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SI_Methods Sediment cores. Two sediment cores were taken. Core 1 had a diameter of 5 cm and was taken in October 2002 and sliced in depth increments of 2 cm. Core 2 had a diameter of 15 cm and was taken in January 2006 and sliced in increments of 1 cm. The outer millimeters of each slice were removed. Dating of the core was performed based on the assumption of constant sedimentation rates in terms of sediment mass (as in Cousyn et al. 2001, PNAS). As the time axis should be considered indicative, only rough statements with respect to time of the sediment cores can be made. Daphnia clones and parasite isolates. Daphnia host clones and parasite isolates were derived from the two sediment cores. Up to nine depth increments were used covering a time interval of about 18 to 36 years (about 2–4 years per 2-cm depth). This represents 2-4 phases of sexual recombination and at least 10 to 20 asexual generations. On the basis of the similar profile of the number of dormant eggs in the different depths of both cores, we numbered the depths similarly between the two cores (see SI1 in Decaestecker et al. 2007). Host clones were obtained through hatching of dormant eggs from each depth. Parasite isolates were obtained by exposing a random set of Daphnia clones (isolated over the whole range of sediment depths used) to sediment from each depth. For Core 1, 16 clones were used in the random set and we obtained three parasite isolates per depth. For Core 2, 20 clones were used in the random set, but we obtained only one parasite isolate per depth and only from the first seven depths. The random set of clones used was different for the two cores. Cross-infection experiment. In the cross-infection experiment, Daphnia host clones (other than those used to pick up the parasite isolates) from either recent or old depths were confronted with the same set of parasite genotypes isolated from intermediate depths, in three replicates. Thus, hosts from recent depths were in principle experienced to the parasite genotypes, while hosts from the oldest depths were in principle naive. From Core 1, whenever possible, three Daphnia clones of the oldest and youngest depth were exposed to three parasite isolates from 2-cm depth each in three replicates (only two parasite isolates were used in depth five and only one in depth eight). From Core 2, eight Daphnia clones from the oldest and youngest depths were exposed to a parasite isolate of each 2cm depth in three replicates. Before performing the final cross-infection experiment, we isolated adult female Daphnia from clonal stock cultures that had been kept in the laboratory for several generations. Each clonal stock culture was derived from a single dormant egg. Three adult Daphnia were kept individually as a maternal line, with the number of maternal lines being equal to the number of replicates that were used in the cross-infection experiment. Neonates of the second clutch of the second generation maternal lines were then isolated and individually exposed to a parasite treatment in 100 ml (Core 1) or 50 ml (Core 2) jars in the cross-infection experiment. The Daphnia clones of Core 1 were exposed to a Pasteuria spore solution with a concentration of 2.5 x 105 spores ml-1 at day one, and 2.5 x 104 spores ml-1 at day seven. Because we had obtained fewer parasite spores from Core 2, these Daphnia clones were exposed to a Pasteuria solution with 1.3 x 103 spores ml-1 at day one, and 0.65 x 103 spores ml-1 at day three. The Core 1 Daphnia were fed daily with a concentration of 0.8 x 105 algal cells ml-1; the Core 2 Daphnia were fed with 0.5 x 105 algal cells ml-1 for the first six days, and afterwards with 1.5 x 105 algal cells ml-1. The difference in feeding regime between the exposures of Core 1 and Core 2 was due to the fact that a smaller number of parasite spores were obtained for Core 2 than for Core 1. We assumed that lower food levels at the start, but increasing food levels after a few days of parasite exposure, would result in stronger infectivity levels, so that parasite exposure would be better comparable between the two core experiments. Food levels were relatively equal and low in the exposures of the first days, to ensure that parasite uptake would be high. The medium was refreshed every time the host released a clutch, or at least every fourth day. After 26 (core 1) or 23 days (core 2), all the Daphnia were checked for Pasteuria infection. An inevitable point with respect to the experimental design (testing naive hosts with parasites from all sediment depths above and experienced hosts with all parasites from sediment depths below) is that it tests a lot of virtual combinations that ‘rarely’ occur in nature. The ‘rarely’ refers