Literature DB >> 18657264

Interaction between Calpain 5, Peroxisome proliferator-activated receptor-gamma and Peroxisome proliferator-activated receptor-delta genes: a polygenic approach to obesity.

María E Sáez1, Antonio Grilo, Francisco J Morón, Luis Manzano, María T Martínez-Larrad, Antonio González-Pérez, Javier Serrano-Hernando, Agustín Ruiz, Reposo Ramírez-Lorca, Manuel Serrano-Ríos.   

Abstract

CONTEXT: Obesity is a multifactorial disorder, that is, a disease determined by the combined effect of genes and environment. In this context, polygenic approaches are needed.
OBJECTIVE: To investigate the possibility of the existence of a crosstalk between the CALPAIN 10 homologue CALPAIN 5 and nuclear receptors of the peroxisome proliferator-activated receptors family.
DESIGN: Cross-sectional, genetic association study and gene-gene interaction analysis.
SUBJECTS: The study sample comprise 1953 individuals, 725 obese (defined as body mass index > or = 30) and 1228 non obese subjects.
RESULTS: In the monogenic analysis, only the peroxisome proliferator-activated receptor delta (PPARD) gene was associated with obesity (OR = 1.43 [1.04-1.97], p = 0.027). In addition, we have found a significant interaction between CAPN5 and PPARD genes (p = 0.038) that reduces the risk for obesity in a 55%.
CONCLUSION: Our results suggest that CAPN5 and PPARD gene products may also interact in vivo.

Entities:  

Mesh:

Substances:

Year:  2008        PMID: 18657264      PMCID: PMC2527300          DOI: 10.1186/1475-2840-7-23

Source DB:  PubMed          Journal:  Cardiovasc Diabetol        ISSN: 1475-2840            Impact factor:   9.951


