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Single-Molecule Analysis of the Hypermutable Tetranucleotide Repeat Locus D21S1245 Through Sperm Genotyping: A Heterogeneous Pattern of Muta
     * Department of Evolutionary Biology, Uppsala University, Uppsala, Sweden

    Molecular and Computational Biology Program, University of Southern California

    E-mail: hans.ellegren@ebc.uu.se.

    Abstract

    Single molecule genotyping of the hypermutable microsatellite locus D21S1245 was used for studying how the rate and pattern of mutation varied between alleles and different age groups. In total, 203 mutation events were scored from the genotyping of DNA corresponding to an estimated 8623 sperm cells from eight different men. Allele-specific mutation rates ranged from 0.007 to 0.052, a heterogeneity related in part to variation in the mutation rate among three allelic lineages identified after allele sequencing. Alleles from these lineages differed in the overall repeat structure of this complex microsatellite locus. Also, the pattern of mutation varied between lineages in that they differed in the relative proportions of expansion and contraction mutations. Surprisingly, a group of four men aged 18–23 years showed a higher mean mutation rate than a group of four men aged 48–56 years. To some extent this age difference can probably be explained by a bias in the distribution of alleles from the three allelic lineages among the age groups. However, the absence of a clear male age effect is at odds with the idea of an increasing male mutation rate with age, which is thought to arise from the continuous replication of germline cells throughout adulthood.

    Key Words: microsatellite ? male-bias ? germ line mutation ? polymorphism ? polymerase chain reaction (PCR)

    Introduction

    Estimates of the mean germline mutation rate in human microsatellites are in the range of 10–3–10–4 (Schl?tterer 2000). Given this high rate, microsatellite mutation events may be identified by pedigree studies, provided that a large number of families are genotyped for many microsatellite loci (Weber and Wong 1993; Brinkmann et al. 1998; Primmer et al. 1998; Xu, Peng, and Fang 2000; Huang et al. 2002). Although the number of mutations identified at individual loci is generally limited, pooled data on mutation events from different markers and individuals have given an overall idea of the underlying microsatellite mutation process (Ellegren 2000a; Xu, Peng, and Fang 2000). However, there is an increasing awareness that different loci may differ with respect to mutation rate and possibly also with respect to pattern of mutation (Ellegren 2000b). To this should be added that at least the rate of mutation may differ between individuals, e.g., because of sex, age, and possibly genetic background. To gain further insight into the mechanisms of mutation and evolution at human microsatellite loci, studies of the mutation process at individual loci and in single individuals are needed.

    The basic requirement for studies of the latter kind is the possibility of analyzing large numbers of germline transmissions of a particular marker in a given parent. Microsatellite genotyping of sperm samples can meet this requirement as it offers a virtually unlimited supply of gametes. Holtkemper et al. (2001) used a small-pool polymerase chain reaction (PCR) approach for microsatellite mutation detection in sperm, where DNA corresponding to up to 40 cells was genotyped at the same time. This approach is efficient in terms of throughput, but it may be disadvantageous for other reasons. For instance, the stutter bands typically generated in vitro during microsatellite PCR amplification may make the identification of mutant alleles in pools difficult, in particular when it comes to deletion mutations.

    In this study we use single-molecule genotyping (Li et al. 1988; Arnheim, Li, and Cui 1990; Zhang et al. 1994) of DNA prepared from sperm cells to examine the rate and pattern of microsatellite mutation in individual men. Specifically, we study mutation events in the highly mutable tetranucleotide repeat marker D21S1245 (Talbot et al. 1995) in eight males of different age. These men were chosen to represent a "young" (18–23 years) or an "old" (46–56 years) group of males, to allow a test of the influence of paternal age on the germline mutation rate.

    Materials and Methods

    Single-Molecule PCR

    The use of the sperm samples for this study has been approved by the Institutional Review Board of the University of Southern California. Semen samples were examined under a microscope to ensure high quality of DNA and to check for potential contamination with non-sperm cells. A counting chamber was used to estimate sperm concentration. Sperm cells were lysed with proteinase K and DTT, and DNA was extracted according to a standard phenol/chloroform protocol and diluted to a single-molecule level (see below).

