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Inferring Realistic Intra-hospital Contact Networks Using Link Prediction and Computer Logins

机译:使用链接预测和计算机登录来推断现实的医院内部联系网络

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Disease spread in hospital settings is a common and important problem in health care. Knowing the network of contacts between health care workers and patients can be very helpful in mitigating disease spread. In this work, we address the problem of inferring the contact network of health care workers at the University of Iowa Hospital and Clinics facilities by integrating two sources of data: hospital-wide computer login data and proximity data obtained from direct measurement in the Medical Intensive Care Unit using a wireless sensor network. We treat this problem as a variant of the network completion problem, where one small portion of the network is well known while the rest is sparingly sampled, and we want to complete the network. In this case, we want to transform the login network, where an edge connects two people who logged into computers within some time and distance, of the hospital into a contact network. We solve this problem by borrowing techniques from link prediction. We train and evaluate these techniques on synthetic login networks and contact networks obtained from the sensor data. Our results are promising in that we can predict contact networks from login networks with accuracies mostly between 70% and 90%.
机译:疾病在医院中的传播是卫生保健中一个普遍而重要的问题。了解医护人员与患者之间的联系网络对缓解疾病传播非常有帮助。在这项工作中,我们通过整合两个数据源来解决推断爱荷华大学医院和诊所设施的医护人员联系网络的问题:医院范围内的计算机登录数据和从Intensive Intensive中直接测量获得的邻近数据护理单元使用无线传感器网络。我们将此问题视为网络完成问题的一种变体,其中网络的一小部分是众所周知的,而其余部分则很少进行采样,因此我们希望完成网络。在这种情况下,我们希望将登录网络(边缘将两个在一定时间和距离范围内登录计算机的人)从医院的边缘连接成联系网络。我们通过借鉴链接预测中的技术来解决此问题。我们在合成登录网络和从传感器数据获得的联系网络上训练和评估这些技术。我们的结果很有希望,因为我们可以从登录网络中预测联系网络,其准确率通常在70%到90%之间。

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