| Literature DB >> 28327577 |
Llewellyn E Jalbert1, Adam Elkhaled1,2, Joanna J Phillips3,4, Evan Neill1, Aurelia Williams1, Jason C Crane1, Marram P Olson1, Annette M Molinaro4,5, Mitchel S Berger4, John Kurhanewicz1,2, Sabrina M Ronen1, Susan M Chang4, Sarah J Nelson1,2.
Abstract
Infiltrating low grade gliomas (LGGs) are heterogeneous in their behavior and the strategies used for clinical management are highly variable. A key factor in clinical decision-making is that patients with mutations in the isocitrate dehydrogenase 1 and 2 (IDH1/2) oncogenes are more likely to have a favorable outcome and be sensitive to treatment. Because of their relatively long overall median survival, more aggressive treatments are typically reserved for patients that have undergone malignant progression (MP) to an anaplastic glioma or secondary glioblastoma (GBM). In the current study, ex vivo metabolic profiles of image-guided tissue samples obtained from patients with newly diagnosed and recurrent LGG were investigated using proton high-resolution magic angle spinning spectroscopy (1H HR-MAS). Distinct spectral profiles were observed for lesions with IDH-mutated genotypes, between astrocytoma and oligodendroglioma histologies, as well as for tumors that had undergone MP. Levels of 2-hydroxyglutarate (2HG) were correlated with increased mitotic activity, axonal disruption, vascular neoplasia, and with several brain metabolites including the choline species, glutamate, glutathione, and GABA. The information obtained in this study may be used to develop strategies for in vivo characterization of infiltrative glioma, in order to improve disease stratification and to assist in monitoring response to therapy.Entities:
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Year: 2017 PMID: 28327577 PMCID: PMC5361089 DOI: 10.1038/srep44792
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Patient and tissue sample population by grade at the time of surgery, histological subtype, and IDH mutation status.
| Grade/Hist | Total patients (samples) | |||
|---|---|---|---|---|
| All | 126 (219) | 15 (26) | 108 (190) | 3 (3) |
| II | 62 (103) | 10 (16) | 50 (85) | 2 (2) |
| III | 50 (89) | 2 (4) | 47 (84) | 1 (1) |
| IV | 14 (27) | 3 (6) | 11 (21) | — |
| AS | 52 (83) | 8 (12) | 42 (69) | 2 (2) |
| OA | 30 (57) | 5 (10) | 24 (46) | 1 (1) |
| OD | 44 (79) | 2 (4) | 42 (75) | — |
The patient population comprised astrocytoma, oligodendroglioma, and oligoastrocytoma histological subtypes. The majority of patients (88%) harbored IDH-mutant lesions and 64 patients (51%) had undergone MP. It is of note that 10 of the patients were scanned at two distinct recurrences.
Statistically significant metabolite levels of all histologies between IDH status and tumor grade.
