Unit of Biostatistics, Epidemiology and Public Health, Department of Cardiac, Thoracic, Vascular Sciences and Public Health, University of Padova, Via Loredan 18, 35121 Padova, Italy.
Department of Medical Science, University of Ferrara, Via Fossato di Mortara 64B, 44121 Ferrara, Italy.
Int J Environ Res Public Health. 2021 Jul 2;18(13):7105. doi: 10.3390/ijerph18137105.
Delirium is a psycho-organic syndrome common in hospitalized patients, especially the elderly, and is associated with poor clinical outcomes. This study aims to identify the predictors that are mostly associated with the risk of delirium episodes using a machine learning technique (MLT). A random forest (RF) algorithm was used to evaluate the association between the subject's characteristics and the 4AT (the 4 A's test) score screening tool for delirium. RF algorithm was implemented using information based on demographic characteristics, comorbidities, drugs and procedures. Of the 78 patients enrolled in the study, 49 (63%) were at risk for delirium, 32 (41%) had at least one episode of delirium during the hospitalization (38% in orthopedics and 31% both in internal medicine and in the geriatric ward). The model explained 75.8% of the variability of the 4AT score with a root mean squared error of 3.29. Higher age, the presence of dementia, physical restraint, diabetes and a lower degree are the variables associated with an increase of the 4AT score. Random forest is a valid method for investigating the patients' characteristics associated with delirium onset also in small case-series. The use of this model may allow for early detection of delirium onset to plan the proper adjustment in healthcare assistance.
谵妄是一种常见于住院患者的精神-器质性综合征,尤其是老年人,并与不良临床结局相关。本研究旨在使用机器学习技术(MLT)确定与谵妄发作风险最相关的预测因素。随机森林(RF)算法用于评估受试者特征与谵妄的 4AT(4A 测试)评分筛查工具之间的关联。RF 算法基于人口统计学特征、合并症、药物和程序的信息进行实施。在纳入研究的 78 名患者中,有 49 名(63%)有谵妄风险,32 名(41%)在住院期间至少有一次谵妄发作(骨科 38%,内科和老年病房均为 31%)。该模型解释了 4AT 评分的 75.8%的可变性,均方根误差为 3.29。更高的年龄、痴呆的存在、身体约束、糖尿病和较低的程度是与 4AT 评分增加相关的变量。随机森林是一种有效的方法,可用于研究与谵妄发作相关的患者特征,即使在小病例系列中也是如此。该模型的使用可以实现对谵妄发作的早期检测,从而计划适当调整医疗保健。