Cardiovascular Research Group, Galicia Sur Health Research Institute (IIS Galicia Sur), 36213 Vigo, Spain.
Department of Electronic Technology, University of Vigo, 36310 Vigo, Spain.
Sensors (Basel). 2021 Oct 27;21(21):7125. doi: 10.3390/s21217125.
Due to the continuous monitoring process of critical patients, Intensive Care Units (ICU) generate large amounts of data, which are difficult for healthcare personnel to analyze manually, especially in overloaded situations such as those present during the COVID-19 pandemic. Therefore, the automatic analysis of these data has many practical applications in patient monitoring, including the optimization of alarm systems for alerting healthcare personnel. In this paper, explainable machine learning techniques are used for this purpose, with a methodology based on age-stratification, boosting classifiers, and Shapley Additive Explanations (SHAP) proposed. The methodology is evaluated using MIMIC-III, an ICU patient research database. The results show that the proposed model can predict mortality within the ICU with AUROC values of 0.961, 0.936, 0.898, and 0.883 for age groups 18-45, 45-65, 65-85 and 85+, respectively. By using SHAP, the features with the highest impact in predicting mortality for different age groups and the threshold from which the value of a clinical feature has a negative impact on the patient's health can be identified. This allows ICU alarms to be improved by identifying the most important variables to be sensed and the threshold values at which the health personnel must be warned.
由于对重症患者的持续监测过程,重症监护病房(ICU)产生了大量的数据,医护人员很难手动分析这些数据,特别是在 COVID-19 大流行期间出现的超负荷情况下。因此,这些数据的自动分析在患者监测中有许多实际应用,包括优化警报系统以提醒医护人员。在本文中,使用可解释的机器学习技术来实现这一目的,提出了一种基于年龄分层、提升分类器和 Shapley 可加解释(SHAP)的方法。该方法使用 ICU 患者研究数据库 MIMIC-III 进行评估。结果表明,所提出的模型可以预测 ICU 内的死亡率,对于年龄在 18-45、45-65、65-85 和 85+的组,AUROC 值分别为 0.961、0.936、0.898 和 0.883。通过使用 SHAP,可以确定预测不同年龄组死亡率的特征和临床特征值的阈值,该阈值会对患者的健康产生负面影响。这可以通过识别最重要的变量和需要发出警报的医护人员的阈值来改进 ICU 警报。