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Genomics of ageing in twins

Published online by Cambridge University Press:  01 July 2014

Massimo Mangino*
Affiliation:
Department of Twin Research and Genetic Epidemiology, King's College London, St Thomas’ Hospital Campus, Lambeth Palace Rd, London SE1 7EH, UK
*
Corresponding author: Dr Massimo Mangino, email [email protected]
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Abstract

Ageing is a complex multifactorial process, reflecting the progression of all degenerative pathways within an organism. Due to the increase of life expectancy, in recent years, there is a pressing need to identify early-life events and risk factors that determine health outcomes in later life. So far, genetic variation only explains ~20–25 % of the variability of human survival to age 80+. This clearly implies that other factors (environmental, epigenetic and lifestyle) contribute to lifespan and the rate of healthy ageing within an individual. Twin studies in the past two decades proved to be a very powerful tool to discriminate the genetic from the environmental component. The aim of this review is to describe the basic concepts of the twin study design and to report some of the latest studies in which high-throughput technologies (e.g. genome/epigenome-wide assay, next generation sequencing, MS metabolic profiling) combined with the classical twin design have been applied to the analysis of novel ‘omics’ to further understand the molecular mechanisms of human ageing.

Type
Conference on ‘Nutrition and healthy ageing’
Copyright
Copyright © The Author 2014 

Human ageing is a multifactorial process which represents the final outcome of the interaction among genetic, environmental, stochastic and lifestyle factors.

In the past decade, probably fuelled by the news in the press, there has been an increased interest of the public opinion in the ageing process. Indeed, in the past century, in the developed world, there was a remarkable increase of life expectancy( Reference Ferrucci, Giallauria and Guralnik 1 ). This phenomenon was the result of advances in medical science, improved lifestyle (hygiene and nutrition) and considerable decline of mortality rates among young( Reference Ahmed, Hahn and Somasundaram 2 ).

In 2006, the European Community reported that by 2050 the number of residents aged 65+ will increase by 70 % and the 80+ age group will increase by 170 % in the same period( 3 ). If healthy life expectancy evolves broadly in line with the change in age-specific life expectancy, then the projected increase in spending on healthcare due to ageing would be halved. A healthy, active ageing population can only be supported through effective health policy across the lifecycle. Such a policy requires an understanding of the ageing process including the identification of robust markers of cellular senescence and investigation of their role in ageing.

In the past decade, the introduction of high-throughput technologies, in particular when combined with the classical study design, provided a powerful tool to decipher the molecular mechanisms of genes/pathways involved in the ageing processes( Reference Menni, Kastenmuller and Petersen 4 , Reference Tsai, Spector and Bell 5 ).

The aim of this review is to provide a brief introduction to twin study design as well as to report some of the latest findings in ageing research using this powerful method.

Classic twin design

Twins have fascinated human communities since the beginning of recorded history and feature in the legends and myths of many cultures( Reference Stewart 6 ).

Twin studies are an invaluable tool to investigate trait variability in the normal population. Classic twin studies compare concordance of the trait/disease between monozygotic (MZ) twin pairs, which are virtually genetic clones (as they result from a single fertilised egg) v. dizygotic (DZ) or non-identical twin pairs, which share on average 50 % of the genetic information providing the estimate of the genetic and environmental components of a given trait.

The environmental variables contribute to the expression of complex traits/diseases. Therefore, because MZ and DZ twin pairs are exposed to similar pre- and post-natal environmental factors (equal environment assumption)( Reference Derks, Dolan and Boomsma 7 , Reference Kendler, Neale and Kessler 8 ), if the MZ are more similar than the DZ when compared for a particular trait/disease, then the observed phenotypic variation is likely to be the result of the genetic component. In this context, it is possible to estimate both the heritability (h 2; twice the difference between the correlation between the MZ (r MZ) and the correlation between DZ twins (r DZ))( Reference Falconer 9 ) and proportion of the variance that is due to a shared environment for MZ (r MZh 2) and DZ (r DZh 2/2) of the analysed trait/disease( Reference Falconer 9 ).

