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Genomic and metabolomic patterns segregate with responses to calcium and vitamin D supplementation

Published online by Cambridge University Press:  23 August 2010

Manal O. Elnenaei
Affiliation:
Clinical Biochemistry Department, King's College Hospital, Denmark Hill, LondonSE5 9RS, UK
Rama Chandra
Affiliation:
Clinical Biochemistry Department, King's College Hospital, Denmark Hill, LondonSE5 9RS, UK
Tina Mangion
Affiliation:
Clinical Biochemistry Department, King's College Hospital, Denmark Hill, LondonSE5 9RS, UK
Caje Moniz*
Affiliation:
Clinical Biochemistry Department, King's College Hospital, Denmark Hill, LondonSE5 9RS, UK
*
*Corresponding author: C. Moniz, fax +44 203 299 3140, email [email protected]
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Abstract

Inter-individual response differences to vitamin D and Ca supplementation may be under genetic control through vitamin D and oestrogen receptor genes, which may influence their absorption and/or metabolism. Metabolomic studies on blood and urine from subjects supplemented with Ca and vitamin D reveal different metabolic profiles that segregate with genotype. Genotyping was performed for oestrogen receptor 1 gene (ESR1) and vitamin D receptor gene (VDR) in fifty-six postmenopausal women. Thirty-six women were classified as low bone density as determined by a heel ultrasound scan and twenty women had normal bone density acting as ‘controls’. Those with low bone density (LBD) were supplemented with oral Ca and vitamin D and were classified according to whether they were ‘responders’ or ‘non-responders’ according to biochemical results before and after therapy compared to controls receiving no supplementation. Metabolomic studies on serum and urine were done for the three groups at 0 and 3 months of therapy using NMR spectroscopy with pattern recognition. The ‘non-responder’ group showed a higher frequency of polymorphisms in the ESR1 (codons 10 and 325) and VDR (Bsm1 and Taq1), compared with to the ‘responders’. The wild-type genotype for Fok1 was more frequent in those with LBD (70 %) compared with the control group (10 %). Distinctive patterns of metabolites were displayed by NMR studies at baseline and 3 months of post-treatment, segregating responders from non-responders and controls. Identification of potential ‘non-responders’ to vitamin D and Ca, before therapy, based on a genomic and/or metabolomic profile would allow targeted selection of optimal therapy on an individual basis.

Type
Full Papers
Copyright
Copyright © The Authors 2010

Recent advances in vitamin D research have transcended the preliminary concept that vitamin D is required only for Ca homoeostasis and maintenance of healthy bones. Apart from contributing to the development of osteomalacia and fragility fractures, vitamin D deficiency has been found to be detrimental to muscle function and may play a role in type 1 diabetes mellitus, hypertension, chronic infections and many common cancers(Reference Arvold, Odean and Dornfeld1Reference Cross, Nittke and Peterlik4). Several reports have shown that vitamin D inadequacy is far more prevalent than previously thought particularly in postmenopausal women and specifically in those with osteoporosis and a history of fracture(Reference Adami, Giannini and Bianchi5). Fragility fractures are a major health problem globally with substantial morbidity and mortality(Reference Ray, Chan and Thamer6, Reference Cummings and Melton7), and unless measures are taken to prevent osteoporosis, the costs associated with its prevention and treatment will pose a major socio-economic burden(8).

Optimising peak bone mass and reducing subsequent postmenopausal loss depend on the interaction between genetic, hormonal, environmental and nutritional factors(Reference Baldock and Eisman9). There has been an intense focus on identifying candidate genes for osteoporosis, fragility fractures and associated risk factors; yet in genome-wide searches, none of the candidate genes have been identified as important(Reference Richards, Rivadeneira and Inouye10). Less attention has been given to the more basic fundamental concepts related to inter-individual differences in Ca and vitamin D optimisation. Unravelling the basis to such core issues could be the simple cornerstone in the investigation of not only osteoporosis, but also in other diseases in which vitamin D deficiency is implicated.

