Integrating Internet Of Things And Machine Learning For Enhanced Healthcare Applications A Comprehensive Analysis And Implementation Framework
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Abstract
The exciting potential to transform healthcare applications stems from the
newlineconvergence of machine learning (ML) and the Internet of Things (IoT). Through six
newlineseparate studies combining human disease and cattle disease, each concentrating on a
newlinedifferent facet of healthcare delivery and diagnosis, this extensive research examines the
newlineintegration of IoT and ML in healthcare. The major goal is to provide a thorough
newlineframework for research and execution that will allow IoT and ML to be used to improve
newlinehealthcare outcomes in a variety of fields.
newlineIn the first study, machine learning algorithms are used to predict cardiac disease
newlineutilizing an IoT platform. Through the use of Internet of Things sensors and real-time
newlinepatient data, scientists create predictive models that reliably identify people who are at risk
newlineof heart disease. The study emphasizes how early detection and intervention through IoTenabled
newlinediagnostics can improve patient outcomes and save healthcare expenses.
newlineThe application of IoT and ML to personalized liver disease stage prediction is the
newlinemain focus of the second study, which examines precision medicine in hepatology.
newlineResearchers create a novel method for precisely staging liver illness through the
newlineintegration of IoT sensors and machine learning models, which improves patient care and
newlineleads to more successful clinical interventions. The study emphasizes how crucial it is to
newlinecombine historical and modern medical data for accurate diagnosis and treatment.
newlineThe third study explores smart livestock management, integrating IoT for disease
newlineprediction and health detection in cattle using machine learning approaches. Researchers
newlinecreate predictive models to identify health problems in cattle and predict disease outbreaks
newlineby analyzing data from IoT sensors and applying machine learning techniques. This study
newlinedemonstrates how proactive management approaches and enhanced animal welfare can be
newlineachieved using IoT-enabled livestock monitoring.
newlineThe fourth study uses ensemble learning approaches to improve the fetal health