    A nested PCR approach was applied with two internal primers in the second PCR. The first PCR contained 10 mM Tris-HCl (pH = 8.3), 50 mM KCl, 1.75 mM MgCl2, 0.2 mM of each dNTP, 2.0 pmol each of primers D21S1245C (5'-GCTGAATTCAGTTTGCTGG-3') and D21S1245D (5'-TGAAAAACAGAGAAGGAGGG-3'), and 0.5 U Taq polymerase (Applied Biosystems or Promega), in a total volume of 20 μl. Amplification was initiated within 5 min at 94°C, followed by 30 s at 95°C, 30 s at 50°C, and 30 s at 72°C for 30 cycles. The final extension step was elongated to 5 min. For the second PCR, 3.0 μl from the first amplification was used as template. Conditions were as above with the exception that 5.0 pmol each of primers D21S1245A and D21S1245B (Talbot et al. 1995) was used, and that 35 cycles with an annealing temperatures of 60°C were run. One of the nested primers was fluorescence-labeled to allow subsequent detection.

    The PCR products were analyzed on either a Beckmann-Coulter 8-capillary instrument or an ABI377 sequencing instrument. Each fragment was run together with a high density internal size standard. To reduce the risk of contamination, the first PCR was set up in a hood with a positive flow of sterile filtered air. The hood was decontaminated with UV-light before each use, and filter tips were consistently used throughout the pre-PCR steps. The second PCR was set up in a different room.

    DNA Sequencing

    The PCR products of individual microsatellite alleles were cloned in pGEM-T vector (Promega) and heat shock transformed into E. coli JM109 cells using manufacturer's protocol (Promega). To ensure that clones contained the appropriate fragment, and not a stutter artifact band from PCR amplification, insert size was screened by clone PCR amplification using the original primers and comparison of insert length with that obtained in amplification from genomic DNA. Only clones containing inserts with the same length as the control were used as templates for sequencing. Clones to be sequenced were amplified using a ThempliPhi-kit (Amersham), and cycle sequencing reactions were performed with BigDye chemistry and analyzed on an ABI377 sequencing instrument. Sequences are available in GenBank under Accession numbers AY193847–AY193862.

    Scoring and Interpretation

    Amplifications were performed in 96-well microtiter plates with one positive control (genomic DNA from the male in question) and one negative control. If contamination was indicated, the results from all amplifications from a particular microtiter plate were discarded. The positive control served as a reference for unmutated alleles, and deviations from these reference lengths were regarded as potential mutations. The second PCR and the subsequent fragment analysis were always repeated for potential mutations.

    The stutter (artefact) bands typically seen in microsatellite DNA amplification and the fact that two molecules could be present as templates in a PCR reaction required a criterion for a deviant fragment (a fragment differing in size from the two alleles of a heterozygote individual) to be interpreted as a mutation event. For instance, the simultaneous amplification of an unmutated allele and a mutant one repeat unit shorter than the particular unmutated allele could potentially be difficult to distinguish from one unmutated allele showing extensive stuttering. We therefore used as the criterion for mutation interpretation that if a deviant fragment also displayed a fragment of the size of the unmutated allele, the peak height of the fragment at this position would at most be 33% of the peak height of the potential mutation. Although representing an arbitrary level, we consider this criterion to be conservative for our purposes as it seems highly unlikely that a truly unmutated allele would also show an artifact band of much higher peak height at another position.

    The origin of mutant alleles was considered to be the allele that was closest in size to new length variants (cf. Beck, Double, and Cockburn 2003). Potential mutant alleles differing considerably in size from unmutated alleles may represent PCR artefacts, and we therefore excluded five deviant fragments which differed in size by 10 or more repeat units from progenitor alleles.

