Evaluating the Effect of Longitudinal Dose and INR Data on Maintenance Warfarin Dose Predictions
Anish Karpurapu, Adam Krekorian, Ye Tian, Leslie M. Collins, Ravi, Karra, Aaron Franklin, Boyla O. Mainsah

TL;DR
This study demonstrates that incorporating longitudinal dose and INR data into machine learning models significantly improves the accuracy of warfarin maintenance dose predictions, potentially enhancing patient outcomes.
Contribution
The paper shows that using longitudinal dose and INR data in machine learning models improves warfarin dose prediction accuracy over traditional methods.
Findings
Longitudinal dose and INR data significantly improve dose prediction accuracy.
Gradient boosting with longitudinal data increased ideal dose estimation to 75.41%.
Enhanced predictions can lead to faster therapeutic INR achievement and fewer complications.
Abstract
Warfarin, a commonly prescribed drug to prevent blood clots, has a highly variable individual response. Determining a maintenance warfarin dose that achieves a therapeutic blood clotting time, as measured by the international normalized ratio (INR), is crucial in preventing complications. Machine learning algorithms are increasingly being used for warfarin dosing; usually, an initial dose is predicted with clinical and genotype factors, and this dose is revised after a few days based on previous doses and current INR. Since a sequence of prior doses and INR better capture the variability in individual warfarin response, we hypothesized that longitudinal dose response data will improve maintenance dose predictions. To test this hypothesis, we analyzed a dataset from the COAG warfarin dosing study, which includes clinical data, warfarin doses and INR measurements over the study period,…
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