A new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.

Early diagnosis and prevention play a crucial role in the treatment of patients with ARDS. The definition of ARDS requires an arterial blood gas to define the ratio of partial pressure of arterial oxygen to fraction of inspired oxygen (PaO2/FiO2 ratio). However, many patients with ARDS do not have a...

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Main Authors: Pengcheng Yang, Taihu Wu, Ming Yu, Feng Chen, Chunchen Wang, Jing Yuan, Jiameng Xu, Guang Zhang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0226962
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spelling doaj-e2b48b7fa0a94478aa8a8059cdef63b22021-06-19T05:09:22ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01152e022696210.1371/journal.pone.0226962A new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.Pengcheng YangTaihu WuMing YuFeng ChenChunchen WangJing YuanJiameng XuGuang ZhangEarly diagnosis and prevention play a crucial role in the treatment of patients with ARDS. The definition of ARDS requires an arterial blood gas to define the ratio of partial pressure of arterial oxygen to fraction of inspired oxygen (PaO2/FiO2 ratio). However, many patients with ARDS do not have a blood gas measured, which may result in under-diagnosis of the condition. Using data from MIMIC-III Database, we propose an algorithm based on patient non-invasive physiological parameters to estimate P/F levels to aid in the diagnosis of ARDS disease. The machine learning algorithm was combined with the filter feature selection method to study the correlation of various noninvasive parameters from patients to identify the ARDS disease. Cross-validation techniques are used to verify the performance of algorithms for different feature subsets. XGBoost using the optimal feature subset had the best performance of ARDS identification with the sensitivity of 84.03%, the specificity of 87.75% and the AUC of 0.9128. For the four machine learning algorithms, reducing a certain number of features, AUC can still above 0.8. Compared to Rice Linear Model, this method has the advantages of high reliability and continually monitoring the development of patients with ARDS.https://doi.org/10.1371/journal.pone.0226962
collection DOAJ
language English
format Article
sources DOAJ
author Pengcheng Yang
Taihu Wu
Ming Yu
Feng Chen
Chunchen Wang
Jing Yuan
Jiameng Xu
Guang Zhang
spellingShingle Pengcheng Yang
Taihu Wu
Ming Yu
Feng Chen
Chunchen Wang
Jing Yuan
Jiameng Xu
Guang Zhang
A new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.
PLoS ONE
author_facet Pengcheng Yang
Taihu Wu
Ming Yu
Feng Chen
Chunchen Wang
Jing Yuan
Jiameng Xu
Guang Zhang
author_sort Pengcheng Yang
title A new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.
title_short A new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.
title_full A new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.
title_fullStr A new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.
title_full_unstemmed A new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.
title_sort new method for identifying the acute respiratory distress syndrome disease based on noninvasive physiological parameters.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Early diagnosis and prevention play a crucial role in the treatment of patients with ARDS. The definition of ARDS requires an arterial blood gas to define the ratio of partial pressure of arterial oxygen to fraction of inspired oxygen (PaO2/FiO2 ratio). However, many patients with ARDS do not have a blood gas measured, which may result in under-diagnosis of the condition. Using data from MIMIC-III Database, we propose an algorithm based on patient non-invasive physiological parameters to estimate P/F levels to aid in the diagnosis of ARDS disease. The machine learning algorithm was combined with the filter feature selection method to study the correlation of various noninvasive parameters from patients to identify the ARDS disease. Cross-validation techniques are used to verify the performance of algorithms for different feature subsets. XGBoost using the optimal feature subset had the best performance of ARDS identification with the sensitivity of 84.03%, the specificity of 87.75% and the AUC of 0.9128. For the four machine learning algorithms, reducing a certain number of features, AUC can still above 0.8. Compared to Rice Linear Model, this method has the advantages of high reliability and continually monitoring the development of patients with ARDS.
url https://doi.org/10.1371/journal.pone.0226962
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