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Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records

IMPORTANCE: Half of the people who die by suicide make a health care visit within 1 month of their death. However, clinicians lack the tools to identify these patients. OBJECTIVE: To predict suicide attempts within 1 and 6 months of presentation at an emergency department (ED) for psychiatric proble...

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Autores principales: Nock, Matthew K., Millner, Alexander J., Ross, Eric L., Kennedy, Chris J., Al-Suwaidi, Maha, Barak-Corren, Yuval, Castro, Victor M., Castro-Ramirez, Franchesca, Lauricella, Tess, Murman, Nicole, Petukhova, Maria, Bird, Suzanne A., Reis, Ben, Smoller, Jordan W., Kessler, Ronald C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8796020/
https://www.ncbi.nlm.nih.gov/pubmed/35084483
http://dx.doi.org/10.1001/jamanetworkopen.2021.44373
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author Nock, Matthew K.
Millner, Alexander J.
Ross, Eric L.
Kennedy, Chris J.
Al-Suwaidi, Maha
Barak-Corren, Yuval
Castro, Victor M.
Castro-Ramirez, Franchesca
Lauricella, Tess
Murman, Nicole
Petukhova, Maria
Bird, Suzanne A.
Reis, Ben
Smoller, Jordan W.
Kessler, Ronald C.
author_facet Nock, Matthew K.
Millner, Alexander J.
Ross, Eric L.
Kennedy, Chris J.
Al-Suwaidi, Maha
Barak-Corren, Yuval
Castro, Victor M.
Castro-Ramirez, Franchesca
Lauricella, Tess
Murman, Nicole
Petukhova, Maria
Bird, Suzanne A.
Reis, Ben
Smoller, Jordan W.
Kessler, Ronald C.
author_sort Nock, Matthew K.
collection PubMed
description IMPORTANCE: Half of the people who die by suicide make a health care visit within 1 month of their death. However, clinicians lack the tools to identify these patients. OBJECTIVE: To predict suicide attempts within 1 and 6 months of presentation at an emergency department (ED) for psychiatric problems. DESIGN, SETTING, AND PARTICIPANTS: This prognostic study assessed the 1-month and 6-month risk of suicide attempts among 1818 patients presenting to an ED between February 4, 2015, and March 13, 2017, with psychiatric problems. Data analysis was performed from May 1, 2020, to November 19, 2021. MAIN OUTCOMES AND MEASURES: Suicide attempts 1 and 6 months after presentation to the ED were defined by combining data from electronic health records (EHRs) with patient 1-month (n = 1102) and 6-month (n = 1220) follow-up surveys. Ensemble machine learning was used to develop predictive models and a risk score for suicide. RESULTS: A total of 1818 patients participated in this study (1016 men [55.9%]; median age, 33 years [IQR, 24-46 years]; 266 Hispanic patients [14.6%]; 1221 non-Hispanic White patients [67.2%], 142 non-Hispanic Black patients [7.8%], 64 non-Hispanic Asian patients [3.5%], and 125 non-Hispanic patients of other race and ethnicity [6.9%]). A total of 137 of 1102 patients (12.9%; weighted prevalence) attempted suicide within 1 month, and a total of 268 of 1220 patients (22.0%; weighted prevalence) attempted suicide within 6 months. Clinicians’ assessment alone was little better than chance at predicting suicide attempts, with externally validated area under the receiver operating characteristic curve (AUC) of 0.67 for the 1-month model and 0.60 for the 6-month model. Prediction accuracy was slightly higher for models based on EHR data (1-month model: AUC, 0.71; 6 month model: AUC, 0.65) and was best using patient self-reports (1-month model: AUC, 0.76; 6-month model: AUC, 0.77), especially when patient self-reports were combined with EHR and/or clinician data (1-month model: AUC, 0.77; and 6 month model: AUC, 0.79). A model that used only 20 patient self-report questions and an EHR-based risk score performed similarly well (1-month model: AUC, 0.77; 6 month model: AUC, 0.78). In the best 1-month model, 30.7% (positive predicted value) of the patients classified as having highest risk (top 25% of the sample) made a suicide attempt within 1 month of their ED visit, accounting for 64.8% (sensitivity) of all 1-month attempts. In the best 6-month model, 46.0% (positive predicted value) of the patients classified at highest risk made a suicide attempt within 6 months of their ED visit, accounting for 50.2% (sensitivity) of all 6-month attempts. CONCLUSIONS AND RELEVANCE: This prognostic study suggests that the ability to identify patients at high risk of suicide attempt after an ED visit for psychiatric problems improved using a combination of patient self-reports and EHR data.
