This study introduces machine learning predictive models to predict the future values of the monitored vital signs of COVID-19 ICU patients. The main vital sign predictors include heart rate, respiration rate, and oxygen saturation. We investigated the performances of the developed predictive models by considering different approaches. The first predictive model was developed by considering the following vital signs: heart rate, blood pressure (systolic, diastolic and mean arterial, pulse pressure), respiration rate, and oxygen saturation. Similar to the first approach, the second model was developed using the same vital signs, but it was trained and tested based on a leave-one-subject-out approach. The third predictive model was developed ...
Despite the publication of great number of tools to aid decisions in COVID-19 patients, there is a l...
In this prospective, interventional, international study, we investigate continuous monitoring of ho...
This study aimed to develop risk scores based on clinical characteristics at presentation to predict...
This study introduces machine learning predictive models to predict the future values of the monitor...
peer reviewedThis study introduces machine learning predictive models to predict the future values o...
In this prospective, interventional, international study, we investigate continuous monitoring of ho...
Cardiovascular and chronic respiratory diseases are global threats to public health and cause approx...
Post-operative patients can deteriorate physiologically, leading to adverse events such as cardiac a...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
Thousands of in-hospital deaths each year in the UK are potentially preventable, being often precede...
Rationale Given the expanding number of COVID-19 cases and the potential for upcoming waves of infec...
Unrecognized patient deterioration can lead to high morbidity and mortality. Most existing deteriora...
Methods We developed a prediction model to predict patients at risk for mortality using only laborat...
This study aimed to develop risk scores based on clinical characteristics at presentation to predict...
Rationale: Given the expanding number of COVID-19 cases and the potential for new waves of infection...
Despite the publication of great number of tools to aid decisions in COVID-19 patients, there is a l...
In this prospective, interventional, international study, we investigate continuous monitoring of ho...
This study aimed to develop risk scores based on clinical characteristics at presentation to predict...
This study introduces machine learning predictive models to predict the future values of the monitor...
peer reviewedThis study introduces machine learning predictive models to predict the future values o...
In this prospective, interventional, international study, we investigate continuous monitoring of ho...
Cardiovascular and chronic respiratory diseases are global threats to public health and cause approx...
Post-operative patients can deteriorate physiologically, leading to adverse events such as cardiac a...
Early detection of patient deterioration in the Intensive Care Unit (ICU) can play a crucial role in...
Thousands of in-hospital deaths each year in the UK are potentially preventable, being often precede...
Rationale Given the expanding number of COVID-19 cases and the potential for upcoming waves of infec...
Unrecognized patient deterioration can lead to high morbidity and mortality. Most existing deteriora...
Methods We developed a prediction model to predict patients at risk for mortality using only laborat...
This study aimed to develop risk scores based on clinical characteristics at presentation to predict...
Rationale: Given the expanding number of COVID-19 cases and the potential for new waves of infection...
Despite the publication of great number of tools to aid decisions in COVID-19 patients, there is a l...
In this prospective, interventional, international study, we investigate continuous monitoring of ho...
This study aimed to develop risk scores based on clinical characteristics at presentation to predict...