Skip to main content
Top
Published in: Brain Structure and Function 7/2020

Open Access 01-09-2020 | Original Article

Predicting intelligence from brain gray matter volume

Authors: Kirsten Hilger, Nils R. Winter, Ramona Leenings, Jona Sassenhagen, Tim Hahn, Ulrike Basten, Christian J. Fiebach

Published in: Brain Structure and Function | Issue 7/2020

Login to get access

Abstract

A positive association between brain size and intelligence is firmly established, but whether region-specific anatomical differences contribute to general intelligence remains an open question. Results from voxel-based morphometry (VBM) - one of the most widely used morphometric methods - have remained inconclusive so far. Here, we applied cross-validated machine learning-based predictive modeling to test whether out-of-sample prediction of individual intelligence scores is possible on the basis of voxel-wise gray matter volume. Features were derived from structural magnetic resonance imaging data (N = 308) using (a) a purely data-driven method (principal component analysis) and (b) a domain knowledge-based approach (atlas parcellation). When using relative gray matter (corrected for total brain size), only the atlas-based approach provided significant prediction, while absolute gray matter (uncorrected) allowed for above-chance prediction with both approaches. Importantly, in all significant predictions, the absolute error was relatively high, i.e., greater than ten IQ points, and in the atlas-based models, the predicted IQ scores varied closely around the sample mean. This renders the practical value even of statistically significant prediction results questionable. Analyses based on the gray matter of functional brain networks yielded significant predictions for the fronto-parietal network and the cerebellum. However, the mean absolute errors were not reduced in contrast to the global models, suggesting that general intelligence may be related more to global than region-specific differences in gray matter volume. More generally, our study highlights the importance of predictive statistical analysis approaches for clarifying the neurobiological bases of intelligence and provides important suggestions for future research using predictive modeling.
Appendix
Available only for authorised users
Literature
go back to reference Abreu R, Leal A, Figueiredo P (2019) Identification of epileptic brain states by dynamic functional connectivity analysis of simultaneous EEG-fMRI: a dictionary learning approach. Sci Rep 9:1–18 Abreu R, Leal A, Figueiredo P (2019) Identification of epileptic brain states by dynamic functional connectivity analysis of simultaneous EEG-fMRI: a dictionary learning approach. Sci Rep 9:1–18
go back to reference Akshoomoff N et al (2013) NIH Toolbox cognition battery (CB): composite scores of crystallized, fluid, and overall cognition. Monogr Soc Res Child Dev 78:119–132PubMedPubMedCentral Akshoomoff N et al (2013) NIH Toolbox cognition battery (CB): composite scores of crystallized, fluid, and overall cognition. Monogr Soc Res Child Dev 78:119–132PubMedPubMedCentral
go back to reference Arbabshirani MR, Plis S, Sui J, Calhoun VD (2017) Single subject prediction of brain disorders in neuroimaging: Promises and pitfalls. Neuroimage 145:137–165PubMed Arbabshirani MR, Plis S, Sui J, Calhoun VD (2017) Single subject prediction of brain disorders in neuroimaging: Promises and pitfalls. Neuroimage 145:137–165PubMed
go back to reference Ashburner J (2007) A fast diffeomorphic image registration algorithm. Neuroimage 38:95–113PubMed Ashburner J (2007) A fast diffeomorphic image registration algorithm. Neuroimage 38:95–113PubMed
go back to reference Ashburner J, Friston KJ (2000) Voxel-based morphometry—the methods. Neuroimage 11:805–821PubMed Ashburner J, Friston KJ (2000) Voxel-based morphometry—the methods. Neuroimage 11:805–821PubMed
