| Literature DB >> 30705664 |
Lincoln A Edwards1, Sungjin Kim2, Mecca Madany1, Miriam Nuno1, Tom Thomas1, Aiguo Li3, Dror Berel2, Bong-Sup Lee1, Minzhi Liu1, Keith L Black1, Xuemo Fan4, Wei Zhang3, John S Yu1.
Abstract
Objective: To address the unmet medical need to better prognosticate patients with diffuse gliomas and to predict responses to chemotherapy regimens.Entities:
Keywords: ZEB1; copy number; decision curve analysis; diffuse gliomas; glioma stem cells (GSCs)
Year: 2019 PMID: 30705664 PMCID: PMC6345215 DOI: 10.3389/fneur.2018.01199
Source DB: PubMed Journal: Front Neurol ISSN: 1664-2295 Impact factor: 4.003
Univariate and multivariable overall survival analyses with ZEB1 alone and IDH/ZEB1 in addition to clinical variables in patients with grade II/III gliomas.
| Age at diagnosis | 334 | 1.07 (1.05–1.10) | <0.001 | 1.06 (1.04–1.09) | <0.001 | 1.06 (1.04–1.08) | <0.001 | 1.07 (1.05–1.09) | <0.001 |
| Histologic type | 0.073 | ||||||||
| Astrocytoma | 112 | 1.88 (1.08–3.30) | 0.027 | Not included | |||||
| Ambiguous histology | 87 | 1.16 (0.57–2.35) | 0.677 | ||||||
| Oligodendrogliomas | 135 | 1 (Reference) | |||||||
| II | 153 | 0.32 (0.18–0.56) | <0.001 | 0.55 (0.30–1.01) | 0.056 | 0.56 (0.30–1.03) | 0.060 | 0.38 (0.21–0.67) | <0.001 |
| III | 181 | 1 (Reference) | 1 (Reference) | 1 (Reference) | 1 (Reference) | ||||
| True | 76 | 0.51 (0.26–0.99) | 0.048 | Not included | |||||
| False | 138 | 1 (Reference) | |||||||
| CN deletion | 63 | 7.20 (4.24–12.24) | <0.001 | 4.25 (2.35–7.66) | <0.001 | Not included | Not included | ||
| Wildtype | 271 | 1 (Reference) | 1 (Reference) | ||||||
| IDH/ZEB1 | <0.001 | <.001 | |||||||
| IDHmut-ZEB1wt | 257 | 0.07 (0.04–0.13) | <0.001 | Not included | 0.13 (0.06–0.27) | <0.001 | Not included | ||
| IDHwt-ZEB1wt | 14 | 0.16 (0.05–0.48) | 0.001 | 0.31 (0.10–0.97) | 0.044 | ||||
| IDHmut-ZEB1del | 8 | 0.18 (0.06–0.57) | 0.004 | 0.26 (0.08–0.85) | 0.026 | ||||
| IDHwt-ZEB1del | 55 | 1 (Reference) | 1 (Reference) | ||||||
| Optimism-corrected c-statistic (95% CI) | 0.832 (0.745, 0.919) | 0.841 (0.754, 0.928) | 0.813 (0.726, 0.900) | ||||||
Overall p-value for variables with more than two categories.
Formerly Oligoastrocytoma.
Dropped out of the final model.
334 observations were used in multivariable models.
Multivariable model including ZEB1 as well as clinical variables.
Multivariable model including IDH/ZEB1 as well as clinical variables.
Base model without a predictor variable of either ZEB1 alone or IDH/ZEB1.
Figure 1ZEB1 copy number aberrations in low grade gliomas. (A) Histogram of copy-number of low grade glioma patients. This plot represents an aggregate of low grade gliomas. Percentage values in Y axis corresponding to numbers of gains (yellow) and losses (blue) account for the whole dataset. (B) ZEB1 deletion represented by deep deletion (homozygous), shallow deletion (heterozygous), diploid (wildtype), corresponding to the ZEB1 expression level represented on the Y axis. (C) Estimated Kaplan-Meier survival curves based on copy number for ZEB1 low grade gliomas patients **P < 0.001. ZEB1 deletion for low grade glioma, defined as copy number less than or equal to −0.5 (n = 63); wildtype (WT) defined as copy number greater than or equal to zero (n = 271). Two-tailed student t-test identified a significant difference between these two groups **P < 0.001.
Figure 2ZEB1 DNA Methylation in low grade gliomas. (A) Heat-map representation of an unsupervised clustering of DNA methylation profiles of 434 low grade glioma tumors. Each row represents a probe; each column represents a sample. The level of DNA methylation (beta value) is represented with a color scale methylated (yellow) and unmethylated (blue). Sample, subgroup association, and patient ID are indicated at the right. (B) Representative coMET plot of ZEB1 methylation in a low grade glioma patient to identify methylated CpG probe clusters. The coMET plot generates localized plots of estimated DNA methylation correlation between CpG sites (co-methylation). (C) Mexpress plot was used to further specify DNA methylation. A negative correlation can be identified between increased ZEB1 DNA methylation and ZEB1 expression in low grade glioma patients. (D) ZEB1 DNA binding domain sequence identified by TERT promoter analysis and motif enrichment. The letter height indicates the occurrence frequency which is denoted by the Y-axis. And the corresponding nucleotide at each position denoted by the X-axis. (E) A luciferase TERT promoter reporter was transiently transfected into 293T cells with or without transient transfection of certain ZEB1 expressing construct concentrations. The relative luciferase level indicates TERT promoter activity and is expressed on the Y-axis. TERT activity was substantially decreased with transient transfection of ZEB1. Experiments were quantified by one-way ANOVA, *P < 0.05.
Figure 3Decision curve analysis of ZEB1 and ZEB1/IDH1. (A) Calibration plots for 2-year overall survival with models with and without ZEB1 or IDH/ZEB1 in patients with grade II/III gliomas. The 45° line is a reference line indicating a perfect prediction; the black curve indicates the performance of the model; and the blue dotted curve indicates optimism-corrected estimates by bootstrapping with 1,000 replicates. (B) Decision curve analysis for 2-year mortality with the models with and without ZEB1 or IDH/ZEB1 in patients with grade II/III gliomas. Decision curve for the model without ZEB1/IDH1, with ZEB1, and with ZEB1/IDH1 to predict treatment within 2 years of diagnosis with age and/or grade. The small gray line indicates the net benefit for “treat all,” while the horizontal line indicates “treat none.” These 2 lines serve as a reference for the lines for the net benefit of models with or without the molecular markers ZEB1/IDH1. We see that the predictions get better with use of the molecular markers ZEB1 alone or with ZEB1 and IDH1 together with the conventional determinants of age and grade. RT, radiation therapy; PCV, procarbazine, CCNU, and vincristine.