4.3 Article

A Comparative Study on Predication of Appropriate Mechanical Ventilation Mode through Machine Learning Approach

Journal

BIOENGINEERING-BASEL
Volume 10, Issue 4, Pages -

Publisher

MDPI
DOI: 10.3390/bioengineering10040418

Keywords

mechanical ventilation (MV); machine learning (ML); ventilation mode (VM); optimization; intensive care unit (ICU)

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Ventilation mode is a crucial ventilator setting selected by knowledgeable critical care therapists. This study aims to create a deployable model for selecting appropriate ventilation mode using machine learning. Patient data is used to create a data frame with feature columns and an output column. Six machine learning algorithms were compared, and the Random-Forest Algorithm showed the highest precision and accuracy in predicting ventilation modes. Machine learning techniques, including deep learning, can also be used for adjusting other settings in mechanical ventilation.
Ventilation mode is one of the most crucial ventilator settings, selected and set by knowledgeable critical care therapists in a critical care unit. The application of a particular ventilation mode must be patient-specific and patient-interactive. The main aim of this study is to provide a detailed outline regarding ventilation mode settings and determine the best machine learning method to create a deployable model for the appropriate selection of ventilation mode on a per breath basis. Per-breath patient data is utilized, preprocessed and finally a data frame is created consisting of five feature columns (inspiratory and expiratory tidal volume, minimum pressure, positive end-expiratory pressure, and previous positive end-expiratory pressure) and one output column (output column consisted of modes to be predicted). The data frame has been split into training and testing datasets with a test size of 30%. Six machine learning algorithms were trained and compared for performance, based on the accuracy, F1 score, sensitivity, and precision. The output shows that the Random-Forest Algorithm was the most precise and accurate in predicting all ventilation modes correctly, out of the all the machine learning algorithms trained. Thus, the Random-Forest machine learning technique can be utilized for predicting optimal ventilation mode setting, if it is properly trained with the help of the most relevant data. Aside from ventilation mode, control parameter settings, alarm settings and other settings may also be adjusted for the mechanical ventilation process utilizing appropriate machine learning, particularly deep learning approaches.

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