Biostatistics, School of Medicine, Austral University.
Department of Cardiology, Herzzentrum, Hospital Alemán. Buenos Aires, Argentina.
Arch Cardiol Mex. 2021;91(1):58-65. doi: 10.24875/ACM.20000011.
The aim of this study was to develop, train, and test different neural network (NN) algorithm-based models to improve the Global Registry of Acute Coronary Events (GRACE) score performance to predict in-hospital mortality after an acute coronary syndrome.
We analyzed a prospective database, including 40 admission variables of 1255 patients admitted with the acute coronary syndrome in a community hospital. Individual predictors included in GRACE score were used to train and test three NN algorithm-based models (guided models), namely: one- and two-hidden layer multilayer perceptron and a radial basis function network. Three extra NNs were built using the 40 admission variables of the entire database (unguided models). Expected mortality according to GRACE score was calculated using the logistic regression equation.
In terms of receiver operating characteristic area and negative predictive value (NPV), almost all NN algorithms outperformed logistic regression. Only radial basis function models obtained a better accuracy level based on NPV improvement, at the expense of positive predictive value (PPV) reduction. The independent normalized importance of variables for the best unguided NN was: creatinine 100%, Killip class 61%, ejection fraction 52%, age 44%, maximum creatine-kinase level 41%, glycemia 40%, left bundle branch block 35%, and weight 33%, among the top 8 predictors.
Treatment of individual predictors of GRACE score with NN algorithms improved accuracy and discrimination power in all models with respect to the traditional logistic regression approach; nevertheless, PPV was only marginally enhanced. Unguided variable selection would be able to achieve better results in PPV terms.
本研究旨在开发、训练和测试不同的神经网络(NN)算法模型,以提高全球急性冠状动脉事件注册(GRACE)评分对急性冠状动脉综合征患者住院死亡率的预测能力。
我们分析了一个前瞻性数据库,其中包括 1255 例在社区医院就诊的急性冠状动脉综合征患者的 40 项入院变量。用于训练和测试三种基于 NN 算法的模型(有指导模型)的个体预测因子包括 GRACE 评分中的预测因子:一层和两层多层感知器以及径向基函数网络。使用整个数据库的 40 项入院变量构建了另外三个 NN(无指导模型)。根据逻辑回归方程计算 GRACE 评分的预期死亡率。
在接受者操作特征曲线和阴性预测值(NPV)方面,几乎所有的 NN 算法都优于逻辑回归。只有径向基函数模型在 NPV 改善的基础上获得了更好的准确性水平,但其阳性预测值(PPV)降低。最佳无指导 NN 变量的独立归一化重要性为:肌酐 100%、Killip 分级 61%、射血分数 52%、年龄 44%、最大肌酸激酶水平 41%、血糖 40%、左束支传导阻滞 35%和体重 33%,这是前 8 个预测因子中的 8 个。
用 NN 算法对 GRACE 评分的个体预测因子进行治疗,提高了所有模型相对于传统逻辑回归方法的准确性和区分能力;然而,PPV 仅略有提高。无指导的变量选择能够在 PPV 方面取得更好的结果。