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Pooled-DNA sequencing identifies novel causative variants in PSEN1, GRN and MAPT in a clinical early-onset and familial Alzheimer's disease Ibero-American cohort

Abstract

Introduction

Some familial Alzheimer's disease (AD) cases are caused by rare and highly-penetrant mutations in APP, PSEN1, and PSEN2. Mutations in GRN and MAPT, two genes associated with frontotemporal dementia (FTD), have been found in clinically diagnosed AD cases. Due to the dramatic developments in next-generation sequencing (NGS), high-throughput sequencing of targeted genomic regions of the human genome in many individuals in a single run is now cheap and feasible. Recent findings favor the rare variant-common disease hypothesis by which the combination effects of rare variants could explain a large proportion of the heritability. We utilized NGS to identify rare and pathogenic variants in APP, PSEN1, PSEN2, GRN, and MAPT in an Ibero-American cohort.

Methods

We performed pooled-DNA sequencing of each exon and flanking sequences in APP, PSEN1, PSEN2, MAPT and GRN in 167 clinical and 5 autopsy-confirmed AD cases (15 familial early-onset, 136 sporadic early-onset and 16 familial late-onset) from Spain and Uruguay using NGS. Follow-up genotyping was used to validate variants. After genotyping additional controls, we performed segregation and functional analyses to determine the pathogenicity of validated variants.

Results

We identified a novel G to T transition (g.38816G>T) in exon 6 of PSEN1 in a sporadic early-onset AD case, resulting in a previously described pathogenic p.L173F mutation. A pathogenic p.L392V mutation in exon 11 was found in one familial early-onset AD case. We also identified a novel CC insertion (g.10974_10975insCC) in exon 8 of GRN, which introduced a premature stop codon, resulting in nonsense-mediated mRNA decay. This GRN mutation was associated with lower GRN plasma levels, as previously reported for other GRN pathogenic mutations. We found two variants in MAPT (p.A152T, p.S318L) present only in three AD cases but not controls, suggesting that these variants could be risk factors for the disease.

Conclusions

We found pathogenic mutations in PSEN1, GRN and MAPT in 2.33% of the screened cases. This study suggests that pathogenic mutations or risk variants in MAPT and in GRN are as frequent in clinical AD cases as mutations in APP, PSEN1 and PSEN2, highlighting that pleiotropy of MAPT or GRN mutations can influence both FTD and AD phenotypic traits.

Introduction

Alzheimer's disease (AD) is the most common form of dementia, affecting more than 13% of individuals age 65 years or older and 30% to 50% of individuals age 80 or older [1, 2]. The number of affected individuals is estimated to double by 2025; thus, AD is rapidly becoming a serious threat to health care in developed countries [2]. Since the number of patients and health-care costs are projected to increase significantly, effective therapies are urgently needed. Understanding how genetic risk factors affect the disease process will help to identify novel targets for therapies, to elucidate the nature of aging, and to extend the healthy active life span.

AD is often classified on the basis of the age at onset (AAO); early-onset AD (EOAD) is defined as AAO of not more than 65 years, and late-onset AD (LOAD) is defined as AAO of more than 65 years. Even though 99% of AD cases are late-onset, studies of rare autosomal dominant familial EOAD have provided valuable insights into the pathogenesis of AD. Mutations in amyloid-β precursor protein (APP), presenilin 1 (PSEN1), and presenilin 2 (PSEN2) were initially discovered in familial EOAD, although additional studies have also identified pathogenic mutations in these genes in late-onset families in addition to the APOE4 allele [3–9]. Progranulin (GRN) and microtubule-associated protein tau (MAPT) mutations are associated with familial frontotemporal dementia, but recently some have also been found in clinically diagnosed AD cases [10, 11], and a recent study suggested that mutations in MAPT and GRN can be found in clinical AD with a frequency comparable to that of mutations in APP, PSEN1, and PSEN2 [7].

In this study, we aimed to examine the frequency of causative mutations in autosomal dominant dementia genes in independent clinical series from Spain and Uruguay. We performed pooled-DNA sequencing in 172 AD cases in APP, PSEN1, PSEN2, GRN, and MAPT in order to identify known pathogenic mutations and potentially functional novel variants associated with disease risk. For those validated variants, follow-up genotyping was conducted in additional AD cases and non-demented older controls with Spanish ancestry to infer and compare mutation frequencies. We also genotyped available relatives of the mutation carriers to determine whether these mutations segregate with the diagnosis of AD (Figure 1). Finally, enzyme-linked immunosorbent assay (ELISA) was performed to test the association between the status of the novel GRN mutation and GRN plasma levels.

Figure 1
figure 1

Schematic of the study design. Pooled-DNA sequencing was performed in a single DNA pool of 172 individuals to identify known pathogenic or novel functional variants by using Illumina HiSeq 2000. The SPLINTER software was used to call the variants. High-confident variants were selected for Sequenom genotyping. For those validated functional variants, follow-up genotyping was performed in large case-control series to infer and compare the frequencies. Segregation analysis was then performed to determine whether disease status segregates with risk alleles. Enzyme-linked immunosorbent assays (ELISAs) were used to evaluate the impact of novel GRN splice-site mutation on the changes of GRN plasma levels. GRN, progranulin; SPLINTER, short indel prediction by large deviation inference and nonlinear true frequency estimation by recursion.

Materials and methods

Sample selection

DNA was collected from subjects of Spanish descent who were recruited between 2000 and 2010 from the departments of neurology of the collaborating centers from Spain (n = 161) and Uruguay (n = 11). Samples were selected from individuals with neuropathologically confirmed AD or from individuals with the earliest AAO along with a diagnosis of probable AD within a family. The cohort included 15 (8.98%) familial EOAD, 136 (81.44%) sporadic EOAD, and 16 (9.58%) familial LOAD cases and five others who were autopsy-confirmed AD cases (Table 1). Diagnosis of probable AD was made in accordance with standard clinical research criteria [12]. All individuals gave their written informed consent for participating in the study, which was approved by the institutional review board of Washington University in St. Louis.

