Abstract

Background: Successful weaning from mechanical ventilation is important for patients in intensive care units (ICUs). The aim was to construct neural networks to predict successful extubation in ventilated patients in ICUs. Methods: Data from 1 December 2009 through 31 December 2011 of 3602 patients with planned extubation in Chi-Mei Medical Center’s ICUs was used to train and test an artificial neural network (ANN). The input was 37 clinical risk factors, and the output was a failed extubation prediction. Results: One hundred eighty-five patients (5.1%) had a failed extubation. Multivariate analyses revealed that failure was positively associated with therapeutic intervention scoring system (TISS) scores (odds ratio [OR]: 1.814; 95% Confidence Interval [CI]: 1.283–2.563), chronic hemodialysis (OR: 12.264; 95% CI: 8.556–17.580), rapid shallow breathing (RSI) (OR: 2.003; 95% CI: 1.378–2.910), and pre-extubation heart rate (OR: 1.705; 95% CI: 1.173–2.480), but negatively associated with pre-extubation PaO2/FiO2 (OR: 0.529; 95%: 0.370–0.750) and maximum expiratory pressure (MEP) (OR: 0.610; 95% CI: 0.413–0.899). A multilayer perceptron ANN model with 19 neurons in a hidden layer was developed. The overall performance of this model was F1: 0.867, precision: 0.939, and recall: 0.822. The area under the receiver operating characteristic curve (AUC) was 0.85, which is better than any one of the following predictors: TISS: 0.58 (95% CI: 0.54–0.62; p < 0.001); 0.58 (95% CI: 0.53–0.62; p < 0.001); and RSI: 0.54 (95% CI: 0.49–0.58; p = 0.097). Conclusions: The ANN performed well when predicting failed extubation, and it will help predict successful planned extubation.

Highlights

  • A significant percentage of intensive care unit (ICU) patients require endotracheal intubation [1]

  • Multivariate analyses revealed that failure was positively associated with therapeutic intervention scoring system (TISS) scores, chronic hemodialysis (OR: 12.264; 95% confidence intervals (CIs): 8.556–17.580), rapid shallow breathing (RSI) (OR: 2.003; 95% CI: 1.378–2.910), and pre-extubation heart rate (OR: 1.705; 95% CI: 1.173–2.480), but negatively associated with pre-extubation PaO2/FiO2 (OR: 0.529; 95%: 0.370–0.750) and maximum expiratory pressure (MEP) (OR: 0.610; 95% CI: 0.413–0.899)

  • There is a significant difference in the TISS score, maximum expiratory pressure (MEP), and rapid shallow-breathing index (RSI) between the patients in the failed and successful extubation groups

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Summary

Introduction

A significant percentage of intensive care unit (ICU) patients require endotracheal intubation [1]. To reduce the risk of prolonged ventilatory support, it is crucial to determine the appropriate time for weaning a patient from mechanical ventilation [4] because extubation failure might occur in premature extubation. Extubation failure often occurs (~19% reintubation required) even after the comprehensive assessment [6] This suggests that the ability of clinicians to predict successful extubation is limited; a more powerful tool is required to help determine the optimal time to extubate [7]. Artificial neural networks are computer-based algorithms that mimic the habits and structures of neurons. They have been successfully used to predict mortality in trauma patients [10]. It was aimed to construct an ANN model for clinicians making extubation decisions

Patients and Setting
Constructing Training Data Set
Data Description
Algorithm and Training
Statistical Analyses
Demographic Features of Patients
Precision
Conclusions
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