| Literature DB >> 35885567 |
Isabelle Ayx1, Hishan Tharmaseelan1, Alexander Hertel1, Dominik Nörenberg1, Daniel Overhoff1,2, Lukas T Rotkopf3, Philipp Riffel1, Stefan O Schoenberg1, Matthias F Froelich1.
Abstract
The coronary artery calcium score is an independent risk factor of the development of adverse cardiac events. The severity of coronary artery calcification may influence the myocardial texture. Due to higher spatial resolution and signal-to-noise ratio, new CT technologies such as PCCT may improve the detection of texture alterations depending on the severity of coronary artery calcification. In this retrospective, single-center, IRB-approved study, left ventricular myocardium was segmented and radiomics features were extracted using pyradiomics. The mean and standard deviation with the Pearson correlation coefficient for correlations of features were calculated and visualized as boxplots and heatmaps. Random forest feature selection was performed. Thirty patients (26.7% women, median age 58 years) were enrolled in the study. Patients were divided into two subgroups depending on the severity of coronary artery calcification (Agatston score 0 and Agatston score ≥ 100). Through random forest feature selection, a set of four higher-order features could be defined to discriminate myocardial texture between the two groups. When including the additional Agatston 1-99 groups as a validation, a severity-associated change in feature intensity was detected. A subset of radiomics features texture alterations of the left ventricular myocardium was associated with the severity of coronary artery calcification estimated by the Agatston score.Entities:
Keywords: coronary artery calcium score; photon-counting computed tomography; radiomics; texture analysis
Year: 2022 PMID: 35885567 PMCID: PMC9320412 DOI: 10.3390/diagnostics12071663
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418
Patient overview. Mean and (SD) given for continuous variables.
| Overall | Agatston 0 | Agatston 1–99 | Agatston ≥ 100 | ||
|---|---|---|---|---|---|
|
| |||||
|
| 30 | 10 | 10 | 10 | N/A |
| Age | 58.27 (13.85) | 50.6 (16,52) | 63.2 (11.90) | 61 (10.17) | 0.091 |
| Sex | 22 male (73.3 %) | 6 male (60.0 %) | 7 male (70.0 %) | 9 male (90.0%) | 0.303 |
| Stent | 0 | 0 | 0 | 0 | N/A |
| Agatston Score | 270.10 (616,42) | 0 (0) | 29.74 (22.56) | 789.57 (882.50) | 0.002 |
|
| |||||
| Tube voltage | 120 | 120 | 120 | 120 | N/A |
| Slice thickness | 0.6 mm | 0.6 mm | 0.6 mm | 0.6 mm | N/A |
| Kernel | Bv40 | Bv40 | Bv40 | Bv40 | N/A |
| Tube | Vectron ® | Vectron ® | Vectron ® | Vectron ® | N/A |
| Detector | PCD | PCD | PCD | PCD | N/A |
Figure 1Consort flow diagram.
Figure 2Segmentation of the left ventricular myocardium was performed on axial view with a slice thickness of 0.6 mm. An example case of a 21-year-old man is shown.
Figure 3Unsupervised cluster heatmap of myocardial radiomics features.
Figure 4Random forest feature selection in 20 patients in training set.
Figure 5Distribution of “gldm SmallDependenceHighGrayLevelEmphasis”, “glcm ClusterShade”, “glrlm LongRunLowGrayLevelEmphasis”, and “ngtdm Complexity” feature within the dataset.
Higher-order radiomics features. Mean and (SD) given for continuous variables.
| Agatston 0 | Agatston 1–99 | Agatston ≥ 100 | ||
|---|---|---|---|---|
| gldm_SmallDependenceHighGrayLevelEmphasis | 9.82 (3.39) | 11.79 (4.03) | 13.44 (3.21) | 0.093 |
| glcm_ClusterShade | 67.42 (39.64) | 79.34 (31.23) | 113.74 (39.01) | 0.025 |
| glrlm_LongRunLowGrayLevelEmphasis | 0.0214 (0.006) | 0.0282 (0.007) | 0.0283 (0.008) | 0.062 |
| ngtdm_Complexity | 185.12 (40.14) | 191.69 (22.34) | 234.17 (41.94) | 0.01 |
Figure 6Unsupervised cluster heatmap of “gldm SmallDependenceHighGrayLevelEmphasis”, “glcm ClusterShade”, “glrlm LongRunLowGrayLevelEmphasis”, and “ngtdm Complexity” feature of 30 patients.