Literature DB >> 28206976

Lipid and Alzheimer's disease genes associated with healthy aging and longevity in healthy oldest-old.

Lauren C Tindale1,2, Stephen Leach1, John J Spinelli3,4, Angela R Brooks-Wilson1,2.   

Abstract

Several studies have found that long-lived individuals do not appear to carry lower numbers of common disease-associated variants than ordinary people; it has been hypothesized that they may instead carry protective variants. An intriguing type of protective variant is buffering variants that protect against variants that have deleterious effects. We genotyped 18 variants in 15 genes related to longevity or healthy aging that had been previously reported as having a gene-gene interaction or buffering effect. We compared a group of 446 healthy oldest-old 'Super-Seniors' (individuals 85 or older who have never been diagnosed with cancer, cardiovascular disease, dementia, diabetes or major pulmonary disease) to 421 random population-based midlife controls. Cases and controls were of European ancestry. Association tests of individual SNPs showed that Super-Seniors were less likely than controls to carry an APOEε4 allele or a haptoglobin HP2 allele. Interactions between APOE/FOXO3, APOE/CRYL1, and LPA/CRYL1 did not remain significant after multiple testing correction. In a network analysis of the candidate genes, lipid and cholesterol metabolism was a common theme. APOE, HP, and CRYL1 have all been associated with Alzheimer's Disease, the pathology of which involves lipid and cholesterol pathways. Age-related changes in lipid and cholesterol maintenance, particularly in the brain, may be central to healthy aging and longevity.

Entities:  

Keywords:  APOE; Alzheimer’s disease; Gerotarget; buffering; epistasis; healthy aging; longevity

Mesh:

Year:  2017        PMID: 28206976      PMCID: PMC5400530          DOI: 10.18632/oncotarget.15296

Source DB:  PubMed          Journal:  Oncotarget        ISSN: 1949-2553


INTRODUCTION

Healthy aging is the ability to age successfully without succumbing to disease, with an emphasis on healthspan over lifespan [1]. The genetics of healthy aging and longevity is complex, with few genetic associations replicating between studies. APOE (apolipoprotein E) is an exception; genetic variation in this gene has been associated with longevity in multiple genome-wide association studies (GWAS) and candidate gene studies [1, 2]. The APOEε4 allele is associated with increased mortality, and is also the major genetic risk factor for late onset Alzheimer's disease (AD). While the ε4 allele is neither necessary nor sufficient for developing the disease, it increases risk in a dose-dependent manner [3]. Long-lived individuals have been found to carry a burden of disease-associated variants comparable to that observed in typical individuals [4-6]. One possible explanation for their ability to remain in good health to advanced ages, and still carry deleterious variants, is the concept of genetic buffering. Genetic buffering is a type of epistatic interaction in which a favourable genotype attenuates the effect of one or more deleterious variants. In this model, long-lived individuals may carry harmful (buffered) variants without developing disease, as a result of also carrying protective (buffering) variants. In a paper first suggesting the application of buffering to human longevity, Bergman and colleagues used changes in allele frequencies with age to show buffering of a deleterious LPA heterozygote by a buffering CETP VV genotype [7] in participants in the Longevity Genes Project [8]. We have assembled a list of genetic variants previously reported as having possible epistatic or buffering/buffered effects related to longevity in human studies. We examined these variants in individuals aged 85 years or older who had never been diagnosed with cancer, cardiovascular disease (CVD), diabetes, dementia, or major pulmonary disease; we call them the ‘Super-Seniors’ [9]. These healthy oldest-old were compared to random population-based middle-aged controls. We hypothesize that epistatic interactions, in which longevity-promoting buffering variants protect against the effects of deleterious buffered variants, contribute to the Super-Seniors’ health and longevity.