Heritability studies of twin cohorts provided the first evidence of the genetic component for most diseases/traits. It was common belief, for example, that some diseases (e.g. autism, multiple sclerosis and attention deficit hyperactivity disorder) were the result of family/environmental exposure. Twin studies highlighted their genetic component, thus pointing the research towards new directions( Reference Martin, Boomsma and Machin 10 ).

Twin studies of longevity and age-related diseases

In the past century, the unique genetic make-up of twins was successfully used to explore the genetic and environmental contribution underlying a number of traits/diseases related to ageing. In particular, twin studies defined the genetic component of longevity( Reference Herskind, McGue and Holm 11 , Reference Hjelmborg, Iachine and Skytthe 12 ), CVD( Reference Marenberg, Risch and Berkman 13 ), Alzheimer's disease( Reference Gatz, Reynolds and Fratiglioni 14 ) and cancer( Reference Lichtenstein, Holm and Verkasalo 15 ) as well as the influence on dietary intake( Reference Pimpin, Ambrosini and Llewellyn 16 , Reference Faith, Rhea and Corley 17 ) (Table 1).

Table 1 Genetic component of the most relevant age-related disease/risk-factors

CAD, coronary artery disease; M, male; F, female.

The analysis of a Danish twin cohort estimated that the heritability for human lifespan was between 20 and 26 % depending on the sex and the model used( Reference Herskind, McGue and Holm 11 ). In other words, one quarter of the human longevity variation is due to genetic factors. A further study based on a larger twin dataset of North European descent not only confirmed the previous results but also highlighted that the genetic influences are minimal prior to age 60 years and increase thereafter( Reference Hjelmborg, Iachine and Skytthe 12 ).

In 1994, Marenberg et al.( Reference Marenberg, Risch and Berkman 13 ) studied the concordance on 10 502 Swedish twin pairs to investigate the genetic basis of coronary artery disease (CAD) and myocardial infarct mortality. Their findings clearly highlighted the presence of a genetic component in CAD/myocardial infarct mortality. The authors showed that the relative hazard (RH) of death by early onset (before age 55 years) CAD was double in male MZ twins (RH=8·1) compared with male DZ twins (RH=3·8), with a RH nearly six times higher in females (RHMZ=15; RHDZ=2·6). These results were further validated in a follow-up study of the same cohort, with the heritability of CAD/myocardial infarct mortality, ranging from 0·38 in females to 0·57 in males( Reference Zdravkovic, Wienke and Pedersen 32 ). In the past 40 years, twin studies have also highlighted the genetic component of other age-related cardiovascular risk factors including lipid levels( Reference Snieder, van Doornen and Boomsma 20 ), blood pressure( Reference Evans, Van Baal and McCarron 26 ), C-reactive protein( Reference MacGregor, Gallimore and Spector 24 ), plasma homocysteine( Reference Siva, De Lange and Clayton 31 ) and diabetes( Reference Kaprio, Tuomilehto and Koskenvuo 25 ) (Table 1).

An increasingly large body of evidence highlights the link between early years dietary intake and risk of obesity and ultimately increase of CVD risk later in life( Reference Summerbell, Douthwaite and Whittaker 33 ). Indeed, to discriminate between genetic components and environmental elements of the food preference is an essential first step to identify interventional targets to improve dietary intake. A recent study( Reference Pimpin, Ambrosini and Llewellyn 16 ) based on 21-month-old twins, revealed that the shared environment was the predominant determinant of the dietary intake variation (ranging from 66 to 97 %). These results were consistent with previous studies in older twin( Reference Faith, Rhea and Corley 17 ), emphasising the importance of the family environment in the healthy dietary pattern to prevent health problems later in the adult life.

