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title abstract year volume publisher series software layout issn id month tex_title firstpage lastpage page order cycles bibtex_author author date address container-title genre issued pdf extras
Development of Error Passing Network for Optimizing the Prediction of VO$_2$ peak in Childhood Acute Leukemia Survivors
Approximately two-thirds of survivors of childhood acute lymphoblastic leukemia (ALL) cancer develop late adverse effects post-treatment. Prior studies explored prediction models for personalized follow-up, but none integrated the usage of neural networks to date. In this work, we propose the Error Passing Network (EPN), a graph-based method that leverages relationships between samples to propagate residuals and adjust predictions of any machine learning model. We tested our approach to estimate patients’ \vo peak, a reliable indicator of their cardiac health. We used the EPN in conjunction with several baseline models and observed up to 12.16% improvement in the mean average percentage error compared to the last established equation predicting \vo peak in childhood ALL survivors. Along with this performance improvement, our final model is more efficient considering that it relies only on clinical variables that can be self-reported by patients, therefore removing the previous need of executing a resource-consuming physical test.
2024
248
PMLR
Proceedings of Machine Learning Research
inproceedings
2640-3498
raymond24a
0
Development of Error Passing Network for Optimizing the Prediction of VO$_2$ peak in Childhood Acute Leukemia Survivors
506
521
506-521
506
false
Raymond, Nicolas and Laribi, Hakima and Caru, Maxime and Mitiche, Mehdi and Marcil, Valerie and Krajinovic, Maja and Curnier, Daniel and Sinnett, Daniel and Valli\`eres, Martin
given family
Nicolas
Raymond
given family
Hakima
Laribi
given family
Maxime
Caru
given family
Mehdi
Mitiche
given family
Valerie
Marcil
given family
Maja
Krajinovic
given family
Daniel
Curnier
given family
Daniel
Sinnett
given family
Martin
Vallières
2024-07-24
Proceedings of the fifth Conference on Health, Inference, and Learning
inproceedings
date-parts
2024
7
24