Table 1 Demographic characteristics of the cohort of 172 sequenced samples

Pooled sequencing

Pooled-DNA sequencing was performed as previously described [7, 13]. The concentration of genomic DNA was quantified by Quant-iTâ„¢ PicoGreen (Invitrogen Corporation, Carlsbad, CA, USA) reagent, and normalized amounts of individual DNA samples were pooled. A single DNA pool with 172 individuals was used as a template for polymerase chain reaction (PCR) amplification of coding regions of genes APP, PSEN1, PSEN2, MAPT, and GRN. PRIMER3 software was used to design the primers for amplification of each exon. To ensure complete coverage of each exon, primers were at least 50 base pairs (bp) from the intron-exon boundary. Pfu (Agilent Technologies, Santa Clara, CA, USA) enzyme was used for all PCRs to reduce the likelihood of PCR-induced sequence variants. After PCR amplification of selected genomic regions, each PCR product was purified by using QIAquick PCR (Qiagen Inc., Valencia, CA, USA) purification kits and quantified by using Quant-iTâ„¢ PicoGreen reagent. The PCR products were combined into one pool in equimolar amounts and ligated by using T4 ligase and T4 Polynucleotide Kinase [14]. At this stage, negative control and positive control amplicons were also added to the pool to generate the error model and to construct the optimal significant cutoff, respectively. Ligated concatemers were randomly fragmented by sonication and prepared for Illumina sequencing on an Illumina HiSeq2000 (Illumina, Inc., San Diego, CA, USA) in accordance with the protocol of the manufacturer. The fold coverage necessary to achieve the optimal positive predictive value for the SNP-calling algorithm was calculated, and a sequencing coverage of 30X per haploid genome was targeted in this study, consistent with the previous finding [14]. Two lanes of Illumina HiSeq2000 sequencing were run to obtain a minimum of 30-fold coverage per allele.

Sequencing analysis

Sequencing reads (42-bp reads) were mapped back to the reference sequence (GRCh37/hg19) allowing up to three mismatches by using an alignment algorithm developed by Vallania and colleagues [14]. To determine the sensitivity and specificity of this method, positive and negative control vectors were included as PCR products in the pooled-DNA sequencing protocol described above. The negative control reads were used to build up the error model used in the variant calling step, whereas the positive control reads were used to calculate the significant cutoff for optimizing specificity and sensitivity of the analysis. The SPLINTER (short indel prediction by large deviation inference and nonlinear true frequency estimation by recursion) program was used to predict and quantify short insertions, deletions, and substitutions present in the pool. The segregated variants were called by comparing the observed frequency vector to the expected frequency vector calculated by the error model. The maximum likelihood method was used to estimate variant frequencies in the pool samples. SIFT2 was used to predict the effect of variants on protein structure and function, and the Alzheimer Disease & Frontotemporal Dementia (AD&FTD) mutation database [15] was used to annotate the known pathogenic variants. The Exome Variant Server (EVS) [16], SeattleSeq Annotation [17], and 1000 Genomes Project were finally used to exclude known variants. Novel and potentially functional variants were selected for direct genotyping by using Sequenom iPLEX (Sequenom, San Diego, CA, USA).

Genotyping and segregation analysis

All rare (minor allele frequency of less than 5%) missense, splice-site, and previously identified pathogenic variants called in the pooled-DNA sequencing were genotyped by using Sequenom iPLEX in accordance with standard protocols. We genotyped validated variants in all available family members to determine whether these variants segregate with disease status. Common and synonymous variants were not followed up.

GRN plasma level measurement

GRN plasma levels were measured in duplicate by using an ELISA kit (Human Progranulin ELISA Kit; AdipoGen Inc., Seoul, Korea).

Results

To identify known pathogenic mutations and novel rare variants, pooled-DNA sequencing was performed for the coding exons and their corresponding flanking regions for APP, PSEN1, PSEN2, MAPT, and GRN in a total of 15 (8.98%) familial EOAD, 136 (81.44%) sporadic EOAD, 16 (9.58%) familial LOAD, and five autopsy-confirmed AD cases (Table 1). For familial cases, a single index case per family was sequenced. Seventy exons covering 45.3 kb of the target region of APP, PSEN1, PSEN2, GRN, and MAPT were PCR-amplified by using specific primers and then pooled in equimolar amounts. The pooled amplicons were concatenated and sheared to construct libraries and then sequenced on Illumina HiSeq2000 by using two lanes.

We used the SPLINTER software to perform alignment and call rare variants in the pooled samples [14]. Sequencing reads were mapped back to the reference genome (GRCh37/hg19) by gapped alignments allowing up to 3-bp mismatches by using the SPLINTER aligner. The Illumina sequencing produced 181,854,451 reads in two lanes, and the aligner was able to map 155,431,194 reads (85.5%) back to the reference, resulting in an average 149.8-fold coverage per amplicon (corresponding to 143.5-fold coverage per allele).

Since our goal was to identify novel or functional rare variants, 12 missense, splice-site, or previously confirmed pathogenic variants were selected for direct genotyping by using Sequenom iPLEX (Table 2). These 12 variants were found in 34 out of 172 (19.77%) AD cases and 12 out of 139 (8.63%) non-demented older controls of Spanish descent (Table 2).

