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Using Machine Learning to Identify Patients at High Risk of Inappropriate Drug Dosing in Periods with Renal Dysfunction

PURPOSE: Dosing of renally cleared drugs in patients with kidney failure often deviates from clinical guidelines, so we sought to elicit predictors of receiving inappropriate doses of renal risk drugs. PATIENTS AND METHODS: We combined data from the Danish National Patient Register and in-hospital d...

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Autores principales: Kaas-Hansen, Benjamin Skov, Leal Rodríguez, Cristina, Placido, Davide, Thorsen-Meyer, Hans-Christian, Nielsen, Anna Pors, Dérian, Nicolas, Brunak, Søren, Andersen, Stig Ejdrup
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dove 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8881932/
https://www.ncbi.nlm.nih.gov/pubmed/35228820
http://dx.doi.org/10.2147/CLEP.S344435
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author Kaas-Hansen, Benjamin Skov
Leal Rodríguez, Cristina
Placido, Davide
Thorsen-Meyer, Hans-Christian
Nielsen, Anna Pors
Dérian, Nicolas
Brunak, Søren
Andersen, Stig Ejdrup
author_facet Kaas-Hansen, Benjamin Skov
Leal Rodríguez, Cristina
Placido, Davide
Thorsen-Meyer, Hans-Christian
Nielsen, Anna Pors
Dérian, Nicolas
Brunak, Søren
Andersen, Stig Ejdrup
author_sort Kaas-Hansen, Benjamin Skov
collection PubMed
description PURPOSE: Dosing of renally cleared drugs in patients with kidney failure often deviates from clinical guidelines, so we sought to elicit predictors of receiving inappropriate doses of renal risk drugs. PATIENTS AND METHODS: We combined data from the Danish National Patient Register and in-hospital data on drug administrations and estimated glomerular filtration rates for admissions between 1 October 2009 and 1 June 2016, from a pool of about 2.6 million persons. We trained artificial neural network and linear logistic ridge regression models to predict the risk of five outcomes (>0, ≥1, ≥2, ≥3 and ≥5 inappropriate doses daily) with index set 24 hours after admission. We used time-series validation for evaluating discrimination, calibration, clinical utility and explanations. RESULTS: Of 52,451 admissions included, 42,250 (81%) were used for model development. The median age was 77 years; 50% of admissions were of women. ≥5 drugs were used between admission start and index in 23,124 admissions (44%); the most common drug classes were analgesics, systemic antibacterials, diuretics, antithrombotics, and antacids. The neural network models had better discriminative power (all AUROCs between 0.77 and 0.81) and were better calibrated than their linear counterparts. The main prediction drivers were use of anti-inflammatory, antidiabetic and anti-Parkinson's drugs as well as having a diagnosis of chronic kidney failure. Sex and age affected predictions but slightly. CONCLUSION: Our models can flag patients at high risk of receiving at least one inappropriate dose daily in a controlled in-silico setting. A prospective clinical study may confirm that this holds in real-life settings and translates into benefits in hard endpoints.
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spelling pubmed-88819322022-02-27 Using Machine Learning to Identify Patients at High Risk of Inappropriate Drug Dosing in Periods with Renal Dysfunction Kaas-Hansen, Benjamin Skov Leal Rodríguez, Cristina Placido, Davide Thorsen-Meyer, Hans-Christian Nielsen, Anna Pors Dérian, Nicolas Brunak, Søren Andersen, Stig Ejdrup Clin Epidemiol Original Research PURPOSE: Dosing of renally cleared drugs in patients with kidney failure often deviates from clinical guidelines, so we sought to elicit predictors of receiving inappropriate doses of renal risk drugs. PATIENTS AND METHODS: We combined data from the Danish National Patient Register and in-hospital data on drug administrations and estimated glomerular filtration rates for admissions between 1 October 2009 and 1 June 2016, from a pool of about 2.6 million persons. We trained artificial neural network and linear logistic ridge regression models to predict the risk of five outcomes (>0, ≥1, ≥2, ≥3 and ≥5 inappropriate doses daily) with index set 24 hours after admission. We used time-series validation for evaluating discrimination, calibration, clinical utility and explanations. RESULTS: Of 52,451 admissions included, 42,250 (81%) were used for model development. The median age was 77 years; 50% of admissions were of women. ≥5 drugs were used between admission start and index in 23,124 admissions (44%); the most common drug classes were analgesics, systemic antibacterials, diuretics, antithrombotics, and antacids. The neural network models had better discriminative power (all AUROCs between 0.77 and 0.81) and were better calibrated than their linear counterparts. The main prediction drivers were use of anti-inflammatory, antidiabetic and anti-Parkinson's drugs as well as having a diagnosis of chronic kidney failure. Sex and age affected predictions but slightly. CONCLUSION: Our models can flag patients at high risk of receiving at least one inappropriate dose daily in a controlled in-silico setting. A prospective clinical study may confirm that this holds in real-life settings and translates into benefits in hard endpoints. Dove 2022-02-22 /pmc/articles/PMC8881932/ /pubmed/35228820 http://dx.doi.org/10.2147/CLEP.S344435 Text en © 2022 Kaas-Hansen et al. https://creativecommons.org/licenses/by-nc/3.0/This work is published and licensed by Dove Medical Press Limited. The full terms of this license are available at https://www.dovepress.com/terms.php and incorporate the Creative Commons Attribution – Non Commercial (unported, v3.0) License (http://creativecommons.org/licenses/by-nc/3.0/ (https://creativecommons.org/licenses/by-nc/3.0/) ). By accessing the work you hereby accept the Terms. Non-commercial uses of the work are permitted without any further permission from Dove Medical Press Limited, provided the work is properly attributed. For permission for commercial use of this work, please see paragraphs 4.2 and 5 of our Terms (https://www.dovepress.com/terms.php).
spellingShingle Original Research
Kaas-Hansen, Benjamin Skov
Leal Rodríguez, Cristina
Placido, Davide
Thorsen-Meyer, Hans-Christian
Nielsen, Anna Pors
Dérian, Nicolas
Brunak, Søren
Andersen, Stig Ejdrup
Using Machine Learning to Identify Patients at High Risk of Inappropriate Drug Dosing in Periods with Renal Dysfunction
title Using Machine Learning to Identify Patients at High Risk of Inappropriate Drug Dosing in Periods with Renal Dysfunction
title_full Using Machine Learning to Identify Patients at High Risk of Inappropriate Drug Dosing in Periods with Renal Dysfunction
title_fullStr Using Machine Learning to Identify Patients at High Risk of Inappropriate Drug Dosing in Periods with Renal Dysfunction
title_full_unstemmed Using Machine Learning to Identify Patients at High Risk of Inappropriate Drug Dosing in Periods with Renal Dysfunction
title_short Using Machine Learning to Identify Patients at High Risk of Inappropriate Drug Dosing in Periods with Renal Dysfunction
title_sort using machine learning to identify patients at high risk of inappropriate drug dosing in periods with renal dysfunction
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8881932/
https://www.ncbi.nlm.nih.gov/pubmed/35228820
http://dx.doi.org/10.2147/CLEP.S344435
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