Predicting Sepsis Mortality in a Population-Based National Database: Machine Learning Approach.
James Yeongjun ParkTzu-Chun HsuJiun-Ruey HuChun-Yuan ChenWan-Ting HsuMatthew LeeJoshua HoChien-Chang LeePublished in: Journal of medical Internet research (2022)
ML approaches can improve sensitivity, specificity, positive predictive value, negative predictive value, discrimination, and calibration in predicting in-hospital mortality in patients hospitalized with sepsis in the United States. These models need further validation and could be applied to develop more accurate models to compare risk-standardized mortality rates across hospitals and geographic regions, paving the way for research and policy initiatives studying disparities in sepsis care.
Keyphrases
- healthcare
- septic shock
- acute kidney injury
- quality improvement
- intensive care unit
- machine learning
- end stage renal disease
- cardiovascular events
- newly diagnosed
- public health
- chronic kidney disease
- risk factors
- mental health
- cardiovascular disease
- emergency department
- coronary artery disease
- affordable care act
- chronic pain
- drug induced