Introduction

Obesity, which is among of the most hereditable human conditions (45–75%), is, with few exceptions, a polygenic disorder determined by an unknown number of genes with mild to moderate individual effects that also interacts with the environment to produce the phenotype. The importance of the genetic component in obesity has been assessed by the observation of familial aggregation, prevalence differences among ethnic groups and concordance rates in twin studies [1]. Association analysis has been the more successful strategy for the identification of these genetic factors, but these studies are not always replicated in subsequent analyses and only a small proportion of these genes have been consistently associated with the disease [2]. This situation is mainly due to small single gene effects, reason why, genetic association analysis can be strongly influenced by sample size, population structure and allele frequency. Thus, the polygenic approach is arising as the next landmark for the study of common complex diseases [3,4]. The peroxisome proliferator-activated receptors (PPARs) belong to a nuclear receptor (NR) superfamily of ligand-inducible transcription factors that form functional complexes with the retinoid × receptors (RXRs). Three subtypes, alpha (α), gamma (γ) and delta (δ), have been identified. PPARα (PPARA) is a regulator of fatty acid oxidation [5], whereas PPARγ (PPARG) mainly functions as a regulator of adipogenesis [6]. PPARG is expressed at adipose tissue, macrophages and muscle where it regulates glucose metabolism. Knockout mice for Pparg are embryonic lethal, but specific deletion of the PPARG gene in fat and muscle has been shown to cause insulin resistance [7,8]. PPARG contributes to the control of energy expenditure by the induction of a futile metabolic cycle in the mitochondria mediated by glycerol kinase and the uncoupling proteins (UCPs), which are transcriptionally regulated by PPARG [9]. Genetic studies have also greatly contributed to corroborate the role of PPARG in the pathogenesis of metabolic syndrome related phenotypes: the Pro12Ala polymorphism of PPARG gene has been confirmed to be associated with greater body mass index (BMI) and insulin sensitivity in the obese subgroup in a recent meta-analysis with more than 32.000 individuals[10]. In the last few years, PPARδ (PPARD) has been shown to have a critical role in the regulation of energy metabolism [11]. Increased Ppard expression in adipose tissue in mice has a protective effect against elevated adiposity and serum lipid levels [12]. The activation of PPARD results in the increased expression of genes involved in lipid uptake, fatty acid oxidation and uncoupling proteins, highlighting the PPARD prominent role in mitochondrial activity [13,14]. PPARD gene variants have been associated with obesity [15-17], although some authors have failed to replicate this finding [18-21]. Recent reports have associated PPARD polymorphisms with the effectiveness of cardiovascular fitness, demonstrating the pivotal role of PPARD gene variants in mitochondrial function and, in consequence, in weight control [22,23]. The calpain family comprises a heterogeneous group of cysteine proteases with a broad expression pattern that includes multiple isoforms that are both ubiquitous and tissue specific. Calpains are involved in a variety of calcium-regulated cellular processes, such as signal transduction, cell proliferation and differentiation, and apoptosis [24]. The calpain role in apoptosis is related to the proteolytic cleavage of the proapoptotic Bax protein, a member of the Bcl-2 family, and the generation of a potent proapoptotic fragment (Bax/p18), which in turn mediates cytocrome c release and initiates the apoptotic execution; this action occurs in the mitochondria, so calpain activity exists within this cell fraction [25]. Calpain 10 (CAPN10) is a member of this protease family which is included into the atypical calpain subgroup, characterized by the absence of the EF-hand domain distinctive of the classical calpains and the presence of a so-called T domain homologue of the Caenorhabditis elegans TRA-3 calpain. The CAPN10 gene was identified as a type 2 diabetes (T2DM) susceptibility locus by Horikawa et al. [26] and, since then, has been associated with many other related conditions such as polycystic ovary syndrome (PCOS), dyslipidemia, hypertension or increased BMI by different groups [24]. CAPN10 has been related to pancreatic β-cell apoptosis initiated by the fatty acid palmitate [27]. Later on, CAPN10 protein was identified within the mitochondria: the overexpression of mitochondrial CAPN10 results in mitochondrial swelling and autophagy through the cleavage of Complex I subunits and activation of mitochondrial permeability transition (MPT) [28]. The CAPN10 homologue calpain 5 (CAPN5), was firstly analysed in humans by our group [29,30]. In these studies, we found that specific CAPN5 haplotypes could modify the risk of developing metabolic syndrome and PCOS, a common endocrine disorder in women of reproductive age in which all components of metabolic syndrome are frequent. CAPN5 haplotypes were also shown to be associated with diastolic blood pressure and cholesterol levels and a trend for BMI association was observed. Interestingly, some reports have described proteolytic activity of calpains over the PPARs partners in signalling RXRs at the mitochondria [31,32] and over PPARG at the adipose tissue [33]. On the other hand, transcriptional regulation of calpain activity by PPARG has been also described [34]. Our main objective was to investigate the possibility of the existence of a crosstalk between the CAPN10 homologue CAPN5 and NRs of the PPAR family. With this purpose, we have selected highly informative polymorphisms in CAPN5, PPARG and PPARD genes and analysed it in 1953 individuals in relation to the absence or presence of obesity. Additionally, we have investigated the individual contributions of these polymorphisms to the obesity phenotype. We have found that the PPARD polymorphism is associated with obesity in our population. We have also found the existence of genetic interaction between CAPN5 and PPARD genes.

Methods

Population

The study sample comprised 1953 individuals, 725 obese (defined as BMI ≥ 30) and 1228 non obese subjects recruited from both a population based study and from outpatient visits to different hospitals in a multicenter study as previously described [35,36]. The referral centres involved in this research are Hospital Universitario de Valme (Sevilla), Hospital Universitario Ramon y Cajal (Madrid), and Hospital Universitario San Carlos (Madrid). Informed written consent was obtained from all study participants. The study protocol was designed in accordance with institutional guidelines for human research and was approved by the Ethics Committees of all referral centres.

Polymorphisms

In order to perform genetic interaction analyses, we have selected three frequent and highly informative polymorphisms (heterozygosity ≥ 40%) within CAPN5 (rs7102149 G/A), PPARG (rs2938392 C/T) and PPARD (rs2076167 A/G, N798N). Since in our previous study the genetic association analysis of four CAPN5 polymorphisms with BMI was not conclusive, we have selected a polymorphism at the second intron of the gene, close to the recombination hot spot observed in this gene region that defines the two haplotypic blocks analysed in our prior report [30]. This polymorphism has been found to be expressed in two CAPN5 mRNAs where it is predicted to encode a tryptophan residue in the wild type state (G, TGG) and a stop codon in the polymorphic state (A, TAG). The PPARG polymorphism is located at the fifth intron of the gene in the same disequilibrium block than the Pro12Ala polymorphism using HapMap data, but have a higher allelic frequency and heterozygosity, being for these reasons more informative than Pro12Ala. The selected PPARD polymorphism encodes an asparagine (Asn) residue in the sixth exon of the gene.

