Cargando…
1018. Using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: Can we predict who gets an inpatient antimicrobial?
BACKGROUND: Hospital antimicrobial stewardship program (ASP) assessments based on comparisons of antimicrobial use (AU) among multiple hospitals are difficult to interpret without risk-adjustment for patient case-mix. We aimed to determine whether variables of varying complexity, derived retrospecti...
Autores principales: | , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Oxford University Press
2019
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6811028/ http://dx.doi.org/10.1093/ofid/ofz360.882 |
_version_ | 1783462379428773888 |
---|---|
author | Moehring, Rebekah W Phelan, Matthew Lofgren, Eric Nelson, Alicia Neuhauser, Melinda M Hicks, Lauri Dodds Ashley, Elizabeth Anderson, Deverick J Goldstein, Benjamin |
author_facet | Moehring, Rebekah W Phelan, Matthew Lofgren, Eric Nelson, Alicia Neuhauser, Melinda M Hicks, Lauri Dodds Ashley, Elizabeth Anderson, Deverick J Goldstein, Benjamin |
author_sort | Moehring, Rebekah W |
collection | PubMed |
description | BACKGROUND: Hospital antimicrobial stewardship program (ASP) assessments based on comparisons of antimicrobial use (AU) among multiple hospitals are difficult to interpret without risk-adjustment for patient case-mix. We aimed to determine whether variables of varying complexity, derived retrospectively from the electronic health record (EHR), were predictive of inpatient antimicrobial exposures. METHODS: We performed a retrospective study of EHR-derived data from adult and pediatric inpatients within the Duke University Health System from October 2015 to September 2017. We used Random Forests machine learning models on two antimicrobial exposure outcomes at the encounter level: binary (ever/never) exposure and days of therapy (DOT). Antimicrobial groups were defined by the NHSN AU Option 2017 baseline. Analyses were stratified by pediatric/adult, location type (ICU/ward), and antimicrobial group. Candidate variables were categorized into four tiers based on feasibility of measurement from the EHR. Tier 1 (easy) included demographics, season, location, while Tier 4 (hard) included all variables from Tier 1–3 and laboratory results, vital signs, and culture data. Data were split into 80/20 training and testing sets to measure model performance using area under the curve (AUC) for the binary outcomes and absolute error for DOT. RESULTS: The analysis dataset included 170,294 encounters and 204 candidate variables from three hospitals. A total of 80,190 (47%) encounters had antimicrobial exposure; 64,998 (38%) had 1–6 DOT, and 15,192 (9%) had 7 or greater DOT. Models strongly predicted the binary outcome, with AUCs ranging from 0.70 to 0.95 depending on the stratum (Figure A, B). The addition of more complex variables increased accuracy (Figure Model Tiers 1–4). Model performance varied based on location and antimicrobial group. Models for infrequently used groups performed better (Figure C, D). Models underestimated DOTs of encounters with extremely long lengths of stay. CONCLUSION: Models utilizing EHR-derived variables strongly predicted antimicrobial exposure. Risk-adjustment strategies incorporating measures of patient mix may provide more informative benchmark comparisons for use in Antimicrobial Stewardship Program assessments. [Image: see text] [Image: see text] [Image: see text] [Image: see text] DISCLOSURES: All authors: No reported disclosures. |
format | Online Article Text |
id | pubmed-6811028 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2019 |
publisher | Oxford University Press |
record_format | MEDLINE/PubMed |
spelling | pubmed-68110282019-10-28 1018. Using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: Can we predict who gets an inpatient antimicrobial? Moehring, Rebekah W Phelan, Matthew Lofgren, Eric Nelson, Alicia Neuhauser, Melinda M Hicks, Lauri Dodds Ashley, Elizabeth Anderson, Deverick J Goldstein, Benjamin Open Forum Infect Dis Abstracts BACKGROUND: Hospital antimicrobial stewardship program (ASP) assessments based on comparisons of antimicrobial use (AU) among multiple hospitals are difficult to interpret without risk-adjustment for patient case-mix. We aimed to determine whether variables of varying complexity, derived retrospectively from the electronic health record (EHR), were predictive of inpatient antimicrobial exposures. METHODS: We performed a retrospective study of EHR-derived data from adult and pediatric inpatients