» Articles » PMID: 36654062

Using Bayesian Network Model with MMHC Algorithm to Detect Risk Factors for Stroke

Overview
Journal Math Biosci Eng
Specialty Biology
Date 2023 Jan 19
PMID 36654062
Authors
Affiliations
Soon will be listed here.
Abstract

Stroke is a major chronic non-communicable disease with high incidence, high mortality, and high recurrence. To comprehensively digest its risk factors and take some relevant measures to lower its prevalence is of great significance. This study aimed to employ Bayesian Network (BN) model with Max-Min Hill-Climbing (MMHC) algorithm to explore the risk factors for stroke. From April 2019 to November 2019, Shanxi Provincial People's Hospital conducted opportunistic screening for stroke in ten rural areas in Shanxi Province. First, we employed propensity score matching (PSM) for class balancing for stroke. Afterwards, we used Chi-square testing and Logistic regression model to conduct a preliminary analysis of risk factors for stroke. Statistically significant variables were incorporated into BN model construction. BN structure learning was achieved using MMHC algorithm, and its parameter learning was achieved with Maximum Likelihood Estimation. After PSM, 748 non-stroke cases and 748 stroke cases were included in this study. BN was built with 10 nodes and 12 directed edges. The results suggested that age, fasting plasma glucose, systolic blood pressure, and family history of stroke constitute direct risk factors for stroke, whereas sex, educational levels, high density lipoprotein cholesterol, diastolic blood pressure, and urinary albumin-to-creatinine ratio represent indirect risk factors for stroke. BN model with MMHC algorithm not only allows for a complicated network relationship between risk factors and stroke, but also could achieve stroke risk prediction through Bayesian reasoning, outshining traditional Logistic regression model. This study suggests that BN model boasts great prospects in risk factor detection for stroke.

Citing Articles

Predicting risk factors for Epstein-Barr virus reactivation using Bayesian network analysis: a population-based study of high-risk areas for nasopharyngeal cancer.

Zeng Z, Lin K, Li X, Li T, Li X, Li J Front Oncol. 2025; 14:1369765.

PMID: 39906667 PMC: 11790440. DOI: 10.3389/fonc.2024.1369765.


Pathways from insulin resistance to incident cardiovascular disease: a Bayesian network analysis.

Tian X, Chen S, Xia X, Xu Q, Zhang Y, Zheng C Cardiovasc Diabetol. 2024; 23(1):421.

PMID: 39574129 PMC: 11583553. DOI: 10.1186/s12933-024-02510-w.


Risk factors and prediction model for acute ischemic stroke after off-pump coronary artery bypass grafting based on Bayesian network.

Zou W, Zhao H, Ren M, Cui C, Yuan G, Yuan B BMC Med Inform Decis Mak. 2024; 24(1):349.

PMID: 39563346 PMC: 11577910. DOI: 10.1186/s12911-024-02762-2.


Peeling back the many layers of competitive exclusion.

Maurer J, Cheng Y, Pedroso A, Thompson K, Akter S, Kwan T Front Microbiol. 2024; 15:1342887.

PMID: 38591029 PMC: 11000858. DOI: 10.3389/fmicb.2024.1342887.


Exploring factors related to heart attack complicated with hypertension using a Bayesian network model: a study based on the China Health and Retirement Longitudinal Study.

Zhang H, Zhang X, Yao X, Wang Q Front Public Health. 2023; 11:1259718.

PMID: 37780426 PMC: 10534983. DOI: 10.3389/fpubh.2023.1259718.