    The exact volume of template DNA to be used in each PCR reaction (corresponding to one genome equivalent per reaction) was empirically determined by making dilution series. One genome equivalent is reached when 63% of the PCR reactions show amplification. However, the dilution approach implies that not all reactions will contain just one template molecule, so occasionally there will be two or more templates per aliquot, and in other cases there will be none. The likelihood for any given reaction to carry zero, one, two, or more DNA molecules is constant and can be described by the Poisson distribution with mean one. Obviously, the number of cases with two or more template molecules present in the same reaction has to be taken into account when estimating the total number of genomes analyzed (i.e., to be able to derive mutation rate estimates). Among the reactions that show only one visible allele (Nv), a certain number in fact represent the amplification product of two alleles of the same length (Ns). Assuming that there is no bias in the appearance of the two alleles, Ns can be estimated by the number of reactions that contain two different alleles (Nd) (i.e, Ns = Nd). Subtracting Ns (estimated by Nd) from Nv leaves the number of reactions that contain only one allele. To this number must be added the number of alleles found in reactions containing two different alleles (2 x Nd) (Nd multiplied by 2, because there are two alleles in each of these reactions) and the number of alleles in reactions containing two alleles of the same length (2 x Ns) (estimated by 2 x Nd). The total number of alleles analyzed (Ntot) can then be approximated by:

    We used equation (1) to estimate the total number of template genomes present in each microtiter plate separately (a master mix including template DNA was made for one plate at the time). This approach requires all individuals be heterozygotes, which was the case in our study. It should be noted that we ignore the fact that some reactions will actually contain more than two template molecules. However, the proportion of such cases should be less than 7% when using a template concentration corresponding to one genome equivalent per reaction, so it should only have a marginal effect on the total estimate.

    For all eight men, approximately equal numbers of the two alleles were amplified (data not shown), thus giving no indication of segregation distortion or selective amplification of certain alleles (implying Nd = Ns).

    Results

    Basic Mutation Properties

    Single-molecule genotyping of DNA corresponding to an estimated 8,623 sperm cells from eight different men resulted in the detection of 203 mutations at the tetranucleotide repeat locus D21S1245 (see example in fig. 1). The observed frequency of mutation translates into a germline mutation rate of 0.024 (0.020–0.027, 95% confidence interval [CI]). It should be noted that this can be regarded only as a rough estimate because the total number of molecules genotyped could only be approximated (see Materials and Methods). However, the observed rate is close to that reported in a study based on pedigree data (Talbot et al. 1995). Moreover, in the subsequent analyses we are basically considered the difference in mutation rate between alleles or age groups, not the precise rates.

    FIG. 1. Examples of results from fluorescence-based fragment analysis of D21S1245. Lane 1 contains a positive control (an individual heterozygote for 277-bp and 309-bp alleles) where high copy number DNA has been used as template for the PCR reaction. Lane 2 represents a one-repeat-unit expansion, and lane 3 a one-repeat-unit contraction, both detected through single-molecule genotyping of diluted sperm from the same individual as in lane 1. Lane 4 also represents genotyping from diluted sperm of the same individual, but in this amplification two DNA molecules have come to act as template for the PCR reaction. The 277-bp fragment is the unmutated allele, and the 301-bp fragment represents a two-repeat-units contraction

    The D21S1245 microsatellite has a complex and interrupted repeat structure with a main motif (GAAA)n (Talbot et al. 1995). Consistent with this structure, all mutations differed in size from their progenitor alleles by multiples of 4 bp. The overall pattern of mutation was a bias in favor of deletions (125) over insertions (68; 2 = 16.8, df = 1, P < 0.001), as judged from the 193 mutations where magnitude (number of repeat unit changes) and direction (expansion or contraction) of mutation could be inferred. Moreover, the average magnitude of deletion mutations was somewhat larger (2.33 ± 1.83 SD) than that of insertions (1.44 ± 0.74; z = 3.35, P < 0.001, Mann-Whitney U test), resulting in a net loss of 1.01 repeat units per mutation event. Some 54% of the mutations (105/193) involved the change of a single repeat unit (fig. 2), and the remainder involved two to nine repeat unit mutations.