Upon the completion of the Human Genome Project in 2003, the fast development of high-throughput SNP genotyping technology has revolutionised the way age-related trait/disease are analysed, opening the so-called ‘genomic gold rush’( Reference Perkel 34 ). Genome-wide association studies enabled the identification of a large number of loci/genes involved in age-related traits/diseases. To date, up to 1669 papers have reported genome-wide association analysis/meta-analysis results; of these more than half (925) had as main target one age-related trait/disease( Reference Hindorff, MacArthur and Morales 35 ).

Despite their pivotal role in understanding the genetic component of age-related traits, twin studies could not be fully exploited during the genome-wide association era.

In fact, because MZ share their entire genome they cannot be fully employed in gene mapping and DZ twins are not different from ordinary siblings. However, it should be emphasised that the use of DZ twin studies for gene mapping are theoretically more powerful than sibling studies because they can take advantage of the unique characteristics of twins: shared pre/post-natal factors, matched age and non-paternity (an important cause of error in sib-pair analysis) reduced to almost nil.

When classic twin design met new ‘omics’

As in other multifactorial traits, the genetic component of human ageing represents only one aspect of it. Over time, lifestyle and environmental factors also play an important role. Since we are not able to control the genetic element, it is paramount to understand how environmental and lifestyle factors influence the ageing process in order to manage a healthy ageing policy.

Epigenetic mechanisms, under the influence of environmental/lifestyle factors, modify gene expression and ultimately have an impact over the possibility to develop a particular disease.

The latest research highlighted how exposure to particularly adverse conditions (e.g. starvation) in early stages of development has an impact on epigenetic markers later in life( Reference Heijmans, Tobi and Stein 36 Reference Tobi, Slagboom and van Dongen 38 ) , and is associated with increased risk of developing age-related diseases (e.g. CAD/myocardial infarct, obesity, hypertension and diabetes)( Reference Painter, de Rooij and Bossuyt 39 Reference Roseboom, van der Meulen and Ravelli 44 ).

Over the past decade the development of new high-throughput tools to study epigenetic markers (e.g. microarrays and next generation sequencing) opened the door to DNA methylation analysis on a genome-wide scale( Reference Laird 45 ).

One of the first indications that epigenetic modifications change with age was provided by a MZ twin study in 2005( Reference Fraga, Ballestar and Paz 46 ). The authors found that during the early years of their life MZ twins are epigenetically indistinguishable. However, the analysis of older MZ twins exhibited remarkable differences of both local and global methylation patterns. These differences affect their gene-expression portrait( Reference Fraga, Ballestar and Paz 46 ).

In a recent study using a the newly developed microarray methylation assay, the authors analysed the genome-wide methylation profile of both MZ and DZ twin couples( Reference Boks, Derks and Weisenberger 47 ). They found that 23 % (96 over 431) of the CpG sites yielded a significant heritability ranging from 94 to 57 %( Reference Boks, Derks and Weisenberger 47 ). They also identified fifty-eight probes that were significantly related to age( Reference Boks, Derks and Weisenberger 47 ).

Using a similar approach, Bell et al.( Reference Bell, Tsai and Yang 48 ) not only reported novel age-related differentially methylated regions, but also provided the first evidence that age-related differentially methylated region changes occur throughout the individual's lifespan and that a proportion of these may start from an early age stage.

Metabolomics is another ‘omics’ which recently has generated much interest in the age-related disease/trait analysis. Metabolomics is the unbiased analysis (quantitative and qualitative) of the complete set of small, low molecular weight metabolites present in cells, body fluids and tissues (the metabolome)( Reference Hollywood, Brison and Goodacre 49 ).

The origin of this field goes back at least as far as ancient Greece( Reference Nicholson and Lindon 50 ), but it has become the latest tool to investigate molecular changes related to the ageing process, helped by the latest advances in technology, which now allow us to measure thousands of metabolies per individual at once.

The special advantage of this new ‘omics’ is to combine the effect of both environmental and lifestyle factors with genomics. Metabolite concentrations result from external factors (e.g. as dietary patterns), while their associations with genes, proteins and SNP come from the metabolome interactions within the bigger biological network. In this scenario, changes in the metabolome are amplified compared with changes in the genome and transcriptome, providing more power to detect new pathways for age-related traits( Reference Gieger, Geistlinger and Altmaier 51 ).

