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Predicting new-onset stroke with machine learning: development of a model integrating traditional Chinese and western medicine

Affiliation
Departmalet of Neurology ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Wang, Liuding;
Affiliation
Graduate School ,Beijing University of Chinese Medicine ,Beijing ,China
Shi, Jingzi;
Affiliation
Departmalet of Neurology ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Miao, Lina;
Affiliation
Departmalet of Cardiology ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Chen, Yifan;
Affiliation
Departmalet of Neurology ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Wei, Jingjing;
Affiliation
Medical Ethics Committee ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Jia, Min;
Affiliation
Shandong University of Traditional Chinese Medicine ,Jinan ,China
Gong, Zhiyi;
Affiliation
Departmalet of Neurology ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Yang, Ze;
Affiliation
Departmalet of Neurology ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Lyu, Jian;
Affiliation
Departmalet of Neurology ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Zhang, Yunling;
Affiliation
Departmalet of Neurology ,Xiyuan Hospital ,China Academy of Chinese Medical Sciences ,Beijing ,China
Liang, Xiao

Introduction The integration of traditional Chinese medicine (TCM) and Western medicine has demonstrated effectiveness in the primary prevention of stroke. Therefore, our study aims to utilize TCM syndromes alongside conventional risk factors as predictive variables to construct a machine learning model for assessing the risk of new-onset stroke. Methods We conducted a ten-year follow-up study encompassing 4,511 participants from multiple Chinese community hospitals. The dependent variable was the occurrence of the new-onset stroke, while independent variables included age, gender, systolic blood pressure (SBP), diabetes, blood lipids, carotid atherosclerosis, smoking status, and TCM syndromes. We developed the models using XGBoost in conjunction with SHapley Additive exPlanations (SHAP) for interpretability, and logistic regression with a nomogram for clinical application. Results A total of 1,783 individuals were included (1,248 in the training set and 535 in the validation set), with 110 patients diagnosed with new-onset stroke. The logistic model demonstrated an AUC of 0.746 (95% CI : 0.719–0.774) in the training set and 0.658 (95% CI : 0.572–0.745) in the validation set. The XGBoost model achieved a training set AUC of 0.811 (95% CI : 0.788–0.834) and a validation set AUC of 0.628 (95% CI : 0.537–0.719). SHAP analysis showed that elevated SBP, Fire syndrome in TCM, and carotid atherosclerosis were the three most important features for predicting the new-onset stroke. Conclusion Under identical traditional risk factors, Chinese residents with Fire syndrome may have a higher risk of new-onset stroke. In high-risk populations for stroke, it is recommended to prioritize the screening and management of hypertension, Fire syndrome, and carotid atherosclerosis. However, future high-performance TCM predictive models require more objective and larger datasets for optimization.

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License Holder: Copyright © 2025 Wang, Shi, Miao, Chen, Wei, Jia, Gong, Yang, Lyu, Zhang and Liang.

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