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469 Use of data-driven technology to optimise DOACs in morbidly obese patients

469 Use of data-driven technology to optimise DOACs in morbidly obese patients
469 Use of data-driven technology to optimise DOACs in morbidly obese patients
Introduction: despite the advantages of Direct Oral Anticoagulants (DOACs) over older classes of anticoagulants, clinical experience is limited in special populations; data from landmark trials on safety and efficacy are relatively scarce (compared to warfarin). This makes it challenging for clinicians to prescribe the right DOAC at the right dose for such patients (e.g., morbidly obese patients) (1). Insights derived from analysing real-world data have proven to be a vital source of clinical evidence backing the recommendation of medications (2). Therefore, data-driven technologies like machine learning can harness big data in electronic health records (EHRs) to optimise DOAC therapy and improve clinical outcomes.

Aim: the study aims to accurately predict clinical outcomes in morbidly obese patients, and identify the key variables in the model for optimising the safety and efficacy of Direct Oral Anticoagulant (DOAC) doses.

Methods: an observational, retrospective cohort study was carried out in partnership with an NHS Trust. Based on eligibility criteria, the dataset of morbidly obese patients on DOACs was extracted from EHRs, pre-processed and analysed considering the access granted. After partitioning the entire dataset into a 70:30 split, the training dataset (70%) was run through selected machine learning (ML) classifiers (Random Forest, decision trees, K-nearest neighbours (KNN), bootstrap aggregation algorithm, gradient boosting classifier, support vector machines, and logistic regression) to rank variables, and derive predictions which were evaluated against the test dataset (30%). A multivariate regression model was used to adjust for confounders and to explore the relationships between DOAC regimens and clinical outcomes.

Results: we identified 4,275 morbidly obese patients out of n=97,413 records overall. The bootstrap aggregation, decision trees, and random forest classifiers (from the ML algorithms tested) achieved superior prediction accuracies (98.6%, 97.9%, and 98.3%, respectively) for the individual DOAC doses, with excellent values for precision, recall, and F1 scores (performance metrics). The most important characteristics in the model for predicting mortality and stroke were age, treatment days, and length of stay. Among DOACs, apixaban (84%) was the most frequently prescribed DOAC followed by rivaroxaban (15%). Apixaban 2.5 mg (twice daily) received the highest ranking for relevance to mortality, while it raised the mortality risk (OR 1.430, 95% CI: 1.181, 1.1.732, p=0.001). There were mixed results for apixaban 5mg (twice daily), the most widely prescribed dose of apixaban (54%), with significantly reduced risk of mortality (OR 0.751, 95% CI: 0.632, 0.905, p=0.003), but significantly increased risk of stroke events (OR 32.457, 95% CI: 17.083-61.664, p=0.001).

Conclusion: given the large sample size—a strength of our study, data-driven technologies were successfully employed in predicting the safety and efficacy of DOACs in morbidly obese patients using the real-world dataset; the key variables in the model for optimising clinical outcomes were identified. However, the limitations in our study, such as reporting errors, selection bias, and confounding bias, were not ruled out. Therefore, confirmatory studies (e.g., external validation with prospective data) are needed to confirm findings and provide a sound basis for universal deployment in clinical settings.
2042-7174
i20–i21
Nwanosike, E.M.
cfa7e99a-976a-43c3-8c46-00669d8e5da4
Sunter, W.
c667654f-5551-4aba-8d32-a24b96eebbe1
Ansari, M.A.
6bc3f987-64de-4be7-81c4-bedf1ecb7059
Merchant, H.
16e7d300-a50c-480f-99f5-86e30e9274ec
Conway, B.R.
2c87aa00-8c01-480c-befb-6092900011c9
Hasan, S.S.
e7daad21-dc73-44e0-9790-b9258cb58472
Nwanosike, E.M.
cfa7e99a-976a-43c3-8c46-00669d8e5da4
Sunter, W.
c667654f-5551-4aba-8d32-a24b96eebbe1
Ansari, M.A.
6bc3f987-64de-4be7-81c4-bedf1ecb7059
Merchant, H.
16e7d300-a50c-480f-99f5-86e30e9274ec
Conway, B.R.
2c87aa00-8c01-480c-befb-6092900011c9
Hasan, S.S.
e7daad21-dc73-44e0-9790-b9258cb58472

Nwanosike, E.M., Sunter, W., Ansari, M.A., Merchant, H., Conway, B.R. and Hasan, S.S. (2023) 469 Use of data-driven technology to optimise DOACs in morbidly obese patients. International Journal of Pharmacy Practice, 31 (Supplement_1), i20–i21. (doi:10.1093/ijpp/riad021.023).