Indeed, changes in individual's human metabolic phenotype (metabotype) over longer time periods can be indicative of disorder-related modifications, possibly preceding overt disease symptoms( Reference Graca, Duarte and Barros 52 ).

In a recent study based on a large twin population (n 6055), Menni et al.( Reference Menni, Kastenmuller and Petersen 4 ) identified a panel of twenty-two independent metabolites associated with age. These twenty-two metabolites, which combined explain 59 % of the variance, can be used as surrogate measure of chronological age( Reference Menni, Kastenmuller and Petersen 4 ). In particular one metabolite, C-glycosyl tryptophan, not only correlates strongly with age and with some age-related traits (e.g. the forced expiratory volume and the bone mineral density) but is also associated with birth weight. This may indicate that this metabolite may be involved in one of the early development processes that determine the health status in midlife and old age( Reference Menni, Kastenmuller and Petersen 4 ).

Finally, two emerging ‘omics’ (glycomics and metagenomics) have already provided the first evidence of substantial correlation with age( Reference Biagi, Nylund and Candela 53 Reference Zoldos, Horvat and Lauc 57 ). Applying the twin model to study these new fields may provide, in the near future, new insights into the ageing process.

Conclusions

In less than a decade the development of new biomedical and bioinformatic technologies (e.g. microarray and next generation sequencing) revolutionised ageing and medical research. The new available tools facilitated the genome-wide measure of biological entities (e.g. genes, proteins, epigenetic signatures and metabolites) throughout large datasets.

In the post-genomic era, classical twin design, taking advantage of its unique characteristics, will supply an invaluable tool for the combined analysis of all the new ‘omics’ (epigenomics, metabolomics and in the near future glycomics and metagenomics) in order to decipher nature and nurture signatures characteristic of the ageing process.

Acknowledgements

None.

Financial Support

M. M. receives support from the National Institute for Health Research BioResource Clinical Research Facility and Biomedical Research Centre based at Guy's and St Thomas’ NHS Foundation Trust and King's College London.

Conflicts of Interest

None.

Authorship

The author was solely responsible for all aspects of preparation of this paper.