go back to reference Barbey AK (2018) Network neuroscience theory of human intelligence. Trends Cogn Sci 22:8–20PubMed Barbey AK (2018) Network neuroscience theory of human intelligence. Trends Cogn Sci 22:8–20PubMed
go back to reference Basten U, Stelzel C, Fiebach CJ (2013) Intelligence is differentially related to neural effort in the task-positive and the task-negative brain network. Intelligence 41:517–528 Basten U, Stelzel C, Fiebach CJ (2013) Intelligence is differentially related to neural effort in the task-positive and the task-negative brain network. Intelligence 41:517–528
go back to reference Basten U, Hilger K, Fiebach CJ (2015) Intelligence where smart brains are different: a quantitative meta-analysis of functional and structural brain imaging studies on intelligence. Intelligence 51:10–27 Basten U, Hilger K, Fiebach CJ (2015) Intelligence where smart brains are different: a quantitative meta-analysis of functional and structural brain imaging studies on intelligence. Intelligence 51:10–27
go back to reference Bergstra J, Bengio Y (2012) Random search for hyper-parameter optimization. J Mach Learn Res 13:281–305 Bergstra J, Bengio Y (2012) Random search for hyper-parameter optimization. J Mach Learn Res 13:281–305
go back to reference Boser BE, Guyon IM, Vapnik VN (1992) A training algorithm for optimal margin classifiers. In: Proceedings of the fifth annual workshop on computational learning theory—COLT ’92, pp 144–152 Boser BE, Guyon IM, Vapnik VN (1992) A training algorithm for optimal margin classifiers. In: Proceedings of the fifth annual workshop on computational learning theory—COLT ’92, pp 144–152
go back to reference Brinch CN, Galloway TA (2012) Schooling in adolescence raises IQ scores. PNAS 109:425–430PubMed Brinch CN, Galloway TA (2012) Schooling in adolescence raises IQ scores. PNAS 109:425–430PubMed
go back to reference Burgaleta M et al (2014) Subcortical regional morphology correlates with fluid and spatial intelligence. Hum Brain Mapp 35:1957–1968PubMed Burgaleta M et al (2014) Subcortical regional morphology correlates with fluid and spatial intelligence. Hum Brain Mapp 35:1957–1968PubMed
go back to reference Colom R et al (2013) Neuroanatomic overlap between intelligence and cognitive factors: morphometry methods provide support for the key role of the frontal lobes. Neuroimage 72:143–152PubMed Colom R et al (2013) Neuroanatomic overlap between intelligence and cognitive factors: morphometry methods provide support for the key role of the frontal lobes. Neuroimage 72:143–152PubMed
go back to reference Combrisson E, Jerbi K (2015) Exceeding chance level by chance: the caveat of theoretical chance levels in brain signal classification and statistical assessment of decoding accuracy. J Neurosci Methods 250:126–136PubMed Combrisson E, Jerbi K (2015) Exceeding chance level by chance: the caveat of theoretical chance levels in brain signal classification and statistical assessment of decoding accuracy. J Neurosci Methods 250:126–136PubMed
go back to reference Deary IJ, Whiteman MC, Starr JM, Whalley LJ, Fox HC (2004) The impact of childhood intelligence on later life: following up the Scottish mental surveys of 1932 and 1947. J Pers Soc Psychol 86:130–147PubMed Deary IJ, Whiteman MC, Starr JM, Whalley LJ, Fox HC (2004) The impact of childhood intelligence on later life: following up the Scottish mental surveys of 1932 and 1947. J Pers Soc Psychol 86:130–147PubMed
go back to reference Dosenbach NUF et al (2007) Distinct brain networks for adaptive and stable task control in humans. PNAS 104:11073–11078PubMedPubMedCentral Dosenbach NUF et al (2007) Distinct brain networks for adaptive and stable task control in humans. PNAS 104:11073–11078PubMedPubMedCentral
go back to reference Drucker H, Burges CJC, Kaufman L, Smola A, Vapnik V (1997) Support vector regression machines. Adv Neural Inf Process Syst 1:155–161 Drucker H, Burges CJC, Kaufman L, Smola A, Vapnik V (1997) Support vector regression machines. Adv Neural Inf Process Syst 1:155–161
