4.7 Article

Exploration of critical care data by using unsupervised machine learning

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Publisher

ELSEVIER IRELAND LTD
DOI: 10.1016/j.cmpb.2020.105507

Keywords

Critical care; Electronic health record; Unsupervised machine learning; K-means clustering

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Background and Objective: Identification of subgroups may be useful to understand the clinical characteristics of ICU patients. The purposes of this study were to apply an unsupervised machine learning method to ICU patient data to discover subgroups among them; and to examine their clinical characteristics, therapeutic procedures conducted during the ICU stay, and discharge dispositions. Methods: K-means clustering method was used with 1503 observations and 9 types of laboratory test results as features. Results: Three clusters were identified from this specific population. Blood urea nitrogen, creatinine, potassium, hemoglobin, and red blood cell were distinctive between the clusters. Cluster Three presented the highest blood products transfusion rate (19.8%), followed by Cluster One (15.5%) and cluster Two (9.3%), which was significantly different. Hemodialysis was more frequently provided to Cluster Three while bronchoscopy was done to Cluster One and Two. Cluster Three showed the highest mortality (30.4%), which was more than two-fold compared to Cluster One (14.1%) and Two (12.2%). Conclusion: Three subgroups were identified and their clinical characteristics were compared. These findings may be useful to anticipate treatment strategies and probable outcomes of ICU patients. Unsupervised machine learning may enable ICU multi-dimensional data to be organized and to make sense of the data. (c) 2020 Elsevier B.V. All rights reserved.

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