Genotyping

We obtained 5 ml of peripheral blood from all patients and controls to isolate germline DNA from leukocytes. DNA extraction was performed in a MagNa Pure LC Instrument (Roche Diagnostics, Indianapolis, IN, USA) according to the manufacturer's instructions. To perform polymerase chain reactions (PCRs), we prepared aliquots of DNA at a concentration of 5 ng/μl. The rest of the stock was cryopreserved at -20°C. PCR reactions were run on a thermal cycler machine (MJ Research Inc., Waltman, Masachusetts, USA) using a final volume of 20 μl. The genotypes were carried out by using the pyrosequencing technology protocols [37]. The selected primers for pyrosequencing analysis are shown in Table S1. The pyrosequencing machine was programmed in accordance with the manufacturer's recommendation (Biotage, Uppsala, Sweden). A 10% of the samples were re-extracted and retyped as an internal control of the quality of the genotyping with a concordance rate of > 99%.

Statistical analysis

To analyze deviation from Hardy-Weinberg equilibrium, we used tests adapted from Sasieni [38] at the online resource available at the Institute for Human Genetics, Munich, Germany . Logistic regression analysis was used to calculate individual and combined gene effects. For testing gene-gene interactions, we introduced and interaction term within the logistic regression model along with the univariate terms. All analyses have been adjusted for age, sex, smoking (defined as present or past history of smoking of at least five cigarettes per day for a minimum of 5 years), alcohol consumption (defined as a daily intake of more than 10 g) and physical activity. Power calculations suggest that we have 90% power at a significance level of 0.05 to detect an OR for obesity of 1.5.

Statement of Ethics

We certify that all applicable institutional and governmental regulations concerning the ethical use of human volunteers were followed during this research.

Results

Monogenic association analysis

The observed allele frequencies were 0.63 in controls and 0.64 in cases at the CAPN5 locus (p = 0.456), 0.54 in controls and 0.53 in cases at the PPARG locus (p = 0.340) and 0.72 in controls and 0.69 in cases at the PPARD locus, showing the polymorphic allele at this last gene a slight over-representation in the obese subgroup (p = 0.021). All genotype frequencies are in accordance with the Hardy-Weinberg equilibrium law (p > 0.301) except for the cases group at the PPARG locus, with a slight deviation from the expected proportions (p = 0.037). In the quantitative genotypic association analysis (Table 1), we didn't observe significant differences at CAPN5 or PPARG loci, whereas homozygotes for the polymorphic G allele at the PPARD locus have slightly greater BMI than individuals carrying at least one A allele (28.88 kg/m2 vs 28.12 kg/m2, p = 0.033).
Table 1

Quantitative association analysis of the selected polymorphisms with BMI.

SNP111222P (2df)
CAPN5 (rs7102149)28,11 ± 1.0128,14 ± 1.0127,84 ± 1.010.552
(0.820)(0.592)(0.281)
PPARG (rs2938392)28,27 ± 1.0127,95 ± 1.0128,21 ± 1.010.289
(0.254)(0.118)(0.534)
PPARD (rs2076167)28,12 ± 1.0128,15 ± 1.0128,88 ± 1.010.103
(0.409)(0.697)(0.033)

Data are means ± std. error. Number in brackets are p values (1 df) resulting from the comparison of each genotype against the remaining genotypes. CAPN5, allele 1:G, allele 2: A; PPARG, allele 1: C, allele 2: T; PPARD, allele 1:A, allele 2: G

Quantitative association analysis of the selected polymorphisms with BMI. Data are means ± std. error. Number in brackets are p values (1 df) resulting from the comparison of each genotype against the remaining genotypes. CAPN5, allele 1:G, allele 2: A; PPARG, allele 1: C, allele 2: T; PPARD, allele 1:A, allele 2: G According to allelic frequencies and quantitative association analysis, the homozygous presence of the polymorphic G allele at PPARD locus is more common in the obese subgroup (OR = 1.43 [1.04–1.97], p = 0.027) (Table 2). No association was observed for the analysed polymorphisms at the CAPN5 (p ≥ 0.126) or PPARG (p ≥ 0.199) genes.
Table 2

Genetic association analysis of CAPN5 and PPARD gene variants with obesity.

