Analysis and classification of main risk factors causing stroke in
Shanxi Province
- URL: http://arxiv.org/abs/2106.00002v1
- Date: Sat, 29 May 2021 14:27:08 GMT
- Title: Analysis and classification of main risk factors causing stroke in
Shanxi Province
- Authors: Junjie Liu, Yiyang Sun, Jing Ma, Jiachen Tu, Yuhui Deng, Ping He,
Huaxiong Huang, Xiaoshuang Zhou, Shixin Xu
- Abstract summary: In China, stroke is the first leading cause of death in recent years.
The importance of "8+2" factors from China National Stroke Prevention Project (CSPP) is evaluated.
The probability of getting stroke for a person can also be predicted via our machine learning model.
- Score: 8.205220957412354
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In China, stroke is the first leading cause of death in recent years. It is a
major cause of long-term physical and cognitive impairment, which bring great
pressure on the National Public Health System. Evaluation of the risk of
getting stroke is important for the prevention and treatment of stroke in
China. A data set with 2000 hospitalized stroke patients in 2018 and 27583
residents during the year 2017 to 2020 is analyzed in this study. Due to data
incompleteness, inconsistency, and non-structured formats, missing values in
the raw data are filled with -1 as an abnormal class. With the cleaned
features, three models on risk levels of getting stroke are built by using
machine learning methods. The importance of "8+2" factors from China National
Stroke Prevention Project (CSPP) is evaluated via decision tree and random
forest models. Except for "8+2" factors the importance of features and SHAP1
values for lifestyle information, demographic information, and medical
measurement are evaluated and ranked via a random forest model. Furthermore, a
logistic regression model is applied to evaluate the probability of getting
stroke for different risk levels. Based on the census data in both communities
and hospitals from Shanxi Province, we investigate different risk factors of
getting stroke and their ranking with interpretable machine learning models.
The results show that Hypertension (Systolic blood pressure, Diastolic blood
pressure), Physical Inactivity (Lack of sports), and Overweight (BMI) are
ranked as the top three high-risk factors of getting stroke in Shanxi province.
The probability of getting stroke for a person can also be predicted via our
machine learning model.
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