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Using machine learning to predict anticoagulation control in atrial fibrillation: A UK Clinical Practice Research Datalink study

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Using machine learning to predict anticoagulation control in atrial fibrillation: A UK Clinical Practice Research Datalink study. / Norman, M.; Mason, T.; Dickerson, C. et al.
In: Informatics in Medicine Unlocked, Vol. 25, 100688, 31.12.2021.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Norman, M, Mason, T, Dickerson, C, Sandler, B, Pollock, KG, Farooqui, U, Groves, L, Tsang, C, Clifton, D, Bakhai, A & Hill, NR 2021, 'Using machine learning to predict anticoagulation control in atrial fibrillation: A UK Clinical Practice Research Datalink study', Informatics in Medicine Unlocked, vol. 25, 100688. https://doi.org/10.1016/j.imu.2021.100688

APA

Norman, M., Mason, T., Dickerson, C., Sandler, B., Pollock, K. G., Farooqui, U., Groves, L., Tsang, C., Clifton, D., Bakhai, A., & Hill, N. R. (2021). Using machine learning to predict anticoagulation control in atrial fibrillation: A UK Clinical Practice Research Datalink study. Informatics in Medicine Unlocked, 25, Article 100688. https://doi.org/10.1016/j.imu.2021.100688

Vancouver

Norman M, Mason T, Dickerson C, Sandler B, Pollock KG, Farooqui U et al. Using machine learning to predict anticoagulation control in atrial fibrillation: A UK Clinical Practice Research Datalink study. Informatics in Medicine Unlocked. 2021 Dec 31;25:100688. Epub 2021 Aug 5. doi: 10.1016/j.imu.2021.100688

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Bibtex

@article{09e0182a2bd04fffa86037f4e48a1656,
title = "Using machine learning to predict anticoagulation control in atrial fibrillation: A UK Clinical Practice Research Datalink study",
abstract = "ObjectiveTo investigate the predictive performance of machine learning (ML) algorithms for estimating anticoagulation control in patients with atrial fibrillation (AF) who are treated with warfarin.MethodsThis was a retrospective cohort study of adult patients (≥18 years) between 2007 and 2016 using linked primary and secondary care data (Clinical Practice Research Datalink GOLD and Hospital Episode Statistics). Various ML techniques were explored to predict suboptimal anticoagulation control, defined as time in therapeutic range (TTR) < 70% based on International Normalised Ratio (INR) 2.0–3.0. Baseline (linear and non-linear support vector machines; random forests; stochastic gradient boosting [XGBoost]; neural networks [NN]) and time-varying data (6-week intervals up to 30 weeks (long-short term memory [LSTM] NN)) were applied. Patient records depicting unique lines of warfarin therapy (LOT) were separated into training (70%) and holdout sets (30%) for model training and testing, respectively.Results35,479 patients were eligible for inclusion, of whom 24,684 and 10,795 were assigned to the training (32,683 unique LOTs) and holdout sets (14,218 unique LOTs). Across all models, depression (diagnosis and/or prescription of antidepressant medication) was a significant driver in predicting anticoagulation control. At baseline, XGBoost was the best-performing model (area under the curve [AUC]: 0.624) due to its ability to identify non-linear associations such as age and weight (greater probability of suboptimal control: 80 years and ConclusionML algorithms displayed clinically useful ability to predict patients who are at greater risk of suboptimal control. The addition of time-varying data to the algorithm, especially prior INR measurements, improved predictive performance. These algorithms provide improved predictive tools for identifying patients who may benefit from more frequent INR monitoring or switching to alternative therapies.",
keywords = "Machine learning, Unsupervised learning, Atrial fibrillation, Warfarin, Anticoagulation control, International normalised ratio",
author = "M. Norman and T. Mason and C. Dickerson and B. Sandler and K.G. Pollock and U. Farooqui and L. Groves and C. Tsang and D. Clifton and A. Bakhai and N.R. Hill",
year = "2021",
month = dec,
day = "31",
doi = "10.1016/j.imu.2021.100688",
language = "English",
volume = "25",
journal = "Informatics in Medicine Unlocked",
issn = "2352-9148",
publisher = "Elsevier Ltd",

}

RIS

TY - JOUR

T1 - Using machine learning to predict anticoagulation control in atrial fibrillation

T2 - A UK Clinical Practice Research Datalink study

AU - Norman, M.

