Prediction of Early Antidepressant Efficacy in Patients with Major Depressive Disorder Based on Multidimensional Features of rs-fMRI and P11 Gene DNA Methylation: Prédiction de l’efficacité précoce d’un antidépresseur chez des patients souffrant du trouble dépressif majeur d’après les caractéristiques multidimensionnelles de la méthylation de l’ADN du gène P11 et de la IRMf-rs
Tianyu Wang,
Chenjie Gao,
Jiaxing Li
et al.
Abstract:Objective This study established a machine learning model based on the multidimensional data of resting-state functional activity of the brain and P11 gene DNA methylation to predict the early efficacy of antidepressant treatment in patients with major depressive disorder (MDD). Methods A total of 98 Han Chinese MDD were analysed in this study. Patients were divided into 51 responders and 47 nonresponders according to whether the Hamilton Depression Rating Scale-17 items (HAMD-17) reduction rate was ≥50% after… Show more
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