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Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines

BACKGROUND: Post-discharge opioid consumption is a crucial patient-reported outcome informing opioid prescribing guidelines, but its collection is resource-intensive and vulnerable to inaccuracy due to nonresponse bias. METHODS: We developed a post-discharge text message-to-web survey system for eff...

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Autores principales: Kennedy, Chris J., Marwaha, Jayson S., Beaulieu-Jones, Brendin R., Scalise, P. Nina, Robinson, Kortney A., Booth, Brandon, Fleishman, Aaron, Nathanson, Larry A., Brat, Gabriel A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9675048/
https://www.ncbi.nlm.nih.gov/pubmed/36407783
http://dx.doi.org/10.1016/j.sipas.2022.100098
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author Kennedy, Chris J.
Marwaha, Jayson S.
Beaulieu-Jones, Brendin R.
Scalise, P. Nina
Robinson, Kortney A.
Booth, Brandon
Fleishman, Aaron
Nathanson, Larry A.
Brat, Gabriel A.
author_facet Kennedy, Chris J.
Marwaha, Jayson S.
Beaulieu-Jones, Brendin R.
Scalise, P. Nina
Robinson, Kortney A.
Booth, Brandon
Fleishman, Aaron
Nathanson, Larry A.
Brat, Gabriel A.
author_sort Kennedy, Chris J.
collection PubMed
description BACKGROUND: Post-discharge opioid consumption is a crucial patient-reported outcome informing opioid prescribing guidelines, but its collection is resource-intensive and vulnerable to inaccuracy due to nonresponse bias. METHODS: We developed a post-discharge text message-to-web survey system for efficient collection of patient-reported pain outcomes. We prospectively recruited surgical patients at Beth Israel Deaconess Medical Center in Boston, Massachusetts from March 2019 through October 2020, sending an SMS link to a secure web survey to quantify opioids consumed after discharge from hospitalization. Patient factors extracted from the electronic health record were tested for nonresponse bias and observable confounding. Following targeted learning-based nonresponse adjustment, procedure-specific opioid consumption quantiles (medians and 75th percentiles) were estimated and compared to a previous telephone-based reference survey. RESULTS: 6553 patients were included. Opioid consumption was measured in 44% of patients (2868), including 21% (1342) through survey response. Characteristics associated with inability to measure opioid consumption included age, tobacco use, and prescribed opioid dose. Among the 10 most common procedures, median consumption was only 36% of the median prescription size; 64% of prescribed opioids were not consumed. Among those procedures, nonresponse adjustment corrected the median opioid consumption by an average of 37% (IQR: 7, 65%) compared to unadjusted estimates, and corrected the 75th percentile by an average of 5% (IQR: 0, 12%). This brought median estimates for 5/10 procedures closer to telephone survey-based consumption estimates, and 75th percentile estimates for 2/10 procedures closer to telephone survey-based estimates. CONCLUSIONS: SMS-recruited online surveying can generate reliable opioid consumption estimates after nonresponse adjustment using patient factors recorded in the electronic health record, protecting patients from the risk of inaccurate prescription guidelines.
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spelling pubmed-96750482022-11-19 Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines Kennedy, Chris J. Marwaha, Jayson S. Beaulieu-Jones, Brendin R. Scalise, P. Nina Robinson, Kortney A. Booth, Brandon Fleishman, Aaron Nathanson, Larry A. Brat, Gabriel A. Surg Pract Sci Article BACKGROUND: Post-discharge opioid consumption is a crucial patient-reported outcome informing opioid prescribing guidelines, but its collection is resource-intensive and vulnerable to inaccuracy due to nonresponse bias. METHODS: We developed a post-discharge text message-to-web survey system for efficient collection of patient-reported pain outcomes. We prospectively recruited surgical patients at Beth Israel Deaconess Medical Center in Boston, Massachusetts from March 2019 through October 2020, sending an SMS link to a secure web survey to quantify opioids consumed after discharge from hospitalization. Patient factors extracted from the electronic health record were tested for nonresponse bias and observable confounding. Following targeted learning-based nonresponse adjustment, procedure-specific opioid consumption quantiles (medians and 75th percentiles) were estimated and compared to a previous telephone-based reference survey. RESULTS: 6553 patients were included. Opioid consumption was measured in 44% of patients (2868), including 21% (1342) through survey response. Characteristics associated with inability to measure opioid consumption included age, tobacco use, and prescribed opioid dose. Among the 10 most common procedures, median consumption was only 36% of the median prescription size; 64% of prescribed opioids were not consumed. Among those procedures, nonresponse adjustment corrected the median opioid consumption by an average of 37% (IQR: 7, 65%) compared to unadjusted estimates, and corrected the 75th percentile by an average of 5% (IQR: 0, 12%). This brought median estimates for 5/10 procedures closer to telephone survey-based consumption estimates, and 75th percentile estimates for 2/10 procedures closer to telephone survey-based estimates. CONCLUSIONS: SMS-recruited online surveying can generate reliable opioid consumption estimates after nonresponse adjustment using patient factors recorded in the electronic health record, protecting patients from the risk of inaccurate prescription guidelines. 2022-09 2022-06-10 /pmc/articles/PMC9675048/ /pubmed/36407783 http://dx.doi.org/10.1016/j.sipas.2022.100098 Text en https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) ).
spellingShingle Article
Kennedy, Chris J.
Marwaha, Jayson S.
Beaulieu-Jones, Brendin R.
Scalise, P. Nina
Robinson, Kortney A.
Booth, Brandon
Fleishman, Aaron
Nathanson, Larry A.
Brat, Gabriel A.
Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines
title Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines
title_full Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines
title_fullStr Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines
title_full_unstemmed Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines
title_short Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines
title_sort machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9675048/
https://www.ncbi.nlm.nih.gov/pubmed/36407783
http://dx.doi.org/10.1016/j.sipas.2022.100098
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