RESULTS

Candidate variants

A search in PubMed of the combinations “epistasis AND aging”, “epistasis AND longevity”, “buffering AND aging”, “buffering AND longevity”, “human”, and “genetics” produced a list of 111 papers of interest. Manual review of the papers and, in some cases, references cited within them, identified 18 variants in 15 genes suspected as having an interaction related to aging or longevity (Table 1). This included 15 SNPs, a 1bp deletion, a 1724bp deletion, and the well-characterized APOE haplotype.
Table 1

Candidate genes and candidate epistatic variants

GeneIDEffectProposed InteractionReference
APOA1rs670DeleteriousBufferedGarasto et al., 2003 [45]
APOEAPOEε4DeleteriousAPOEε4 buffered by HP1/1Napolioni et al., 2011 [44]
HFErs1800562DeleteriousHFE T allele bufferedTan et al., 2003 [24]
KLrs9536314DeleteriousKL het bufferedBergman et al., 2007 [7]
LPA(1)rs1853021DeleteriousLPA het buffered by CETP VVBergman et al., 2007 [7]
LPA(2)rs3798220DeleteriousRisk for coronary diseaseClarke et al., 2009 [22]
LPA(3)rs10455872DeleteriousRisk for coronary diseaseClarke et al., 2009 [22]
MTTPrs2866164DeleteriousMTTP CC buffered by APOC3 CC, CETP VV, ADIPOQ del/delHuffman et al., 2012 [46]
PON1rs662DeleteriousPON1 het bufferedBonafè et al., 2002 [47]
ADIPOQrs56354395ProtectiveADIPOQ del/del buffers MTTP CCAtzmon et al., 2008 [27]
APOC3rs595049 (LD with rs2542052)ProtectiveAPOC3 CC buffers MTTP CCAtzmon et al., 2006 [48]
CETPrs5882ProtectiveCETP VV buffers MTTP CC, LPA(1) hetBarzilai et al., 2003 [29]
CRYL1rs7989332ProtectiveAD-associated with KHDRBS2Gusareva et al., 2014 [15]
FOXO1rs2701858ProtectiveJoint effect with FOXO3(1) for longevityTan et al., 2013 [49]
FOXO3(1)rs9486902ProtectiveJoint effect with FOXO1 for longevityTan et al., 2013 [49]
FOXO3(2)rs2802292ProtectiveFOXO3 GG bufferingWillcox et al., 2008 [20]
HPrs72294371ProtectiveHP1/1 buffers APOEε4Napolioni et al., 2011 [44]
KHDRBS2rs6455128ProtectiveAD-associated with CRYL1Gusareva et al., 2014 [15]

Effect indicates whether the variant was considered be deleterious or protective in the original literature report. Het = heterozygous, AD = Alzheimer's disease.

Effect indicates whether the variant was considered be deleterious or protective in the original literature report. Het = heterozygous, AD = Alzheimer's disease.

Genotypes and quality control

After excluding 11 samples with a call rate < 90%, there were 459 (152 male, 307 female) Super-Seniors and 417 (166 male, 251 female) controls. The haptoglobin (HP) variant genotyped by PCR had a call rate of 93%. SNP call rates all exceeded 95%. LPA SNP rs3798220 had a minor allele frequency (MAF) < 5% in our study population so was excluded from analysis. There were no significant deviations from Hardy-Weinberg Equilibrium in controls when corrected using false discovery rate.

Association tests of individual variants

There was a greater proportion of female Super-Seniors [odds ratio (OR) 1.33, 95% confidence interval (CI) = 1.01-1.76], so sex was included in all models. Genotype frequencies for all variants are shown in Table 2. When the 17 variants were tested for association with healthy aging, under dominant and additive models, only the HP and APOE variants showed significant associations (Table 3 and Table S1).
Table 2

Genotype counts and frequencies in Super-Seniors and controls

Super-SeniorsControls
GeneIDAlleles*MAF in studyMAF in 1000 GenomesGRGh38 genomic locationHomo major alleleHetHomo minor alleleHomo major alleleHetHomo minor allele
ADIPOQrs56354395A>del0.3700.4993:186855076/51822125415919263
APOA1rs670C>T0.1580.18811:11683769730812382831108
APOC3rs595049T>G0.3450.49811:1168287292041965917619150
APOEAPOEε4ε2/ ε3>ε40.12836584429310910
CETPrs5882T>C0.3040.46616:569821802091904419817132
CRYL1rs7989332G>T0.2610.22213:204764362491793022416924
FOXO1rs2701858G>A0.0650.10813:40564252388632371412
FOXO3rs9486902C>T0.1420.1746:108556849341100133059712
FOXO3rs2802292A>C0.3660.4696:1085873151622265516618947
HFErs1800562C>T0.0670.0136:26092913394641367491
HPrs72294371HP2>HP10.4481261999912320263
KHDRBS2rs6455128C>A0.1780.2196:619878413211172127912216
KLrs9536314T>G0.1630.13013:330540013341141128311617
LPArs1853021C>T0.152n/a6:16066426332411993039615
LPArs3798220T>C0.0170.0516:160540105445140402150
LPArs10455872T>C0.0700.0226:160589086403542357564
MTTPrs2866164C>G0.2560.2504:995697862341683022913729
PON1rs662A>G0.2840.4577:953081342281773821215137

