z-logo
open-access-imgOpen Access
Machine learning model for predicting the optimal depth of tracheal tube insertion in pediatric patients: A retrospective cohort study
Author(s) -
Jae-Geum Shim,
Kyung Nam Ryu,
Sung Hyun Lee,
Eunah Cho,
Sungho Lee,
Jin Hee Ahn
Publication year - 2021
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0257069
Subject(s) - medicine , confidence interval , retrospective cohort study , support vector machine , surgery , algorithm , mathematics , machine learning , computer science
Objective To construct a prediction model for optimal tracheal tube depth in pediatric patients using machine learning. Methods Pediatric patients aged <7 years who received post-operative ventilation after undergoing surgery between January 2015 and December 2018 were investigated in this retrospective study. The optimal location of the tracheal tube was defined as the median of the distance between the upper margin of the first thoracic(T1) vertebral body and the lower margin of the third thoracic(T3) vertebral body. We applied four machine learning models: random forest, elastic net, support vector machine, and artificial neural network and compared their prediction accuracy to three formula-based methods, which were based on age, height, and tracheal tube internal diameter(ID). Results For each method, the percentage with optimal tracheal tube depth predictions in the test set was calculated as follows: 79.0 (95% confidence interval [CI], 73.5 to 83.6) for random forest, 77.4 (95% CI, 71.8 to 82.2; P = 0 . 719 ) for elastic net, 77.0 (95% CI, 71.4 to 81.8; P = 0 . 486 ) for support vector machine, 76.6 (95% CI, 71.0 to 81.5; P = 1 . 0 ) for artificial neural network, 66.9 (95% CI, 60.9 to 72.5; P < 0 . 001 ) for the age-based formula, 58.5 (95% CI, 52.3 to 64.4; P< 0.001) for the tube ID-based formula, and 44.4 (95% CI, 38.3 to 50.6; P < 0 . 001 ) for the height-based formula. Conclusions In this study, the machine learning models predicted the optimal tracheal tube tip location for pediatric patients more accurately than the formula-based methods. Machine learning models using biometric variables may help clinicians make decisions regarding optimal tracheal tube depth in pediatric patients.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here