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Early Detection of Bacteraemia Using Ten Clinical Variables with an Artificial Neural Network Approach

机译:利用人工神经网络方法使用十个临床变量对细菌血症进行早期检测

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摘要

An adequate model for predicting bacteraemia has not yet been developed. This study aimed to evaluate the performance of an artificial neural network (ANN)-based prediction model in comparison with previous statistical models. The performance of multi-layer perceptron (MLP), a representative ANN model, was verified via comparison with a non-neural network model. A total of 1260 bacteraemia episodes were identified in 13,402 patients. In MLP with 128 hidden layer nodes, the area under the receiver operating characteristic curve (AUC) of the prediction performance was 0.729 (95% confidence interval [CI]; 0.712–0.728), while in MLP with 256 hidden layer nodes, it was 0.727 (95% CI; 0.713–0.727). In a conventional Bayesian statistical method, the AUC was 0.7. The aforementioned two MLP models exhibited the highest sensitivity (0.810). The ranking of clinical variables was used to describe the influential power of the prediction. Serum alkaline phosphatase was one of the most influential clinical variables, and one-out search was the best ranking method for measuring the influence of the clinical variables. Furthermore, adding variables beyond the 10 top-ranking ones did not significantly affect the prediction of bacteraemia. The ANN model is not inferior to conventional statistical approaches. Bacteraemia can be predicted using only the top 10 clinical variables determined by a ranking method, and the model can be used in clinical practice by applying real-time monitoring.
机译:尚未开发出足够的预测菌血症的模型。这项研究旨在评估与以前的统计模型相比,基于人工神经网络(ANN)的预测模型的性能。通过与非神经网络模型比较,验证了多层感知器(MLP)(具有代表性的ANN模型)的性能。在13,402例患者中共鉴定出1260次菌血症发作。在具有128个隐藏层节点的MLP中,预测性能的接收器工作特征曲线(AUC)下的面积为0.729(95%置信区间[CI]; 0.712-0.728),而在具有256个隐藏层节点的MLP中,其值为0.727(95%CI; 0.713–0.727)。在传统的贝叶斯统计方法中,AUC为0.7。上述两个MLP模型表现出最高的灵敏度(0.810)。临床变量的排名用于描述预测的影响力。血清碱性磷酸酶是影响最大的临床变量之一,而一次搜索是衡量临床变量影响的最佳排名方法。此外,添加超过10个排名最高的变量并不会显着影响菌血症的预测。人工神经网络模型并不逊色于传统的统计方法。细菌血症只能使用排名法确定的前10个临床变量来预测,并且该模型可以通过应用实时监测而用于临床实践。

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