| Literature DB >> 36136880 |
Filippo Crimì1, Chiara Zanon1, Giulio Cabrelle1, Kim Duyen Luong1, Laura Albertoni2, Quoc Riccardo Bao3, Marta Borsetto3, Elisa Baratella4, Giulia Capelli3, Gaya Spolverato3, Matteo Fassan2,5, Salvatore Pucciarelli3, Emilio Quaia1.
Abstract
Background: The purpose of the study was to determine whether contrast-enhanced CT texture features relate to, and can predict, the presence of specific genetic mutations involved in CRC carcinogenesis. Materials and methods: This retrospective study analyzed the pre-operative CT in the venous phase of patients with CRC, who underwent testing for mutations in the KRAS, NRAS, BRAF, and MSI genes. Using a specific software based on CT images of each patient, for each slice including the tumor a region of interest was manually drawn along the margin, obtaining the volume of interest. A total of 56 texture parameters were extracted that were compared between the wild-type gene group and the mutated gene group. A p-value of <0.05 was considered statistically significant.Entities:
Keywords: BRAF; KRAS; NRAS; colorectal cancer; computed tomography; genetic markers; microsatellite instability; mismatch repair; texture analysis
Mesh:
Substances:
Year: 2022 PMID: 36136880 PMCID: PMC9498512 DOI: 10.3390/tomography8050184
Source DB: PubMed Journal: Tomography ISSN: 2379-1381
Figure 1Tumor tissue in the axial CT portal venous phase images in locally advanced CRC in a 77-year-old man (a). The pink area represents the regions of interest; the procedure was applied for every single slice where the tumor was detectable, obtaining a 3D-ROI (b).
Figure 2Flow chart of the enrolled population.
Demographic and clinical–pathological characteristics of the studied population.
| Characteristics | N (%) |
|---|---|
|
| |
| Males | 27 (57%) |
| Females | 20 (43%) |
|
| |
| Median | 70 |
| IQR | 26–87 |
|
| |
| Median | 24.6 |
| IQR | 19.1–31.8 |
|
| |
| III | 16 (33%) |
| IV | 31 (66%) |
|
| |
| Rectum-sigma | 18 (38%) |
| Ascending colon | 8 (17%) |
| Tranverse | 8 (17%) |
| Descending | 7 (15%) |
| Ciecum | 6 (13%) |
|
| |
| BRAF | 7 (15%) |
| KRAS | 18 (38%) |
| NRAS | 3 (6%) |
| MMR | 9 (19%) |
Discretized HU Q1 results. Note: IQR could not be calculated, as group 1 only comprised three patients; SE: sensitivity; SP: specificity.
| Median (IQR) | SE | SP | AUC (95% CI) |
| ||
|---|---|---|---|---|---|---|
| Group 0 | Group 1 | |||||
| 106 (105–107) | 108 | 0.049 | 100% | 56.8% | 0.833 (0.696–0.926) | <0.001 |
Legend: AUC: area under the curve; CI: confidence interval; SE: sensitivity; SP: specificity.
Figure 3ROC curve for the prediction of NRAS mutations based on the discretized HU Q1.
Microsatellite status—significant parameters.
| CT-TA | Group 0 (MSS) | Group 1 (MSI) |
| YI | SE | SP | AUC |
|
|---|---|---|---|---|---|---|---|---|
| GLRLM RLNU | 4419 | 11829 | 0.037 | 0.44 | 77.8 | 65.8 | 0.725 | 0.040 |
| GLZLM SZHGE | 7334 | 7070 | 0.0081 | 0.55 | 88.9 | 65.8 | 0.787 | 0.001 |
| GLZLM GLNU | 97.39 | 186.42 | 0.025 | 0.49 | 88. 9 | 60.5 | 0.743 (0.594–0.859) | 0.014 |
| GLZLM ZLNU | 378.96 | 920.71 | 0.011 | 0.55 | 88.9 | 65.8 | 0.775 | 0.001 |
Legend: AUC: area under the curve; CI: confidence Interval; GLNU, gray-level nonuniformity; GLRLM, gray-level run length matrix; GLZLM: gray-level zone length matrix; RLNU: run length nonuniformity; SE: sensitivity; SP: specificity; SZHGE: short-zone high gray-level emphasis; YI: Youden Index; ZLNU: zone length nonuniformity.
Figure 4The microsatellite status with ROC curves of the 4 significant CT-TA parameters.