# ACE-D: Accelerating Cognition-guided signatures to Enhance translation in Depression

> **NIH NIH U01** · STANFORD UNIVERSITY · 2024 · $3,788,493

## Abstract

Project Summary/Abstract
The lack of accessible, individual-level measurements suited to inform clinical decision-making is a critically
unmet need in depression, the leading cause of disability globally. Persistent cognitive impairments from
depression are a major contributor to disability. Our objective is to optimize, validate, and deploy a clinical
cognitive signature using behavioral measures that have a basis in neural mechanisms, enabling individualized
assessment at scale suited to personalized clinical prognostic and treatment selection decisions. We will extend
our pioneering work in identifying a cognitive phenotype of depression derived from computerized behavioral
‘WebNeuro’ tasks that align with the RDoC cognitive control construct, to be complemented by a novel, research-
based smartphone ‘BiAffect’ application for finer-grained, passively sampled behavioral metrics. In Aim 1, we
will optimize a clinical cognitive signature for individual-level predictions based on our already identified cognitive
phenotype. We leverage our unique, large existing multi-modal datasets with common cognitive data elements
totaling 3,082 diverse participants. These datasets span participants with major depressive disorder assessed
pre-post treatment with pharmacotherapy and behavioral therapy, pre-post naturalistic trajectories, and matched
healthy participants from the same sites. We will systematically optimize a clinical cognitive signature by
generating trial-by-trial individualized scores on cognitive control tasks, with refined norms, and evaluate these
scores in predictive models. We will also refine the mechanistic understanding of the clinical cognitive signature
in the subset of participants who also have neuroimaging data. In Aim 2, we will evaluate the clinical cognitive
signature in combination with digital phenotyping at scale in a new prospective sample of 1,200 adults with
depression, to be recruited remotely and representative of racially/ethnically and socioeconomically diverse
population. We will complement WebNeuro with the BiAffect technology, both suited for remote administration,
to quantify finer-grained individual variations in behavior throughout the day. This new cohort will complete repeat
assessments for symptom and disability outcome predictions over 8 weeks with a 6-month follow-up. In Aim 3,
we will validate the clinical cognitive signature for prospective stratification in a randomized clinical trial with
160 participants from the Stanford Bay Area and Chicago sites. We will prospectively identify participants with a
prominent clinical cognitive signature (designated as C+) and those with a relative absence of the signature
(designated as C-). Participants will be randomly assigned to receive sertraline plus guanfacine or sertraline plus
placebo. Guanfacine is chosen because it has been shown to ameliorate cognitive deficits in depression based
on the published preliminary findings from our team. The expected end produc...

## Key facts

- **NIH application ID:** 10867783
- **Project number:** 1U01MH136062-01
- **Recipient organization:** STANFORD UNIVERSITY
- **Principal Investigator:** Olusola A. Ajilore
- **Activity code:** U01 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2024
- **Award amount:** $3,788,493
- **Award type:** 1
- **Project period:** 2024-05-03 → 2029-02-28

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10867783

## Citation

> US National Institutes of Health, RePORTER application 10867783, ACE-D: Accelerating Cognition-guided signatures to Enhance translation in Depression (1U01MH136062-01). Retrieved via AI Analytics 2026-05-25 from https://api.ai-analytics.org/grant/nih/10867783. Licensed CC0.

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