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Main Authors: Xie, Yingfa, Fu, Haoda, Huang, Yuan, Pozdnyakov, Vladimir, Yan, Jun
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.09042
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author Xie, Yingfa
Fu, Haoda
Huang, Yuan
Pozdnyakov, Vladimir
Yan, Jun
author_facet Xie, Yingfa
Fu, Haoda
Huang, Yuan
Pozdnyakov, Vladimir
Yan, Jun
contents Patients with type 2 diabetes need to closely monitor blood sugar levels as their routine diabetes self-management. Although many treatment agents aim to tightly control blood sugar, hypoglycemia often stands as an adverse event. In practice, patients can observe hypoglycemic events more easily than hyperglycemic events due to the perception of neurogenic symptoms. We propose to model each patient's observed hypoglycemic event as a lower-boundary crossing event for a reflected Brownian motion with an upper reflection barrier. The lower-boundary is set by clinical standards. To capture patient heterogeneity and within-patient dependence, covariates and a patient level frailty are incorporated into the volatility and the upper reflection barrier. This framework provides quantification for the underlying glucose level variability, patients heterogeneity, and risk factors' impact on glucose. We make inferences based on a Bayesian framework using Markov chain Monte Carlo. Two model comparison criteria, the Deviance Information Criterion and the Logarithm of the Pseudo-Marginal Likelihood, are used for model selection. The methodology is validated in simulation studies. In analyzing a dataset from the diabetic patients in the DURABLE trial, our model provides adequate fit, generates data similar to the observed data, and offers insights that could be missed by other models.
format Preprint
id arxiv_https___arxiv_org_abs_2403_09042
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Recurrent Events Modeling Based on a Reflected Brownian Motion with Application to Hypoglycemia
Xie, Yingfa
Fu, Haoda
Huang, Yuan
Pozdnyakov, Vladimir
Yan, Jun
Methodology
Patients with type 2 diabetes need to closely monitor blood sugar levels as their routine diabetes self-management. Although many treatment agents aim to tightly control blood sugar, hypoglycemia often stands as an adverse event. In practice, patients can observe hypoglycemic events more easily than hyperglycemic events due to the perception of neurogenic symptoms. We propose to model each patient's observed hypoglycemic event as a lower-boundary crossing event for a reflected Brownian motion with an upper reflection barrier. The lower-boundary is set by clinical standards. To capture patient heterogeneity and within-patient dependence, covariates and a patient level frailty are incorporated into the volatility and the upper reflection barrier. This framework provides quantification for the underlying glucose level variability, patients heterogeneity, and risk factors' impact on glucose. We make inferences based on a Bayesian framework using Markov chain Monte Carlo. Two model comparison criteria, the Deviance Information Criterion and the Logarithm of the Pseudo-Marginal Likelihood, are used for model selection. The methodology is validated in simulation studies. In analyzing a dataset from the diabetic patients in the DURABLE trial, our model provides adequate fit, generates data similar to the observed data, and offers insights that could be missed by other models.
title Recurrent Events Modeling Based on a Reflected Brownian Motion with Application to Hypoglycemia
topic Methodology
url https://arxiv.org/abs/2403.09042