to the fact that our sediment cores show low disturbance, given that otherwise we would not have detected the adaptive pattern in the first place (and the consistency of the dormant egg profile and the adaptive pattern between different sediment cores, see SI1 on the dormant egg profile of the sediment cores in Decaestecker et al. 2007). The naive host confrontations reflect what would happen to hosts who would ‘wake up’ from the seed bank. The experimental design reflects changes both in the parasite and in the host. In the case of the host we evaluated the changes on a longer time scale than in the case of the parasite. We admit that our design does not explicitly test whether these long-term changes in the host over time could or could not be encountered by the parasite (as might be the case in nature), but given that we assumed that the parasite is adapting on shorter time frames than the host, we are convinced that this design is appropriate to mimic what the most important host adaptations were on longer time frames in our system. Standard Matching allele Model (MAM). The MAM is implemented with the parameters described in Table S1. Infection occurs when the alleles match. The diploid hosts are infected when one of the alleles or both match the allele of the parasite. Infectivity upon allele matching between the host and the parasite is represented by the interaction matrix M int . In the case considered, M int is a unit diagonal matrix. Between successive generations, mutation occurs. This is represented by two mutation matrices M and host M parasite . In the case considered, M and M parasite have entries host and parasite host and the diagonal entries are put to zero because alleles do not mutate to themselves. The host and parasite allele frequencies are stored in the vectors h and p , respectively. These vectors are initiated by random numbers. Both are scaled in such a way that the sums of their elements equal 1. Time stepping occurs over the generations ( i denotes the generation number). The parasite genotype fitness is described as Wp Mint h , and is thus determined by its possibility to infect hosts. Wp is a vector containing a fitness value per parasite T genotype. The host genotype fitness is described as Wh 1 VM int p . The host genotype fitness remains 1 unless the hosts are infected, in which case their fitness is reduced by virulence V . Wh is a vector containing one fitness value per host genotype. The new host and parasite allele frequencies are hi 1 hiWh M host hiWh sum M host hi 1 hi 1 / sum hi 1 hiWh pi 1 piW p M parasite piW p sum M parasite p W i p pi 1 pi 1 / sum pi 1 The vector of allele frequencies in the next generation is obtained by considering allele frequency changes due to infection, mutation from other alleles and mutation to other alleles. The allele frequencies are scaled in such a way that their sum remains 1. The contemporary performance is measured with respect to reference generation iref : C hiT M int piref . The allotemporary performance of past associations is measured with ref respect to the reference generation iref1 : Ag hiT M int piref 1 g with g representing the ref1 shift between host and parasite generations ( g is negative in past associations). The allotemporary performance of future associations is measured with respect to the reference generation iref2 : Ag hiT M int piref 2 g ( g is positive in future associations). ref2 Measuring future and past associations for different host populations has been performed to mimic the experimental set-up (Figure 1B). The same system is simulated ncarlo times independently for different sets of randomly chosen host and parasite allele frequencies at the start. The system is simulated for nbefore generations before measuring the infection rate in order to allow the system to develop stationary behavior. At generation iref1 and generation iref2 the contemporary and allotemporary performances are calculated for each independent Monte-Carlo run. The results for the contemporary and allotemporary performances are averaged over all Monte-Carlo runs. We took a shorter generation time into account or an increased mutation rate by including them in the standard MAM, but found that they did not account for the asymmetric effect found in the empirical results (Figure S1A&B). Modeled effects over time (Extended MAMs). We further extended the MAM with additional effects over time. With respect to traits determined by variation in the host, we estimated the most important parameter to be an increase in the number of the alleles that occurred over time in our host population. Genetic diversity is the basis that fuels Red Queen dynamics and is the weapon that the host uses in the arms race against its fast evolving parasites. Similar