Cargando…

Comparative Effectiveness of Machine Learning Approaches for Predicting Gastrointestinal Bleeds in Patients Receiving Antithrombotic Treatment

IMPORTANCE: Anticipating the risk of gastrointestinal bleeding (GIB) when initiating antithrombotic treatment (oral antiplatelets or anticoagulants) is limited by existing risk prediction models. Machine learning algorithms may result in superior predictive models to aid in clinical decision-making....

Descripción completa

Detalles Bibliográficos
Autores principales: Herrin, Jeph, Abraham, Neena S., Yao, Xiaoxi, Noseworthy, Peter A., Inselman, Jonathan, Shah, Nilay D., Ngufor, Che
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8140376/
https://www.ncbi.nlm.nih.gov/pubmed/34019087
http://dx.doi.org/10.1001/jamanetworkopen.2021.10703
_version_ 1783696177220288512
author Herrin, Jeph
Abraham, Neena S.
Yao, Xiaoxi
Noseworthy, Peter A.
Inselman, Jonathan
Shah, Nilay D.
Ngufor, Che
author_facet Herrin, Jeph
Abraham, Neena S.
Yao, Xiaoxi
Noseworthy, Peter A.
Inselman, Jonathan
Shah, Nilay D.
Ngufor, Che
author_sort Herrin, Jeph
collection PubMed
description IMPORTANCE: Anticipating the risk of gastrointestinal bleeding (GIB) when initiating antithrombotic treatment (oral antiplatelets or anticoagulants) is limited by existing risk prediction models. Machine learning algorithms may result in superior predictive models to aid in clinical decision-making. OBJECTIVE: To compare the performance of 3 machine learning approaches with the commonly used HAS-BLED (hypertension, abnormal kidney and liver function, stroke, bleeding, labile international normalized ratio, older age, and drug or alcohol use) risk score in predicting antithrombotic-related GIB. DESIGN, SETTING, AND PARTICIPANTS: This retrospective cross-sectional study used data from the OptumLabs Data Warehouse, which contains medical and pharmacy claims on privately insured patients and Medicare Advantage enrollees in the US. The study cohort included patients 18 years or older with a history of atrial fibrillation, ischemic heart disease, or venous thromboembolism who were prescribed oral anticoagulant and/or thienopyridine antiplatelet agents between January 1, 2016, and December 31, 2019. EXPOSURES: A cohort of patients prescribed oral anticoagulant and thienopyridine antiplatelet agents was divided into development and validation cohorts based on date of index prescription. The development cohort was used to train 3 machine learning models to predict GIB at 6 and 12 months: regularized Cox proportional hazards regression (RegCox), random survival forests (RSF), and extreme gradient boosting (XGBoost). MAIN OUTCOMES AND MEASURES: The performance of the models for predicting GIB in the validation cohort, evaluated using the area under the receiver operating characteristic curve (AUC), sensitivity, specificity, positive predictive value, and prediction density plots. Relative importance scores were used to identify the variables that were most influential in the top-performing machine learning model. RESULTS: In the entire study cohort of 306 463 patients, 166 177 (54.2%) were male, 193 648 (63.2%) were White, the mean (SD) age was 69.0 (12.6) years, and 12 322 (4.0%) had experienced a GIB. In the validation data set, the HAS-BLED model had an AUC of 0.60 for predicting GIB at 6 months and 0.59 at 12 months. The RegCox model performed the best in the validation set, with an AUC of 0.67 at 6 months and 0.66 at 12 months. XGBoost was similar, with AUCs of 0.67 at 6 months and 0.66 at 12 months, whereas for RSF, AUCs were 0.62 at 6 months and 0.60 at 12 months. The variables with the highest importance scores in the RegCox model were prior GI bleed (importance score, 0.72); atrial fibrillation, ischemic heart disease, and venous thromboembolism combined (importance score, 0.38); and use of gastroprotective agents (importance score, 0.32). CONCLUSIONS AND RELEVANCE: In this cross-sectional study, the machine learning models examined showed similar performance in identifying patients at high risk for GIB after being prescribed antithrombotic agents. Two models (RegCox and XGBoost) performed modestly better than the HAS-BLED score. A prospective evaluation of the RegCox model compared with HAS-BLED may provide a better understanding of the clinical impact of improved performance.
format Online
Article
Text
id pubmed-8140376
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher American Medical Association
record_format MEDLINE/PubMed
spelling pubmed-81403762021-06-03 Comparative Effectiveness of Machine Learning Approaches for Predicting Gastrointestinal Bleeds in Patients Receiving Antithrombotic Treatment Herrin, Jeph Abraham, Neena S. Yao, Xiaoxi Noseworthy, Peter A. Inselman, Jonathan Shah, Nilay D. Ngufor, Che JAMA Netw Open Original Investigation IMPORTANCE: Anticipating the risk of gastrointestinal bleeding (GIB) when initiating antithrombotic treatment (oral antiplatelets or anticoagulants) is limited by existing risk prediction models. Machine learning algorithms may result in superior predictive models to aid in clinical decision-making. OBJECTIVE: To compare the performance of 3 machine learning approaches with the commonly used HAS-BLED (hypertension, abnormal kidney and liver function, stroke, bleeding, labile international normalized ratio, older age, and drug