go back to reference Dubois J et al (2018) A distributed brain network predicts general intelligence from resting-state human neuroimaging data. Philos Trans R Soc Lond B Biol Sci 26:1756 Dubois J et al (2018) A distributed brain network predicts general intelligence from resting-state human neuroimaging data. Philos Trans R Soc Lond B Biol Sci 26:1756
go back to reference Duncan J (2010) The multiple-demand (MD) system of the primate brain: mental programs for intelligent behaviour. Trends Cogn Sci 14:172–179PubMed Duncan J (2010) The multiple-demand (MD) system of the primate brain: mental programs for intelligent behaviour. Trends Cogn Sci 14:172–179PubMed
go back to reference Espinoza FA et al (2019) Dynamic functional network connectivity in Huntington's disease and its associations with motor and cognitive measures. Hum Brain Mapp 40:1955–1968PubMedPubMedCentral Espinoza FA et al (2019) Dynamic functional network connectivity in Huntington's disease and its associations with motor and cognitive measures. Hum Brain Mapp 40:1955–1968PubMedPubMedCentral
go back to reference Falch T, Sandgren Massih S (2011) The effect of education on cognitive ability. Econ Inq 49:838–856PubMed Falch T, Sandgren Massih S (2011) The effect of education on cognitive ability. Econ Inq 49:838–856PubMed
go back to reference Ferguson MA, Anderson JS, Spreng RN (2017) Fluid and flexible minds: Intelligence reflects synchrony in the brain’s intrinsic network architecture. Netw Neurosci 1:192–207PubMedPubMedCentral Ferguson MA, Anderson JS, Spreng RN (2017) Fluid and flexible minds: Intelligence reflects synchrony in the brain’s intrinsic network architecture. Netw Neurosci 1:192–207PubMedPubMedCentral
go back to reference Finn ES et al (2015) Functional connectome fingerprinting: identifying individuals using patterns of brain connectivity. Nat Neurosci 18:1–11 Finn ES et al (2015) Functional connectome fingerprinting: identifying individuals using patterns of brain connectivity. Nat Neurosci 18:1–11
go back to reference Genç E et al (2018) Diffusion markers of dendritic density and arborization in gray matter predict differences in intelligence. Nat Commun 9:1905PubMedPubMedCentral Genç E et al (2018) Diffusion markers of dendritic density and arborization in gray matter predict differences in intelligence. Nat Commun 9:1905PubMedPubMedCentral
go back to reference Good CD et al (2001) A voxel-based morphometric study of ageing in 465 normal adult human brains. Neuroimage 14:21–36PubMed Good CD et al (2001) A voxel-based morphometric study of ageing in 465 normal adult human brains. Neuroimage 14:21–36PubMed
go back to reference Greene AS, Gao S, Scheinost D, Constable RT (2018) Task-induced brain state manipulation improves prediction of individual traits. Nat Commun 9:2807PubMedPubMedCentral Greene AS, Gao S, Scheinost D, Constable RT (2018) Task-induced brain state manipulation improves prediction of individual traits. Nat Commun 9:2807PubMedPubMedCentral
go back to reference Gregory MD et al (2017) General Cognitive ability in humans. Curr Biol 26:1301–1305 Gregory MD et al (2017) General Cognitive ability in humans. Curr Biol 26:1301–1305
go back to reference Greicius MD, Supekar K, Menon V, Dougherty RF (2009) Resting-state functional connectivity reflects structural connectivity in the default mode network. Cereb Cortex 19:72–78PubMed Greicius MD, Supekar K, Menon V, Dougherty RF (2009) Resting-state functional connectivity reflects structural connectivity in the default mode network. Cereb Cortex 19:72–78PubMed
go back to reference Haier RJ, Jung RE, Yeo RA, Head K, Alkire MT (2004) Structural brain variation and general intelligence. Neuroimage 23:425–433PubMed Haier RJ, Jung RE, Yeo RA, Head K, Alkire MT (2004) Structural brain variation and general intelligence. Neuroimage 23:425–433PubMed
