Small vessel disease burden predicts functional outcomes in patients with acute ischemic stroke using machine learning

Author:

Wang Xueyang12,Lyu Jinhao12,Meng Zhihua3,Wu Xiaoyan4,Chen Wen5,Wang Guohua6,Niu Qingliang7,Li Xin8,Bian Yitong9,Han Dan10,Guo Weiting11,Yang Shuai12,Bian Xiangbing2,Lan Yina2,Wang Liuxian2,Duan Qi2,Zhang Tingyang2,Duan Caohui2,Tian Chenglin13,Chen Ling114,Lou Xin12ORCID,

Affiliation:

1. Medical School of Chinese PLA Beijing China

2. Department of Radiology Chinese PLA General Hospital Beijing China

3. Department of Radiology Yuebei People's Hospital Guangdong China

4. Department of Radiology Anshan Changda Hospital Liaoning China

5. Department of Radiology Shiyan Taihe Hospital Hubei China

6. Department of Radiology Qingdao Municipal Hospital Affiliated to Qingdao University Qingdao China

7. Department of Radiology WeiFang Traditional Chinese Hospital Shandong China

8. Department of Radiology The Second Hospital of Jilin university Jilin China

9. Department of Radiology The First Affiliated Hospital of Xi'an Jiaotong University Shaanxi China

10. Department of Radiology The First Affiliated Hospital of Kunming Medical University Yunnan China

11. Department of Radiology Shanxi Provincial People's Hospital Shanxi China

12. Department of Radiology Xiangya Hospital Central South University Hunan China

13. Department of Neurology Chinese PLA General Hospital Beijing China

14. Department of Neurosurgery Chinese PLA General Hospital Beijing China

Abstract

AbstractAimsOur purpose is to assess the role of cerebral small vessel disease (SVD) in prediction models in patients with different subtypes of acute ischemic stroke (AIS).MethodsWe enrolled 398 small‐vessel occlusion (SVO) and 175 large artery atherosclerosis (LAA) AIS patients. Functional outcomes were assessed using the modified Rankin Scale (mRS) at 90 days. MRI was performed to assess white matter hyperintensity (WMH), perivascular space (PVS), lacune, and cerebral microbleed (CMB). Logistic regression (LR) and machine learning (ML) were used to develop predictive models to assess the influences of SVD on the prognosis.ResultsIn the feature evaluation of SVO‐AIS for different outcomes, the modified total SVD score (Gain: 0.38, 0.28) has the maximum weight, and periventricular WMH (Gain: 0.07, 0.09) was more important than deep WMH (Gain: 0.01, 0.01) in prognosis. In SVO‐AIS, SVD performed better than regular clinical data, which is the opposite of LAA‐AIS. Among all models, eXtreme gradient boosting (XGBoost) method with optimal index (OI) has the best performance to predict excellent outcome in SVO‐AIS. [0.91 (0.84–0.97)].ConclusionsOur results revealed that different SVD markers had distinct prognostic weights in AIS patients, and SVD burden alone may accurately predict the SVO‐AIS patients' prognosis.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Pharmacology (medical),Physiology (medical),Psychiatry and Mental health,Pharmacology

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