*Major allele > minor allele. Minor allele frequency (MAF) was calculated from the entire study population.

Table 3

Odds ratios and 95% confidence intervals for the association between variants in APOE and HP and healthy aging

VariantModelSuper-SeniorsControlsGenotypeOdds ratio (95% CI)p value
HP rs72294371Dominant99631/110.010
3253251/2 or 2/20.63(0.44-0.90)(df=1)
Additive99631/110.056 (df=1)
1992021/20.62 (0.43-0.90)
1261232/20.64 (0.42-0.96)
APOE haplotypeε4 Dominant36588293119Non- ε4 carrierε4 carrier10.59 (0.43-0.81)0.0010 (df=1)
Overall283248ε3/ε310.00017 (df=5)
183ε2/ε25.33 (1.55-18.34)
6442ε2/ε31.32 (0.86-2.02)
7794ε3/ε40.71 (0.50-1.01)
715ε2/ε40.40 (0.16-1.00)
410ε4/ε40.35 (0.11-1.12)
*Major allele > minor allele. Minor allele frequency (MAF) was calculated from the entire study population. Super-Seniors were less likely than controls to carry the known disease risk alleles HP2 or APOEε4. Carriers of the HP2 allele had decreased odds of being a Super-Senior, OR 0.63 (95% CI = 0.44-0.90, p = 0.010), as did APOEε4 allele carriers, OR 0.59 (95% CI = 0.43-0.81, p = 0.0010). The significance of the association with HP did not hold under application of the false discovery rate (FDR) (threshold = 0.05 for 17 comparisons), but APOE remained significant after FDR, p = 0.017. Using an additive model, HP genotype was associated with healthy longevity with a per allele OR of 0.83 (95% CI = 0.68-1.00, p = 0.056). Compared to HP1 homozygotes, heterozygotes had an OR of 0.62 (95% CI = 0.43-0.90) and HP2 homozygotes had an OR of 0.64 (95% CI = 0.42-0.96). Super-Senior status also differed significantly by APOE haplotype using an overall model with a per allele OR of 0.76 (95% CI = 0.67-0.87, p = 0.00017). Compared to APOEε3/3, APOEε2/2 was associated with increased odds for healthy aging, OR = 5.33 (95% CI = 1.55-18.34), and APOEε3/4 and APOEε2/4 did not reach significance against healthy aging with odds ratios of 0.71 (95% CI = 0.50-1.01) and 0.40 (95% CI = 0.16-1.00), respectively.

Gene-gene interaction analysis

Among 7 previously reported gene-gene interactions, using an additive-additive model we did not observed any significant interactions (Table S2). The interaction term between rs6455128 in KHDRBS2 (KH domain containing, RNA binding, signal transduction associated 2) and rs7989332 in CRYL1 (crystallin lambda 1), however, was p = 0.077. Because the original rs6455128/rs7989332 interaction was found in a genome-wide association interaction analysis for AD, we adjusted for APOEε4 carrier status and found that the p-value for the interaction decreased slightly (p = 0.061). Odds ratios for individual genotypes are shown in Table S3. Per genotype, it appears that there may be an interaction between CRYL1 GG and KHDRBS2 AC/AA. Since most variants did not have a known interaction partner, we then tested for interactions between all combinations of the nine protective and eight deleterious variants (72 interaction tests) using an additive-additive model. Sex was included in all models. Three additional variant pairs showed evidence of interactions. APOE haplotype and rs9486902 in FOXO3 (forkhead box O3) had a significant interaction (p = 0.035), as did rs10455872 in LPA (lipoprotein(a)) and rs7989332 CRYL1 (p = 0.041). APOE haplotype also showed evidence of an interaction with rs7989332 CRYL1 (p = 0.049). No interactions withstood FDR correction. Odds ratios for individual genotypes in interacting pairs are shown in Tables S4-S6; due to low frequencies only APOE4 carrier vs. non-carrier status, CRYL1/LPA and CRYL1/KHDRBS2 dominant models are presented. There is some evidence that the APOE4 allele interacts with the rs9486902 FOXO3 CC genotype, as well as the rs7989332 CRYL1 GG and GT genotypes. There were also two pairs of SNPs with possible interactions. Rs1853021 in LPA and rs2802292 in FOXO3 (p = 0.052) and rs1800562 in HFE (hemochromatosis) and rs56354395 in ADIPOQ (adiponectin, C1Q and collagen domain containing) (p = 0.059).

