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An Application of Convolutional Neural Networks for the Early Detection of Late-onset Neonatal Sepsis

机译:卷积神经网络在早期发现新生儿败血症中的应用

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Preterm newborns are vulnerable and easily infected due to the immature immune system. Late-onset neonatal sepsis occurring 48 hours after birth is a widespread disease among preterm newborns leading to high mortality and morbidity rates. The diagnosis is primarily based on biochemistry test, and the prescribed treatment is to use antibiotics. Risk averse clinicians, often applied overdose to reduce the mortality. A non-invasive method on monitoring vital sign signals deterioration to predict late-onset neonatal sepsis is proposed in this paper. First, we set up collectors within the local networks in Neonatal Intensive Care Units (NICUs) where bedside monitoring machines locate to capture the necessary data. Then they were transformed to images according to specific rules. Finally, a convolutional neural network was built to predict the onset of sepsis. Pilot experiments conducted on data we have collected demonstrated the feasibility of this deep learning model. This method could be incorporated into the current clinical workflow as a decision support system and provide useful information for clinicians.
机译:由于免疫系统不成熟,早产儿很脆弱,容易感染。出生后48小时发生的迟发性新生儿败血症是早产儿中的一种普遍疾病,导致高死亡率和高发病率。诊断主要基于生化检验,处方治疗是使用抗生素。风险厌恶的临床医生,经常过量服用以降低死亡率。本文提出了一种监测生命体征信号恶化的非侵入性方法,以预测新生儿迟发性败血症。首先,我们在新生儿重症监护病房(NICU)的本地网络中设置了收集器,床边监护仪位于该收集器中以捕获必要的数据。然后根据特定规则将它们转换为图像。最后,建立了卷积神经网络来预测败血症的发作。对我们收集的数据进行的试点实验证明了这种深度学习模型的可行性。该方法可以作为决策支持系统并入当前的临床工作流程中,并为临床医生提供有用的信息。

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