Literature DB >> 26142183

Predicting prolonged length of hospital stay in older emergency department users: use of a novel analysis method, the Artificial Neural Network.

C P Launay1, H Rivière1, A Kabeshova1, O Beauchet2.   

Abstract

OBJECTIVE: To examine performance criteria (i.e., sensitivity, specificity, positive predictive value [PPV], negative predictive value [NPV], likelihood ratios [LR], area under receiver operating characteristic curve [AUROC]) of a 10-item brief geriatric assessment (BGA) for the prediction of prolonged length hospital stay (LHS) in older patients hospitalized in acute care wards after an emergency department (ED) visit, using artificial neural networks (ANNs); and to describe the contribution of each BGA item to the predictive accuracy using the AUROC value.
METHODS: A total of 993 geriatric ED users admitted to acute care wards were included in this prospective cohort study. Age >85years, gender male, polypharmacy, non use of formal and/or informal home-help services, history of falls, temporal disorientation, place of living, reasons and nature for ED admission, and use of psychoactive drugs composed the 10 items of BGA and were recorded at the ED admission. The prolonged LHS was defined as the top third of LHS. The ANNs were conducted using two feeds forward (multilayer perceptron [MLP] and modified MLP).
RESULTS: The best performance was reported with the modified MLP involving the 10 items (sensitivity=62.7%; specificity=96.6%; PPV=87.1; NPV=87.5; positive LR=18.2; AUC=90.5). In this model, presence of chronic conditions had the highest contributions (51.3%) in AUROC value.
CONCLUSIONS: The 10-item BGA appears to accurately predict prolonged LHS, using the ANN MLP method, showing the best criteria performance ever reported until now. Presence of chronic conditions was the main contributor for the predictive accuracy.
Copyright © 2015 European Federation of Internal Medicine. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Artificial neural network; Elderly; Inpatients; Length of hospital stay; Screening

Mesh:

Year:  2015        PMID: 26142183     DOI: 10.1016/j.ejim.2015.06.002

Source DB:  PubMed          Journal:  Eur J Intern Med        ISSN: 0953-6205            Impact factor:   4.487


  8 in total

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2.  Use of a machine learning framework to predict substance use disorder treatment success.

Authors:  Laura Acion; Diana Kelmansky; Mark van der Laan; Ethan Sahker; DeShauna Jones; Stephan Arndt
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3.  Age effect on the prediction of risk of prolonged length hospital stay in older patients visiting the emergency department: results from a large prospective geriatric cohort study.

Authors:  C P Launay; A Kabeshova; A Lanoé; J Chabot; E J Levinoff; O Beauchet
Journal:  BMC Geriatr       Date:  2018-05-30       Impact factor: 3.921

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Authors:  Olivier Beauchet; Shek Fung; Cyrille P Launay; Liam Anders Cooper-Brown; Jonathan Afilalo; Paul Herbert; Marc Afilalo; Julia Chabot
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5.  Prognosis tools for short-term adverse events in older emergency department users: result of a Québec observational prospective cohort.

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7.  Predicting in-hospital length of stay: a two-stage modeling approach to account for highly skewed data.

Authors:  Zhenhui Xu; Congwen Zhao; Charles D Scales; Ricardo Henao; Benjamin A Goldstein
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8.  Length of Hospital Stay Prediction at the Admission Stage for Cardiology Patients Using Artificial Neural Network.

Authors:  Pei-Fang Jennifer Tsai; Po-Chia Chen; Yen-You Chen; Hao-Yuan Song; Hsiu-Mei Lin; Fu-Man Lin; Qiou-Pieng Huang
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  8 in total

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