Using social network analysis to model palliative care
Authored by Nima Moradianzadeh, Pooya Moradian Zadeh, Ziad Kobti, Sarah Hansen, Kathryn Pfaff
Date Published: 2018
DOI: 10.1016/j.jnca.2018.07.004
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Abstract
Palliative and end-of-life care are special types of healthcare that
focus on improving the quality of life of patients who are living with
life-threatening illness or nearing their end of life. The primary goal
here is to provide various support services to help the patients to
maintain an active life and dignity. Assuming there are cost and
resource limitations for delivering care within the system, where each
care provider can support a limited number of patients, the problem can
be defined as finding a set of suitable care providers with a minimum
overall cost to match the needs of the maximum number of patients.
In the grand scheme, the whole care system can be seen as a social
network consisting of patients and care providers. This representation
provides an opportunity to apply social network analysis techniques to
enhance the topology of the system and improve its efficiency. In this
paper, we propose a novel computational agent-based model to address
this problem by extending the agent's capabilities using the benefits of
the social network. We assume that each patient agent can cover its
disabilities and perform its desired tasks through collaboration with
other agents. The primary objective is to optimize a dynamic,
personalized care pathway system that will support palliative care
within a community eco-system. Testing the ability of the system to
match social support agents with personal preferences, needs, and
capabilities is the second goal of this research work. In addition, we
are going to measure the impact of the system on perceived quality of
life, social connectedness, caregiver burden, and care satisfaction. The
performance and functionality of our proposed model have been evaluated
using various synthetic and a real palliative networks. The results
demonstrate a significant reduction in the operational costs and
enhancement of the service quality.
Tags
Agent-based model
Agents
Social Network Analysis
Optimization
Platform
Diagnosis
Health-care
People
Palliative care networks