Table 2 Frequencies of validated variants in the pooled sequencing and follow-up case control series of Spanish descent

Four missense mutations (p.M139T, p.L173F, p.E318G, and p.L392V) in PSEN1 were validated (Table 2). The p.M139T mutation located in exon 5 of PSEN1 and the p.L392V mutation in exon 11 have been shown to be pathogenic in previous studies [5, 18–24]. The p.M139T carrier, who had a ε3/ε3 genotype, was a sporadic EOAD case with an AAO of 47.5 years, which is close to the mean AAO of disease in three previously reported families (one French family and two independent Spanish families). The p.L392V mutation, which has been identified in five families (one Italian family, one French, one Japanese, and two unknown), was confirmed in a familial EOAD case with the APOE ε3/ε4 genotype and AAO of 42.5, which is similar to the mean AAO in these five families [5, 18, 19, 22–24]. We also found a novel G-to-T transition (g.38816G>T) in exon 6 of PSEN1, resulting in a previously described pathogenic p.L173F missense mutation [25]. The carrier of the p.L173F mutation in our study, who was an APOE ε3/ε3 carrier, had an AAO of 50.5 years, which is close to the mean AAO in the family reported by Kasuga and colleagues [25]. The p.L173F mutation was shown to be associated with presenile dementia and parkinsonism [25]. The p.M139T and p.L173F mutations in PSEN1 were not found in any additional cases or the 459 Spanish controls. The p.E318G mutation was a low-frequency polymorphism observed at equal frequencies in patients and unaffected controls in several previous studies [26–28]. The p.E318G frequency in our study was higher in controls (2.16%, 3 out of 139) than in AD cases (1.14%, 2 out of 176), suggesting that p.E318G might not be a risk factor for clinical AD.

We also found a novel GRN CC insertion, g.10974_10975insCC (Ile256IlefsX27), which was not present in the AD&FTD database, 1000 Genomes Project, SeattleSeq, or EVS (Figure 2). The CC insertion is a frameshift mutation located in exon 8 of GRN, introducing a premature stop codon 27 amino acids after the insertion site (Ile256IlefsX27). Considering other frameshift mutations in GRN [29–33], we predicted that the mutant allele will be degraded by nonsense-mediated decay, resulting in a loss of one functional allele. To confirm that the novel GRN frameshift mutation (Ile256IlefsX27) was related to the diagnosis of AD, we performed segregation analysis, genotyping of additional Spanish controls, and functional analysis. The proband, the carrier of the GRN mutation with the APOE ε3/ε3 genotype, had an AAO of 60.5 years and was diagnosed with probable AD on the basis of international criteria [12]. One of the proband's siblings, who had a diagnosis of probable AD, is also a carrier of the mutation. Two other non-demented siblings of the proband did not carry the variant. The GRN frameshift mutation was absent in 449 older healthy Spanish controls.

Figure 2
figure 2

The transcript of the novel GRN mutation. A splice-site mutation with a CC-insertion (g.10974_10975insCC) in GRN exon 8 results in a premature stop codon and nonsense-mediated decay of the resultant mRNA. GRN, progranulin.

Previous studies have shown that individuals with pathogenic GRN mutations have lower GRN plasma levels [30, 31, 34–38]. Therefore, we tested whether the GRN g.10974_10975insCC mutation was associated with low GRN plasma levels. The GRN plasma levels were measured in 18 individuals, including two non-demented siblings of the proband who did not carry the mutation, 11 carriers of a previously identified GRN mutation (as positive controls), and five family members who were non-carriers for GRN mutations [35, 39, 40]. The GRN g.10974_10975insCC mutation carrier had an average GRN plasma level of 0.125 ng/μL, which is very close to 0.116 ng/μL, the average GRN plasma level of a known GRN mutation carrier (Figure 3). The two siblings of the carrier of the GRN g.10974_10975insCC mutation had an average GRN plasma level of 0.463 ng/μL, which is close to the mean GRN plasma level for the five family members who were non-carriers of the GRN mutation (0.504 ng/μL). Together, these results confirm that the GRN g.10974_10975insCC mutation is pathogenic.

Figure 3
figure 3

Enzyme-linked immunosorbent assays comparing GRN plasma levels between GRN mutation carriers and controls. Measurement of GRN plasma levels for a known GRN mutation (left) and the novel GRN mutation (right), Ile256IlefsX27, observed in our study compared with Alzheimer's disease cases and non-demented older controls. GRN, progranulin; mut, mutant; wt, wild-type.

Seven missense variants in MAPT were further validated in our study: five in exon 4A (p.S318L, p.G213R, p.V224G, p.Q230R, and p.A297V), one in exon 7 (p.A152T), and one in exon 10 (p.V287I). The frequency of each variant in cases and controls is listed in Table 2. p.G213R, p.V224G, p.Q230R, and p.S318L reside in exon 4A of MAPT and are present in SeattleSeq, EVS, or 1000 Genomes Project, suggesting that they do not affect risk for AD. The p.A297V mutation also located in exon 4A was not found in any annotation tool, and thus the functional role of p.A297V remains unclear. The p.A152T variant located in exon 7 was suggested in a recent study to be a risk factor for FTD-spectrum and AD in a total of 15,369 subjects [41]. Another recent study shows that the p.A152T mutation increases risk for developing neurodegenerative diseases by influencing tau accumulation [42]. We found two p.A152T carriers among the cases (one with ε3/ε3 and one with ε4/ε4 genotype) and none in the controls. Segregation analysis showed that the healthy 69-year-old sibling of the AD proband did not carry the p.A152T mutation. No family history for the other MAPT p.A152T carrier was reported, but autopsy was available for this individual. Fresh brain weight was 924 g. A macroscopic examination revealed moderate global cortical atrophy, and serial coronal sections of the left hemisphere showed moderate ventricular dilatation and atrophy of the medial temporal lobe, particularly in its anterior segment. A histological examination based on immunohistochemistry for tau and beta-amyloid revealed a high density of neuritic plaques in associative isocortical areas, a dense distribution of neurofibrillary tangles consistent with Braak stage VI, and moderate amyloid angiopathy. Additionally, immunostaining for alpha-synuclein displayed abundant Lewy bodies and neurites at the amygdaloid complex and enthorrinal cortex and a moderate density of inclusions in the parahippocampal and cyngular cortices and in brainstem nuclei. These findings are consistent with a neuropathological diagnosis of Alzheimer's type changes with a high probability of disease, combined with Lewy type pathology of the limbic predominant subtype [43].

