Ruogu Fang University of Florida

Ruogu Fang

Associate Professor/Associate Director

ruogu.fang@ufl.edu 352-294-1375
  • Gainesville FL UNITED STATES
  • Herbert Wertheim College of Engineering

Ruogu Fang works on artificial intelligence-empowered precision brain health and brain/bio-inspired AI.

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Biography

Ruogu Fang is a tenured associate professor and Pruitt Family Endowed Faculty Fellow in the J. Crayton Pruitt Family Department of Biomedical Engineering. Her research revolves around the integration of artificial intelligence (AI) and deep learning with the intricacies of the human brain. Her research encompasses two principal themes: AI-empowered precision brain health and brain/bio-inspired AI. Her work involves addressing compelling questions, such as using machine learning techniques to quantify brain dynamics, facilitating early Alzheimer's disease diagnosis through novel imagery, predicting personalized treatment outcomes, designing precision interventions, and leveraging principles from neuroscience to develop the next generation of AI. Fang's current research is also rooted in the confluence of AI and multimodal medical image analysis. At the heart of her work is the Smart Medical Informatics Learning and Evaluation (SMILE) lab, where she is tirelessly dedicated to the creation of groundbreaking brain and neuroscience-inspired medical AI and deep learning models. The primary objective of these models is to comprehend, diagnose, and treat brain disorders, all while navigating the complexities of extensive and intricate datasets.

Areas of Expertise

Brain Informatics
Neuroimaging
Precision Intervention
Deep Learning
Medical Image Analysis
Artificial Intelligence
Big Medical Data
Neurodegenerative Disease Diagnosis
Machine Learning
Big Data Analytics

Media Appearances

Saluting the trailblazers: Academy of Science, Engineering and Medicine of Florida names honorees from UF

UF Powering the New Engineer  online

2023-11-30

Dr. Fang was recognized for her pioneering contributions in using medical AI and deep learning models to diagnose, predict and treat brain diseases that include Alzheimer’s and Depression. Her dedication to mentoring diverse, transdisciplinary, next-gen researchers has also won her far and wide praise among her peers and students.

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UF Health Cancer Center hosts 3rd annual AI Day

UF Health  online

2023-10-27

This week, the UF Health Cancer Center hosted its 3rd Annual AI Day in Cancer Research, drawing speakers and attendees from a range of disciplines, such as engineering, public health, data science and radiology, to learn more about the role of AI in cancer research.

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Our eyes may provide early warning signs of Alzheimer’s and Parkinson’s

The Washington Post  print

2021-02-27

Forget the soul — it turns out the eyes may be the best window to the brain. Changes to the retina may foreshadow Alzheimer’s and Parkinson’s diseases, and researchers say a picture of your eye could assess your future risk of neurodegenerative disease.

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Scientists Are Looking Into The Eyes Of Patients To Diagnose Parkinson’s Disease

Forbes  print

2020-11-25

With artificial intelligence (AI), researchers have moved toward diagnosing Parkinson's disease with, essentially, an eye exam. This relatively cheap and non-invasive method could eventually lead to earlier and more accessible diagnoses.

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Social

Articles

Texture and motion aware perception in-loop filter for AV1

Journal of Visual Communication and Image Representation

Tianqi Liu, et. al

2024-01-01

Lossy compression introduces artifacts, and many conventional in-loop filters have been adopted in the AV1 standard to reduce these artifacts. Researchers have explored deep learning-based filters to remove artifacts in the compression loop. However, the high computational complexity of CNN-based filters remains a challenge.

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Precise and Rapid Whole-Head Segmentation from Magnetic Resonance Images of Older Adults using Deep Learning

Imaging Neuroscience

Skylar E. Stolte, et. al

2024-01-01

Whole-head segmentation from Magnetic Resonance Images (MRI) establishes the foundation for individualized computational models using finite element method (FEM). This foundation paves the path for computer-aided solutions in fields, particularly in non-invasive brain stimulation. Most current automatic head segmentation tools are developed using healthy young adults. Thus, they may neglect the older population that is more prone to age-related structural decline such as brain atrophy.

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Ethnic disparity in diagnosing asymptomatic bacterial vaginosis using machine learning

npj Digital Medicine - Nature

Cameron Celeste, et. al

2023-11-17

While machine learning (ML) has shown great promise in medical diagnostics, a major challenge is that ML models do not always perform equally well among ethnic groups. This is alarming for women’s health, as there are already existing health disparities that vary by ethnicity. Bacterial Vaginosis (BV) is a common vaginal syndrome among women of reproductive age and has clear diagnostic differences among ethnic groups

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