A proof-of-concept study on mortality prediction with machine learning algorithms using burn intensive care data.
Jian FransénJohan LundinFilip FredénFredrik HussPublished in: Scars, burns & healing (2022)
Burn injuries are one of the most common traumatic injuries especially in countries with limited prevention and healthcare resources. To treat a patient with large burns who has been admitted to an intensive care unit, it is often necessary to assess the risk of a fatal outcome. Physicians traditionally use simplified scores to calculate risks. One commonly used score, the Baux score, uses age of the patient and the size of the burn to predict the risk of death. Adding the factor of inhalation injury, the score is then called the revised Baux score. However, there are a number of additional causes that can influence the risk of fatal outcomes that Baux scores do not take into account. Machine learning is a method of data modelling where the system learns to predict outcomes based on previous cases and is a branch of artificial intelligence. In this study we evaluated several machine learning methods for outcome prediction in patients admitted for burn injury. We gathered data on 93 patients at admission to the intensive care unit and our experiments show that machine learning methods can reach an accuracy comparable with Baux scores in calculating the risk of fatal outcomes. This study represents a proof of principle and future studies on larger patient series are required to verify our results as well as to evaluate the methods on patients in real-life situations.
Keyphrases
- machine learning
- artificial intelligence
- big data
- intensive care unit
- healthcare
- deep learning
- case report
- end stage renal disease
- electronic health record
- wound healing
- emergency department
- primary care
- chronic kidney disease
- newly diagnosed
- type diabetes
- metabolic syndrome
- peritoneal dialysis
- mechanical ventilation
- current status
- health insurance
- weight loss
- skeletal muscle