Year: 2024 | Month: July-September | Volume: 8 | Issue: 3 | Pages: 48-54
DOI: https://doi.org/10.52403/gijash.20240306
The Role of Big Data in Predicting Cardiac Events: A Machine Learning Approach
Deekshitha Kosaraju
Independent Researcher, Texas, USA
ABSTRACT
In the evolving realm of digital healthcare, the fusion of extensive data and machine learning technologies represents a groundbreaking shift in the field of heart health. By combining varied datasets with advanced analytical tools medical experts have greatly enhanced their ability to predict, diagnose and treat heart related issues. These innovative technologies play a role in analyzing intricate data to uncover patterns and connections that traditional methods may miss. By utilizing these insights medical professionals can anticipate heart problems accurately customize treatments based on individual patient needs and take proactive steps to prevent negative outcomes. Moreover, the use of machine learning, in cardiac care goes beyond predicting events; it also streamlines operations cuts down on healthcare expenses and boosts patient involvement by offering tailored and well-informed care. This piece explores how Big Data and machine learning are transforming the prediction of heart issues highlighting advancements while addressing obstacles and showcasing the immense potential these tools hold for reshaping cardiovascular healthcare in the future.
Keywords: Big Data, Machine Learning, Cardiac Event Prediction, Cardiovascular Medicine, Predictive Analytics
[PDF Full Text]