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      Cost-efficient multiplex PCR for routine genotyping of up to nine classical HLA loci in a single analytical run of multiple samples by next generation sequencing

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          Abstract

          Background

          HLA genotyping by next generation sequencing (NGS) requires three basic steps, PCR, NGS, and allele assignment. Compared to the conventional methods, such as PCR-sequence specific oligonucleotide primers (SSOP) and -sequence based typing (SBT), PCR-NGS is extremely labor intensive and time consuming. In order to simplify and accelerate the NGS-based HLA genotyping method for multiple DNA samples, we developed and evaluated four multiplex PCR methods for genotyping up to nine classical HLA loci including HLA-A, HLA-B, HLA-C, HLA-DRB1/3/4/5, HLA-DQB1, and HLA-DPB1.

          Results

          We developed multiplex PCR methods using newly and previously designed middle ranged PCR primer sets for genotyping different combinations of HLA loci, (1) HLA-DRB1/3/4/5, (2) HLA-DQB1 (3.8 kb to 5.3 kb), (3) HLA-A, HLA-B, HLA-C, and (4) HLA-DPB1 (4.6 kb to 7.2 kb). The primer sets were designed to genotype polymorphic exons to the field 3 level or 6-digit typing. When we evaluated the PCR method for genotyping all nine HLA loci (9LOCI) using 46 Japanese reference subjects who represented a distribution of more than 99.5% of the HLA alleles at each of the nine HLA loci, all of the 276 alleles genotyped, except for HLA-DRB3/4/5 alleles, were consistent with known alleles assigned by the conventional methods together with relevant locus balance and no excessive allelic imbalance. One multiplex PCR method (9LOCI) was able to provide precise genotyping data even when only 1 ng of genomic DNA was used for the PCR as a sample template.

          Conclusions

          In this study, we have demonstrated that the multiplex PCR approach for NGS-based HLA genotyping could serve as an alternative routine HLA genotyping method, possibly replacing the conventional methods by providing an accelerated yet robust amplification step. The method also could provide significant merits for clinical applications with its ability to amplify lower quantity of samples and the cost-saving factors.

          Electronic supplementary material

          The online version of this article (doi:10.1186/s12864-015-1514-4) contains supplementary material, which is available to authorized users.

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          Most cited references33

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          Pervasive Sharing of Genetic Effects in Autoimmune Disease

