Information Extraction From Electronic Health Records to Predict Readmission Following Acute Myocardial Infarction: Does Natural Language Processing Using Clinical Notes Improve Prediction of Readmission?
Jeremiah R BrownIben M RicketRuth M ReevesRashmee U ShahChristine A GoodrichGlen GobbelMeagan E StablerAmy M PerkinsFreneka MinterKevin C CoxChad DornJason DentonBruce E BrayRamkiran GouripeddiJohn HigginsWendy W ChapmanTodd MacKenzieMichael E MathenyPublished in: Journal of the American Heart Association (2022)
Background Social risk factors influence rehospitalization rates yet are challenging to incorporate into prediction models. Integration of social risk factors using natural language processing (NLP) and machine learning could improve risk prediction of 30-day readmission following an acute myocardial infarction. Methods and Results Patients were enrolled into derivation and validation cohorts. The derivation cohort included inpatient discharges from Vanderbilt University Medical Center between January 1, 2007, and December 31, 2016, with a primary diagnosis of acute myocardial infarction, who were discharged alive, and not transferred from another facility. The validation cohort included patients from Dartmouth-Hitchcock Health Center between April 2, 2011, and December 31, 2016, meeting the same eligibility criteria described above. Data from both sites were linked to Centers for Medicare & Medicaid Services administrative data to supplement 30-day hospital readmissions. Clinical notes from each cohort were extracted, and an NLP model was deployed, counting mentions of 7 social risk factors. Five machine learning models were run using clinical and NLP-derived variables. Model discrimination and calibration were assessed, and receiver operating characteristic comparison analyses were performed. The 30-day rehospitalization rates among the derivation (n=6165) and validation (n=4024) cohorts were 15.1% (n=934) and 10.2% (n=412), respectively. The derivation models demonstrated no statistical improvement in model performance with the addition of the selected NLP-derived social risk factors. Conclusions Social risk factors extracted using NLP did not significantly improve 30-day readmission prediction among hospitalized patients with acute myocardial infarction. Alternative methods are needed to capture social risk factors.
Keyphrases
- risk factors
- acute myocardial infarction
- healthcare
- mental health
- electronic health record
- machine learning
- end stage renal disease
- percutaneous coronary intervention
- left ventricular
- chronic kidney disease
- ejection fraction
- newly diagnosed
- peritoneal dialysis
- big data
- public health
- primary care
- autism spectrum disorder
- heart failure
- prognostic factors
- patient reported outcomes
- coronary artery disease
- climate change
- deep learning
- acute care
- long term care