to dilution effects buffering host communities against parasitism, our hypothesis is that an increase in genetic diversity over time may act as a buffer in the sense of predictability against parasitism within a single host species. Such an effect has not yet been considered in earlier Red Queen coevolutionary models. With respect to mechanisms due to variation in the parasite, we included increased virulence of the parasites over time, because we have direct evidence (in Decaestecker et al. 2007) that experienced hosts have been confronted with more virulent parasites than naive hosts. We first investigated whether increasing the number of active alleles in the host affected the amplitude of Red Queen dynamics. At generation 150, one additional allele becomes active, i.e. the dimension of the host-parasite infectivity matrix is increased. The frequency of that allele starts at zero and slowly increases due to mutation. Three one locus models were simulated starting with 2, 3 or 4 alleles and ending with 3, 4 or 5 alleles respectively. We took a shorter generation time into account or an increased mutation rate by including it in the extended MAM, but did not found that it changed the asymmetric effect when increased host genetic diversity over time was included into the model (Figure S1C). We could analogous have investigated whether the loss of parasite alleles due to drift induced the damped effect. However, we consider this as unlikely given that the parasite population tended to increase over time (Decaestecker et al. 2004), thus scenarios involving drift are not likely to explain the pattern we observed. We then studied the effect of increased virulence over time on the Red Queen based infectivity dynamics. From the beginning to generation iVmin , the virulence is kept constant to Vmin . Between generation iVmin and generation iVmax , the virulence is linearly increasing. After iVmax , the virulence is kept constant to Vmax . The MAM has been simulated for three different virulence levels ( Vmin 0.60 , Vmin 0.80 , and a reference simulation in which the virulence level is kept at V 0.95 ). Immigration is also a strong candidate to explain this increase in allelic diversity that the host can use to resist the parasite. Nevertheless, immigration has been estimated to be low in this pond, given the low genetic differentiation that has been detected between the Daphnia populations from the sediment depths of this pond. Low Fst values were detected among the temporal replicates (i.e. sediment cores indicated strong stability in the genetic structure of our host population, see Decaestecker et al. 2007), which suggests that immigration and the establishment of new, successful genotypes has been a rare event in the pond we studied. This is further strengthened by the gene flow paradox and the associated monopolisation hypothesis, which assumes that founder effects due to a small number of genotypes can have long lasting genetic implications in the host population. In such a scenario, local adaptation and rapid population growth of a few founder clones colonizing a new habitat result in the effective monopolization of resources, yielding a strong priority effect and the establishment of a limited number of clones. This is an effect that limits gene flow between populations and which is typically present in the zooplankton ponds, one of which we study here (De Meester et al. 2002). A number of mechanisms associated with evolved “experience” in the host do not involve a role for genetic diversity, but cannot be excluded at present. For example, there is proof for maternal transfer of strain-specific immunity with respect to Pasteuria ramosa in Daphnia (Little et al. 2003, Current Biology). Frost et al. (2010, Oecologia) suggested that offspring from food quality stressed mothers are more susceptible to Pasteuria infection in Daphnia. One way in which such maternal effects may be realized is through transgenerational inheritance of environmentally induced epigenetic changes. Phenotypic variation has in some cases been attributed to epigenetic methods of inheritance and may thus have influenced Red Queen dynamics (Mostowy et al. 2012). Given that our experiment substantially controlled for maternal effects, we assume that epigenetic effects were absent from our experiment. Moreover, as shown by Mostowy et al. (2012), epigenetic effects tend to stabilize allele frequency dynamics and therefore would have resulted in the opposite pattern from the one we observed. Table S1. Description of the model parameters used in all simulations unless specified otherwise. number of Monte Carlo runs ncarlo 100 number of generations before collecting statistics nbefore 100 number of generations while collecting statistics