Gender Differences in Connectome-based Predictions of Individualized Intelligence Quotient and Sub-domain Scores
暂无分享,去创建一个
Tianzi Jiang | Dongdong Lin | Zening Fu | Jing Sui | Shile Qi | Lingzhong Fan | Ming Song | Vince D Calhoun | Nianming Zuo | Rongtao Jiang | Rex Jung | Chuanjun Zhuo | V. Calhoun | Ming Song | T. Jiang | D. Lin | J. Sui | Z. Fu | R. Jung | C. Zhuo | L. Fan | Nianming Zuo | Jin Li | Jin Li | S. Qi | R. Jiang
[1] Vince D. Calhoun,et al. Function–structure associations of the brain: Evidence from multimodal connectivity and covariance studies , 2014, NeuroImage.
[2] Alex R. Smith,et al. Sex differences in the structural connectome of the human brain , 2013, Proceedings of the National Academy of Sciences.
[3] Paola Galdi,et al. A distributed brain network predicts general intelligence from resting-state human neuroimaging data , 2018 .
[4] Donald H. Saklofske,et al. International Handbook of Personality and Intelligence , 2010 .
[5] Dustin Scheinost,et al. Connectome-Based Prediction of Cocaine Abstinence. , 2019, The American journal of psychiatry.
[6] J. Cockburn,et al. The relative influence of intelligence and age on everyday memory. , 1991, Journal of gerontology.
[7] Tanya M. Evans,et al. An Extension of the Procedural Deficit Hypothesis from Developmental Language Disorders to Mathematical Disability , 2016, Front. Psychol..
[8] Yoed N. Kenett,et al. Robust prediction of individual creative ability from brain functional connectivity , 2018, Proceedings of the National Academy of Sciences.
[9] Dustin Scheinost,et al. Task-induced brain state manipulation improves prediction of individual traits , 2018, Nature Communications.
[10] Baxter P. Rogers,et al. Analyzing the association between functional connectivity of the brain and intellectual performance , 2015, Front. Hum. Neurosci..
[11] A. Barbey. Network Neuroscience Theory of Human Intelligence , 2018, Trends in Cognitive Sciences.
[12] J. H. Steiger. Tests for comparing elements of a correlation matrix. , 1980 .
[13] Satrajit S. Ghosh,et al. Prediction as a Humanitarian and Pragmatic Contribution from Human Cognitive Neuroscience , 2015, Neuron.
[14] Yong He,et al. Sex- and brain size-related small-world structural cortical networks in young adults: a DTI tractography study. , 2011, Cerebral cortex.
[15] I. Deary,et al. The neuroscience of human intelligence differences , 2010, Nature Reviews Neuroscience.
[16] Luke J. Chang,et al. Building better biomarkers: brain models in translational neuroimaging , 2017, Nature Neuroscience.
[17] Vince D. Calhoun,et al. Single subject prediction of brain disorders in neuroimaging: Promises and pitfalls , 2017, NeuroImage.
[18] Manuel Desco,et al. White matter microstructure correlates of mathematical giftedness and intelligence quotient , 2014, Human brain mapping.
[19] M. Chun,et al. A neuromarker of sustained attention from whole-brain functional connectivity , 2015, Nature Neuroscience.
[20] B. Postle,et al. Dissociation of human caudate nucleus activity in spatial and nonspatial working memory: an event-related fMRI study. , 1999, Brain research. Cognitive brain research.
[21] Adrian Preda,et al. Multimodal neuromarkers in schizophrenia via cognition-guided MRI fusion , 2018, Nature Communications.
[22] F. Agakov,et al. Application of high-dimensional feature selection: evaluation for genomic prediction in man , 2015, Scientific Reports.
[23] Zaixu Cui,et al. Individualized Prediction of Reading Comprehension Ability Using Gray Matter Volume , 2018, Cerebral cortex.
[24] Edward Herskovits,et al. The roles of the “visual word form area” in reading , 2005, NeuroImage.
[25] A. Paolo,et al. Factor analysis of the mainland Chinese version of the Wechsler Adult Intelligence Scale (WAIS-RC) in a brain-damaged sample. , 1990, The International journal of neuroscience.
