How can we obtain stress profiles in psychiatry?

STRESS-INDEX: Towards biologically-informed integrated stress profiles in psychiatry

Stress significantly impacts mental and physical health, yet its effects vary greatly between individuals. The STRESS-INDEX project developed innovative stress profiles using biological, psychological, and clinical data. These profiles integrate information on genetics, stress hormones, and life experiences to predict who might be at risk for stress-related disorders such as depression and anxiety.

The need for such innovation is clear: depression affects over 260 million people worldwide, and anxiety disorders are among the most common mental health issues. Current methods for identifying high-risk individuals often fail to account for the complex interplay of biological and psychological factors. The STRESSINDEX project addresses this gap by offering a cutting-edge, data-driven approach.

Using advanced machine learning, researchers created predictive models validated with data from large cohorts, including NESDA. These tools not only enhance early diagnosis but also support clinicians in personalizing treatment strategies. The project's findings have the potential to transform mental health care, reducing the societal burden of stress-related disorders.

Key results include the identification of biomarkers linked to stress resilience and vulnerability, providing insights into individual differences in stress responses. Moving forward, clinical trials will refine these models for widespread use, benefiting patients, healthcare providers, and society.

Summary
The STRESS-INDEX project combines advanced machine learning with biological and clinical data to create personalized stress profiles. These profiles help identify individuals at risk for stress-related disorders, paving the way for tailored interventions and improved mental health care.
Technology Readiness Level (TRL)
48 months
Time period
6 - 8
Partners