    FIG. 2. Magnitude and direction of 193 mutations at the tetranucleotide locus D21S1245, determined from single-molecule genotyping of DNA prepared from sperm

    Allele-Specific Mutation Rates

    The large number of mutations detected allowed allele-specific mutation rates to be estimated (table 1). There was a significant heterogeneity in mutation rate between alleles (2 = 66.95, df = 15, P < 0.001). Estimates for individual alleles differed by almost an order of magnitude, i.e., 0.052 [27/521] for allele 1–4 versus 0.007 [5/756] for allele 1–2, although it should be noted that the number of mutations recorded for some alleles was limited. We tested for a length dependence on the mutation rate, as found in previous studies of microsatellite mutation (Talbot et al. 1995; Schl?tterer et al. 1998), including that of D21S1245 (Talbot et al. 1995). Surprisingly, there was no significant correlation between the mutation rate of individual alleles and total repeat length (r2 = 0.187, P = 0.09). Nor was there an apparent effect of genetic background; the mutation rate of the two alleles of an individual was not correlated (r2 = 0.087, P = 0.48).

    Table 1 Mutation Rates and Repeat Lengths for 16 Different Alleles at D21S1245.

    Male Age Effect

    An impetus for this study was to analyze the mutation rate in men of different age. Sperm donors from two age groups were therefore selected, representing a "young" group (18, 20, 23, and 23 years old, respectively) and an "old" group (46, 47, 47, and 56 years old). Given the expected relationship between microsatellite repeat length and mutation rate (but see above), the study was designed by selecting sperm donors in such a way that allele lengths would be similar in the two age groups. The mean allele length of groups thus only differed by less than the size of one repeat unit (old: 206.9 ± 16.0 bp, young: 209.8 ± 20.2 bp; P = 0.75, t-test). Moreover, the allelic composition of all eight men was similar, each carrying one relatively short allele and one relatively long allele (see table 1). Somewhat surprisingly, the mean mutation rate of the young men (0.030 ± 0.013) was found to be higher than that of the old men (0.018 ± 0.011; P = 0.031, t-test).

    Allelic Lineages and their Mutation Rate

    To gain further insight into the mutation process at D21S1245, we sequenced all 16 alleles carried by the eight men included in the study. Although only 12 different allele sizes were scored, sequence data revealed all 16 alleles to represent unique variants. The repeat structure proved to be extremely complex, with a main (GAAA)n tetranucleotide repeat followed by a number of A- and G-containing repeat derivatives, generally iterated only a few times (fig. 3). In some alleles, however, a second (GAAA)n sequence toward the 3' end of the complex showed almost as many repeats as the main block. Importantly, the overall repeat structure differed significantly between alleles, and it was clear that three major allelic lineages could be defined. The first lineage ("lineage 1"), represented by six different alleles (1–1 through 1–6), was characterized by a diagnostic 22-bp insertion. Alleles of the second ("lineage 2"; 2–1 through 2–6) and the third ("lineage 3"; 3–1 through 3–3) lineages displayed a specific repeat structure in the very 3' end of the complex. Lineage 3 differed from lineage 2 by a 22-bp deletion (different from the above-mentioned 22-bp insertion). For one allele, designated 4, lineage affiliation was unclear. This allele may evidence a mutation event based on recombination, which could have formed a new allele originating from lineage 2 in the 5' end and lineage 1 in the 3' end through crossing-over. Alternatively, it may represent an evolutionary transition state between lineages 1 and 2.

    FIG. 3. Sequence alignment of the repeat region of 16 alleles from the microsatellite locus D21S1245. All alleles also contain a monomorphic G- and A- rich sequence (GAGAAGAAAAAGAAAA) immediately downstream of the repeat structure indicated in the figure

    Although there was no obvious difference in the length of the main repeat between alleles of the three different lineages (fig. 3), the mutation rate differed significantly between lineages (2 = 22.33, df = 2, P < 0.001). The mean mutation rate of lineage 1 was 0.028 ± 0.015; of lineage 2, 0.016 ± 0.005; and of lineage 3, 0.037 ± 0.011. This indicates at least a twofold difference in mutation rate between groups.

