# Multi-Center Academic-Industrial Partnership for Personalized Al-Enabled High Count PET

> **NIH NIH R01** · YALE UNIVERSITY · 2024 · $599,131

## Abstract

Abstract
 High image noise degrades the diagnostic efficacy and quantitative accuracy of PET, as noise could easily
results in overestimation of SUV and cause false positive lesion detections in diagnosis. High image noise also
decreases the confidence of clinical decision making, leading to additional unnecessary follow-ups through other
imaging modalities and invasive procedure. Deep learning-based noise reduction has shown promises for PET
imaging. However, existing approaches only focus on converting low-count image (e.g. acquired through low-
dose injection or shorter scan time) to standard-count image in typical clinical scans. However, for both low-
count and the vast majority of routinely acquired clinical PET images with normal dose and scan time, there is
no approach to convert such clinical images to high-count images to further reduce the image noise, mainly due
to the challenge of obtaining high-count PET images as training labels. Another challenge in the real-world
application is to match the training data with the testing data, in terms of noise level, noise structure,
reconstruction parameters, scanner model, etc. Such matching is particularly challenging in a multi-center multi-
scanner setting. In this Academic-Industrial Partnership R01 project, we formed an ideal partnership between
Visage Imaging, a leading PACS company, and three leading academic centers (Yale, MGH, UC Davis) to
develop, evaluate, deploy, and translate robust deep learning methods to generate virtual-high-count PET
images in a highly personalized manner by taking into account the noise level of each organ in each patient, as
well as associated non-imaging patient information. The academic sites have access to a large number of high-
count data that are acquired either through long dynamic scans (at least 90 minutes) or by the ultra-sensitive
long axial field-of-view (FOV) Explorer scanner. The developed product would be deep learning networks that
can convert any clinical PET images data from all major vendors (Siemens, GE, United Imaging Healthcare
(UIH)) into virtual-high-count ultra-low noise images. Since Yale, MGH, and UC Davis are all serviced by Visage
Imaging, the developed deep learning technique can be seamlessly translated into Visage PACS
research/clinical servers for validation and evaluation, beta testing and user feedback, and ultimate translation
and regulatory filings. In Aim 1, we will develop deep learning models for virtual-high-count PET generation. In
Aim 2, we will evaluate and deploy the models into Visage research PACS server and evaluate virtual-high-count
PET in clinical environments. In Aim 3, we will integrate the developed virtual-high-count PET deep learning
models into the clinical production PACS server and generate regulatory documents and supporting data for
FDA 510(k).

## Key facts

- **NIH application ID:** 10837718
- **Project number:** 5R01CA275188-02
- **Recipient organization:** YALE UNIVERSITY
- **Principal Investigator:** RAMSEY D. BADAWI
- **Activity code:** R01 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2024
- **Award amount:** $599,131
- **Award type:** 5
- **Project period:** 2023-05-05 → 2028-04-30

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10837718

## Citation

> US National Institutes of Health, RePORTER application 10837718, Multi-Center Academic-Industrial Partnership for Personalized Al-Enabled High Count PET (5R01CA275188-02). Retrieved via AI Analytics 2026-05-26 from https://api.ai-analytics.org/grant/nih/10837718. Licensed CC0.

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