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Tytuł pozycji:

Machine learning-based prediction models for accidental hypothermia patients

Tytuł:
Machine learning-based prediction models for accidental hypothermia patients
Autorzy:
Yohei Okada
Tasuku Matsuyama
Sachiko Morita
Naoki Ehara
Nobuhiro Miyamae
Takaaki Jo
Yasuyuki Sumida
Nobunaga Okada
Makoto Watanabe
Masahiro Nozawa
Ayumu Tsuruoka
Yoshihiro Fujimoto
Yoshiki Okumura
Tetsuhisa Kitamura
Ryoji Iiduka
Shigeru Ohtsuru
Temat:
Accidental hypothermia
Machine learning
Artificial intelligence
Lasso
Random forest
Gradient boosting tree
Medical emergencies. Critical care. Intensive care. First aid
RC86-88.9
Źródło:
Journal of Intensive Care, Vol 9, Iss 1, Pp 1-11 (2021)
Wydawca:
BMC, 2021.
Rok publikacji:
2021
Kolekcja:
LCC:Medical emergencies. Critical care. Intensive care. First aid
Typ dokumentu:
article
Opis pliku:
electronic resource
Język:
English
ISSN:
2052-0492
Relacje:
https://doaj.org/toc/2052-0492
DOI:
10.1186/s40560-021-00525-z
Dostęp URL:
https://doaj.org/article/3715749657c7413e9dc3cc49d2a501e9  Link otwiera się w nowym oknie
Numer akcesji:
edsdoj.3715749657c7413e9dc3cc49d2a501e9
Czasopismo naukowe
Abstract Background Accidental hypothermia is a critical condition with high risks of fatal arrhythmia, multiple organ failure, and mortality; however, there is no established model to predict the mortality. The present study aimed to develop and validate machine learning-based models for predicting in-hospital mortality using easily available data at hospital admission among the patients with accidental hypothermia. Method This study was secondary analysis of multi-center retrospective cohort study (J-point registry) including patients with accidental hypothermia. Adult patients with body temperature 35.0 °C or less at emergency department were included. Prediction models for in-hospital mortality using machine learning (lasso, random forest, and gradient boosting tree) were made in development cohort from six hospitals, and the predictive performance were assessed in validation cohort from other six hospitals. As a reference, we compared the SOFA score and 5A score. Results We included total 532 patients in the development cohort [N = 288, six hospitals, in-hospital mortality: 22.0% (64/288)], and the validation cohort [N = 244, six hospitals, in-hospital mortality 27.0% (66/244)]. The C-statistics [95% CI] of the models in validation cohorts were as follows: lasso 0.784 [0.717–0.851] , random forest 0.794[0.735–0.853], gradient boosting tree 0.780 [0.714–0.847], SOFA 0.787 [0.722–0.851], and 5A score 0.750[0.681–0.820]. The calibration plot showed that these models were well calibrated to observed in-hospital mortality. Decision curve analysis indicated that these models obtained clinical net-benefit. Conclusion This multi-center retrospective cohort study indicated that machine learning-based prediction models could accurately predict in-hospital mortality in validation cohort among the accidental hypothermia patients. These models might be able to support physicians and patient’s decision-making. However, the applicability to clinical settings, and the actual clinical utility is still unclear; thus, further prospective study is warranted to evaluate the clinical usefulness.
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