| Literature DB >> 27191992 |
Ekaterina A Kotelnikova1,2,3, Mikhail Pyatnitskiy1,4,5, Anna Paleeva1, Olga Kremenetskaya1,6, Dmitriy Vinogradov1,2,7.
Abstract
Nowadays, the personalized approach to health care and cancer care in particular is becoming more and more popular and is taking an important place in the translational medicine paradigm. In some cases, detection of the patient-specific individual mutations that point to a targeted therapy has already become a routine practice for clinical oncologists. Wider panels of genetic markers are also on the market which cover a greater number of possible oncogenes including those with lower reliability of resulting medical conclusions. In light of the large availability of high-throughput technologies, it is very tempting to use complete patient-specific New Generation Sequencing (NGS) or other "omics" data for cancer treatment guidance. However, there are still no gold standard methods and protocols to evaluate them. Here we will discuss the clinical utility of each of the data types and describe a systems biology approach adapted for single patient measurements. We will try to summarize the current state of the field focusing on the clinically relevant case-studies and practical aspects of data processing.Entities:
Keywords: next generation sequencing (NGS); pathways; personalized medicine; precision oncology; systems biology
Mesh:
Substances:
Year: 2016 PMID: 27191992 PMCID: PMC5239569 DOI: 10.18632/oncotarget.9370
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Companies, technologies and kits for precision oncology
| Name | Website | Disease/Tissue specificity | Scope of coverage and methods | Description (detection with or without therapeutic interpretation) |
|---|---|---|---|---|
| Foundation Medicine | Universal cancer panels: Solid tumors (Foundation one) and hematologic tumors (FoundationOne Heme) | Panels | Analysis of solid and Hematologic tumors–detection and interpretation of all class of genomic alterations (including base substitutions, InDels, CNAs, rearrangements and fusion genes) | |
| Personal Genome Diagnostics (PGDX) | Universal cancer Panels and tissue specific panel for NSCLC (LungSelect) | Full exome + panel (120 cancer genes) | Detection and interpretation of SNVs, InDels, CNAs and rearrangements | |
| Ambry Genetics | Universal cancer panels (solid tumors) + tissue specific cancer panels (ColoNext; OvaNext; PancNext; PGLNext; RenalNext) | Kits and cancer panels + exome and (mtDNA) genome | Detection and interpretation of gene SNVs, InDels, CNAs large rearrangements for specific types of cancer. | |
| GeneDx | Universal cancer panels + tissue specific cancer panels (for breast, ovarian, colorectal, pancreatic, endometria cancers and Familial Cutaneous Malignant Melanoma) | Full exome (WES, NGS) + panels | Detection of SNVs, InDels. Deletion testing of mtDNA, detection of mtNDA SNVs. | |
| NeoGenomics Laboratories | Tissue specific cancer panels (for NSCLC; Melanoma; Colorectal Cancer) | Panels + IHC, FISH, Flow Cytometry, RT-PCR | Detection of SNVs, InDels, CNAs, rearrangements, fusions | |
| Caris | Universal cancer panel | Panels + IHC; CISH; FISH; RT-PCR; Sanger Sequencing, Pyro Sequencing; Fragment Analysis | Detection and interpretation of SNVs, CNAs, InDels, fusions and level of expression of protein biomarkers in solid tumors for therapeutic decision support and clinical trials matching. | |
| Myriad Genetics | Tissue specific cancer panels (breast and ovarian cancer) | Panel for BRCA1, BRCA2 | Detection of gene mutations | |
| Quest Diagnostics | Universal cancer panel | Panel | Detection of SNVs and InDels; | |
| GPS@WUSTL | Universal cancer panels | Panel | Detection of SNVs and InDels | |
| Arup Laboratories | Tissue specific cancer panels for gastrointestinal cancer | Panel + IHC, FISH, and PCR | Screening, risk prediction, diagnosis, prognosis, monitoring, pharmacogenomics, and therapeutic triage of malignancies. Detection of SNVs, InDels, chromosomal alterations and level of expression of oncomarkers. | |
| MolecularHealth | Universal cancer panels | Exome+panel (over 500 cancer-related genes), Comparative Genomic Hybridization (aCGH) used as an additional test | Interpretation of whole exome analysis data, detection and interpretation of gene alterations. Integration and interpretation of biological, medical and drug Response information. | |
| Personalis | Universal cancer panels (solid tumors) | Panels (more than 1,300 cancer genes and more than 200 miRNA genes)+ exome (WES)+ transcriptome | Detection of SNVs, InDels, CNAs, fusion genes, LOH, gene expression profiling, low-level variant expression. | |
| OncoDNA | Universal cancer panels (solid tumors) | Panels (OncoDEEP DX - 65 genes, with wide coverage of the KRAS, BRAF, EGFR; OncoDEEP Clinical - more than 400 genes; Plus Package - multi-platform approach to complete the characterization of the tumor, including FISH, PCR, ICH) | Detection and interpretation of SNVs, InDels, CNAs, translocations, microsatellite instability, DNA methylation, presence and activation of specific proteins. Integration of all the data, analysis of molecular networks, findings of the latest publications and generation of a comprehensive and intuitive report. | |
| GenomOncology | Universal cancer panels (solid tumors) | Bioinformatic service | Interpretation of NGS data (SNVs, InDels, CNAs, translocations and other structural variants) and translate the specific molecular profile of each patient's tumor genome into an actionable clinical report. | |
| MI-ONCOSEQ Study (Michigan Oncology Sequencing Center, University of Michigan) | Universal cancer panels (solid tumors) | WES + transcriptome sequencing | Detection and interpretation of tumor somatic and germline SNVs, InDels, CNAs, gene fusions and rearrangements, gene expression alterations. | |
