scholarly journals Predictors for extubation failure in COVID-19 patients using a machine learning approach

Critical Care ◽  
2021 ◽  
Vol 25 (1) ◽  
Author(s):  
Lucas M. Fleuren ◽  
Tariq A. Dam ◽  
Michele Tonutti ◽  
Daan P. de Bruin ◽  
Robbert C. A. Lalisang ◽  
...  

Abstract Introduction Determining the optimal timing for extubation can be challenging in the intensive care. In this study, we aim to identify predictors for extubation failure in critically ill patients with COVID-19. Methods We used highly granular data from 3464 adult critically ill COVID patients in the multicenter Dutch Data Warehouse, including demographics, clinical observations, medications, fluid balance, laboratory values, vital signs, and data from life support devices. All intubated patients with at least one extubation attempt were eligible for analysis. Transferred patients, patients admitted for less than 24 h, and patients still admitted at the time of data extraction were excluded. Potential predictors were selected by a team of intensive care physicians. The primary and secondary outcomes were extubation without reintubation or death within the next 7 days and within 48 h, respectively. We trained and validated multiple machine learning algorithms using fivefold nested cross-validation. Predictor importance was estimated using Shapley additive explanations, while cutoff values for the relative probability of failed extubation were estimated through partial dependence plots. Results A total of 883 patients were included in the model derivation. The reintubation rate was 13.4% within 48 h and 18.9% at day 7, with a mortality rate of 0.6% and 1.0% respectively. The grandient-boost model performed best (area under the curve of 0.70) and was used to calculate predictor importance. Ventilatory characteristics and settings were the most important predictors. More specifically, a controlled mode duration longer than 4 days, a last fraction of inspired oxygen higher than 35%, a mean tidal volume per kg ideal body weight above 8 ml/kg in the day before extubation, and a shorter duration in assisted mode (< 2 days) compared to their median values. Additionally, a higher C-reactive protein and leukocyte count, a lower thrombocyte count, a lower Glasgow coma scale and a lower body mass index compared to their medians were associated with extubation failure. Conclusion The most important predictors for extubation failure in critically ill COVID-19 patients include ventilatory settings, inflammatory parameters, neurological status, and body mass index. These predictors should therefore be routinely captured in electronic health records.

Sensors ◽  
2021 ◽  
Vol 21 (7) ◽  
pp. 2361
Author(s):  
Giovanni Delnevo ◽  
Giacomo Mancini ◽  
Marco Roccetti ◽  
Paola Salomoni ◽  
Elena Trombini ◽  
...  

This study investigates on the relationship between affect-related psychological variables and Body Mass Index (BMI). We have utilized a novel method based on machine learning (ML) algorithms that forecast unobserved BMI values based on psychological variables, like depression, as predictors. We have employed various machine learning algorithms, including gradient boosting and random forest, with psychological variables relative to 221 subjects to predict both the BMI values and the BMI status (normal, overweight, and obese) of those subjects. We have found that the psychological variables in use allow one to predict both the BMI values (with a mean absolute error of 5.27–5.50) and the BMI status with an accuracy of over 80% (metric: F1-score). Further, our study has also confirmed the particular efficacy of psychological variables of negative type, such as depression for example, compared to positive ones, to achieve excellent predictive BMI values.


2013 ◽  
Vol 41 (8) ◽  
pp. 1878-1883 ◽  
Author(s):  
Peter Pickkers ◽  
Nicolette de Keizer ◽  
Joost Dusseljee ◽  
Daan Weerheijm ◽  
Johannes G. van der Hoeven ◽  
...  

2018 ◽  
Vol 2 (4) ◽  
pp. 224
Author(s):  
WI Wan Nasruddin ◽  
ZA Nor Hidayah ◽  
A Nazri ◽  
WI Wan Azzlan ◽  
I Ruwaida ◽  
...  

In December 2014, Malaysia had suffered nationwide floods after unprecedented monsoon rains overwhelmed several parts of the country. The East Coast areas of Malaysia were especially badly affected, specifically for the state of Kelantan, whereby a total of 170,000 victims were evacuated to the evacuation centres. This was the worst flood in the last 40 years and has been referred to by the locals as ‘Bah Kuning’. As a tertiary centre for the state of Kelantan with a total number of hospital beds of 937, HRPZ II was also badly compromised during this time. The electricity supply to the main hospital building was shut-down during this period and the hospital had managed to maintain its operations hUP_(ÛT_e power from a generator which had faced the risk of being shut down if the water levels had increased further. These issues might have caused a worse impact viaa possible loss of electrical and oxygen supply and non-functional life support systems. In relation to this flood disaster, the Anaesthesiology and Intensive Care Unit of HRPZ II would like to share the experiences of handling ventilated and critically ill-patients for evacuation during the massive floods in 2014 from the ICU of Hospital Raja Perempuan Zainab II to “an open stage with no facilities”. During this time, we had a total of 19 patients in our 21-bedded Intensive Care Unit. The challenge was the need to evacuate all the critically ill patients and to set-up a new ICU in a safer place immediately at the time.International Journal of Human and Health Sciences Vol. 02 No. 04 October’18. Page : 224-227


2017 ◽  
Vol 36 ◽  
pp. S25
Author(s):  
W. Druml ◽  
W. Winnicki ◽  
P. Metnitz ◽  
P. Zajic ◽  
T. Fellinger ◽  
...  

2020 ◽  
Vol 10 (1) ◽  
Author(s):  
Qiangrong Zhai ◽  
Zi Lin ◽  
Hongxia Ge ◽  
Yang Liang ◽  
Nan Li ◽  
...  

AbstractThe number of critically ill patients has increased globally along with the rise in emergency visits. Mortality prediction for critical patients is vital for emergency care, which affects the distribution of emergency resources. Traditional scoring systems are designed for all emergency patients using a classic mathematical method, but risk factors in critically ill patients have complex interactions, so traditional scoring cannot as readily apply to them. As an accurate model for predicting the mortality of emergency department critically ill patients is lacking, this study’s objective was to develop a scoring system using machine learning optimized for the unique case of critical patients in emergency departments. We conducted a retrospective cohort study in a tertiary medical center in Beijing, China. Patients over 16 years old were included if they were alive when they entered the emergency department intensive care unit system from February 2015 and December 2015. Mortality up to 7 days after admission into the emergency department was considered as the primary outcome, and 1624 cases were included to derive the models. Prospective factors included previous diseases, physiologic parameters, and laboratory results. Several machine learning tools were built for 7-day mortality using these factors, for which their predictive accuracy (sensitivity and specificity) was evaluated by area under the curve (AUC). The AUCs were 0.794, 0.840, 0.849 and 0.822 respectively, for the SVM, GBDT, XGBoost and logistic regression model. In comparison with the SAPS 3 model (AUC = 0.826), the discriminatory capability of the newer machine learning methods, XGBoost in particular, is demonstrated to be more reliable for predicting outcomes for emergency department intensive care unit patients.


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