Multi-Task Gaussian Processes and Dilated Convolutional Networks for Reconstruction of Reproductive Hormonal Dynamics
Abstract
We present an end-to-end statistical framework for personalized, accurate, and minimally invasive modeling of female reproductive hormonal patterns. Reconstructing and forecasting the evolution of hormonal dynamics is a challenging task, but a critical one to improve general understanding of the menstrual cycle and personalized detection of potential health issues. Our goal is to infer and forecast individual hormone daily levels over time, while accommodating pragmatic and minimally invasive measurement settings. To that end, our approach combines the power of probabilistic generative models (i.e., multi-task Gaussian processes) with the flexibility of neural networks (i.e., a dilated convolutional architecture) to learn complex temporal mappings. To attain accurate hormone level reconstruction with as little data as possible, we propose a sampling mechanism for optimal reconstruction accuracy with limited sampling budget. Our results show the validity of our proposed hormonal dynamic modeling framework, as it provides accurate predictive performance across different realistic sampling budgets and outperforms baselines methods.
Cite
Text
Urteaga et al. "Multi-Task Gaussian Processes and Dilated Convolutional Networks for Reconstruction of Reproductive Hormonal Dynamics." Proceedings of the 4th Machine Learning for Healthcare Conference, 2019.Markdown
[Urteaga et al. "Multi-Task Gaussian Processes and Dilated Convolutional Networks for Reconstruction of Reproductive Hormonal Dynamics." Proceedings of the 4th Machine Learning for Healthcare Conference, 2019.](https://mlanthology.org/mlhc/2019/urteaga2019mlhc-multitask/)BibTeX
@inproceedings{urteaga2019mlhc-multitask,
title = {{Multi-Task Gaussian Processes and Dilated Convolutional Networks for Reconstruction of Reproductive Hormonal Dynamics}},
author = {Urteaga, Iñigo and Bertin, Tristan and Hardy, Theresa M. and Albers, David J. and Elhadad, Noémie},
booktitle = {Proceedings of the 4th Machine Learning for Healthcare Conference},
year = {2019},
pages = {66-90},
volume = {106},
url = {https://mlanthology.org/mlhc/2019/urteaga2019mlhc-multitask/}
}