| Literature DB >> 23633034 |
Larissa Pikor1, Kelsie Thu, Emily Vucic, Wan Lam.
Abstract
Genomic instability is a hallmark of cancer that leads to an increase in genetic alterations, thus enabling the acquisition of additional capabilities required for tumorigenesis and progression. Substantial heterogeneity in the amount and type of instability (nucleotide, microsatellite, or chromosomal) exists both within and between cancer types, with epithelial tumors typically displaying a greater degree of instability than hematological cancers. While high-throughput sequencing studies offer a comprehensive record of the genetic alterations within a tumor, detecting the rate of instability or cell-to-cell viability using this and most other available methods remains a challenge. Here, we discuss the different levels of genomic instability occurring in human cancers and touch on the current methods and limitations of detecting instability. We have applied one such approach to the surveying of public tumor data to provide a cursory view of genome instability across numerous tumor types.Entities:
Mesh:
Year: 2013 PMID: 23633034 PMCID: PMC3843371 DOI: 10.1007/s10555-013-9429-5
Source DB: PubMed Journal: Cancer Metastasis Rev ISSN: 0167-7659 Impact factor: 9.264
Fig. 1Nucleotide and microsatellite instability. a Detection of a G>C variant encoding a Gly>Arg amino acid change by Sanger sequencing in two lung cancer cell lines. b Defects in MMR lead to the expansion or contraction of microsatellites throughout the genome
Fig. 2Chromosomal instability. a Normal karyotype. b Example of a potential karyotype of a cell with chromosomal instability and aneuploidy. The red box indicates an inversion and the purple chromosomes represent translocations. The orange and green boxes indicate the chromosomal regions depicted in (c) and (d) which harbor amplifications and can be visualized by FISH (c) and array-CGH (d)
Currently available methods of detecting genome instability
| Method | Cellularity | Alterations detected | Rate and state | |
|---|---|---|---|---|
| Karyotyping | Single cell | Whole and segmental CIN, aneuploidy | –a | –a |
| Single-cell sequencing | Single cell | Whole and segmental CIN, translocations, insertions, deletions, and mutations | –a | –c |
| Flow cytometry | Multi-cell | Cell ploidy/aneuploidy | –b | –b |
| Array-CGH | Multi-cell | Whole and segmental CIN | N/A | –a |
| SNP arrays | Multi-cell | Whole and segmental CIN, SNP, UPD, LOH | N/A | –a |
| Whole-genome sequencing | Multi-cell | Whole and segmental CIN, translocations, insertions, deletions, and mutations | N/A | –c |
| PCR | Multi-cell | MSI, mitochondrial instability | –b | –a |
SNP single nucleotide polymorphisms, UPD uniparental disomy, LOH loss of heterozygosity, CGH comparative genomic hybridization, N/A cannot detect
aBest approach for measuring rate and state
bUseful but not ideal at measuring rate and state
cNot very useful at measuring rate and state
Fig. 3Information provided from whole-genome sequencing. a Legend depicting the genomic data (rearrangements, SNPs, LOH, lesser allele fraction, copy number, somatic mutations, and genes affected by these alterations) available following whole-genome sequencing. b Circos plot of a lung adenocarcinoma tumor from a never smoker referenced against the matched non-malignant tissue
Proportion of genome altered (log2 ratio ± 0.1) for various cancer types (n = 2,201)
| Type | Count | Median | Average | SD |
|---|---|---|---|---|
| Mesothelioma | 18 | 0.579305 | 0.539195 | 0.261045 |
| Lung SC | 17 | 0.574731 | 0.539328 | 0.265144 |
| Melanoma | 3 | 0.533935 | 0.63286 | 0.178692 |
| Breast | 193 | 0.361504 | 0.359875 | 0.228679 |
| Ovarian | 95 | 0.330162 | 0.348426 | 0.298813 |
| Lung NSC | 629 | 0.318028 | 0.324707 | 0.234076 |
| Esophageal squamous | 2 | 0.293933 | 0.293933 | 0.415683 |
| Hepatocellular | 110 | 0.242876 | 0.288188 | 0.222686 |
| Glioma | 28 | 0.198592 | 0.22249 | 0.143089 |
| Neuroblastoma | 25 | 0.196659 | 0.287776 | 0.24191 |
| Colorectal | 128 | 0.189425 | 0.261818 | 0.244976 |
| Renal | 99 | 0.130901 | 0.226044 | 0.224458 |
| Medulloblastoma | 119 | 0.110602 | 0.208003 | 0.250298 |
| Meningioma | 6 | 0.088144 | 0.228436 | 0.347694 |
| Endometrial | 1 | 0.07679 | 0.07679 | N/A |
| Prostate | 83 | 0.065822 | 0.180566 | 0.231366 |
| Synovial sarcoma | 2 | 0.030057 | 0.030057 | 0.042508 |
| Acute lymphoblastic leukemia | 378 | 0.02309 | 0.120554 | 0.256989 |
| Schwannoma | 5 | 0.011336 | 0.015021 | 0.012035 |
| Sarcoma NOS | 1 | 0.009686 | 0.009686 | N/A |
| Myelodysplasia | 19 | 0.000621 | 0.007157 | 0.009818 |
| Thyroid | 9 | 0.000445 | 0.083437 | 0.157782 |
| GIST | 16 | 0.000207 | 0.1654 | 0.341026 |
| Myeloproliferative disorder | 215 | 0.000135 | 0.011227 | 0.048053 |
Fig. 4Pan-cancer trends in genome instability. a Average number of copy number alterations for cell lines from each cancer type. Error bars represent standard deviation. b Average percent of the genome altered for all cell lines within each tumor type. Error bars represent standard deviation