3种机器学习算法评估脑梗死患者颈动脉斑块稳定性的效能比较

Efficacy of three machine learning algorithms in evaluating stability of carotid plaque in patients with cerebral infarction

  • 摘要:
    目的 探讨3种机器学习算法对脑梗死患者颈动脉斑块稳定性的预测效能。
    方法 回顾性分析500例脑梗死患者的临床资料,使用单因素分析、多因素分析确定进入模型的预测因子。分别基于列线图、决策树和随机森林构建评估脑梗死患者颈动脉斑块稳定性的预测模型。将入组患者按照7:3的比例随机分为训练集和测试集。以灵敏度、特异度、精确率、召回率、正确率以及曲线下面积(AUC)比较模型的应用效能。
    结果 列线图模型评估训练集脑梗死患者颈动脉斑块稳定性的AUC为0.967(95%CI:0.950~0.983),灵敏度为0.910,特异度为0.917,精确率为0.886,召回率为0.910,正确率为0.914。决策树模型评估训练集脑梗死患者颈动脉斑块稳定性的AUC为0.932(95%CI:0.903~0.961),灵敏度为0.903,特异度为0.922,精确率为0.891,召回率为0.903,正确率为0.914。随机森林模型评估训练集脑梗死患者颈动脉斑块稳定性的AUC为0.984(95%CI:0.970~0.998),灵敏度为0.972,特异度为0.995,精确率为0.993,召回率为0.972,正确率为0.986。
    结论 基于随机森林算法建立的模型在评估脑梗死患者颈动脉斑块稳定性中具有较好的预测效果和稳定性,其预测效能优于列线图和决策树。

     

    Abstract:
    Objective To explore the predictive efficacy of three machine learning algorithms for carotid plaque stability in patients with cerebral infarction.
    Methods The clinical data of 500 patients with cerebral infarction were retrospectively analyzed. Univariate analysis and multivariate analysis were used to determine the predictive factors entering the model. The prediction model of carotid plaque stability in patients with cerebral infarction was constructed based on nomogram, decision tree and random forest respectively. The enrolled patients were randomly divided into training set and test set according to the ratio of 7:3. Sensitivity, specificity, accuracy, recall, accuracy and area under the curve (AUC) were used to compare the application efficiency of the model.
    Results The AUC of the nomogram model for evaluating the stability of carotid plaque in patients with cerebral infarction in the training set was 0.910(95%CI, 0.950 to 0.983), the sensitivity was 0.910, the specificity was 0.917, the accuracy was 0.886, the recall rate was 0.910, and the accuracy rate was 0.914. The AUC of the decision tree model for evaluating the stability of carotid plaque in patients with cerebral infarction in the training set was 0.932(95%CI, 0.903 to 0.961), the sensitivity was 0.903, the specificity was 0.922, the accuracy was 0.891, the recall rate was 0.903, and the accuracy rate was 0.914. The AUC of the random forest model for evaluating the stability of carotid plaque in patients with cerebral infarction in the training set was 0.984(95%CI, 0.970 to 0.998), the sensitivity was 0.972, the specificity was 0.995, the accuracy was 0.993, the recall rate was 0.972, and the accuracy was 0.986.
    Conclusion The model based on the random forest algorithm has a better prediction effect and stability in evaluating the stability of carotid plaque in patients with cerebral infarction, and its prediction efficiency is better than that of the Nomogram and decision tree.

     

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