Vitamin D insufficiency in the elderly, particularly, postmenopausal women, is associated with low bone mass due to secondary hyperparathyroidism and as a result of a higher incidence of fractures(Reference Bruyère, Malaise and Neuprez11). There have been various setbacks faced when supplementing this group. The first is the lack of consensus in determining the ‘optimum dose’(Reference Bischoff-Ferrari, Giovannucci and Willett12). The second is patient compliance; but even if these issues were resolved, a bigger challenge is the lack of adequate response to oral vitamin D in a subset of patients. Ca and vitamin D absorption has been found in some studies to be dependent on certain vitamin D receptor (VDR) genotypes(Reference Dawson-Hughes, Harris and Finneran13, Reference Wishart, Horowitz and Need14). Moreover, a relationship between VDR genotype and oestrogen has been postulated from the results of a study that examined the effects of Ca intake on bone mineral density in VDR-genotyped peri-menopausal women(Reference Willing, Sowers and Aron15). Therefore, the question of satisfactory response to supplemental doses of Ca and vitamin D seems to be, like the rate of bone loss, under genetic control.

Identification of genetic factors without understanding their interaction with nutrients will confer little benefit in terms of prevention and treatment of osteoporosis or other related disorders(Reference Wood and Fleet16). Unlike genotype, diet and nutrition can be modified, and the arrival of the post-genomic era has enabled researchers to investigate the effects of nutrients on physiological functions at the molecular level(Reference Ordovas and Mooser17). This will reveal how genetic variation and epigenetic events alter requirements for, and responses to, nutrients by profiling almost all of the products of metabolism in a single sample of blood or urine in a rapidly expanding research of ‘metabolomics/metabonomics’(Reference Zeisel18). H3 NMR spectroscopy with multivariate data analysis has revolutionised the field of biomarker research, providing concurrent measurement of all hydrogen-containing metabolites in a biological fluid, hence providing a means of ‘metabolic fingerprinting’(Reference Whitfield, German and Noble19).

The aim of the present study was to investigate the potential role of genetic variations in both the oestrogen receptor 1 (ESR1) and VDR in predicting response to Ca and vitamin D supplementation in a group of postmenopausal women with low bone density (LBD). NMR technology with pattern recognition was also employed in order to establish any treatment response segregation to biomarkers and possible correlation with the results of genotyping.

Materials and methods

Patients

A prospective case-controlled observational study on community dwelling postmenopausal women of Caucasian origin was conducted at the King's College Hospital Osteoporosis Clinic. The present study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving patients were approved by the Ethical Review Committee of the Hospital (LREC protocol no. 01-227). All the consecutive female patients above 50 years of age referred by their general practitioners to the clinic for a fragility fracture assessment using a heel ultrasound scan were offered to participate in the study after completing a witnessed written informed consent form.

All the participants completed a self-administered fracture risk questionnaire, and they had a quantitative heel ultrasound scan performed using the Lunar Achilles+(GE Healthcare, Little Chalfont, Bucks, UK) on the left calcaneus. Fasting blood and urine samples were obtained for biochemical, genetic and metabolomic analyses. Subjects with any evidence of clinically significant hepatic or renal disorders, metastatic disease, multiple myeloma or any other conditions resulting in hypercalcaemia were excluded from the study.

Subjects classified as having a LBD, whether osteoporosis (T score < − 2·5) or osteopenia (T score < − 1·0) on heel ultrasound, were started on 1200 mg of oral Ca and 800 units of vitamin D in addition to their regular diets. Those with normal heel ultrasound did not receive any supplements and acted as controls. All the subjects were given lifestyle advice on avoidance of risk factors for osteoporosis. Blood and urine analyses were repeated after 3 months, and an additional sample was obtained for genotyping. The pre- and post-supplementation levels of vitamin D and parathyroid hormone (PTH) were assessed to determine response and whether the response to treatment is segregated towards specific genotypes. Compliance to treatment was assessed through direct questioning by the specialist nurse involved in the present study and biochemical evidence through the rise in urinary Ca excretion post-therapy (Table 1).

