| Literature DB >> 27997549 |
Olivia M Padovan-Merhar1, Pichai Raman1, Irina Ostrovnaya2, Karthik Kalletla1, Kaitlyn R Rubnitz1, Eric M Sanford1, Siraj M Ali3, Vincent A Miller3, Yael P Mossé1, Meaghan P Granger4, Brian Weiss5, John M Maris1, Shakeel Modak2.
Abstract
Neuroblastoma is characterized by a relative paucity of recurrent somatic mutations at diagnosis. However, recent studies have shown that the mutational burden increases at relapse, likely as a result of clonal evolution of mutation-carrying cells during primary treatment. To inform the development of personalized therapies, we sought to further define the frequency of potentially actionable mutations in neuroblastoma, both at diagnosis and after chemotherapy. We performed a retrospective study to determine mutation frequency, the only inclusion criterion being availability of cancer gene panel sequencing data from Foundation Medicine. We analyzed 151 neuroblastoma tumor samples: 44 obtained at diagnosis, 42 at second look surgery or biopsy for stable disease after chemotherapy, and 59 at relapse (6 were obtained at unknown time points). Nine patients had multiple tumor biopsies. ALK was the most commonly mutated gene in this cohort, and we observed a higher frequency of suspected oncogenic ALK mutations in relapsed disease than at diagnosis. Patients with relapsed disease had, on average, a greater number of mutations reported to be recurrent in cancer, and a greater number of mutations in genes that are potentially targetable with available therapeutics. We also observed an enrichment of reported recurrent RAS/MAPK pathway mutations in tumors obtained after chemotherapy. Our data support recent evidence suggesting that neuroblastomas undergo substantial mutational evolution during therapy, and that relapsed disease is more likely to be driven by a targetable oncogenic pathway, highlighting that it is critical to base treatment decisions on the molecular profile of the tumor at the time of treatment. However, it will be necessary to conduct prospective clinical trials that match sequencing results to targeted therapeutic intervention to determine if cancer genomic profiling improves patient outcomes.Entities:
Mesh:
Substances:
Year: 2016 PMID: 27997549 PMCID: PMC5172533 DOI: 10.1371/journal.pgen.1006501
Source DB: PubMed Journal: PLoS Genet ISSN: 1553-7390 Impact factor: 5.917
Fig 1Study cohort overview A) Tabulation of Children’s Oncology Group (COG) risk classification and treatment time points of biopsy for 151 samples. (Intermed. = intermediate risk group) B) Number of samples taken at each treatment time point for nine patients with serial biopsies. (HR = high risk, IR = intermediate risk, LR = low risk at time of biopsy; further information in S2 Table) C) Tabulation of all variants identified (VUS: variants of unknown significance) D) Total number of variants identified per sample, stratified by COG risk group. Inset shows a similar calculation for suspected driver variants only. Heavy line represents the median of the data. “n” indicates the number of patients in each risk group. E) Total number of variants in each sample. Each bar represents an individual sample; color corresponds to risk group (red = high, blue = intermediate, green = low).
Fig 2Suspected driver variants in diagnostic, treated, and relapsed neuroblastomas A) Frequency of all suspected driver short variants (single nucleotide variants, insertions, deletions) per gene in the entire cohort. Bars represent the number of patients with at least one lesion in a given gene, normalized to the total number of patients at each time point. Patients with multiple lesions in the same gene were only counted once per gene. B) All suspected driver amplification events with copy number >10. Bars represent the number of patients at each time point with a given gene amplification, normalized to the total number of patients at that treatment time point. C) All suspected driver homozygous deletion events. Bars represent the number of patients at each time point with a given gene loss, normalized to the total number of patients at that treatment time point. D) All suspected driver gene rearrangements and fusions. Bars represent the number of patients at each time point with a given genomic rearrangement, normalized to the total number of patients at that treatment time point. E) Number of variants in each sample, stratified by type of variant (“All variants” includes suspected driver variants as well as VUSs; “Suspected” includes suspected driver variants only; “Actionable” are suspected driver variants that have FDA approved or investigational therapy matches) and disease time point (blue, diagnosis; yellow, post-treatment; red, relapse). P values calculated using Welch’s T-test. F) Fraction of samples containing at least one variant of each type (variant types as described in (E)), stratified by disease time point. P values calculated using Fisher’s exact test.
Fig 3Mutation frequencies in A) Frequency of suspected driver genomic alterations (short variants, copy number changes, and genomic rearrangements and fusions; MYCN amplification events excluded) in patients with and without MYCN amplification. Bars represent number of patients with at least one lesion in a given gene, normalized by the number of patients in each category. B) Percentage of patients with any suspected driver variant in the MAPK pathway at diagnosis, after treatment, and at relapse. Patients with multiple mutations in the same gene are only counted once.
Genetic variants from a single patient at different treatment time points.
Each biopsy was at a different anatomic site. Red denotes suspected driver variants; gray denotes variants of unknown significance. Letter preceding tumor location indicates primary (P) or metastatic (M) site. Number in parentheses indicates inferred allelic fraction for mutation calls, or inferred copy number for amplification or deletion calls. See S2 Table for additional details. Note that this patient was treated with crizotinib following the 5th relapse.
| Patient ID 2 | |||
|---|---|---|---|
| Diagnosis (P, Retroperitoneum) | 4th Relapse (M, Neck) | 5th Relapse (M, Psoas) | 6th Relapse (M, Abdomen) |
| ALK R1275Q (0.32) | |||
| ALK F1245V (0.30) | |||
| ARID1A R1950Q (0.52) | ARID1A R1950Q (0.52) | ARID1A R1950Q (0.52) | ARID1A R1950Q (0.50) |
| ATRX loss (0.17x) | ATRX loss (0x) | ATRX loss (0x) | |
| BCOR loss (0.35x) | |||
| BCOR S209L (0.99) | BCOR S209L (1.0) | BCOR S209L (1.0) | BCOR S209L (0.99) |
| C11orf30 A1037T (0.33) | |||
| CD274 H233L (0.9) | |||
| CDK4 amplification (11x) | CDK4 amplification (30x) | CDK4 amplification (11x) | CDK4 amplification (82x) |
| CDK4 rearrangement | CDK4 rearrangement | CDK4 rearrangement | CDK4 rearrangement |
| EPHA5 G783A (0.69) | EPHA5 G783A (0.66) | EPHA5 G783A (0.62) | EPHA5 G783A (0.93) |
| ERBB2 G549R (0.21) | |||
| FGFR1 N546K (0.30) | FGFR1 N546K (0.25) | ||
| FGFR4 S737F (0.36) | FGFR4 S737F (0.38) | FGFR4 S737F (0.51) | FGFR4 S737F (0.32) |
| IRF8 H281D (0.25) | |||
| KIT V532I (0.35) | KIT V532I (0.35) | KIT V532I (0.37) | KIT V532I (0.05) |
| PARP4 rearrangement | |||
| PBRM1 Y390F (0.51) | PBRM1 Y390F (0.52) | PBRM1 Y390F (0.51) | PBRM1 Y390F (0.52) |
| RICTOR K1281T (0.23) | |||
| SMAD2 P177R (0.25) | |||