or alcohol use) risk score in predicting antithrombotic-related GIB. DESIGN, SETTING, AND PARTICIPANTS: This retrospective cross-sectional study used data from the OptumLabs Data Warehouse, which contains medical and pharmacy claims on privately insured patients and Medicare Advantage enrollees in the US. The study cohort included patients 18 years or older with a history of atrial fibrillation, ischemic heart disease, or venous thromboembolism who were prescribed oral anticoagulant and/or thienopyridine antiplatelet agents between January 1, 2016, and December 31, 2019. EXPOSURES: A cohort of patients prescribed oral anticoagulant and thienopyridine antiplatelet agents was divided into development and validation cohorts based on date of index prescription. The development cohort was used to train 3 machine learning models to predict GIB at 6 and 12 months: regularized Cox proportional hazards regression (RegCox), random survival forests (RSF), and extreme gradient boosting (XGBoost). MAIN OUTCOMES AND MEASURES: The performance of the models for predicting GIB in the validation cohort, evaluated using the area under the receiver operating characteristic curve (AUC), sensitivity, specificity, positive predictive value, and prediction density plots. Relative importance scores were used to identify the variables that were most influential in the top-performing machine learning model. RESULTS: In the entire study cohort of 306 463 patients, 166 177 (54.2%) were male, 193 648 (63.2%) were White, the mean (SD) age was 69.0 (12.6) years, and 12 322 (4.0%) had experienced a GIB. In the validation data set, the HAS-BLED model had an AUC of 0.60 for predicting GIB at 6 months and 0.59 at 12 months. The RegCox model performed the best in the validation set, with an AUC of 0.67 at 6 months and 0.66 at 12 months. XGBoost was similar, with AUCs of 0.67 at 6 months and 0.66 at 12 months, whereas for RSF, AUCs were 0.62 at 6 months and 0.60 at 12 months. The variables with the highest importance scores in the RegCox model were prior GI bleed (importance score, 0.72); atrial fibrillation, ischemic heart disease, and venous thromboembolism combined (importance score, 0.38); and use of gastroprotective agents (importance score, 0.32). CONCLUSIONS AND RELEVANCE: In this cross-sectional study, the machine learning models examined showed similar performance in identifying patients at high risk for GIB after being prescribed antithrombotic agents. Two models (RegCox and XGBoost) performed modestly better than the HAS-BLED score. A prospective evaluation of the RegCox model compared with HAS-BLED may provide a better understanding of the clinical impact of improved performance. American Medical Association 2021-05-21 /pmc/articles/PMC8140376/ /pubmed/34019087 http://dx.doi.org/10.1001/jamanetworkopen.2021.10703 Text en Copyright 2021 Herrin J et al. JAMA Network Open. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the CC-BY License.
spellingShingle Original Investigation
Herrin, Jeph
Abraham, Neena S.
Yao, Xiaoxi
Noseworthy, Peter A.
Inselman, Jonathan
Shah, Nilay D.
Ngufor, Che
Comparative Effectiveness of Machine Learning Approaches for Predicting Gastrointestinal Bleeds in Patients Receiving Antithrombotic Treatment
title Comparative Effectiveness of Machine Learning Approaches for Predicting Gastrointestinal Bleeds in Patients Receiving Antithrombotic Treatment
title_full Comparative Effectiveness of Machine Learning Approaches for Predicting Gastrointestinal Bleeds in Patients Receiving Antithrombotic Treatment
title_fullStr Comparative Effectiveness of Machine Learning Approaches for Predicting Gastrointestinal Bleeds in Patients Receiving Antithrombotic Treatment
title_full_unstemmed Comparative Effectiveness of Machine Learning Approaches for Predicting Gastrointestinal Bleeds in Patients Receiving Antithrombotic Treatment
title_short Comparative Effectiveness of Machine Learning Approaches for Predicting Gastrointestinal Bleeds in Patients Receiving Antithrombotic Treatment
title_sort comparative effectiveness of machine learning approaches for predicting gastrointestinal bleeds in patients receiving antithrombotic treatment
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8140376/
https://www.ncbi.nlm.nih.gov/pubmed/34019087
http://dx.doi.org/10.1001/jamanetworkopen.2021.10703
work_keys_str_mv AT herrinjeph comparativeeffectivenessofmachinelearningapproachesforpredictinggastrointestinalbleedsinpatientsreceivingantithrombotictreatment
AT abrahamneenas comparativeeffectivenessofmachinelearningapproachesforpredictinggastrointestinalbleedsinpatientsreceivingantithrombotictreatment
AT yaoxiaoxi comparativeeffectivenessofmachinelearningapproachesforpredictinggastrointestinalbleedsinpatientsreceivingantithrombotictreatment
AT noseworthypetera comparativeeffectivenessofmachinelearningapproachesforpredictinggastrointestinalbleedsinpatientsreceivingantithrombotictreatment
AT inselmanjonathan comparativeeffectivenessofmachinelearningapproachesforpredictinggastrointestinalbleedsinpatientsreceivingantithrombotictreatment
AT shahnilayd comparativeeffectivenessofmachinelearningapproachesforpredictinggastrointestinalbleedsinpatientsreceivingantithrombotictreatment
AT nguforche comparativeeffectivenessofmachinelearningapproachesforpredictinggastrointestinalbleedsinpatientsreceivingantithrombotictreatment