| Literature DB >> 19948053 |
Paolo Vineis1, Aneire E Khan, Jelle Vlaanderen, Roel Vermeulen.
Abstract
In spite of decades of epidemiological research, the etiology and causal patterns for many common diseases, such as breast and colon cancer or neurodegenerative diseases, are still largely unknown. Such chronic diseases are likely to have an environmental origin. However, "environmental" risks have been often elusive in epidemiological studies. This is a conundrum for current epidemiological research. On the other side, the relative contribution of genes to chronic diseases, as emerging from GWAS, seems to be modest (15-50% increase in disease risk). What is yet to be explored extensively is a model of disease based on long-term effects of low doses of environmental exposures, incorporating both genetic and acquired susceptibility ("clinical vulnerability"), and the cumulative effects of different exposures. Such a disease model would be compatible with the weak associations found by GWAS and the still elusive role of many (low-level) environmental exposures. We also propose that the introduction of "-omic" high-throughput technologies, such as transcriptomics, proteomics and metabolomics, may provide, in the next years, powerful tools to investigate early effects of environmental exposures and understand the etiology of common diseases better, according to the "clinical vulnerability model". The development of "-omics", in spite of current limitations and lack of sound validation, could greatly contribute to the elucidation of the disease model we propose.Entities:
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Year: 2009 PMID: 19948053 PMCID: PMC2793242 DOI: 10.1186/1476-069X-8-54
Source DB: PubMed Journal: Environ Health ISSN: 1476-069X Impact factor: 5.984
Figure 1Cumulative risk of lung cancer by rs8034191 genotype. Relevance of smoking and of rs8034191 genotype to lung cancer mortality in men aged 45-75 years. Cumulative risk (in the absence of other causes of death) based on national lung cancer death rates for men in Poland in the year 2000, assuming that the prevalence of current smoking, former smoking, and never smoking are as in this study and that the relative risks for lung cancer incidence and mortality are similar (Hung et al 2008) [1].
Figure 2Vulnerability plus exposure events change the physiological state, but a reserve is present. When the reserve is overtaken, clinical manifestations appear. From http://www.sahsu.org/jubilee_presentations/Anderson.ppt#392,21, courtesy of R Anderson.
"-omics" in Environmental Health (except genomics).
| Transcriptomics | Epigenomics | Proteomics | Metabolomics | |
|---|---|---|---|---|
| Focuses on gene expression profiling, which is the assessment of the mixture of mRNAs that is present in a specific biological sample. mRNA from all types of tissues can be used. | Focuses on epigenetic changes in DNA and chromatin and on their impact on regulation of gene expression. These changes are independent of DNA sequence, and are involved in 'gene silencing'. Genomic DNA from all types of tissues can be used. | The study of proteins carried out to understand the amount and functioning of proteins in biological systems. All types of tissues and biofluids can be used for proteomic analysis. Plasma, a readily accessible fluid is most commonly used. | The measurement of all the metabolites in a specified biological sample. Samples of a biological origin are analyzed using techniques that produce simultaneous detection, thereby providing metabolite profiles. It is mainly conducted on bio-fluids such as urine or plasma, and sometimes tissue extracts, | |
| A quantitative technique is used to associate differences in mRNA mixtures originating from different groups of individuals to phenotype differences between the groups. It is strongly constrained by the intrinsic heterogeneity and instability of mRNA. Both the presence of specific forms of mRNA and the levels in which these forms occur are parameters that provide information concerning gene expression. Microarray is the most commonly used research tool. | Currently limited to the analysis of gene methylation profiles. The standard method consists in sequencing of DNA segments containing potentially methylated fragments after modification of DNA with sodium bisulfite, which selectively modifies non-methylated cystosine, thus creating a base change which does not take place when cytosine is methylated. This change can be identified either by sequencing or by genotyping using custom-made 'genome-wide' oligonucleotide arrays. | Reasonable consensus on the use of mass spectrometry for final identification of proteins/peptides but technologies for sample fractionation are variable. These technologies rely on 3 main approaches: (1) 2 dimensional electrophoresis to select protein spots that are eluted from gels and analysed by MS; (2) combined chromatographic approaches to trap abundant proteins and separate the less abundant ones before MS; (3) use of matrixes of immobilized chemicals to adsorb proteins based on different criteria (charge, hydrophobicity, affinity, binding to specific ions), followed by desorption and MS (SELDI/TOF). | A variety of analytical metabolic profiling tools used include H NMR spectroscopy and MS with a prior online separation step like high-performance liquid chromatography, ultra-performance liquid chromatography, or gas chromatography. | |
| Hierarchical clustering and principal component analysis are commonly used statistical approaches for the identification of gene sets. For the interpretation of the relevance of differently expressed gene sets, data analysis approaches that are able to integrate microarray data with prior knowledge on the involvement of genes in biological processes are needed. | Conventional statistical methods are used to detect disease - gene methylation associations. Analyses of genome-wide methylation data involve hierarchical clustering and discriminant analysis. | Current approaches to analyze the protein composition of biofluids or tissue homogenates generate large amounts of data. A variety of statistical methods are currently available to epidemiologists including discriminant analysis. Both random (measurement) and systematic (bias) errors should be considered as a necessary component of proteomic analyses. | Data generated by these analytical techniques are often combined with multivariate data analysis, e.g. (orthogonal) partial least square, clustering, discriminant analyses and other similar approaches for generating and interpreting the metabolic profiles of the investigated samples. |
Using "-omics": advantages and limitations
| Advantages | Use in large, hypothesis-free investigations of the whole complement of relevant biological molecules. |
|---|---|
| Better understanding of phenotype-genotype relations. | |
| May provide insights into the impact of interactions between environmental conditions and genotypes, and mechanistic insights into disease aetiology. | |
| Limitations arising from cost of assays, quality of biological material available (e.g. instability of RNAs), and the amount of labour needed. | |
| Techniques still in their discovery state and new leads need to be carefully investigated and compared to existing biological information from in vivo and in vitro tests. | |
| New leads in the discovery of novel intermediate markers need to be confirmed in other independent studies preferably using different platforms. | |
| It is important to bear in mind that moving from promising techniques to successful application of biomarkers in occupational and environmental medicine requires not only the standardization and validation of techniques, but also appropriate study designs and sophisticated statistical analyses for interpretation of study results (i.e. issue of multiple comparisons and false positives). | |