# Robust and Efficient Learning of High-Resolution Brain MRI Reconstruction from Small Referenceless Data

> **NIH EB R01** · UNIVERSITY OF MINNESOTA · 2026 · $487,249

## Abstract

PROJECT SUMMARY/ABSTRACT
Neuropsychiatric (mental, behavioral and neurological) disorders are increasingly dominating the burden on
US healthcare. Yet, our understanding of such disorders is largely restricted to a description of symptoms, and
the treatments remain palliative. Several large-scale efforts, including the Human Connectome Project (HCP)
and the BRAIN Initiative call for the development of technologies to map brain circuits to improve our
understanding of brain function. Magnetic resonance imaging (MRI) plays a central role in these initiatives as a
powerful non-invasive methodology to study the human brain, including anatomical, functional and diffusion
imaging. Yet, MRI methods have major limitations on achievable resolutions and acquisition speed. These
affect both high resolution whole brain acquisitions that aim to image voxel volumes that contain only a few
thousand neurons for improved understanding of the brain, and also the more commonly utilized research and
clinical protocols. This, in turn, necessitates improved reconstruction methods to facilitate faster acquisitions.
Several strategies have been proposed for improved reconstruction of MRI data. Recently, deep learning (DL)
has emerged as an alternative for accelerated MRI showing improved quality over conventional approaches.
However, it also faces challenges that hinder its utility, especially in high-resolution brain MRI, including need
for large databases of reference data for training, concerns about generalization to unseen pathologies not
well-represented in training datasets, robustness issues related to recovery of fine structures, and difficulties in
training networks for processing multi-dimensional image series. In this proposal, we will develop and validate
robust and efficient learning strategies for high-resolution brain DL MRI reconstruction without large databases
of reference data. We will develop self-supervised learning methods for training with small referenceless
databa

## Key facts

- **NIH application ID:** 11324499
- **Project number:** 5R01EB032830-04
- **Recipient organization:** UNIVERSITY OF MINNESOTA
- **Principal Investigator:** Mehmet  Akcakaya
- **Activity code:** R01 (R01, R21, SBIR, etc.)
- **Funding institute:** EB
- **Fiscal year:** 2026
- **Award amount:** $487,249
- **Award type:** 5
- **Project period:** 2023-03-15T00:00:00 → 2027-02-28T00:00:00

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/11324499

## Citation

> US National Institutes of Health, RePORTER application 11324499, Robust and Efficient Learning of High-Resolution Brain MRI Reconstruction from Small Referenceless Data (5R01EB032830-04). Retrieved via AI Analytics 2026-07-04 from https://api.ai-analytics.org/grant/nih/11324499. Licensed CC0.

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