GSE

G enetics Selection Evolution

Methods to estimate effective population size using pedigree data: Examples in dog, sheep, cattle and horse

Leroy et al.

Central

Leroy et al. Genetics Selection Evolution 2013,45:1 http://www.gsejoumal.org/content/45/1/1

G enetics Selection Evolution

RESEARCH Open Access

Methods to estimate effective population size using pedigree data: Examples in dog, sheep, cattle and horse

Grégoire Leroy1,2*, Tristan Mary-Huard3, Etienne Verrier1,2, Sophie Danvy4, Eleonore Charvolin2 and Coralie Danchin-Burge5

Abstract

Background: Effective population sizes of 140 populations (including 60 dog breeds, 40 sheep breeds, 20 cattle breeds and 20 horse breeds) were computed using pedigree information and six different computation methods. Simple demographical information (number of breeding males and females), variance of progeny size, or evolution of identity by descent probabilities based on coancestry or inbreeding were used as well as identity by descent rate between two successive generations or individual identity by descent rate.

Results: Depending on breed and method, effective population sizes ranged from 15 to 133 056, computation method and interaction between computation method and species showing a significant effect on effective population size (P < 0.0001). On average, methods based on number of breeding males and females and variance of progeny size produced larger values (4425 and 356, respectively), than those based on identity by descent probabilities (average values between 93 and 203). Since breeding practices and genetic substructure within dog breeds increased inbreeding, methods taking into account the evolution of inbreeding produced lower effective population sizes than those taking into account evolution of coancestry. The correlation level between the simplest method (number of breeding males and females, requiring no genealogical information) and the most sophisticated one ranged from 0.44 to 0.60 according to species.

Conclusions: When choosing a method to compute effective population size, particular attention should be paid to the species and the specific genetic structure of the population studied.

Background

In population genetics, different tools are used to assess genetic diversity for conservation purposes and one of the most commonly used indicators is the effective population size (Ne) developed by Wright [1]. Ne is defined as the number of reproducing individuals, bred in an idealized population in which all individuals are of the same sex and selfing is permitted, and that leads to the same decrease of genetic diversity than the population being studied [2]. However, several genetic diversity indicators have been proposed and the most classical ones are

* Correspondence: gregoire.leroy@agroparistech.fr

1AgroParisTech, UMR1313 Génétique Animale et Biologie Intégrative, 16 rue Claude Bernard, F-75321, Paris 05, France

2INRA, UMR1313 Génétique Animale et Biologie Intégrative, Domaine de Vilvert, F-78352, Jouy-en-Josas, France

Fulllist of author information is available at the end of the article

Bio Med Central

genetic drift through temporal changes in allele frequencies (variance of effective population size), increase in homozygosity (inbreeding effective population size), or the rate at which unique alleles are lost (eigenvalue effective population size) [3,4]. Moreover, different information sources (demographic information, pedigree or molecular data) can be used to estimate Ne. Therefore, when estimating Ne, it is important to know precisely which process is ongoing and to have the information used to assess it [3].

Until the recent development of dense single nucleo-tide polymorphism (SNP) chips, it was generally recommended to assess genetic variability within a population from pedigree data if available, which is often the case in captive or domestic animal populations [3,4]. On the basis of demographic/pedigree data, several methods have been proposed to compute Ne. Ideally, they should

© 2013 Leroy et al.; licensee BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, anc reproduction in any medium, provided the original work is properly cited.

lead to the same Ne estimate [5,6] but they differ in terms of which Wright-Fisher properties (among others) are considered [3]. For instance, variance of progeny size [6], an indicator of both change in allele frequency and inbreeding (at least for unselected populations), is frequently used to compute Ne. A large number of methods also focus on the increase in homozygosity over generations by measuring Identity By Descent (IBD) probability. IBD probability represents the probability that two randomly chosen alleles of an individual are inherited from the same ancestor. Inbreeding F and coancestry C (also called kinship) coefficients are two classical genealogical estimators of IBD probability [7] that differ according to whether the considered alleles are from a single individual, or two individuals, respectively. The relation between IBD and Ne is based on the classical formula

Ne = 1/2AIBD.

where AIBD is the rate of IBD, classically estimated by the rate of inbreeding AF as AIBD, i.e. the evolution of the average coefficient of inbreeding F over time [2]. However, recently, new methods have been proposed to compute AF from an approximate rooting of individual inbreeding coefficients based on pedigree knowledge (Equivalent complete generations, EqG) [8]. Cervantes et al. [9] have also suggested using coancestry instead of inbreeding for IBD estimation.

