| Literature DB >> 24757667 |
Yu-Hua Dean Fang1, Chien-Yu Lin2, Meng-Jung Shih3, Hung-Ming Wang4, Tsung-Ying Ho5, Chun-Ta Liao6, Tzu-Chen Yen7.
Abstract
BACKGROUND: The quantification of tumor heterogeneity with molecular images, by analyzing the local or global variation in the spatial arrangements of pixel intensity with texture analysis, possesses a great clinical potential for treatment planning and prognosis. To address the lack of available software for computing the tumor heterogeneity on the public domain, we develop a software package, namely, Chang-Gung Image Texture Analysis (CGITA) toolbox, and provide it to the research community as a free, open-source project.Entities:
Mesh:
Year: 2014 PMID: 24757667 PMCID: PMC3976812 DOI: 10.1155/2014/248505
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Summary of the currently supported heterogeneity indices of CGITA.
| Parent matrix | Feature measure |
|---|---|
| Cooccurrence matrix [ | Second angular moment, contrast, entropy, homogeneity, dissimilarity, inverse difference moment |
| Voxel-alignment matrix [ | Short-run emphasis, long-run emphasis, intensity variability, run-length variability, run percentage, low-intensity run emphasis, high-intensity run emphasis, low-intensity short-run emphasis, high-intensity short-run emphasis, low-intensity long-run emphasis, high-intensity long-run emphasis |
| Neighborhood intensity difference matrix [ | Coarseness, contrast, busyness, complexity, strength |
| Intensity size-zone matrix [ | Short-zone emphasis, large-zone emphasis, intensity variability, size-zone variability, zone percentage, low-intensity zone emphasis, high-intensity zone emphasis, low-intensity short-zone emphasis, high-intensity short-zone emphasis, low-intensity large-zone emphasis, high-intensity large-zone emphasis |
| Normalized cooccurrence matrix [ | Second angular moment, contrast, entropy, homogeneity, inverse difference moment, dissimilarity, correlation |
| Voxel statistics | Minimum SUV, maximum SUV, mean SUV, SUV variance, SUV SD, SUV skewness, SUV kurtosis, SUV skewness (bias corrected), SUV kurtosis (bias corrected), TLG, tumor volume, entropy, SULpeak |
| Texture spectrum [ | Max spectrum, Black-white symmetry |
| Texture feature coding [ | Coarseness, homogeneity, mean convergence |
| Texture feature coding cooccurrence matrix [ | Second angular moment, contrast, entropy, homogeneity, intensity, inverse difference moment, correlation, variance, code similarity |
| Neighborhood gray-level dependence [ | Small-number emphasis, large-number emphasis, number nonuniformity, second moment, entropy |
Figure 1A screen shot of the CGITA program. The CGITA GUI provides users with a simple image display interface that allows users to examine different slices and views. The computation of heterogeneity indices is achieved simply by button clicking. As an open-source project, the current functions and interfaces of CGITA can be customized by users familiar with MATLAB programming. The screen shot here shows a subject with the FDG-PET images fused over CT images.
Summary of the software features of CGITA.
| Feature | CGITA implementation |
|---|---|
| Programming environment | MATLAB (MathWorks Inc.) |
| License | Free for academic use |
| Source code availability | Open source |
| Supported image format | DICOM (either local files or direct access to a PACS server for image retrieval) |
| Supported VOI format | DICOM-RT, PMOD |
| Currently supported textural features | 72 |
| Other features | (i) Parametric imaging of heterogeneity indices |
Comparison of AUC, specificity, and sensitivity of heterogeneity indices vs. SUVmean and TLG.
| Parent | Feature | AUC | Sensitivity (%) | Specificity (%) |
|
|---|---|---|---|---|---|
| Intensity-size-zone | Low-intensity short-zone emphasis | 0.90* | 77.8 | 88.9 | 0.004 |
| Intensity-size-zone | Short-zone emphasis | 0.81* | 77.8 | 66.7 | 0.024 |
| Texture Feature Coding Cooccurrence | Contrast | 0.72 | 55.6 | 88.9 | 0.085 |
| Intensity-size-zone | High-intensity zone emphasis | 0.70 | 66.7 | 77.8 | 0.145 |
| Intensity-size-zone | Zone percentage | 0.70 | 55.6 | 88.9 | 0.122 |
| SUV statistics | Entropy | 0.70 | 66.7 | 77.8 | 0.145 |
| SUV statistics | Mean SUV | 0.60 | 66.7 | 66.7 | 0.453 |
| SUV statistics | Maximum SUV | 0.57 | 66.7 | 66.7 | 0.627 |
| SUV statistics | TLG | 0.52 | 55.6 | 66.7 | 0.895 |
*denotes that the P value is less than 0.05 given the null hypothesis of AUC <0.5.
†calculated using the Kruskal-Wallis test (19 indices have a P value greater than 0.453).
Figure 2ROC curves of the heterogeneity indices, comparing two of the indices to the conventional metrics. The heterogeneity indices show a higher discriminative power than SUVmean and TLG.
Figure 3Parametric images of textural features computed from a single patient compared to the original PET image. The PET image, shown in the top row, is displayed between SUVs of zero and twenty. Heterogeneity indices 1 to 4 represent, respectively, the contrast, dissimilarity, entropy, and inverse difference moment calculated from the cooccurrence matrix. Note that the parametric images appear different according to the spatial variation in voxel intensity. Furthermore, different index images display different tumor heterogeneity patterns.