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Using Artificial Neural Network to Predict Functional Recovery of Patients Treated by Intravenous Thrombolysis in Acute Ischemic Stroke

机译:利用人工神经网络预测急性缺血性卒中静脉溶栓治疗患者的功能恢复

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In general,cerebrovascular diseases are composed of approximately 80% ischemic strokes.They are both expensive and time consuming while physicians take care of the acute ischemic stroke(AIS)patients.It is well-known that thrombolysis treatment in AIS patients can reduce disability and increase survival rate,however only one-half of patients have good outcomes.Therefore,we designed a functional recovery prediction model by artificial neural network(ANN)for AIS patients after intravenous thrombolysis to help make better clinical decisions.In this study,we retrospectively collected 157 AIS patients who received intravenous thrombolysis at a medical center in north Taiwan.The outcome defined Modified Rankin Scale<2 after three-months follow-up as favorable recovery.80% data were selected for training this predictive ANN model and 20% data were used for validation.The performance of models is evaluated by Receiver Operating Characteristic(ROC)Curve Analysis.An ANN with 5 inputs and 6 neurons in hidden layer was obtained.The performance of this model was with accuracy 83.87% and the area under ROC curve 0.87.This results showed that this ANN model could achieve a high prediction accuracy for functional recovery evaluation.It is an important issue to predict prognosis of treatment for personalized medicine.Risk and benefit should always be balanced before any treatment is to be applied.The developed prediction models may help physicians to individually discuss and explain the likely recovery probability to patients and their families within short therapeutic time before thrombolysis treatment in the emergency room.
机译:一般而言,脑血管疾病由大约80%的缺血性卒中组成。他们既昂贵又耗时,而医生治疗急性缺血性卒中(AIS)患者。众所周知,AIS患者中的溶栓治疗可以降低残疾增加生存率,然而只有一半的患者的结果有良好的结果。因此,我们设计了通过人工神经网络(ANN)设计了静脉溶栓后AIS患者的功能恢复预测模型,以帮助提高临床决策。在这项研究中,我们回顾性收集了157名AIS患者,在台湾的医疗中心接受静脉溶栓。结果定义了修改的Rankin Scale <2后三个月后续恢复,选择了培训这一预测性ANN模型和20%的数据用于验证。通过接收器操作特征(ROC)曲线分析来评估模型的性能.AN ANN有5个输入和6个神经元获得了隐藏层的s。该模型的性能具有精度为83.87%,ROC曲线下的区域0.87。结果表明,该ANN模型可以实现功能恢复评估的高预测准确性。它是预测的一个重要问题个性化医学治疗的预后。在要应用的任何处理之前,应始终平衡的效益。发达的预测模型可能有助于医生在溶解治疗前的短暂治疗时间内单独讨论和解释患者及其家庭的可能恢复概率在急诊室。

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