go back to reference Hastie T, Tibshirani R, Friedman J (2009) Ensemble learning. In: Hastie T, Tibshirani R, Friedman J (eds) The elements of statistical learning: data mining, inference, and prediction. Springer, New York Hastie T, Tibshirani R, Friedman J (2009) Ensemble learning. In: Hastie T, Tibshirani R, Friedman J (eds) The elements of statistical learning: data mining, inference, and prediction. Springer, New York
go back to reference Hearne LJ, Mattingley JB, Cocchi L (2016) Functional brain networks related to individual differences in human intelligence at rest. Sci Rep 6:32328PubMedPubMedCentral Hearne LJ, Mattingley JB, Cocchi L (2016) Functional brain networks related to individual differences in human intelligence at rest. Sci Rep 6:32328PubMedPubMedCentral
go back to reference Hilger K, Ekman M, Fiebach CJ, Basten U (2017a) Efficient hubs in the intelligent brain: nodal efficiency of hub regions in the salience network is associated with general intelligence. Intelligence 60:10–25 Hilger K, Ekman M, Fiebach CJ, Basten U (2017a) Efficient hubs in the intelligent brain: nodal efficiency of hub regions in the salience network is associated with general intelligence. Intelligence 60:10–25
go back to reference Hilger K, Ekman M, Fiebach CJ, Basten U (2017b) Intelligence is associated with the modular structure of intrinsic brain networks. Sci Rep 7:1–12 Hilger K, Ekman M, Fiebach CJ, Basten U (2017b) Intelligence is associated with the modular structure of intrinsic brain networks. Sci Rep 7:1–12
go back to reference Hilger K, Fukushima M, Sporns O, Fiebach CJ (2020) Temporal stability of functional brain modules associated with human intelligence. Hum Brain Mapp 41:362–372PubMed Hilger K, Fukushima M, Sporns O, Fiebach CJ (2020) Temporal stability of functional brain modules associated with human intelligence. Hum Brain Mapp 41:362–372PubMed
go back to reference Jung RE, Haier RJ (2007) The parieto-frontal integration theory (P-FIT) of intelligence: converging neuroimaging evidence. Behav Brain Sci 30:135–154PubMed Jung RE, Haier RJ (2007) The parieto-frontal integration theory (P-FIT) of intelligence: converging neuroimaging evidence. Behav Brain Sci 30:135–154PubMed
go back to reference Karama S et al (2011) Cortical thickness correlates of specific cognitive performance accounted for by the general factor of intelligence in healthy children aged 6 to 18. Neuroimage 55:1443–1453PubMed Karama S et al (2011) Cortical thickness correlates of specific cognitive performance accounted for by the general factor of intelligence in healthy children aged 6 to 18. Neuroimage 55:1443–1453PubMed
go back to reference Lee J-Y et al (2005) Intellect declines in healthy elderly subjects and cerebellum. Psychiatry Clin Neurosci 59:45–51PubMed Lee J-Y et al (2005) Intellect declines in healthy elderly subjects and cerebellum. Psychiatry Clin Neurosci 59:45–51PubMed
go back to reference Leenings R, Winter NR, Plagwitz L, Holstein V, Ernsting J, Steenweg J, Gebker J, Sarink K, Emden D, Grotegerd D, Opel N, Risse B, Jiang X, Dannlowski U, Hahn T (2020) PHOTON—a python API for rapid machine learning model development. arXiv:2002.05426 Leenings R, Winter NR, Plagwitz L, Holstein V, Ernsting J, Steenweg J, Gebker J, Sarink K, Emden D, Grotegerd D, Opel N, Risse B, Jiang X, Dannlowski U, Hahn T (2020) PHOTON—a python API for rapid machine learning model development. arXiv:2002.05426
go back to reference Lemm S, Blankertz B, Dickhaus T, Müller KR (2011) Introduction to machine learning for brain imaging. Neuroimage 56:387–399PubMed Lemm S, Blankertz B, Dickhaus T, Müller KR (2011) Introduction to machine learning for brain imaging. Neuroimage 56:387–399PubMed
go back to reference Leuba G, Kraftsik R (1994) Changes in volume, surface estimate, three-dimensional shape and total number of neurons of the human primary visual cortex from midgestation until old age. Anat Embryol 190:351–366 Leuba G, Kraftsik R (1994) Changes in volume, surface estimate, three-dimensional shape and total number of neurons of the human primary visual cortex from midgestation until old age. Anat Embryol 190:351–366