Table 1 Results of biochemical analysis in responders, non-responders and controls

(Mean values and standard deviations)

creat, Creatine; PTH, parathyroid hormone-intact.

Laboratory analysis

Baseline and 3-month of biochemical analysis for renal, liver and bone profiles and urinary Ca were performed on the ADVIA 1200 (Siemens Healthcare Diagnostics, Camberley, Surrey, UK). PTH was measured on the Immulite 2000 (Siemens Healthcare Diagnostics) by using a two-site chemiluminescence immunoassay with antibodies to PTH (44–84 and 1–34). Vitamin D (25-hydroxyl) was measured using an ELISA kit (International Diagnostic Systems, St Joseph, MI, USA). Within and between CV for PTH and vitamin D were less than 8 % for both analytes.

Allelic discrimination

Whole blood in vacutainers was stored at 4°C for up to 2 weeks before DNA was isolated using a Promega Genomic (Southampton, UK) DNA Wizard Isolation kit. The DNA was then aliquoted and stored at − 20°C until required. Genotyping was performed for the human ESR1 (codons 10 and 325) and VDR (Fok1, Bsm1 and Taq1), using pairs of dual labelled probes, one labelled with FAM and TAMRA to detect one allele, and the other labelled with VIC and TAMRA to detect the other allele.

The genetic variations analysed were oestrogen receptor T/C codon 10 and C/G codon 325, VDR C/T exon 2 (Fok1), G/A intron 8 (Bsm1) and T/C exon 9 (Taq1).

Artificial templates were constructed for both the genotypes of each polymorphism to act as controls. A common forward primer which spanned the whole forward primer and the 5′ part of the shared region of the probe sequence and the unique reverse primer for each genotype spanning from the shared region of the probe sequence to the 3′ end of the reverse primer, creating an overlap area, was incubated with Klenow DNA polymerase. This produced a piece of double-stranded DNA suitable for use as a control template. Sigma Genosys (Haverhill, UK) supplied the oligonucleotides. After thirty-five cycles of amplification, the results were analysed using the allelic discrimination protocol of the ABI PRISM 7700 Sequence Detector and scored as wild-type (wt) heterozygote or homozygous/alternate allele. All probes, primers, Universal master mix, optical plates and caps were obtained from Applied Biosystems (Foster City, CA, USA).

Biomarker studies

H-NMR on urine samples for NMR and pattern recognition

Before NMR spectroscopic analysis, 1 ml urine samples were lyophilised and reconstructed in 1 ml of sodium-phosphate buffer (pH 6·0, made up with 2H2O) containing 1 mm-sodium-trimethylsilyl-(2,2,3,3,-2H4)-l-propionate as an internal standard. NMR spectra were recorded in triplicate in a fully automated manner on a Varian UNITY 400 MHz spectrometer using a proton NMR set-up operating at a temperature of 293 K. Free induction decays were collected as 64 K data points with a spectral width of 8·000 Hz; 45° pulses were used with an acquisition time of 4·10 s and a relaxation delay of 2 s. The spectra were acquired by accumulation of 128 free induction decays. The signal of the residual water was removed by a pre-saturation technique in which the water peak was irradiated with a constant frequency during 2 s before the acquisition pulse. The spectra were processed using the standard Varian software. An exponential window function with a line broadening of 0·5 Hz and a manual baseline correction was applied to all the spectra. After referring to the internal NMR reference (sodium-trimethylsilyl-(2,2,3,3,-2H4)-l-propionate 5 = 0·0), line listings were prepared using the standard Varian NMR software. To obtain these listings, all lines in the spectra above a threshold corresponding to about three times the signal-to-noise ratio were collected and converted to a data file suitable for multivariate analysis applications.

H-NMR on serum samples for NMR and pattern recognition

Before NMR spectroscopic analysis, serum samples were deproteinised either by filtration or by extraction against isopropanol.

