首页> 美国卫生研究院文献>Archives of Disease in Childhood. Fetal and Neonatal Edition >Prediction of chronic neonatal lung disease in very low birthweight neonates using clinical and radiological variables.
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Prediction of chronic neonatal lung disease in very low birthweight neonates using clinical and radiological variables.

机译:使用临床和放射学变量预测极低出生体重新生儿的慢性新生儿肺疾病。

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摘要

There are good theoretical reasons for earlier intervention in neonates likely to develop chronic neonatal lung disease (CNLD). Very low birthweight (VLBW) neonates who receive artificial ventilation are at high risk of CNLD. A test was therefore developed to predict CNLD based on clinical and radiological information readily available at 7 days of age in VLBW neonates. Logistic regression analysis was used to identify those factors significantly and independently associated with CNLD. For each neonate it was possible to insert the value of the independent factors into the equation, providing a probability value between 0 and 1. By selecting different cut off values between 0 and 1, and knowing which neonates had developed CNLD, it was possible to assess the use of varying probability values as a predictive test for CNLD. The variation in these two parameters was graphically represented by a receiver operator characteristic (ROC) curve. The area under the ROC curve was used to represent the discriminatory capacity of the test over its full range of values. The maximum area under an ROC curve is unity. The area under the ROC curve was similar in a model with and without radiographic information (0.926 and 0.913 respectively) and was 0.937 in neonates from another hospital.
机译:有充分的理论理由对可能会发展成慢性新生儿肺病(CNLD)的新生儿进行早期干预。接受人工通气的极低出生体重(VLBW)新生儿有CNLD的高风险。因此,开发了一种测试方法,可根据VLBW新生儿7天龄时可获得的临床和放射学信息预测CNLD。使用逻辑回归分析来识别那些与CNLD显着且独立相关的因素。对于每个新生儿,可以将独立因子的值插入方程式中,从而提供介于0和1之间的概率值。通过选择介于0和1之间的不同截断值,并知道哪些新生儿发生了CNLD,有可能评估使用变化的概率值作为CNLD的预测测试。这两个参数的变化由接收机操作员特性(ROC)曲线图形表示。 ROC曲线下的面积用于表示测试在其整个值范围内的区分能力。 ROC曲线下的最大面积为1。在有和没有射线照相信息的模型中,ROC曲线下的面积相似(分别为0.926和0.913),而另一家医院的新生儿的ROC曲线下面积为0.937。

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