Sefrioui I, Amadini R, Mauro J, El Fallahi A, Gabbrielli M
Faculty of Sciences of Tetouan, University Abdelmalek Essaadi, Tétouan, Morocco.
Department of Computing and Information Systems, The University of Melbourne, Melbourne, Australia.
Eur J Trauma Emerg Surg. 2017 Dec;43(6):805-822. doi: 10.1007/s00068-016-0757-3. Epub 2017 Feb 22.
Exceptional circumstances like major incidents or natural disasters may cause a huge number of victims that might not be immediately and simultaneously saved. In these cases it is important to define priorities avoiding to waste time and resources for not savable victims. Trauma and Injury Severity Score (TRISS) methodology is the well-known and standard system usually used by practitioners to predict the survival probability of trauma patients. However, practitioners have noted that the accuracy of TRISS predictions is unacceptable especially for severely injured patients. Thus, alternative methods should be proposed.
In this work we evaluate different approaches for predicting whether a patient will survive or not according to simple and easily measurable observations. We conducted a rigorous, comparative study based on the most important prediction techniques using real clinical data of the US National Trauma Data Bank.
Empirical results show that well-known Machine Learning classifiers can outperform the TRISS methodology. Based on our findings, we can say that the best approach we evaluated is Random Forest: it has the best accuracy, the best area under the curve, and k-statistic, as well as the second-best sensitivity and specificity. It has also a good calibration curve. Furthermore, its performance monotonically increases as the dataset size grows, meaning that it can be very effective to exploit incoming knowledge. Considering the whole dataset, it is always better than TRISS. Finally, we implemented a new tool to compute the survival of victims. This will help medical practitioners to obtain a better accuracy than the TRISS tools.
Random Forests may be a good candidate solution for improving the predictions on survival upon the standard TRISS methodology.
重大事件或自然灾害等特殊情况可能导致大量受害者,无法立即同时进行救治。在这些情况下,确定救治优先级很重要,避免在无法挽救的受害者身上浪费时间和资源。创伤和损伤严重程度评分(TRISS)方法是从业者通常用来预测创伤患者生存概率的著名标准系统。然而,从业者指出,TRISS预测的准确性不可接受,尤其是对于重伤患者。因此,应提出替代方法。
在这项工作中,我们根据简单且易于测量的观察结果评估了预测患者是否会存活的不同方法。我们使用美国国家创伤数据库的真实临床数据,基于最重要的预测技术进行了一项严格的比较研究。
实证结果表明,著名的机器学习分类器可以优于TRISS方法。根据我们的研究结果,可以说我们评估的最佳方法是随机森林:它具有最佳的准确性、最佳的曲线下面积和k统计量,以及第二好的敏感性和特异性。它还有一条良好的校准曲线。此外,随着数据集规模的增长,其性能单调增加,这意味着利用新获取的知识会非常有效。考虑整个数据集,它总是优于TRISS。最后,我们实现了一个计算受害者生存概率的新工具。这将帮助医疗从业者获得比TRISS工具更高的准确性。
随机森林可能是一种很好的候选解决方案,可用于改进基于标准TRISS方法对生存情况的预测。