GeneGenotypeControlsCasesP valueOR [CI]
CAPN5 (rs7102149)GG4982990.8991.01 [0.85–1.21]
GA5503320.3421.09 [0.91–1.30]
AA180940.1260.82 [0.63–1.06]

PPARG (rs2938392)CC3662150.8850.99 [0.81–1.20]
CT5973330.3460.92 [0.77–1.01]
TT2651770.1991.15 [0.93–1.43]

PPARD (rs2076167)AA6393480.2950.91 [0.76–1.09]
AG4943000.8430.98 [0.81–1.18]
GG95770.0271.43 [1.04–1.97]
Genetic association analysis of CAPN5 and PPARD gene variants with obesity.

Interaction analysis

We didn't find evidence of interaction between PPARD and PPARG (p = 0.602), whereas a trend was observed for PPARG and CAPN5 genes (p = 0.056). Regarding PPARD and CAPN5 genes, we detected a significant genetic interaction between the homozygous presence of the polymorphic allele at CAPN5 locus and the wild type at PPARD locus (CAPN5_AA*PPARD_AA, p = 0.038) (Table 3 and figure 1). When compared with non carriers of any of the two genotypes, only the individuals carrying both genotypes are significantly less frequently obese (OR = 0.55 [0.35–0.85], p = 0.008).
Table 3

Odds ratio (OR) for obesity in the presence/absence of PPARD_AA and CAPN5_AA genotypes.

PPARD_AACAPN5_AAControlsCasesOR [CI]P value
--5023171
-+87601.06 [0.72–1.56]0.764
+-5463140.96 [0.78–1.19]0.720
++93340.55 [0.35–0.85]0.008

P value for interaction = 0.038

Figure 1

Odds ratio (95% confidence interval) for the genetic interaction between the PPARD and CAPN5 genes in obesity. Significant genetic interaction between the homozygous presence of the polymorphic allele at CAPN5 locus and the wild type at PPARD locus (CAPN5_AA*PPARD_AA), OR= 0.55; P value for interaction = 0.038)

Odds ratio (OR) for obesity in the presence/absence of PPARD_AA and CAPN5_AA genotypes. P value for interaction = 0.038 Odds ratio (95% confidence interval) for the genetic interaction between the PPARD and CAPN5 genes in obesity. Significant genetic interaction between the homozygous presence of the polymorphic allele at CAPN5 locus and the wild type at PPARD locus (CAPN5_AA*PPARD_AA), OR= 0.55; P value for interaction = 0.038)