go back to reference Liu J, Liao X, Xia M, He Y (2018) Connectome fingerprinting: identifying individuals and predicting higher cognitive functions using dynamic brain connectivity patterns. Hum Brain Mapp 39:902–915PubMed Liu J, Liao X, Xia M, He Y (2018) Connectome fingerprinting: identifying individuals and predicting higher cognitive functions using dynamic brain connectivity patterns. Hum Brain Mapp 39:902–915PubMed
go back to reference Maldjian JA, Laurienti PJ, Kraft RA, Burdette JH (2003) An automated method for neuroanatomic and cytoarchitectonic atlas-based interrogation of fMRI data sets. Neuroimage 19:1233–1239PubMed Maldjian JA, Laurienti PJ, Kraft RA, Burdette JH (2003) An automated method for neuroanatomic and cytoarchitectonic atlas-based interrogation of fMRI data sets. Neuroimage 19:1233–1239PubMed
go back to reference McDaniel M (2005) Big-brained people are smarter: a meta-analysis of the relationship between in vivo brain volume and intelligence. Intelligence 33(4):337–346 McDaniel M (2005) Big-brained people are smarter: a meta-analysis of the relationship between in vivo brain volume and intelligence. Intelligence 33(4):337–346
go back to reference Mechelli A, Price CJ, Friston KJ, Ashburner J (2005) Voxel-based morphometry of the human brain: methods and applications. Curr Med Imaging Rev 1:105–113 Mechelli A, Price CJ, Friston KJ, Ashburner J (2005) Voxel-based morphometry of the human brain: methods and applications. Curr Med Imaging Rev 1:105–113
go back to reference Mihalik A et al (2019) ABCD Neurocognitive prediction challenge 2019: predicting individual fluid intelligence scores from structural MRI using probabilistic segmentation and kernel ridge regression. arXiv:1905.10834[q-bio.NC] Mihalik A et al (2019) ABCD Neurocognitive prediction challenge 2019: predicting individual fluid intelligence scores from structural MRI using probabilistic segmentation and kernel ridge regression. arXiv:1905.10834[q-bio.NC]
go back to reference Nave G, Jung WH, Karlsson Linnér R, Kable JW, Koellinger PD (2018) Are bigger brains smarter? Evidence from a large-scale preregistered study. Psychol Sci 30:1–12 Nave G, Jung WH, Karlsson Linnér R, Kable JW, Koellinger PD (2018) Are bigger brains smarter? Evidence from a large-scale preregistered study. Psychol Sci 30:1–12
go back to reference Neisser U et al (1996) Intelligence: knowns and unknowns. Am Psychol 51:77–101 Neisser U et al (1996) Intelligence: knowns and unknowns. Am Psychol 51:77–101
go back to reference Noble WS (2006) What is a support vector machine? Nat Biotechnol 24:1565–1567PubMed Noble WS (2006) What is a support vector machine? Nat Biotechnol 24:1565–1567PubMed
go back to reference Noirhomme Q et al (2014) Biased binomial assessment of cross-validated estimation of classification accuracies illustrated in diagnosis predictions. Neuroimage Clin 4:687–694PubMedPubMedCentral Noirhomme Q et al (2014) Biased binomial assessment of cross-validated estimation of classification accuracies illustrated in diagnosis predictions. Neuroimage Clin 4:687–694PubMedPubMedCentral
go back to reference Nooner KB et al (2012) The NKI-rockland sample: a model for accelerating the pace of discovery science in psychiatry. Front Neurosci 6:152PubMedPubMedCentral Nooner KB et al (2012) The NKI-rockland sample: a model for accelerating the pace of discovery science in psychiatry. Front Neurosci 6:152PubMedPubMedCentral
go back to reference Oldfield RC (1971) The assessment and analysis of handedness: the Edinburgh inventory. Neuropsychologia 9(1):97–113PubMed Oldfield RC (1971) The assessment and analysis of handedness: the Edinburgh inventory. Neuropsychologia 9(1):97–113PubMed
go back to reference Pakkenberg B, Gundersen HJG (1997) Neocortical neuron number in humans: effect of sex and age. J Comp Neurol 384:312–320PubMed Pakkenberg B, Gundersen HJG (1997) Neocortical neuron number in humans: effect of sex and age. J Comp Neurol 384:312–320PubMed
