Clinical study applying machine learning to detect a rare disease: results and lessons learned.
William R HershAaron M CohenMichelle M NguyenKatherine L BenschingThomas G DelougheryPublished in: JAMIA open (2022)
Machine learning has the potential to improve identification of patients for appropriate diagnostic testing and treatment, including those who have rare diseases for which effective treatments are available, such as acute hepatic porphyria (AHP). We trained a machine learning model on 205 571 complete electronic health records from a single medical center based on 30 known cases to identify 22 patients with classic symptoms of AHP that had neither been diagnosed nor tested for AHP. We offered urine porphobilinogen testing to these patients via their clinicians. Of the 7 who agreed to testing, none were positive for AHP. We explore the reasons for this and provide lessons learned for further work evaluating machine learning to detect AHP and other rare diseases.
Keyphrases
- machine learning
- end stage renal disease
- electronic health record
- ejection fraction
- newly diagnosed
- chronic kidney disease
- clinical trial
- intensive care unit
- palliative care
- climate change
- physical activity
- clinical decision support
- risk assessment
- acute respiratory distress syndrome
- extracorporeal membrane oxygenation
- respiratory failure
- adverse drug
- resistance training