Record type: Article

Abstract

Introduction: despite the advantages of Direct Oral Anticoagulants (DOACs) over older classes of anticoagulants, clinical experience is limited in special populations; data from landmark trials on safety and efficacy are relatively scarce (compared to warfarin). This makes it challenging for clinicians to prescribe the right DOAC at the right dose for such patients (e.g., morbidly obese patients) (1). Insights derived from analysing real-world data have proven to be a vital source of clinical evidence backing the recommendation of medications (2). Therefore, data-driven technologies like machine learning can harness big data in electronic health records (EHRs) to optimise DOAC therapy and improve clinical outcomes.

Aim: the study aims to accurately predict clinical outcomes in morbidly obese patients, and identify the key variables in the model for optimising the safety and efficacy of Direct Oral Anticoagulant (DOAC) doses.

Methods: an observational, retrospective cohort study was carried out in partnership with an NHS Trust. Based on eligibility criteria, the dataset of morbidly obese patients on DOACs was extracted from EHRs, pre-processed and analysed considering the access granted. After partitioning the entire dataset into a 70:30 split, the training dataset (70%) was run through selected machine learning (ML) classifiers (Random Forest, decision trees, K-nearest neighbours (KNN), bootstrap aggregation algorithm, gradient boosting classifier, support vector machines, and logistic regression) to rank variables, and derive predictions which were evaluated against the test dataset (30%). A multivariate regression model was used to adjust for confounders and to explore the relationships between DOAC regimens and clinical outcomes.

Results: we identified 4,275 morbidly obese patients out of n=97,413 records overall. The bootstrap aggregation, decision trees, and random forest classifiers (from the ML algorithms tested) achieved superior prediction accuracies (98.6%, 97.9%, and 98.3%, respectively) for the individual DOAC doses, with excellent values for precision, recall, and F1 scores (performance metrics). The most important characteristics in the model for predicting mortality and stroke were age, treatment days, and length of stay. Among DOACs, apixaban (84%) was the most frequently prescribed DOAC followed by rivaroxaban (15%). Apixaban 2.5 mg (twice daily) received the highest ranking for relevance to mortality, while it raised the mortality risk (OR 1.430, 95% CI: 1.181, 1.1.732, p=0.001). There were mixed results for apixaban 5mg (twice daily), the most widely prescribed dose of apixaban (54%), with significantly reduced risk of mortality (OR 0.751, 95% CI: 0.632, 0.905, p=0.003), but significantly increased risk of stroke events (OR 32.457, 95% CI: 17.083-61.664, p=0.001).

Conclusion: given the large sample size—a strength of our study, data-driven technologies were successfully employed in predicting the safety and efficacy of DOACs in morbidly obese patients using the real-world dataset; the key variables in the model for optimising clinical outcomes were identified. However, the limitations in our study, such as reporting errors, selection bias, and confounding bias, were not ruled out. Therefore, confirmatory studies (e.g., external validation with prospective data) are needed to confirm findings and provide a sound basis for universal deployment in clinical settings.

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Published date: 13 April 2023

Identifiers

Local EPrints ID: 485168
URI: http://eprints.soton.ac.uk/id/eprint/485168
ISSN: 2042-7174
PURE UUID: 491dabd5-0a72-4dc9-8248-c7cb39a8da4e
ORCID for E.M. Nwanosike: ORCID iD orcid.org/0000-0003-1831-6591

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Date deposited: 30 Nov 2023 17:52
Last modified: 18 Mar 2024 04:17

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Contributors

Author: E.M. Nwanosike ORCID iD
Author: W. Sunter
Author: M.A. Ansari
Author: H. Merchant
Author: B.R. Conway
Author: S.S. Hasan

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