4.6 Article

Probability Analysis of Hypertension-Related Symptoms Based on XGBoost and Clustering Algorithm

Journal

APPLIED SCIENCES-BASEL
Volume 9, Issue 6, Pages -

Publisher

MDPI
DOI: 10.3390/app9061215

Keywords

hypertension; cluster analysis; XGBoost algorithm; hypertension related symptoms

Funding

  1. National Natural Science Foundation of China [71501007, 71672006, 71871003]
  2. Aviation Science Foundation of China [2017ZG51081]
  3. Technical Research Foundation [JSZL2016601A004]

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In this paper, cluster analysis and the XGBoost method are used to analyze the related symptoms of various types of young hypertensive patients, and finally guide patients to target treatment. Hypertension is a chronic disease that is common worldwide. The incidence of it is increasing, and the age level of patients is decreasing year by year. Effective treatment of youth hypertension has become a problem in the world. In this paper, young hypertension patients are classified into two groups by cluster analysis; the proportion of different hypertension related symptoms in each group of patients is then counted; and after verifying the prediction accuracy of the XGBoost model with 10-fold cross-validation, the accuracy of clustering is calculated by the XGBoost method. The final result shows that there are significant differences in symptomatic entropy between patients with type II hypertension and those with type I hypertension. Patients with type II hypertension are more likely to have symptoms of ventricular hypertrophy and microalbuminuria. Through this analysis, patients can have preventive treatment according to their own situation, and this can reduce the burden of medical expenses and prevent major diseases. Applying the data analysis into the medical field has great practical significance.

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