Tekin Aysun, Mosolygó Balázs, Huo Nan, Xiao Guohui, Lal Amos
Division of Nephrology and Hypertension, Department of Internal Medicine, Mayo Clinic, Rochester, MN, 55905, USA.
University of Bergen, Bergen, Norway.
Intern Emerg Med. 2025 Mar;20(2):489-499. doi: 10.1007/s11739-024-03836-9. Epub 2024 Dec 12.
Adhering to bundle-based care recommendations within stringent time constraints presents a profound challenge. Elements within these bundles hold varying degrees of significance. We aimed to evaluate the Surviving Sepsis Campaign (SSC) hour-one bundle compliance patterns and their association with patient outcomes. Utilizing the Medical Information Mart for Intensive Care-IV 1.0 dataset, this retrospective cohort study evaluated patients with sepsis who developed shock and were admitted to the intensive care unit between 2008 and 2019. The execution of five hour-one bundle interventions were assessed. Patients with similar treatment profiles were categorized into clusters using unsupervised machine learning. Primary outcomes included in-hospital and 1-year mortality. Four clusters were identified: C#0 (n = 4716) had the poorest bundle compliance. C#1 (n = 1117) had perfect antibiotic adherence with modest fluid and serum lactate measurement adherence. C#2 (n = 850) exhibited full adherence to lactate measurement and low adherence to fluid administration, blood culture, and vasopressors, while C#3 (n = 381) achieved complete adherence to fluid administration and the highest adherence to vasopressor requirements in the entire cohort. Adjusting for covariates, C#1 and C#3 were associated with reduced odds of in-hospital mortality compared to C#0 (adjusted odds ratio [aOR] = 0·83; 95% confidence interval [CI] 0·7-0·97 and aOR = 0·7; 95% CI 0·53-0·91, respectively). C#1 exhibited significantly better 1-year survival (adjusted hazard ratio [aHR] = 0·9; 95%CI 0·81-0·99). We were able to identify distinct clusters of SSC hour-one bundle adherence patterns using unsupervised machine learning techniques, which were associated with patient outcomes.
在严格的时间限制内遵循基于集束化护理的建议是一项巨大的挑战。这些集束中的要素具有不同程度的重要性。我们旨在评估脓毒症存活策略(SSC)首小时集束的依从模式及其与患者预后的关联。利用重症监护医疗信息集市-IV 1.0数据集,这项回顾性队列研究评估了2008年至2019年间发生休克并入住重症监护病房的脓毒症患者。对五项首小时集束干预措施的执行情况进行了评估。使用无监督机器学习将具有相似治疗特征的患者分类为不同的组。主要结局包括住院死亡率和1年死亡率。识别出四个组:C#0(n = 4716)的集束依从性最差。C#1(n = 1117)抗生素依从性完美,液体和血清乳酸测量依从性一般。C#2(n = 850)乳酸测量完全依从,液体管理、血培养和血管活性药物使用依从性低,而C#3(n = 381)液体管理完全依从,在整个队列中血管活性药物使用要求的依从性最高。校正协变量后,与C#0相比,C#1和C#3的住院死亡率降低的几率较低(校正优势比[aOR]分别为0·83;95%置信区间[CI] 0·7 - 0·97和aOR = 0·7;95% CI 0·53 - 0·91)。C#1的1年生存率显著更高(校正风险比[aHR] = 0·9;95%CI 0·81 - 0·99)。我们能够使用无监督机器学习技术识别出SSC首小时集束依从模式的不同组群,这些组群与患者预后相关。