Feedback

Following intravenous thrombolysis, the outcome of diabetes mellitus associated with acute ischemic stroke was predicted via machine learning

Affiliation
Shenyang Tenth People’s Hospital ,Shenyang Medical College ,Shenyang ,China
Liu, Xiaoqing;
Affiliation
The First Hospital of China Medical University ,Shenyang ,China
Wang, Miaoran;
Affiliation
Shenyang Tenth People’s Hospital ,Shenyang Medical College ,Shenyang ,China
Wen, Rui;
Affiliation
Shenyang Tenth People’s Hospital ,Shenyang Medical College ,Shenyang ,China
Zhu, Haoyue;
Affiliation
Shenyang First People’s Hospital ,Shenyang Medical College ,Shenyang ,China
Xiao, Ying;
Affiliation
Shenyang Tenth People’s Hospital ,Shenyang Medical College ,Shenyang ,China
He, Qian;
Affiliation
Shenyang Tenth People’s Hospital ,Shenyang Medical College ,Shenyang ,China
Shi, Yangdi;
Affiliation
Shenyang First People’s Hospital ,Shenyang Medical College ,Shenyang ,China
Hong, Zhe;
Affiliation
Shenyang Tenth People’s Hospital ,Shenyang Medical College ,Shenyang ,China
Xu, Bing

This cohort study aimed to evaluate the prognostic outcomes of patients with acute ischemic stroke (AIS) and diabetes mellitus following intravenous thrombolysis, utilizing machine learning techniques. The analysis was conducted using data from Shenyang First People’s Hospital, involving 3,478 AIS patients with diabetes who received thrombolytic therapy from January 2018 to December 2023, ultimately focusing on 1,314 patients after screening. The primary outcome measured was the 90-day Modified Rankin Scale (MRS). An 80/20 train-test split was implemented for model development and validation, employing various machine learning classifiers, including artificial neural networks (ANN), random forest (RF), XGBoost (XGB), and LASSO regression. Results indicated that the average accuracy of the XGB model was 0.7355 (±0.0307), outperforming the other models. Key predictors for prognosis post-thrombolysis included the National Institutes of Health Stroke Scale (NIHSS) and blood platelet count. The findings underscore the effectiveness of machine learning algorithms, particularly XGB, in predicting functional outcomes in diabetic AIS patients, providing clinicians with a valuable tool for treatment planning and improving patient outcome predictions based on receiver operating characteristic (ROC) analysis and accuracy assessments.

Cite

Citation style:
Could not load citation form.

Access Statistic

Total:
Downloads:
Abtractviews:
Last 12 Month:
Downloads:
Abtractviews:

Rights

License Holder: Copyright © 2025 Liu, Wang, Wen, Zhu, Xiao, He, Shi, Hong and Xu.

Use and reproduction: