Algorithm development to improve intervention effectiveness for parents with mental health signs and symptoms

Author:

Austin Robin R.1ORCID,Van Laarhoven Elizabeth2,Hjerpe Anna C.1,Huling Jared3,Mathiason Michelle A.1,Monsen Karen A.1

Affiliation:

1. University of Minnesota School of Nursing Minneapolis Minnesota USA

2. Mayo Clinic Rochester Minnesota USA

3. University of Minnesota, School of Public Health Division of Biostatistics Minneapolis Minnesota USA

Abstract

AbstractObjectivesIn this study we aimed to describe and compare groups formed by a rules‐based algorithm to prospectively identify clients at risk of poor outcomes in order to guide tailored public health nursing (PHN) intervention approaches.DesignData‐driven methods using standardized Omaha System PHN documentation.SampleClients ages 13–40 who received PHN home visiting services for both the Caretaking/parenting and Mental health problems (N = 4109).MeasurementWe applied a theory‐based algorithm consisting of six rules using existing Omaha System data. We examined the groups formed by the algorithm using standard descriptive, inferential statistics, and Latent Class Analysis.ResultsClients (N = 4109) were 25.1 (SD = 5.9) years old and had an average of 7.3 (SD = 3.2) problems, 250 (SD = 319) total interventions, and 32 (SD = 44) Mental health interventions. Overall outcomes improved after PHN interventions (p < .001 for all) and having more Mental health signs/symptoms was negatively associated with outcome scores (p < .001 for all).ConclusionsThis algorithm may be helpful in identifying high‐risk clients during a baseline assessment who may benefit from more intensive mental health interventions. Findings show there is value using the Omaha System for PHN documentation and algorithm clinical decision support development. Future research should focus on algorithm implementation in PHN clinical practice.

Publisher

Wiley

Subject

Public Health, Environmental and Occupational Health,General Nursing

Reference27 articles.

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Comparison of Weighting Methods to Understand Improved Outcomes Attributable to Public Health Nursing Interventions;Nursing Research;2024-06-11

2. Inferential Analysis and Interpretation;Intervention Effectiveness Research: Quality Improvement and Program Evaluation in Healthcare;2024

3. Advantages and disadvantages of using theory-based versus data-driven models with social and behavioral determinants of health data;Journal of the American Medical Informatics Association;2023-07-26

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