All these methods do not differ only in terms of the indicator or force observed, but also in terms of the time scale investigated and the amount of available information. Moreover, they are more or less sensitive to the level of pedigree knowledge and to some parameters related to breeding conditions, such as the existence of population subdivisions or departure of the random mating hypothesis, which may lead to biased Ne estimates. Depending on the context and the authors, one or several of these methods have been applied to domestic breeds [10-14] and captive animal populations [15,16]. More specifically, the fact that in a number of breeds, no pedigree information is available, the simplest approximation of Ne (computed on the basis of number of breeding males and females) has been used to classify the endangerment level of breeds by the European Association for Animal Production (EAAP), and the Food and Agriculture Organisation (FAO).

Our study aimed at comparing several methods used to estimate Ne from pedigree data for a wide range of domestic animal populations. One hundred and forty breeds from four different species, i.e. dog, sheep, cattle and horse, were used. These include intensively selected breeds with large current population sizes, as well as endangered breeds benefiting from conservation programs. Six different methods for computing Ne were

compared in order to provide practical advice to breeders and stakeholders, for choosing endangerment thresholds according to species and for predicting Ne accurately with more or less sophisticated methods.

Methods

Breeds studied

Pedigree files for 60 dog, 40 sheep, 20 cattle and 20 horse breeds were extracted from French national data bases. For each species, breeds were chosen to represent a wide range of situations i.e. actual population size, en-dangerment status (28 populations among the sheep, cattle, and horse breeds studied have received financial support from the French government through subsidies for endangered breeds), breeding purpose (for example, selection for meat or milk), or geographical origin (local, imported or transnational populations).

In order to define the reference populations, generation intervals (T) were computed in the four pathways (see below), as the average age of parents when their useful offspring are born (i.e. offspring, which in turn become parents) over a 10 year period before a reference year (2005 for dog breeds (see [10]), and 2007 for sheep, cattle and horse breeds). Reference populations were defined as all the individuals (or only females for sheep and cattle breeds, given the small number of males raised in these species) with both parents known, born during a generation interval period before the reference year.

Methods used to estimate effective population size Ne Method based on sex ratio: Nes

Wright's model [1] for estimating Nes is based on sex ratio. This very simple method is supposed to reflect the increased effects of both inbreeding and variance of progeny size under several assumptions, including random mating, no selection and random variation of progeny size across parents. Computation of Nes only requires the estimated numbers of breeding males (M) and females (F) in the reference population and follows equation (1):

4MF M + F'

Method based on the variance of progeny size: Nev This method is more sophisticated than the previous one since it directly takes into account the observed variance of progeny size [6]. Parents of the reference population are considered as a group of useful offspring. In each pathway (mm = sire-sire, mf = sire-dam, fm = dam-sire or ff = dam-dam), observed variance (o2) and covariance (o) of progeny size are computed considering

those individuals and their own parents (i.e. the grandparents of the reference population). Nev is then computed using equation (2) in which Mr and Fr are the numbers of new male and female parents beginning to reproduce each year averaged over the 10 years before the reference year:

16MrT 1

2 Mr 2 + a im + 2-^ O

2 + °ff + 2 M 0fmff + \M

Ma2 fJ 2

Method based on inbreeding rate between two successive generations: NeFt

Considering two successive generations t and t-1, inbreeding rate (AFt) can be computed using equation (3) according to [2], in which Ft+1 is the average coefficient of inbreeding of the reference population, and Ft the average coefficient of inbreeding of their parents:

Ft+1 - Ft 1- Ft

calculated according to equation (4) in which Fi is the coefficient of inbreeding of individual i:

AFi = 1 - EqGi (1 - Fi).

Individual inbreeding rates are averaged as AF which leads to the following estimate of Ne:

NeFi = 1/2AF, (5)

while the standard error can be approximated as: 2

ONeFi ~ pn NeFi O A Fi

with n being the reference population size and aAFi the standard deviation of AFi.

Method based on individual coancestry rate: NeCi Cervantes et al [9] proposed to approximate coancestry rate ACij between two individuals i and j using equation (7), in which EqGi and EqGj are their respective equivalent complete traced generations, and Cij their coefficient of coancestry:

AC" = 1_ (EqGi+EqG/)/2

=2(1 - Ci/).

The effective population size can then be computed using the formula NeFt = 1/2AFt.

