Frontiers in Cardiovascular Medicine (Aug 2022)

Machine learning approach identified clusters for patients with low cardiac output syndrome and outcomes after cardiac surgery

  • Xu Zhao,
  • Bowen Gu,
  • Qiuying Li,
  • Jiaxin Li,
  • Weiwei Zeng,
  • Yagang Li,
  • Yanping Guan,
  • Min Huang,
  • Liming Lei,
  • Guoping Zhong

DOI
https://doi.org/10.3389/fcvm.2022.962992
Journal volume & issue
Vol. 9

Abstract

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BackgroundLow cardiac output syndrome (LCOS) is the most serious physiological abnormality with high mortality for patients after cardiac surgery. This study aimed to explore the multidimensional data of clinical features and outcomes to provide individualized care for patients with LCOS.MethodsThe electronic medical information of the intensive care units (ICUs) was extracted from a tertiary hospital in South China. We included patients who were diagnosed with LCOS in the ICU database. We used the consensus clustering approach based on patient characteristics, laboratory data, and vital signs to identify LCOS subgroups. The consensus clustering method involves subsampling from a set of items, such as microarrays, and determines to cluster of specified cluster counts (k). The primary clinical outcome was in-hospital mortality and was compared between the clusters.ResultsA total of 1,205 patients were included and divided into three clusters. Cluster 1 (n = 443) was defined as the low-risk group [in-hospital mortality =10.1%, odds ratio (OR) = 1]. Cluster 2 (n = 396) was defined as the medium-risk group [in-hospital mortality =25.0%, OR = 2.96 (95% CI = 1.97–4.46)]. Cluster 3 (n = 366) was defined as the high-risk group [in-hospital mortality =39.2%, OR = 5.75 (95% CI = 3.9–8.5)].ConclusionPatients with LCOS after cardiac surgery could be divided into three clusters and had different outcomes.

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