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Warfarin maintenance dose prediction for Chinese after heart valve replacement by a feedforward neural network with equal stratified sampling. | LitMetric

Warfarin maintenance dose prediction for Chinese after heart valve replacement by a feedforward neural network with equal stratified sampling.

Sci Rep

Department of Evidence-Based Medicine and Clinical Epidemiology, School of Medicine/West China Hospital, Sichuan University, No. 17, Section 3, Renmin South Road, Chengdu, 610041, Sichuan, China.

Published: July 2021

AI Article Synopsis

  • Patients on low-dose warfarin face a higher risk of bleeding from overdose, highlighting the need for accurate dose prediction.
  • The study aimed to enhance a neural network model's precision for predicting low maintenance doses for Chinese patients by using resampled datasets through equal stratified sampling.
  • The results show significant improvements in prediction accuracy for the low-dose group, while maintaining overall model performance, suggesting that this sampling method could be an effective approach for constructing drug dosing models in clinical settings.

Article Abstract

Patients requiring low-dose warfarin are more likely to suffer bleeding due to overdose. The goal of this work is to improve the feedforward neural network model's precision in predicting the low maintenance dose for Chinese in the aspect of training data construction. We built the model from a resampled dataset created by equal stratified sampling (maintaining the same sample number in three dose-groups with a total of 3639) and performed internal and external validations. Comparing to the model trained from the raw dataset of 19,060 eligible cases, we improved the low-dose group's ideal prediction percentage from 0.7 to 9.6% and maintained the overall performance (76.4% vs. 75.6%) in external validation. We further built neural network models on single-dose subsets to invest whether the subsets samples were sufficient and whether the selected factors were appropriate. The training set sizes were 1340 and 1478 for the low and high dose subsets; the corresponding ideal prediction percentages were 70.2% and 75.1%. The training set size for the intermediate dose varied and was 1553, 6214, and 12,429; the corresponding ideal prediction percentages were 95.6, 95.1%, and 95.3%. Our conclusion is that equal stratified sampling can be a considerable alternative approach in training data construction to build drug dosing models in the clinic.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8253817PMC
http://dx.doi.org/10.1038/s41598-021-93317-2DOI Listing

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