Overview
Our current research involves the use of computer-generated phantoms and simulation techniques to investigate and optimize medical imaging systems and methods. Medical imaging simulation involves virtual experiments carried out entirely on the computer using computational models for the patients as well as the imaging devices. Simulation is a powerful tool for characterizing, evaluating, and optimizing medical imaging systems. A vital aspect of simulation is to have realistic models of the subject's anatomy as well as accurate models for the physics of the imaging process. Without this, the results of the simulation may not be indicative of what would occur in actual clinical studies and would, therefore, have limited practical value. We are leading the development of realistic simulation tools for use toward human and small animal imaging research.
These tools have a wide variety of applications in many different imaging modalities to investigate the effects of anatomical, physiological, physical, and instrumentational factors on medical imaging and to research new image acquisition strategies, image processing and reconstruction methods, and image visualization and interpretation techniques. We are currently applying them to the field of x-ray CT. The motivation for this work is the lack of sufficiently rigorous methods for optimizing the image quality and radiation dose in x-ray CT to the clinical needs of a given procedure. The danger of unnecessary radiation exposure from CT applications, especially for pediatrics, is just now being addressed. Optimization is essential in order for new and emerging CT applications to be truly useful and not represent a danger to the patient. Given the relatively high radiation doses required of current CT systems, thorough optimization is unlikely to ever be done in live patients. It would be prohibitively expensive to fabricate physical phantoms to simulate a realistic range of patient sizes and clinical needs especially when physiologic motion needs to be considered. The only practical approach to the optimization problem is through the use of realistic computer simulation tools developed in our work.
These tools have a wide variety of applications in many different imaging modalities to investigate the effects of anatomical, physiological, physical, and instrumentational factors on medical imaging and to research new image acquisition strategies, image processing and reconstruction methods, and image visualization and interpretation techniques. We are currently applying them to the field of x-ray CT. The motivation for this work is the lack of sufficiently rigorous methods for optimizing the image quality and radiation dose in x-ray CT to the clinical needs of a given procedure. The danger of unnecessary radiation exposure from CT applications, especially for pediatrics, is just now being addressed. Optimization is essential in order for new and emerging CT applications to be truly useful and not represent a danger to the patient. Given the relatively high radiation doses required of current CT systems, thorough optimization is unlikely to ever be done in live patients. It would be prohibitively expensive to fabricate physical phantoms to simulate a realistic range of patient sizes and clinical needs especially when physiologic motion needs to be considered. The only practical approach to the optimization problem is through the use of realistic computer simulation tools developed in our work.
Current Appointments & Affiliations
Professor in Radiology
·
2024 - Present
Radiology,
Clinical Science Departments
Professor of Biomedical Engineering
·
2025 - Present
Biomedical Engineering,
Pratt School of Engineering
Recent Publications
Dosimetric comparability validation of small animal photon and neutron irradiations.
Journal Article J Radiol Prot · January 16, 2026 Crew members on missions beyond low-earth orbit receive considerable radiation doses, but the effects and relative biological effectiveness of many relevant types of irradiation, including neutrons with energies of hundreds of MeV, largely remain under-inv ... Full text Link to item CiteModality-agnostic, patient-specific digital twins modeling temporally varying digestive motion.
Journal Article Phys Med Biol · January 6, 2026 Objective. Clinical implementation of deformable image registration (DIR) requires voxel-based spatial accuracy metrics such as manually identified landmarks, which are challenging to implement for highly mobile gastrointestinal (GI) organs. To address thi ... Full text Link to item CiteLarge Intestine 3D Shape Refinement Using Conditional Latent Point Diffusion Models
Conference Lecture Notes in Computer Science · January 1, 2026 Accurate 3D modeling of human organs is critical for constructing digital phantoms in virtual imaging trials. However, organs such as the large intestine remain particularly challenging due to their complex geometry and shape variability. We propose CLAP, ... Full text CiteRecent Grants
Development of a Virtual Preclinical CT Platform for Advanced Imaging and Theranostics in Head and Neck Cancer Research
ResearchCo-Principal Investigator · Awarded by National Institutes of Health · 2025 - 2029Accuracy and Precision in CT Quantification of COPD Through Virtual Imaging Trials
ResearchInvestigator · Awarded by National Heart, Lung, and Blood Institute · 2021 - 2026Toward precision radiotherapy: Physiological modeling of respiratory motion based on ultra-quality 4D-MRI
ResearchPrincipal Investigator · Awarded by University of Virginia - Charlottesville · 2019 - 2026View All Grants
Education, Training & Certifications
University of North Carolina, Chapel Hill ·
2001
Ph.D.