    Not only did mutation rates differ between allelic lineages, they also showed contrasting ratios of contraction/expansion mutations. Although contractions were about two and four times as common as expansions in lineages 2 (33/14) and 3 (47/11), expansions (40) were about as common as contractions (39) in lineage 1. The cause of this variation is unknown, and indeed intriguing; the observation represents a previously unknown form of mutation heterogeneity within a microsatellite locus.

    From the sequence of individual alleles available, we finally addressed whether the length of longest uninterrupted repeat stretch was correlated with mutation rate, and no such relationship was found (r2 = 0.012, P = 0.96).

    Discussion

    The tetranucleotide repeat locus D21S1245 has previously been shown to be hypermutable, both in the germ line and in cell culture (Talbot et al. 1995). We therefore anticipated that it should be possible to identify and characterize large numbers of de novo mutation events through single molecule genotyping of DNA prepared from sperm, an assumption that turned out to be valid. To our knowledge, the identification of >200 germ line mutations presented herein makes this locus the best characterized human, non-disease, simple repeat marker in terms of pattern of mutation.

    Mutation Rate Variation Between Age Groups and Allelic Lineages

    The rate of human mutation, and its determinants, is of considerable general interest as it has a bearing on health risks (Crow 2000) and human evolution (Eyre-Walker and Keightley 1999). It is often assumed that a significant number of all point mutations in the germ line arise because of replication errors in connection with cell division. It follows that the number of germ line cell divisions should be an important factor in governing the mutation rate. The germ line mutation rate of humans is male-biased (Hurst and Ellegren 1998; Makova and Li 2002), and this is compatible with the contrasting number of cell divisions in spermatogenesis and oogenesis. Along the same line of thinking, it has been postulated that the male mutation rate should be positively correlated with paternal age as men continue to produce sperm cells throughout adulthood (Crow 2000). However, empirically testing this hypothesis is difficult. An indirect test of the male age effect has been made by studying the age of fathers in cases of a spontaneous dominant mutation leading to hereditary disease (e.g., achondroplasia, Apert's syndrome, neurofibromatosis). This study has supported the idea of an increase in the mutation rate with age (but see Tiemann-Boege et al. 2002), although the precise form of relationship seems to vary among diseases (Risch et al. 1987; Vogel and Motulsky 1997; Crow 2000). However, mutations at one site or at a limited number of hot spot sites, which is the case for several diseases, may not be representative for the overall pattern of mutation in the human genome. For instance, achondroplasia is caused exclusively by recurrent mutations at a hypermethylated cytosine site in the paternal germ line only (Wilkin et al. 1998).

    Although length mutations caused by replication slippage at microsatellite loci represent a different class of mutation from point mutations (nucleotide substitutions), it is reasonable to assume that the number of germ line cell divisions should affect the mutation rate of the former class as well (mitotic replication events likely representing the predominant source of mutation). This assumption is supported by the observation that the human microsatellite mutation rate shows a male-bias similar to the rate for point mutations (Ellegren 2000a; Xu, Peng, and Fang 2000). We therefore expected that the group of older males would display a higher microsatellite mutation rate in sperm than the group of younger males. Contrary to that expectation, however, young men had a higher mean mutation rate at D21S1245 than old men. Does this challenge the long-held view of a positive relationship between paternal age and mutation rate?

