Major depressive disorder (MDD) is a leading cause of disability worldwide, affecting over 300 million people and posing a significant burden on healthcare systems. The heterogeneity of MDD can be attributed to diverse etiologic mechanisms. Characterizing MDD subtypes with distinct clinical manifestations could improve patient care through targeted personalized interventions. Topological Data Analysis (TDA) has emerged as a promising tool for identifying homogeneous subgroups of diverse medical conditions and key disease markers. Our study applied TDA to data from a UK Biobank MDD subcohort comprising 3052 samples, leveraging genetic, environmental, and neuroimaging data to assess their differential capability in predicting clinical outcomes in MDD. TDA graphs were built from unimodal and multimodal feature sets and quantitatively compared based on their capability to predict depression severity, physical comorbidities, and treatment response outcomes. Our findings showed a key role of the environment in determining the severity of depressive symptoms. Comorbid medical conditions of MDD were best predicted by brain imaging characteristics, while brain functional patterns resulted in the best predictors of the treatment response profiles. Our results suggest that considering genetic, environmental, and brain characteristics is essential to characterize the heterogeneity of MDD, providing avenues for the definition of robust markers of health outcomes in MDD.

Gene–environment–brain topology reveals clinical subtypes of depression in UK Biobank / E. Tassi, A. Pigoni, N. Turtulici, F. Colombo, L. Fortaner-Uyà, A.M. Bianchi, F. Benedetti, C. Fabbri, B. Vai, P. Brambilla, E. Maggioni. - In: SCIENTIFIC REPORTS. - ISSN 2045-2322. - 15:1(2025 Oct), pp. 35538.1-35538.20. [10.1038/s41598-025-19624-0]

Gene–environment–brain topology reveals clinical subtypes of depression in UK Biobank

P. Brambilla
Penultimo
;
2025

Abstract

Major depressive disorder (MDD) is a leading cause of disability worldwide, affecting over 300 million people and posing a significant burden on healthcare systems. The heterogeneity of MDD can be attributed to diverse etiologic mechanisms. Characterizing MDD subtypes with distinct clinical manifestations could improve patient care through targeted personalized interventions. Topological Data Analysis (TDA) has emerged as a promising tool for identifying homogeneous subgroups of diverse medical conditions and key disease markers. Our study applied TDA to data from a UK Biobank MDD subcohort comprising 3052 samples, leveraging genetic, environmental, and neuroimaging data to assess their differential capability in predicting clinical outcomes in MDD. TDA graphs were built from unimodal and multimodal feature sets and quantitatively compared based on their capability to predict depression severity, physical comorbidities, and treatment response outcomes. Our findings showed a key role of the environment in determining the severity of depressive symptoms. Comorbid medical conditions of MDD were best predicted by brain imaging characteristics, while brain functional patterns resulted in the best predictors of the treatment response profiles. Our results suggest that considering genetic, environmental, and brain characteristics is essential to characterize the heterogeneity of MDD, providing avenues for the definition of robust markers of health outcomes in MDD.
major depressive disorder; genetic; environment; brain imaging; topological data analysis
Settore MEDS-11/A - Psichiatria
   Assegnazione Dipartimenti di Eccellenza 2023-2027 - Dipartimento di FISIOPATOLOGIA MEDICO-CHIRURGICA E DEI TRAPIANTI
   DECC23_009
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA

   Brain-environment digital twin models for predictive stratification of bipolar disorder (BRAINTWIN)
   BRAINTWIN
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
   P20229MFRC_002
ott-2025
Article (author)
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1238416
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