[26] Dustin Scheinost,et al. Connectome-based Models Predict Separable Components of Attention in Novel Individuals , 2018, Journal of Cognitive Neuroscience.
[27] C. R. Cloninger,et al. A psychobiological model of temperament and character. , 1993, Archives of general psychiatry.
[28] K. Witkiewitz,et al. Fronto‐Parietal gray matter and white matter efficiency differentially predict intelligence in males and females , 2016, Human brain mapping.
[29] D Rudrauf,et al. Distributed neural system for general intelligence revealed by lesion mapping , 2010, Proceedings of the National Academy of Sciences.
[30] Vincent J Schmithorst,et al. DEVELOPMENTAL SEX DIFFERENCES IN THE RELATION OF NEUROANATOMICAL CONNECTIVITY TO INTELLIGENCE. , 2009, Intelligence.
[31] Rex E. Jung,et al. Diffusion markers of dendritic density and arborization in gray matter predict differences in intelligence , 2018, Nature Communications.
[32] Jason B. Mattingley,et al. Functional brain networks related to individual differences in human intelligence at rest , 2016, Scientific Reports.
[33] S. Dehaene,et al. The unique role of the visual word form area in reading , 2011, Trends in Cognitive Sciences.
[34] Bradley R. Postle,et al. Spatial working memory activity of the caudate nucleus is sensitive to frame of reference , 2003, Cognitive, affective & behavioral neuroscience.
[35] Zaixu Cui,et al. Disrupted white matter connectivity underlying developmental dyslexia: A machine learning approach , 2016, Human brain mapping.
[36] Susanne M. Jaeggi,et al. Improving fluid intelligence with training on working memory: a meta-analysis , 2008, Psychonomic Bulletin & Review.
[37] I. Deary,et al. Intelligence and educational achievement , 2007 .
[38] Emiliano Santarnecchi,et al. Network connectivity correlates of variability in fluid intelligence performance , 2017 .
[39] Intelligence , 1836, The Medico-chirurgical review.
[40] Jun Li,et al. Brain spontaneous functional connectivity and intelligence , 2008, NeuroImage.
[41] T. Robbins,et al. Putting a spin on the dorsal–ventral divide of the striatum , 2004, Trends in Neurosciences.
[42] Tianzi Jiang,et al. MicroRNA132 associated multimodal neuroimaging patterns in unmedicated major depressive disorder , 2018, Brain : a journal of neurology.
[43] Raquel E Gur,et al. Age group and sex differences in performance on a computerized neurocognitive battery in children age 8-21. , 2012, Neuropsychology.
[44] Vince D. Calhoun,et al. Connectome-based individualized prediction of temperament trait scores , 2018, NeuroImage.
[45] Roberto Colom,et al. Intelligence predicts scholastic achievement irrespective of SES factors: Evidence from Brazil , 2007 .
[46] Dongdong Lin,et al. Dynamic functional connectivity impairments in early schizophrenia and clinical high-risk for psychosis , 2017, NeuroImage.
[47] A. Abi-Dargham,et al. The search for imaging biomarkers in psychiatric disorders , 2016, Nature Medicine.
[48] Jonathan D. Power,et al. Prediction of Individual Brain Maturity Using fMRI , 2010, Science.
[49] Arthur W Toga,et al. Relationships between IQ and regional cortical gray matter thickness in healthy adults. , 2007, Cerebral cortex.
[50] M. Chun,et al. Functional connectome fingerprinting: Identifying individuals based on patterns of brain connectivity , 2015, Nature Neuroscience.
[51] Vince D. Calhoun,et al. Predicting individualized clinical measures by a generalized prediction framework and multimodal fusion of MRI data , 2017, NeuroImage.
[52] R. Gur,et al. Development of Abbreviated Nine-Item Forms of the Raven’s Standard Progressive Matrices Test , 2012, Assessment.
[53] Vincent Schmithorst,et al. Functional MRI evidence for disparate developmental processes underlying intelligence in boys and girls , 2006, NeuroImage.
[54] Rex E. Jung,et al. Functional brain networks contributing to the Parieto-Frontal Integration Theory of Intelligence , 2014, NeuroImage.
