利用微生物组数据预测早产儿坏死性小肠结肠炎的多实例学习。

Thomas A Hooven, Adam Yun Chao Lin, Ansaf Salleb-Aouissi
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引用次数: 10

摘要

坏死性小肠结肠炎(NEC)是一种危及生命的肠道疾病,主要影响早产儿出生后的头几周。与NEC相关的死亡率为15-30%,存活的婴儿易患多种严重的长期并发症。这种疾病是散发性的,而且用目前可用的工具,是不可预测的。我们正在创建一个早期预警系统,该系统利用粪便微生物组特征,结合临床和人口统计信息,来识别NEC高危婴儿。我们的方法使用了一个基于神经网络的多实例学习系统,该系统可用于生成早产儿的每日或每周NEC预测。选择该方法是为了有效利用粪便微生物组分析的稀疏和弱注释数据集。在这里,我们使用来自161名早产儿的嵌套病例对照研究的临床和微生物组数据来描述我们的系统的初步验证。我们显示了0.9以上的受试者-操作者曲线区域,75%的NEC影响婴儿的主要预测样本在疾病发作前至少24小时确定。我们的研究结果为开发NEC实时预警系统铺平了道路,该系统使用一组有限的基本临床和人口统计细节,并结合粪便微生物组数据。
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Multiple Instance Learning for Predicting Necrotizing Enterocolitis in Premature Infants Using Microbiome Data.

Necrotizing enterocolitis (NEC) is a life-threatening intestinal disease that primarily affects preterm infants during their first weeks after birth. Mortality rates associated with NEC are 15-30%, and surviving infants are susceptible to multiple serious, long-term complications. The disease is sporadic and, with currently available tools, unpredictable. We are creating an early warning system that uses stool microbiome features, combined with clinical and demographic information, to identify infants at high risk of developing NEC. Our approach uses a multiple instance learning, neural network-based system that could be used to generate daily or weekly NEC predictions for premature infants. The approach was selected to effectively utilize sparse and weakly annotated datasets characteristic of stool microbiome analysis. Here we describe initial validation of our system, using clinical and microbiome data from a nested case-control study of 161 preterm infants. We show receiver-operator curve areas above 0.9, with 75% of dominant predictive samples for NEC-affected infants identified at least 24 hours prior to disease onset. Our results pave the way for development of a real-time early warning system for NEC using a limited set of basic clinical and demographic details combined with stool microbiome data.

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