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Unsupervised machine learning analysis to identify patterns of ICU medication use for fluid overload prediction.
Keats, Kelli; Deng, Shiyuan; Chen, Xianyan; Zhang, Tianyi; Devlin, John W; Murphy, David J; Smith, Susan E; Murray, Brian; Kamaleswaran, Rishikesan; Sikora, Andrea.
Affiliation
  • Keats K; Augusta University Medical Center, Department of Pharmacy, Augusta, GA.
  • Deng S; University of Georgia Franklin College of Arts and Sciences, Department of Statistics, Athens, GA, USA.
  • Chen X; University of Georgia Franklin College of Arts and Sciences, Department of Statistics, Athens, GA, USA.
  • Zhang T; University of Georgia Franklin College of Arts and Sciences, Department of Statistics, Athens, GA, USA.
  • Devlin JW; Northeastern University School of Pharmacy, Boston, MA.
  • Murphy DJ; Brigham and Women's Hospital, Division of Pulmonary and Critical Care Medicine, Boston, MA.
  • Smith SE; Emory University, Division of Pulmonary, Allergy, Critical Care and Sleep Medicine, Atlanta, GA, USA.
  • Murray B; University of Georgia College of Pharmacy, Department of Clinical and Administrative Pharmacy, Athens, GA, USA.
  • Kamaleswaran R; University of Colorado Skaggs School of Pharmacy, Aurora, CO, USA.
  • Sikora A; Department of Biomedical Informatics, Emory University School of Medicine, Atlanta, GA, USA.
medRxiv ; 2024 Mar 22.
Article in En | MEDLINE | ID: mdl-38562806
ABSTRACT

INTRODUCTION:

Intravenous (IV) medications are a fundamental cause of fluid overload (FO) in the intensive care unit (ICU); however, the association between IV medication use (including volume), administration timing, and FO occurrence remains unclear.

METHODS:

This retrospective cohort study included consecutive adults admitted to an ICU ≥72 hours with available fluid balance data. FO was defined as a positive fluid balance ≥7% of admission body weight within 72 hours of ICU admission. After reviewing medication administration record (MAR) data in three-hour periods, IV medication exposure was categorized into clusters using principal component analysis (PCA) and Restricted Boltzmann Machine (RBM). Medication regimens of patients with and without FO were compared within clusters to assess for temporal clusters associated with FO using the Wilcoxon rank sum test. Exploratory analyses of the medication cluster most associated with FO for medications frequently appearing and used in the first 24 hours was conducted.

RESULTS:

FO occurred in 127/927 (13.7%) of the patients enrolled. Patients received a median (IQR) of 31 (13-65) discrete IV medication administrations over the 72-hour period. Across all 47,803 IV medication administrations, ten unique IV medication clusters were identified with 121-130 medications in each cluster. Among the ten clusters, cluster 7 had the greatest association with FO; the mean number of cluster 7 medications received was significantly greater in patients in the FO cohort compared to patients who did not experience FO (25.6 vs.10.9. p<0.0001). 51 of the 127 medications in cluster 7 (40.2%) appeared in > 5 separate 3-hour periods during the 72-hour study window. The most common cluster 7 medications included continuous infusions, antibiotics, and sedatives/analgesics. Addition of cluster 7 medications to a prediction model with APACHE II score and receipt of diuretics improved the ability for the model to predict fluid overload (AUROC 5.65, p =0.0004).

CONCLUSIONS:

Using ML approaches, a unique IV medication cluster was strongly associated with FO. Incorporation of this cluster improved the ability to predict development of fluid overload in ICU patients compared with traditional prediction models. This method may be further developed into real-time clinical applications to improve early detection of adverse outcomes.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: MedRxiv Year: 2024 Document type: Article Affiliation country: Gabón

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: MedRxiv Year: 2024 Document type: Article Affiliation country: Gabón