Machine Learning Models for Predicting Influential Factors of Early Outcomes in Acute Ischemic Stroke: Registry-Based Study.
Po-Yuan SuYi-Chia WeiHao LuoChi-Hung LiuWen-Yi HuangKuan-Fu ChenChing-Po LinHung-Yu WeiTsong-Hai LeePublished in: JMIR medical informatics (2022)
Machine learning models are feasible in predicting early stroke outcomes. An enriched feature bank could improve model performance. Initial neurological levels and age determined the activity independence at hospital discharge. In addition, physiological and laboratory surveillance aided in predicting in-hospital deterioration. The use of the SHAP explanatory method successfully transformed machine learning predictions into clinically meaningful results.