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Influence Factors of Serum Sodium and Prediction of Hyponatremia Using Back Propagation Artificial Neural Network Model (BP-ANN) Model in Cirrhosis Patients

机译:肝硬化患者背部传播人工神经网络模型血清钠及预测性血清肝癌的影响因素

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Hyponatremia has long been considered related to high risk of hepatorenal syndrome and hepatic encephalopathy. By using artificial neural network(ANN), we investigated the influencing factors of serum sodium and established a model for predicting hyponatremia in cirrhosis patients A total of 424 cirrhosis patients (302 males and 122 females) were recruited. Correlation between serum sodium levels and clinical parameters include age, gender, serum ALT, AST, TBIL, LDL, TG, GLU, BUN, CRE, serum potassium, chlorine, albumin, platelet, cholinesterase and Child-Pugh score were analyzed. These indexes were input into the BP-ANN model as the input layer, serum sodium levels was set as the output layer. Results showed that serum sodium were positively related to serum chlorine, serum potassium, albumin, cholinesterase, LDL, age, ALT and TG, negatively related to Child-pugh score, CRE, platelet, fasting glucose, TBIL, gender, AST and BUN according to the above order. A BP-ANN model was established with the software Matlab to predict hyponatremia. In conclusions: potassium supplement is of great significance for the prevention of hyponatremia. Albumin supplementation may also helps to improve the level of serum sodium to a certain extent. Patients with higher CHILD score and serum creatinine level should be paid attention to the prevention of hyponatremia occurrence. BP-ANN model has clinical value with respect to prediction of hyponatremia based on routinely available clinical and laboratory data in cirrhosis patients.
机译:低钠血症一直被认为与肝肾综合征,肝性脑病的高风险。通过使用人工神经网络(ANN),我们研究了血清钠的影响因素,并建立了模型,总共424成肝硬化(302名男性和女性122)被招募治疗肝硬化预测低钠血症。血清钠水平与临床参数之间的相关性包括年龄,性别,血清ALT,AST,TBIL,LDL,TG,GLU,BUN,CRE,血清钾,氯,白蛋白,血小板,胆碱酯酶和Child-Pugh评分进行了分析。这些指标均输入到BP-ANN模型作为输入层,血清钠水平被设置为输出层。结果表明,血清钠呈正相关血清氯,血清钾,白蛋白,胆碱酯酶,LDL,年龄,ALT和TG,得分,CRE,血小板,根据空腹血糖,TBIL,性别,AST和BUN到Child-Pugh分级负相关于上述顺序。用Matlab软件建立了BP神经网络模型来预测低钠血症。在结论:补充钾盐是用于预防低钠血症的重要意义。白蛋白补充也可以有助于提高血清钠的在一定程度上的水平。较高的患者CHILD评分和血清肌酐水平应注意预防低钠血症的发生。 BP神经网络模型相对于基于肝硬化患者经常获得的临床和实验室数据低钠血症的预​​测临床价值。

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