References

1. Ferrucci, L, Giallauria, F & Guralnik, JM (2008) Epidemiology of aging. Radiol Clin North Am 46, 643652, v.CrossRefGoogle ScholarPubMed
2. Ahmed, R, Hahn, CS, Somasundaram, T, et al. (1991) Molecular basis of organ-specific selection of viral variants during chronic infection. J Virol 65, 42424247.CrossRefGoogle ScholarPubMed
3. Economic Policy Committee & the European Commission (2006) The Impact of Ageing on Public Expenditure: Projections for the EU25 Member States on Pensions, Health Care, Longterm Care, Education and Unemployment Transfers (2004–2050). European Communities. Special Report no 1. Belgium: European Communities. p. 136.Google Scholar
4. Menni, C, Kastenmuller, G, Petersen, AK, et al. (2013) Metabolomic markers reveal novel pathways of ageing and early development in human populations. Int J Epidemiol 4, 11111119.CrossRefGoogle Scholar
5. Tsai, PC, Spector, TD & Bell, JT (2012) Using epigenome-wide association scans of DNA methylation in age-related complex human traits. Epigenomics 4, 511526.CrossRefGoogle ScholarPubMed
6. Stewart, EA (2000) Exploring Twins: Towards a Social Analysis of Twinship. Basingstoke: Palgrave Macmillan.Google ScholarPubMed
7. Derks, EM, Dolan, CV & Boomsma, DI (2006) A test of the equal environment assumption (EEA) in multivariate twin studies. Twin Res Hum Genet 9, 403411.CrossRefGoogle ScholarPubMed
8. Kendler, KS, Neale, MC, Kessler, RC, et al. (1993) A test of the equal-environment assumption in twin studies of psychiatric illness. Behav Genet 23, 2127.CrossRefGoogle ScholarPubMed
9. Falconer, DS (1989) Introduction to Quantitative Genetics. Harlow, England: Longman.Google Scholar
10. Martin, N, Boomsma, D & Machin, G (1997) A twin-pronged attack on complex traits. Nat Genet 17, 387392.CrossRefGoogle ScholarPubMed
11. Herskind, AM, McGue, M, Holm, NV, et al. (1996) The heritability of human longevity: a population-based study of 2872 Danish twin pairs born 1870–1900. Hum Genet 97, 319323.CrossRefGoogle ScholarPubMed
12. Hjelmborg, JB, Iachine, I, Skytthe, A, et al. (2006) Genetic influence on human lifespan and longevity. Hum Genet 119, 312321.CrossRefGoogle Scholar
13. Marenberg, ME, Risch, N, Berkman, LF, et al. (1994) Genetic susceptibility to death from coronary heart disease in a study of twins. N Engl J Med 330, 10411046.CrossRefGoogle Scholar
14. Gatz, M, Reynolds, CA, Fratiglioni, L, et al. (2006) Role of genes and environments for explaining Alzheimer disease. Arch Gen Psychiatry 63, 168174.CrossRefGoogle ScholarPubMed
15. Lichtenstein, P, Holm, NV, Verkasalo, PK, et al. (2000) Environmental and heritable factors in the causation of cancer–analyses of cohorts of twins from Sweden, Denmark, and Finland. N Engl J Med 343, 7885.CrossRefGoogle ScholarPubMed
16. Pimpin, L, Ambrosini, GL, Llewellyn, CH, et al. (2013) Dietary intake of young twins: nature or nurture? Am J Clin Nutr 98, 13261334.CrossRefGoogle ScholarPubMed
17. Faith, MS, Rhea, SA, Corley, RP, et al. (2008) Genetic and shared environmental influences on children's 24-h food and beverage intake: sex differences at age 7 y. Am J Clin Nutr 87, 903911.CrossRefGoogle ScholarPubMed
18. Christensen, K, Frederiksen, H & Hoffman, HJ (2001) Genetic and environmental influences on self-reported reduced hearing in the old and oldest old. J Am Geriatr Soc 49, 15121517.CrossRefGoogle ScholarPubMed
19. Hammond, CJ, Webster, AR, Snieder, H, et al. (2002) Genetic influence on early age-related maculopathy: a twin study. Ophthalmology 109, 730736.CrossRefGoogle ScholarPubMed
20. Snieder, H, van Doornen, LJ & Boomsma, DI (1997) The age dependency of gene expression for plasma lipids, lipoproteins, and apolipoproteins. Am J Hum Genet 60, 638650.Google ScholarPubMed