Discussion

The PPARD receptor has a well established role in lipid metabolism, but its implication in the modulation of lipid stores is more controversial. Transgenic mice with targeted activation of Ppard in adipose tissue are resistant to both high-fat diet-induced and genetically predisposed (db/db) obesity; treatment of db/db mice with the PPARD agonist GW501516 also reversed obesity [11]. Several groups have examined different PPARD gene polymorphism in obesity related traits, half of them with positive results. All but two of these reports are limited to a SNP located at the 5'-UTR region of the exon 4 (rs2016520, referred as T+294C or c.-87T>C); this polymorphism is located at the linkage disequilibrium (LD) block adjacent to that of the N798N SNP analysed in the present work [16-19]. In the other two reports, tag SNPs throughout the genomic sequence of PPARD gene were explored, but only one of them obtained positive results [15,20]. The polymorphism analysed by our group has only been explored in the work by Grarup et al. [20], who didn't find association with obesity but identified an haplotype consisting of the rare alleles of this SNP and the rs2076169 polymorphism, located upstream in the same LD block, that was associated with a greater insulin sensitivity. We have not found evidence of the N798N polymorphism being associated with glucose levels or HOMA values in our population (data not shown). The identification of genetic association of PPARD with obesity in our population contributes to the notion that this gene is a candidate gene for obesity and related phenotypes. We have not found association of the PPARG selected polymorphism with obesity in this population. We selected this polymorphism because is more informative than Pro12Ala and is in the same LD block. Only two works have previously analysed the Pro12Ala polymorphism in Spanish population [39,40]. In one of them, association with obesity was observed only in men (210 individuals) whereas in the other report, statistical significance was only achieved when physical activity was taken into account. Taken together,PPARG does not seem to be a major locus for obesity in our population. Regarding insulin sensitivity, we have not found association of this polymorphism with fasting insulin levels nor HOMA values. However, previous studies in Spanish population have associated the Pro12Ala polymorphism with estimates of insulin sensitivity [39,41], so we can no rule out PPARG gene as a genetic factor influencing insulin action in our population. The association analysis at the CAPN5 did not contribute to elucidate if this gene has, per se, a role in obesity, since we did not found statistical significant differences at this locus between controls and cases (p ≥ 0.126). Thus, this polymorphism, which is predicted to encode a stop codon in one of the CAPN5 mRNAs identified so far, doesn't seem to be a functional variant involved in obesity. The most relevant result of our work is the identification of genetic interaction between CAPN5 and PPARD genes. The physiological mechanism underlying the observed interaction is unknown, but we postulate that it could be related to mitochondrial biology. The existence of calpain activity in the mitochondria is a well known fact thanks to the extensive investigations performed in the field of apoptosis, one of the more relevant calpain biological activities. In this way, the CAPN5 homologue, CAPN10, has been shown to exist within the mitochondria and to be involved in pancreatic β-cell apoptosis, a process postulated to underlie the association of this gene with the insulin resistance phenotype [27,28,42]. On the other hand, mitochondrial versions of NRs have been identified, including the PPARG and the thyroid hormone receptor A (THRA) that is also a RXR partner in signalling, although the existence of the latter is still a controversial issue [43]. Moreover, some reports have described proteolytic activity of calpains over members of the PPAR and RXR families related to the generation of mitochondrial versions of these receptors that regulate mitochondrial gene expression [31]. Proteolytic cleavage of RXR by calpains has been also observed in hepatoma cell lines [32]. Recently, a report by Yajima et al. [33] describes that calpain system regulates the differentiation of adult primitive mesenchymal ST-13 adipocytes through the cleavage of PPARG. On the other hand, transcriptional regulation of calpain activity by PPARG has been also described [34]. In this way, a recent report has shown that the PPARG agonist rosiglitazone reduces μ-calpain activity, normalizing platelet endothelial cell adhesion molecule-1 levels and partially restoring platelet sensitivity to nitric oxide synthase inhibition in type 2 diabetic subjects, a mechanism related to the anti-atherogenic properties of this drug [44]. Although our results regarding CAPN5 and PPARG interaction are not conclusive, we can not rule out the possibility that exits given the statistical trend observed, the similitude between the PPAR family members and the existent bibliography. Further analysis in bigger populations or in other phenotypes besides functional studies will help to clarify this issue. The existence of calpain activity over NRs, could exist not only inside the mitochondria, but also in the nucleus, being a possible biological explanation for the unusual presence of proteases into the nucleus; this cellular location has been observed for both CAPN5 and CAPN10 among other calpains [45]. Several authors have described calpain activity over diverse NRs including the androgen receptor [46,47] and the estrogen receptors (ERs) [48,49]. Interestingly, mitochondrial versions of the ERs have been also described [43]. Conversely, several NRs modulate the expression of calpains: retinoids, the ligands for retinoid acid receptors (RARs), estrogens, that mediates their action through the estrogen receptors (ERs) and the 1,25-dihydroxyvitamin D3, which uses the vitamin D receptor (VDR), have shown to regulate calpain activity [50-54]. Interaction genetic analysis can help to identify genetic factors that when acting together, modify the risk of suffering from a complex disease and contribute to elucidate the molecular mechanism of the studied disease. This knowledge could have direct implications in the clinical management of the patients, heading the pharmacological therapy to the most suitable biological process. We propose that the pathological mechanism of CAPN5 and, perhaps, its homologue CAPN10, could be related to the existence of a cross-talk between this calpain and the RXRs/PPARs nuclear receptors, which are key proteins in the intermediate metabolism and major pharmacological targets. For one hand, CAPN5 regulates these NRs levels and, on the other hand, the NRs regulate CAPN5 level through the induction/repression of its expression. However, functional studies are needed to investigate if the proposed mechanism could be plausible in living cells and if true, pharmacological implications for PPAR agonist should be explored.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

