Developing a prediction model to identify people with severe mental illness without regular contact to their GP - a study based on data from the Danish national registers

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Standard

Developing a prediction model to identify people with severe mental illness without regular contact to their GP - a study based on data from the Danish national registers. / Naesager, Astrid Helene Deleuran; Damgaard, Sofie Norgil; Rozing, Maarten Pieter; Siersma, Volkert; Møller, Anne; Tranberg, Katrine.

I: BMC Psychiatry, Bind 24, Nr. 1, 301, 2024.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Naesager, AHD, Damgaard, SN, Rozing, MP, Siersma, V, Møller, A & Tranberg, K 2024, 'Developing a prediction model to identify people with severe mental illness without regular contact to their GP - a study based on data from the Danish national registers', BMC Psychiatry, bind 24, nr. 1, 301. https://doi.org/10.1186/s12888-024-05743-x

APA

Naesager, A. H. D., Damgaard, S. N., Rozing, M. P., Siersma, V., Møller, A., & Tranberg, K. (2024). Developing a prediction model to identify people with severe mental illness without regular contact to their GP - a study based on data from the Danish national registers. BMC Psychiatry, 24(1), [301]. https://doi.org/10.1186/s12888-024-05743-x

Vancouver

Naesager AHD, Damgaard SN, Rozing MP, Siersma V, Møller A, Tranberg K. Developing a prediction model to identify people with severe mental illness without regular contact to their GP - a study based on data from the Danish national registers. BMC Psychiatry. 2024;24(1). 301. https://doi.org/10.1186/s12888-024-05743-x

Author

Naesager, Astrid Helene Deleuran ; Damgaard, Sofie Norgil ; Rozing, Maarten Pieter ; Siersma, Volkert ; Møller, Anne ; Tranberg, Katrine. / Developing a prediction model to identify people with severe mental illness without regular contact to their GP - a study based on data from the Danish national registers. I: BMC Psychiatry. 2024 ; Bind 24, Nr. 1.

Bibtex

@article{7a9301e2d4f04a66beb3ac9d9aa67d73,
title = "Developing a prediction model to identify people with severe mental illness without regular contact to their GP - a study based on data from the Danish national registers",
abstract = "INTRODUCTION: People with severe mental illness (SMI) face a higher risk of premature mortality due to physical morbidity compared to the general population. Establishing regular contact with a general practitioner (GP) can mitigate this risk, yet barriers to healthcare access persist. Population initiatives to overcome these barriers require efficient identification of those persons in need.OBJECTIVE: To develop a predictive model to identify persons with SMI not attending a GP regularly.METHOD: For individuals with psychotic disorder, bipolar disorder, or severe depression between 2011 and 2016 (n = 48,804), GP contacts from 2016 to 2018 were retrieved. Two logistic regression models using demographic and clinical data from Danish national registers predicted severe mental illness without GP contact. Model 1 retained significant main effect variables, while Model 2 included significant bivariate interactions. Goodness-of-fit and discriminating ability were evaluated using Hosmer-Lemeshow (HL) test and area under the receiver operating characteristic curve (AUC), respectively, via cross-validation.RESULTS: The simple model retained 11 main effects, while the expanded model included 13 main effects and 10 bivariate interactions after backward elimination. HL tests were non-significant for both models (p = 0.50 for the simple model and p = 0.68 for the extended model). Their respective AUC values were 0.789 and 0.790.CONCLUSION: Leveraging Danish national register data, we developed two predictive models to identify SMI individuals without GP contact. The extended model had slightly better model performance than the simple model. Our study may help to identify persons with SMI not engaging with primary care which could enhance health and treatment outcomes in this group.",
author = "Naesager, {Astrid Helene Deleuran} and Damgaard, {Sofie Norgil} and Rozing, {Maarten Pieter} and Volkert Siersma and Anne M{\o}ller and Katrine Tranberg",
note = "{\textcopyright} 2024. The Author(s).",
year = "2024",
doi = "10.1186/s12888-024-05743-x",
language = "English",
volume = "24",
journal = "B M C Psychiatry",
issn = "1471-244X",
publisher = "BioMed Central Ltd.",
number = "1",

