Early Detection of Pulmonary Embolism in a General Patient Population Immediately Upon Hospital Admission Using Machine Learning to Identify New, Unidentified Risk Factors: Model Development Study.
Ori Ben YehudaEdward ItelmanAdva VaismanSegal GadBoaz LernerPublished in: Journal of medical Internet research (2024)
This study established an ML tool for early diagnosis of PE almost immediately upon hospital admission. Despite the highly imbalanced scenario undermining accurate PE prediction and using information available only from the patient's medical history, our models were both accurate and informative, enabling the identification of patients already at high risk for PE upon hospital admission, even before the initial clinical checkup was performed. The fact that we did not restrict our patients to those at high risk for PE according to previously published scales (eg, Wells or revised Genova scores) enabled us to accurately assess the application of ML on raw medical data and identify new, previously unidentified risk factors for PE, such as previous pulmonary disease, in general populations.
Keyphrases
- pulmonary embolism
- end stage renal disease
- healthcare
- emergency department
- ejection fraction
- newly diagnosed
- risk factors
- chronic kidney disease
- high resolution
- case report
- prognostic factors
- peritoneal dialysis
- randomized controlled trial
- adverse drug
- systematic review
- patient reported outcomes
- mass spectrometry
- deep learning
- data analysis