Filtration. Before filtration, the filters with a molecular mass cut-off value of 10 kDa (Microcon YM-10; Millipore, Bedford, MA, USA) were spin rinsed with 0·5 ml of 0·05 m-NaOH followed by 2 × 0·5 ml of deionised water to avoid contamination of the ultra-filtrate with glycerine. Deproteinisation of the plasma samples by filtration was performed by centrifugation (1h at 10 000 rpm) of 0·5 ml plasma over a filter followed by the centrifugation (1h at 10 000 rpm) of 0·5 ml deionised water in order to rinse the filtration membrane. Before NMR spectroscopic analysis, filtrates were freeze dried and reconstructed in 750 μl of sodium-phosphate buffer (pH 6·0, made up with 2H2O) containing 1 mm-sodium-trimethylsilyl-(2,2,3,3,-2H4)-l-propionate as an internal standard.

Extraction. Plasma samples were deproteinised by extraction of 100 μl plasma with 600 μl isopropanol. After centrifugation (5 min at 10 000 rpm), the supernatant was isolated and concentrated to dryness. The residue was dissolved in 750 μl methyl 9,12-epoxy-octadecanoate (MeOD) before NMR analysis.

NMR spectroscopy. NMR spectra were recorded in triplicate in a fully automated manner on a Varian UNITY 400 MHz spectrometer using a proton NMR set-up operating at a temperature of 293 K. Free induction decays were collected as 64 K data points with a spectral width of 8·000 Hz; 45° pulses were used with an acquisition time of 4·10 s and a relaxation delay of 2 s. The spectra were acquired by the accumulation of 512 free induction decays. In the case of 2H2O samples, the signal of the residual water was removed by a pre-saturation technique in which the water peak was irradiated with a constant frequency during 2 s before the acquisition pulse.

The spectra were processed using the standard Varian software. An exponential window function with a line broadening of 0·5 Hz and a manual baseline correction was applied to all the spectra.

After referring to the internal NMR reference (sodium-trimethylsilyl-(2,2,3,3,-2H4)-l-propionate 8 = 0·00 or MeOD 5 = 3·30), line listings are prepared using the standard Varian NMR software. To obtain these listings, all lines in the spectra above a threshold corresponding to about three times the signal-to-noise ratio were collected and converted to a data file suitable for multivariate analysis applications.

Data analysis

The mean levels of treatment and control groups were compared using t tests. A drop of more than 26 % of PTH after 3 months of therapy was calculated as a principle criterion of response to therapy. This was based on the total variation (analytical and biological) of the PTH assay. Those with a decrease greater than 26 % were classified as ‘responders’ to treatment, and those showing a decrease of less than this or a paradoxical increase in PTH were classified as ‘non-responders’. Genotype allele frequencies were examined in control, ‘responder’ and ‘non-responder’ groups.

The NMR spectra were processed using the standard Varian software and converted to a data file suitable for multivariate analysis applications (multivariate data analysis). Small differences of comparable signals in different NMR spectra were aligned. The respective datasets were used for multivariate data analysis in Matlab (v6.5; The Mathworks, Natick, MA, USA). Techniques that were applied were, among others, principal component analysis, principal component discrimination analysis and partial least squares discriminant analysis. In principal component analysis, data are transformed from a large set of related variables (NMR signals) to a smaller set of uncorrelated variables. These newly created variables are called principal components. Each principal components forms an axis in multidimensional space, and the calculated distance of an object to this axis is termed a score. Supervised methods such as partial least squares discriminant analysis and principal component discrimination analysis are more powerful tools, which use additional information on the dataset such as biochemical or clinical data to identify differences between pre-defined groups. In principal component discrimination analysis, the scores from principal component analysis are used as a starting point for linear discriminant analysis. The discriminant analysis works by combining the principal components in such a way that differences between pre-defined groups are maximised(Reference Lindon, Nicholson and Holmes20).

Results

One hundred and eight subjects were presented to the clinic during the study period. Of these, fifty-six subjects fulfilled the inclusion criteria and were included in the study.

The mean age of the subjects was 70 years (age range 50–87 years). Thirty-six cases were found to have LBD (T score < − 1·0) on heel ultrasound and were started on Ca and vitamin D3 supplements, while twenty cases had normal heel ultrasound and were treated as controls.

