Nonlinear State Space Modeling and Control of the Impact of Patients' Modifiable Lifestyle Behaviors on the Emergence of Multiple Chronic Conditions
Syed Hasib Akhter Faruqui, Adel Alaeddini, Jing Wang, Susan P, Fisher-Hoch, and Joseph B Mccormic

TL;DR
This paper introduces a nonlinear state-space model using Extended Kalman filter and tensor control charts to dynamically predict and monitor the impact of modifiable lifestyle behaviors on the emergence of multiple chronic conditions in patients.
Contribution
It develops a novel nonlinear state-space modeling approach combined with tensor control charts to assess and predict MCC progression influenced by lifestyle factors.
Findings
Effective dynamic prediction of MCC emergence.
Successful validation with real patient data.
Enhanced monitoring of lifestyle impact on health outcomes.
Abstract
The emergence and progression of multiple chronic conditions (MCC) over time often form a dynamic network that depends on patient's modifiable risk factors and their interaction with non-modifiable risk factors and existing conditions. Continuous time Bayesian networks (CTBNs) are effective methods for modeling the complex network of MCC relationships over time. However, CTBNs are not able to effectively formulate the dynamic impact of patient's modifiable risk factors on the emergence and progression of MCC. Considering a functional CTBN (FCTBN) to represent the underlying structure of the MCC relationships with respect to individuals' risk factors and existing conditions, we propose a nonlinear state-space model based on Extended Kalman filter (EKF) to capture the dynamics of the patients' modifiable risk factors and existing conditions on the MCC evolution over time. We also develop…
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Taxonomy
TopicsMental Health Research Topics
