| Literature DB >> 32039208 |
Joseph Parsons1,2, Chiara Francavilla1.
Abstract
Breast cancer incidence is increasing worldwide with more than 600,000 deaths reported in 2018 alone. In current practice treatment options for breast cancer patients consists of surgery, chemotherapy, radiotherapy or targeting of classical markers of breast cancer subtype: estrogen receptor (ER) and HER2. However, these treatments fail to prevent recurrence and metastasis. Improved understanding of breast cancer and metastasis biology will help uncover novel biomarkers and therapeutic opportunities to improve patient stratification and treatment. We will first provide an overview of current methods and models used to study breast cancer biology, focusing on 2D and 3D cell culture, including organoids, and on in vivo models such as the MMTV mouse model and patient-derived xenografts (PDX). Next, genomic, transcriptomic, and proteomic approaches and their integration will be considered in the context of breast cancer susceptibility, breast cancer drivers, and therapeutic response and resistance to treatment. Finally, we will discuss how 'Omics datasets in combination with traditional breast cancer models are useful for generating insights into breast cancer biology, for suggesting individual treatments in precision oncology, and for creating data repositories to undergo further meta-analysis. System biology has the potential to catalyze the next great leap forward in treatment options for breast cancer patients.Entities:
Keywords: PDX; breast cancer; genomics; organoids; proteomics; system biology; transcriptomics
Year: 2020 PMID: 32039208 PMCID: PMC6987401 DOI: 10.3389/fcell.2019.00395
Source DB: PubMed Journal: Front Cell Dev Biol ISSN: 2296-634X
FIGURE 1Models and methods to study breast cancer. Summary of the advantages (left column) and disadvantages (middle column) of existing breast cancer models (A–D) and ‘omics technologies (E) to study breast cancer. Right column reports a brief summary of how different methods and models have contributed to major discoveries in the field of breast cancer.
A selection of single- and multi-‘omics-based breast cancer studies that have contributed to major discoveries in the field of breast cancer research where method strengths and weakness are reported.
| Novel Breast Cancer Drivers | × | The whole genome sequence can be determined relatively cheaply in less than a week | Sequences must be read many times to account for inaccuracies in sequencing analyzers | Five novel cancer genes were identified. A total of 93 genes were suggested to contain breast cancer driver mutations | ||||
| Breast Cancer Risk | × | This technique is dependent on serum samples which are far easier to obtain than biopsies needed for other ‘omics techniques | Controlling patient diet is very difficult | Three metabolites were found to be associated with increased breast cancer risk | ||||
| Novel Therapeutic Targets | × | × | Combining DNA and RNA sequencing allows mutations to be connected to chromatin remodeling and gene expression | RNA integrity is compromised by the process of formalin fixing due to cross-link formation | RET and HER2 were found to be potential therapeutic targets for breast cancer brain metastases | |||
| Novel Therapeutic Targets | × | × | × | Proteomic isobaric labeling methods allow multiple samples to undergo relative quantification reducing variability | Large amounts of starting protein is required for phospho- proteomics. Also proteomic labeling reagents are very expensive | Novel therapeutic targets previously undiscovered at the genomic, transcriptomic or proteomic level were identified at the level of the phosphoproteome in PDX models | ||
| Informing Clinical Therapeutic Decisions | × | × | When tumor cell population is low in a biopsy, targeted sequencing of known cancer genes can still be used to search for actionable targets without having to purify the epithelial population | Extensive analysis is required to determine if a mutation is actionable. Also biopsies are often sent to pathologists before freezing so the molecular profile may be changed by the time the tissue is frozen | The treatment of 199 patients was based on an actionable genomic alteration which was found using DNA and RNA sequencing In 33% of patients. progression-free survival was significantly increased and in 11% there was objective response | |||
| Breast Cancer Signaling | × | × | In situations where mutations produce unpredictable consequences, e.g., altering splice variants, proteogenomics can identify single amino acid variants and link these to mutations | Proteins which are missing in one or more replicates of a proteomic experiment are often excluded despite the fact the protein may have been present below the detection threshold | A number of highly phosphorylated kinases were identified that were not seen as potential therapeutic targets at the genomic level. Also the impact of mutations was traced to the signaling level to identify therapeutic targets, e.g., CETN3 loss was associated with EGFR upregulation. highlighting how this loss could be druggable | |||
| Breast Cancer Subtypes | × | × | × | × | Integrating ‘omics technologies allowed the mRNA- based subtypes to be expanded to a more clinically useful resource | Tumors are heterogenous and so ‘omics data from one part of a biopsy may not be representative of the whole tumor | Breast cancer subtypes ( | |
A selection of ‘omics data repositories built for data sharing and to support research questions (Bamford et al., 2004; Fontaine et al., 2011; Omenn, 2014; Speake et al., 2015; Tomczak et al., 2015; Clough and Barrett, 2016; Rudnick et al., 2016; Chou et al., 2019; Tate et al., 2019).
| Catalogue of Somatic Mutations in Cancer (COSMIC) | × | × | × | COSMIC contains data from over 13 million tumor samples, identifying 6 million coding mutations and over 19 million non-coding mutations. This resource collates all genes implicated in cancer through somatic mutation, of which 719 are currently listed. | |||
| The Cancer Genome Atlas (TCGA) | × | × | × | × | TCGA contains multi omic data for 30 different tumor types. In regards to breast cancer it has enabled confirmation of the existence of the four main breast cancer subtypes, it has identified several novel breast cancer drivers and it has identified potentially druggable novel targets. | ||
| Clinical Proteomic Tumor Analysis Consortium (CPTAC) | × | CPTAC contains mass spectrometry-based proteomic analysis of tumors from TCGA. The aim of CPTAC is to create a proteogenomic resource where dysregulated proteins and phosphorylation sites can be identified and potentially connected to genomic alterations. | |||||
| Proteomics Identification Database (PRIDE) | × | PRIDE aims to be a resource for open access sharing of mass spectrometry data, not just across cancer. They currently have over 9200 datasets available, including 297 breast cancer datasets. | |||||
| GENIE | × | GENIE combines genomic and clinical data in an attempt to associate genomic alterations with phenotypic changes | |||||
| GXB | × | GXB compiles immunological transcriptomic data | |||||
| Genomic Expression Omnibus (GEO) | × | × | × | GEO is a database of transcriptomic and epigenomic data | |||
| Human Proteome Organization (HUPO) | × | The human proteome project, run by HUPO aims to identify all the proteins in the human proteome and to begin to assess their functionalities and interactions | |||||
| Transciptome Alterations in Cancer Omnibus (TACCO) | × | TACCO is a resource for identifying differentially regulated transcripts within different cancer types and combining these with survival data to determine prognosis based ongene expression profiles | |||||