Department of Translational Data Science and Informatics, Geisinger, Danville, PA, 17822, USA.
College of Information Sciences and Technology, Pennsylvania State University, University Park, PA, 16802, USA.
BMC Med Inform Decis Mak. 2021 May 13;21(1):156. doi: 10.1186/s12911-021-01517-7.
Severity scores assess the acuity of critical illness by penalizing for the deviation of physiologic measurements from normal and aggregating these penalties (also called "weights" or "subscores") into a final score (or probability) for quantifying the severity of critical illness (or the likelihood of in-hospital mortality). Although these simple additive models are human readable and interpretable, their predictive performance needs to be further improved.
We present OASIS +, a variant of the Oxford Acute Severity of Illness Score (OASIS) in which an ensemble of 200 decision trees is used to predict in-hospital mortality based on the 10 same clinical variables in OASIS.
Using a test set of 9566 admissions extracted from the MIMIC-III database, we show that OASIS + outperforms nine previously developed severity scoring methods (including OASIS) in predicting in-hospital mortality. Furthermore, our results show that the supervised learning algorithms considered in our experiments demonstrated higher predictive performance when trained using the observed clinical variables as opposed to OASIS subscores.
Our results suggest that there is room for improving the prognostic accuracy of the OASIS severity scores by replacing the simple linear additive scoring function with more sophisticated non-linear machine learning models such as RF and XGB.
严重程度评分通过惩罚生理测量值与正常值的偏差,并将这些惩罚(也称为“权重”或“子分数”)汇总到最终分数(或概率)中,来评估危重病的严重程度(或住院死亡率的可能性)。虽然这些简单的加法模型是人类可读和可解释的,但它们的预测性能需要进一步提高。
我们提出了 OASIS+,这是牛津急性疾病严重程度评分(OASIS)的一种变体,它使用 200 个决策树的集合来根据 OASIS 中的 10 个相同临床变量预测住院死亡率。
使用从 MIMIC-III 数据库中提取的 9566 例入院的测试集,我们表明 OASIS+在预测住院死亡率方面优于以前开发的九种严重程度评分方法(包括 OASIS)。此外,我们的结果表明,当使用观察到的临床变量而不是 OASIS 子分数进行训练时,我们实验中考虑的监督学习算法表现出更高的预测性能。
我们的结果表明,通过用更复杂的非线性机器学习模型(如 RF 和 XGB)替代简单的线性加和评分函数,OASIS 严重程度评分的预后准确性有提高的空间。