}

RIS

TY - JOUR

T1 - Developing a prediction model to identify people with severe mental illness without regular contact to their GP - a study based on data from the Danish national registers

AU - Naesager, Astrid Helene Deleuran

AU - Damgaard, Sofie Norgil

AU - Rozing, Maarten Pieter

AU - Siersma, Volkert

AU - Møller, Anne

AU - Tranberg, Katrine

N1 - © 2024. The Author(s).

PY - 2024

Y1 - 2024

N2 - INTRODUCTION: People with severe mental illness (SMI) face a higher risk of premature mortality due to physical morbidity compared to the general population. Establishing regular contact with a general practitioner (GP) can mitigate this risk, yet barriers to healthcare access persist. Population initiatives to overcome these barriers require efficient identification of those persons in need.OBJECTIVE: To develop a predictive model to identify persons with SMI not attending a GP regularly.METHOD: For individuals with psychotic disorder, bipolar disorder, or severe depression between 2011 and 2016 (n = 48,804), GP contacts from 2016 to 2018 were retrieved. Two logistic regression models using demographic and clinical data from Danish national registers predicted severe mental illness without GP contact. Model 1 retained significant main effect variables, while Model 2 included significant bivariate interactions. Goodness-of-fit and discriminating ability were evaluated using Hosmer-Lemeshow (HL) test and area under the receiver operating characteristic curve (AUC), respectively, via cross-validation.RESULTS: The simple model retained 11 main effects, while the expanded model included 13 main effects and 10 bivariate interactions after backward elimination. HL tests were non-significant for both models (p = 0.50 for the simple model and p = 0.68 for the extended model). Their respective AUC values were 0.789 and 0.790.CONCLUSION: Leveraging Danish national register data, we developed two predictive models to identify SMI individuals without GP contact. The extended model had slightly better model performance than the simple model. Our study may help to identify persons with SMI not engaging with primary care which could enhance health and treatment outcomes in this group.

AB - INTRODUCTION: People with severe mental illness (SMI) face a higher risk of premature mortality due to physical morbidity compared to the general population. Establishing regular contact with a general practitioner (GP) can mitigate this risk, yet barriers to healthcare access persist. Population initiatives to overcome these barriers require efficient identification of those persons in need.OBJECTIVE: To develop a predictive model to identify persons with SMI not attending a GP regularly.METHOD: For individuals with psychotic disorder, bipolar disorder, or severe depression between 2011 and 2016 (n = 48,804), GP contacts from 2016 to 2018 were retrieved. Two logistic regression models using demographic and clinical data from Danish national registers predicted severe mental illness without GP contact. Model 1 retained significant main effect variables, while Model 2 included significant bivariate interactions. Goodness-of-fit and discriminating ability were evaluated using Hosmer-Lemeshow (HL) test and area under the receiver operating characteristic curve (AUC), respectively, via cross-validation.RESULTS: The simple model retained 11 main effects, while the expanded model included 13 main effects and 10 bivariate interactions after backward elimination. HL tests were non-significant for both models (p = 0.50 for the simple model and p = 0.68 for the extended model). Their respective AUC values were 0.789 and 0.790.CONCLUSION: Leveraging Danish national register data, we developed two predictive models to identify SMI individuals without GP contact. The extended model had slightly better model performance than the simple model. Our study may help to identify persons with SMI not engaging with primary care which could enhance health and treatment outcomes in this group.

U2 - 10.1186/s12888-024-05743-x

DO - 10.1186/s12888-024-05743-x

M3 - Journal article

C2 - 38654257

VL - 24

JO - B M C Psychiatry

JF - B M C Psychiatry

SN - 1471-244X

IS - 1

M1 - 301

ER -

ID: 389578144