When we face patients arriving to a hospital suffering from the effects of some illness, one of the main problems we can encounter is evaluating whether or not said patients are going to require intensive care in the near future. This intensive care requires allotting valuable and scarce resources, and knowing beforehand the severity of a patients illness can improve both its treatment and the organization of resources. We illustrate this issue in a dataset consistent of Spanish COVID-19 patients from the sixth epidemic wave where we label patients as critical when they either had to enter the intensive care unit or passed away. We then combine the use of dynamic Bayesian networks, to forecast the vital signs and the blood analysis results of patients over the next 40 hours, and neural networks, to evaluate the severity of a patients disease in that interval of time. Our empirical results show that the transposition of the current state of a patient to future values with the DBN for its subsequent use in classification obtains better the accuracy and g-mean score than a direct application with a classifier.
翻译:当我们面对病人到达医院时,受到某种疾病的影响,我们遇到的主要问题之一是评估病人是否在不久的将来需要特别护理。这种特别护理需要分配宝贵和稀缺的资源,事先知道病人疾病的严重性可以改善治疗和资源的组织。我们用第六波流行病西班牙COVID-19病人的一致数据集来说明这个问题,在第六波流行病病人进入特护单位或去世时,我们将病人称为关键病人。然后,我们结合使用动态的Bayesian网络,预测今后40小时内病人的生命迹象和血液分析结果,以及神经网络,评估病人疾病在这一期间的严重程度。我们的实证结果表明,病人目前状况与未来价值的转换,与DBN公司一起用于分类,比直接与叙级者相比,其准确性和平均值要好。</s>