21. Lajunen, HR, Kaprio, J, Keski-Rahkonen, A, et al. (2009) Genetic and environmental effects on body mass index during adolescence: a prospective study among Finnish twins. Int J Obes (Lond) 33, 559567.CrossRefGoogle ScholarPubMed
22. Arden, NK, Baker, J, Hogg, C, et al. (1996) The heritability of bone mineral density, ultrasound of the calcaneus and hip axis length: a study of postmenopausal twins. J Bone Miner Res 11, 530534.CrossRefGoogle ScholarPubMed
23. Pedersen, NL, Plomin, R, Nesselroade, JR, et al. (1992) A quantitative genetic analysis of cognitive abilities during the second half of the life span. Psychol Sci 3, 346353.CrossRefGoogle Scholar
24. MacGregor, AJ, Gallimore, JR, Spector, TD, et al. (2004) Genetic effects on baseline values of C-reactive protein and serum amyloid a protein: a comparison of monozygotic and dizygotic twins. Clin Chem 50, 130134.CrossRefGoogle ScholarPubMed
25. Kaprio, J, Tuomilehto, J, Koskenvuo, M, et al. (1992) Concordance for type 1 (insulin-dependent) and type 2 (non-insulin-dependent) diabetes mellitus in a population-based cohort of twins in Finland. Diabetologia 35, 10601067.CrossRefGoogle Scholar
26. Evans, A, Van Baal, GC, McCarron, P, et al. (2003) The genetics of coronary heart disease: the contribution of twin studies. Twin Res 6, 432441.CrossRefGoogle ScholarPubMed
27. Hukkinen, M, Kaprio, J, Broms, U, et al. (2011) Heritability of lung function: a twin study among never-smoking elderly women. Twin Res Hum Genet 14, 401407.CrossRefGoogle ScholarPubMed
28. Dato, S, Montesanto, A, Lagani, V, et al. (2012) Frailty phenotypes in the elderly based on cluster analysis: a longitudinal study of two Danish cohorts. Evidence for a genetic influence on frailty. Age (Dordr) 34, 571582.CrossRefGoogle ScholarPubMed
29. Frederiksen, H, Gaist, D, Petersen, HC, et al. (2002) Hand grip strength: a phenotype suitable for identifying genetic variants affecting mid- and late-life physical functioning. Genet Epidemiol 23, 110122.CrossRefGoogle ScholarPubMed
30. Spector, TD, Cicuttini, F, Baker, J, et al. (1996) Genetic influences on osteoarthritis in women: a twin study. Br Med J 312, 940943.CrossRefGoogle ScholarPubMed
31. Siva, A, De Lange, M, Clayton, D, et al. (2007) The heritability of plasma homocysteine, and the influence of genetic variation in the homocysteine methylation pathway. Q J Med 100, 495499.CrossRefGoogle ScholarPubMed
32. Zdravkovic, S, Wienke, A, Pedersen, NL, et al. (2002) Heritability of death from coronary heart disease: a 36-year follow-up of 20 966 Swedish twins. J Intern Med 252, 247254.CrossRefGoogle Scholar
33. Summerbell, CD, Douthwaite, W, Whittaker, V, et al. (2009) The association between diet and physical activity and subsequent excess weight gain and obesity assessed at 5 years of age or older: a systematic review of the epidemiological evidence. Int J Obes (Lond) 33 Suppl 3, S1S92.Google ScholarPubMed
34. Perkel, J (2008) SNP genotyping: six technologies that keyed a revolution. Nat Methods 5, 447450.CrossRefGoogle Scholar
35. Hindorff, LA, MacArthur, J, Morales, J, et al. A Catalog of Published Genome-Wide Association Studies. http:// www.genome.gov/gwastudies.Google Scholar
36. Heijmans, BT, Tobi, EW, Stein, AD, et al. (2008) Persistent epigenetic differences associated with prenatal exposure to famine in humans. Proc Natl Acad Sci USA 105, 1704617049.CrossRefGoogle ScholarPubMed
37. Tobi, EW, Lumey, LH, Talens, RP, et al. (2009) DNA methylation differences after exposure to prenatal famine are common and timing- and sex-specific. Hum Mol Genet 18, 40464053.CrossRefGoogle ScholarPubMed
38. Tobi, EW, Slagboom, PE, van Dongen, J, et al. (2012) Prenatal famine and genetic variation are independently and additively associated with DNA methylation at regulatory loci within IGF2/H19. PLoS ONE 7, e37933.CrossRefGoogle ScholarPubMed
