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Using an Artificial Neural Network to Predict Necrotizing Enterocolitis in Premature Infants

机译:利用人工神经网络预测早产儿中坏死性肠腐殖炎

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Except for degree of prematurity, risk factors for the development of necrotizing enterocolitis (NEC) in very low birth weight (VLBW) infant have not been consistently identified. In addition, fear of NEC determines the majority of VLBW infant feeding regimens in the first postnatal month. About 10-12% of infants weighing less than 1500 grams at birth will develop NEC and about one-third of them will die from the disease. Improved identification of preterm infants at risk for NEC could allow improved infant feeding to focus on growth and nutrition for infants at low-risk of NEC. The objective of this study was to develop an algorithm using artificial neural networks (ANN) to predict prematurely born infants at highest risk of NEC. The majority of ANN's considered optimal used small numbers of variables: 54% used a single variable, 30% used 2 variables, 12% used 3 variables and only 4% used 4 or 5 variables to predict NEC. Sixty-eight percent of the variables were selected first and 79% were selected as second variable at least once. Small for gestational age (SGA) and being artificially ventilated (ventilation: yes/no) were chosen first and second most often among all 57 variables. ANNs as predictive tools provide a first indication for the relative importance of the 57 variables in final decision-making.
机译:除了早产程度,尚未持续确定在非常低的出生体重(VLBW)婴儿中发育坏死性肠结肠炎(NEC)的风险因素。此外,对NEC的恐惧决定了第一个后期VLBW婴儿喂养方案的大部分。大约10-12%的婴儿在出生时少于1500克,将产生NEC,其中三分之一将死于该疾病。改善了NEC风险的早产儿的鉴定可以让改善的婴儿饲料专注于低风险的婴儿的生长和营养。本研究的目的是利用人工神经网络(ANN)开发一种算法,以预测NEC最高风险的过早出生的婴儿。大多数Ann被认为是最佳使用少量变量:54%使用单个变量,30%使用的2个变量,12%使用3个变量,只有4%使用的4%或5个变量来预测NEC。首先选择六十八个变量,并且至少选择了79%作为第二变量。对于孕龄(SGA)而言,并且在所有57个变量中最常见的是,首先选择人工通风(通风:是/否)。 ANNS作为预测工具提供了最终决策中57个变量的相对重要性的第一指示。

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