Identifying novel risk factors for aneurysmal subarachnoid haemorrhage using machine learning

Publication date

2025-03-18

Authors

Kanning, Jos PORCID 0000-0003-0316-1099ISNI 0000000523924158
Wang, JunfengISNI 0000000507797945
Abtahi, ShahabORCID 0000-0003-0482-5563ISNI 0000000506312045
Geerlings, Mirjam I
Ruigrok, Ynte M

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by

Abstract

Aneurysmal subarachnoid haemorrhage (aSAH) is a type of stroke with high mortality and morbidity. This study aimed to identify novel aSAH risk factors by combining machine learning (ML) and traditional statistical methods. Using the UK Biobank, we identified aSAH cases via hospital-based ICD codes and analysed 618 baseline variables covering demographics, lifestyle, medical history, and physical measurements. The CatBoost ML algorithm and Shapley Additive Explanations (SHAP) identified the top 25 variables most influential in predicting aSAH. Logistic regression further described these variables while adjusting for established aSAH risk factors. Among 501,847 participants, 893 aSAH cases were identified. ML identified 214 variables with non-zero SHAP values. Logistic regression of the top 25 variables revealed four potential novel aSAH risk factors. Increased aSAH risk was associated with mean sphered cell volume (OR 1.02, 95% CI 1.00-1.03) and tea intake (OR 1.03, 95% CI 1.01-1.05). Decreased aSAH risk was associated with peak expiratory flow (OR 0.80, 95% CI 0.66-0.96), and haematocrit percentage (OR 0.97, 95% CI 0.95-1.00). Future research should validate these findings and explore the potential non-linear relationships and interactions indicated by the ML models.

Keywords

Adult, Aged, Female, Humans, Logistic Models, Machine Learning, Male, Middle Aged, Risk Factors, Subarachnoid Hemorrhage/epidemiology, United Kingdom/epidemiology, General

Citation

Kanning, J P, Wang, J, Abtahi, S, Geerlings, M I & Ruigrok, Y M 2025, 'Identifying novel risk factors for aneurysmal subarachnoid haemorrhage using machine learning', Scientific Reports, vol. 15, no. 1, 9256. https://doi.org/10.1038/s41598-025-88826-3