39. Painter, RC, de Rooij, SR, Bossuyt, PM, et al. (2006) Blood pressure response to psychological stressors in adults after prenatal exposure to the Dutch famine. J Hypertens 24, 17711778.CrossRefGoogle Scholar
40. Ravelli, AC, Bleker, OP, Roseboom, TJ, et al. (2005) Cardiovascular disease in survivors of the Dutch famine. Nestle Nutr Workshop Ser Pediatr Program 55, 183191; Discussion 191–185.CrossRefGoogle ScholarPubMed
41. Ravelli, AC, van der Meulen, JH, Michels, RP, et al. (1998) Glucose tolerance in adults after prenatal exposure to famine. Lancet 351, 173177.CrossRefGoogle ScholarPubMed
42. Ravelli, AC, van Der Meulen, JH, Osmond, C, et al. (1999) Obesity at the age of 50 y in men and women exposed to famine prenatally. Am J Clin Nutr 70, 811816.CrossRefGoogle ScholarPubMed
43. Roseboom, TJ, van der Meulen, JH, Osmond, C, et al. (2000) Coronary heart disease after prenatal exposure to the Dutch famine, 1944–45. Heart 84, 595598.CrossRefGoogle Scholar
44. Roseboom, TJ, van der Meulen, JH, Ravelli, AC, et al. (1999) Blood pressure in adults after prenatal exposure to famine. J Hypertens 17, 325330.CrossRefGoogle ScholarPubMed
45. Laird, PW (2010) Principles and challenges of genome-wide DNA methylation analysis. Nat Rev Genet 11, 191203.CrossRefGoogle Scholar
46. Fraga, MF, Ballestar, E, Paz, MF, et al. (2005) Epigenetic differences arise during the lifetime of monozygotic twins. Proc Natl Acad Sci USA 102, 1060410609.CrossRefGoogle ScholarPubMed
47. Boks, MP, Derks, EM, Weisenberger, DJ, et al. (2009) The relationship of DNA methylation with age, gender and genotype in twins and healthy controls. PLoS ONE 4, e6767.CrossRefGoogle ScholarPubMed
48. Bell, JT, Tsai, PC, Yang, TP, et al. (2012) Epigenome-wide scans identify differentially methylated regions for age and age-related phenotypes in a healthy ageing population. PLoS Genet 8, e1002629.CrossRefGoogle Scholar
49. Hollywood, K, Brison, DR & Goodacre, R (2006) Metabolomics: current technologies and future trends. Proteomics 6, 47164723.CrossRefGoogle ScholarPubMed
50. Nicholson, JK & Lindon, JC (2008) Systems biology: metabonomics. Nature 455, 10541056.CrossRefGoogle ScholarPubMed
51. Gieger, C, Geistlinger, L, Altmaier, E, et al. (2008) Genetics meets metabolomics: a genome-wide association study of metabolite profiles in human serum. PLoS Genet 4, e1000282.CrossRefGoogle ScholarPubMed
52. Graca, G, Duarte, IF, Barros, AS, et al. (2009) (1)H NMR based metabonomics of human amniotic fluid for the metabolic characterization of fetus malformations. J Proteome Res 8, 41444150.CrossRefGoogle ScholarPubMed
53. Biagi, E, Nylund, L, Candela, M, et al. (2010) Through ageing, and beyond: gut microbiota and inflammatory status in seniors and centenarians. PLoS ONE 5, e10667.CrossRefGoogle ScholarPubMed
54. Claesson, MJ, Jeffery, IB, Conde, S, et al. (2012) Gut microbiota composition correlates with diet and health in the elderly. Nature 488, 178184.CrossRefGoogle ScholarPubMed
55. Knezevic, A, Gornik, O, Polasek, O, et al. (2010) Effects of aging, body mass index, plasma lipid profiles, and smoking on human plasma N-glycans. Glycobiology 20, 959969.CrossRefGoogle ScholarPubMed
56. Ruhaak, LR, Uh, HW, Beekman, M, et al. (2010) Decreased levels of bisecting GlcNAc glycoforms of IgG are associated with human longevity. PLoS ONE 5, e12566.CrossRefGoogle ScholarPubMed
57. Zoldos, V, Horvat, T & Lauc, G (2013) Glycomics meets genomics, epigenomics and other high throughput omics for system biology studies. Curr Opin Chem Biol 17, 3440.CrossRefGoogle ScholarPubMed
Figure 0

Table 1 Genetic component of the most relevant age-related disease/risk-factors