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Predicting mortality in patients with cirrhosis of liver with application of neural network technology.

机译:应用神经网络技术应用肝硬化患者死亡率。

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BACKGROUND: Prediction of mortality from cirrhosis is important in planning optimal timing of liver transplantation and other interventions. We evaluated the role of the Artificial Neural Network (ANN), which uses non-linear statistics for pattern recognition in predicting one-year liver disease-related mortality using information available during initial clinical evaluation. METHODS: The ANN was constructed using software with data from a training set (n = 46) selected at random from a cohort of adult cirrhotics (n = 92). After training, validation was performed in the remaining patients (n = 46) whose outcome in terms of one-year mortality was unknown to the network. The performance of ANN was compared to those of a logistic regression model (LRM) and Child-Pugh's score (CPS). Death (related to cirrhosis/its complications) within one year of inclusion was the outcome variable. The ANN was also tested in an external validation sample (EVS, n = 62) from another hospital. RESULTS: Patients in the EVS were younger (mean age, 41 vs 45 years), infrequently of alcoholic etiology (5% vs 49%), had less severe disease (mean CPS 6.6 vs 10.8), and had lower one-year mortality (13 vs 46%). In the internal validation sample, ANN's accuracy was 91%, sensitivity 90% and specificity 92% in prediction of one-year mortality; area under the receiver-operating characteristic (ROC) curve was 0.94. The performance of the LRM (accuracy 74%) and the CPS (accuracy 55%) was significantly worse than ANN (P < 0.05, McNemar's test). Despite differences in the characteristics of the two groups, the ANN performed fairly well in the EVS (accuracy of 90%, area under curve 0.85). CONCLUSIONS: ANN can accurately predict one-year mortality in cirrhosis and is superior to CPS and LRM.
机译:背景:预测来自肝硬化的死亡率在规划肝移植和其他干预措施的最佳时间方面是重要的。我们评估了人工神经网络(ANN)的作用,它使用初步临床评估期间可用的信息预测一年肝病相关死亡率的模式识别。方法:使用从成年循环队列(n = 92)的随机选择的训练集(n = 46)的数据来构建ANN。培训后,验证在剩下的患者(n = 46)中进行,其结果为一年的死亡率是未知的。将ANN的性能与Logistic回归模型(LRM)和Child-Pugh的分数(CPS)进行比较。在包含一年内的死亡(与肝硬化/其并发症相关)是结果变量。 ANN也在另一医院的外部验证样本(EVS,N = 62)中进行测试。结果:EVS的患者更年轻(平均年龄,41 vs 45岁),少量酒精病因(5%vs 49%),具有较小的疾病(平均CPS 6.6 VS 10.8),并具有较低的一年死亡率( 13 vs 46%)。在内部验证样本中,ANN的准确性为91%,灵敏度90%和特异性92%,预测一年的死亡率;接收器操作特征(ROC)曲线下的区域为0.94。 LRM的性能(精度为74%)和CPS(精度55%)明显差(P <0.05,McNemar的测试)。尽管两组特征存在差异,但是,在EV中,ang在EVS(精度为90%,曲线下的区域0.85)。结论:安总能准确预测肝硬化的一年死亡率,优于CPS和LRM。

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