Implementation of a Model for Risk Assessment of Cardiovascular Diseases using Artificial Intelligence
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Abstract
In this work, we propose a model to help assess the
risk of cardiovascular disease in an individual. The learning was
carried out on a public dataset made available on the site Kaggle
by Svetlana Ulianova and tested with a dataset of populations of
West African countries. The first step was to extract a suitable
data set for our study and pre-process it. Then a data analysis
was done to determine the correlations between the attributes
that make up our dataset. Finally, these data were explored with
different algorithms based on decision trees such as the decision
tree classifier, random forests to detect the most efficient. We have
then studied the results and therefore concluded that the Decision
Classifier Tree algorithm produced the best performance which
is illustrated by the confusion matrix obtained, the performance-
related metrics and a better prediction score.