go back to reference Pereira F, Mitchell T, Botvinick M (2009) Machine learning classifiers and fMRI: a tutorial overview. Neuroimage 45(1):S199–S209PubMed Pereira F, Mitchell T, Botvinick M (2009) Machine learning classifiers and fMRI: a tutorial overview. Neuroimage 45(1):S199–S209PubMed
go back to reference Pietschnig J, Penke L, Wicherts JM, Zeiler M, Voracek M (2015) Meta-analysis of associations between human brain volume and intelligence differences: how strong are they and what do they mean? Neurosci Biobehav Rev 57:411–432PubMed Pietschnig J, Penke L, Wicherts JM, Zeiler M, Voracek M (2015) Meta-analysis of associations between human brain volume and intelligence differences: how strong are they and what do they mean? Neurosci Biobehav Rev 57:411–432PubMed
go back to reference Poldrack RA, Huckins G, Varoquaux G (2020) Establishment of best practices for evidence for prediction: a review. JAMA psychiatry 77(5):534-540PubMedPubMedCentral Poldrack RA, Huckins G, Varoquaux G (2020) Establishment of best practices for evidence for prediction: a review. JAMA psychiatry 77(5):534-540PubMedPubMedCentral
go back to reference Santarnecchi E, Emmendorfer A, Pascual-Leone A (2017) Dissecting the parieto-frontal correlates of fluid intelligence: a comprehensive ALE meta-analysis study. Intelligence 63:9–28 Santarnecchi E, Emmendorfer A, Pascual-Leone A (2017) Dissecting the parieto-frontal correlates of fluid intelligence: a comprehensive ALE meta-analysis study. Intelligence 63:9–28
go back to reference Savage JE et al (2018) Genome-wide association meta-analysis in 269,867 individuals identifies new genetic and functional links to intelligence. Nat Genet 50:912–919PubMedPubMedCentral Savage JE et al (2018) Genome-wide association meta-analysis in 269,867 individuals identifies new genetic and functional links to intelligence. Nat Genet 50:912–919PubMedPubMedCentral
go back to reference Saxe GN, Calderone D, Morales LJ (2018) Brain entropy and human intelligence: a resting-state fMRI study. PLoS ONE 13:1–21 Saxe GN, Calderone D, Morales LJ (2018) Brain entropy and human intelligence: a resting-state fMRI study. PLoS ONE 13:1–21
go back to reference Schnack HG et al (2014) Changes in thickness and surface area of the human cortex and their relationship with intelligence. Cereb Cortex 25:1608–1617PubMed Schnack HG et al (2014) Changes in thickness and surface area of the human cortex and their relationship with intelligence. Cereb Cortex 25:1608–1617PubMed
go back to reference Schaefer A, Kong R, Gordon EM, Laumann TO, Zuo XN, Holmes AJ, Eickhoff SB, Yeo BTT (2018) Local-global parcellation of the human cerebral cortex from intrinsic functional connectivity MRI. Cereb cortex 28(9):3095–3114PubMed Schaefer A, Kong R, Gordon EM, Laumann TO, Zuo XN, Holmes AJ, Eickhoff SB, Yeo BTT (2018) Local-global parcellation of the human cerebral cortex from intrinsic functional connectivity MRI. Cereb cortex 28(9):3095–3114PubMed
go back to reference Shen X, Tokoglu F, Papademetris X, Constable RT (2013) Groupwise whole-brain parcellation from resting-state fMRI data for network node identification. NeuroImage 82:403–415PubMed Shen X, Tokoglu F, Papademetris X, Constable RT (2013) Groupwise whole-brain parcellation from resting-state fMRI data for network node identification. NeuroImage 82:403–415PubMed
go back to reference Smola AJ, Olkopf BSCH (2004) A tutorial on support vector regression. Stat Comput 14:199–222 Smola AJ, Olkopf BSCH (2004) A tutorial on support vector regression. Stat Comput 14:199–222
go back to reference Snoek J, Larochelle H, Adams RP (2012) Practical Bayesian optimization of machine learning algorithms. Adv Neural Inf Process Syst 25:2960–2968 Snoek J, Larochelle H, Adams RP (2012) Practical Bayesian optimization of machine learning algorithms. Adv Neural Inf Process Syst 25:2960–2968
go back to reference Sporns O, Betzel RF (2016) Modular brain networks. Annu Rev Psychol 67:613–640PubMed Sporns O, Betzel RF (2016) Modular brain networks. Annu Rev Psychol 67:613–640PubMed
