# Machine learning to predict incident MCI using standard clinical measures

> **NIH NIH R03** · MAYO CLINIC  JACKSONVILLE · 2021 · $157,708

## Abstract

PROJECT SUMMARY/ABSTRACT
While important progress has been achieved in our understanding of the clinical and neuroimaging
characteristics, as well as genomic and neurobiological substrates of Alzheimer’s disease (AD) and related
dementias, identifying individuals at a preclinical stage remains a vital priority and substantial challenge. The
early and accurate identification of at-risk individuals becomes particularly important as we embark on next-
generation randomized clinical trials to prevent or delay the onset of AD. The NIA recently convened a
workshop involving experts from academia, nonprofit organizations, and industry with the goal to consider cost-
effective strategies to improve the early detection of cognitive decline. A key recommendation by workshop
participants emphasized opportunities to leverage existing longitudinal studies and apply machine learning
techniques as a cost-effective approach to detect early cognitive decline.
The current proposal represents a targeted step toward achieving those recommendations by leveraging a
large and ongoing longitudinal study of APOE genotype and cognition (led by Dr. Richard Caselli at Mayo
Clinic Arizona), and applies machine learning to identify individuals at risk for incident MCI at the earliest
possible detectable stage. Machine-learning (ML) techniques implement predictive algorithms to find optimal
mathematical and computational solutions to a set of complex problems. In dementia research, ML and pattern
detection algorithms have been applied mainly to neuroimaging data, or neuroimaging data combined with
clinical and genetic data, to distinguish prevalent MCI or AD cases from healthy controls. However, it remains
to be determined whether ML algorithms can be marshalled as a key strategic and predictive approach to
identify cognitively normal individuals at the earliest detectable stage of incipient decline.
To address this gap in knowledge, the proposal aims to: (1) Investigate whether subtle variations among
standard clinical and cognitive measures at baseline are associated with subsequent decline and incident MCI.
Methods to achieve this aim consist of an ensemble ML approach, anchored by a random forests learning
algorithm, applied to baseline demographic, clinical, and cognitive data as well as APOE genotype in a cohort
of 784 adults. (2) Develop a probabilistic algorithm that predicts out-of-sample incident MCI cases. This aim will
be accomplished by selecting 80% of the longitudinal data as an in-sample subset and using a dynamic
Bayesian network approach to model the probabilistic trajectories of diagnosis at each study visit. With this
Bayesian model, it will be possible to develop an algorithm to estimate each person’s unique risk of future MCI
diagnosis. (3) Validate the predictive diagnostic algorithm using the remaining 20% of longitudinal data (out-of-
sample subset), plus data from additional accruals during the intervening period. Successful completion of this
project...

## Key facts

- **NIH application ID:** 10108473
- **Project number:** 1R03AG070486-01
- **Recipient organization:** MAYO CLINIC  JACKSONVILLE
- **Principal Investigator:** Melanie J Chandler
- **Activity code:** R03 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2021
- **Award amount:** $157,708
- **Award type:** 1
- **Project period:** 2021-03-01 → 2024-02-29

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10108473

## Citation

> US National Institutes of Health, RePORTER application 10108473, Machine learning to predict incident MCI using standard clinical measures (1R03AG070486-01). Retrieved via AI Analytics 2026-05-22 from https://api.ai-analytics.org/grant/nih/10108473. Licensed CC0.

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