Machine learning approach for predicting inhalation injury in patients with burns

The coronavirus disease pandemic has had a tangible impact on bronchoscopy for burn inpatients due to isolation and triage measures. We utilised the machine-learning approach to identify risk factors for predicting mild and severe inhalation injury and whether patients with burns experienced inhalat...

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Veröffentlicht in:Burns 2023-11, Vol.49 (7), p.1592-1601
Hauptverfasser: Yang, Shih-Yi, Huang, Chih-Jung, Yen, Cheng-I., Kao, Yu-Ching, Hsiao, Yen-Chang, Yang, Jui-Yung, Chang, Shu-Yin, Chuang, Shiow-Shuh, Chen, Hung-Chang
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Sprache:eng
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Zusammenfassung:The coronavirus disease pandemic has had a tangible impact on bronchoscopy for burn inpatients due to isolation and triage measures. We utilised the machine-learning approach to identify risk factors for predicting mild and severe inhalation injury and whether patients with burns experienced inhalation injury. We also examined the ability of two dichotomous models to predict clinical outcomes including mortality, pneumonia, and duration of hospitalisation. A retrospective 14-year single-centre dataset of 341 intubated patients with burns with suspected inhalation injury was established. The medical data on day one of admission and bronchoscopy-diagnosed inhalation injury grade were compiled using a gradient boosting-based machine-learning algorithm to create two prediction models: model 1, mild vs. severe inhalation injury; and model 2, no inhalation injury vs. inhalation injury. The area under the curve (AUC) for model 1 was 0·883, indicating excellent discrimination. The AUC for model 2 was 0·862, indicating acceptable discrimination. In model 1, the incidence of pneumonia (P 
ISSN:0305-4179
1879-1409
1879-1409
DOI:10.1016/j.burns.2023.03.011