[55] D. Geary,et al. PSYCHOLOGICAL SCIENCE IN THE PUBLIC INTEREST The Science of Sex Differences in Science and Mathematics , 2022 .
[56] Aldo Rustichini,et al. Subcortical intelligence: Caudate volume predicts IQ in healthy adults , 2015, Human brain mapping.
[57] A. Laird,et al. Gender differences in working memory networks: A BrainMap meta-analysis , 2014, Biological Psychology.
[58] Anthony A Grace,et al. Inhibitory Modulation of Orbitofrontal Cortex on Medial Prefrontal Cortex–Amygdala Information Flow , 2018, Cerebral cortex.
[59] Marko Robnik-Sikonja,et al. An adaptation of Relief for attribute estimation in regression , 1997, ICML.
[60] Paola Galdi,et al. A distributed brain network predicts general intelligence from resting-state human neuroimaging data , 2018, bioRxiv.
[61] Antonello Baldassarre,et al. Disruptions of network connectivity predict impairment in multiple behavioral domains after stroke , 2016, Proceedings of the National Academy of Sciences.
[62] David C. Jangraw,et al. A functional connectivity-based neuromarker of sustained attention generalizes to predict recall in a reading task , 2018, NeuroImage.
[63] Tianzi Jiang,et al. Resting-state functional network connectivity in prefrontal regions differs between unmedicated patients with bipolar and major depressive disorders. , 2016, Journal of affective disorders.
[64] Jie Zhang,et al. Neural and genetic determinants of creativity , 2018, NeuroImage.
[65] Sylvain Bouix,et al. Medial Frontal White and Gray Matter Contributions to General Intelligence , 2014, PloS one.
[66] Dustin Scheinost,et al. Dynamic functional connectivity during task performance and rest predicts individual differences in attention across studies , 2019, NeuroImage.
[67] Alan H. Wilman,et al. Males and females differ in brain activation during cognitive tasks , 2006, NeuroImage.
[68] C. Sripada,et al. Towards a “Treadmill Test” for Cognition: Reliable Prediction of Intelligence From Whole-Brain Task Activation Patterns , 2018, bioRxiv.
[69] F. Galton,et al. Intelligence , 1827, Current Biology.
[70] Dustin Scheinost,et al. Connectome-based predictive modeling of attention: Comparing different functional connectivity features and prediction methods across datasets , 2018, NeuroImage.
[71] Vince D. Calhoun,et al. Predicting individualized intelligence quotient scores using brainnetome-atlas based functional connectivity , 2017, 2017 IEEE 27th International Workshop on Machine Learning for Signal Processing (MLSP).
[72] Dustin Scheinost,et al. Resting-state functional connectivity predicts neuroticism and extraversion in novel individuals , 2018, Social cognitive and affective neuroscience.
[73] Vincent Schmithorst,et al. Sex differences in the development of neuroanatomical functional connectivity underlying intelligence found using Bayesian connectivity analysis , 2007, NeuroImage.
[74] A. Jensen,et al. The g factor , 1996, Nature.
[75] M. Crossley,et al. A male advantage for spatial and object but not verbal working memory using the n-back task , 2011, Brain and Cognition.
[76] Sharon L. Thompson-Schill,et al. Driving the brain towards creativity and intelligence: A network control theory analysis , 2018, Neuropsychologia.
[77] R. Haier,et al. The Parieto-Frontal Integration Theory (P-FIT) of intelligence: Converging neuroimaging evidence , 2007, Behavioral and Brain Sciences.
[78] Tianzi Jiang,et al. SMRI Biomarkers Predict Electroconvulsive Treatment Outcomes: Accuracy with Independent Data Sets , 2018, Neuropsychopharmacology.
[79] James L. McClelland,et al. Performance Feedback Drives Caudate Activation in a Phonological Learning Task , 2006, Journal of Cognitive Neuroscience.
[80] M. Zeidner. Personality Trait Correlates of Intelligence , 1995 .
[81] Yu Zhang,et al. The Human Brainnetome Atlas: A New Brain Atlas Based on Connectional Architecture , 2016, Cerebral cortex.
[82] M. Ullman. Contributions of memory circuits to language: the declarative/procedural model , 2004, Cognition.