Effective Cardiovascular Disease Prediction on Different Parameters
DOI:
https://doi.org/10.32628/IJSRSET23102136Keywords:
World Health Organization, Cardiovascular Disease, Heart DiseaseAbstract
Globally, cardiovascular disease is the leading cause of death, according to WHO (World Health Organization) data, with more people dying from CVDs each year than any other cause. In 2016, an estimated 17.9 million people died as a result of cardiovascular disease (CVD), accounting for 31% of all deaths worldwide. A heart attack or a stroke is to blame for the majority of these deaths, at around 85%. Low- and middle-income countries account for nearly three-quarters of deaths from cardiovascular disease (CVD). A staggering 82% of the 17 million non-communicable disease-related deaths in 2015 occurred in countries with low or middle incomes, with cardiovascular disease accounting for 37% of all deaths under the age of 70. Tobacco use, an unhealthy diet, obesity, inactivity, and harmful use of alcohol can all be addressed through population-wide strategies to prevent most cardiovascular diseases [1].
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