Prediction Model of Extubation Outcomes in Critically Ill Patients: A Multicenter Prospective Cohort Study.
Aiko TanakaDaijiro KabataOsamu HiraoJunko KosakaNana FurushimaYuichi MakiAkinori UchiyamaMoritoki EgiAyumi ShintaniHiroshi MorimatsuSatoshi MizobuchiYoshifumi KotakeYuji FujinoPublished in: Journal of clinical medicine (2022)
Liberation from mechanical ventilation is of great importance owing to related complications from extended ventilation time. In this prospective multicenter study, we aimed to construct a versatile model for predicting extubation outcomes in critical care settings using obtainable physiological predictors. The study included patients who had been extubated after a successful 30 min spontaneous breathing trial (SBT). A multivariable logistic regression model was constructed to predict extubation outcomes (successful extubation without reintubation and uneventful extubation without reintubation or noninvasive respiratory support) using eight parameters: age, heart failure, respiratory disease, rapid shallow breathing index (RSBI), PaO 2 /FIO 2 , Glasgow Coma Scale score, fluid balance, and endotracheal suctioning episodes. Of 499 patients, 453 (90.8%) and 328 (65.7%) achieved successful and uneventful extubation, respectively. The areas under the curve for successful and uneventful extubation in the novel prediction model were 0.69 (95% confidence interval (CI), 0.62-0.77) and 0.70 (95% CI, 0.65-0.74), respectively, which were significantly higher than those in the conventional model solely using RSBI (0.58 (95% CI, 0.50-0.66) and 0.54 (95% CI, 0.49-0.60), p = 0.004 and <0.001, respectively). The model was validated using a bootstrap method, and an online application was developed for automatic calculation. Our model, which is based on a combination of generally obtainable parameters, established an accessible method for predicting extubation outcomes after a successful SBT.
Keyphrases
- mechanical ventilation
- respiratory failure
- cardiac surgery
- acute respiratory distress syndrome
- intensive care unit
- heart failure
- acute kidney injury
- clinical trial
- left ventricular
- end stage renal disease
- machine learning
- study protocol
- newly diagnosed
- randomized controlled trial
- deep learning
- patient reported outcomes
- peritoneal dialysis
- quantum dots
- double blind
- sensitive detection