These results suggest that p.A152T contributes to an increased risk associated with clinical AD. The p.S318L variant, located in exon 10 of MAPT, was found in two cases (one with ε3/ε3 and one with ε3/ε4 genotype) and none of 534 ethnicity-matched controls, suggesting that p.S318L might increase the risk for clinical AD. However, studies with a larger sample size are needed to confirm its role in AD risk.

Discussion

Our study has shown that pooled-DNA sequencing can effectively identify known and novel pathogenic variants. So far, around 344 different mutations have been identified in APP, PSEN1, PSEN2, GRN, and MAPT according to the AD&FTD mutation database. In this study, we identified four pathogenic variants (p.M139T, p.L173F, and p.L392V in PSEN1 and g.10974_10975insCC in GRN), two of which were novel (p.L173F in PSEN1 and g.10974_10975insCC in GRN). These four pathogenic variants explain 2.33% of our clinical AD cases. However, the lack of additional familial cases prevents us from performing segregation analysis for other variants (MAPT p.V287I and p.A152T), and therefore their effect on risk for disease is unclear. Additional genetic and functional analyses are required to confirm the effect of these variants on risk for AD.

On the other hand, for the GRN g.10974_10975insCC insertion, we confirmed that this novel mutation segregates with disease status. This rare insertion mutation was not found in 459 older healthy Spanish controls. In addition, our results from functional analyses were concordant with the known biological function of other known pathogenic GRN variants. The GRN frameshift mutation creates a premature stop codon that results in nonsense-mediated decay leading to a decrease in GRN mRNA levels and protein levels in plasma and cerebrospinal fluid [7, 29–33]. We found that the GRN g.10974_10975insCC mutation carriers had extremely low plasma GRN levels, confirming the functional role of this novel mutation.

In MAPT, we found the p.A152T variant in exon 7 in two cases and no controls. Recently, this variant was reported to be a risk factor for FTD and AD [41]. The p.A152T variant was found in 0.69% of AD cases and 0.3% of controls (odds ratio = 2.3, P value = 0.004) [41]. In our segregation analysis, p.A152T was absent in the healthy 69-year-old sibling of the proband, suggesting that p.A152T does segregate with disease in this family. The p.V287I mutation was found in one chromosome out of 10,753 (corresponding to a frequency of 0.0186%) in the EVS database. We found this variant in two cases (1.14%), which is a much higher frequency than that observed in the EVS database, suggesting that this variant could be associated with increased risk for disease. So far, all of the MAPT variants in exon 4A were reported to be non-pathogenic (six out of six) in the AD&FTD database [44–47]. In addition, previous studies have shown that the MAPT exon 4A is not expressed in the adult human cerebral cortex [48, 49]. Although all six of the MAPT variants in exon 4A found in this study (including p.S318L, p.G213R, p.V224G, p.Q230R, and p.A297V) have higher frequencies in cases than in controls, these variants are more likely to be non-pathogenic according to previous findings and records.

Conclusions

In summary, we have identified two novel pathogenic variants: one in PSEN1 gene and the other in GRN. We also conducted functional studies to validate the pathogenicity of the GRN variant. Our findings are consistent with those that were previously reported by our group in a different population [7] and that concluded the following: (a) there are likely more novel pathogenic variants causing an AD phenotype to be discovered in the AD (APP, PSEN1, and PSEN2) and FTD (MAPT and GRN) genes, (b) pathogenic variants located in such 'neurodegeneration' genes could be responsible for both EOAD and LOAD, and (c) mutations in GRN and MAPT, which have been considered traditionally 'FTD genes', can be present in individuals with a clinical presentation indistinguishable from that of typical AD. Pathological information for the individual carriers for the novel GRN insertion and the novel MAPT variants was not available, so the AD diagnosis was based solely on clinical assessment. Given other reports, it is more likely that these individuals are amnestic FTD cases but had a clinical presentation indistinguishable from that of AD [7]. Identification of mutations in MAPT and GRN can help to make a more accurate diagnosis in these individuals. These results highlight the necessity of screening both AD and FTD genes when autopsy confirmation of diagnosis is unavailable in demented individuals.

Abbreviations

AAO:

age at onset

AD:

Alzheimer's disease

AD&FTD:

Alzheimer Disease & Frontotemporal Dementia

APP :

amyloid-β precursor protein

bp:

base pairs

ELISA:

enzyme-linked immunosorbent assay

EOAD:

early-onset Alzheimer's disease

EVS:

Exome Variant Server

FTD:

frontotemporal dementia

GRN :

progranulin

LOAD:

late-onset Alzheimer's disease

MAPT :

microtubule-associated protein tau

NGS:

next-generation sequencing

PCR:

polymerase chain reaction

PSEN1 :

presenilin 1

PSEN2 :

presenilin 2

SPLINTER:

short indel prediction by large deviation inference and nonlinear true frequency estimation by recursion.

References

  1. Hebert LE, Scherr PA, Bienias JL, Bennett DA, Evans DA: Alzheimer disease in the US population: prevalence estimates using the 2000 census. Arch Neurol. 2003, 60: 1119-1122. 10.1001/archneur.60.8.1119.

    Article  PubMed  Google Scholar 

  2. 2009 Alzheimer's disease facts and figures. Alzheimers Dement. 2009, 5: 234-270.

