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Deep learning model for personalized prediction of positive MRSA culture using time-series electronic health records

Author

Listed:
  • Masayuki Nigo

    (University of Texas Health Science Center at Houston
    University of Texas Health Science Center at Houston
    Texas Medical Center)

  • Laila Rasmy

    (University of Texas Health Science Center at Houston)

  • Bingyu Mao

    (University of Texas Health Science Center at Houston)

  • Bijun Sai Kannadath

    (University of Arizona College of Medicine)

  • Ziqian Xie

    (University of Texas Health Science Center at Houston)

  • Degui Zhi

    (University of Texas Health Science Center at Houston)

Abstract

Methicillin-resistant Staphylococcus aureus (MRSA) poses significant morbidity and mortality in hospitals. Rapid, accurate risk stratification of MRSA is crucial for optimizing antibiotic therapy. Our study introduced a deep learning model, PyTorch_EHR, which leverages electronic health record (EHR) time-series data, including wide-variety patient specific data, to predict MRSA culture positivity within two weeks. 8,164 MRSA and 22,393 non-MRSA patient events from Memorial Hermann Hospital System, Houston, Texas are used for model development. PyTorch_EHR outperforms logistic regression (LR) and light gradient boost machine (LGBM) models in accuracy (AUROCPyTorch_EHR = 0.911, AUROCLR = 0.857, AUROCLGBM = 0.892). External validation with 393,713 patient events from the Medical Information Mart for Intensive Care (MIMIC)-IV dataset in Boston confirms its superior accuracy (AUROCPyTorch_EHR = 0.859, AUROCLR = 0.816, AUROCLGBM = 0.838). Our model effectively stratifies patients into high-, medium-, and low-risk categories, potentially optimizing antimicrobial therapy and reducing unnecessary MRSA-specific antimicrobials. This highlights the advantage of deep learning models in predicting MRSA positive cultures, surpassing traditional machine learning models and supporting clinicians’ judgments.

Suggested Citation

  • Masayuki Nigo & Laila Rasmy & Bingyu Mao & Bijun Sai Kannadath & Ziqian Xie & Degui Zhi, 2024. "Deep learning model for personalized prediction of positive MRSA culture using time-series electronic health records," Nature Communications, Nature, vol. 15(1), pages 1-11, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-46211-0
    DOI: 10.1038/s41467-024-46211-0
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