Using Graph Representation Learning to Predict Salivary Cortisol Levels in Pancreatic Cancer Patients

被引:0
作者
Guimin Dong
Mehdi Boukhechba
Kelly M. Shaffer
Lee M. Ritterband
Daniel G. Gioeli
Matthew J. Reilley
Tri M. Le
Paul R. Kunk
Todd W. Bauer
Philip I. Chow
机构
[1] University of Virginia,Engineering Systems and Environment
[2] University of Virginia,School of Medicine
来源
Journal of Healthcare Informatics Research | 2021年 / 5卷
关键词
Salivary cortisol; Predictive modeling; Graph representation learning; Actigraphy data; Mobile sensing;
D O I
暂无
中图分类号
学科分类号
摘要
Cortisol is a glucocorticoid hormone that is critical to immune system functioning. Studies show that prolonged exposure to high levels of cortisol can lead to a range of physical health ailments including the progression of tumor growth. The ability to monitor cortisol levels over time can therefore be used to facilitate decision-making during cancer treatment. However, collecting serum or saliva samples to monitor cortisol in situ is inconvenient, costly, and impractical. In this paper, we propose a general predictive modeling process that uses passively sensed actigraphy data to predict underlying salivary cortisol levels using graph representation learning. We compare machine learning models with handcrafted feature engineering and with graph representation learning, which includes Graph2Vec, FeatherGraph, GeoScattering and NetLSD. Our preliminary results generated from data from 10 newly diagnosed pancreatic cancer patients demonstrate that machine learning models with graph representation learning can outperform the handcrafted feature engineering to predict salivary cortisol levels.
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页码:401 / 419
页数:18
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