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An Artificial Neural Network Model for the Evaluation of Carotid Artery Stenting Prognosis Using a National-Wide Database

机译:一种人工神经网络模型,用于使用全拓类数据库评估颈动脉支架预后

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Stroke is a serious health problem in many countries. About 20% of ischemia stroke involves carotid stenosis. Neck carotid ultrasound is fast, secure and convenient way to detect carotid artery stenosis. Carotid artery stenting (CAS) has become a popular treatment for cerebrovascular stenosis in recent years. However, CAS may also induce the occurrence of major adverse cardiovascular events (MACE) in older patients. Hence the evaluation the CAS prognosis is important. In this study, we attempted to construct a model for the evaluation of CAS prognosis by artificial neural network (ANN). The data of 317 patients from Taiwan Nation Health Insurance Research Database (NHIRD) was used to train and test the constructed ANN model. The input features contain 13 clinical risk factors and the output is the occurrence of MACE. In results, an ANN model of multilayer perceptron with 18 neurons in hidden layer was developed. The performance of this model is with sensitivity 89.4%, specificity 57.4%, and accuracy 82.5% in testing group as well as with sensitivity 85.8%, specificity 60.8% and accuracy 80.76% in overall patients. The results revealed that the created ANN model achieved a good performance in prediction of MACE in patients needing CAS treatment. Such a model will be helpful for prevention of high-risked patients with CAS and could serve as a reference of communication when neurologists refer patients and before patients are treated by cardiologists.
机译:中风是许多国家的严重健康问题。大约20%的缺血中风涉及颈动脉狭窄。颈部颈动脉超声波是快速,安全和方便的方法来检测颈动脉狭窄。颈动脉支架(CAS)近年来已成为脑血管狭窄的流行治疗。然而,CAS也可能诱导老年患者的主要不良心血管事件(MACE)的发生。因此,评估CAS预后是重要的。在这项研究中,我们试图通过人工神经网络(ANN)构建评估CAS预后的模型。来自台湾国家健康保险研究数据库(NHIRD)的317名患者的数据用于培训和测试构建的ANN模型。输入特征包含13个临床风险因素,输出是蒙住座的发生。结果,开发了隐藏层中具有18个神经元的多层感知的ANN模型。该模型的性能具有敏感性89.4%,特异性57.4%,测试组的精确度为82.5%,以及敏感性85.8%,特异性60.8%,精度为总体患者80.76%。结果表明,创建的ANN模型在需要CAS治疗患者的术中预测良好的性能。这种模型将有助于预防高危CA患者,并且当神经泌素提到患者和患者的心脏病学家治疗之前,可以作为通信的参考。

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