Among the thirty-six cases, twenty-two subjects were classified as responders (mean PTH 51·1 and 28 at baseline and 3 months, respectively) and fourteen were classified as non-responders (mean PTH 36·2 and 32·6 at baseline and 3 months, respectively) to Ca/vitamin D therapy (Table 1).

Table 1 shows the results of biochemical analysis in responders, non-responders of Ca and vitamin D supplementation and control subjects. Mean serum total Ca levels showed no change from baseline, but mean vitamin D levels increased by the end of the treatment period compared with baseline, particularly in the responder group. Mean urinary Ca excretion increased in both the groups but more in the responder group compared to non-responders (7·8 v. 4·0 mmol/mmol creatinine).

Allelic discrimination study

Table 2 shows the genotype in responders, non-responders and controls. For example, of the total number of responders analysed, 41 % have the non-polymorphic ESR1 (codon 10) T/T genotype; 36 % are heterozygous and 23 % are homozygous for the ESR1 (codon 10) polymorphism. Accordingly, the frequency of the wt T allele among the responders is 59 % and that of the polymorphic C allele is 41 % (Table 3). A subject with the ESR1 (codon 10) T/T genotype has a 63 % chance of being a responder, 22 % chance of being a non-responder and 15 % chance of being a vitamin D-sufficient control.

Table 2 Results of genotyping in responders, non-responders and controls as percentages

HER, human oestrogen receptor; VDR, vitamin D receptor; Hom, homozygous; C, cytosine; G, guanine; A, adenine; T, thymine; het, heterozygous; WT, wild type; ND, not done.

Table 3 Genotyping, allele frequency and probability of being responders, non-responders and controls

HER, human oestrogen receptor; T, thymine; C, cytosine; G, guanine; VDR, vitamin D receptor; A, adenine.

For the VDR Fok1 gene, the wt genotype was found in only 10 % of the control subjects compared with nearly 70 % in both LBD groups (responders and non-responders) (Table 2). Table 3 shows that a subject with a heterozygous genotype for Fok1 (T/C) has a 70 % probability of belonging to the control group, and a 21 and 9 % probability of being a responder and non-responder, respectively. Thus, a subject with LBD who is heterozygous for the VDR Fok1 genotype may have an increased chance of being responsive compared with a similar subject who is homozygous for the VDR Fok1 genotype.

Table 4 shows the allelic frequencies in the various genetic markers tested in responder, non-responder and control groups as compared to previously published data in the general population(Reference Dvornyk, Long and Xiong21).

Table 4 Gene frequency among responders, non-responders and controls and comparison with the literature(Reference Dvornyk, Long and Xiong21)

HER, human oestrogen receptor; VDR, vitamin D receptor.

Biomarker study

A difference profile was set up for predicting the responsiveness to vitamin D/Ca therapy in our patient group. This was done by first providing a normalised set of positions and corresponding signal intensities of spectral lines of one or more NMR spectra recorded from metabolites in urine and serum of several osteoporotic subjects known to respond to vitamin D/Ca therapy, and compared to a second set of positions and corresponding signal intensities recorded before therapy. The same was done for the non-responder and control groups. Multivariate data analysis was used to visualise differences related to the different subject groups in these spectra, and difference profiles were set up as shown in Fig. 1.

Fig. 1 Principal component discrimination analysis factor spectrum responders v. non-responders at 0 month. ppm, Parts per million.

Fig. 2 shows that controls, responders and non-responders segregate into definable groups both at 0 and 3 months following therapy when analysed by principal component discrimination analysis scores.

Fig. 2 Principal component discrimination analysis score plot shows that controls, responders and non-responders segregate into definable groups both at 0 and 3 months following therapy. D1 and D2, discriminant 1 and 2 plots as calculated by the principal component discriminant analysis software.

When partial least squares discriminant analysis was used for model building, responders, non-responders and controls segregated into well-defined groups. When subjects 69 and 76 were initially excluded from the model, and then reintroduced after its construction, they were found to be predicted as a responder and non-responder, respectively (image not shown), which coincided with the biochemistry results.

