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Assessing Agreement between Radiomic Features Computed for Multiple CT Imaging Settings
- Source :
- PLoS ONE, PLoS ONE, Vol 11, Iss 12, p e0166550 (2016)
- Publication Year :
- 2016
- Publisher :
- Public Library of Science, 2016.
-
Abstract
- Objectives: Radiomics utilizes quantitative image features (QIFs) to characterize tumor phenotype. In practice, radiological images are obtained from different vendors’ equipment using various imaging acquisition settings. Our objective was to assess the inter-setting agreement of QIFs computed from CT images by varying two parameters, slice thickness and reconstruction algorithm. Materials and Methods: CT images from an IRB-approved/HIPAA-compliant study assessing thirty-two lung cancer patients were included for the analysis. Each scan’s raw data were reconstructed into six imaging series using combinations of two reconstruction algorithms (Lung[L] and Standard[S]) and three slice thicknesses (1.25mm, 2.5mm and 5mm), i.e., 1.25L, 1.25S, 2.5L, 2.5S, 5L and 5S. For each imaging-setting, 89 well-defined QIFs were computed for each of the 32 tumors (one tumor per patient). The six settings led to 15 inter-setting comparisons (combinatorial pairs). To reduce QIF redundancy, hierarchical clustering was done. Concordance correlation coefficients (CCCs) were used to assess inter-setting agreement of the non-redundant feature groups. The CCC of each group was assessed by averaging CCCs of QIFs in the group. Results: Twenty-three non-redundant feature groups were created. Across all feature groups, the best inter-setting agreements (CCCs>0.8) were 1.25S vs 2.5S, 1.25L vs 2.5L, and 2.5S vs 5S; the worst (CCCs0.8 across all imaging settings. Conclusions: Varying degrees of inter-setting disagreements of QIFs exist when features are computed from CT images reconstructed using different algorithms and slice thicknesses. Our findings highlight the importance of harmonizing imaging acquisition for obtaining consistent QIFs to study tumor imaging phonotype.
- Subjects :
- Pathology
Lung Neoplasms
Computer science
lcsh:Medicine
Computed tomography
Lung and Intrathoracic Tumors
030218 nuclear medicine & medical imaging
Diagnostic Radiology
0302 clinical medicine
Radiomics
Carcinoma, Non-Small-Cell Lung
Medicine and Health Sciences
Image Processing, Computer-Assisted
lcsh:Science
Tomography
Lung
Multidisciplinary
medicine.diagnostic_test
Radiology and Imaging
Applied Mathematics
Simulation and Modeling
Reconstruction algorithm
Computer algorithms
Magnetic Resonance Imaging
Pulmonary Imaging
Professions
Oncology
Feature (computer vision)
030220 oncology & carcinogenesis
Physical Sciences
Diagnostic imaging
Algorithms
Research Article
medicine.medical_specialty
Medical radiology
Imaging Techniques
Neuroimaging
Research and Analysis Methods
03 medical and health sciences
Diagnostic Medicine
Radiologists
medicine
Medical imaging
Humans
Lung cancer
Computed tomography laser mammography
business.industry
lcsh:R
Biology and Life Sciences
Cancers and Neoplasms
Pattern recognition
medicine.disease
Computed Axial Tomography
People and Places
lcsh:Q
Population Groupings
Artificial intelligence
Ct imaging
business
Tomography, X-Ray Computed
Mathematics
Neuroscience
Subjects
Details
- Language :
- English
- ISSN :
- 19326203
- Volume :
- 11
- Issue :
- 12
- Database :
- OpenAIRE
- Journal :
- PLoS ONE
- Accession number :
- edsair.doi.dedup.....7eadd3ae569eb7cfc62da850f6743be7