Extracting lung function-correlated information from CT-encoded static textures
Yu-Hua Huang, Xinzhi Teng, Jiang Zhang, Zhi Chen, Zongrui Ma, Ge Ren,, Feng-Ming (Spring) Kong, Jing Cai

TL;DR
This study identifies lung texture features from CT scans that correlate with lung function, using a novel multi-level analysis approach on data from lung cancer patients to improve understanding of lung health.
Contribution
It introduces a sparse-to-fine strategy to discover and validate radiomic features correlated with lung function from static CT textures.
Findings
Eight function-correlated features identified with medium-to-large effect sizes.
FMs of GLDM Dependence Non-uniformity showed high robustness and correlation with ventilation.
Spatial feature maps achieved moderate-to-strong correlation with ventilation images and PFT measurements.
Abstract
The inherent characteristics of lung tissues, which are independent of breathing manoeuvre, may provide fundamental information on lung function. This paper attempted to study function-correlated lung textures and their spatial distribution from CT. 21 lung cancer patients with thoracic 4DCT scans, DTPA-SPECT ventilation images (V), and available pulmonary function test (PFT) measurements were collected. 79 radiomic features were included for analysis, and a sparse-to-fine strategy including subregional feature discovery and voxel-wise feature distribution study was carried out to identify the function-correlated radiomic features. At the subregion level, lung CT images were partitioned and labeled as defected/non-defected patches according to reference V. At the voxel-wise level, feature maps (FMs) of selected feature candidates were generated for each 4DCT phase. Quantitative metrics,…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · Medical Imaging Techniques and Applications
