Publication: Learning-enhanced 3D fiber orientation mapping in thick cardiac tissues
Program
KU Authors
Co-Authors
Ozturk, Hakancan
Publication Date
Language
Type
Embargo Status
No
Journal Title
Journal ISSN
Volume Title
Alternative Title
Abstract
Fibrous proteins, such as elastin and collagen, are crucial for the structural integrity of the cardiovascular system. For thin tissue-engineered heart valves and surgical patches, the two-dimensional mapping of fiber orientation is well-established. However, for three-dimensional (3D) thick tissue samples, e.g., the embryonic whole heart, robust 3D fiber analysis tools are not available. This information is essential for computational vascular modeling and tissue microstructure characterization. Therefore, this study employs machine learning (ML) and deep learning (DL) techniques to analyze the 3D cardiovascular fiber structures in thick samples of porcine pericardium and embryonic whole hearts. It is hypothesized that ML/DL-based fiber orientation analysis will outperform traditional Fourier transform and directional filter methods by offering higher spatial accuracy and reduced dependency on manual preprocessing. We trained our ML/DL models on both synthetic and real-world cardiovascular datasets obtained from confocal imaging. The evaluation used a mixed dataset of 1200 samples and a porcine/bovine dataset of 400 samples. Support vector regression (SVR) demonstrated the highest accuracy, achieving a normalized mean absolute error (nMAE) of 5.0% on the mixed dataset and 13.0% on the biological dataset. Among DL models, convolutional neural network (CNN) and residual network-50 (ResNet50) had an nMAE of 12.0% and 11.0% on the mixed dataset and 23.0% and 22.0% on the biological dataset, respectively. Attention mechanisms improved performance further, with the channel attention ResNet50 achieving an nMAE of 5.8% on the mixed dataset and 21.0% on the biological dataset. These findings highlight the potential of ML and DL techniques in improving 3D fiber orientation detection, enabling detailed cardiovascular microstructural assessment. (c) 2025 Optica Publishing Group under the terms of the Optica Open Access Publishing Agreement
Source
Publisher
Optica Publishing Group
Subject
Optics, Radiology, Nuclear medicine
Citation
Has Part
Source
Biomedical Optics Express
Book Series Title
Edition
DOI
10.1364/BOE.563643
item.page.datauri
Link
Rights
CC BY (Attribution)
Copyrights Note
Creative Commons license
Except where otherwised noted, this item's license is described as CC BY (Attribution)

