Optimizing and Predicting Antidepressant Efficacy in Patients with Major Depressive Disorder Using Multi-Omics Analysis and the Opade AI Prediction Tools.
Giulio CorrivettiFrancesco MonacoAnnarita VignapianoAlessandra MarennaKaia PalmSalvador Fernández-ArroyoEva Frigola-CapellVolker LeenOihane IbarrolaBurak AmilMattia Marco CarusonLorenzo ChiariottiMaria Alejandra Palacios-ArizaPieter J HoekstraHsin-Yin ChiangAlexandru FloareșAndrea FagioliniAlessio FasanoPublished in: Brain sciences (2024)
According to the World Health Organization (WHO), major depressive disorder (MDD) is the fourth leading cause of disability worldwide and the second most common disease after cardiovascular events. Approximately 280 million people live with MDD, with incidence varying by age and gender (female to male ratio of approximately 2:1). Although a variety of antidepressants are available for the different forms of MDD, there is still a high degree of individual variability in response and tolerability. Given the complexity and clinical heterogeneity of these disorders, a shift from "canonical treatment" to personalized medicine with improved patient stratification is needed. OPADE is a non-profit study that researches biomarkers in MDD to tailor personalized drug treatments, integrating genetics, epigenetics, microbiome, immune response, and clinical data for analysis. A total of 350 patients between 14 and 50 years will be recruited in 6 Countries (Italy, Colombia, Spain, The Netherlands, Turkey) for 24 months. Real-time electroencephalogram (EEG) and patient cognitive assessment will be correlated with biological sample analysis. A patient empowerment tool will be deployed to ensure patient commitment and to translate patient stories into data. The resulting data will be used to train the artificial intelligence/machine learning (AI/ML) predictive tool.
Keyphrases
- major depressive disorder
- artificial intelligence
- bipolar disorder
- machine learning
- big data
- case report
- cardiovascular events
- immune response
- end stage renal disease
- coronary artery disease
- cardiovascular disease
- electronic health record
- type diabetes
- clinical trial
- emergency department
- single cell
- data analysis
- open label
- newly diagnosed
- mental health
- prognostic factors
- functional connectivity
- toll like receptor
- study protocol
- resting state
- high speed
- patient reported outcomes