912

Age prediction on the basis of brain anatomical measures.

S A Valizadeh1,2, J Hänggi1, S Mérillat1,3,4, L Jäncke1,3,4.   

Abstract

In this study, we examined whether age can be predicted on the basis of different anatomical features obtained from a large sample of healthy subjects (n = 3,144). From this sample we obtained different anatomical feature sets: (1) 11 larger brain regions (including cortical volume, thickness, area, subcortical volume, cerebellar volume, etc.), (2) 148 cortical compartmental thickness measures, (3) 148 cortical compartmental area measures, (4) 148 cortical compartmental volume measures, and (5) a combination of the above-mentioned measures. With these anatomical feature sets, we predicted age using 6 statistical techniques (multiple linear regression, ridge regression, neural network, k-nearest neighbourhood, support vector machine, and random forest). We obtained very good age prediction accuracies, with the highest accuracy being R2  = 0.84 (prediction on the basis of a neural network and support vector machine approaches for the entire data set) and the lowest being R2  = 0.40 (prediction on the basis of a k-nearest neighborhood for cortical surface measures). Interestingly, the easy-to-calculate multiple linear regression approach with the 11 large brain compartments resulted in a very good prediction accuracy (R2  = 0.73), whereas the application of the neural network approach for this data set revealed very good age prediction accuracy (R2  = 0.83). Taken together, these results demonstrate that age can be predicted well on the basis of anatomical measures. The neural network approach turned out to be the approach with the best results. In addition, it was evident that good prediction accuracies can be achieved using a small but nevertheless age-representative dataset of brain features. Hum Brain Mapp 38:997-1008, 2017.
© 2016 Wiley Periodicals, Inc. © 2016 Wiley Periodicals, Inc.

Keywords:  FreeSurfer; age; age prediction; brain; brain anatomy; classification; neural networks

Mesh:

Year:  2016        PMID: 27807912      PMCID: PMC6866800          DOI: 10.1002/hbm.23434

Source DB:  PubMed          Journal:  Hum Brain Mapp        ISSN: 1065-9471            Impact factor:   5.038


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