Method based on coancestry rate between two successive generations: NeCt

Taking into consideration the average coefficient of coancestry (C), the preceding model can be applied using Ct+1, the average coefficient of coancestry between the animals in the reference population, and Ct, the average coefficient of coancestry between the parents of this reference population, instead of Ft+1 and Ft. Since the number of coancestry coefficients to be computed within a population of size n is equal to n(n -1)/2, computation of average coancestry can be very time-consuming in large populations. Therefore, when n(n -1)/2 is larger than 100 000, 100 000 pairs of individuals are sampled at random with C estimated as the mean value of the 100 000 computed coefficients.

Method based on individual inbreeding rate: NeFi

Guttierez et al [8] proposed a method in which the level of pedigree knowledge of a given individual i is estimated by the number of equivalent complete generations traced (EqGj), computed as the sum over all known ancestors of the terms (1/2g), where g is the ancestor's generation number, which is equal to one for the parents, two for the grandparents, etc. [17]. The approximate individual inbreeding rate AFi is

When necessary, the coancestry over 100 000 pairs of sampled individuals was averaged, while the standard error of NeCi was approximated as:

°NeCi - -^FNeCi OAC/ ;

where k is the number of coefficients computed (either n(n -1)/2 or 100 000) and aACf is the standard deviation of A Cj.

In order to characterise the differences between average inbreeding F and coancestry C coefficients within reference populations, an equivalent of Nei's fixation index FIS [18] was computed as follows:

Fis - 1 - 1-F

All the pedigree analyses were performed using PEDIG software [19] and our own FORTRAN routine procedures.

In order to assess the ranges of Ne values according to species and methods, variance was analysed using SAS software (version 9.1.3 for windows), removing the results with a negative AIBD, with REML. Ne was considered as the dependent variable with the following model:

Nei/k - ^ + ai + fi/ + Y/ + / ;

where ai is the computation method, /j the species, and Yj the interaction between computation method and

species, all considered as explanatory fixed factors, and Eyk is the error term following a distribution N(0,0,). This model was chosen because when including breed as a random effect (here, breeds are considered as samples within each species) no significant effect was observed and because the model minimizes both Akaike Information (AIC) and Bayesian Information (BIC) Criteria (see Additional file 1: Table S1).

Finally, in addition to assessing ranges of Ne values, we examined if ranking was similar with the different methods by performing for each species, a Principal Component Analysis (PCA), considering breeds as observations and the six methods as variables.

Results and discussion

Demographic and genealogical parameters

Depending on breed and species, reference population sizes ranged from 110 (Barbet dog breed) to 2 122 041 (Holstein cattle breed). Only six cattle, one sheep and one horse breeds had a reference population size larger than 100 000 and only one cattle, six sheep, five horse and six dog breeds had a reference population size smaller than 1000 [see Additional file 2: Table S1 to S4]. The timeframe used to constitute the reference populations was computed on the basis of the average generation interval T for each species. The mean value of T across breeds varied among species (Table 1). In particular, horse breeds had quite larger T values than cattle, sheep or dog breeds (T-test, P < 0.001) whereas the level of pedigree knowledge was lower for horses than for the other species with an average EqG equal to 4.4 (P < 0.001) compared to 6.1, 6.0 and 5.8 in cattle, sheep and dog, respectively. This difference may be explained by the high level of crossbreeding in horse populations, since the pedigree files chosen here were restricted to purebred animals.

Similar to the heterogeneity of pedigree knowledge, average IBD coefficients (average C and F) ranged from 0.2% (C and F in Comtois horse breed) to 9.1% (C in the Barbet dog breed). Pearson correlations between EqG and IBD coefficients were equal to 0.45 and 0.23 for F and C, respectively, while they were larger (r = 0.67) between F and C [see Additional file 3: Figures S1, S2, S3]. Differences between C and F, measured by the fixation index FIS, varied more or less according to species. Average FIS values were negative in cattle, sheep and horse breeds i.e. -0.45%, -0.37%, -0.1%, respectively and positive i.e. 1.37% (with P < 0.001) in dog breeds, underlining the existence of population substructure within most dog breeds.

Variance analysis of effective population size estimates

Depending on breed, species and method, Ne values varied greatly i.e. between 15 (NeFt for the Saarloos Wolfdog

breed) and 133 056 (Nes for the Charolais cattle breed). When IBD rate was negative i.e. indicating a decrease in C or F between the last two generations, NeFt (four breeds) and NeCt (one breed) were not calculated.

