Revolutionary AI Predicts Alzheimer’s up to Seven Years Before Symptoms Appear

Scientists at UC San Francisco have developed a method using machine learning to predict the onset of Alzheimer’s Disease up to seven years prior to the emergence of symptoms, through the examination of patient records.

The conditions that most influenced the prediction of Alzheimer’s were high cholesterol and, for women, the bone-weakening disease osteoporosis.

The work demonstrates the promise of using artificial intelligence (AI) to spot patterns in clinical data that can then be used to scour large genetic databases to determine what is driving that risk. The researchers hope that one day it will hasten the diagnosis and treatment of Alzheimer’s and other complex diseases.

“This is a first step towards using AI on routine clinical data, not only to identify risk as early as possible, but also to understand the biology behind it,” said the study’s lead author, Alice Tang, an MD/PhD student in the Sirota Lab at UCSF. “The power of this AI approach comes from identifying risk based on combinations of diseases.”

The findings were recently published in the journal Nature Aging.


Clinical data and the power of prediction

Scientists have long sought to discover the biological drivers and early predictors of Alzheimer’s Disease, a progressive and ultimately fatal form of dementia that destroys memory. Alzheimer’s affects some 6.7 million Americans, nearly two-thirds of whom are women. The risk of getting the disease increases with age, and women tend to live longer than men, but that does not fully explain why more women than men have it.

The researchers used UCSF’s clinical database of more than 5 million patients to look for co-occurring conditions in patients who had been diagnosed with Alzheimer’s at UCSF’s Memory and Aging Center in comparison to individuals without AD and found they could identify with 72% predictive power who would develop the disease up to seven years prior.

Several factors, including hypertension, high cholesterol, and vitamin D deficiency, were predictive in both men and women. Erectile dysfunction and an enlarged prostate were also predictive for men. But for women, osteoporosis was a particularly important predictor.

This does not mean that everyone with the bone disease, which is common among older women, will get Alzheimer’s.

“It is the combination of diseases that allows our model to predict AD onset,” said Tang, “Our finding that osteoporosis is one predictive factor for females highlights the biological interplay between bone health and dementia risk.”


A precision medicine approach

To understand the biology underlying the model’s predictive power, the researchers turned to public molecular databases and a specialized tool developed at UCSF called SPOKE (Scalable Precision Medicine Oriented Knowledge Engine), which was developed in the lab of Sergio Baranzini, Ph.D., a professor of neurology and a member of the UCSF Weill Institute for Neurosciences.

SPOKE is essentially a database of databases that researchers can use to identify patterns and potential molecular targets for therapy. It picked up the well-known association between Alzheimer’s and high cholesterol, through a variant form of the apolipoprotein E gene, APOE4. But, when combined with genetic databases, it also identified a link between osteoporosis and Alzheimer’s in women, through a variant in a lesser-known gene, called MS4A6A.

Ultimately, the researchers hope the approach can be used with other hard-to-diagnose diseases like lupus and endometriosis.

“This is a great example of how we can leverage patient data with machine learning to predict which patients are more likely to develop Alzheimer’s, and also to understand the reasons why that is so,” said the study’s senior author, Marina Sirota, PhD, associate professor at the Bakar Computational Health Sciences Institute at UCSF.

Reference: “Leveraging electronic health records and knowledge networks for Alzheimer’s disease prediction and sex-specific biological insights” by Alice S. Tang, Katherine P. Rankin, Gabriel Cerono, Silvia Miramontes, Hunter Mills, Jacquelyn Roger, Billy Zeng, Charlotte Nelson, Karthik Soman, Sarah Woldemariam, Yaqiao Li, Albert Lee, Riley Bove, Maria Glymour, Nima Aghaeepour, Tomiko T. Oskotsky, Zachary Miller, Isabel E. Allen, Stephan J. Sanders, Sergio Baranzini and Marina Sirota, 21 February 2024, Nature Aging.
DOI: 10.1038/s43587-024-00573-8