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Comparative study of back propagation artificial neural networks and logistic regression model in predicting poor prognosis after acute ischemic stroke

机译:反向传播人工神经网络与Logistic回归模型预测急性缺血性卒中后不良预后的比较研究

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Objective To investigate the predictive value of clinical variables on the poor prognosis at 90-day follow-up from acute stroke onset, and compare the diagnostic performance between back propagation artificial neural networks (BP ANNs) and Logistic regression (LR) models in predicting the prognosis. Methods We studied the association between clinical variables and the functional recovery of 435 acute ischemic stroke patients. The patients were divided into 2 groups according to modified Rankin Scale scores evaluated on the 90th day after stroke onset. Both BP ANNs and LR models were established for predicting the poor outcome and their diagnostic performance were compared by receiver operating curve. Results Age, free fatty acid, homocysteine and alkaline phosphatase were closely related with the poor outcome in acute ischemic stroke patients and finally enrolled in models. The accuracy, sensitivity and specificity of BP ANNs were 80.15%, 75.64% and 82.07% respectively. For the LR model, the accuracy, sensitivity and specificity was 70.61%, 88.46% and 63.04% respectively. The area under the ROC curve of the BP ANNs and LR model was 0.881and 0.809. Conclusions Both BP ANNs and LR model were promising for the prediction of poor outcome by combining age, free fatty acid, homocysteine and alkaline phosphatase. However, BP ANNs model showed better performance than LR model in predicting the prognosis.
机译:目的探讨临床变量对急性中风发作后90天随访不良预后的预测价值,并比较反向传播人工神经网络(BP ANN)和Logistic回归(LR)模型在预测急性卒中后的诊断性能预后。方法我们研究了435例急性缺血性中风患者的临床变量与功能恢复之间的关系。根据在卒中发作后第90天评估的改良Rankin量表评分将患者分为两组。建立了BP神经网络和LR模型来预测不良结果,并通过接收器工作曲线比较了它们的诊断性能。结果急性缺血性卒中患者的年龄,游离脂肪酸,高半胱氨酸和碱性磷酸酶水平与不良预后密切相关,并最终纳入模型。 BP神经网络的准确性,敏感性和特异性分别为80.15%,75.64%和82.07%。对于LR模型,准确性,敏感性和特异性分别为70.61%,88.46%和63.04%。 BP神经网络和LR模型的ROC曲线下面积分别为0.881和0.809。结论BP ANNs和LR模型通过结合年龄,游离脂肪酸,高半胱氨酸和碱性磷酸酶可预测不良结果。然而,BP ANNs模型在预测预后方面表现出比LR模型更好的性能。

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