nwhile 151 maximal shift between generations nshift 60 first reference host generation iref1 120 second reference host generation iref2 180 number of loci nloci 1 number of alleles nallele 4 number of genotypes ngenotype nallelenloci 4 Virulence V 0.95 host mutation probability host 10-6 parasite mutation probability parasite 10-6 interaction matrix (represents infection) M int host mutation matrix M host parasite mutation matrix M parasite host allele frequencies h parasite allele frequencies p parasite genotype fitness Wp Table S2. Infection success, standard error (SE), lower and upper 95% confidence limit (CL), and sample size for each experiment × host depth × parasite depth combination. The first column contains the factor level combination x:y:z in which x indicates the experiment (core 1 or core 2), y the host depth (1 or 7 in core 1, and 1 or 9 in core 2), and z the parasite depth (1 to 8). Infection success SE lower CL upper CL N 1:1:1 0.8125000 0.07967218 0.65634540 0.9686546 24 1:1:2 0.6250000 0.09682458 0.43522730 0.8147727 25 1:1:3 0.6666667 0.09428090 0.48187949 0.8514538 25 1:1:4 0.5909091 0.09833322 0.39817953 0.7836387 25 1:1:5 0.7857143 0.09951865 0.59066132 0.9807673 17 1:1:6 0.7272727 0.08734263 0.55608432 0.8984611 26 1:1:7 0.5600000 0.09552971 0.37276520 0.7472348 27 1:1:8 0.6000000 0.15491933 0.29636369 0.9036363 10 1:7:1 0.6666667 0.09072184 0.48885512 0.8444782 27 1:7:2 0.5833333 0.09487917 0.39737357 0.7692931 27 1:7:3 0.5000000 0.09622504 0.31140238 0.6885976 27 1:7:4 0.4230769 0.09507947 0.23672459 0.6094293 27 1:7:5 0.5882353 0.11600156 0.36087641 0.8155942 18 1:7:6 0.6666667 0.09245003 0.48546793 0.8478654 26 1:7:7 0.8695652 0.06481356 0.74253297 0.9965975 27 2:1:1 0.5652174 0.10119015 0.36688835 0.7635464 24 2:1:2 0.4347826 0.10119015 0.23645357 0.6331116 24 2:1:3 0.3750000 0.09882118 0.18131405 0.5686859 24 2:1:4 0.3636364 0.09819304 0.17118154 0.5560912 24 2:1:5 0.2608696 0.08963273 0.08519264 0.4365465 24 2:1:6 0.2857143 0.09631427 0.09694179 0.4744868 22 2:1:7 0.4000000 0.10215078 0.19978814 0.6002119 23 2:9:1 0.3888889 0.11490439 0.16368043 0.6140973 18 2:9:2 0.7058824 0.11051017 0.48928640 0.9224783 17 2:9:3 0.6470588 0.11590404 0.41989107 0.8742266 17 2:9:4 0.9285714 0.06883029 0.79366653 1.0634763 14 2:9:5 0.1428571 0.09035079 -0.03422715 0.3199414 15 2:9:6 0.7692308 0.11685454 0.54020007 0.9982615 13 2:9:7 0.1333333 0.08777075 -0.03869417 0.3053608 15 Figure S1. Integration of shorter generation times and faster mutation rate for the parasite in comparison with the host. Infectivity dynamics with shorter parasite generation time (A) and faster mutation rate (B) in the standard MAM and the extended MAM with increasing active alleles over time (C). Reading from left to right is from positive time shifts representing naive hosts (confronted with future associations) to negative time shifts representing experienced hosts (confronted with past parasites). Although both effects show dampening in the standard MAM, they do not show asymmetry in the dynamics between past (negative time shifts, experienced host) and future (positive time shifts, naive hosts) associations (Figures A&B), whereas including an increase in the number of active alleles over time does (Figure C), independently of whether the generation time and the mutation rate between the host and the parasite differ. The number of active alleles (at the start situation in C) is 3. Figure S2. Results of the cross-infection experiment. Parasite infectivity averaged by clone depth and parasite depth. Experiment 1 in A) experienced, B) naive clones; Experiment 2 in C) experienced, D) naive clones. Error bars represent standard errors. Depth numbers are labeled from young to old depths (1 to 8) respectively. Figure S3. Effect of increased parasite virulence over time according to an extended MAM. Parasite infectivity (W, allo- and contemporary performance) versus time shift (D) of the parasite to the host according to an extended MAM incorporating an increase in parasite virulence. Reading from left to right is from positive time shifts representing naive hosts (confronted with future associations) to negative time shifts representing experienced hosts (confronted with past parasites). Time shift zero indicates contemporary associations. The infectivity is monitored for the different hosts in accordance with the experimental data: the most naive hosts are infected by all parasites for studying future associations, whereas the most experienced hosts are infected by the same set of parasites for studying past associations. The number of active alleles is 4. Reference List Mostowy, R., Engelstadter, J. & Salathe, M. (2012). Non-genetic inheritance and the patterns of antagonistic coevolution. BMC Evol. Biol., 12, 93.