Burdenko Neurosurgery Institute, 16 4th Tverskaya-Yamskaya Street, Moscow 125047, Russia.
Skolkovo Institute of Science and Technology, Skolkovo Innovation Center, Building 3, Moscow 143026, Russia; Department of Anesthesiology, Keck School of Medicine, University of Southern California, 1975 Zonal Ave, Los Angeles, CA 90033, USA.
J Crit Care. 2018 Jun;45:95-104. doi: 10.1016/j.jcrc.2018.01.022. Epub 2018 Mar 23.
To define the incidence of healthcare-associated ventriculitis and meningitis (HAVM) in the neuro-ICU and to identify HAVM risk factors using tree-based machine learning (ML) algorithms.
An observational cohort study was conducted in Russia from 2010 to 2017, and included high-risk neuro-ICU patients. We utilized relative risk analysis, regressions, and ML to identify factors associated with HAVM development.
2286 patients of all ages were included, 216 of them had HAVM. The cumulative incidence of HAVM was 9.45% [95% CI 8.25-10.65]. The incidence of EVD-associated HAVM was 17.2 per 1000 EVD-days or 4.3% [95% CI 3.47-5.13] per 100 patients. Combining all three methods, we selected four important factors contributing to HAVM development: EVD, craniotomy, superficial surgical site infections after neurosurgery, and CSF leakage. The ML models performed better than regressions.
We first reported HAVM incidence in a neuro-ICU in Russia. We showed that tree-based ML is an effective approach to study risk factors because it enables the identification of nonlinear interaction across factors. We suggest that the number of found risk factors and the duration of their presence in patients should be reduced to prevent HAVM.
定义神经重症监护病房(neuro-ICU)中与医疗保健相关的脑室炎和脑膜炎(HAVM)的发生率,并使用基于树的机器学习(ML)算法确定 HAVM 的危险因素。
本研究为 2010 年至 2017 年在俄罗斯进行的观察性队列研究,纳入了高危神经重症监护病房患者。我们利用相对风险分析、回归和 ML 来确定与 HAVM 发展相关的因素。
共纳入 2286 名各年龄段患者,其中 216 名患者发生 HAVM。HAVM 的累积发生率为 9.45%[95%置信区间 8.25-10.65]。EVD 相关 HAVM 的发生率为每 1000 个 EVD 天 17.2 例,每 100 例患者 4.3%[95%置信区间 3.47-5.13]。结合所有三种方法,我们选择了四个对 HAVM 发展有重要贡献的因素:EVD、开颅术、神经外科后浅表手术部位感染和 CSF 漏。ML 模型的表现优于回归。
我们首次报告了俄罗斯神经重症监护病房的 HAVM 发生率。我们表明,基于树的 ML 是一种研究危险因素的有效方法,因为它可以识别因素之间的非线性相互作用。我们建议减少发现的危险因素数量及其在患者中的存在时间,以预防 HAVM。