AU - Mason, T.

AU - Dickerson, C.

AU - Sandler, B.

AU - Pollock, K.G.

AU - Farooqui, U.

AU - Groves, L.

AU - Tsang, C.

AU - Clifton, D.

AU - Bakhai, A.

AU - Hill, N.R.

PY - 2021/12/31

Y1 - 2021/12/31

N2 - ObjectiveTo investigate the predictive performance of machine learning (ML) algorithms for estimating anticoagulation control in patients with atrial fibrillation (AF) who are treated with warfarin.MethodsThis was a retrospective cohort study of adult patients (≥18 years) between 2007 and 2016 using linked primary and secondary care data (Clinical Practice Research Datalink GOLD and Hospital Episode Statistics). Various ML techniques were explored to predict suboptimal anticoagulation control, defined as time in therapeutic range (TTR) < 70% based on International Normalised Ratio (INR) 2.0–3.0. Baseline (linear and non-linear support vector machines; random forests; stochastic gradient boosting [XGBoost]; neural networks [NN]) and time-varying data (6-week intervals up to 30 weeks (long-short term memory [LSTM] NN)) were applied. Patient records depicting unique lines of warfarin therapy (LOT) were separated into training (70%) and holdout sets (30%) for model training and testing, respectively.Results35,479 patients were eligible for inclusion, of whom 24,684 and 10,795 were assigned to the training (32,683 unique LOTs) and holdout sets (14,218 unique LOTs). Across all models, depression (diagnosis and/or prescription of antidepressant medication) was a significant driver in predicting anticoagulation control. At baseline, XGBoost was the best-performing model (area under the curve [AUC]: 0.624) due to its ability to identify non-linear associations such as age and weight (greater probability of suboptimal control: 80 years and ConclusionML algorithms displayed clinically useful ability to predict patients who are at greater risk of suboptimal control. The addition of time-varying data to the algorithm, especially prior INR measurements, improved predictive performance. These algorithms provide improved predictive tools for identifying patients who may benefit from more frequent INR monitoring or switching to alternative therapies.

AB - ObjectiveTo investigate the predictive performance of machine learning (ML) algorithms for estimating anticoagulation control in patients with atrial fibrillation (AF) who are treated with warfarin.MethodsThis was a retrospective cohort study of adult patients (≥18 years) between 2007 and 2016 using linked primary and secondary care data (Clinical Practice Research Datalink GOLD and Hospital Episode Statistics). Various ML techniques were explored to predict suboptimal anticoagulation control, defined as time in therapeutic range (TTR) < 70% based on International Normalised Ratio (INR) 2.0–3.0. Baseline (linear and non-linear support vector machines; random forests; stochastic gradient boosting [XGBoost]; neural networks [NN]) and time-varying data (6-week intervals up to 30 weeks (long-short term memory [LSTM] NN)) were applied. Patient records depicting unique lines of warfarin therapy (LOT) were separated into training (70%) and holdout sets (30%) for model training and testing, respectively.Results35,479 patients were eligible for inclusion, of whom 24,684 and 10,795 were assigned to the training (32,683 unique LOTs) and holdout sets (14,218 unique LOTs). Across all models, depression (diagnosis and/or prescription of antidepressant medication) was a significant driver in predicting anticoagulation control. At baseline, XGBoost was the best-performing model (area under the curve [AUC]: 0.624) due to its ability to identify non-linear associations such as age and weight (greater probability of suboptimal control: 80 years and ConclusionML algorithms displayed clinically useful ability to predict patients who are at greater risk of suboptimal control. The addition of time-varying data to the algorithm, especially prior INR measurements, improved predictive performance. These algorithms provide improved predictive tools for identifying patients who may benefit from more frequent INR monitoring or switching to alternative therapies.

KW - Machine learning

KW - Unsupervised learning

KW - Atrial fibrillation

KW - Warfarin

KW - Anticoagulation control

KW - International normalised ratio

U2 - 10.1016/j.imu.2021.100688

DO - 10.1016/j.imu.2021.100688

M3 - Journal article

VL - 25

JO - Informatics in Medicine Unlocked

JF - Informatics in Medicine Unlocked

SN - 2352-9148

M1 - 100688

ER -