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Efficient Deep Learning Models for Predicting Individualized Task Activation From Resting‐State Functional Connectivity

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Published in:Human Brain Mapping
Format: Online Article RSS Article
Published: 2026
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container_title Human Brain Mapping
description
discipline_display Psychiatry and Neurology
discipline_facet Psychiatry and Neurology
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genre Journal Article
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journal_source_facet Human Brain Mapping
last_indexed 2026-06-20T21:45:54.952Z
publishDate 2026
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spellingShingle Efficient Deep Learning Models for Predicting Individualized Task Activation From Resting‐State Functional Connectivity
Psychiatry and Neurology
General
Psychiatry and Neurology
sub_discipline_display General
sub_discipline_facet General
subject_display Psychiatry and Neurology
General
Psychiatry and Neurology
subject_facet Psychiatry and Neurology
General
Psychiatry and Neurology
title Efficient Deep Learning Models for Predicting Individualized Task Activation From Resting‐State Functional Connectivity
title_alt Modelos de aprendizaje profundo eficientes para predecir la activación de tareas individualizadas a partir de la conectividad funcional en estado de reposo
Modèles d'apprentissage profond efficaces pour prédire l'activation de tâche individualisée à partir de la connectivité fonctionnelle au repos
Modelos de Aprendizagem Profunda Eficientes para Prever Ativação de Tarefa Individualizada a partir da Conectividade Funcional em Estado de Repouso
title_auth Efficient Deep Learning Models for Predicting Individualized Task Activation From Resting‐State Functional Connectivity
title_es_txt Modelos de aprendizaje profundo eficientes para predecir la activación de tareas individualizadas a partir de la conectividad funcional en estado de reposo
title_fr_txt Modèles d'apprentissage profond efficaces pour prédire l'activation de tâche individualisée à partir de la connectivité fonctionnelle au repos
title_full Efficient Deep Learning Models for Predicting Individualized Task Activation From Resting‐State Functional Connectivity
title_fullStr Efficient Deep Learning Models for Predicting Individualized Task Activation From Resting‐State Functional Connectivity
title_full_unstemmed Efficient Deep Learning Models for Predicting Individualized Task Activation From Resting‐State Functional Connectivity
title_pt_txt Modelos de Aprendizagem Profunda Eficientes para Prever Ativação de Tarefa Individualizada a partir da Conectividade Funcional em Estado de Repouso
title_short Efficient Deep Learning Models for Predicting Individualized Task Activation From Resting‐State Functional Connectivity
title_sort efficient deep learning models for predicting individualized task activation from resting‐state functional connectivity
topic Psychiatry and Neurology
General
Psychiatry and Neurology
url https://onlinelibrary.wiley.com/doi/10.1002/hbm.70557?af=R