首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Estimation of Neonatal Intestinal Perforation Associated with Necrotizing Enterocolitis by Machine Learning Reveals New Key Factors
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Estimation of Neonatal Intestinal Perforation Associated with Necrotizing Enterocolitis by Machine Learning Reveals New Key Factors

机译:通过机器学习估计与坏死性小肠结肠炎相关的新生儿肠穿孔揭示了新的关键因素

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摘要

Intestinal perforation (IP) associated with necrotizing enterocolitis (NEC) is one of the leading causes of mortality in premature neonates; with major nutritional and neurodevelopmental sequelae. Since predicting which neonates will develop perforation is still challenging; clinicians might benefit considerably with an early diagnosis tool and the identification of critical factors. The aim of this study was to forecast IP related to NEC and to investigate the predictive quality of variables; based on a machine learning-based technique. The Back-propagation neural network was used to train and test the models with a dataset constructed from medical records of the NICU; with birth and hospitalization maternal and neonatal clinical; feeding and laboratory parameters; as input variables. The outcome of the models was diagnosis: (1) IP associated with NEC; (2) NEC or (3) control (neither IP nor NEC). Models accurately estimated IP with good performances; the regression coefficients between the experimental and predicted data were R2 > 0.97. Critical variables for IP prediction were identified: neonatal platelets and neutrophils; orotracheal intubation; birth weight; sex; arterial blood gas parameters (pCO2 and HCO3); gestational age; use of fortifier; patent ductus arteriosus; maternal age and maternal morbidity. These models may allow quality improvement in medical practice.
机译:与坏死性小肠结肠炎(NEC)相关的肠穿孔(IP)是早产儿死亡的主要原因之一。具有主要的营养和神经发育后遗症。由于预测哪些新生儿会出现穿孔仍然是一项挑战。临床医生可能会受益于早期诊断工具和关键因素的识别。这项研究的目的是预测与NEC相关的IP,并研究变量的预测质量。基于基于机器学习的技术。反向传播神经网络被用来训练和测试从重症监护病房的医疗记录构建的数据集的模型。具有出生和住院的孕产妇和新生儿临床;喂养和实验室参数;作为输入变量。该模型的结果是诊断:(1)与NEC相关的IP; (2)NEC或(3)控制(既不是IP也不是NEC)。对具有良好性能的IP进行精确建模;实验数据与预测数据之间的回归系数为R 2

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