within the Duke University Health System from October 2015 to September 2017. We used Random Forests machine learning models on two antimicrobial exposure outcomes at the encounter level: binary (ever/never) exposure and days of therapy (DOT). Antimicrobial groups were defined by the NHSN AU Option 2017 baseline. Analyses were stratified by pediatric/adult, location type (ICU/ward), and antimicrobial group. Candidate variables were categorized into four tiers based on feasibility of measurement from the EHR. Tier 1 (easy) included demographics, season, location, while Tier 4 (hard) included all variables from Tier 1–3 and laboratory results, vital signs, and culture data. Data were split into 80/20 training and testing sets to measure model performance using area under the curve (AUC) for the binary outcomes and absolute error for DOT. RESULTS: The analysis dataset included 170,294 encounters and 204 candidate variables from three hospitals. A total of 80,190 (47%) encounters had antimicrobial exposure; 64,998 (38%) had 1–6 DOT, and 15,192 (9%) had 7 or greater DOT. Models strongly predicted the binary outcome, with AUCs ranging from 0.70 to 0.95 depending on the stratum (Figure A, B). The addition of more complex variables increased accuracy (Figure Model Tiers 1–4). Model performance varied based on location and antimicrobial group. Models for infrequently used groups performed better (Figure C, D). Models underestimated DOTs of encounters with extremely long lengths of stay. CONCLUSION: Models utilizing EHR-derived variables strongly predicted antimicrobial exposure. Risk-adjustment strategies incorporating measures of patient mix may provide more informative benchmark comparisons for use in Antimicrobial Stewardship Program assessments. [Image: see text] [Image: see text] [Image: see text] [Image: see text] DISCLOSURES: All authors: No reported disclosures. Oxford University Press 2019-10-23 /pmc/articles/PMC6811028/ http://dx.doi.org/10.1093/ofid/ofz360.882 Text en © The Author(s) 2019. Published by Oxford University Press on behalf of Infectious Diseases Society of America. http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs licence (http://creativecommons.org/licenses/by-nc-nd/4.0/), which permits non-commercial reproduction and distribution of the work, in any medium, provided the original work is not altered or transformed in any way, and that the work is properly cited. For commercial re-use, please contact journals.permissions@oup.com |
spellingShingle | Abstracts Moehring, Rebekah W Phelan, Matthew Lofgren, Eric Nelson, Alicia Neuhauser, Melinda M Hicks, Lauri Dodds Ashley, Elizabeth Anderson, Deverick J Goldstein, Benjamin 1018. Using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: Can we predict who gets an inpatient antimicrobial? |
title | 1018. Using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: Can we predict who gets an inpatient antimicrobial? |
title_full | 1018. Using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: Can we predict who gets an inpatient antimicrobial? |
title_fullStr | 1018. Using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: Can we predict who gets an inpatient antimicrobial? |
title_full_unstemmed | 1018. Using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: Can we predict who gets an inpatient antimicrobial? |
title_short | 1018. Using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: Can we predict who gets an inpatient antimicrobial? |
title_sort | 1018. using prediction modeling to inform risk-adjustment strategy for hospital antimicrobial use: can we predict who gets an inpatient antimicrobial? |
topic | Abstracts |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6811028/ http://dx.doi.org/10.1093/ofid/ofz360.882 |
work_keys_str_mv | AT moehringrebekahw 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial AT phelanmatthew 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial AT lofgreneric 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial AT nelsonalicia 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial AT neuhausermelindam 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial AT hickslauri 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial AT doddsashleyelizabeth 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial AT andersondeverickj 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial AT goldsteinbenjamin 1018usingpredictionmodelingtoinformriskadjustmentstrategyforhospitalantimicrobialusecanwepredictwhogetsaninpatientantimicrobial |