Data-driven longitudinal modeling and prediction of symptom dynamics in major depressive disorder: Integrating factor graphs and learning methods

Author(s):  
Arjun P. Athreya ◽  
Subho S. Banerjee ◽  
Drew Neavin ◽  
Rima Kaddurah-Daouk ◽  
A. John Rush ◽  
...  
2014 ◽  
Vol 31 (9) ◽  
pp. 778-786 ◽  
Author(s):  
Klaas J. Wardenaar ◽  
Henk-Jan Conradi ◽  
Peter de Jonge

BMC Medicine ◽  
2012 ◽  
Vol 10 (1) ◽  
Author(s):  
Hanna M van Loo ◽  
Peter de Jonge ◽  
Jan-Willem Romeijn ◽  
Ronald C Kessler ◽  
Robert A Schoevers

2021 ◽  
Author(s):  
Masoud Ataei ◽  
Xiaogang Wang

Abstract We propose a novel transform called Lehmer transform and establish theoretical results which are used to compress and characterize large volumes of highly volatile time series data. It will be shown that our proposed method could be used as a practical data-driven approach for analyzing extreme events in nonstationary and highly oscillatory stochastic processes such as biological signals. We demonstrate the advantage of the proposed transform in comparison with traditional methods such as Fourier and Wavelets transforms through an example of devising a classifier to discern the patients with major depressive disorder from the healthy subjects using their recorded EEG signals and provide the computational results. We show that the proposed transform can be used for building better and more robust classifiers with significant accuracy.


PLoS ONE ◽  
2021 ◽  
Vol 16 (6) ◽  
pp. e0253023
Author(s):  
John-Jose Nunez ◽  
Teyden T. Nguyen ◽  
Yihan Zhou ◽  
Bo Cao ◽  
Raymond T. Ng ◽  
...  

Objectives Antidepressants are first-line treatments for major depressive disorder (MDD), but 40–60% of patients will not respond, hence, predicting response would be a major clinical advance. Machine learning algorithms hold promise to predict treatment outcomes based on clinical symptoms and episode features. We sought to independently replicate recent machine learning methodology predicting antidepressant outcomes using the Sequenced Treatment Alternatives to Relieve Depression (STAR*D) dataset, and then externally validate these methods to train models using data from the Canadian Biomarker Integration Network in Depression (CAN-BIND-1) dataset. Methods We replicated methodology from Nie et al (2018) using common algorithms based on linear regressions and decision trees to predict treatment-resistant depression (TRD, defined as failing to respond to 2 or more antidepressants) in the STAR*D dataset. We then trained and externally validated models using the clinical features found in both datasets to predict response (≥50% reduction on the Quick Inventory for Depressive Symptomatology, Self-Rated [QIDS-SR]) and remission (endpoint QIDS-SR score ≤5) in the CAN-BIND-1 dataset. We evaluated additional models to investigate how different outcomes and features may affect prediction performance. Results Our replicated models predicted TRD in the STAR*D dataset with slightly better balanced accuracy than Nie et al (70%-73% versus 64%-71%, respectively). Prediction performance on our external methodology validation on the CAN-BIND-1 dataset varied depending on outcome; performance was worse for response (best balanced accuracy 65%) compared to remission (77%). Using the smaller set of features found in both datasets generally improved prediction performance when evaluated on the STAR*D dataset. Conclusion We successfully replicated prior work predicting antidepressant treatment outcomes using machine learning methods and clinical data. We found similar prediction performance using these methods on an external database, although prediction of remission was better than prediction of response. Future work is needed to improve prediction performance to be clinically useful.


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