    To be able to compare the mutation rates of different age groups, it is of course important that factors other than age not strongly influence the mutation rate or, alternatively, that they can be controlled for. For this study, sperm donors within the different age categories had been carefully selected to give similarly sized sets of alleles in the two groups, as it is known that the microsatellite mutation rate often varies between alleles according to a repeat length effect (Ellegren 2000b). It was thus not expected that any mutation rate variation related to repeat length would mask a possible male age effect. (Incidentally, during the course of the study we were unable to demonstrate a strict relationship between allele length and mutation rate at D21S1245). However, it is possible that rate variation between allelic lineages would. One important finding of this study was the identification of three phylogenetically well-defined allelic lineages and the variation in mutation rate seen between alleles of these lineages. Biased representation of alleles from the three allelic lineages may explain, at least in part, the observation of a higher mutation rate of young men than of older men. For instance, the group of young men had two alleles from lineage 3, which had the highest mutation rate, and two alleles from lineage 2, which had the lowest rate. For the group of old males there was only one allele from lineage 3 but four alleles from lineage 2. An unbiased assessment of the effect of age on the mutation rate at D21S1245 should ideally be based on the same alleles studied in men of different ages, chiefly because the mutation rate also varied considerably within allelic groups. Notably, the alleles with the lowest and the highest estimated mutation rate in the whole sample were both from lineage 1. It is thus possible that cis-acting elements have a significant effect on the mutation rate of individual alleles.

    In summary, we find it premature to conclude from our data that there is no increase in the germ line mutation rate at D21S1245 with age. Nevertheless, there is no indication that there is a strong age effect. Maybe the rates of point mutation and microsatellite mutation respond differentially to an increase in male age.

    Additional Heterogeneity in the Mutation Process Between Allelic Groups

    There are a several examples of microsatellite loci where the degree of polymorphism has been found to vary between allelic groups (Jin et al. 1996). Allelic groups may be defined by the presence or absence of interruptions within perfect repeat arrays, and the general trend is that interruptions lower the degree of polymorphism. Variation in polymorphism levels is likely to translate into underlying mutation rate variation, although the evidence for this possibility is only indirect. D21S1245 is a particularly complex microsatellite locus, but the observed variation in mutation rate between allelic lineages seems not to be related to the overall degree of complexity at this locus, at least not in a simple way (cf. fig. 3). Moreover, a high mutation rate cannot be explained by the presence of large repeat numbers in the second (GAAA)n repeat toward the 3' end. In any case, our data provide the first direct support for significant mutation rate variation between allelic lineages within a microsatellite locus. Perhaps allelic variation in adjacent sequences affects the relative instability of D21S1245, similar to the situation at some minisatellite loci (Monckton et al. 1994). Talbot et al. (1995) found no effect on D21S1245 mutability of markers at 2 cM distance; however, the possibility that there are cis-acting alleles at much closer distance cannot be excluded.

    Mechanisms of Mutation

    Although length mutations compatible with replication slippage can broadly explain length polymorphism at D21S1245, a closer inspection of the repeat structures of individual alleles (fig. 3) suggests that other mutations also contribute to the polymorphism seen at this locus. In our set of alleles there are nine sites of interruptions within arrays of (GAAA)n (in two cases arrays of [GAGAAA]n) which are represented by perfect repeats in other alleles. Interestingly, all nine cases constitute A > G or G > A substitutions. Assuming the direction of mutation has always been from a perfect repeat to an imperfect, six cases of A > G and three cases of G > A substitution can be identified. This non-random pattern of mutation represents an extreme transition:transversion bias (i.e., there is not a single C or T among nine mutation events) and would either suggest a strong strand bias for point mutation to A or G influenced by sequence context, or a mechanism of mutation that is different from point mutation and is affected by the G- and A-rich nature of this repeat locus. The latter could involve gene conversion or other recombination-like events, and perhaps replication slippage as well (Palsb?ll, Berube, and J?rgensen 1999).

    Acknowledgements

    We thank Nathalie Do, Jenny Redelius, and Susanne Bj?rnerfeldt for technical assistance. Financial support was obtained from the Swedish Research Council; the Swedish Research Council for Agriculture, Environment and Planning; National Institute of General Medical Sciences; and The Sweden-America Foundation. H.E. is a Royal Swedish Academy of Sciences Research Fellow supported by a grant from the Knut and Alice Wallenberg Foundation.

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