Identification of distinct clinical phenotypes of cardiogenic shock using machine learning consensus clustering approach

被引:1
|
作者
Wang, Li [1 ]
Zhang, Yufeng [2 ]
Yao, Renqi [3 ,4 ,5 ,6 ]
Chen, Kai [7 ]
Xu, Qiumeng [8 ]
Huang, Renhong [9 ]
Mao, Zhiguo [1 ]
Yu, Yue [2 ]
机构
[1] Naval Med Univ, Changzheng Hosp, Dept Nephrol, Shanghai, Peoples R China
[2] Naval Med Univ, Changzheng Hosp, Dept Cardiothorac Surg, Shanghai, Peoples R China
[3] Chinese Peoples Liberat Army Gen Hosp, Translat Med Res Ctr, Med Ctr 4, Beijing, Peoples R China
[4] Chinese Peoples Liberat Army Gen Hosp, Med Innovat Res Div, Beijing, Peoples R China
[5] Naval Med Univ, Changhai Hosp, Dept Burn Surg, Shanghai, Peoples R China
[6] Chinese Acad Med Sci, Res Unit Key Tech Treatment Burns & Combined Burns, Shanghai, Peoples R China
[7] Naval Med Univ, Changhai Hosp, Dept Orthoped, Shanghai, Peoples R China
[8] Naval Med Univ, Changzheng Hosp, Dept Orthopaed, Shanghai, Peoples R China
[9] Jiaotong Univ, Ruijin Hosp, Comprehens Breast Hlth Ctr, Dept Gen Surg,Sch Med, Shanghai, Peoples R China
基金
中国国家自然科学基金;
关键词
Acute kidney injury; Artificial intelligence; Cardiogenic shock; Cluster; Intensive care unit; Machine learning; Mortality; Phenotype; CRITICALLY-ILL PATIENTS; CHRONIC HEART-FAILURE; ACUTE PHYSIOLOGY; MORTALITY; DIAGNOSIS; MANAGEMENT;
D O I
10.1186/s12872-023-03380-y
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Cardiogenic shock (CS) is a complex state with many underlying causes and associated outcomes. It is still difficult to differentiate between various CS phenotypes. We investigated if the CS phenotypes with distinctive clinical profiles and prognoses might be found using the machine learning (ML) consensus clustering approach. Methods The current study included patients who were diagnosed with CS at the time of admission from the electronic ICU (eICU) Collaborative Research Database. Among 21,925 patients with CS, an unsupervised ML consensus clustering analysis was conducted. The optimal number of clusters was identified by means of the consensus matrix (CM) heat map, cumulative distribution function (CDF), cluster-consensus plots, and the proportion of ambiguously clustered pairs (PAC) analysis. We calculated the standardized mean difference (SMD) of each variable and used the cutoff of +/- 0.3 to identify each cluster's key features. We examined the relationship between the phenotypes and several clinical endpoints utilizing logistic regression (LR) analysis. Results The consensus cluster analysis identified two clusters (Cluster 1: n = 9,848; Cluster 2: n = 12,077). The key features of patients in Cluster 1, compared with Cluster 2, included: lower blood pressure, lower eGFR (estimated glomerular filtration rate), higher BUN (blood urea nitrogen), higher creatinine, lower albumin, higher potassium, lower bicarbonate, lower red blood cell (RBC), higher red blood cell distribution width (RDW), higher SOFA score, higher APS III score, and higher APACHE IV score on admission. The results of LR analysis showed that the Cluster 2 was associated with lower in-hospital mortality (odds ratio [OR]: 0.374; 95% confidence interval [CI]: 0.347-0.402; P < 0.001), ICU mortality (OR: 0.349; 95% CI: 0.318-0.382; P < 0.001), and the incidence of acute kidney injury (AKI) after admission (OR: 0.478; 95% CI: 0.452-0.505; P < 0.001). Conclusions ML consensus clustering analysis synthesized the pattern of clinical and laboratory data to reveal distinct CS phenotypes with different clinical outcomes.
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页数:12
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