A Supervised Machine Learning Approach to Classify Brain Morphology of Professional Visual Artists versus Non-Artists

Author:

Grecucci Alessandro1ORCID,Rastelli Clara12ORCID,Bacci Francesca3,Melcher David14,De Pisapia Nicola1

Affiliation:

1. Department of Psychology and Cognitive Sciences of Trento, University of Trento, 38068 Rovereto, Italy

2. MEG Center, University of Tübingen, 72072 Tübingen, Germany

3. College of Arts and Creative Enterprises, Zayed University, Abu Dhabi P.O. Box 144534, United Arab Emirates

4. Division of Science, New York University Abu Dhabi, Abu Dhabi P.O. Box 129188, United Arab Emirates

Abstract

This study aimed to investigate whether there are structural differences in the brains of professional artists who received formal training in the visual arts and non-artists who did not have any formal training or professional experience in the visual arts, and whether these differences can be used to accurately classify individuals as being an artist or not. Previous research using functional MRI has suggested that general creativity involves a balance between the default mode network and the executive control network. However, it is not known whether there are structural differences between the brains of artists and non-artists. In this study, a machine learning method called Multi-Kernel Learning (MKL) was applied to gray matter images of 12 artists and 12 non-artists matched for age and gender. The results showed that the predictive model was able to correctly classify artists from non-artists with an accuracy of 79.17% (AUC 88%), and had the ability to predict new cases with an accuracy of 81.82%. The brain regions most important for this classification were the Heschl area, amygdala, cingulate, thalamus, and parts of the parietal and occipital lobes as well as the temporal pole. These regions may be related to the enhanced emotional and visuospatial abilities that professional artists possess compared to non-artists. Additionally, the reliability of this circuit was assessed using two different classifiers, which confirmed the findings. There was also a trend towards significance between the circuit and a measure of vividness of imagery, further supporting the idea that these brain regions may be related to the imagery abilities involved in the artistic process.

Funder

Fondazione Caritro

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference102 articles.

1. Creativity as an Information-Based Process;Rastelli;Riv. Internazionale Filos. Psicol.,2022

2. Simon, H.A. (1977). Models of Discovery, Springer.

3. Feist, G.J. (2006). The Psychology of Science and the Origins of the Scientific Mind, Yale University Press.

4. Catmull, E., and Wallace, A. (2015). Srilakshmi Creativity Inc.: Overcoming the Unseen Forces That Stand in the Way of True Inspiration, Random House.

5. Kaufman, J.C., and Sternberg, R.J. (2010). The Cambridge Handbook of Creativity, Cambridge University Press.

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