Multiple chronic conditions (MCC) are one of the biggest challenges of modern times. The evolution of MCC follows a complex stochastic process that is influenced by a variety of risk factors, ranging from pre-existing conditions to modifiable lifestyle behavioral factors (e.g. diet, exercise habits, tobacco use, alcohol use, etc.) to non-modifiable socio-demographic factors (e.g., age, gender, education, marital status, etc.). People with MCC are at an increased risk of new chronic conditions and mortality. This paper proposes a model predictive control functional continuous time Bayesian network, an online recursive method to examine the impact of various lifestyle behavioral changes on the emergence trajectories of MCC and generate strate...
Predicting the complexity level (i.e. the number of complications and their related hospitalizations...
Thesis (Ph.D.)--University of Washington, 2019For many chronic diseases, an individual patient may e...
Personalized prediction of chronic diseases is crucial for reducing the disease burden. However, pre...
<div><p>Over the past few decades, the rise of multiple chronic conditions has become a major concer...
Over the past few decades, the rise of multiple chronic conditions has become a major concern for cl...
Objective: Chronic diseases have become the most prevalent and costly health conditions in the healt...
Objectives: Although the course of single diseases can be studied using traditional epidemiologic te...
With the increase of multimorbidity due to population ageing, managing multiple chronic health condi...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
Older adults experience a higher prevalence of multiple chronic conditions (MCCs). Establishing the ...
The chronic disease burden is a public health priority with most Canadian adults having chronic dise...
Abstract Background Population-based risk prediction ...
Peer reviewed: TrueAcknowledgements: The authors thank Liam Thomas for his contribution as a Researc...
The research aims to explore the association between behavioral habits and chronic diseases, and to ...
Access to electronic health records creates an opportunity to build stochastic models that support h...
Predicting the complexity level (i.e. the number of complications and their related hospitalizations...
Thesis (Ph.D.)--University of Washington, 2019For many chronic diseases, an individual patient may e...
Personalized prediction of chronic diseases is crucial for reducing the disease burden. However, pre...
<div><p>Over the past few decades, the rise of multiple chronic conditions has become a major concer...
Over the past few decades, the rise of multiple chronic conditions has become a major concern for cl...
Objective: Chronic diseases have become the most prevalent and costly health conditions in the healt...
Objectives: Although the course of single diseases can be studied using traditional epidemiologic te...
With the increase of multimorbidity due to population ageing, managing multiple chronic health condi...
This paper introduces a Dynamic Bayesian network (DBN) model for representing survival of patients s...
Older adults experience a higher prevalence of multiple chronic conditions (MCCs). Establishing the ...
The chronic disease burden is a public health priority with most Canadian adults having chronic dise...
Abstract Background Population-based risk prediction ...
Peer reviewed: TrueAcknowledgements: The authors thank Liam Thomas for his contribution as a Researc...
The research aims to explore the association between behavioral habits and chronic diseases, and to ...
Access to electronic health records creates an opportunity to build stochastic models that support h...
Predicting the complexity level (i.e. the number of complications and their related hospitalizations...
Thesis (Ph.D.)--University of Washington, 2019For many chronic diseases, an individual patient may e...
Personalized prediction of chronic diseases is crucial for reducing the disease burden. However, pre...