MES and RRL have genotyped samples, analysed and interpreted data and draft the manuscript, FJM, AG-P and AR have contributed to conception and design of the study and revised the manuscript, AG, LM MTML, JSH and MSR have contributed to the acquisition and interpretation of data and revised the manuscript.
  54 in total

1.  Calpain 10: a mitochondrial calpain and its role in calcium-induced mitochondrial dysfunction.

Authors:  David D Arrington; Terry R Van Vleet; Rick G Schnellmann
Journal:  Am J Physiol Cell Physiol       Date:  2006-06-21       Impact factor: 4.249

2.  Peroxisome proliferator-activated receptor-delta polymorphisms are associated with physical performance and plasma lipids: the HERITAGE Family Study.

Authors:  Arto J Hautala; Arthur S Leon; James S Skinner; D C Rao; Claude Bouchard; Tuomo Rankinen
Journal:  Am J Physiol Heart Circ Physiol       Date:  2007-01-26       Impact factor: 4.733

3.  Calmodulin-androgen receptor (AR) interaction: calcium-dependent, calpain-mediated breakdown of AR in LNCaP prostate cancer cells.

Authors:  Ronald P Pelley; Kannagi Chinnakannu; Shalini Murthy; Faith M Strickland; Mani Menon; Q Ping Dou; Evelyn R Barrack; G Prem-Veer Reddy
Journal:  Cancer Res       Date:  2006-12-15       Impact factor: 12.701

4.  Peroxisome-proliferator-activated receptor delta activates fat metabolism to prevent obesity.

Authors:  Yong-Xu Wang; Chih-Hao Lee; Sambath Tiep; Ruth T Yu; Jungyeob Ham; Heonjoong Kang; Ronald M Evans
Journal:  Cell       Date:  2003-04-18       Impact factor: 41.582

5.  [Prevalence of obesity in Spain: results of the SEEDO 2000 study].

Authors:  Javier Aranceta; Carmen Pérez Rodrigo; Lluís Serra Majem; Lourdes Ribas Barba; Joan Quiles Izquierdo; Jesús Vioque; Josep Tur Marí; José Mataix Verdú; Juan Llopis González; Rafael Tojo; Màrius Foz Sala
Journal:  Med Clin (Barc)       Date:  2003-05-03       Impact factor: 1.725

Review 6.  Genetic and environmental interactions in obesity and type 2 diabetes.

Authors:  Isabela Romao; Jesse Roth
Journal:  J Am Diet Assoc       Date:  2008-04

7.  Activation of peroxisome proliferator-activated receptor delta induces fatty acid beta-oxidation in skeletal muscle and attenuates metabolic syndrome.

Authors:  Toshiya Tanaka; Joji Yamamoto; Satoshi Iwasaki; Hiroshi Asaba; Hiroki Hamura; Yukio Ikeda; Mitsuhiro Watanabe; Kenta Magoori; Ryoichi X Ioka; Keisuke Tachibana; Yuichiro Watanabe; Yasutoshi Uchiyama; Koichi Sumi; Haruhisa Iguchi; Sadayoshi Ito; Takefumi Doi; Takao Hamakubo; Makoto Naito; Johan Auwerx; Masashi Yanagisawa; Tatsuhiko Kodama; Juro Sakai
Journal:  Proc Natl Acad Sci U S A       Date:  2003-12-15       Impact factor: 11.205

8.  Inhibitory effects of retinoic acid receptor alpha stimulants on murine cataractogenesis through suppression of deregulated calpains.

