ICU Admission Prediction for Patients With Kawasaki Disease or MIS-C Using Machine Learning. Journal Articles uri icon

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abstract

  • BACKGROUND: Multisystem inflammatory syndrome in children (MIS-C) and Kawasaki disease (KD) show a broad spectrum of clinical severity, from a relatively benign clinical course to requiring admission to the intensive care unit (ICU). With either, clinical deterioration may be rapid and unexpected. OBJECTIVES: The aim of the study was to develop a machine learning (ML) model to predict future ICU admission for patients with KD or MIS-C to augment clinical decision-making. METHODS: We developed a prediction model for ICU admission using 2,539 patients <18 years of age with MIS-C or KD enrolled in the International Kawasaki Disease Registry. Using discrete time-point clinical features and engineered time-series clinical features, we developed predictive snapshot and window ML models with logistic regression, XGBoost, and random forest. Performance was compared between the various iterations of the models. RESULTS: ML models effectively predicted admission to the ICU within the next 48 hours of the time of prediction. The time-series window-XGBoost model outperformed other models with an AUROC of 0.92 and an area under the precision-recall curve of 0.86. The incorporation of engineered time-series features improved the precision and recall independent of the length of the sampling time window. Higher ferritin level, treatment with anticoagulant or unfractionated heparin, higher C-reactive protein level, and lower platelet count were identified as the most predictive features for positive ICU prediction. CONCLUSIONS: ML algorithms can effectively predict ICU admission for pediatric patients with MIS-C or KD. These models may prompt physicians to pre-emptively implement supportive measures, possibly mitigating the risk of clinical deterioration.

authors

  • Woo, JiWon
  • Mosier, Rebecca
  • Mukherjee, Rishima
  • Harahsheh, Ashraf S
  • Jain, Supriya S
  • Raghuveer, Geetha
  • Sundaram, Balasubramanian
  • Lee, Simon
  • Portman, Michael A
  • Dahdah, Nagib
  • Fabi, Marianna
  • Nowlen, Todd T
  • Dionne, Audrey
  • El Ganzoury, Mona
  • Harris, Tyler H
  • Barnes, Benjamin T
  • Dallaire, Frederic
  • Dancey, Paul
  • Norozi, Kambiz
  • Alsalehi, Mahmoud
  • Selamet Tierney, Elif Seda
  • Szmuszkovicz, Jacqueline R
  • Jone, Pei-Ni
  • Prasad, Deepa
  • Yetman, Anji T
  • Misra, Nilanjana
  • Hicar, Mark D
  • Thacker, Deepika
  • Choueiter, Nadine F
  • Cooke, Elisa Fernandez
  • Mauriello, Daniel
  • Mondal, Tapas
  • Elias, Matthew D
  • McHugh, Kimberly E
  • Merves, Shae A
  • Garrido-Garcia, Luis Martin
  • Khoury, Michael
  • Larios, Guillermo
  • Chinni, Bhargava
  • Pruthi, Kaashvi
  • Yang, Wenyu
  • Greenstein, Joseph
  • Taylor, Casey
  • Farid, Pedrom
  • McCrindle, Brian W
  • Manlhiot, Cedric
  • International Kawasaki Disease Registry

publication date

  • February 27, 2025