Machine Learning to Predict, Detect, and Intervene Older Adults Vulnerable for Adverse Drug Events in the Emergency Department.
Kei OuchiCharlotta LindvallPeter R ChaiEdward W BoyerPublished in: Journal of medical toxicology : official journal of the American College of Medical Toxicology (2018)
Adverse drug events (ADEs) are common and have serious consequences in older adults. ED visits are opportunities to identify and alter the course of such vulnerable patients. Current practice, however, is limited by inaccurate reporting of medication list, time-consuming medication reconciliation, and poor ADE assessment. This manuscript describes a novel approach to predict, detect, and intervene vulnerable older adults at risk of ADE using machine learning. Toxicologists' expertise in ADE is essential to creating the machine learning algorithm. Leveraging the existing electronic health records to better capture older adults at risk of ADE in the ED may improve their care.
Keyphrases
- adverse drug
- emergency department
- electronic health record
- machine learning
- physical activity
- healthcare
- artificial intelligence
- clinical decision support
- primary care
- newly diagnosed
- deep learning
- drug induced
- ejection fraction
- big data
- end stage renal disease
- palliative care
- chronic pain
- health insurance
- patient reported