Cargando…
Identifying Predictors of Suicide in Severe Mental Illness: A Feasibility Study of a Clinical Prediction Rule (Oxford Mental Illness and Suicide Tool or OxMIS)
BACKGROUND: Oxford Mental Illness and Suicide tool (OxMIS) is a brief, scalable, freely available, structured risk assessment tool to assess suicide risk in patients with severe mental illness (schizophrenia-spectrum disorders or bipolar disorder). OxMIS requires further external validation, but a l...
Autores principales: | , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2020
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7175991/ https://www.ncbi.nlm.nih.gov/pubmed/32351413 http://dx.doi.org/10.3389/fpsyt.2020.00268 |
_version_ | 1783524934729859072 |
---|---|
author | Senior, Morwenna Burghart, Matthias Yu, Rongqin Kormilitzin, Andrey Liu, Qiang Vaci, Nemanja Nevado-Holgado, Alejo Pandit, Smita Zlodre, Jakov Fazel, Seena |
author_facet | Senior, Morwenna Burghart, Matthias Yu, Rongqin Kormilitzin, Andrey Liu, Qiang Vaci, Nemanja Nevado-Holgado, Alejo Pandit, Smita Zlodre, Jakov Fazel, Seena |
author_sort | Senior, Morwenna |
collection | PubMed |
description | BACKGROUND: Oxford Mental Illness and Suicide tool (OxMIS) is a brief, scalable, freely available, structured risk assessment tool to assess suicide risk in patients with severe mental illness (schizophrenia-spectrum disorders or bipolar disorder). OxMIS requires further external validation, but a lack of large-scale cohorts with relevant variables makes this challenging. Electronic health records provide possible data sources for external validation of risk prediction tools. However, they contain large amounts of information within free-text that is not readily extractable. In this study, we examined the feasibility of identifying suicide predictors needed to validate OxMIS in routinely collected electronic health records. METHODS: In study 1, we manually reviewed electronic health records of 57 patients with severe mental illness to calculate OxMIS risk scores. In study 2, we examined the feasibility of using natural language processing to scale up this process. We used anonymized free-text documents from the Clinical Record Interactive Search database to train a named entity recognition model, a machine learning technique which recognizes concepts in free-text. The model identified eight concepts relevant for suicide risk assessment: medication (antidepressant/antipsychotic treatment), violence, education, self-harm, benefits receipt, drug/alcohol use disorder, suicide, and psychiatric admission. We assessed model performance in terms of precision (similar to positive predictive value), recall (similar to sensitivity) and F1 statistic (an overall performance measure). RESULTS: In study 1, we estimated suicide risk for all patients using the OxMIS calculator, giving a range of 12 month risk estimates from 0.1-3.4%. For 13 out of 17 predictors, there was no missing information in electronic health records. For the remaining 4 predictors missingness ranged from 7-26%; to account for these missing variables, it was possible for OxMIS to estimate suicide risk using a range of scores. In study 2, the named entity recognition model had an overall precision of 0.77, recall of 0.90 and F1 score of 0.83. The concept with the best precision and recall was medication (precision 0.84, recall 0.96) and the weakest were suicide (precision 0.37), and drug/alcohol use disorder (recall 0.61). CONCLUSIONS: It is feasible to estimate suicide risk with the OxMIS tool using predictors identified in routine clinical records. Predictors could be extracted using natural language processing. However, electronic health records differ from other data sources, particularly for family history variables, which creates methodological challenges. |
format | Online Article Text |
id | pubmed-7175991 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-71759912020-04-29 Identifying Predictors of Suicide in Severe Mental Illness: A Feasibility Study of a Clinical Prediction Rule (Oxford Mental Illness and Suicide Tool or OxMIS) Senior, Morwenna Burghart, Matthias Yu, Rongqin Kormilitzin, Andrey Liu, Qiang Vaci, Nemanja Nevado-Holgado, Alejo Pandit, Smita Zlodre, Jakov Fazel, Seena Front Psychiatry Psychiatry BACKGROUND: Oxford Mental Illness and Suicide tool (OxMIS) is a brief, scalable, freely available, structured risk assessment tool to assess suicide risk in patients with severe mental illness (schizophrenia-spectrum disorders or bipolar disorder). OxMIS requires further external validation, but a lack of large-scale cohorts with relevant variables makes this challenging. Electronic health records provide possible data sources for external validation of risk prediction tools. However, they contain large amounts of information within