Presentation + Paper
1 April 2024 Synthesizing heterogeneous lung lesions for virtual imaging trials
Author Affiliations +
Abstract
Virtual imaging trials of malignancies require realistic models of lesions. The purpose of this study was to create hybrid lesion models and associated tool incorporating morphological and textural realism. The developed tool creates a lesion morphology based on input parameters describing its shape and spiculation. Internal heterogeneity is added as 3D clustered lumpy background (CLB), allowing for various sub-classes of lesions including full solid, semi-solid, and ground-glass lesions. To insert a lesion into a full body human model (e.g., XCAT phantom), the edges of the lesion are blended into the surrounding background using a parameterizable Gaussian blurring technique. The developed lesion tool allows users to define lesion sizes either manually or automatically following population distribution of lesion sizes. Similarly, the tool allows users to insert lesions either manually or automatically while avoiding intersections with pulmonary structures. The utility of the developed lesion tool was demonstrated by modeling both homogeneous and heterogeneous lung lesions and inserting them into 5 human models (XCAT). The human models were imaged using a validated CT simulator (DukeSim). Images of heterogeneous lesions were visually comparable to clinical images. The first order and texture radiomics features (58 features) were extracted from all image series and compared using the Pearson correlation. The two lesion generation techniques for full solid lesions (homogeneous vs. heterogeneous) were observed to have a weak correlation (r<0.4) for 35 of 58 features using a soft kernel, and for 43 of 58 features using a sharp kernel—capturing the structural differences between the two models. The lesion tool proved capable of forming different lung lesion sub-classes (full-solid, semi-solid, and ground-glass) through its input parameters to emulate the lesion characteristics of interest for a virtual lesion study.
Conference Presentation
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Cindy McCabe, Justin Solomon, W. Paul Segars, Ehsan Abadi, and Ehsan Samei "Synthesizing heterogeneous lung lesions for virtual imaging trials", Proc. SPIE 12925, Medical Imaging 2024: Physics of Medical Imaging, 129251N (1 April 2024); https://doi.org/10.1117/12.3006199
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Lung

3D modeling

Computed tomography

Mathematical modeling

Radiomics

Simulations

Cooccurrence matrices

Back to Top