| Literature DB >> 32807114 |
Patricia Lorenzo-Luaces1, Lizet Sanchez2, Danay Saavedra1, Tania Crombet1, Wim Van der Elst3, Ariel Alonso4, Geert Molenberghs5, Agustin Lage6.
Abstract
BACKGROUND: Immunosenescence biomarkers and peripheral blood parameters are evaluated separately as possible predictive markers of immunotherapy. Here, we illustrate the use of a causal inference model to identify predictive biomarkers of CIMAvaxEGF success in the treatment of Non-Small Cell Lung Cancer Patients.Entities:
Keywords: CIMAvaxEGF; Causal inference; Non-small-cell lung cancer; Predictive biomarkers
Mesh:
Substances:
Year: 2020 PMID: 32807114 PMCID: PMC7433036 DOI: 10.1186/s12885-020-07284-4
Source DB: PubMed Journal: BMC Cancer ISSN: 1471-2407 Impact factor: 4.430
Demographic and clinic characteristics of the patients
| Characteristics | Control | CIMAvaxEGF | |
|---|---|---|---|
| Gender | |||
| Male | 8 (66.7%) | 18 (64.3%) | 0.92 |
| Female | 4 (33.3%) | 10 (35.7%) | |
| Age | |||
| ≤ 60 | 9 (75.0%) | 16 (57.1%) | 0.28 |
| > 60 | 3 (25.0%) | 12 (42.5%) | |
| Race | |||
| White | 16 (57.1%) | 6 (50.0%) | 0.65 |
| Afro | 10 (35.7%) | 4 (33.3%) | |
| Other | 2 (7.1%) | 2 (16.7%) | |
| Smoking History | |||
| Current | 17 (60.7%) | 7 (58.3%) | 0.63 |
| Pass | 9 (32.8%) | 3 (25.0%) | |
| Never | 2 (7.1%) | 2 (16.7%) | |
| ECOG | |||
| 0 | 11 (39.3%) | 5 (41.7%) | 0.29 |
| 1 | 13 (46.4%) | 3 (25.0%) | |
| 2 | 4 (14.3%) | 4 (33.3%) | |
| Disease stage | |||
| IIIb | 13 (46.4%) | 7 (58.3%) | 0.26 |
| IV | 15 (53.6%) | 5 (41.7%) | |
| Tumor histology | |||
| Adenocarcinoma | 7 (25.0%) | 2 (16.7%) | 0.56 |
| Squamous | 21 (75.0%) | 10 (83.3%) | |
| Response to first Line | |||
| Complete response | 2 (7.1%) | 1 (8.3%) | 0.78 |
| Partial response | 11 (39.3%) | 6 (50.0%) | |
| Stable diseases | 15 (53.6%) | 5 (41.7%) | |
Predictive Individual Causal Association (PCI) for each predictor
| Predictors | PCI mean (min-max) |
|---|---|
| Basal EGF concentration | 0.005 (0.003–0.008) |
| Eosinophils | 0.001 (0.001–0.002) |
| Lymphocytes | 0.007 (0.005–0.012) |
| Neutrophils | 0.030 (0.019–0.051) |
| Platelets | 0.036 (0.023–0.059) |
| Monocytes | 0.163 (0.108–0.259) |
| NLR | 0.025 (0.016–0.043) |
| PLR | 0.004 (0.003–0.008) |
| Proportion of CD19+ B cell | 0.053 (0.034–0.087) |
| Proportion of CD8+ T cell | 0.087 (0.062–0.127) |
| Proportion of CD8 + CD28- T cell | 0.148 (0.098–0.239) |
| CD4+/CD8+ ratio | 0.443 (0.324–0.626) |
| Proportion of CD4+ T cell | 0.486 (0.353–0.694) |
Fig. 1Predictive individual causal association by the best model according to the number of predictors: 1-proportion of CD4+ T cell, 2- proportion of CD4+ T cell and absolute monocytes counts, 3- proportion of CD4+ T cell, NLR and Neutrophils, 4- proportion of CD4+ T cell, NLR, Neutrophils and Eosinophils, 5- Proportion of CD4+ T cell, basal EGF concentration, NLR, Monocytes and Neutrophils, 6- Proportion of CD4+ T cell, Proportion of CD8+ T cell, basal EGF concentration, NLR, Monocytes and Neutrophils, 7- Proportion of CD4+ T cell, Proportion of CD8+ T cell, basal EGF concentration, NLR, Monocytes, Neutrophils and Eosinophils
Fig. 2Predictive probability of treatment success for three examples of a Good responder (basal EGF concentration = 1700, CD4+ T cells = 65, CD4/CD8 ratio = 3, NLR = 2, Neutrophils = 50), b Rare (basal EGF concentration = 900, CD4+ T cells =35, CD4/CD8 ratio = 3, NLR = 2, Neutrophils = 55) and c Bad responders (basal EGF concentration = 200, CD4+ T cells =10, CD4/CD8 ratio = 1, NLR = 1, Neutrophils = 60) to CIMAvax-EGF
Fig. 3Kaplan Meier survival curves for patient treated with CIMAvax-EGF and control for a) good responders, b) bad responders