Network analysis

Network analysis was done using QIAGEN's Ingenuity® Pathway Analysis (IPA®, QIAGEN Redwood City,www.qiagen.com/ingenuity) to characterize the types of genes identified during the literature search. Using the 15 genes from the literature search produced a network that connected 13 of the 15 query genes. The “grow” feature of IPA® was used to expand the network to include additional molecules (Figure 1). When growing the network, priority is given to molecules that have the most overlap with the parts of the existing network that are the least connected. Of note, KHDRBS2 and CRYL1 did not have a known network connection with each other; however, CRYL1 was connected to APOE by one node. APOE was also connected by one node to FOXO3, which was connected by one node to LPA. HFE and ADIPOQ were connected by a single edge.
Figure 1

A network including 15 candidate epistatic longevity genes

The diagram was created using QIAGEN's Ingenuity® Pathway Analysis software.

A network including 15 candidate epistatic longevity genes

The diagram was created using QIAGEN's Ingenuity® Pathway Analysis software. The top functional and disease category represented in this network was metabolic disease, followed by hematological disease, lipid metabolism, and molecular transport. Multiple pathways are related to the genes in this network; the top 20 functions and diseases of those pathways are listed in Table 4; all of the top terms relate to lipids or cholesterol.
Table 4

The top 20 functions and diseases represented in a candidate gene network in IPA®

RankDiseases and Functions
1Disorder of lipid metabolism
2Dyslipidemia
3Concentration of sterol
4Quantity of steroid
5Concentration of triacylglycerol
6Concentration of lipid
7Atherosclerosis
8Metabolism of triacylglycerol
9Concentration of cholesterol
10Hyperlipoproteinemia
11Hyertriglyceridemia
12Area of atherosclerotic lesion
13Accumulation of lipid
14Size of atherosclerotic lesion
15Efflux of cholesterol
16Homeostasis of lipid
17Concentration of cholesterol ester
18Hyperlipidemia
19Dementia
20Transport of lipid