| All histologies | (med ± SE) | All histologies | (med ± SE) | ||
|---|---|---|---|---|---|
| Metabolite | Grade II | Grade III | GBM | ||
| Cho Cho | 7.4 ± 1.26 | 3.72 ± 0.73 | — | — | — |
| GPC | 20.2 ± 3.64 | 9.2 ± 2.09 | — | — | — |
| PC | 11.54 ± 3.0 | 6.58 ± 1.37 | 9.38 ± 1.68 | 14.26 ± 5.04 | 26.44 ± 15.08 |
| tCho | 38.18 ± 5.81 | 21.03 ± 3.16 | 23.05 ± 5.01 | 36.31 ± 9.37 | 64.27 ± 18.48 |
| GSH | — | — | 11.52 ± 1.54 | 12.76 ± 4.51 | 17.28 ± 7.06 |
| hTau | — | — | 2.05 ± 0.63 | — | 4.07 ± 0.77 |
| Tau | — | — | 14.87 ± 2.3 | 31 ± 4.24 | 29.6 ± 10.1 |
| 2HG | 8.17 ± 1.01 | 2.82 ± 0.47 | 5.43 ± 1.1 | 7.88 ± 1.57 | 13.7 ± 2.57 |
| Glu | 49.84 ± 4.99 | 94.18 ± 33.03 | 41.76 ± 6.17 | 52.18 ± 8.13 | 79.79 ± 24.65 |
| Gln | — | — | 33.09 ± 5.64 | — | 38.24 ± 15.39 |
| Glc | — | — | 31.31 ± 5.12 | — | 35.74 ± 44.41 |
| Ala | — | — | 11.73 ± 2.31 | 17.12 ± 9.49 | 20.87 ± 10.88 |
| Asp | — | — | 37.83 ± 4.89 | 39.33 ± 5.83 | 71.32 ± 27.7 |
| GABA | 2.92 ± 0.42 | 6.48 ± 3.04 | — | — | — |
| Gly | — | — | 33.46 ± 5.67 | 46.12 ± 8.57 | 78.03 ± 29.75 |
| Bet | — | — | 0.85 ± 0.1 | 0.88 ± 0.18 | 1.27 ± 0.6 |
Mixed-effects logistical regression results demonstrated significant differences in various metabolite levels between IDH genotype and tumor grades (p < 0.05). Metabolite levels are presented for statistically significant metabolites at a tissue sample level. These results are presented as median spectral areas for each metabolite as fit by HR-QUEST.
Figure 1Flow diagram of metabolite differences associated with IDH mutation status and MP.
Here we present the metabolic differences associated with IDH mutation versus wild-type lesions, as well as profile differences associated with malignant progression across all histologies, as well as within individual astrocytoma and oligodendroglioma subtypes. Within IDH-mutated lesions, we found significant elevations in 2HG, and found decreases in Glu and GABA versus wild-type. When assessing Grade II and III lesions, we found increases in the choline species associated with the IDH genotype. Further, we found several metabolite levels to be increased in tumors that had undergone MP versus those that did not, including specific differences associated with MP within distinct histological subtypes.
Figure 2Averaged HR-MAS spectral profile from IDH mutation status and MP across different histological grades.
Results were normalized by tissue weight to produce an averaged spectrum at the tissue sample level for IDH genotypes and individual grades. IDH-mutated spectral profiles demonstrate increased 2HG, Cho, GPC, PC, and tCho and decreased Glu and GABA (A), while many metabolites were elevated in tumors that had undergone MP (B,C).
Figure 3Metabolic spectral heatmap across samples categorized by IDH mutation, histological subtype, and grade at the time of surgery.
The heatmap was generated from the HR-QUEST quantification of individual tissue sample spectra (rows) and organized by metabolite (columns). Data were normalized by the 90th-percentile across columns and sorted by PC within each grade providing comprehensive visualization of the entire dataset and distribution of metabolite levels across subtype and histological grades. We observed intra-patient heterogeneity of tissue samples, as well as global elevation in the key metabolites associated with IDH mutation, histological subtype, and MP.
Metabolite and histopathology correlations with 2HG levels.
| Variable correlated | Correlation type | Number of pairs | |
|---|---|---|---|
| Cho | + | 62 | |
| GPC | + | 70 | |
| PC | + | 60 | |
| tCho | + | 70 | |
| PE | + | 58 | |
| GSH | + | 43 | |
| Tau | + | 30 | |
| Glu | + | 66 | |
| Gln | + | 62 | |
| Asp | + | 46 | |
| myo-I | + | 64 | |
| SI | + | 39 | |
| GABA | + | 35 | |
| PCr/Cr | + | 69 | |
| Gly | + | 55 | |
| Bet | + | 45 | |
| Tbr | + | 48 | |
| Mitosis (MIB1) | + | 55 | |
| Axonal disruption (SMI31) | + | 53 | |
| Simple vascular neoplasia | + | 49 | |
| Complex vascular neoplasia | + | 54 |
Each of the study parameters correlated with 2HG is presented as determined from Pearson testing for all continuous variables and Kendell Tau testing for ordinal variables. Here we present the correlated parameters with their associated number of tested pairs and median p values. Normalization by cell density did not affect any correlation within IDH-mutant tumors.