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Predicting Risk of Stroke From Lab Tests Using Machine Learning Algorithms: Development and Evaluation of Prediction

Eman M Alanazi1,2, Aalaa Abdou3, Jake Luo4

  • 1Department of Health Informatics, College of Health Sciences, Saudi Electronic University, Riyadh, Saudi Arabia.

JMIR Formative Research
|December 3, 2021
PubMed
Summary
This summary is machine-generated.

Machine learning models can accurately predict stroke using only lab test data. The random forest algorithm with data resampling achieved high accuracy, offering a new tool for stroke prediction.

Keywords:
lab testsmachine learning technologypredictive analyticsstroke

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Area of Science:

  • Biomedical Informatics
  • Computational Biology
  • Public Health

Background:

  • Stroke is a leading cause of death and disability, imposing significant health and financial burdens.
  • Health-related behaviors are key stroke risk factors, driving the need for effective prevention strategies.
  • Existing stroke prediction models often use lifestyle or imaging data, but not laboratory test results.

Purpose of the Study:

  • To develop and evaluate machine learning models for stroke prediction using laboratory test data.
  • To investigate the efficacy of different data selection and machine learning techniques for this purpose.

Main Methods:

  • Utilized National Health and Nutrition Examination Survey datasets.
  • Compared three data selection methods: no resampling, imputation, and resampling.
  • Evaluated four machine learning classifiers using six performance metrics.

Main Results:

  • Machine learning models can effectively predict stroke from lab test data.
  • The data resampling approach significantly improved model performance.
  • The random forest algorithm achieved the highest performance, with an accuracy of 0.96 and AUC of 0.97.

Conclusions:

  • A highly accurate and user-friendly predictive model for stroke was developed using lab test data.
  • This approach offers a novel method for stroke risk assessment.
  • Future research will focus on developing models for specific stroke types.