    Google Scholar 

  3. Goate A, Chartier-Harlin M-C, Mullan M, Brown J, Crawford F, Fidani L, Giuffra L, Haynes A, Irving N, James L, Mant R, Newton P, Rooke K, Roques P, Talbot C, Pericak-Vance M, Roses A, Williamson R, Rossor M, Owen M, Hardy J: Segregation of a missense mutation in the amyloid precursor protein gene with familial Alzheimer's disease. Nature. 1991, 349: 704-706. 10.1038/349704a0.

    Article  CAS  PubMed  Google Scholar 

  4. Sherrington R, Rogaev EI, Liang Y, Rogaeva EA, Levesque G, Ikeda M, Chi H, Lin C, Li G, Holman K, Tsuda T, Mar L, Foncin JF, Bruni AC, Montesi MP, Sorbi S, Rainero I, Pinessi L, Nee L, Chumakov I, Pollen D, Brookes A, Sanseau P, Polinsky RJ, Wasco W, Da Silva HA, Haines JL, Perkicak-Vance MA, Tanzi RE, Roses AD, et al: Cloning of a gene bearing missense mutations in early-onset familial Alzheimer's disease. Nature. 1995, 375: 754-760. 10.1038/375754a0.

    Article  CAS  PubMed  Google Scholar 

  5. Rogaev EI, Sherrington R, Rogaeva EA, Levesque G, Ikeda M, Liang Y, Chi H, Lin C, Holman K, Tsuda T, Mar L, Sorbi S, Nacmias B, Piacentini S, Amaducci L, Chumakov I, Cohen D, Lannfelt L, Fraser PE, Rommens JM, St George-Hyslop PH: Familial Alzheimer's disease in kindreds with missense mutations in a gene on chromosome 1 related to the Alzheimer's disease type 3 gene. Nature. 1995, 376: 775-778. 10.1038/376775a0.

    Article  CAS  PubMed  Google Scholar 

  6. Levy-Lahad E, Wasco W, Poorkaj P, Romano DM, Oshima J, Pettingell WH, Yu CE, Jondro PD, Schmidt SD, Wang K: Candidate gene for the chromosome 1 familial Alzheimer's disease locus. Science. 1995, 269: 973-977. 10.1126/science.7638622.

    Article  CAS  PubMed  Google Scholar 

  7. Cruchaga C, Chakraverty S, Mayo K, Vallania FL, Mitra RD, Faber K, Williamson J, Bird T, Diaz-Arrastia R, Foroud TM, Boeve BF, Graff-Radford NR, St Jean P, Lawson M, Ehm MG, Mayeux R, Goate AM: Rare variants in APP, PSEN1 and PSEN2 increase risk for AD in late-onset Alzheimer's disease families. PLoS One. 2012, 7: e31039-10.1371/journal.pone.0031039.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  8. Samaranch L, Cervantes S, Barabash A, Alonso A, Cabranes JA, Lamet I, Ancin I, Lorenzo E, Martinez-Lage P, Marcos A, Clarimon J, Alcolea D, Lleo A, Blesa R, Gomez-Isla T, Pastor P: The effect of MAPT H1 and APOE epsilon4 on transition from mild cognitive impairment to dementia. J Alzheimers Dis. 2010, 22: 1065-1071.

    CAS  PubMed  Google Scholar 

  9. Cervantes S, Samaranch L, Vidal-Taboada JM, Lamet I, Bullido MJ, Frank-Garcia A, Coria F, Lleo A, Clarimon J, Lorenzo E, Alonso E, Sanchez-Juan P, Rodriguez-Rodriguez E, Combarros O, Rosich M, Vilella E, Pastor P: Genetic variation in APOE cluster region and Alzheimer's disease risk. Neurobiol Aging. 2011, 32: 2107-e7 - 17.

    Article  PubMed  Google Scholar 

  10. Van Deerlin VM, Wood EM, Moore P, Yuan W, Forman MS, Clark CM, Neumann M, Kwong LK, Trojanowski JQ, Lee VM, Grossman M: Clinical, genetic, and pathologic characteristics of patients with frontotemporal dementia and progranulin mutations. Arch Neurol. 2007, 64: 1148-1153. 10.1001/archneur.64.8.1148.

    Article  PubMed  Google Scholar 

  11. Huey ED, Grafman J, Wassermann EM, Pietrini P, Tierney MC, Ghetti B, Spina S, Baker M, Hutton M, Elder JW, Berger SL, Heflin KA, Hardy J, Momeni P: Characteristics of frontotemporal dementia patients with a Progranulin mutation. Ann Neurol. 2006, 60: 374-380. 10.1002/ana.20969.

    Article  PubMed Central  PubMed  Google Scholar 

  12. McKhann G, Drachman D, Folstein M, Katzman R, Price D, Stadlan EM: Clinical diagnosis of Alzheimer's disease: report of the NINCDS-ADRDA Work Group under the auspices of Department of Health and Human Services Task Force on Alzheimer's Disease. Neurology. 1984, 34: 939-944. 10.1212/WNL.34.7.939.

    Article  CAS  PubMed  Google Scholar 

  13. Haller G, Druley T, Vallania FL, Mitra RD, Li P, Akk G, Steinbach JH, Breslau N, Johnson E, Hatsukami D, Stitzel J, Bierut LJ, Goate AM: Rare missense variants in CHRNB4 are associated with reduced risk of nicotine dependence. Hum Mol Genet. 2012, 21: 647-655. 10.1093/hmg/ddr498.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  14. Vallania FL, Druley TE, Ramos E, Wang J, Borecki I, Province M, Mitra RD: High-throughput discovery of rare insertions and deletions in large cohorts. Genome Res. 2010, 20: 1711-1718. 10.1101/gr.109157.110.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  15. Alzheimer Disease & Frontotemporal Dementia Mutation Database. [http://www.molgen.ua.ac.be/Admutations]

  16. Exome Variant Server. [http://evs.gs.washington.edu/EVS]

  17. SeattleSeq Annotation. [http://snp.gs.washington.edu/SeattleSeqAnnotation]

  18. Campion D, Flaman JM, Brice A, Hannequin D, Dubois B, Martin C, Moreau V, Charbonnier F, Didierjean O, Tardieu S, Penet C, Puel M, Pasquier F, Le Doze F, Bellis G, Calenda A, Heilig R, Martinez M, Mallet J, Bellis M, Clerget-Darpoux F, Agid Y, Frebourg T: Mutations of the presenilin I gene in families with early-onset Alzheimer's disease. Hum Mol Genet. 1995, 4: 2373-2377. 10.1093/hmg/4.12.2373.

