Improving medication safety: Development & impact of a multivariate model-based strategy to target high-risk patients

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Standard

Improving medication safety : Development & impact of a multivariate model-based strategy to target high-risk patients. / Nguyen, Tri Long; Leguelinel-Blache, Géraldine; Kinowski, Jean Marie; Roux-Marson, Clarisse; Rougier, Marion; Spence, Jessica; Manach, Yannick Le; Landais, Paul.

I: PLoS ONE, Bind 12, Nr. 2, e0171995, 2017.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Nguyen, TL, Leguelinel-Blache, G, Kinowski, JM, Roux-Marson, C, Rougier, M, Spence, J, Manach, YL & Landais, P 2017, 'Improving medication safety: Development & impact of a multivariate model-based strategy to target high-risk patients', PLoS ONE, bind 12, nr. 2, e0171995. https://doi.org/10.1371/journal.pone.0171995

APA

Nguyen, T. L., Leguelinel-Blache, G., Kinowski, J. M., Roux-Marson, C., Rougier, M., Spence, J., Manach, Y. L., & Landais, P. (2017). Improving medication safety: Development & impact of a multivariate model-based strategy to target high-risk patients. PLoS ONE, 12(2), [e0171995]. https://doi.org/10.1371/journal.pone.0171995

Vancouver

Nguyen TL, Leguelinel-Blache G, Kinowski JM, Roux-Marson C, Rougier M, Spence J o.a. Improving medication safety: Development & impact of a multivariate model-based strategy to target high-risk patients. PLoS ONE. 2017;12(2). e0171995. https://doi.org/10.1371/journal.pone.0171995

Author

Nguyen, Tri Long ; Leguelinel-Blache, Géraldine ; Kinowski, Jean Marie ; Roux-Marson, Clarisse ; Rougier, Marion ; Spence, Jessica ; Manach, Yannick Le ; Landais, Paul. / Improving medication safety : Development & impact of a multivariate model-based strategy to target high-risk patients. I: PLoS ONE. 2017 ; Bind 12, Nr. 2.

Bibtex

@article{9e57d80db96c468aad54b89e14661228,
title = "Improving medication safety: Development & impact of a multivariate model-based strategy to target high-risk patients",
abstract = "Background Preventive strategies to reduce clinically significant medication errors (MEs), such as medication review, are often limited by human resources. Identifying high-risk patients to allow for appropriate resource allocation is of the utmost importance. To this end, we developed a predictive model to identify high-risk patients and assessed its impact on clinical decisionmaking. Methods From March 1st to April 31st 2014, we conducted a prospective cohort study on adult inpatients of a 1,644-bed University Hospital Centre. After a clinical evaluation of identified MEs, we fitted and internally validated a multivariate logistic model predicting their occurrence. Through 5,000 simulated randomized controlled trials, we compared two clinical decision pathways for intervention: one supported by our model and one based on the criterion of age. Results Among 1,408 patients, 365 (25.9%) experienced at least one clinically significant ME. Eleven variables were identified using multivariable logistic regression and used to build a predictive model which demonstrated fair performance (c-statistic: 0.72). Major predictors were age and number of prescribed drugs. When compared with a decision to treat based on the criterion of age, our model enhanced the interception of potential adverse drug events by 17.5%, with a number needed to treat of 6 patients. Conclusion We developed and tested a model predicting the occurrence of clinically significant MEs. Preliminary results suggest that its implementation into clinical practice could be used to focus interventions on high-risk patients. This must be confirmed on an independent set of patients and evaluated through a real clinical impact study.",
author = "Nguyen, {Tri Long} and G{\'e}raldine Leguelinel-Blache and Kinowski, {Jean Marie} and Clarisse Roux-Marson and Marion Rougier and Jessica Spence and Manach, {Yannick Le} and Paul Landais",
year = "2017",
doi = "10.1371/journal.pone.0171995",
language = "English",
volume = "12",
journal = "PLoS ONE",
issn = "1932-6203",
publisher = "Public Library of Science",
number = "2",

}

RIS

TY - JOUR

T1 - Improving medication safety

T2 - Development & impact of a multivariate model-based strategy to target high-risk patients

AU - Nguyen, Tri Long

AU - Leguelinel-Blache, Géraldine

AU - Kinowski, Jean Marie

AU - Roux-Marson, Clarisse

AU - Rougier, Marion

AU - Spence, Jessica

AU - Manach, Yannick Le

AU - Landais, Paul

PY - 2017

Y1 - 2017

N2 - Background Preventive strategies to reduce clinically significant medication errors (MEs), such as medication review, are often limited by human resources. Identifying high-risk patients to allow for appropriate resource allocation is of the utmost importance. To this end, we developed a predictive model to identify high-risk patients and assessed its impact on clinical decisionmaking. Methods From March 1st to April 31st 2014, we conducted a prospective cohort study on adult inpatients of a 1,644-bed University Hospital Centre. After a clinical evaluation of identified MEs, we fitted and internally validated a multivariate logistic model predicting their occurrence. Through 5,000 simulated randomized controlled trials, we compared two clinical decision pathways for intervention: one supported by our model and one based on the criterion of age. Results Among 1,408 patients, 365 (25.9%) experienced at least one clinically significant ME. Eleven variables were identified using multivariable logistic regression and used to build a predictive model which demonstrated fair performance (c-statistic: 0.72). Major predictors were age and number of prescribed drugs. When compared with a decision to treat based on the criterion of age, our model enhanced the interception of potential adverse drug events by 17.5%, with a number needed to treat of 6 patients. Conclusion We developed and tested a model predicting the occurrence of clinically significant MEs. Preliminary results suggest that its implementation into clinical practice could be used to focus interventions on high-risk patients. This must be confirmed on an independent set of patients and evaluated through a real clinical impact study.

AB - Background Preventive strategies to reduce clinically significant medication errors (MEs), such as medication review, are often limited by human resources. Identifying high-risk patients to allow for appropriate resource allocation is of the utmost importance. To this end, we developed a predictive model to identify high-risk patients and assessed its impact on clinical decisionmaking. Methods From March 1st to April 31st 2014, we conducted a prospective cohort study on adult inpatients of a 1,644-bed University Hospital Centre. After a clinical evaluation of identified MEs, we fitted and internally validated a multivariate logistic model predicting their occurrence. Through 5,000 simulated randomized controlled trials, we compared two clinical decision pathways for intervention: one supported by our model and one based on the criterion of age. Results Among 1,408 patients, 365 (25.9%) experienced at least one clinically significant ME. Eleven variables were identified using multivariable logistic regression and used to build a predictive model which demonstrated fair performance (c-statistic: 0.72). Major predictors were age and number of prescribed drugs. When compared with a decision to treat based on the criterion of age, our model enhanced the interception of potential adverse drug events by 17.5%, with a number needed to treat of 6 patients. Conclusion We developed and tested a model predicting the occurrence of clinically significant MEs. Preliminary results suggest that its implementation into clinical practice could be used to focus interventions on high-risk patients. This must be confirmed on an independent set of patients and evaluated through a real clinical impact study.

U2 - 10.1371/journal.pone.0171995

DO - 10.1371/journal.pone.0171995

M3 - Journal article

C2 - 28192533

AN - SCOPUS:85012919801

VL - 12

JO - PLoS ONE

JF - PLoS ONE

SN - 1932-6203

IS - 2

M1 - e0171995

ER -

ID: 218397091