Authors:  Nami Nishikiori; Makoto Osanai; Hideki Chiba; Takashi Kojima; Hiroshi Ohguro; Norimasa Sawada
Journal:  Invest Ophthalmol Vis Sci       Date:  2007-05       Impact factor: 4.799

9.  Possible involvement of calpain in the growth of estrogen receptor positive breast cancer cells.

Authors:  E Shiba; S Kim; M Fujitani; J I Kambayashi; I Kawamura; S Tsujimoto; K Shimomura; Y Tanji; T Taguchi; Y Kimoto; M Izukura; S I Takai
Journal:  Anticancer Res       Date:  1996 Mar-Apr       Impact factor: 2.480

10.  Impact of peroxisome proliferator-activated receptors gamma and delta on adiposity in toddlers and preschoolers in the GENESIS Study.

Authors:  Vasiliki Lagou; Robert A Scott; Yannis Manios; Tun-Li Joshua Chen; Guan Wang; Evangelia Grammatikaki; Christine Kortsalioudaki; Thodoris Liarigkovinos; George Moschonis; Eleftheria Roma-Giannikou; Yannis P Pitsiladis
Journal:  Obesity (Silver Spring)       Date:  2008-01-31       Impact factor: 5.002

View more
  9 in total

1.  A conditional synergy index to assess biological interaction.

Authors:  Ronja Foraita
Journal:  Eur J Epidemiol       Date:  2009-08-08       Impact factor: 8.082

2.  CAPN5 genetic inactivation phenotype supports therapeutic inhibition trials.

Authors:  Katherine J Wert; Susanne F Koch; Gabriel Velez; Chun-Wei Hsu; MaryAnn Mahajan; Alexander G Bassuk; Stephen H Tsang; Vinit B Mahajan
Journal:  Hum Mutat       Date:  2019-08-26       Impact factor: 4.878

3.  Screening of Peroxisome Proliferator-Activated Receptors (PPARs) α, γ and α Gene Polymorphisms for Obesity and Metabolic Syndrome Association in the Multi-Ethnic Malaysian Population.

Authors:  Phee-Phee Chia; Sook-Ha Fan; Yee-How Say
Journal:  Ethn Dis       Date:  2015-11-05       Impact factor: 1.847

4.  Calpain 5 is highly expressed in the central nervous system (CNS), carries dual nuclear localization signals, and is associated with nuclear promyelocytic leukemia protein bodies.

Authors:  Ranjana Singh; M Kathryn Brewer; Charles B Mashburn; Dingyuan Lou; Vimala Bondada; Brantley Graham; James W Geddes
Journal:  J Biol Chem       Date:  2014-05-16       Impact factor: 5.157

Review 5.  Integrative and systemic approaches for evaluating PPARβ/δ (PPARD) function.

Authors:  Greta M P Giordano Attianese; Béatrice Desvergne
Journal:  Nucl Recept Signal       Date:  2015-04-27

6.  Neural networks for modeling gene-gene interactions in association studies.

Authors:  Frauke Günther; Nina Wawro; Karin Bammann
Journal:  BMC Genet       Date:  2009-12-23       Impact factor: 2.797

7.  Subcellular proteomic approach for identifying the signaling effectors of protein kinase C-β₂ under high glucose conditions in human umbilical vein endothelial cells.

Authors:  Min Zhang; Fang Sun; Fangfang Chen; Bo Zhou; Yaqian Duan; Hong Su; Xuebo Lin
Journal:  Mol Med Rep       Date:  2015-09-30       Impact factor: 2.952

8.  An anti-CAPN5 intracellular antibody acts as an inhibitor of CAPN5-mediated neuronal degeneration.

Authors:  Yan Wang; Xiao Zhang; Zongming Song; Feng Gu
Journal:  Oncotarget       Date:  2017-11-01

9.  Epigenetics and early domestication: differences in hypothalamic DNA methylation between red junglefowl divergently selected for high or low fear of humans.

Authors:  Johan Bélteky; Beatrix Agnvall; Lejla Bektic; Andrey Höglund; Per Jensen; Carlos Guerrero-Bosagna
Journal:  Genet Sel Evol       Date:  2018-04-02       Impact factor: 4.297

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.