          Introduction The human immune-mediated diseases are the result of aberrant immune responses. These immune responses may lead to chronic inflammation and tissue destruction, often targeting a specific organ site. The outcome of this process is immune-mediated inflammatory and autoimmune disease, affecting approximately 5% of the population [1]. Extensive clinical and epidemiologic observations have shown that immune-mediated inflammatory and autoimmune diseases can occur either in the same individual or in closely related family members. This clustering of multiple diseases appears more frequently than expected if disease processes were independent. As each of the immune-mediated inflammatory and autoimmune diseases has strong genetic influences on disease risk [2]–[7], the observed clustering of multiple diseases could be due to an overlap in the causal genes and pathways [8], [9]. The patterns of clustering of diseases across the population are complex [10] – each disease has a prevalence between 0.01%–3%, so direct assessment of co-aggregation within individuals or families does not result in the very large samples required for genetic or epidemiological investigation. Thus it is unsurprising that to date, these observations have yet to be translated into determinants of the shared molecular etiologies of disease. Recent GWA studies in immune-mediated and autoimmune diseases have identified 140 regions of the genome with statistically significant and robust evidence of presence of disease susceptibility loci. A subset of these loci have been shown to modulate risk of multiple diseases [3], [6], [11]–[14]. In addition, there is evidence that loci predisposing to one disease can have effects on risk of a second disease [15], although the risk allele for one disease may not be the same as for the second [16]. Together, these observations support the hypothesis of a common genetic basis of immune-mediated and autoimmune diseases [17]. There is now the ability to estimate both the number of loci contributing to risk of multiple diseases and the spectrum of diseases that each locus influences. In addition, grouping variants by the diseases they influence should provide insight into the specific biological processes underlying co-morbidity and disease risk. In this report, we systematically investigate the genetic commonality in immune-mediated inflammatory and autoimmune diseases by examining the contributions of associated genomic risk regions in seven diseases: celiac disease (CeD), Crohn's disease (CD), multiple sclerosis (MS), psoriasis (Ps), rheumatoid arthritis (RA), systemic lupus erythematosus (SLE) and type 1 diabetes (T1D). We find that nearly half of loci identified in GWAS studies of an individual disease influence risk to at least two diseases, arguing for a genetic basis to co-morbidity. We also find several variants with opposing risk profiles in different diseases. Supporting the idea that common patterns of association implicate shared biological processes, we further demonstrate that loci clustered by the pattern of diseases they affect harbor genes encoding interacting proteins at a much higher rate than by chance. These results suggest that multi-phenotype mapping will identify the molecular mechanisms underlying co-morbid immune-mediated inflammatory and autoimmune diseases. Results We first test our hypothesis of common genetic determinants by examining evidence of association of genetic variants in known immune-mediated and autoimmune disease susceptibility loci to multiple disease phenotypes. We collated a list of 140 single nucleotide polymorphisms (SNPs) representing reported associations to at least one immune-mediated disease at genome-wide significance levels. Where data for the reported SNP itself were not available in our GWA studies (Table 1), we chose a proxy in high linkage disequilibrium to the reported marker (r2 >0.9 in HapMap/CEU). We did not consider SNPs in the human Major Histocompatibility Complex (MHC) from this analysis, as its role in many of these diseases is well-established and the classically associated alleles in the HLA region are not well captured by SNPs [18]. We were able to acquire data for either the reported SNP or a good proxy in 107 of 140 cases, and assembled genotype test summaries for these from previously described GWA studies representing over 26,000 disease cases (Table 1). 10.1371/journal.pgen.1002254.t001 Table 1 Participating studies. Disease Cases Controls Reference Celiac disease 3796 8154 22 Crohn's disease 3230 4829 1 Multiple sclerosis 2624 7220 4 Psoriasis 1359 1400 5 Rheumatoid arthritis 5539 20169 6 Systemic Lupus Erythematosus 1963 4329 23 Type 1 diabetes 7514 9045 24 Data were collated for seven phenotypes from meta-analyses incorporating all known genome-wide association studies. SLE is the exception as no comprehensive meta-analysis has yet been published; data were instead obtained from a recent meta-analysis including some, but not all, known genome-wide association studies. Note that controls overlap in some cases due to the use of common shared sample genotypes. We have developed a cross-phenotype meta-analysis (CPMA) statistic to assess association across multiple phenotypes. The CPMA statistic determines evidence for the hypothesis that each independent SNP has multiple phenotypic associations. Support for this hypothesis would be shown by deviations from expected uniformity of the distribution of association p-values, indicative of multiple associations. The likelihood of the observed rate of exponential decay of −log10(p) is calculated and compared to the null expectation (the decay rate should be unity) as a likelihood ratio test (see Materials and Methods for details). This CPMA statistic has one degree of freedom, as it measures a deviation in p-value behavior instead of testing all possible combinations of diseases for association to each SNP. A total of 47 of the 107 SNPs tested have evidence of association to multiple diseases (SNP-wise PCPMA 0.9) to represent the region. Cross-phenotype meta-analysis Our CPMA analysis relies on the expected distribution of p-values for each SNP across diseases. Under the null hypothesis of no additional associations beyond those already known, we expect association values to be uniformly distributed and hence -ln(p) to be exponentially decaying with a decay rate λ = 1. We calculate the likelihood of the observed and expected values of λ and express these as a likelihood ratio test: This statistic therefore measures the likelihood of the null hypothesis given the data; we can reject the null hypothesis if sufficient evidence to the contrary is present. We note that, because we only estimate a single parameter, our test is asymptotically distributed as . This gives us more statistical power than relying on strategies combining association statistics, which would consume multiple degrees of freedom. SNP–SNP distance calculation and clustering To compare the patterns of association for multi-phenotype SNPs we first calculate SNP-SNP distances and then use hierarchical clustering on that distance matrix to assess relative relationships between SNP association patterns. Calculating distances based directly on p values or the underlying association statistics is problematic, as each contributing study has slightly different sample sizes and therefore different statistical power to detect associations. Thus, distance functions based on numeric data – which incorporate magnitude differences between observations – would be biased if studies have systematically different data. Normalization procedures can account for such systematic differences but may fail to remove all bias. To reduce the impact such systematic irregularities might have on our comparison, we bin associations into informal “levels of evidence” categories. We define four classes (1
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            Immune self-reactivity triggered by drug-modified HLA-peptide repertoire.

            Human leukocyte antigens (HLAs) are highly polymorphic proteins that initiate immunity by presenting pathogen-derived peptides to T cells. HLA polymorphisms mostly map to the antigen-binding cleft, thereby diversifying the repertoire of self-derived and pathogen-derived peptide antigens selected by different HLA allotypes. A growing number of immunologically based drug reactions, including abacavir hypersensitivity syndrome (AHS) and carbamazepine-induced Stevens-Johnson syndrome (SJS), are associated with specific HLA alleles. However, little is known about the underlying mechanisms of these associations, including AHS, a prototypical HLA-associated drug reaction occurring exclusively in individuals with the common histocompatibility allele HLA-B*57:01, and with a relative risk of more than 1,000 (refs 6, 7). We show that unmodified abacavir binds non-covalently to HLA-B*57:01, lying across the bottom of the antigen-binding cleft and reaching into the F-pocket, where a carboxy-terminal tryptophan typically anchors peptides bound to HLA-B*57:01. Abacavir binds with exquisite specificity to HLA-B*57:01, changing the shape and chemistry of the antigen-binding cleft, thereby altering the repertoire of endogenous peptides that can bind HLA-B*57:01. In this way, abacavir guides the selection of new endogenous peptides, inducing a marked alteration in 'immunological self'. The resultant peptide-centric 'altered self' activates abacavir-specific T-cells, thereby driving polyclonal CD8 T-cell activation and a systemic reaction manifesting as AHS. We also show that carbamazepine, a widely used anti-epileptic drug associated with hypersensitivity reactions in HLA-B*15:02 individuals, binds to this allotype, producing alterations in the repertoire of presented self peptides. Our findings simultaneously highlight the importance of HLA polymorphism in the evolution of pharmacogenomics and provide a general mechanism for some of the growing number of HLA-linked hypersensitivities that involve small-molecule drugs.
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              HLA-DR typing by PCR amplification with sequence-specific primers (PCR-SSP) in 2 hours: an alternative to serological DR typing in clinical practice including donor-recipient matching in cadaveric transplantation.

