Machine Learning Approaches for Stroke Risk Prediction: Findings from the Suita Study

Thien Vu, Yoshihiro Kokubo, Mai Inoue, Masaki Yamamoto, Attayeb Mohsen, Agustin Martin-Morales, Takao Inoué, Research Dawadi, Michihiro Araki
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Abstract

Stroke constitutes a significant public health concern due to its impact on mortality and morbidity. This study investigates the utility of machine learning algorithms in predicting stroke and identifying key risk factors using data from the Suita study, comprising 7389 participants and 53 variables. Initially, unsupervised k-prototype clustering categorized participants into risk clusters, while five supervised models including Logistic Regression (LR), Random Forest (RF), Support Vector Machine (SVM), Extreme Gradient Boosting (XGBoost), and Light Gradient Boosted Machine (LightGBM) were employed to predict stroke outcomes. Stroke incidence disparities among identified risk clusters using the unsupervised k-prototype clustering method are substantial, according to the findings. Supervised learning, particularly RF, was a preferable option because of the higher levels of performance metrics. The Shapley Additive Explanations (SHAP) method identified age, systolic blood pressure, hypertension, estimated glomerular filtration rate, metabolic syndrome, and blood glucose level as key predictors of stroke, aligning with findings from the unsupervised clustering approach in high-risk groups. Additionally, previously unidentified risk factors such as elbow joint thickness, fructosamine, hemoglobin, and calcium level demonstrate potential for stroke prediction. In conclusion, machine learning facilitated accurate stroke risk predictions and highlighted potential biomarkers, offering a data-driven framework for risk assessment and biomarker discovery.
中风风险预测的机器学习方法:Suita 研究的发现
由于中风对死亡率和发病率的影响,它已成为一个重大的公共卫生问题。本研究利用由 7389 名参与者和 53 个变量组成的 Suita 研究数据,探讨了机器学习算法在预测中风和识别关键风险因素方面的实用性。最初,无监督 k 原型聚类将参与者分为风险群组,而后采用五种监督模型(包括逻辑回归 (LR)、随机森林 (RF)、支持向量机 (SVM)、极梯度提升 (XGBoost) 和轻梯度提升机 (LightGBM))来预测中风结果。研究结果表明,使用无监督 k 原型聚类方法确定的风险群组之间的中风发病率差异很大。由于性能指标水平较高,监督学习(尤其是射频学习)是一种更可取的选择。Shapley Additive Explanations (SHAP) 方法将年龄、收缩压、高血压、估计肾小球滤过率、代谢综合征和血糖水平确定为中风的主要预测因素,这与无监督聚类方法在高危人群中的发现一致。此外,肘关节厚度、果糖胺、血红蛋白和血钙水平等以前未发现的风险因素也显示出预测中风的潜力。总之,机器学习有助于准确预测中风风险并突出潜在的生物标记物,为风险评估和生物标记物的发现提供了一个数据驱动的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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