Deep learning for the prediction of treatment response in depression.
暂无分享,去创建一个
Enrico Grisan | Paolo Brambilla | Letizia Squarcina | Filippo Maria Villa | Maria Nobile | E. Grisan | P. Brambilla | M. Nobile | L. Squarcina | F. Villa
[1] Rob Fergus,et al. Visualizing and Understanding Convolutional Networks , 2013, ECCV.
[2] Albert Montillo,et al. Anatomically-Informed Data Augmentation for functional MRI with Applications to Deep Learning , 2019, Medical Imaging: Image Processing.
[3] Abhinav Shrivastava,et al. A Generic Visualization Approach for Convolutional Neural Networks , 2020, ECCV.
[4] Eugene Lin,et al. A Deep Learning Approach for Predicting Antidepressant Response in Major Depression Using Clinical and Genetic Biomarkers , 2018, Front. Psychiatry.
[5] Adam Kapelner,et al. Differential Treatment Benefit Prediction For Treatment Selection in Depression: A Deep Learning Analysis of STAR*D and CO-MED Data , 2019, bioRxiv.
[6] M. Rietschel,et al. Combining clinical variables to optimize prediction of antidepressant treatment outcomes. , 2016, Journal of psychiatric research.
[7] J. Price,et al. Machine learning approaches for integrating clinical and imaging features in late‐life depression classification and response prediction , 2015, International journal of geriatric psychiatry.
[8] Serhat Ozekes,et al. Neural Network Based Response Prediction of rTMS in Major Depressive Disorder Using QEEG Cordance , 2015, Psychiatry investigation.
[9] Andrea Vedaldi,et al. Understanding Deep Networks via Extremal Perturbations and Smooth Masks , 2019, 2019 IEEE/CVF International Conference on Computer Vision (ICCV).
[10] Avanti Shrikumar,et al. Learning Important Features Through Propagating Activation Differences , 2017, ICML.
[11] Pia Baldinger,et al. The combined effect of genetic polymorphisms and clinical parameters on treatment outcome in treatment-resistant depression , 2015, European Neuropsychopharmacology.
[12] Ralph Snyderman,et al. Personalized health care: From theory to practice , 2012, Biotechnology journal.
[13] Quanshi Zhang,et al. Visual interpretability for deep learning: a survey , 2018, Frontiers of Information Technology & Electronic Engineering.
[14] Jianhua Chen,et al. Depression Detection Using Feature Extraction and Deep Learning from sMRI Images , 2019, 2019 18th IEEE International Conference On Machine Learning And Applications (ICMLA).
[15] Yonghwa Choi,et al. ARPNet: Antidepressant Response Prediction Network for Major Depressive Disorder , 2019, Genes.
[16] Glenda M MacQueen,et al. Neuroimaging biomarkers as predictors of treatment outcome in Major Depressive Disorder. , 2017, Journal of affective disorders.
[17] David Benrimoh,et al. Analysis of Features Selected by a Deep Learning Model for Differential Treatment Selection in Depression , 2020, Frontiers in Artificial Intelligence.
[18] Paolo Brambilla,et al. Can Machine Learning help us in dealing with treatment resistant depression? A review. , 2019, Journal of affective disorders.
[19] Karin Hagoort,et al. The Predictive Validity of Machine Learning Models in the Classification and Treatment of Major Depressive Disorder: State of the Art and Future Directions , 2020, Frontiers in Psychiatry.
[20] Maurizio Fava,et al. Use of treatment algorithms for depression. , 2006, Primary care companion to the Journal of clinical psychiatry.
[21] Andrew Zisserman,et al. Deep Inside Convolutional Networks: Visualising Image Classification Models and Saliency Maps , 2013, ICLR.
[22] Marcia K. Johnson,et al. Cross-trial prediction of treatment outcome in depression: a machine learning approach. , 2016, The lancet. Psychiatry.
[23] Arun K. Tiwari,et al. DNA methylation and clinical response to antidepressant medication in major depressive disorder: A review and recommendations , 2017, Neuroscience Letters.
[24] C. Nemeroff,et al. The revolution of personalized psychiatry: will technology make it happen sooner? , 2017, Psychological Medicine.
[25] Andrea Vedaldi,et al. Interpretable Explanations of Black Boxes by Meaningful Perturbation , 2017, 2017 IEEE International Conference on Computer Vision (ICCV).
[26] Randy Goebel,et al. Augmenting Semantic Representation of Depressive Language: From Forums to Microblogs , 2019, ECML/PKDD.
[27] Albert Montillo,et al. Predicting Response to the Antidepressant Bupropion Using Pretreatment fMRI , 2019, PRIME@MICCAI.
[28] Anne-Christin Hauschild,et al. GWAS-based machine learning approach to predict duloxetine response in major depressive disorder. , 2018, Journal of psychiatric research.
[29] Maurizio Fava,et al. Use of treatment algorithms for depression. , 2006, The Journal of clinical psychiatry.
[30] Enrico Smeraldi,et al. A neural network model for combining clinical predictors of antidepressant response in mood disorders. , 2007, Journal of affective disorders.
[31] Nicha C. Dvornek,et al. Combining phenotypic and resting-state fMRI data for autism classification with recurrent neural networks , 2018, 2018 IEEE 15th International Symposium on Biomedical Imaging (ISBI 2018).
[32] M. Trivedi,et al. Evaluating and monitoring treatment response in depression using measurement-based assessment and rating scales. , 2013, The Journal of clinical psychiatry.
[33] Eugene Lin,et al. Pharmacogenomics with antidepressants in the STAR*D study. , 2008, Pharmacogenomics.