Abstract
Abstract
Background
Current categorical classification systems of psychiatric diagnoses lead to heterogeneity of symptoms within disorders and common co-occurrence of disorders. We investigated the heterogeneous and overlapping nature of symptom endorsement in a population-based sample across three of the most common categories of psychiatric disorders: depressive disorders, anxiety disorders, and sleep–wake disorders using unsupervised machine learning approaches.
Methods
We assessed a total of 43 symptoms in a discovery sample of 6,602 participants of the population-based Rotterdam Study between 2009 and 2013, and in a replication sample of 3,005 participants between 2016 and 2020. Symptoms were assessed using the Center for Epidemiologic Studies Depression Scale, the Hospital Anxiety and Depression Scale, and the Pittsburgh Sleep Quality Index. Hierarchical clustering analysis was applied on test items and participants to investigate common patterns of symptoms co-occurrence, and further quantitatively investigated with clustering methods to find groups that may represent similar psychiatric phenotypes.
Results
First, clustering analyses of the questionnaire items suggested a three-cluster solution representing clusters of “mixed” symptoms, “depressed affect and nervousness”, and “troubled sleep and interpersonal problems”. A highly similar clustering solution was independently established in the replication sample. Second, four groups of participants could be separated, and these groups scored differently on the item clusters.
Conclusions
We identified three clusters of psychiatric symptoms that most commonly co-occur in a population-based sample. These symptoms clustered stable over samples, but across the topics of depression, anxiety, and poor sleep. We identified four groups of participants that share (sub)clinical symptoms and might benefit from similar prevention or treatment strategies, despite potentially diverging, or lack of, diagnoses.
Funder
Erasmus Universiteit Rotterdam
Ministerie van Volksgezondheid, Welzijn en Sport
Ministerie van Onderwijs, Cultuur en Wetenschap
Publisher
Royal College of Psychiatrists
Subject
Psychiatry and Mental health
Cited by
2 articles.
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1. The Rotterdam Study. Design update and major findings between 2020 and 2024;European Journal of Epidemiology;2024-02
2. A Comprehensive Analysis of Psychiatric Disorders Using Deep Learning;2023 3rd International Conference on Smart Generation Computing, Communication and Networking (SMART GENCON);2023-12-29