    Article  CAS  PubMed  Google Scholar 

  19. Campion D, Dumanchin C, Hannequin D, Dubois B, Belliard S, Puel M, Thomas-Anterion C, Michon A, Martin C, Charbonnier F, Raux G, Camuzat A, Penet C, Mesnage V, Martinez M, Clerget-Darpoux F, Brice A, Frebourg T: Early-onset autosomal dominant Alzheimer disease: prevalence, genetic heterogeneity, and mutation spectrum. Am J Hum Genet. 1999, 65: 664-670. 10.1086/302553.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  20. Queralt R, Ezquerra M, Castellvi M, Lleo A, Blesa R, Oliva R: Detection of the presenilin 1 gene mutation (M139T) in early-onset familial Alzheimer disease in Spain. Neurosci Lett. 2001, 299: 239-241. 10.1016/S0304-3940(01)01498-7.

    Article  CAS  PubMed  Google Scholar 

  21. Lleo A, Blesa R, Queralt R, Ezquerra M, Molinuevo JL, Pena-Casanova J, Rojo A, Oliva R: Frequency of mutations in the presenilin and amyloid precursor protein genes in early-onset Alzheimer disease in Spain. Arch Neurol. 2002, 59: 1759-1763. 10.1001/archneur.59.11.1759.

    Article  PubMed  Google Scholar 

  22. Campion D, Brice A, Hannequin D, Tardieu S, Dubois B, Calenda A, Brun E, Penet C, Tayot J, Martinez M, Bellis M, Mallet J, Agid Y, Clerget-Darpoux F: A large pedigree with early-onset Alzheimer's disease: clinical, neuropathologic, and genetic characterization. Neurology. 1995, 45: 80-85. 10.1212/WNL.45.1.80.

    Article  CAS  PubMed  Google Scholar 

  23. Raux G, Guyant-Marechal L, Martin C, Bou J, Penet C, Brice A, Hannequin D, Frebourg T, Campion D: Molecular diagnosis of autosomal dominant early onset Alzheimer's disease: an update. J Med Genet. 2005, 42: 793-795. 10.1136/jmg.2005.033456.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  24. Ikeuchi T, Kaneko H, Miyashita A, Nozaki H, Kasuga K, Tsukie T, Tsuchiya M, Imamura T, Ishizu H, Aoki K, Ishikawa A, Onodera O, Kuwano R, Nishizawa M: Mutational analysis in early-onset familial dementia in the Japanese population. The role of PSEN1 and MAPT R406W mutations. Dement Geriatr Cogn Disord. 2008, 26: 43-49. 10.1159/000141483.

    Article  CAS  PubMed  Google Scholar 

  25. Kasuga K, Ohno T, Ishihara T, Miyashita A, Kuwano R, Onodera O, Nishizawa M, Ikeuchi T: Depression and psychiatric symptoms preceding onset of dementia in a family with early-onset Alzheimer disease with a novel PSEN1 mutation. J Neurol. 2009, 256: 1351-1353. 10.1007/s00415-009-5096-4.

    Article  PubMed  Google Scholar 

  26. Aldudo J, Bullido MJ, Frank A, Valdivieso F: Missense mutation E318G of the presenilin-1 gene appears to be a nonpathogenic polymorphism. Ann Neurol. 1998, 44: 985-986. 10.1002/ana.410440624.

    Article  CAS  PubMed  Google Scholar 

  27. Dermaut B, Cruts M, Slooter AJ, Van Gestel S, De Jonghe C, Vanderstichele H, Vanmechelen E, Breteler MM, Hofman A, van Duijn CM, Van Broeckhoven C: The Glu318Gly substitution in presenilin 1 is not causally related to Alzheimer disease. Am J Hum Genet. 1999, 64: 290-292. 10.1086/302200.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  28. Helisalmi S, Hiltunen M, Mannermaa A, Koivisto AM, Lehtovirta M, Alafuzoff I, Ryynanen M, Soininen H: Is the presenilin-1 E318G missense mutation a risk factor for Alzheimer's disease?. Neurosci Lett. 2000, 278: 65-68. 10.1016/S0304-3940(99)00891-5.

    Article  CAS  PubMed  Google Scholar 

  29. Yu CE, Bird TD, Bekris LM, Montine TJ, Leverenz JB, Steinbart E, Galloway NM, Feldman H, Woltjer R, Miller CA, Wood EM, Grossman M, McCluskey L, Clark CM, Neumann M, Danek A, Galasko DR, Arnold SE, Chen-Plotkin A, Karydas A, Miller BL, Trojanowski JQ, Lee VM, Schellenberg GD, Van Deerlin VM: The spectrum of mutations in progranulin: a collaborative study screening 545 cases of neurodegeneration. Arch Neurol. 2010, 67: 161-170. 10.1001/archneurol.2009.328.

