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Using Artificial Neural Networks to Predict Potential Complications during Trauma Patients' Hospitalization Period

机译:使用人工神经网络在创伤患者住院期间预测潜在的并发症

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Complications during treatment of seriously injured trauma patients cause an increase in mortality rates, and increased treatment costs, including bed occupancy. Current methods treat those at risk, and include numbers of false positives. By finding a method to predict those at risk of the three most common recorded Trauma Registry complications, considerable savings in mortality and treatment costs could arise. Artificial Neural Networks (ANN) work well with classification problems using feed-forward/back propagation methodology. Using the National Trauma Data Bank (V6.2) data files, Tiberius Software created the ANN models. Best models were identified by their Gini co-efficient, ability to predict the complication outcome selected, and their Root Mean Squared Error (RMSE) scores. The model ensemble for the three major complications recorded in the registry were determined, variables ranked and model accuracy recorded. The basic ANN is fairly accurate for those likely to contract Acute Respiratory Disease Syndrome (ARDS) though with a high rate of false positives. The ANN ability to predict Ventilator Associated Pneumonia (VAP) is less effective, though better at producing fewer false positives. Predicting Urinary Tract Infections (UTI) cases is not good enough using these input variables. Both VAP and UTI relate to those aged over 55 years, while ARDS related more to those under 16 years. The models need improving.
机译:治疗严重受损的创伤患者的并发症会导致死亡率增加,并增加治疗费用,包括床占用。目前的方法对待风险,并包括误报的数量。通过寻找预测三种最常见的创伤创伤注册表并发症的方法的方法,可能会出现大量节省死亡率和治疗成本。人工神经网络(ANN)使用前馈/背部传播方法的分类问题工作。使用National Trauma数据库(V6.2)数据文件,Tiberius软件创建了Ann型号。最佳模型由他们的基尼共同高效,能够预测所选并发症结果的能力,以及它们的根均匀误差(RMSE)得分。确定了在注册表中记录的三个主要并发症的模型集合,变量排列并记录了模型精度。对于那些可能收缩急性呼吸道疾病综合征(ARDS)的人来说,基本的ANN非常准确。 Ang能够预测呼吸机相关的肺炎(VAP)的能力较小,但更好地产生较少的误报。使用这些输入变量预测尿路感染(UTI)病例不够好。 VAP和UTI都涉及超过55年的人,而ARDS在16岁以下的情况下有更多。模型需要改善。

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