Barchitta Martina, Maugeri Andrea, Favara Giuliana, Riela Paolo Marco, Gallo Giovanni, Mura Ida, Agodi Antonella
Department of Medical and Surgical Sciences and Advanced Technologies "GF Ingrassia", University of Catania, 95123 Catania, Italy.
GISIO-SItI-Italian Study Group of Hospital Hygiene-Italian Society of Hygiene, Preventive Medicine and Public Health, 00144 Roma, Italy.
J Clin Med. 2021 Mar 2;10(5):992. doi: 10.3390/jcm10050992.
Patients in intensive care units (ICUs) were at higher risk of worsen prognosis and mortality. Here, we aimed to evaluate the ability of the Simplified Acute Physiology Score (SAPS II) to predict the risk of 7-day mortality, and to test a machine learning algorithm which combines the SAPS II with additional patients' characteristics at ICU admission. We used data from the "Italian Nosocomial Infections Surveillance in Intensive Care Units" network. Support Vector Machines (SVM) algorithm was used to classify 3782 patients according to sex, patient's origin, type of ICU admission, non-surgical treatment for acute coronary disease, surgical intervention, SAPS II, presence of invasive devices, trauma, impaired immunity, antibiotic therapy and onset of HAI. The accuracy of SAPS II for predicting patients who died from those who did not was 69.3%, with an Area Under the Curve (AUC) of 0.678. Using the SVM algorithm, instead, we achieved an accuracy of 83.5% and AUC of 0.896. Notably, SAPS II was the variable that weighted more on the model and its removal resulted in an AUC of 0.653 and an accuracy of 68.4%. Overall, these findings suggest the present SVM model as a useful tool to early predict patients at higher risk of death at ICU admission.
重症监护病房(ICU)的患者预后恶化和死亡风险更高。在此,我们旨在评估简化急性生理学评分(SAPS II)预测7天死亡率风险的能力,并测试一种将SAPS II与ICU入院时患者的其他特征相结合的机器学习算法。我们使用了“意大利重症监护病房医院感染监测”网络的数据。支持向量机(SVM)算法用于根据性别、患者来源、ICU入院类型、急性冠状动脉疾病的非手术治疗、手术干预、SAPS II、侵入性设备的存在、创伤、免疫功能受损、抗生素治疗和医院获得性感染(HAI)的发生情况对3782例患者进行分类。SAPS II预测死亡患者和未死亡患者的准确率为69.3%,曲线下面积(AUC)为0.678。相反,使用SVM算法,我们实现了83.5%的准确率和0.896的AUC。值得注意的是,SAPS II是模型中权重更大 的变量,去除该变量后AUC为0.653,准确率为68.4%。总体而言,这些发现表明当前的SVM模型是早期预测ICU入院时死亡风险较高患者的有用工具。