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随机森林可以显著区分预测自发性脑出血 30 天死亡率。

Random forest can predict 30-day mortality of spontaneous intracerebral hemorrhage with remarkable discrimination.

机构信息

Institute of Biomedical Informatics, National Yang-Ming University, Taipei, Taiwan.

出版信息

Eur J Neurol. 2010 Jul;17(7):945-50. doi: 10.1111/j.1468-1331.2010.02955.x. Epub 2010 Feb 3.

DOI:10.1111/j.1468-1331.2010.02955.x
PMID:20136650
Abstract

BACKGROUND AND PURPOSE

Risk-stratification models based on patient and disease characteristics are useful for aiding clinical decisions and for comparing the quality of care between different physicians or hospitals. In addition, prediction of mortality is beneficial for optimizing resource utilization. We evaluated the accuracy and discriminating power of the random forest (RF) to predict 30-day mortality of spontaneous intracerebral hemorrhage (SICH).

METHODS

We retrospectively studied 423 patients admitted to the Taichung Veterans General Hospital who were diagnosed with spontaneous SICH within 24 h of stroke onset. The initial evaluation data of the patients were used to train the RF model. Areas under the receiver operating characteristic curves (AUC) were used to quantify the predictive performance. The performance of the RF model was compared to that of an artificial neural network (ANN), support vector machine (SVM), logistic regression model, and the ICH score.

RESULTS

The RF had an overall accuracy of 78.5% for predicting the mortality of patients with SICH. The sensitivity was 79.0%, and the specificity was 78.4%. The AUCs were as follows: RF, 0.87 (0.84-0.90); ANN, 0.81 (0.77-0.85); SVM, 0.79 (0.75-0.83); logistic regression, 0.78 (0.74-0.82); and ICH score, 0.72 (0.68-0.76). The discriminatory power of RF was superior to that of the other prediction models.

CONCLUSIONS

The RF provided the best predictive performance amongst all of the tested models. We believe that the RF is a suitable tool for clinicians to use in predicting the 30-day mortality of patients after SICH.

摘要

背景与目的

基于患者和疾病特征的风险分层模型有助于辅助临床决策,并比较不同医生或医院之间的医疗质量。此外,预测死亡率有助于优化资源利用。我们评估了随机森林(RF)预测自发性脑出血(SICH)患者 30 天死亡率的准确性和区分能力。

方法

我们回顾性研究了 423 名在中风发病后 24 小时内被诊断为自发性 SICH 的台中荣民总医院患者。患者的初始评估数据用于训练 RF 模型。接受者操作特征曲线下的面积(AUC)用于量化预测性能。RF 模型的性能与人工神经网络(ANN)、支持向量机(SVM)、逻辑回归模型和 ICH 评分进行比较。

结果

RF 对预测 SICH 患者死亡率的总体准确率为 78.5%。敏感性为 79.0%,特异性为 78.4%。AUC 如下:RF,0.87(0.84-0.90);ANN,0.81(0.77-0.85);SVM,0.79(0.75-0.83);逻辑回归,0.78(0.74-0.82);ICH 评分,0.72(0.68-0.76)。RF 的区分能力优于其他预测模型。

结论

RF 在所有测试模型中提供了最佳的预测性能。我们相信 RF 是临床医生预测 SICH 患者 30 天死亡率的合适工具。

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