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Machine Learning Uses EHR Data to Predict Alzheimer’s Risk

Machine learning algorithms analyzed EHR data and accurately predicted the onset of dementia within one to three years of diagnosis.

Machine learning uses EHR data to predict Alzheimer's risk

Source: Getty Images

By Jessica Kent

- Using structured and unstructured EHR data, machine learning algorithms could accurately identify patients at risk of developing Alzheimer’s disease and related dementias.

At least 50 percent of older primary care patients living with Alzheimer’s disease and related dementias never get diagnosis, researchers stated, and many more live with symptoms for two to five years before being diagnosed. Current tests that screen for dementia risk are invasive, time-consuming, and invasive.

The research team, which included scientists from Regenstrief Institute, Georgia State, Albert Einstein College of Medicine, and Solid Research Group, used two different machine learning approaches to improve dementia and Alzheimer’s diagnosis: A natural language processing algorithm and a random forest model.