    PubMed Central  PubMed  Google Scholar 

  30. Gass J, Cannon A, Mackenzie IR, Boeve B, Baker M, Adamson J, Crook R, Melquist S, Kuntz K, Petersen R, Josephs K, Pickering-Brown SM, Graff-Radford N, Uitti R, Dickson D, Wszolek Z, Gonzalez J, Beach TG, Bigio E, Johnson N, Weintraub S, Mesulam M, White CL, Woodruff B, Caselli R, Hsiung GY, Feldman H, Knopman D, Hutton M, Rademakers R: Mutations in progranulin are a major cause of ubiquitin-positive frontotemporal lobar degeneration. Hum Mol Genet. 2006, 15: 2988-3001. 10.1093/hmg/ddl241.

    Article  CAS  PubMed  Google Scholar 

  31. Carecchio M, Fenoglio C, De Riz M, Guidi I, Comi C, Cortini F, Venturelli E, Restelli I, Cantoni C, Bresolin N, Monaco F, Scarpini E, Galimberti D: Progranulin plasma levels as potential biomarker for the identification of GRN deletion carriers. A case with atypical onset as clinical amnestic Mild Cognitive Impairment converted to Alzheimer's disease. J Neurol Sci. 2009, 287: 291-293. 10.1016/j.jns.2009.07.011.

    Article  CAS  PubMed  Google Scholar 

  32. Benussi L, Binetti G, Sina E, Gigola L, Bettecken T, Meitinger T, Ghidoni R: A novel deletion in progranulin gene is associated with FTDP-17 and CBS. Neurobiol Aging. 2008, 29: 427-435. 10.1016/j.neurobiolaging.2006.10.028.

    Article  CAS  PubMed  Google Scholar 

  33. Le Ber I, Camuzat A, Hannequin D, Pasquier F, Guedj E, Rovelet-Lecrux A, Hahn-Barma V, van der Zee J, Clot F, Bakchine S, Puel M, Ghanim M, Lacomblez L, Mikol J, Deramecourt V, Lejeune P, de la Sayette V, Belliard S, Vercelletto M, Meyrignac C, Van Broeckhoven C, Lambert JC, Verpillat P, Campion D, Habert MO, Dubois B, Brice A: Phenotype variability in progranulin mutation carriers: a clinical, neuropsychological, imaging and genetic study. Brain. 2008, 131: 732-746. 10.1093/brain/awn012.

    Article  PubMed  Google Scholar 

  34. Behrens MI, Mukherjee O, Tu PH, Liscic RM, Grinberg LT, Carter D, Paulsmeyer K, Taylor-Reinwald L, Gitcho M, Norton JB, Chakraverty S, Goate AM, Morris JC, Cairns NJ: Neuropathologic heterogeneity in HDDD1: a familial frontotemporal lobar degeneration with ubiquitin-positive inclusions and progranulin mutation. Alzheimer Dis Assoc Disord. 2007, 21: 1-7. 10.1097/WAD.0b013e31803083f2.

    Article  PubMed  Google Scholar 

  35. Mukherjee O, Pastor P, Cairns NJ, Chakraverty S, Kauwe JS, Shears S, Behrens MI, Budde J, Hinrichs AL, Norton J, Levitch D, Taylor-Reinwald L, Gitcho M, Tu PH, Tenenholz Grinberg L, Liscic RM, Armendariz J, Morris JC, Goate AM: HDDD2 is a familial frontotemporal lobar degeneration with ubiquitin-positive, tau-negative inclusions caused by a missense mutation in the signal peptide of progranulin. Ann Neurol. 2006, 60: 314-322. 10.1002/ana.20963.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  36. Chiang HH, Rosvall L, Brohede J, Axelman K, Bjork BF, Nennesmo I, Robins T, Graff C: Progranulin mutation causes frontotemporal dementia in the Swedish Karolinska family. Alzheimers Dement. 2008, 4: 414-420. 10.1016/j.jalz.2008.09.001.

    Article  CAS  PubMed  Google Scholar 

  37. Bird TD: Progranulin plasma levels in the diagnosis of frontotemporal dementia. Brain. 2009, 132: 568-569. 10.1093/brain/awp009.

    Article  PubMed Central  PubMed  Google Scholar 

  38. Finch N, Baker M, Crook R, Swanson K, Kuntz K, Surtees R, Bisceglio G, Rovelet-Lecrux A, Boeve B, Petersen RC, Dickson DW, Younkin SG, Deramecourt V, Crook J, Graff-Radford NR, Rademakers R: Plasma progranulin levels predict progranulin mutation status in frontotemporal dementia patients and asymptomatic family members. Brain. 2009, 132: 583-591. 10.1093/brain/awn352.

    Article  PubMed Central  PubMed  Google Scholar 

  39. Cruchaga C, Graff C, Chiang HH, Wang J, Hinrichs AL, Spiegel N, Bertelsen S, Mayo K, Norton JB, Morris JC, Goate A: Association of TMEM106B gene polymorphism with age at onset in granulin mutation carriers and plasma granulin protein levels. Arch Neurol. 2011, 68: 581-586. 10.1001/archneurol.2010.350.

    PubMed Central  PubMed  Google Scholar 

  40. Mukherjee O, Wang J, Gitcho M, Chakraverty S, Taylor-Reinwald L, Shears S, Kauwe JS, Norton J, Levitch D, Bigio EH, Hatanpaa KJ, White CL, Morris JC, Cairns NJ, Goate A: Molecular characterization of novel progranulin (GRN) mutations in frontotemporal dementia. Hum Mutat. 2008, 29: 512-521. 10.1002/humu.20681.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  41. Coppola G, Chinnathambi S, Jiyong Lee J, Dombroski BA, Baker MC, Soto-Ortolaza AI, Lee SE, Klein E, Huang AY, Sears R, Lane JR, Karydas AM, Kenet RO, Biernat J, Wang LS, Cotman CW, Decarli CS, Levey AI, Ringman JM, Mendez MF, Chui HC, Le Ber I, Brice A, Lupton MK, Preza E, Lovestone S, Powell J, Graff-Radford N, Petersen RC, Boeve BF, et al: Evidence for a role of the rare p.A152T variant in MAPT in increasing the risk for FTD-spectrum and Alzheimer's diseases. Hum Mol Genet. 2012, 21: 3500-3512. 10.1093/hmg/dds161.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  42. Kara E, Ling H, Pittman AM, Shaw K, de Silva R, Simone R, Holton JL, Warren JD, Rohrer JD, Xiromerisiou G, Lees A, Hardy J, Houlden H, Revesz T: The MAPT p.A152T variant is a risk factor associated with tauopathies with atypical clinical and neuropathological features. Neurobiol Aging. 2012, 33: 2231.e7-2231.e14. 10.1016/j.neurobiolaging.2012.04.006.

