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Importance-aware 3D volume visualization for medical content-based image retrieval-a preliminary studyopen access

Authors
Li, MingjianJung, YounhyunFulham, MichaelKim, Jinman
Issue Date
Feb-2024
Publisher
KeAi Communications Co.
Keywords
DVR; Medical CBIR; Medical images; Retrieval; Volume visualization
Citation
Virtual Reality and Intelligent Hardware, v.6, no.1, pp 71 - 81
Pages
11
Journal Title
Virtual Reality and Intelligent Hardware
Volume
6
Number
1
Start Page
71
End Page
81
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/90551
DOI
10.1016/j.vrih.2023.08.005
ISSN
2096-5796
Abstract
Background: A medical content-based image retrieval (CBIR) system is designed to retrieve images from large imaging repositories that are visually similar to a user′s query image. CBIR is widely used in evidence- based diagnosis, teaching, and research. Although the retrieval accuracy has largely improved, there has been limited development toward visualizing important image features that indicate the similarity of retrieved images. Despite the prevalence of3D volumetric data in medical imaging such as computed tomography (CT), current CBIR systems still rely on 2D cross-sectional views for the visualization of retrieved images. Such 2D visualization requires users to browse through the image stacks to confirm the similarity of the retrieved images and often involves mental reconstruction of 3D information, including the size, shape, and spatial relations of multiple structures. This process is time-consuming and reliant on users’ experience. Methods: In this study, we proposed an importance-aware 3D volume visualization method. The rendering parameters were automatically optimized to maximize the visibility of important structures that were detected and prioritized in the retrieval process. We then integrated the proposed visualization into a CBIR system, thereby complementing the 2D cross-sectional views for relevance feedback and further analyses. Results: Our preliminary results demonstrate that 3D visualization can provide additional information using multimodal positron emission tomography and computed tomography (PET- CT) images of a non-small cell lung cancer dataset. © 2023 Beijing Zhongke Journal Publishing Co. Ltd
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