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Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults

IMPORTANCE: Understanding the differences and potential synergies between traditional clinician assessment and automated machine learning might enable more accurate and useful suicide risk detection. OBJECTIVE: To evaluate the respective and combined abilities of a real-time machine learning model a...

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Autores principales: Wilimitis, Drew, Turer, Robert W., Ripperger, Michael, McCoy, Allison B., Sperry, Sarah H., Fielstein, Elliot M., Kurz, Troy, Walsh, Colin G.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9107032/
https://www.ncbi.nlm.nih.gov/pubmed/35560048
http://dx.doi.org/10.1001/jamanetworkopen.2022.12095
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author Wilimitis, Drew
Turer, Robert W.
Ripperger, Michael
McCoy, Allison B.
Sperry, Sarah H.
Fielstein, Elliot M.
Kurz, Troy
Walsh, Colin G.
author_facet Wilimitis, Drew
Turer, Robert W.
Ripperger, Michael
McCoy, Allison B.
Sperry, Sarah H.
Fielstein, Elliot M.
Kurz, Troy
Walsh, Colin G.
author_sort Wilimitis, Drew
collection PubMed
description IMPORTANCE: Understanding the differences and potential synergies between traditional clinician assessment and automated machine learning might enable more accurate and useful suicide risk detection. OBJECTIVE: To evaluate the respective and combined abilities of a real-time machine learning model and the Columbia Suicide Severity Rating Scale (C-SSRS) to predict suicide attempt (SA) and suicidal ideation (SI). DESIGN, SETTING, AND PARTICIPANTS: This cohort study included encounters with adult patients (aged ≥18 years) at a major academic medical center. The C-SSRS was administered during routine care, and a Vanderbilt Suicide Attempt and Ideation Likelihood (VSAIL) prediction was generated in the electronic health record. Encounters took place in the inpatient, ambulatory surgical, and emergency department settings. Data were collected from June 2019 to September 2020. MAIN OUTCOMES AND MEASURES: Primary outcomes were the incidence of SA and SI, encoded as International Classification of Diseases codes, occurring within various time periods after an index visit. We evaluated the retrospective validity of the C-SSRS, VSAIL, and ensemble models combining both. Discrimination metrics included area under the receiver operating curve (AUROC), area under the precision-recall curve (AUPR), sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV). RESULTS: The cohort included 120 398 unique index visits for 83 394 patients (mean [SD] age, 51.2 [20.6] years; 38 107 [46%] men; 45 273 [54%] women; 13 644 [16%] Black; 63 869 [77%] White). Within 30 days of an index visit, the combined models had higher AUROC (SA: 0.874-0.887; SI: 0.869-0.879) than both the VSAIL (SA: 0.729; SI: 0.773) and C-SSRS (SA: 0.823; SI: 0.777) models. In the highest risk-decile, ensemble methods had PPV of 1.3% to 1.4% for SA and 8.3% to 8.7% for SI and sensitivity of 77.6% to 79.5% for SA and 67.4% to 70.1% for SI, outperforming VSAIL (PPV for SA: 0.4%; PPV for SI: 3.9%; sensitivity for SA: 28.8%; sensitivity for SI: 35.1%) and C-SSRS (PPV for SA: 0.5%; PPV for SI: 3.5%; sensitivity for SA: 76.6%; sensitivity for SI: 68.8%). CONCLUSIONS AND RELEVANCE: In this study, suicide risk prediction was optimal when leveraging both in-person screening (for acute measures of risk in patient-reported suicidality) and historical EHR data (for underlying clinical factors that can quantify a patient’s passive risk level). To improve suicide risk classification, prediction systems could combine pretrained machine learning with structured clinician assessment without needing to retrain the original model.
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spelling pubmed-91070322022-05-27 Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults Wilimitis, Drew Turer, Robert W. Ripperger, Michael McCoy, Allison B. Sperry, Sarah H. Fielstein, Elliot M. Kurz, Troy Walsh, Colin G. JAMA Netw Open Original Investigation IMPORTANCE: Understanding the differences and potential synergies between traditional clinician assessment and automated machine learning might enable more accurate and useful suicide risk detection. OBJECTIVE: To evaluate the respective and combined abilities of a real-time machine learning model and the Columbia Suicide Severity Rating Scale (C-SSRS) to predict suicide attempt (SA) and suicidal ideation (SI). DESIGN, SETTING, AND PARTICIPANTS: This cohort study included encounters with adult patients (aged ≥18 years) at a major academic medical center. The C-SSRS was administered during routine care, and a Vanderbilt Suicide Attempt and Ideation Likelihood (VSAIL) prediction was generated in the electronic health record. Encounters took place in the inpatient, ambulatory surgical, and emergency department settings. Data were collected from June 2019 to September 2020. MAIN OUTCOMES AND MEASURES: Primary outcomes were the incidence of SA and SI, encoded as International Classification of Diseases codes, occurring within various time periods after an index visit. We evaluated the retrospective validity of the C-SSRS, VSAIL, and ensemble models combining both. Discrimination metrics included area under the receiver operating curve (AUROC), area under the precision-recall curve (AUPR), sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV). RESULTS: The cohort included 120 398 unique index visits for 83 394 patients (mean [SD] age, 51.2 [20.6] years; 38 107 [46%] men; 45 273 [54%] women; 13 644 [16%] Black; 63 869 [77%] White). Within 30 days of an index visit, the combined models had higher AUROC (SA: 0.874-0.887; SI: 0.869-0.879) than both the VSAIL (SA: 0.729; SI: 0.773) and C-SSRS (SA: 0.823; SI: 0.777) models. In the highest risk-decile, ensemble methods had PPV of 1.3% to 1.4% for SA and 8.3% to 8.7% for SI and sensitivity of 77.6% to 79.5% for SA and 67.4% to 70.1% for SI, outperforming VSAIL (PPV for SA: 0.4%; PPV for SI: 3.9%; sensitivity for SA: 28.8%; sensitivity for SI: 35.1%) and C-SSRS (PPV for SA: 0.5%; PPV for SI: 3.5%; sensitivity for SA: 76.6%; sensitivity for SI: 68.8%). CONCLUSIONS AND RELEVANCE: In this study, suicide risk prediction was optimal when leveraging both in-person screening (for acute measures of risk in patient-reported suicidality) and historical EHR data (for underlying clinical factors that can quantify a patient’s passive risk level). To improve suicide risk classification, prediction systems could combine pretrained machine learning with structured clinician assessment without needing to retrain the original model. American Medical Association 2022-05-13 /pmc/articles/PMC9107032/ /pubmed/35560048 http://dx.doi.org/10.1001/jamanetworkopen.2022.12095 Text en Copyright 2022 Wilimitis D 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
Wilimitis, Drew
Turer, Robert W.
Ripperger, Michael
McCoy, Allison B.
Sperry, Sarah H.
Fielstein, Elliot M.
Kurz, Troy
Walsh, Colin G.
Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults
title Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults
title_full Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults
title_fullStr Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults
title_full_unstemmed Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults
title_short Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults
title_sort integration of face-to-face screening with real-time machine learning to predict risk of suicide among adults
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9107032/
https://www.ncbi.nlm.nih.gov/pubmed/35560048
http://dx.doi.org/10.1001/jamanetworkopen.2022.12095
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