An Interpretable Longitudinal Preeclampsia Risk Prediction Using Machine Learning.
Braden W EberhardRaphael Y CohenJohn RigoniDavid Westfall BatesKathryn J Gray GusehVesela P KovachevaPublished in: medRxiv : the preprint server for health sciences (2023)
Longitudinal prediction of preeclampsia using machine learning can be achieved with high performance. Implementation of an accurate predictive tool within the electronic health records can aid clinical care and identify patients at heightened risk who would benefit from aspirin prophylaxis, increased surveillance, early diagnosis, and escalation in care. These results highlight the potential of using artificial intelligence in clinical decision support, with the ultimate goal of reducing iatrogenic preterm birth and improving perinatal care.
Keyphrases
- clinical decision support
- electronic health record
- artificial intelligence
- healthcare
- preterm birth
- quality improvement
- palliative care
- machine learning
- early onset
- big data
- deep learning
- pain management
- low dose
- primary care
- public health
- pregnant women
- affordable care act
- low birth weight
- high resolution
- cardiovascular disease
- clinical trial
- mass spectrometry
- type diabetes
- antiplatelet therapy
- coronary artery disease
- cardiovascular events
- percutaneous coronary intervention
- acute coronary syndrome
- adverse drug
- chronic pain
- double blind