DISCUSSION

APOE has three major alleles: ε2 has been associated with decreased mortality [10, 11], ε3 can be considered neutral, and ε4 is associated with increased risk of AD and mortality [3]. Super-Seniors were less likely to carry an APOEε4 allele, a finding that we previously published [12]. The APOE ε2/2 diplotype was protective. A larger sample size would be needed to more confidently determine the effects of other diplotypes. The HP2 allele contains a duplication of exons 3 and 4 of the haptoglobin gene [13], making the HP1 and HP2 alleles functionally different. Although the inverse association of HP2 carrier status with healthy aging was not significant after FDR correction, it is consistent with the idea that the HP1/1 genotype is associated with longevity [14]. Several gene-gene interaction tests gave results that approached but did not achieve statistical significance. While we cannot reject the null hypothesis of no interaction in these cases, they represent candidate pairs with potentially intriguing biological roles that would be worth testing in other studies. One such pair is rs6455128 in KHDRBS2 and rs7989332 in CRYL1, previously associated with AD [15]. Gusareva et al. hypothesized that the CRYL1 encoded crystallin protein may act as a stress-protective heat-shock protein that could have a functional interaction with KHDRBS2, which also has a potential role in response to stress [15]. Gusareva et al. postulated that this interaction may occur within the TOR pathway [16], which influences β-amyloid plaques (Aβ) and AD-like deficits in a mouse model [17] and life span in model organisms [18, 19]. Some interactions between all combinations of variants were significant prior to multiple testing correction and may therefore be candidates for future replication analyses. APOE haplotype and rs9486902 in FOXO3 showed an interaction effect. Per genotype, there may be an interaction between the APOE4 allele and the FOXO3 CC genotype; FOXO3 CC could be a buffering genotype for the deleterious APOE4. Pathway analysis in IPA® showed that one mechanism of interaction could be through amyloid beta precursor protein, APP. FOXO3 is part of the insulin/insulin-like growth factor 1 signal pathway and has been associated with longevity [20], and FoxO proteins have been implicated in AD [21]. APOE haplotype and LPA rs10455872 had significant interaction effects with rs7989332 in CRYL1. The interaction between APOE and CRYL1 may originate from an interaction between the APOE4 allele and the CRYL1 GG and GT genotypes. Interestingly, the CRYL1 GG genotype also showed evidence of an interaction with the KHDRBS2 AC/AA genotypes. Another example is rs1853021 in LPA, which showed p = 0.052 for interaction with rs2802292 in FOXO3. Rs1853021 has been associated with elevated Lp(a) lipoprotein level, which is a risk factor for coronary disease, carotid atherosclerosis, and stroke [22]. Rs2802292 has been associated with longevity [20] and all-cause mortality [23]. Rs1800562 in HFE and rs56354395 in ADIPOQ (p = 0.059) were connected by a single edge in IPA®. The minor allele in HFE rs1800562 has been associated with risk of death, but has been seen to increase in frequency at older ages [24]. Increased serum adiponectin levels have been associated with longevity [25, 26]. Two variants in ADIPOQ, including rs56354395, have been associated with increased adiponectin levels and the del/del genotype had a higher prevalence in long-lived men [27]. When looking at the overall network, metabolic disease, hematological disease, lipid metabolism, and molecular transport were the most represented functional and disease categories. Despite the fact that many of the individual genes did not show significant differences in our population, it is interesting that lipid and cholesterol functions were significantly over-represented in the network. As well, a review of GWAS-identified risk genes for AD found that the associated genes clustered into three pathways: cholesterol and lipid metabolism, immune system and inflammatory response, and endosome vesicle cycling [28]. The idea that longevity is associated with a favourable lipid profile is not new. It has been found that individuals with exceptional longevity and their offspring have HDL and LDL particle sizes that are significantly larger than controls [29], that offspring of centenarians have favourable lipid profiles compared to their spouse controls [8], and that favourable HDL phenotypes and genotypes may contribute to a lower incidence of age-related diseases such as CVD and decreased mortality [30]. These results are all consistent with lipid and cholesterol maintenance being a key mediator in healthy aging and longevity. Many of the candidate genes in our