Discussion

The present study has shown potentially significant differences at the genetic level between patients who were found to be responsive to oral Ca and vitamin D supplementation and those classified as ‘non-responders’, after 3 months of supplementation. Compared with ‘non-responders’, as well as previously published data on allele frequencies, those who were ‘responders’ had lower frequencies of ESR1 (codons 10 and 325) and VDR (Taq1 and Bsm1) polymorphisms. Both the groups (LBD) had a higher incidence of the wt Fok1 genotype compared with the control group. The significance of these genotypic findings came into greater perspective following discriminant analysis in our NMR studies which showed distinctive patterns of metabolites at both baseline and following 3 months of treatment, segregating responders from non-responders and controls. While both the molecular genetics and the role of nutrition in bone health are currently very vibrant and important research areas in their own right, we have for the first time been able to demonstrate the interaction between genetic and nutrition factors by the segregation of our groups into genetically and ‘nutrigenomically’ concordant entities.

There is an ongoing debate on recommendations of daily allowance for vitamin D as well as the optimal serum concentration to achieve efficacy. A study on a group of postmenopausal African American women found that the current recommended daily allowance of vitamin D of 400–600 IU/d did not optimise vitamin D levels in a subgroup of this population(Reference Talwar, Aloia and Pollack22). This suggests a genetic basis for vitamin D absorption and/or metabolism. However, there has been paucity of research in defining genetic makers for Ca and vitamin D absorption. Studies in this respect have focused almost exclusively on the VDR gene within different age groups and races. Nieves et al. (Reference Nieves, Ralston and Vásquez23) found that the Fok1 polymorphism of the VDR gene may alter the response of postmenopausal African American women to vitamin D supplementation, with response (as measured by the degree of PTH suppression) being greatest in those with the wt genotype. Our LBD group had a much lower frequency of the Fok1 polymorphism compared with controls, an unexpected finding warranting further investigation. Gennari et al. (Reference Gennari, Becherini and Masi24) found that intestinal Ca absorption was significantly lower in BB (Bsm1) and tt (Taq1) genotypes in postmenopausal Caucasian women, which is in partial agreement with the present finding of higher allelic frequencies of the Taq1 gene in ‘non-responders’. Isotopic Ca absorption in adolescents showed that while Ca absorption was 20 % higher in the Fok1 FF group compared with the ff group, the former group showed slightly lower vitamin D levels(Reference Abrams, Griffin and Hawthorne25). This finding emphasises the complexity of the genetic control on Ca and vitamin D absorption and metabolism; but while mechanisms may be difficult to unravel, identification of genetic patterns and associations pave the way to a more personalised approach to therapy.

Several interactions between the vitamin D and the oestrogen endocrine system have been described(Reference Ferrari and Rizzoli26Reference Lee, Choi and Han28). Moreover, an association between ESR1 and VDR genotypes with respect to bone density and/ or fracture susceptibility has been established(Reference Colin, Uitterlinden and Meurs29, Reference Long, Liu and Zhang30). However, to our knowledge, there have been no investigations reported on ESR1 gene variations in relation to Ca or vitamin D metabolism. We have demonstrated in the present study that the more favourable wt ESR1 genotypes appear to have a positive effect on vitamin D and Ca absorption and metabolism. Oestrogen receptors are extensively expressed in the gastrointestinal tract, and oestrogen has been found to increase VDR gene transcript level, protein expression and endogenous 25-hydroxyvitamin D3 bioactivity in rat colonic mucosa, which may suggest that some of the oestrogen activities in the colonic mucosa could be mediated, at least in part, by an increase in colonic mucosa responsiveness to endogenous 1,25(OH)2D3 (Reference Schwartz, Smirnoff and Shany31). The more favourable wt VDR (both Taq1 and Bsm1) genotype also appears to have a positive effect on response to vitamin D and Ca intake as seen in the present study. The mechanism by which any differences in the VDR alleles may account for changes in Ca homoeostasis is not clear; differences in parathyroid gland regulation have been found to be associated with VDR polymorphisms(Reference Carling, Ridefelt and Hellman32Reference Yokoyama, Shigematsu and Kagami34).

