Review Paper
Year: 2023 | Month: April-June | Volume: 8 | Issue: 2 | Pages: 48-53
DOI: https://doi.org/10.52403/gijhsr.20230209
Machine Learning and the Future of Preventative Cardiology: A Look at Early Detection Techniques
Deekshitha Kosaraju
Independent Researcher, Texas, USA
ABSTRACT
The rise of machine learning (ML) in cardiology signifies a significant shift towards proactive healthcare management especially in the early identification of cardiovascular diseases (CVDs). This article explores how ML algorithms, by analyzing healthcare data not only forecast potential heart issues but also enhance patient outcomes by enabling early intervention strategies. It underscores the role of ML in synthesizing intricate patient data - from genetic details to lifestyle habits - to pinpoint risk factors well before clinical symptoms appear. This proactive strategy aims to reduce the incidence of CVDs which're among the primary causes of death globally thereby increasing life expectancy and enhancing quality of life. By examining technologies and predictive models in depth this article showcases the transformative impact of ML on reshaping the future of cardiological care through moving beyond conventional diagnostic methods, towards a more predictive and personalized healthcare framework.
Keywords: Machine Learning, Early Detection, Cardiovascular Diseases, Preventative Cardiology, Predictive Analytics