study were chosen in the literature reports by the original investigators due to their potential function in longevity. As a result, the selection of genes is biased; however, it is still valuable to examine themes, especially among the genes that were also significant in our study population, which represents long-term good health more than extreme longevity. CVD and AD are age-related chronic diseases that decrease quality of life and increase risk of mortality. APOEε4 confers a dose dependent increased risk for developing AD [3], and it was found in a meta-analysis that while the global frequency of the ε4 allele is 13.7%, the allele frequency in AD patients is 36.7% [31]. APOEε4 is also associated with hyperlipidemia and hypercholesterolemia, and causes neuroinflammation resulting in neurovascular dysfunction [32]. The two main neuropathological features seen in the brains of patients with AD are Aβ and neurofibrillary tangles [3]. ApoE is thought to help to remove Aβ from the brain by transporting it across the blood brain barrier; however, ApoE4 lipoproteins have a decreased binding affinity for Aβ compared to ApoE3 lipoproteins and may therefore be less efficient. ApoE also mediates delivery of cholesterol to neurons in the CNS, which is less efficient by ApoE4 than ApoE3 [32]. The CNS contains about 25% of total body cholesterol, which plays a key role in synaptic plasticity [33]. With age, there are system-wide changes in cholesterol metabolism, and this altered metabolism in the brain may relate to AD development [33]. There is also a decreased amount of cholesterol in the hippocampus and cortical areas in AD patients compared to age-matched controls [32]. Cardiovascular and neurovascular health share common risk factors including diabetes mellitus and hypertension [34]. Cognitively normal individuals with controlled hypertension have less Aβ accumulation than those with unmedicated hypertension. As well, the combination of carrying an APOEε4 allele and having unmedicated hypertension increased the risk for Aβ accumulation [34]. Hp is an extracellular chaperone that acts as an antioxidant and anti-inflammatory by binding free hemoglobin, which it then transports to the liver [35]. Hp is produced in the brain in response to stress stimuli; it is increased in the cerebral spinal fluid of patients with AD and other neurodegenerative disorders [36]. Patients with AD consistently show signs of inflammation in their brains and oxidative stress is strongly implicated in AD etiology [35]. Hp has been found to be more oxidized in AD patients, and in vitro, oxidized Hp is less able to perform its chaperone function and inhibit Aβ aggregates [36, 37]. Aβ also competes with hemoglobin for binding to Hp, thus impairing its antioxidant function [36]. There is strong support that Aβ is central in AD pathogenesis and it is thought to trigger oxidative stress-mediated damage that leads to neuronal death [37]. HP1 and HP2 alleles form structurally different proteins that differ in hemoglobin binding and antioxidant capacity, and may be related to autoimmune and inflammatory disorders [38]. Despite the association of HP1/1 with longevity, there are conflicting results from studies looking at HP in relation to coronary heart disease (CHD) [39-41]. Our findings provide further evidence that APOE and genes in associated pathways are key players in healthy aging. This is consistent with a recent informed GWAS that utilized knowledge about age-related diseases to identify new extreme longevity loci that overlap with those associated with coronary artery disease and AD [42]. As well, in a whole genome sequencing study in a healthy aging cohort aged over 80 years, the Topol and Torkamani group found that healthy aging is associated with reduced genetic susceptibility to AD and coronary artery disease, but not cancer or diabetes [43]. In addition to APOE being the most replicable signal in GWAS of longevity, the search for more complex longevity haplotypes and interactions points towards mechanisms related to APOE, AD, and lipids. Our results highlight pathways related to AD and reinforce the importance of lipids and cholesterol in healthy aging and longevity. Due to the exploratory nature of finding epistatic effects, it is unsurprising that the observed effects do not remain significant after multiple testing correction. However, these results are noteworthy as they represent additional candidates for buffering pairs that may be tested in other studies. The study of epistatic interactions, particularly buffering/ buffered pairs, is important as the identification of such pairs may help identify therapeutic drug targets for use in aiding individuals who do not carry health-protective longevity variants.

