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Influence of missing values on artificial neural network performance.

机译:缺失值对人工神经网络性能的影响。

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The problem of databases containing missing values is a common one in the medical environment. Researchers must find a way to incorporate the incomplete data into the data set to use those cases in their experiments. Artificial neural networks (ANNs) cannot interpret missing values, and when a database is highly skewed, ANNs have difficulty identifying the factors leading to a rare outcome. This study investigates the impact on ANN performance when predicting neonatal mortality of increasing the number of cases with missing values in the data sets. Although previous work using the Canadian Neonatal Intensive Care Unit (NICU) Network s database showed that the ANN could not correctly classify any patients who died when the missing values were replaced with normal or mean values, this problem did not arise as expected in this study. Instead, the ANN consistently performed better than the constant predictor (which classifies all cases as belonging to the outcome with the highest training set a priori probability) with a 0.6-1.3% improvement over the constant predictor. The sensitivity of the models ranged from 14.5-20.3% and the specificity ranged from 99.2- 99.7%. These results indicate that nearly 1 in 5 babies who will eventually die are correctly classified by the ANN, and very few babies were incorrectly identified as patients who will die. These findings are important for patient care, counselling of parents and resource allocation.
机译:包含缺失值的数据库问题是医疗环境中的一个常见问题。研究人员必须找到一种方法来将不完整的数据纳入数据集中,以在其实验中使用这些情况。人工神经网络(ANNS)无法解释缺失的值,并且当数据库非常偏斜时,ANNS难以识别导致罕见结果的因素。本研究在预测增加数据集中缺失值的情况下预测新生儿死亡率时,调查对ANN绩效的影响。虽然以前的工作使用加拿大新生儿重症监护室(NICU)网络S数据库显示,当缺失的值被正常或均值所替换时,ANN无法正确分类,但在缺失的价值观中替换时,该问题在本研究中没有出现。相反,ANN一贯拥有超过常量预测一0.6-1.3%的改善表现好于预测不变(该分类的所有案件属于结果具有最高训练集的先验概率)更好。模型的敏感性范围为14.5-20.3%,特异性范围为99.2-99.7%。这些结果表明,5个最终死亡的婴儿近1人被安康正确归类,并且很少有婴儿被错误地确定为患者。这些调查结果对于患者护理,父母和资源分配的咨询非常重要。

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