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Abigail S Greene

Showing results (1-10 of 37) with videos related to

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Biological Psychiatry Global Open Science|July 31, 2023
Multiscale Analysis to Explore Neural Bases of Clinically Relevant Cognitive ProcessesAbigail S Greene
JAMA Psychiatry|June 14, 2023
Clinical Promise of Brain-Phenotype Modeling: A ReviewAbigail S Greene, R Todd Constable
Neuroimage|July 5, 2021
Within node connectivity changes, not simply edge changes, influence graph theory measures in functional connectivity studies of the brainWenjing Luo, Abigail S Greene, R Todd Constable
Nature Communications|July 20, 2018
Task-induced brain state manipulation improves prediction of individual traitsAbigail S Greene, Siyuan Gao, Dustin Scheinost, et al.
The Neuroscientist : a Review Journal Bringing Neurobiology, Neurology and Psychiatry|July 16, 2019
Regions and Connections: Complementary Approaches to Characterize Brain Organization and FunctionCorey Horien, Abigail S Greene, R Todd Constable, et al.
Neuroimage|July 24, 2019
Combining multiple connectomes improves predictive modeling of phenotypic measuresSiyuan Gao, Abigail S Greene, R Todd Constable, et al.
Cell Reports|August 27, 2020
How Tasks Change Whole-Brain Functional Organization to Reveal Brain-Phenotype RelationshipsAbigail S Greene, Siyuan Gao, Stephanie Noble, et al.
Trends in Neurosciences|May 10, 2023
Why is everyone talking about brain state?Abigail S Greene, Corey Horien, Daniel Barson, et al.
Neuroimage|November 20, 2019
There is no single functional atlas even for a single individual: Functional parcel definitions change with taskMehraveh Salehi, Abigail S Greene, Amin Karbasi, et al.
Patterns (New York, N.Y.)|July 31, 2023
Connectome-based machine learning models are vulnerable to subtle data manipulationsMatthew Rosenblatt, Raimundo X Rodriguez, Margaret L Westwater, et al.
Pageof 4

Showing results (1-10 of 37) with videos related to

Sort By:
Pageof 4
Biological Psychiatry Global Open Science|July 31, 2023
Multiscale Analysis to Explore Neural Bases of Clinically Relevant Cognitive ProcessesAbigail S Greene
JAMA Psychiatry|June 14, 2023
Clinical Promise of Brain-Phenotype Modeling: A ReviewAbigail S Greene, R Todd Constable
Neuroimage|July 5, 2021
Within node connectivity changes, not simply edge changes, influence graph theory measures in functional connectivity studies of the brainWenjing Luo, Abigail S Greene, R Todd Constable
Nature Communications|July 20, 2018
Task-induced brain state manipulation improves prediction of individual traitsAbigail S Greene, Siyuan Gao, Dustin Scheinost, et al.
The Neuroscientist : a Review Journal Bringing Neurobiology, Neurology and Psychiatry|July 16, 2019
Regions and Connections: Complementary Approaches to Characterize Brain Organization and FunctionCorey Horien, Abigail S Greene, R Todd Constable, et al.
Neuroimage|July 24, 2019
Combining multiple connectomes improves predictive modeling of phenotypic measuresSiyuan Gao, Abigail S Greene, R Todd Constable, et al.
Cell Reports|August 27, 2020
How Tasks Change Whole-Brain Functional Organization to Reveal Brain-Phenotype RelationshipsAbigail S Greene, Siyuan Gao, Stephanie Noble, et al.
Trends in Neurosciences|May 10, 2023
Why is everyone talking about brain state?Abigail S Greene, Corey Horien, Daniel Barson, et al.
Neuroimage|November 20, 2019
There is no single functional atlas even for a single individual: Functional parcel definitions change with taskMehraveh Salehi, Abigail S Greene, Amin Karbasi, et al.
Patterns (New York, N.Y.)|July 31, 2023
Connectome-based machine learning models are vulnerable to subtle data manipulationsMatthew Rosenblatt, Raimundo X Rodriguez, Margaret L Westwater, et al.
Pageof 4