Program now available
Registration open
>
16 - 20 February 2025
San Diego, California, US
Conference 13407 > Paper 13407-112
Paper 13407-112

Persistence image from 3D medical image: superpixel and optimized Gaussian coefficient

19 February 2025 • 5:30 PM - 7:00 PM PST | Golden State Ballroom

Abstract

Topological data analysis (TDA) uncovers crucial properties of objects in medical imaging. Methods based on persistent homology have demonstrated their advantages in capturing topological features that traditional deep learning methods cannot detect in both radiology and pathology. However, previous research primarily focused on 2D image analysis, neglecting the comprehensive 3D context. In this paper, we propose an innovative 3D TDA approach that incorporates the concept of superpixels to transform 3D medical image features into point cloud data. By Utilizing Optimized Gaussian Coefficient, the proposed 3D TDA method, for the first time, efficiently generate holistic Persistence Images for 3D volumetric data. Our 3D TDA method exhibits superior performance on the MedMNist3D dataset when compared to other traditional methods, showcasing its potential effectiveness in modeling 3D persistent homology-based topological analysis when it comes to classification tasks.

Presenter

Yanfan Zhu
Vanderbilt Univ. (United States)
Yanfan Zhu is a first-year Master's student in Electrical and Computer Engineering at Vanderbilt University. His research interests encompass medical image analysis, computer vision, deep learning, and embedded applications. Prior to joining Vanderbilt University, Yanfan earned a Master of Science degree from the Department of Embedded and Cyber-Physical Systems at the University of California, Irvine, in 2022. Yanfan also holds a Bachelor of Science degree from the Department of Computer Science and Technology at Shanghai University, awarded in 2020.
Application tracks: AI/ML
Presenter/Author
Yanfan Zhu
Vanderbilt Univ. (United States)
Author
Mayo Clinic (United States)
Author
MedAiConsult (United States)
Author
Vanderbilt Univ. (United States)
Author
Vanderbilt Univ. (United States)