The help-seeking process and predictors of mental health care use among individuals with depressive symptoms: a machine learning approach

Autor: Vanessa Juergensen, Lina-Jolien Peter, David Steyrl, Cindy Sumaly Lor, Anh Phi Bui, Thomas McLaren, Holger Muehlan, Samuel Tomczyk, Silke Schmidt, Georg Schomerus
Jazyk: angličtina
Rok vydání: 2024
Předmět:
Zdroj: Frontiers in Public Health, Vol 12 (2024)
Druh dokumentu: article
ISSN: 2296-2565
DOI: 10.3389/fpubh.2024.1504720
Popis: PurposeThe goal of the study was to identify the most important influences on professional healthcare use of people with depressive symptoms. We incorporated findings from research areas of health behaviors, stigma, and motivation to predict the help-seeking process variables from a wide range of personal factors and attitudes.MethodsA sample of 1,368 adults with untreated depressive symptoms participated in an online survey with three-and six-month follow-ups. We conducted multiple linear regressions for (a) help-seeking attitudes, and (b) help-seeking intentions, and logistic regression for (c) help-seeking behavior with machine learning methods.ResultsWhile self-stigma and treatment experience are important influences on help-seeking attitudes, complaint perception is relevant for intention. The best predictor for healthcare use remains the intention. Along the help-seeking process, we detected a shift of relevant factors from broader perceptions of mental illness and help-seeking to concrete suffering, i.e., subjective symptom perception.ConclusionThe results suggest a spectrum of influencing factors ranging from personal, self-determined factors to socially normalized factors. We discuss social influences on professional help-seeking and the use of combined public health programs and tailored help-seeking interventions.Clinical trial registrationGerman Clinical Trials Register (https://drks.de/search/en): Identifier DRKS00023557.
Databáze: Directory of Open Access Journals