Authors :
Echetabu, Uchenna Power; Abonyi, Dorothy Obianuju; Okoye Japhet Okwudili
Volume/Issue :
Volume 9 - 2024, Issue 9 - September
Google Scholar :
https://rb.gy/444ebp
Scribd :
https://rb.gy/l0hrxd
DOI :
https://doi.org/10.38124/ijisrt/IJISRT24SEP904
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
The study, Leveraging AI-Driven
Telemedicine for Efficient Healthcare Delivery in
Anambra State, explored the impact of AI-Driven
Telemedicine on accessibility, challenges faced during
implementation, strategies for successful adoption, and
the development of a tailored decision support interface.
The objectives sought to; predict the impacts of AI-
driven telemedicine solutions on healthcare outcomes
and patient satisfaction, evaluate the possible challenges
in the implementation of the AI-based telemedicine
solutions, develop strategies for easy implementation and
sustenance of the AI-based telemedicine, and provide the
features and functionalities that would be incorporated
into the AI-driven decision support interface that would
optimize healthcare accessibility and efficiency in the
state. The study employed a mixed-methods research
approach, including surveys, interviews, and a
comprehensive review of existing literature. The findings
showed that AI-driven telemedicine solutions will have
positive and significant impact on healthcare outcomes
and patient satisfaction (tstatistic, 3.535 > tcritical, 2.571).
With the result, tstatistic, 8.875 > tcritical, 2.306, the study
indicated that the implementation of AI-based
telemedicine solutions in Anambra State would be faced
with some challenges such as funds, limited internet
connectivity, ethical concerns, regulatory compliance, etc.
However, it highlighted some strategies that need to be
developed to facilitate a seamless implementation and
sustenance of the AI-based telemedicine (tstatistic, 3.646 >
tcritical, 3.182). The study also identified some features and
functionalities that would be incorporated into an AI-
driven decision support interface to optimize healthcare
accessibility and efficiency in Anambra State (tstatistic,
14.909 > tcritical, 2.262). The study concluded that
addressing the identified challenges and leveraging the
potentials presented by AI-based telemedicine will
require a concerted effort from the government,
healthcare providers, policymakers, telecoms providers,
and the academic community. Therefore, it was
recommended that the government and relevant
stakeholders should prioritize infrastructure
development, particularly in the areas of power supply
and internet connectivity, while the policymakers should
collaborate with medical experts to develop and
implement regulations, policies, and strategies that
promote the adoption of AI-based telemedicine.
References :
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The study, Leveraging AI-Driven
Telemedicine for Efficient Healthcare Delivery in
Anambra State, explored the impact of AI-Driven
Telemedicine on accessibility, challenges faced during
implementation, strategies for successful adoption, and
the development of a tailored decision support interface.
The objectives sought to; predict the impacts of AI-
driven telemedicine solutions on healthcare outcomes
and patient satisfaction, evaluate the possible challenges
in the implementation of the AI-based telemedicine
solutions, develop strategies for easy implementation and
sustenance of the AI-based telemedicine, and provide the
features and functionalities that would be incorporated
into the AI-driven decision support interface that would
optimize healthcare accessibility and efficiency in the
state. The study employed a mixed-methods research
approach, including surveys, interviews, and a
comprehensive review of existing literature. The findings
showed that AI-driven telemedicine solutions will have
positive and significant impact on healthcare outcomes
and patient satisfaction (tstatistic, 3.535 > tcritical, 2.571).
With the result, tstatistic, 8.875 > tcritical, 2.306, the study
indicated that the implementation of AI-based
telemedicine solutions in Anambra State would be faced
with some challenges such as funds, limited internet
connectivity, ethical concerns, regulatory compliance, etc.
However, it highlighted some strategies that need to be
developed to facilitate a seamless implementation and
sustenance of the AI-based telemedicine (tstatistic, 3.646 >
tcritical, 3.182). The study also identified some features and
functionalities that would be incorporated into an AI-
driven decision support interface to optimize healthcare
accessibility and efficiency in Anambra State (tstatistic,
14.909 > tcritical, 2.262). The study concluded that
addressing the identified challenges and leveraging the
potentials presented by AI-based telemedicine will
require a concerted effort from the government,
healthcare providers, policymakers, telecoms providers,
and the academic community. Therefore, it was
recommended that the government and relevant
stakeholders should prioritize infrastructure
development, particularly in the areas of power supply
and internet connectivity, while the policymakers should
collaborate with medical experts to develop and
implement regulations, policies, and strategies that
promote the adoption of AI-based telemedicine.