A Machine Learning Approach to First Pass Reperfusion in Mechanical Thrombectomy: Prediction and Feature Analysis

被引:12
|
作者
Velagapudi, Lohit [1 ]
Mouchtouris, Nikolaos [1 ]
Schmidt, Richard F. [1 ]
Vuong, David [2 ]
Khanna, Omaditya [1 ]
Sweid, Ahmad [1 ]
Sadler, Bryan [2 ]
Al Saiegh, Fadi [1 ]
Gooch, M. Reid [1 ]
Jabbour, Pascal [1 ]
Rosenwasser, Robert H. [1 ]
Tjoumakaris, Stavropoula [1 ]
机构
[1] Thomas Jefferson Univ, Dept Neurosurg, Philadelphia, PA 19107 USA
[2] Thomas Jefferson Univ, Digital Innovat & Consumer Experience DICE Grp, Philadelphia, PA 19107 USA
来源
JOURNAL OF STROKE & CEREBROVASCULAR DISEASES | 2021年 / 30卷 / 07期
关键词
Stroke; Mechanical Thrombectomy; Machine Learning; First Pass Reperfusion; Prediction; ACUTE ISCHEMIC-STROKE; LARGE VESSEL OCCLUSION; ENDOVASCULAR THROMBECTOMY; STENT RETRIEVER; ASPIRATION; POINTS; TRIAL;
D O I
10.1016/j.jstrokecerebrovasdis.2021.105796
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Introduction: Novel machine learning (ML) methods are being investigated across medicine for their predictive capabilities while boasting increased adaptability and generalizability. In our study, we compare logistic regression with machine learning for feature importance analysis and prediction in first-pass reperfusion. Methods: We retrospectively identified cases of ischemic stroke treated with mechanical thrombectomy (MT) at our institution from 2012-2018. Significant variables used in predictive modeling were demographic characteristics, medical history, admission NIHSS, and stroke characteristics. Outcome was binarized TICI on first pass (0-2a vs 2b-3). Shapley feature importance plots were used to identify variables that strongly affected outcomes. Results: Accuracy for the Random Forest and SVM models were 67.1% compared to 65.8% for the logistic regression model. Brier score was lower for the Random Forest model (0.329 vs 0.342) indicating better predictive capability. Other supervised learning models performed worse than the logistic regression model, with accuracy of 56.2% for Naive Bayes and 61.6% for XGBoost. Shapley plots for the Random Forest model showed use of aspiration, hyperlipidemia, hypertension, use of stent retriever, and time between symptom onset and catheterization as the top five predictors of first pass reperfusion. Conclusion: Use of machine learning models, such as Random Forest, for the study of MT outcomes, is more accurate than logistic regression for our dataset, and identifies new factors that contribute to achieving first pass reperfusion. The benefits of machine learning, such as improved predictive capabilities, integration of new data, and generalizability, establish ML as the preferred model for studying outcomes in stroke.
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页数:7
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