Development of a prediction model for hypotension after induction of anesthesia using machine learning.
Arterial hypotension during the early phase of anesthesia can lead to adverse outcomes such as a prolonged postoperative stay or even death. Predicting hypotension during anesthesia induction is complicated by its diverse causes. We investigated the feasibility of developing a machine-learning model...
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doaj-18c99cc6bccd4390bd13fb01e19ebe5c2021-03-03T21:40:23ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01154e023117210.1371/journal.pone.0231172Development of a prediction model for hypotension after induction of anesthesia using machine learning.Ah Reum KangJihyun LeeWoohyun JungMisoon LeeSun Young ParkJiyoung WooSang Hyun KimArterial hypotension during the early phase of anesthesia can lead to adverse outcomes such as a prolonged postoperative stay or even death. Predicting hypotension during anesthesia induction is complicated by its diverse causes. We investigated the feasibility of developing a machine-learning model to predict postinduction hypotension. Naïve Bayes, logistic regression, random forest, and artificial neural network models were trained to predict postinduction hypotension, occurring between tracheal intubation and incision, using data for the period from between the start of anesthesia induction and immediately before tracheal intubation obtained from an anesthesia monitor, a drug administration infusion pump, an anesthesia machine, and from patients' demographics, together with preexisting disease information from electronic health records. Among 222 patients, 126 developed postinduction hypotension. The random-forest model showed the best performance, with an area under the receiver operating characteristic curve of 0.842 (95% confidence interval [CI]: 0.736-0.948). This was higher than that for the Naïve Bayes (0.778; 95% CI: 0.65-0.898), logistic regression (0.756; 95% CI: 0.630-0.881), and artificial-neural-network (0.760; 95% CI: 0.640-0.880) models. The most important features affecting the accuracy of machine-learning prediction were a patient's lowest systolic blood pressure, lowest mean blood pressure, and mean systolic blood pressure before tracheal intubation. We found that machine-learning models using data obtained from various anesthesia machines between the start of anesthesia induction and immediately before tracheal intubation can predict hypotension occurring during the period between tracheal intubation and incision.https://doi.org/10.1371/journal.pone.0231172 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ah Reum Kang Jihyun Lee Woohyun Jung Misoon Lee Sun Young Park Jiyoung Woo Sang Hyun Kim |
spellingShingle |
Ah Reum Kang Jihyun Lee Woohyun Jung Misoon Lee Sun Young Park Jiyoung Woo Sang Hyun Kim Development of a prediction model for hypotension after induction of anesthesia using machine learning. PLoS ONE |
author_facet |
Ah Reum Kang Jihyun Lee Woohyun Jung Misoon Lee Sun Young Park Jiyoung Woo Sang Hyun Kim |
author_sort |
Ah Reum Kang |
title |
Development of a prediction model for hypotension after induction of anesthesia using machine learning. |
title_short |
Development of a prediction model for hypotension after induction of anesthesia using machine learning. |
title_full |
Development of a prediction model for hypotension after induction of anesthesia using machine learning. |
title_fullStr |
Development of a prediction model for hypotension after induction of anesthesia using machine learning. |
title_full_unstemmed |
Development of a prediction model for hypotension after induction of anesthesia using machine learning. |
title_sort |
development of a prediction model for hypotension after induction of anesthesia using machine learning. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2020-01-01 |
description |
Arterial hypotension during the early phase of anesthesia can lead to adverse outcomes such as a prolonged postoperative stay or even death. Predicting hypotension during anesthesia induction is complicated by its diverse causes. We investigated the feasibility of developing a machine-learning model to predict postinduction hypotension. Naïve Bayes, logistic regression, random forest, and artificial neural network models were trained to predict postinduction hypotension, occurring between tracheal intubation and incision, using data for the period from between the start of anesthesia induction and immediately before tracheal intubation obtained from an anesthesia monitor, a drug administration infusion pump, an anesthesia machine, and from patients' demographics, together with preexisting disease information from electronic health records. Among 222 patients, 126 developed postinduction hypotension. The random-forest model showed the best performance, with an area under the receiver operating characteristic curve of 0.842 (95% confidence interval [CI]: 0.736-0.948). This was higher than that for the Naïve Bayes (0.778; 95% CI: 0.65-0.898), logistic regression (0.756; 95% CI: 0.630-0.881), and artificial-neural-network (0.760; 95% CI: 0.640-0.880) models. The most important features affecting the accuracy of machine-learning prediction were a patient's lowest systolic blood pressure, lowest mean blood pressure, and mean systolic blood pressure before tracheal intubation. We found that machine-learning models using data obtained from various anesthesia machines between the start of anesthesia induction and immediately before tracheal intubation can predict hypotension occurring during the period between tracheal intubation and incision. |
url |
https://doi.org/10.1371/journal.pone.0231172 |
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