MATERIALS AND METHODS

Subjects

The current analysis included 466 Super-Seniors (female = 312, male = 154; mean = 88.6 years, SD = 3.0, range = 85-108 years), and 421 mid-life controls (female = 253, male = 168; mean = 46.8 years, SD = 3.3, range = 40-54 years) [9, 12]. The Super-Senior group included 140 subjects 90 years and older, 4 of whom were centenarians. Both groups of unrelated individuals were of European ancestry and lived in Metro Vancouver, British Columbia (BC), Canada. Controls were random and population-based, and recruited randomly from BC Medical Services Plan lists. Research ethics board approval was received from the joint Clinical Research Ethics Board of the BC Cancer Agency and the University of British Columbia and Simon Fraser University. All subjects gave written informed consent.

Literature search

A literature search for protective buffering and deleterious buffered variants, as well as other epistatic effects associated with longevity was performed in PubMed. PubMed was chosen because of its biomedical and clinical focus. Search terms included combinations of: buffering, epistasis, aging, longevity, human, and genetics. Only variants found in human studies were considered. Variants located in the same gene were verified not to be in linkage disequilibrium at a threshold of r2 > 0.8.

Genotyping

Sixteen SNPs were genotyped using Sequenom (San Diego, USA) iPLEX Gold technology at the McGill University and Genome Quebec Innovation Center. Two markers with a call rate below 95% were re-genotyped by the same method. 11 samples with a call rate < 90% across all markers were excluded. Three markers that could not be genotyped by the Sequenom method were either replaced by another marker in linkage disequilibrium (rs2542052 in LPA) or genotyped by TaqMan® (rs56354395 in ADIPOQ) or PCR (rs72294371 in HP). Custom TaqMan® probes were designed using the Thermo Fisher Scientific (Waltham, USA) online tool (www.thermofisher.com). A 1724 bp insertion in HP was genotyped by PCR using a two primer design as described by Koch et al. [13]; products were sized on an agarose gel. The first primer set: 5′-AGCCCACCCCTCCACCTATGTGCC-3′ and 5′-GCTTAAGATCCCAGTCGCATACC-3′ [44], yielded a 3221 or 4945bp product, corresponding to the HP1 allele and HP2 allele, respectively. Because the larger HP2 product was not always clearly visible when the gel was imaged, a second set of primers was used to detect this allele. The second primer set: 5′-CCCAGCCTCTTCTGCTCTTA-3′ and 5′-TGCACATCAATCTCCTTCCA-3′ yielded a 248bp product only when the HP2 allele was present. Analyses were performed in R 3.2.2. Individual variants were tested using logistic regression to estimate odds ratios and 95% confidence intervals for associations between Super-Senior status and variants. Super-Seniors and controls were coded as 1 and 0. Models were adjusted for sex. Dominant and additive models were tested. In the dominant model, the major allele homozygote was coded as 0, and the heterozygote and minor allele homozygote were both coded as 1. Exceptions to this were APOE and HP, which were coded for the presence of carrying the risk-associated APOEε4 allele and HP2 allele, respectively. In the additive model, genotypes were coded as 0, 1, 2. All p values were determined using the likelihood ratio test. The false discovery rate (FRD threshold = 0.05) was used to adjust for multiple comparisons. Gene-gene interactions were tested using an additive-additive model. Logistic regression analysis was conducted as follows: y ∼ variant1 + variant2 + variant1 x variant2 + sex (function = glm, family = binomial, link = logit). Super-Senior/control status was the outcome variable. First, the 7 epistatic pairs from the literature were independently tested to see if they were observed in our population. Then all combinations of putative protective and deleterious variants were compared. FDR was used to adjust for multiple comparisons. Pathway analysis was conducted using QIAGEN Ingenuity® Pathway Analysis (IPA®, QIAGEN Redwood City,www.qiagen.com/ingenuity) to characterize the types of genes identified during the literature search. IPA® uses the curated Ingenuity® Knowledge Base constructed from peer-reviewed journals and biomedical databases to construct networks of connections between genes and molecules. The 15 genes from the literature search were entered into IPA® to produce a network that was then “grown” to include additional related molecules. IPA® was also used to identify functions and diseases that were most significantly represented in the network.
  48 in total

1.  Logistic regression models for polymorphic and antagonistic pleiotropic gene action on human aging and longevity.

Authors:  Qihua Tan; L Bathum; L Christiansen; G De Benedictis; J Dahlgaard; N Frizner; W Vach; J W Vaupel; A I Yashin; K Christensen; T A Kruse
Journal:  Ann Hum Genet       Date:  2003-11       Impact factor: 1.670

2.  Rare and common variants in the Apolipoprotein E gene in healthy oldest old.

Authors:  Lauren C Tindale; Stephen Leach; Kevin Ushey; Denise Daley; Angela R Brooks-Wilson
Journal:  Neurobiol Aging       Date:  2013-10-11       Impact factor: 4.673

3.  Longevity and the epsilon2 allele of apolipoprotein E: the Finnish Centenarians Study.

Authors:  G B Frisoni; J Louhija; C Geroldi; M Trabucchi
Journal:  J Gerontol A Biol Sci Med Sci       Date:  2001-02       Impact factor: 6.053

Review 4.  Causative and susceptibility genes for Alzheimer's disease: a review.

Authors:  A Rocchi; S Pellegrini; G Siciliano; L Murri
Journal:  Brain Res Bull       Date:  2003-06-30       Impact factor: 4.077

5.  A novel permutation test for case-only analysis identifies epistatic effects on human longevity in the FOXO gene family.

