Sakornsakolpat Phuwanat, Tongyoo Surat, Permpikul Chairat
Department of Medicine Faculty of Medicine Siriraj Hospital Mahidol University, Bangkok, Thailand.
Division of Critical Care Department of Medicine Faculty of Medicine Siriraj Hospital Mahidol University, Bangkok, Thailand.
Crit Care Res Pract. 2024 Jul 30;2024:6699274. doi: 10.1155/2024/6699274. eCollection 2024.
This study aimed to investigate the demographic, clinical, and laboratory characteristics of sepsis patients who were admitted to our center during 2014-2020 and to employ cluster analysis, which is a type of machine learning, to identify distinct types of sepsis in Thai population.
Demographic, clinical, laboratory, medicine, and source of infection data of patients admitted to medical wards of Siriraj Hospital (Bangkok, Thailand) during 2014-2020 were collected. Sepsis was diagnosed according to the Sepsis-3 criteria. Nineteen demographic, clinical, and laboratory variables were analyzed using hierarchical clustering to identify sepsis subtypes.
Of 98,359 admissions, 18,030 (18.3%) had sepsis. Respiratory tract was the most common site of infection. The mean Sequential Organ Failure Assessment (SOFA) score was 4.21 ± 2.24, and the median serum lactate level was 2.7 mmol/L [range: 0.4-27.5]. Twenty percent of admissions required vasopressor. In-hospital mortality was 19.6%. Ten sepsis subtypes were identified using hierarchical clustering. Three clusters (clusters L1-L3) were considered low risk, and seven clusters (clusters H1-H7) were considered high risk for in-hospital mortality. Cluster H1 had prominent hematologic abnormalities. Clusters H3 and H5 had younger ages and significant hepatic dysfunction. Cluster H5 had multiple organ dysfunctions, and a higher proportion of cluster H5 patients required vasopressor, mechanical ventilation, and renal replacement therapy. Cluster H6 had more respiratory tract infection and acute respiratory failure and a lower SpO/FiO value.
Cluster analysis revealed 10 distinct subtypes of sepsis in Thai population. Furthermore, the study is needed to investigate the value of these sepsis subtypes in clinical practice.
本研究旨在调查2014年至2020年期间入住我们中心的脓毒症患者的人口统计学、临床和实验室特征,并采用聚类分析(一种机器学习方法)来识别泰国人群中不同类型的脓毒症。
收集了2014年至2020年期间入住诗里拉吉医院(泰国曼谷)内科病房患者的人口统计学、临床、实验室、用药及感染源数据。根据脓毒症-3标准诊断脓毒症。使用层次聚类分析19个人口统计学、临床和实验室变量,以识别脓毒症亚型。
在98359例入院患者中,18030例(18.3%)患有脓毒症。呼吸道是最常见的感染部位。序贯器官衰竭评估(SOFA)评分的平均值为4.21±2.24,血清乳酸水平的中位数为2.7 mmol/L[范围:0.4 - 27.5]。20%的入院患者需要血管活性药物支持。住院死亡率为19.6%。使用层次聚类识别出10种脓毒症亚型。三个聚类(聚类L1 - L3)被认为是低风险,七个聚类(聚类H1 - H7)被认为是住院死亡的高风险。聚类H1有明显的血液学异常。聚类H3和H5患者年龄较轻且有明显的肝功能障碍。聚类H5有多个器官功能障碍,且聚类H5患者中需要血管活性药物支持、机械通气和肾脏替代治疗的比例更高。聚类H6有更多的呼吸道感染和急性呼吸衰竭,且氧合指数(SpO/FiO)值更低。
聚类分析揭示了泰国人群中10种不同的脓毒症亚型。此外,还需要进一步研究这些脓毒症亚型在临床实践中的价值。