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Application of neural networks and sensitivity analysis to improved prediction of trauma survival.

机译:神经网络和敏感性分析在改善创伤生存预测中的应用。

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摘要

The performance of trauma departments is widely audited by applying predictive models that assess probability of survival, and examining the rate of unexpected survivals and deaths. Although the TRISS methodology, a logistic regression modelling technique, is still the de facto standard, it is known that neural network models perform better. A key issue when applying neural network models is the selection of input variables. This paper proposes a novel form of sensitivity analysis, which is simpler to apply than existing techniques, and can be used for both numeric and nominal input variables. The technique is applied to the audit survival problem, and used to analyse the TRISS variables. The conclusions discuss the implications for the design of further improved scoring schemes and predictive models.
机译:通过应用评估生存率的预测模型并检查意外生存和死亡的比率,对创伤部门的绩效进行了广泛的审计。尽管TRISS方法(一种逻辑回归建模技术)仍然是事实上的标准,但众所周知神经网络模型的性能更好。应用神经网络模型时的关键问题是输入变量的选择。本文提出了一种新颖的灵敏度分析形式,它比现有技术更易于应用,并且可用于数字和名义输入变量。该技术适用于审计生存问题,并用于分析TRISS变量。结论讨论了进一步设计评分方案和预测模型对设计的意义。

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