Authors:  Qihua Tan; Mette Soerensen; Torben A Kruse; Kaare Christensen; Lene Christiansen
Journal:  Aging Cell       Date:  2013-05-15       Impact factor: 9.304

6.  The study of APOA1, APOC3 and APOA4 variability in healthy ageing people reveals another paradox in the oldest old subjects.

Authors:  S Garasto; G Rose; F Derango; M Berardelli; A Corsonello; E Feraco; V Mari; R Maletta; A Bruni; C Franceschi; L Carotenuto; G De Benedictis
Journal:  Ann Hum Genet       Date:  2003-01       Impact factor: 1.670

7.  Haptoglobin phenotype and prevalent coronary heart disease in the Framingham offspring cohort.

Authors:  Andrew P Levy; Martin G Larson; Diane Corey; Rachel Lotan; Joseph A Vita; Emelia J Benjamin
Journal:  Atherosclerosis       Date:  2004-02       Impact factor: 5.162

8.  Regulation of lifespan in Drosophila by modulation of genes in the TOR signaling pathway.

Authors:  Pankaj Kapahi; Brian M Zid; Tony Harper; Daniel Koslover; Viveca Sapin; Seymour Benzer
Journal:  Curr Biol       Date:  2004-05-25       Impact factor: 10.834

9.  Effects of age, sex, and ethnicity on the association between apolipoprotein E genotype and Alzheimer disease. A meta-analysis. APOE and Alzheimer Disease Meta Analysis Consortium.

Authors:  L A Farrer; L A Cupples; J L Haines; B Hyman; W A Kukull; R Mayeux; R H Myers; M A Pericak-Vance; N Risch; C M van Duijn
Journal:  JAMA       Date:  1997 Oct 22-29       Impact factor: 56.272

10.  Genetic variation in healthy oldest-old.

Authors:  Julius Halaschek-Wiener; Mahsa Amirabbasi-Beik; Nasim Monfared; Markus Pieczyk; Christian Sailer; Anita Kollar; Ruth Thomas; Georgios Agalaridis; So Yamada; Lisa Oliveira; Jennifer A Collins; Graydon Meneilly; Marco A Marra; Kenneth M Madden; Nhu D Le; Joseph M Connors; Angela R Brooks-Wilson
Journal:  PLoS One       Date:  2009-08-14       Impact factor: 3.240

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  7 in total

Review 1.  Genetic and epigenetic regulation of human aging and longevity.

Authors:  Brian J Morris; Bradley J Willcox; Timothy A Donlon
Journal:  Biochim Biophys Acta Mol Basis Dis       Date:  2018-09-01       Impact factor: 5.187

2.  Downregulation of Crystallin Lambda 1 is a New Independent Prognostic Marker in Clear Cell Renal Cell Carcinoma.

Authors:  Lingsong Feng; Guodong Ding; Yang Zhou; Haiyuan Zhu; Huiming Jiang
Journal:  Pharmgenomics Pers Med       Date:  2022-10-10

3.  Circulating insulin-like growth factors and Alzheimer disease: A mendelian randomization study.

Authors:  Dylan M Williams; Ida K Karlsson; Nancy L Pedersen; Sara Hägg
Journal:  Neurology       Date:  2017-12-27       Impact factor: 9.910

Review 4.  Lipid (per) oxidation in mitochondria: an emerging target in the ageing process?

Authors:  O S Ademowo; H K I Dias; D G A Burton; H R Griffiths
Journal:  Biogerontology       Date:  2017-05-24       Impact factor: 4.277

5.  10-year follow-up of the Super-Seniors Study: compression of morbidity and genetic factors.

Authors:  Lauren C Tindale; Diane Salema; Angela R Brooks-Wilson
Journal:  BMC Geriatr       Date:  2019-02-28       Impact factor: 3.921

Review 6.  The role of lipid metabolism in aging, lifespan regulation, and age-related disease.

Authors:  Adiv A Johnson; Alexandra Stolzing
Journal:  Aging Cell       Date:  2019-09-27       Impact factor: 9.304

Review 7.  Paraoxonases Activities and Polymorphisms in Elderly and Old-Age Diseases: An Overview.

Authors:  Débora Levy; Cadiele Oliana Reichert; Sérgio Paulo Bydlowski
Journal:  Antioxidants (Basel)       Date:  2019-05-02
  7 in total

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