Literature DB >> 33728577

Mixed-data deep learning in repeated predictions of general medicine length of stay: a derivation study.

Stephen Bacchi1,2, Samuel Gluck3,4, Yiran Tan3,4, Ivana Chim3, Joy Cheng3, Toby Gilbert3,4, Jim Jannes3,4, Timothy Kleinig3,4, Simon Koblar3,4.   

Abstract

The accurate prediction of likely discharges and estimates of length of stay (LOS) aid in effective hospital administration and help to prevent access block. Machine learning (ML) may be able to help with these tasks. For consecutive patients admitted under General Medicine at the Royal Adelaide Hospital over an 8-month period, daily ward round notes and relevant discrete data fields were collected from the electronic medical record. These data were then split into training and testing sets (7-month/1-month train/test split) prior to use in ML analyses aiming to predict discharge within the next 2 days, discharge within the next 7 days and an estimated date of discharge (EDD). Artificial neural networks and logistic regression were effective at predicting discharge within 48 h of a given ward round note. These models achieved an area under the receiver operator curve (AUC) of 0.80 and 0.78, respectively. Prediction of discharge within 7 days of a given note was less accurate, with artificial neural network returning an AUC of 0.68 and logistic regression an AUC of 0.61. The generation of an exact EDD remains inaccurate. This study has shown that repeated estimates of LOS using daily ward round notes and mixed-data inputs are effective in the prediction of general medicine discharges in the next 48 h. Further research may seek to prospectively and externally validate models for prediction of upcoming discharge, as well as combination human-ML approaches for generating EDDs.
© 2021. Crown.

Entities:  

Keywords:  Bed flow; Discharge planning; Machine learning; Neural network; Predictive analytics

Year:  2021        PMID: 33728577     DOI: 10.1007/s11739-021-02697-w

Source DB:  PubMed          Journal:  Intern Emerg Med        ISSN: 1828-0447            Impact factor:   3.397


  2 in total

1.  Artificial neural networks and risk stratification in emergency departments.

Authors:  Greta Falavigna; Giorgio Costantino; Raffaello Furlan; James V Quinn; Andrea Ungar; Roberto Ippoliti
Journal:  Intern Emerg Med       Date:  2018-10-23       Impact factor: 3.397

2.  Prediction of general medical admission length of stay with natural language processing and deep learning: a pilot study.

Authors:  Stephen Bacchi; Samuel Gluck; Yiran Tan; Ivana Chim; Joy Cheng; Toby Gilbert; David K Menon; Jim Jannes; Timothy Kleinig; Simon Koblar
Journal:  Intern Emerg Med       Date:  2020-01-02       Impact factor: 3.397

  2 in total
  3 in total

1.  Clinical outcomes of drug-eluting balloon for treatment of small coronary artery in patients with acute myocardial infarction: comment.

Authors:  Artemio García-Escobar; Alfonso Jurado-Román; Santiago Jiménez-Valero; Guillermo Galeote; Raúl Moreno
Journal:  Intern Emerg Med       Date:  2021-01-22       Impact factor: 3.397

2.  Exploratory analysis of novel electronic health record variables for quantification of healthcare delivery strain, prediction of mortality, and prediction of imminent discharge.

Authors:  Catherine Lee; Brian L Lawson; Ariana J Mann; Vincent X Liu; Laura C Myers; Alejandro Schuler; Gabriel J Escobar
Journal:  J Am Med Inform Assoc       Date:  2022-05-11       Impact factor: 7.942

3.  Deep learning algorithms with mixed data for prediction of Length of Stay.

Authors:  Greta Falavigna
Journal:  Intern Emerg Med       Date:  2021-04-13       Impact factor: 3.397

  3 in total

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