TY - JOUR
T1 - Deconstructing depression by machine learning
T2 - the POKAL-PSY study
AU - for the POKAL group
AU - Eder, Julia
AU - Pfeiffer, Lisa
AU - Wichert, Sven P.
AU - Keeser, Benjamin
AU - Simon, Maria S.
AU - Popovic, David
AU - Glocker, Catherine
AU - Brunoni, Andre R.
AU - Schneider, Antonius
AU - Gensichen, Jochen
AU - Schmitt, Andrea
AU - Musil, Richard
AU - Falkai, Peter
AU - Dreischulte, Tobias
AU - Henningsen, Peter
AU - Bühner, Markus
AU - Biersack, Katharina
AU - Brand, Constantin
AU - Brisnik, Vita
AU - Ebert, Christopher
AU - Gökce, Feyza
AU - Haas, Carolin
AU - Kaupe, Lukas
AU - Raub, Jonas
AU - Reindl-Spanner, Philipp
AU - Schillock, Hannah
AU - Schönweger, Petra
AU - von Schrottenberg, Victoria
AU - Vukas, Jochen
AU - Younesi, Puya
AU - Jung-Sievers, Caroline
AU - Krcmar, Helmut
AU - Lukaschek, Karoline
AU - Lochbühler, Kirsten
AU - Pitschel-Walz, Gabriele
N1 - Publisher Copyright:
© The Author(s) 2023.
PY - 2024/8
Y1 - 2024/8
N2 - Unipolar depression is a prevalent and disabling condition, often left untreated. In the outpatient setting, general practitioners fail to recognize depression in about 50% of cases mainly due to somatic comorbidities. Given the significant economic, social, and interpersonal impact of depression and its increasing prevalence, there is a need to improve its diagnosis and treatment in outpatient care. Various efforts have been made to isolate individual biological markers for depression to streamline diagnostic and therapeutic approaches. However, the intricate and dynamic interplay between neuroinflammation, metabolic abnormalities, and relevant neurobiological correlates of depression is not yet fully understood. To address this issue, we propose a naturalistic prospective study involving outpatients with unipolar depression, individuals without depression or comorbidities, and healthy controls. In addition to clinical assessments, cardiovascular parameters, metabolic factors, and inflammatory parameters are collected. For analysis we will use conventional statistics as well as machine learning algorithms. We aim to detect relevant participant subgroups by data-driven cluster algorithms and their impact on the subjects’ long-term prognosis. The POKAL-PSY study is a subproject of the research network POKAL (Predictors and Clinical Outcomes in Depressive Disorders; GRK 2621).
AB - Unipolar depression is a prevalent and disabling condition, often left untreated. In the outpatient setting, general practitioners fail to recognize depression in about 50% of cases mainly due to somatic comorbidities. Given the significant economic, social, and interpersonal impact of depression and its increasing prevalence, there is a need to improve its diagnosis and treatment in outpatient care. Various efforts have been made to isolate individual biological markers for depression to streamline diagnostic and therapeutic approaches. However, the intricate and dynamic interplay between neuroinflammation, metabolic abnormalities, and relevant neurobiological correlates of depression is not yet fully understood. To address this issue, we propose a naturalistic prospective study involving outpatients with unipolar depression, individuals without depression or comorbidities, and healthy controls. In addition to clinical assessments, cardiovascular parameters, metabolic factors, and inflammatory parameters are collected. For analysis we will use conventional statistics as well as machine learning algorithms. We aim to detect relevant participant subgroups by data-driven cluster algorithms and their impact on the subjects’ long-term prognosis. The POKAL-PSY study is a subproject of the research network POKAL (Predictors and Clinical Outcomes in Depressive Disorders; GRK 2621).
KW - Biological psychiatry
KW - MDD
KW - Machine learning
KW - Phenotyping
UR - http://www.scopus.com/inward/record.url?scp=85179731304&partnerID=8YFLogxK
U2 - 10.1007/s00406-023-01720-9
DO - 10.1007/s00406-023-01720-9
M3 - Article
C2 - 38091084
AN - SCOPUS:85179731304
SN - 0940-1334
VL - 274
SP - 1153
EP - 1165
JO - European Archives of Psychiatry and Clinical Neuroscience
JF - European Archives of Psychiatry and Clinical Neuroscience
IS - 5
ER -