da Cruz Mônica R, Azambuja Pedro, Torres Kátia S C, Lima-Setta Fernanda, Japiassú André M, Medeiros Denise M
Evandro Chagas National Institute of Infectious Diseases, Oswaldo Cruz Foundation (INI-Fiocruz), Rio de Janeiro, RJ, Brazil.
Pedro Ernesto University Hospital (HUPE), Rio de Janeiro State University (UERJ), Rio de Janeiro, RJ, Brazil.
Ann Intensive Care. 2024 Nov 29;14(1):178. doi: 10.1186/s13613-024-01414-y.
The heterogeneity of acute respiratory distress syndrome (ARDS) patients is a challenge for the development of effective treatments. This study aimed to identify and characterize novel respiratory subphenotypes of COVID-19 ARDS, with potential implications for targeted patient management.
Consecutive ventilated patients with PCR-confirmed COVID-19 infection, in which prone positioning was clinically indicated for moderate or severe ARDS, were included in a prospective cohort. The patients were assigned to development or validation cohorts based on a temporal split. The PaO/FiO ratio, respiratory compliance, and ventilatory ratio were assessed longitudinally throughout the first prone session. The subphenotypes were derived and validated using machine learning techniques. A K-means clustering implementation designed for joint trajectory analysis was utilized for the unsupervised classification of the development cohort. A random forest model was trained on the labeled development cohort and used to validate the subphenotypes in the validation cohort.
718 patients were included in a prospective cohort analysis. Of those, 504 were assigned to the development cohort and 214 to the validation cohort. Two distinct subphenotypes, labeled A and B, were identified. Subphenotype B had a lower PaO/FiO response during the prone session, higher ventilatory ratio, and lower compliance than subphenotype A. Subphenotype B had a higher proportion of females (p < 0.001) and lung disease (p = 0.005), higher baseline SAPS III (p = 0.002) and SOFA (p < 0.001) scores, and lower body mass index (p = 0.05). Subphenotype B had also higher levels of the pro-inflammatory biomarker IL-6 (p = 0.017). Subphenotype B was independently associated with an increased risk of 60-day mortality (OR 1.89, 95% CI 1.51-2.36). Additionally, Subphenotype B was associated with a lower number of ventilator-free days on day 28 (p < 0.001) and a lower hospital length of stay (p < 0.001). The subphenotypes were reproducible in the validation cohort.
Our study successfully identified and validated two distinct subphenotypes of COVID-19 ARDS based on key respiratory parameters. The findings suggest potential implications for better patient stratification, risk assessment, and treatment personalization. Future research is warranted to explore the utility of these novel subphenotypes for guiding targeted therapeutic strategies in COVID-19 ARDS.
急性呼吸窘迫综合征(ARDS)患者的异质性是有效治疗方法开发的一项挑战。本研究旨在识别并描述新型冠状病毒肺炎(COVID-19)相关ARDS的呼吸亚表型特征,这可能对针对性的患者管理具有重要意义。
前瞻性队列纳入了经聚合酶链反应(PCR)确诊为COVID-19感染且临床上因中度或重度ARDS而需要俯卧位通气的连续通气患者。根据时间划分将患者分配至开发队列或验证队列。在首次俯卧位通气期间纵向评估氧合指数(PaO/FiO)、呼吸顺应性和通气比。使用机器学习技术推导并验证亚表型。针对联合轨迹分析设计的K均值聚类算法用于对开发队列进行无监督分类。在标记的开发队列上训练随机森林模型,并用于在验证队列中验证亚表型。
718例患者纳入前瞻性队列分析。其中,504例被分配至开发队列,214例被分配至验证队列。识别出两种不同的亚表型,分别标记为A和B。与亚表型A相比,亚表型B在俯卧位通气期间的PaO/FiO反应较低、通气比较高且顺应性较低。亚表型B的女性比例更高(p < 0.001)、肺部疾病比例更高(p = 0.005)、基线序贯器官衰竭评估(SOFA)评分更高(p = 0.002)、全身感染相关性器官功能衰竭评分(SAPS III)更高(p < 0.001)且体重指数更低(p = 0.05)。亚表型B的促炎生物标志物白细胞介素-6(IL-6)水平也更高(p = 0.017)。亚表型B与60天死亡率增加独立相关(比值比[OR] 1.89,95%置信区间[CI] 1.51 - 2.36)。此外,亚表型B与第28天无呼吸机天数减少(p < 0.001)和住院时间缩短(p < 0.001)相关。这些亚表型在验证队列中具有可重复性。
我们的研究基于关键呼吸参数成功识别并验证了两种不同的COVID-19相关ARDS亚表型。这些发现提示其在更好地进行患者分层、风险评估和治疗个性化方面可能具有重要意义。未来有必要开展研究以探索这些新型亚表型在指导COVID-19相关ARDS靶向治疗策略方面的效用。