    Article  CAS  Google Scholar 

  43. Hyman BT, Phelps CH, Beach TG, Bigio EH, Cairns NJ, Carrillo MC, Dickson DW, Duyckaerts C, Frosch MP, Masliah E, Mirra SS, Nelson PT, Schneider JA, Thal DR, Thies B, Trojanowski JQ, Vinters HV, Montine TJ: National Institute on Aging-Alzheimer's Association guidelines for the neuropathologic assessment of Alzheimer's disease. Alzheimers Dement. 2012, 8: 1-13. 10.1016/j.jalz.2011.10.007.

    Article  PubMed Central  PubMed  Google Scholar 

  44. Poorkaj P, Bird TD, Wijsman E, Nemens E, Garruto RM, Anderson L, Andreadis A, Wiederholt WC, Raskind M, Schellenberg GD: Tau is a candidate gene for chromosome 17 frontotemporal dementia. Ann Neurol. 1998, 43: 815-825. 10.1002/ana.410430617.

    Article  CAS  PubMed  Google Scholar 

  45. Stanford PM, Brooks WS, Teber ET, Hallupp M, McLean C, Halliday GM, Martins RN, Kwok JB, Schofield PR: Frequency of tau mutations in familial and sporadic frontotemporal dementia and other tauopathies. J Neurol. 2004, 251: 1098-1104.

    Article  CAS  PubMed  Google Scholar 

  46. Rademakers R, Cruts M, van Broeckhoven C: The role of tau (MAPT) in frontotemporal dementia and related tauopathies. Hum Mutat. 2004, 24: 277-295. 10.1002/humu.20086.

    Article  CAS  PubMed  Google Scholar 

  47. Ingelson M, Fabre SF, Lilius L, Andersen C, Viitanen M, Almkvist O, Wahlund LO, Lannfelt L: Increased risk for frontotemporal dementia through interaction between tau polymorphisms and apolipoprotein E epsilon4. Neuroreport. 2001, 12: 905-909. 10.1097/00001756-200104170-00008.

    Article  CAS  PubMed  Google Scholar 

  48. Himmler A: Structure of the bovine tau gene: alternatively spliced transcripts generate a protein family. Mol Cell Biol. 1989, 9: 1389-1396.

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  49. Andreadis A, Brown WM, Kosik KS: Structure and novel exons of the human tau gene. Biochemistry. 1992, 31: 10626-10633. 10.1021/bi00158a027.

    Article  CAS  PubMed  Google Scholar 

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Acknowledgements

The Iberian Parkinson's Disease Genetics Study Group Researchers: Jordi Gascon, Jaume Campdelacreu, and Ramon Rene (Department of Neurology, Hospital Universitari de Bellvitge, Barcelona, Spain), Elena Alonso and Elena Lorenzo (Neurogenetics Laboratory, Division of Neurosciences, Center for Applied Medical Research University of Navarra School of Medicine), Jorge Lorenzo Otero and Eliana Pereyra (Department of Neuropsychology, Facultad de Medicina, Universidad de la República, Montevideo, Uruguay), Victor Raggio and Maria Mirta Rodríguez (Department of Genetics, Facultad de Medicina, Universidad de la Republica, Montevideo, Uruguay), Rodolfo Ferrando (Department of Nuclear Medicine, Facultad de Medicina, Universidad de la Republica, Montevideo, Uruguay), Pablo Martínez-Lage (Fundación CITA-Alzheimer, San Sebastian, Spain), and Manuel Seijo-Martínez (Department of Neurology, Hospital do Salnés, Pontevedra, Spain).

We gratefully thank Kevin Mayo for preparing the DNA samples and Gabe Haller and Francesco Vallania for help with sequencing data analysis. We acknowledge the expert technical assistance of the Genome Technology Access Center of Washington University in St. Louis. This work was supported by grants from the National Institutes of Health (P30-NS069329-01 and R01-AG035083). This study was supported by the FIMA project Center for Applied Medical Research (Centro de Investigación Medica Aplicada, CIMA) and a grant to PP from the Department of Health of the Government of Navarra (13085 and 3/2008).

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Correspondence to Carlos Cruchaga.

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Authors' contributions

CC helped to conceive and design the experiments, to provide human samples and reagents, to analyze data, and to draft the manuscript. PP helped to conceive and design the experiments, to provide human samples and reagents, and to revise the manuscript. SCJ helped to conceive and design the experiments, to perform experiments, to acquire and analyze data, and to draft the manuscript. The Ibero-American Alzheimer Disease Genetics Group helped to provide human samples and reagents. SC helped to provide human samples and reagents, to perform experiments, and to acquire data. AG helped to provide human samples and reagents and to revise the manuscript. BC helped to perform experiments, to acquire data, and to draft the manuscript. BAB helped to analyze data and to revise the manuscript. All authors read and approved the final manuscript.

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Jin, S.C., Pastor, P., Cooper, B. et al. Pooled-DNA sequencing identifies novel causative variants in PSEN1, GRN and MAPT in a clinical early-onset and familial Alzheimer's disease Ibero-American cohort. Alz Res Therapy 4, 34 (2012). https://doi.org/10.1186/alzrt137

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