Prediction of Stroke Disease with Demographic and Behavioural Data Using Random Forest Algorithm

Author:

Shobayo Olamilekan1ORCID,Zachariah Oluwafemi1,Odusami Modupe Olufunke2ORCID,Ogunleye Bayode3ORCID

Affiliation:

1. Department of Computing, Sheffield Hallam University, Sheffield S1 2NU, UK

2. Department of Multimedia Engineering, Kaunas University of Technology, 44249 Kaunas, Lithuania

3. Department of Computing & Mathematics, University of Brighton, Brighton BN2 4GJ, UK

Abstract

Stroke is a major cause of death worldwide, resulting from a blockage in the flow of blood to different parts of the brain. Many studies have proposed a stroke disease prediction model using medical features applied to deep learning (DL) algorithms to reduce its occurrence. However, these studies pay less attention to the predictors (both demographic and behavioural). Our study considers interpretability, robustness, and generalisation as key themes for deploying algorithms in the medical domain. Based on this background, we propose the use of random forest for stroke incidence prediction. Results from our experiment showed that random forest (RF) outperformed decision tree (DT) and logistic regression (LR) with a macro F1 score of 94%. Our findings indicated age and body mass index (BMI) as the most significant predictors of stroke disease incidence.

Publisher

MDPI AG

Reference34 articles.

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3. Population-based study of event-rate, incidence, case fatality, and mortality for all acute vascular events in all arterial territories (Oxford Vascular Study);Rothwell;Lancet,2005

4. Heart disease and stroke statistics—2011 update: A report from the American Heart Association;Roger;Circulation,2011

5. Epidemiology of stroke;Warlow;Lancet,1998

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