Understanding the inter-relationships among genes, gene products and dietary habits is fundamental to identifying those who will benefit most from intervention strategies. Unravelling the multitude of nutrigenomic and metabolomic patterns that arise from the ingestion of foods or their bioactive components provides insights into a tailored approach to diet and supplementation(Reference Cusack and Cashman35). Hence, nutrigenomics is destined within the next decade to identify complex associations between nutrients and the expression of thousands of genes with simultaneous changes in an equivalent number of metabolites(Reference Zeisel18). With the use of such technology, we were able to find distinct patterns of segregation between controls, responders and non-responders of Ca and vitamin D supplementation in osteoporotic patients. This finding was particularly encouraging given the relatively small number of patients. Moreover, it was possible to categorise the patients at baseline, before commencement of therapy, into quite distinct entities. The latter could pave the way for a marker(s) that will enable the development of a pre-treatment workup to identify those who would not respond to usual levels of Ca and vitamin D supplementation.

Preliminary analysis of our ‘NMR fingerprinting’ has suggested that folate and vitamin B metabolism is implicated in Ca and vitamin D status and response to supplementation (data not shown). This finding provides tremendous potential for detailed evaluation of the metabolic pathways between Ca/vitamin D and folate/vitamin B12, including their interaction in osteoporosis and treatment responses. It is worth noting that allelic polymorphisms in the gene encoding methylenetetrahydrofolate have been associated with reduced bone mineral density in postmenopausal Japanese women(Reference Miyao, Morita and Hosoi36) and early postmenopausal Danish women(Reference Abrahamsen, Madsen and Tofteng37), suggesting a role for the folate metabolic pathway in bone health. However, at this stage, speculation on deficiency and how micronutrients interact in this population would be premature and further investigation is warranted.

The main limitations of the present study were the small sample size and the fact that those who had osteopenia were not segregated from those who had osteoporosis; both groups were defined as ‘low bone mass’. It is notable, however, that a lower threshold than that defined by the WHO for diagnosing osteoporosis has been suggested for quantitative heel ultrasound(Reference Frost, Blake and Fogelman38). Despite the limitations, we have demonstrated links between genetic and nutritional factors as evidenced by the segregation of responders, non-responders and controls into groups that can be identified by both genetic and nutrigenomic profiles. This has been an observational study(Reference von Elm, Altman and Egger39), and further work is warranted on a larger number of subjects for the confirmation of the findings. Extension of the NMR work is also necessary, and further investigation of the potentially interesting metabolites may provide exciting opportunities for the development of a simple laboratory diagnostic test for the provision of a patient-tailored approach to treatment.

Acknowledgements

We would like to thank Johannes Van Nesselrooij and Robert-Jan A. N. Lamers from TNO Nutrition and Food Research, The Netherlands, for their assistance in the biomarker study. The authors declare that there are no conflicts of interest. The present research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors. We would like to thank C. M. for design of the study, patient recruitment and genomics studies; M. O. E. for data analysis and manuscript writing; R. C. for clinical and biochemical studies and sample collections; nurse T. M. for clinical study and sample collections.

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Figure 0

Table 1 Results of biochemical analysis in responders, non-responders and controls(Mean values and standard deviations)

Figure 1

Table 2 Results of genotyping in responders, non-responders and controls as percentages

Figure 2

Table 3 Genotyping, allele frequency and probability of being responders, non-responders and controls

Figure 3

Table 4 Gene frequency among responders, non-responders and controls and comparison with the literature(21)

Figure 4

Fig. 1 Principal component discrimination analysis factor spectrum responders v. non-responders at 0 month. ppm, Parts per million.

Figure 5

Fig. 2 Principal component discrimination analysis score plot shows that controls, responders and non-responders segregate into definable groups both at 0 and 3 months following therapy. D1 and D2, discriminant 1 and 2 plots as calculated by the principal component discriminant analysis software.