              In most PCR-based tissue typing techniques the PCR amplification is followed by a post-amplification specificity step. In typing by PCR amplification with sequence-specific primers (PCR-SSP), typing specificity is part of the amplification step, which makes the technique almost as fast as serological tissue typing. In the present study primers were designed for DR "low-resolution" typing by PCR-SSP, i.e. identifying polymorphism corresponding to the serologically defined series DR1-DRw18. This resolution was achieved by performing 19 PCR reactions per individual, 17 for assigning DR1-DRw18 and 2 for the DRw52 and DRw53 superspecificities. Thirty cell lines and 121 individuals were typed by the DR "low-resolution" PCR-SSP technique, TaqI DRB-DQA-DQB RFLP analysis and serology. The concordance between PCR-SSP typing and RFLP analysis was 100%. The reproducibility was 100% in 40 samples typed on two separate occasions. No false-positive or false-negative typing results were obtained. All homozygous and heterozygous combinations of DR1-DRw18 could be distinguished. Amplification patterns segregated according to dominant Mendelian inheritance. DNA preparation, PCR amplification and post-amplification processing, including gel detection, documentation and interpretation, were performed in 2 hours. In conclusion, PCR-SSP is an accurate typing technique with high sensitivity, specificity and reproducibility. The method is rapid and inexpensive. DR "low-resolution" typing by the PCR-SSP technique is ideally suited for analyzing small numbers of samples simultaneously and is an alternative to serological DR typing in routine clinical practice including donor-recipient matching in cadaveric transplantations.
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                Author and article information

                Contributors
                y-ozaki@tokai-u.jp
                shingo@tokai-u.jp
                k-kashiwase@ktks.bbc.jrc.or.jp
                ashige@is.icc.u-tokai.ac.jp
                y-okuda@is.icc.u-tokai.ac.jp
                s-ito@tokai-u.jp
                masuya@is.icc.u-tokai.ac.jp
                f-azuma@ktks.bbc.jrc.or.jp
                t-yabe@ktks.bbc.jrc.or.jp
                smorishi@fujita-hu.ac.jp
                s-mitsu@is.icc.u-tokai.ac.jp
                m-satake@ktks.bbc.jrc.or.jp
                otamasao@shinshu-u.ac.jp
                ymorisim@aichi-cc.jp
                kulski@me.com
                Yuki.Saito@thermofisher.com
                hinoko@is.icc.u-tokai.ac.jp
                tshiina@is.icc.u-tokai.ac.jp
                Journal
                BMC Genomics
                BMC Genomics
                BMC Genomics
                BioMed Central (London )
                1471-2164
                18 April 2015
                18 April 2015
                2015
                : 16
                : 1
                : 318
                Affiliations
                [ ]Department of Molecular Life Science, Division of Basic Medical Science and Molecular Medicine, Tokai University School of Medicine, Isehara, Kanagawa 259-1143 Japan
                [ ]HLA Laboratory, Japanese Red Cross Kanto-Koshinetsu Block Blood Center, Koto-ku, Tokyo 135-8639 Japan
                [ ]Department of Hematology, Fujita Health University School of Medicine, Toyoake, Aichi 470-1192 Japan
                [ ]Department of Legal Medicine, Shinshu University School of Medicine, Matsumoto, Nagano 390-8621 Japan
                [ ]Division of Epidemiology and Prevention, Aichi Cancer Center Research Institute, Nagoya, Aichi 464-8681 Japan
                [ ]Centre for Forensic Science, The University of Western Australia, Nedlands, WA 6008 Australia
                [ ]Research Department, One Lambda Inc, Part of Thermo Fisher Scientific, Kittridge Street, Canoga Park, CA 91303-2801 USA
                Article
                1514
                10.1186/s12864-015-1514-4
                4404632
                c416d55e-1893-4b5c-be65-bb5560370905
                © Ozaki et al.; licensee BioMed Central. 2015

                This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly credited. The Creative Commons Public Domain Dedication waiver ( http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.

                History
                : 26 December 2014
                : 8 April 2015
                Categories
                Methodology Article
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                © The Author(s) 2015

                Genetics
                Genetics

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