| Genewiz | Cancer (solid tumors) | Cancer panels (OncoGxOne™+ Hot spot cancer panels), exome sequencing, whole genome sequencing, transcriptome (RNA-Seq) | Detection and interpretation of SNVs, InDels, CNAs, rearrangements, low-frequency aberrations, gene fusions, transcriptome analysis, identification of splice variants. | |
| Neogenomics Laboratories | Universal cancer panels (solid tumors) | Panels | Detection and interpretation of genomic alterations including SNVs, InDels, CNAs. | |
| Emory Genetics Laboratory | Universal cancer panels (solid tumors) | WES + Panels | Detection and interpretation of Exome data: SNVs, InDels. | |
| Paradigm Cancer Diagnostic (PCDx) | Universal cancer panels (solid tumors) | Exome, transcriptome (over 500 cancer-related genes) | Detection and interpretation of a patient tumor SNVs, CNAs, InDels, rearrangements and fusions, mRNA expression and protein expression. | |
| Rosetta Genomics | Universal cancer panels (solid tumors) | Transcriptome | Detection only. microRNA-based diagnostics service. | |
| ThermoFisher | Universal cancer panels (solid tumors) | Exome | Detection of SNVs, InDels, CNAs and gene fusions. | |
| Swift Bioscience | Universal cancer panels (solid tumors) | Kits for Illumina NGS and Ion Torrent Platforms; TP53 panel for Illumina Platform | Detection of genes aberrations: SNVs and methylation status, from variety of clinical sample types. | |
| Illumina | Universal cancer panels (solid tumors) | Panels | Detection of germline or somatic SNVs in solid and myeloid tumors. | |
| Asuragene | Universal cancer panel | Pan cancer kit QUANTIDEX™ | Detection of the scope of variants reported by the panel including >1,600 known COSMIC variants, SNVs, InDels, and structural rearrangements targeted by the panel. | |
| RainDance Technologies | Universal cancer panel + Tissue specific panels (for acute myeloid leukemia (AML), myelodysplastic syndromes (MDS), myeloproliferative Neoplasms (MPN), myeloma. | Panels: ThunderBolts™ Cancer Panel (Interrogate mutations/hotspots in 50 oncogenes, tumor suppressors and drug resistance markers); ThunderBolts™Myeloid Panel (Target mutations/hotspots in 49 genes implicated in AML, MDS, MPN and myeloma diseases, including challenging genes such as CEBPA and NOTCH1. | Detection of SNVs in cancer related genes. |
Main clinically relevant cancer events, detectable by NGS
| Event type | Sample type | Tissue type | References |
|---|---|---|---|
| Germline mutations (SNV/InDel) | DNA, RNA | Control tissue or blood | [ |
| Somatic mutations (SNV/InDel) | DNA, RNA | Tumor and control tissue (or blood) | [ |
| Somatic copy number alterations (CNA) | DNA | Tumor and control tissue (or blood) | [ |
| Gene fusions and other somatic structural variations (SV) | DNA, RNA | Tumor and control tissue (or blood) | [ |
| Methylation pattern changes | DNA | Tumor and control tissue | [ |
| Differential gene expression | RNA | Tumor and control tissue | [ |
| Differential alternative splicing | RNA | Tumor and control tissue | [ |
Figure 1Generalized systems biology pipeline for the cancer-related NGS data processing
Here, solid blue and red lines correspond to DNA processing while dashed ones to RNA processing. Blue lines represent germline events, red ones - somatic. A. Sample preparation. Extraction of DNA and RNA from patient's tumor and normal tissue. B. Sequencing and Bioinformatics. Convert raw sequencing data into list of genetic variations. C. Functional annotation and Pharmacogenomics. D. Systems Biology and data integration. E. Clinical decision
Tools used for different modification types prediction
| Variation type | Single sample variant detection tools | Somatic variant detection tools | Difficulties | Clinical usefulness |
|---|---|---|---|---|
| SNV DNA | VarScan[ | VarScan [ | High coverage is required for mutations with low allelic fraction. Reference bias. | Used by most of the approved genetically-based drug indications |
| SNV RNA | RVBoost [ | UNCqeR [ | Without DNA data can be confused with RNA-editing sites. Insufficient coverage for weakly expressed genes. | Provides extra layer of information whether mutated gene is expressed |
| InDel | Pindel [ | VarScan [ | Surrounding SNVs can prohibit correct read alignment. | Can greatly impact protein function by inducing a frameshift or deleting a domain |
| CNA | EWT [ | Control-FreeC [ | Low boundary precision when used on WES data [ | Help in driver genes detection [ |
| Fusions | TopHat-Fusion [ | SOAPfuse [ | Validation is highly recommended. Can be confused with splicing aberrations. | Often linked very tightly with a specific disease, thus alleviating diagnosis |
| Differential methylation | N/A | DMRcate [ | Experimental costs are rather high. Low coverage of all genomic CpG sites for some methods. | Can be used as biomarker for prognosis and therapy response prediction [ |
| Differential expression | N/A | DESeq2 [ | Reliable prediction requires several replicates for both tissues. Сontrol sample should be of the same origin as the tumor | May be used for diagnosis, prognosis, therapy response prediction and monitoring [ |
| Differential splicing | N/A | DEXSeq [ | Requirements for replicates count are higher than for expression analysis. Rare splicing events detection needs high coverage. | May provide information for development of diagnostic tests, evaluating therapy efficacy [ |
There are modifications by third-party that allows search for somatic indels
Method used for searching somatic InDels is not mentioned in original paper
N/A - not applied.