free-text that is not readily extractable. In this study, we examined the feasibility of identifying suicide predictors needed to validate OxMIS in routinely collected electronic health records. METHODS: In study 1, we manually reviewed electronic health records of 57 patients with severe mental illness to calculate OxMIS risk scores. In study 2, we examined the feasibility of using natural language processing to scale up this process. We used anonymized free-text documents from the Clinical Record Interactive Search database to train a named entity recognition model, a machine learning technique which recognizes concepts in free-text. The model identified eight concepts relevant for suicide risk assessment: medication (antidepressant/antipsychotic treatment), violence, education, self-harm, benefits receipt, drug/alcohol use disorder, suicide, and psychiatric admission. We assessed model performance in terms of precision (similar to positive predictive value), recall (similar to sensitivity) and F1 statistic (an overall performance measure). RESULTS: In study 1, we estimated suicide risk for all patients using the OxMIS calculator, giving a range of 12 month risk estimates from 0.1-3.4%. For 13 out of 17 predictors, there was no missing information in electronic health records. For the remaining 4 predictors missingness ranged from 7-26%; to account for these missing variables, it was possible for OxMIS to estimate suicide risk using a range of scores. In study 2, the named entity recognition model had an overall precision of 0.77, recall of 0.90 and F1 score of 0.83. The concept with the best precision and recall was medication (precision 0.84, recall 0.96) and the weakest were suicide (precision 0.37), and drug/alcohol use disorder (recall 0.61). CONCLUSIONS: It is feasible to estimate suicide risk with the OxMIS tool using predictors identified in routine clinical records. Predictors could be extracted using natural language processing. However, electronic health records differ from other data sources, particularly for family history variables, which creates methodological challenges. Frontiers Media S.A. 2020-04-15 /pmc/articles/PMC7175991/ /pubmed/32351413 http://dx.doi.org/10.3389/fpsyt.2020.00268 Text en Copyright © 2020 Senior, Burghart, Yu, Kormilitzin, Liu, Vaci, Nevado-Holgado, Pandit, Zlodre and Fazel http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
spellingShingle | Psychiatry Senior, Morwenna Burghart, Matthias Yu, Rongqin Kormilitzin, Andrey Liu, Qiang Vaci, Nemanja Nevado-Holgado, Alejo Pandit, Smita Zlodre, Jakov Fazel, Seena Identifying Predictors of Suicide in Severe Mental Illness: A Feasibility Study of a Clinical Prediction Rule (Oxford Mental Illness and Suicide Tool or OxMIS) |
title | Identifying Predictors of Suicide in Severe Mental Illness: A Feasibility Study of a Clinical Prediction Rule (Oxford Mental Illness and Suicide Tool or OxMIS) |
title_full | Identifying Predictors of Suicide in Severe Mental Illness: A Feasibility Study of a Clinical Prediction Rule (Oxford Mental Illness and Suicide Tool or OxMIS) |
title_fullStr | Identifying Predictors of Suicide in Severe Mental Illness: A Feasibility Study of a Clinical Prediction Rule (Oxford Mental Illness and Suicide Tool or OxMIS) |
title_full_unstemmed | Identifying Predictors of Suicide in Severe Mental Illness: A Feasibility Study of a Clinical Prediction Rule (Oxford Mental Illness and Suicide Tool or OxMIS) |
title_short | Identifying Predictors of Suicide in Severe Mental Illness: A Feasibility Study of a Clinical Prediction Rule (Oxford Mental Illness and Suicide Tool or OxMIS) |
title_sort | identifying predictors of suicide in severe mental illness: a feasibility study of a clinical prediction rule (oxford mental illness and suicide tool or oxmis) |
topic | Psychiatry |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7175991/ https://www.ncbi.nlm.nih.gov/pubmed/32351413 http://dx.doi.org/10.3389/fpsyt.2020.00268 |
work_keys_str_mv | AT seniormorwenna identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT burghartmatthias identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT yurongqin identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT kormilitzinandrey identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT liuqiang identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT vacinemanja identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT nevadoholgadoalejo identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT panditsmita identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT zlodrejakov identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis AT fazelseena identifyingpredictorsofsuicideinseverementalillnessafeasibilitystudyofaclinicalpredictionruleoxfordmentalillnessandsuicidetooloroxmis |