go back to reference Tzourio-Mazoyer N et al (2002) Automated anatomical labeling of activations in SPM using a macroscopic anatomical parcellation of the MNI MRI single-subject brain. Neuroimage 15:273–289PubMed Tzourio-Mazoyer N et al (2002) Automated anatomical labeling of activations in SPM using a macroscopic anatomical parcellation of the MNI MRI single-subject brain. Neuroimage 15:273–289PubMed
go back to reference Varoquaux G (2017) Cross-validation failure: small sample sizes lead to large error bars. Neuroimage 180:68–77PubMed Varoquaux G (2017) Cross-validation failure: small sample sizes lead to large error bars. Neuroimage 180:68–77PubMed
go back to reference Van Den Heuvel MP, Stam CJ, Kahn RS, Pol EHE (2009) Efficiency of functional brain networks and intellectual performance. J Neurosci 29:7619–7624PubMedPubMedCentral Van Den Heuvel MP, Stam CJ, Kahn RS, Pol EHE (2009) Efficiency of functional brain networks and intellectual performance. J Neurosci 29:7619–7624PubMedPubMedCentral
go back to reference von Stumm S, Plomin R (2015) Socioeconomic status and the growth of intelligence from infancy through adolescence. Intelligence 48:30–36 von Stumm S, Plomin R (2015) Socioeconomic status and the growth of intelligence from infancy through adolescence. Intelligence 48:30–36
go back to reference Wasmuht DF et al (2018) Intrinsic neuronal dynamics predict distinct functional roles during working memory. Nat Commun 9:1–13 Wasmuht DF et al (2018) Intrinsic neuronal dynamics predict distinct functional roles during working memory. Nat Commun 9:1–13
go back to reference Wechsler D (1999) Wechsler abbreviated scale of intelligence. Psychological Corporation, Harcourt Brace and Company, San Antonio Wechsler D (1999) Wechsler abbreviated scale of intelligence. Psychological Corporation, Harcourt Brace and Company, San Antonio
go back to reference Wolpert DH, Macready WG (1997) No free lunch theorems for optimization. IEEE Trans Evol Comput 1:67–82 Wolpert DH, Macready WG (1997) No free lunch theorems for optimization. IEEE Trans Evol Comput 1:67–82
go back to reference Yang J-J et al (2013) Prediction for human intelligence using morphometric characteristics of cortical surface: partial least square analysis. Neuroscience 246:351–361PubMed Yang J-J et al (2013) Prediction for human intelligence using morphometric characteristics of cortical surface: partial least square analysis. Neuroscience 246:351–361PubMed
go back to reference Yakorni T, Westfall J (2013) Choosing prediction over explanation in psychology: lessons from machine learning. J Chem Inf Model 53:1689–1699 Yakorni T, Westfall J (2013) Choosing prediction over explanation in psychology: lessons from machine learning. J Chem Inf Model 53:1689–1699
go back to reference Yarkoni T, Westfall J (2017) Choosing prediction over explanation in psychology: lessons from machine learning. Perspect Psychol Sci 12(6):1100–1122PubMedPubMedCentral Yarkoni T, Westfall J (2017) Choosing prediction over explanation in psychology: lessons from machine learning. Perspect Psychol Sci 12(6):1100–1122PubMedPubMedCentral
go back to reference Yeo TBT et al (2011) The organization of the human cerebral cortex estimated by intrinsic functional connectivity. J Neurophysiol 106:1125–1165PubMed Yeo TBT et al (2011) The organization of the human cerebral cortex estimated by intrinsic functional connectivity. J Neurophysiol 106:1125–1165PubMed
Metadata
Title
Predicting intelligence from brain gray matter volume
Authors
Kirsten Hilger
Nils R. Winter
Ramona Leenings
Jona Sassenhagen
Tim Hahn
Ulrike Basten
Christian J. Fiebach
Publication date
01-09-2020
Publisher
Springer Berlin Heidelberg
Published in
Brain Structure and Function / Issue 7/2020
Print ISSN: 1863-2653
Electronic ISSN: 1863-2661
DOI
https://doi.org/10.1007/s00429-020-02113-7

Other articles of this Issue 7/2020

Brain Structure and Function 7/2020 Go to the issue