Using Unsupervised Machine Learning to Identify Age- and Sex-Independent Severity Subgroups Among Patients with COVID-19: Observational Longitudinal Study

被引:15
|
作者
Benito-Leon, Julian [1 ]
Dolores del Castillo, Ma [2 ]
Estirado, Alberto [3 ]
Ghosh, Ritwik [4 ]
Dubey, Souvik [5 ]
Serrano, J. Ignacio [2 ]
机构
[1] Univ Hosp 12 Octubre, Dept Neurol, Ave Cordoba S-N, Madrid 28041, Spain
[2] CSIC UPM, Neural & Cognit Engn Grp, Ctr Automat & Robot, Arganda Del Rey, Spain
[3] HM Hosp, Madrid, Spain
[4] Burdwan Med Coll & Hosp, Dept Gen Med, Burdwan, W Bengal, India
[5] Bangur Inst Neurosci, Dept Neuromed, Kolkata, India
关键词
COVID-19; machine learning; outcome; severity; subgroup; emergency; detection; intervention; testing; data set; characterization; LACTATE-DEHYDROGENASE; MORTALITY; DIAGNOSIS;
D O I
10.2196/25988
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Early detection and intervention are the key factors for improving outcomes in patients with COVID-19. Objective: The objective of this observational longitudinal study was to identify nonoverlapping severity subgroups (ie, clusters) among patients with COVID-19, based exclusively on clinical data and standard laboratory tests obtained during patient assessment in the emergency department. Methods: We applied unsupervised machine learning to a data set of 853 patients with COVID-19 from the HM group of hospitals (HM Hospitales) in Madrid, Spain. Age and sex were not considered while building the clusters, as these variables could introduce biases in machine learning algorithms and raise ethical implications or enable discrimination in triage protocols. Results: From 850 clinical and laboratory variables, four tests-the serum levels of aspartate transaminase (AST), lactate dehydrogenase (LDH), C-reactive protein (CRP), and the number of neutrophils-were enough to segregate the entire patient pool into three separate clusters. Further, the percentage of monocytes and lymphocytes and the levels of alanine transaminase (ALT) distinguished cluster 3 patients from the other two clusters. The highest proportion of deceased patients; the highest levels of AST, ALT, LDH, and CRP; the highest number of neutrophils; and the lowest percentages of monocytes and lymphocytes characterized cluster 1. Cluster 2 included a lower proportion of deceased patients and intermediate levels of the previous laboratory tests. The lowest proportion of deceased patients; the lowest levels of AST, ALT, LDH, and CRP; the lowest number of neutrophils; and the highest percentages of monocytes and lymphocytes characterized cluster 3. Conclusions: A few standard laboratory tests, deemed available in all emergency departments, have shown good discriminative power for the characterization of severity subgroups among patients with COVID-19.
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页数:14
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