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spelling pubmed-87960202022-02-07 Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records Nock, Matthew K. Millner, Alexander J. Ross, Eric L. Kennedy, Chris J. Al-Suwaidi, Maha Barak-Corren, Yuval Castro, Victor M. Castro-Ramirez, Franchesca Lauricella, Tess Murman, Nicole Petukhova, Maria Bird, Suzanne A. Reis, Ben Smoller, Jordan W. Kessler, Ronald C. JAMA Netw Open Original Investigation IMPORTANCE: Half of the people who die by suicide make a health care visit within 1 month of their death. However, clinicians lack the tools to identify these patients. OBJECTIVE: To predict suicide attempts within 1 and 6 months of presentation at an emergency department (ED) for psychiatric problems. DESIGN, SETTING, AND PARTICIPANTS: This prognostic study assessed the 1-month and 6-month risk of suicide attempts among 1818 patients presenting to an ED between February 4, 2015, and March 13, 2017, with psychiatric problems. Data analysis was performed from May 1, 2020, to November 19, 2021. MAIN OUTCOMES AND MEASURES: Suicide attempts 1 and 6 months after presentation to the ED were defined by combining data from electronic health records (EHRs) with patient 1-month (n = 1102) and 6-month (n = 1220) follow-up surveys. Ensemble machine learning was used to develop predictive models and a risk score for suicide. RESULTS: A total of 1818 patients participated in this study (1016 men [55.9%]; median age, 33 years [IQR, 24-46 years]; 266 Hispanic patients [14.6%]; 1221 non-Hispanic White patients [67.2%], 142 non-Hispanic Black patients [7.8%], 64 non-Hispanic Asian patients [3.5%], and 125 non-Hispanic patients of other race and ethnicity [6.9%]). A total of 137 of 1102 patients (12.9%; weighted prevalence) attempted suicide within 1 month, and a total of 268 of 1220 patients (22.0%; weighted prevalence) attempted suicide within 6 months. Clinicians’ assessment alone was little better than chance at predicting suicide attempts, with externally validated area under the receiver operating characteristic curve (AUC) of 0.67 for the 1-month model and 0.60 for the 6-month model. Prediction accuracy was slightly higher for models based on EHR data (1-month model: AUC, 0.71; 6 month model: AUC, 0.65) and was best using patient self-reports (1-month model: AUC, 0.76; 6-month model: AUC, 0.77), especially when patient self-reports were combined with EHR and/or clinician data (1-month model: AUC, 0.77; and 6 month model: AUC, 0.79). A model that used only 20 patient self-report questions and an EHR-based risk score performed similarly well (1-month model: AUC, 0.77; 6 month model: AUC, 0.78). In the best 1-month model, 30.7% (positive predicted value) of the patients classified as having highest risk (top 25% of the sample) made a suicide attempt within 1 month of their ED visit, accounting for 64.8% (sensitivity) of all 1-month attempts. In the best 6-month model, 46.0% (positive predicted value) of the patients classified at highest risk made a suicide attempt within 6 months of their ED visit, accounting for 50.2% (sensitivity) of all 6-month attempts. CONCLUSIONS AND RELEVANCE: This prognostic study suggests that the ability to identify patients at high risk of suicide attempt after an ED visit for psychiatric problems improved using a combination of patient self-reports and EHR data. American Medical Association 2022-01-27 /pmc/articles/PMC8796020/ /pubmed/35084483 http://dx.doi.org/10.1001/jamanetworkopen.2021.44373 Text en Copyright 2022 Nock MK et al. JAMA Network Open. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the CC-BY License.
spellingShingle Original Investigation
Nock, Matthew K.
Millner, Alexander J.
Ross, Eric L.
Kennedy, Chris J.
Al-Suwaidi, Maha
Barak-Corren, Yuval
Castro, Victor M.
Castro-Ramirez, Franchesca
Lauricella, Tess
Murman, Nicole
Petukhova, Maria
Bird, Suzanne A.
Reis, Ben
Smoller, Jordan W.
Kessler, Ronald C.
Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records
title Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records
title_full Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records
title_fullStr Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records
title_full_unstemmed Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records
title_short Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records
title_sort prediction of suicide attempts using clinician assessment, patient self-report, and electronic health records
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8796020/
https://www.ncbi.nlm.nih.gov/pubmed/35084483
http://dx.doi.org/10.1001/jamanetworkopen.2021.44373
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