| Literature DB >> 15601541 |
Kristen M Carr1, Kevin Rosenblatt, Emanuel F Petricoin, Lance A Liotta.
Abstract
Global gene expression analysis is beginning to move from the laboratories of basic investigators to large-scale clinical trials. The potential of this technology to improve diagnosis and tailored treatment of human disease may soon be realised, now that several comprehensive studies have demonstrated the utility of gene expression profiles for the classification of tumours into distinct, clinically relevant subtypes and the prediction of clinical outcomes. In addition, new data from the emerging proteomics platforms add another layer of molecular information to the study of human disease, as scientists attempt to catalogue a complete inventory of the proteins encoded by the genome and to establish a 'biosignature' profile of human health and disease. As a result, it is anticipated that, together, these technologies will facilitate the comprehensive study of genes, gene products and signalling pathways so that the objective of personalized molecular medicine can be achieved. This paper will review the studies that best demonstrate how genomics and proteomics technologies can be used to improve cancer diagnosis and treatment it will specifically highlight the important work being incorporated into clinical trials.Entities:
Mesh:
Year: 2004 PMID: 15601541 PMCID: PMC3525069 DOI: 10.1186/1479-7364-1-2-134
Source DB: PubMed Journal: Hum Genomics ISSN: 1473-9542 Impact factor: 4.639
Clinical trials using gene expression analysis
| Sponsor | Principal investigator, centre | Disease, application |
|---|---|---|
| European Organization for Research and Treatment of Cancer | The Netherlands Cancer Institute, Amsterdam, The Netherlands | Breast cancer, comparing van't Veer and van de Vijver prognostic signature to St Gallen criteria |
| Avon Foundation | Daniel Haber, Massachusetts General Hospital, Boston, MA, USA | Breast cancer, validating van't Veer and van de Vijver prognostic signature |
| Breast Cancer Research Foundation, Millennium Pharmaceuticals | Lajos Pusztai, Anderson Cancer Center, Houston, TX, USA | Breast cancer, validating own signature for predicting drug response |
| Millennium Pharmaceuticals | Kenneth Anderson, Dana-Farber Cancer Center, Boston, MA, USA | Multiple myeloma, validating own signature for response to Velcade |
| National Cancer Institute | Jenny Chang, Baylor College of Medicine, Houston, TX, USA | Breast cancer, validating own 90-gene prognostic signature |
Table adapted from Branca, M. (2003), Science Vol. 300, p. 238
Clinical trials using proteomic analysis
| Sponsor | Principal investigator, centre | Disease, application |
|---|---|---|
| NCI | Elise Kohn, Warren Grant Magnuson Clinical Center, NIH, Bethesda, MD, USA | Ovarian cancer, developing serum proteomic profile associated with first clinical response |
| NCI | Elise Kohn, Warren Grant Magnuson Clinical Center, NIH, Bethesda, MD, USA | Breast and ovarian cancer, protein microarray to assess response to EGFR inhibitors and Gleevac |
| NCI | Susan Bates, Warren Grant Magnuson Clinical Center, NIH, Bethesda, MD, USA | Breast and ovarian cancer, protein microarray to assess response to Herceptin/Taxol combination therapy |
| NCI | Sam Hwang, Warren Grant Magnuson Clinical Center, NIH, Bethesda, MD, USA | Inflammatory and neoplastic skin diseases, developing serum proteomic profile for diagnosis |
| NCI | Michael Solomon, Warren Grant Magnuson Clinical Center, NIH, Bethesda, MD, USA | Cardiac disease, developing serum proteomic profile for diagnosis of acute cardiac allograft rejection |
| NCI | Mahrukh Hussain, Warren Grant Magnuson Clinical Center, NIH, Bethesda, MD, USA | Ovarian cancer, developing serum proteomic profile associated with relapse |
Abbreviations: EGFR, epidermal growth factor receptor
Figure 1Profiling the disease signature for application to individualisation of therapy. From: Liotta, LA. et al. (2001), JAMA Vol. 286, p. 18. Used with permission.