Effects of "computation method" and "interaction of computation method x species" on Ne were significant (P < 0.0001) unlike that of "species" only (P = 0.06). Indeed, the different models applied produced contrasted results (Figure 1 and Table 1) i.e. Ne estimates were much larger with Nes (4425 on average) and, to a lesser extent, with Nev (356 on average) than with NeFt (93), NeFi (138), NeCt (160) and NeCi (203), although some differences were observed among these last four methods. In relation to the positive FIS values obtained for dog breeds, Ne values were higher with the two methods based on coancestry C (NeCi = 204 and NeCt = 241 on average) compared to those based on inbreeding F (NeFi = 89 and NeFt = 80 on average) (P < 0.0001). Such a significant difference was not observed for the other species. As illustrated in Table S5 of Additional file 2, residual standard deviations varied with "computation method" and "species" i.e. for IBD methods: they ranged from 54 (NeFi for dog) to 253 (NeCi for cattle); for Nes, they reached 36 268 for cattle. This result justified the computation of an error component specific for "computation method" and "species". With the methods based on IBD rate, within-population standard errors (s.e.) ranged from 0.1 to 10.1 for NeCi and from 0 to 172.9 for NeFi. Among the 140 breeds studied here, s.e. mean values were equal to 1.3 and 7.0 for NeCi and NeFi, respectively (s.d. mean values across breeds were equal to 1.6 and 20.0, respectively; results not shown).

Principal component analysis of effective population size estimates

Results of the principal component analysis showed that the two main components explained between 74% (dog) and 87% (cattle) of the total inertia depending on the species considered. Two tendencies were observed. For cattle, each variable was highly correlated with the first component (r > 0.72) [see Additional file 4], while for dog, NeFi and NeFt were correlated weakly with the first component (r = 0.03 and 0.22, respectively) but highly with the second component (r = 0.80 for both variables). For sheep and horse, intermediate values were obtained. These results agree with the Kendall correlations computed between each method (Table 2). For dog, NeFi and NeFt were moderately correlated with the other estimates (below 0.36 compared to above 0.45 in all other cases). From a general point of view, NeCi was highly correlated with the other estimates (0.52 on average) while NeFt was moderately correlated (0.33 on average).

Figure 2 illustrates the differences in Ne values for the different methods according to whether a breed is receiving or not financial support because of its endangered

Table 1 Genealogical parameters and effective population sizes for the 140 breeds studied averaged for each species

IBD methods

Species Breed nb T EqG Fis % Nea Neat NeFi NeFt Nes Nev

Cattle 20 5.4 [4-7.2] 6.1 [3.4 -8.3] -0.45 [-1.87-1.44] 245 [55-958] 91 [27-242] 182 [58-646] 100 [35-204] 21,648 [208-133056] 934 [108-4420]

Sheep 40 3.6 [2.9-4.1] 6.0 [2.6 -10.3] -0.37 [-4.28-2.44] 189 [28-429] 68 [18-142] 191 [38-675] 95 [21-375] 1502 [30-13736] 407 [46-1812]

Horse 20 9.6 [6.8-13.7] 4.4 [1.8 -7.6] -0.1 [- 1.98-2.39] 184 [33-520] 175 [44-799] 135 [22-321] 125 [33-257] 1906 [111 -6349] 487 [53-2022]

Dog 60 4.1 [2.7-5.1] 5.8 [3-9 .2] 1.37 [■ -2.87-4.7] 204 [21-692] 241 [17-1451] 89 [22-392] 80 [15-510] 1472 [37-6041] 471 [35-1443]

Total 140 4.9 [2.7-13.7] 5.7 [1.8 -10.3] 0.41 [ -4.28-4.7] 203 [21-958] 160 [17-1451] 138 [22-675] 93 [15-510] 4425 [30-133056] 356 [35-4420]

IBD = identity by descent; nb = number; T = average generation length in years; EqG = number of equivalent generations; Fis = fixation index; Nea = method based on individual coancestry rate; Nea = method based on coancestry rate between two successive generations; NeFi = method based on individual inbreeding rate; NeFt = method based on inbreeding rate between two successive generations ; Nes = Ne method based on sex ratio; Nev = method based on variance of progeny size; in brackets, minimal and maximal values.

100000 10000 1000 100-110-11

□ NeCi

□ NeCt

□ NeFi

□ NeFt

□ Nes

□ Nev

Cattle

Sheep Horse Dog

Figure 1 Average effective population sizes according to species and methods, using a logarithmic scale. Standard errors are indicated.

status (this is true for some cattle, horse and sheep breeds but not for rare dog breeds, which do not receive public financial help). With models NeCt and NeFt, Ne rankings did not differ significantly between endangered and non-endangered breeds. With the other models, Ne values (P < 0.01) were lower for endangered than non-endangered breeds although they were not entirely discriminated.

Discussion

This study allowed us to analyse the specificities of each of the four included species with regards to the assessment of their effective population size estimated with different approaches.

