Development and validation of a machine learning model using electronic health records to predict trauma- and stressor-related psychiatric disorders after hospitalization with sepsis.
Santiago PapiniEsti IturraldeYun LuJohn D GreeneFernando BarredaStacy A SterlingVincent X LiuPublished in: Translational psychiatry (2023)
A significant minority of individuals develop trauma- and stressor-related disorders (TSRD) after surviving sepsis, a life-threatening immune response to infections. Accurate prediction of risk for TSRD can facilitate targeted early intervention strategies, but many existing models rely on research measures that are impractical to incorporate to standard emergency department workflows. To increase the feasibility of implementation, we developed models that predict TSRD in the year after survival from sepsis using only electronic health records from the hospitalization (n = 217,122 hospitalizations from 2012-2015). The optimal model was evaluated in a temporally independent prospective test sample (n = 128,783 hospitalizations from 2016-2017), where patients in the highest-risk decile accounted for nearly one-third of TSRD cases. Our approach demonstrates that risk for TSRD after sepsis can be stratified without additional assessment burden on clinicians and patients, which increases the likelihood of model implementation in hospital settings.
Keyphrases
- electronic health record
- emergency department
- end stage renal disease
- machine learning
- intensive care unit
- acute kidney injury
- healthcare
- ejection fraction
- septic shock
- primary care
- chronic kidney disease
- newly diagnosed
- randomized controlled trial
- adverse drug
- peritoneal dialysis
- risk factors
- clinical decision support
- drug induced
- trauma patients