| Literature DB >> 34611410 |
Jie Min1, Fei Dong1, Pin Wu2, Xiaopei Xu1, Yimin Wu2, Yanbin Tan1, Fan Yang1, Ying Chai2.
Abstract
PURPOSE: Immunotherapy has made breakthroughs in the treatment of non-small-cell lung cancer (NSCLC); however, only a subset of patients achieved long-term survival, so it is of great importance to find a biomarker of lung cancer thus guide immunotherapy. Studies have shown that the infiltration level of tissue resident memory CD8+ T cells (CD8+ TRMs) is positively correlated with lung cancer prognosis and can be an ideal biomarker for assessing the tumor local immune status. We screened the radiomic features associated with CD8+ TRMs as targets in NSCLC surgical specimens by radiomic approaches, and established a radiomic predictive model to assess the local immune status, which may provide a scientific reference for lung cancer treatment strategies. PATIENTS AND METHODS: We retrospectively analyzed the NSCLC surgical specimens immune cell database and extracted CD8+ TRMs cell data, preoperative CT scan data were achieved. A total of 97 patients containing complete preoperative data were included, radiomic features were extracted from the preoperative CT image data. All the patients were divided into two groups, namely high-CD8+ TRMs infiltrated group and low-CD8+ TRMs infiltrated group, based on the proportion of CD8+ TRMs cells subset in the immune cell population. The most valuable radiomic features and semantic features were extracted and selected, and a neural network model was established to predict the level of CD8+ TRMs cell infiltration level to assess the tumor local immune status.Entities:
Keywords: CD8+ TRMs; NSCLC; non-small-cell lung cancer; radiomic; tissue resident memory CD8+ T cells; tumor immune status
Year: 2021 PMID: 34611410 PMCID: PMC8486276 DOI: 10.2147/OTT.S316994
Source DB: PubMed Journal: Onco Targets Ther ISSN: 1178-6930 Impact factor: 4.147
Figure 1The workflow of radiomic.
Results of the Analysis of Basic Demographic and Clinical Data
| Characteristic | Low – CD8+ TRMs | High – CD8+ TRMs | P value |
|---|---|---|---|
| Gender | 0.473 | ||
| Male | 25 | 21 | |
| Female | 24 | 27 | |
| Age (mean ± SD) | 62.7 ± 8.5 | 61.0 ± 7.9 | 0.032 |
| Pathology type | 0.01198 | ||
| Adenocarcinoma | 37 | 43 | |
| Others | 12 | 5 | |
| Boundary type | 0.01957 | ||
| Clear | 31 | 18 | |
| Vague | 18 | 30 | |
| Texture type | 0.09549 | ||
| Solid | 38 | 36 | |
| Mixed | 11 | 12 | |
| Lymphatic metastasis | 0.009452 | ||
| Positive | 21 | 8 | |
| Negative | 28 | 40 |
Abbreviation: CD8+ TRMs, tissue resident memory CD8+ T cells.
Figure 2Representative flow cytometric analysis of low-CD8+ TRMs (left), high-CD8+ TRMs (right) in NSCLC.
Figure 3ROC curves of the selected radiomics features (A and B), the threshold of the two radiomics features were 0.484, AUC 0.622 (95% CI 0.490–0.750) and 16,926.812, AUC 0.621 (95% CI 0.571–0.688). The boxplot showed the two radiomic features in the high– from the low-CD8+ TRMs groups (C and D).
Selected Features with Descriptions of the High– and Low-CD8+TRMs Infiltrating Phenotypes
| Feature Name | Description | P value |
|---|---|---|
| Original_glcm_MCC | A measure of complexity of the texture | 0.0383 |
| Original_gldm_Large Dependence High Gray Level Emphasis | Measures the joint distribution of large dependence with higher gray-level values | 0.0377 |
| Boundary type | The boundary of the tumor is clear or vague | 0.01957 |
| Lymphatic metastasis | Lymph node involvement or non-involvement | 0.009452 |
Abbreviations: glcm_MCC, A Gray Level Co-occurrence Matrix (glcm)_Maximal Correlation Coefficient (MCC); gldm, a gray level dependence matrix.
Figure 4The neural network model building with the selected radiomics features and the semantic features. The neural network model included 3 layers, as the capital letter “I” refer to “Input layer” and included 4 features. Bias layer included 2 variables. Hide layer included 3 variables. Output layer included 1 variable. The line refers to the variable weight.
Figure 5ROC curves of the radiomic model in the training set (black curve) and the validation set (red curve).