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Predicting Therapeutic Response to Unfractionated Heparin Therapy: Machine Learning Approach.
Abdel-Hafez, Ahmad; Scott, Ian A; Falconer, Nazanin; Canaris, Stephen; Bonilla, Oscar; Marxen, Sven; Van Garderen, Aaron; Barras, Michael.
Afiliación
  • Abdel-Hafez A; Clinical Informatics, Metro South Health, Queensland Health, Brisbane, Australia.
  • Scott IA; School of Public Health & Social Work, Queensland University of Technology, Brisbane, Australia.
  • Falconer N; Department of Internal Medicine and Clinical Epidemiology, Princess Alexandra Hospital, Brisbane, Australia.
  • Canaris S; Greater Brisbane School of Clinical Medicine, University of Queensland, Brisbane, Australia.
  • Bonilla O; Department of Pharmacy, Princess Alexandra Hospital, Brisbane, Australia.
  • Marxen S; Centre for Health Services Research, Faculty of Medicine, The University of Queensland, Brisbane, Australia.
  • Van Garderen A; Clinical Informatics, Metro South Health, Queensland Health, Brisbane, Australia.
  • Barras M; Clinical Informatics, Metro South Health, Queensland Health, Brisbane, Australia.
Interact J Med Res ; 11(2): e34533, 2022 Sep 19.
Article en En | MEDLINE | ID: mdl-35993617
ABSTRACT

BACKGROUND:

Unfractionated heparin (UFH) is an anticoagulant drug that is considered a high-risk medication because an excessive dose can cause bleeding, whereas an insufficient dose can lead to a recurrent embolic event. Therapeutic response to the initiation of intravenous UFH is monitored using activated partial thromboplastin time (aPTT) as a measure of blood clotting time. Clinicians iteratively adjust the dose of UFH toward a target, indication-defined therapeutic aPTT range using nomograms, but this process can be imprecise and can take ≥36 hours to achieve the target range. Thus, a more efficient approach is required.

OBJECTIVE:

In this study, we aimed to develop and validate a machine learning (ML) algorithm to predict aPTT within 12 hours after a specified bolus and maintenance dose of UFH.

METHODS:

This was a retrospective cohort study of 3019 patient episodes of care from January 2017 to August 2020 using data collected from electronic health records of 5 hospitals in Queensland, Australia. Data from 4 hospitals were used to build and test ensemble models using cross-validation, whereas data from the fifth hospital were used for external validation. We built 2 ML models a regression model to predict the aPTT value after a UFH bolus dose and a multiclass model to predict the aPTT, classified as subtherapeutic (aPTT <70 seconds), therapeutic (aPTT 70-100 seconds), or supratherapeutic (aPTT >100 seconds). Modeling was performed using Driverless AI (H2O), an automated ML tool, and 17 different experiments were iteratively conducted to optimize model accuracy.

RESULTS:

In predicting aPTT, the best performing model was an ensemble with 4x LightGBM models with a root mean square error of 31.35 (SD 1.37). In predicting the aPTT class using a repurposed data set, the best performing ensemble model achieved an accuracy of 0.599 (SD 0.0289) and an area under the receiver operating characteristic curve of 0.735. External validation yielded similar

results:

root mean square error of 30.52 (SD 1.29) for the aPTT prediction model, and accuracy of 0.568 (SD 0.0315) and area under the receiver operating characteristic curve of 0.724 for the aPTT multiclassification model.

CONCLUSIONS:

To the best of our knowledge, this is the first ML model applied to intravenous UFH dosing that has been developed and externally validated in a multisite adult general medical and surgical inpatient setting. We present the processes of data collection, preparation, and feature engineering for replication.
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Texto completo: 1 Base de datos: MEDLINE Tipo de estudio: Observational_studies / Prognostic_studies / Risk_factors_studies Idioma: En Revista: Interact J Med Res Año: 2022 Tipo del documento: Article País de afiliación: Australia

Texto completo: 1 Base de datos: MEDLINE Tipo de estudio: Observational_studies / Prognostic_studies / Risk_factors_studies Idioma: En Revista: Interact J Med Res Año: 2022 Tipo del documento: Article País de afiliación: Australia