| Literature DB >> 21892267 |
Gary Guishan Xiao1, Robert R Recker, Hong-Wen Deng.
Abstract
Early diagnosis and prevention is a key factor in reducing the mortality and morbidity of cancer. However, currently available screening tools lack enough sensitivity for early diagnosis. It is important to develop noninvasive techniques and methods that can screen and identify asymptomatic patients who have cancer. Biomarkers of cancer status can also serve as powerful tools in monitoring the course of cancer and in determining the efficacy and safety of novel therapies. Thus, discovery of novel specific biomarkers are needed that may provide informative clues for early diagnosis and treatment of cancer. Recently, remarkable progress has been made in the development of new proteomics technology. The progress that has been made in this field is helpful in identifying biomarkers that can be used for early diagnosis of cancer and improving the understanding of the molecular etiological mechanism of cancer. This article describes the current state of the art in this field.Entities:
Keywords: biomarker; cancer; genomics; proteomics
Year: 2008 PMID: 21892267 PMCID: PMC3161646 DOI: 10.4137/cmo.s539
Source DB: PubMed Journal: Clin Med Oncol ISSN: 1177-9314
Summary of the tumor biomarkers identified by using proteomics.
| Cancer type | Biomarker | Reference | Primary clinical use | Status | Sensitivity | Specificity |
|---|---|---|---|---|---|---|
| Bladder cancer | NMP22 | ( | Disease monitoring | Validated | Low | High |
| Breast cancer | CA15-3 | ( | Disease monitoring | Validated | Moderate | Poor |
| CA27-29 | ( | Disease monitoring | Validated | - | - | |
| CEA | ( | Disease monitoring | Validated | - | Low | |
| Her2/Neu | ( | Disease monitoring | Validated | - | Moderate | |
| Colorectal cancer | CEA | ( | Disease monitoring | Validated | Moderate | Low |
| Esophageal | Periplakin | ( | Disease monitoring | Validated | - | - |
| Gastrointestinal stromal tumor | CA19-9 | ( | Disease monitoring | - | Poor | |
| Hepatocellular carcinoma | α-fetoprotein | ( | Staging | Validated | - | Moderate |
| Leukemia | HnRNPs | ( | Disease monitoring | Putative | - | - |
| Lung cancer | CEA | ( | Disease monitoring | Validated | Low | |
| Epidermal GFR | ( | Selection of therapy | Validated | Low | ||
| Cyfra21-1 | ( | Disease monitoring | Validated | High | Very high | |
| Lymphoma | Histone H4 | ( | Disease monitoring | Putative | - | - |
| Nasopharyngeal carcinoma | Serum amyloid A | ( | Diagnosis | Putative | - | - |
| Ovarian cancer | Human chrionic gonadotropin-β | ( | Staging | Validated | - | Low |
| Apolipoprotein A1 | ( | Diagnosis | Putative | - | - | |
| Heptaglobin α-subunit | ( | Diagnosis | Putative | - | - | |
| CA-125 | ( | Diagnosis | Putative | - | ||
| Transthyretin fragment | ( | Diagnosis | Putative | - | - | |
| Osteopotin | ( | Diagnosis | Putative | - | - | |
| Pancreatic cancer | CA19-9 | ( | Disease monitoring | Validated | High | Poor |
| α1-antitrypsin and α1-antichymotrypsin | ( | Diagnosis | Putative | - | - | |
| Apolipoprotein A1 | ( | Diagnosis | Putative | - | - | |
| Heptaglobin α-subunit | ( | Diagnosis | Putative | - | - | |
| Prostate cancer | PSA | ( | Selection of therapy | Validated | High | High |
| Vitamin D-binding protein | ( | Diagnosis | Putative | - | - | |
| Osteopotin | ( | Diagnosis | Putative | - | - | |
| Renal cancer | Serum amyloid alpha | ( | Disease monitoring | Putative | - | - |
| Liver | AFP | ( | Diagnosis | Validated | Moderate | - |
Figure 1A schematic representation of the SILAC (‘stable-isotope labelling in cell culture’) method. A stably labelled amino acid in a cell-culture medium (in this case, ‘heavy’ arginine or lysine) is incorporated fully into the proteome of one cell population (“Cell pop 2”). Relative quantification experiments can easily be carried out using cells that were grown in normal media as the control (Cell pop 1). Cell lysates from two conditions can be combined and purified through many steps. The proteins are then digested and if the two forms of the peptides co-elute, a peptide ratio can be obtained for each mass spectrum, which allows the protein levels in the two populations to be quantified relative to each other.
Summary of proteomics approaches for tumor biomarker discovery.
| Approach type | Approach | Advantages | Disadvantages | Reference |
|---|---|---|---|---|
| Qualititative Analysis | Protein microarray | > good for unknown protein functional assay > high throughput | > limited information > relative expensive | ( |
| 2-DE | > simultaneously monitor thousands of proteins > compatible with various stain methods > high throughput | > require relatively large amounts of starting material > only identify the most abundant proteins > not good reproducibility | ( | |
| 2-D LC | > greater throughput potential > good reproducibility > easy configure to MS analysis | > difficulty data analysis > nonquantitative > relative expensive | ( | |
| MS-based proteomics | > highly sensitive > relative simple protocol > posttranslational modification analysis | > nonquantitative > too many redundant sequence | ( | |
| Quantitative Analysis | Radioactive labeling | > highly sensitive > very good quantitative > posttranslational modification analysis | > safety | ( |
| Fluorescence labeling | > highly sensitive > reduced 2-DE variation > compatible with MS analysis | > expensive > marginal reproducibility > only good for high abundance proteins | ( | |
| ICAT | > highly sensitive > good quantitative | > limited application > difficulty data analysis | ( | |
| iTRAQ | > good proteome coverage > simultaneously comparison of multiple samples > good statistic relevance > good quantitative and good for biomarker validation | > possible false positive > reduced sensitivity because of chemical labeling | ( | |
| SILAC | > known expected mass difference prior to identification, simple quantition > highly labeling yield, easily labeling in mammalian cells > protocol simple and straightforward > highly sensitive > potential application | > difficulty data analysis for low or partially labeled species | ( | |
| mSILAC | > known expected mass difference prior to identification, simple quantition > highly labeling yield, easily labeling in mammalian cells > protocol simple and straightforward > highly sensitive > application for | > to be validated | ( |