Development and prospective validation of postoperative pain prediction from preoperative EHR data using attention-based set embeddings.
Ran LiuRodrigo GutiérrezRory V MatherTom A D StoneLaura A Santa Cruz MercadoKishore BharadwajJasmine JohnsonProloy DasGustavo A BalanzaEkenedilichukwu UwanakaJustin SydloskiAndrew ChenMackenzie HagoodEdward A BittnerPatrick L PurdonPublished in: NPJ digital medicine (2023)
Preoperative knowledge of expected postoperative pain can help guide perioperative pain management and focus interventions on patients with the greatest risk of acute pain. However, current methods for predicting postoperative pain require patient and clinician input or laborious manual chart review and often do not achieve sufficient performance. We use routinely collected electronic health record data from a multicenter dataset of 234,274 adult non-cardiac surgical patients to develop a machine learning method which predicts maximum pain scores on the day of surgery and four subsequent days and validate this method in a prospective cohort. Our method, POPS, is fully automated and relies only on data available prior to surgery, allowing application in all patients scheduled for or considering surgery. Here we report that POPS achieves state-of-the-art performance and outperforms clinician predictions on all postoperative days when predicting maximum pain on the 0-10 NRS in prospective validation, though with degraded calibration. POPS is interpretable, identifying comorbidities that significantly contribute to postoperative pain based on patient-specific context, which can assist clinicians in mitigating cases of acute pain.
Keyphrases
- postoperative pain
- electronic health record
- pain management
- chronic pain
- minimally invasive
- machine learning
- patients undergoing
- coronary artery bypass
- liver failure
- big data
- clinical decision support
- end stage renal disease
- surgical site infection
- healthcare
- ejection fraction
- neuropathic pain
- newly diagnosed
- high throughput
- respiratory failure
- deep learning
- artificial intelligence
- chronic kidney disease
- clinical trial
- heart failure
- case report
- prognostic factors
- drug induced
- cardiac surgery
- spinal cord injury
- hepatitis b virus
- atrial fibrillation
- young adults
- left ventricular
- patient reported outcomes
- spinal cord
- cross sectional
- peritoneal dialysis
- patient reported