Psych-STRATA - A Stratified Treatment Algorithm in Psychiatry: A program on stratified pharmacogenomics in severe mental illness

Bando/ente finanziatore: HORIZON-HLTH-2021-STAYHLTH-01
Ruolo: Partner
Data inizio: - Data fine:
Ambito: Internazionale
Responsabile di progetto: Prof.ssa Alessandra Minelli
Dipartimento: Dipartimento di Medicina Molecolare e Traslazionale

Abstract

PSYCH-STRATA

A key problem in Mental Health is that up to one third of patients suffering from major mental disorders develop resistance against drug therapy. However, patients showing early signs of treatment resistance (TR) do not receive adequate early intensive pharmacological treatment but instead they undergo a stepwise trial-and-error treatment approach. This situation originates from three major knowledge and translation gaps: i.) we lack effective methods to identify individuals at risk for TR early in the disease
process, ii.) we lack effective, personalized treatment strategies grounded in insights into the biological basis of TR, and iii.) we lack efficient processes to translate scientific insights about TR into clinical practice, primary care and treatment guidelines. It is the central goal of PSYCH-STRATA to bridge these gaps and pave the way for a shift towards a treatment decision-making process tailored for the individual at risk for TR. To that end, we aim to establish evidence-based criteria to make decisions of early intense treatment in individuals at risk for TR across the major psychiatric disorders of schizophrenia, bipolar disorder and major depression. PSYCHSTRATA will i.) dissect the biological basis of TR and establish criteria to enable early detection of individuals at risk for TR based on the integrated analysis of an unprecedented collection of genetic, biological, digital mental health, and clinical data. ii.) Moreover, we will
determine effective treatment strategies of individuals at risk for TR early in the treatment process, based on pan-European clinical trials in SCZ, BD and MDD. These efforts will enable the establishment of novel multimodal machine learning models to predict TR risk and treatment response. Lastly, iii.) we will enable the translation of these findings into clinical practice by prototyping the integration of personalized treatment decision support and patient-oriented decision-making mental health boards

Partecipanti

  • WESTFAELISCHE WILHELMS-UNIVERSITAET MUENSTER (Coordinatore), Germania
  • EUROPEAN RESEARCH SERVICES GMBH, Germania
  • CARDIFF UNIVERSITY, Regno Unito
  • KING'S COLLEGE LONDON, Regno Unito
  • OSLO UNIVERSITETSSYKEHUS HF, Norvegia
  • UNIVERSITETET I OSLO, Norvegia
  • ALMA MATER STUDIORUM - UNIVERSITA DI BOLOGNA, Italia
  • GOETEBORGS UNIVERSITET, Svezia
  • FRAUNHOFER GESELLSCHAFT ZUR FOERDERUNG DER ANGEWANDTEN FORSCHUNG E.V., Germania
  • INSTITUT DU CERVEAU ET DE LA MOELLE EPINIERE, Francia
  • UNIVERSITA DEGLI STUDI DI CAGLIARI Italia
  • FUNDACIO CLINIC PER A LA RECERCA BIOMEDICA, Spagna
  • CHARITE - UNIVERSITAETSMEDIZIN BERLIN, Germania
  • MAX-PLANCK-GESELLSCHAFT ZUR FORDERUNG DER WISSENSCHAFTEN EV, Germania
  • UNIVERSITAIR MEDISCH CENTRUM UTRECHT, Olanda
  • KARLSRUHER INSTITUT FUER TECHNOLOGIE, Germania
  • KATHOLIEKE UNIVERSITEIT LEUVEN, Belgio
  • FUNDACIO CENTRE DE REGULACIO GENOMICA Spagna
  • UNIVERSITA DEGLI STUDI DI BRESCIA, Italia
  • FUNDACION PARA LA INVESTIGACION BIOMEDICA DEL HOSPITAL GREGORIO MARANON, Spagna
  • GLOBAL ALLIANCE OF MENTAL ILLNESS ADVOCACY NETWORKS EUROPE AISBL, Belgio
  • LUDWIG-MAXIMILIANS-UNIVERSITAET MUENCHEN
  • KAIROS GMBH, Germania
  • REGION HOVEDSTADEN, Danimarca
  • THE UNIVERSITY OF ADELAID, Austria
  • WORLD PSYCHIATRIC ASSOCIATION, Svizzera

Costo totale progetto/Contributo UE: € 3.804.369,21

Finanziamento assegnato ad UniBS: € 144.702,00

Ultimo aggiornamento il: 09/04/2024