A phenotypic risk score for predicting mortality in sickle cell disease.
Vandana SachdevXin TianYuan GuJames NicholsStanislav SidenkoWen LiAndrea BeriW Austin LayneDarlene AllenColin O WuSwee Lay Lay TheinPublished in: British journal of haematology (2021)
Risk assessment for patients with sickle cell disease (SCD) remains challenging as it depends on an individual physician's experience and ability to integrate a variety of test results. We aimed to provide a new risk score that combines clinical, laboratory, and imaging data. In a prospective cohort of 600 adult patients with SCD, we assessed the relationship of 70 baseline covariates to all-cause mortality. Random survival forest and regularised Cox regression machine learning (ML) methods were used to select top predictors. Multivariable models and a risk score were developed and internally validated. Over a median follow-up of 4·3 years, 131 deaths were recorded. Multivariable models were developed using nine independent predictors of mortality: tricuspid regurgitant velocity, estimated right atrial pressure, mitral E velocity, left ventricular septal thickness, body mass index, blood urea nitrogen, alkaline phosphatase, heart rate and age. Our prognostic risk score had superior performance with a bias-corrected C-statistic of 0·763. Our model stratified patients into four groups with significantly different 4-year mortality rates (3%, 11%, 35% and 75% respectively). Using readily available variables from patients with SCD, we applied ML techniques to develop and validate a mortality risk scoring method that reflects the summation of cardiopulmonary, renal and liver end-organ damage. Trial Registration: ClinicalTrials.gov Identifier: NCT#00011648.
Keyphrases
- sickle cell disease
- heart rate
- left ventricular
- mitral valve
- body mass index
- machine learning
- risk assessment
- cardiovascular events
- aortic stenosis
- ejection fraction
- end stage renal disease
- heart rate variability
- left atrial
- risk factors
- blood pressure
- emergency department
- newly diagnosed
- hypertrophic cardiomyopathy
- heart failure
- chronic kidney disease
- artificial intelligence
- blood flow
- high resolution
- study protocol
- peritoneal dialysis
- randomized controlled trial
- physical activity
- deep learning
- coronary artery disease
- cardiovascular disease
- electronic health record
- type diabetes
- heavy metals
- percutaneous coronary intervention
- open label