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Predicting anxiety treatment outcome in community mental health services using linked health administrative data. | LitMetric

AI Article Synopsis

  • Anxiety disorders are the most prevalent mental health issues worldwide, impacting the lives of millions, with a strong need for personalized treatment approaches.
  • The study analyzed data from 46,938 patients to evaluate the effectiveness of community mental health treatments using the Kessler psychological distress scale (K10) and aimed to identify reliable predictors of treatment outcomes.
  • Machine learning models were developed to predict treatment success based on pre-treatment K10 scores and health service interactions, showing moderate performance, highlighting the importance of ongoing patient monitoring and better data collection for improved predictions.

Article Abstract

Anxiety disorders is ranked as the most common class of mental illness disorders globally, affecting hundreds of millions of people and significantly impacting daily life. Developing reliable predictive models for anxiety treatment outcomes holds immense potential to help guide the development of personalised care, optimise resource allocation and improve patient outcomes. This research investigates whether community mental health treatment for anxiety disorder is associated with reliable changes in Kessler psychological distress scale (K10) scores and whether pre-treatment K10 scores and past health service interactions can accurately predict reliable change (improvement). The K10 assessment was administered to 46,938 public patients in a community setting within the Western Australia dataset in 2005-2022; of whom 3794 in 4067 episodes of care were reassessed at least twice for anxiety disorders, obsessive-compulsive disorder, or reaction to severe stress and adjustment disorders (ICD-10 codes F40-F43). Reliable change on the K10 was calculated and used with the post-treatment score as the outcome variables. Machine learning models were developed using features from a large health service administrative linked dataset that includes the pre-treatment K10 assessment as well as community mental health episodes of care, emergency department presentations, and inpatient admissions for prediction. The classification model achieved an area under the receiver operating characteristic curve of 0.76 as well as an F1 score, precision and recall of 0.69, and the regression model achieved an R of 0.37 with mean absolute error of 5.58 on the test dataset. While the prediction models achieved moderate performance, they also underscore the necessity for regular patient monitoring and the collection of more clinically relevant and contextual patient data to further improve prediction of treatment outcomes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11375212PMC
http://dx.doi.org/10.1038/s41598-024-71557-2DOI Listing

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