Table 2 Kendall correlations between methods used to estimate Ne for each species

Sheep Cattle IBD methods

Ned NeCt NeFi NeFt Nes Nev

IBD methods NeC 0.77 0.75 0.55 0.44 0.72

Nect 0.48 0.64 0.61 0.32 0.59

NeFi 0.70 0.50 0.65 0.36 0.51

NeFt 0.31 0.45 0.50 0.16 0.33

Nes 0.60 0.23 0.41 0.09 0.62

Nev 0.70 0.28 0.52 0.13 0.77

Dog Horse IBD methods

Ned NeCt NeFi NeFt Nes Nev

IBD methods NeC 0.53 0.33 0.23 0.53 0.74

NeCt 0.63 0.17 0.31 0.54 0.49

N Fi 0.29 0.36 0.61 0.08 0.13

NeFt 0.17 0.36 0.55 0.11 0.10

Nes 0.45 0.58 0.19 0.27 0.71

Nev 0.59 0.50 0.12 0.16 0.68

IBD = identity by descent; NeCi = method based on individual coancestry rate; NeCt = method based on coancestry rate between two successive generations; NeFi = method based on individual inbreeding rate; NeFt = method based on inbreeding rate between two successive generations; Nes = Ne method based on sex ratio; Nev = method based on variance of progeny size.

1000000 100000 10000 1000 100 10 1

II N M il M I

NeCi Neat" NeFi NeF,"S Nes Nev

Figure 2 Effective population size of cattle, horse, and sheep breeds, using a logarithmic scale. red X = breeds receiving

endangered breed subsidies; blue ◊ = other breeds; difference ir ranking between both categories using the Wilcoxon test: ns non significant, ** P < 0.01, *** P < 0.001.

Genealogical parameters were quite similar to previously reported results [10-13,20-27], although for horse, pedigree knowledge was relatively low, because horse breeds' pedigree were restricted to individuals belonging to each breed. We would also like to underline that the Pearson correlations between EqG and IBD estimators were moderate, indicating that the regression suggested by Nagy et al. [26] between pedigree knowledge and IBD is not straightforward.

The effective population sizes computed here were on average of the same magnitude as those reported in other studies using similar approaches for cattle [14,20,21], sheep [22,23], or horse [11,27]. For dog, previous studies [10,24-26] applied inbreeding approaches to compute Ne, with average values close to 100 (ranging from 17 to 1090), which is in agreement with our results.

In this data set, the largest populations concerned cattle as expected, given the high level of homogenization in this species due to intense selection. For instance, in France, out of 46 different cattle breeds, the main five breeds (namely, Holstein, Charolais, Limousine, Montbéliarde and Blonde d'Aquitaine) account for 80% of the total cattle stock (estimated to be 8 million cows; source: France Génétique Elevage, www.france-genetique-elevage.fr/). Among the six methods used to compute Ne for cattle populations, those based on sexratio (Nes) and those taking into account variance of progeny size (Nev) or directly measuring IBD increase produced very different results (Figure 1). This is explained by the wide use of artificial insemination (AI) in cattle (particularly in dairy cattle) with a small number of sires producing thousands of offspring, although cattle have a low prolificacy compared to dogs. Such a contrast was not observed for sheep because (among other reasons) AI is not as developed in sheep as in cattle and a ram cannot provide as many doses as a bull. For dog, the most striking result was the difference between methods based on coan-cestry C and those on inbreeding F evolutions, which is linked to the positive FIS values found for this species. Under panmixia, both C and F parameters are assumed to differ only by SIED, the average coancestry of reproducers

corresponding to the average inbreeding of the next generation. This is why, in random mating conditions at least, it is expected that C is larger than F and thus that FIS is negative. This was not the case for most of the dog breeds (and some breeds of the other species) either because of the existence of subpopulations or of particular breeding practices such as a high frequency of mating between close relatives [28]. As a consequence, when F was used instead of C to compute Ne, on average, Ne was divided by more than two in dogs. Indeed, it has been shown that if inbreeding is used as an estimator of population genetic diversity bias can occur because of population substructure [11,29]. Such phenomena are often observed for dog breeds. Since all previous reports on Ne of dog breeds were based on F coefficients, they must be largely underestimated. From a more general point of view, for a domestic or captive population with more or less substructure, the method based on coancestry is the most appropriate to compute Ne.

Table 3 lists the factors and assumptions that distinguish the six genealogical methods that were applied to compute Ne. First, these methods measured different parameters; some methods used demographic parameters [6] to assess variance in allele frequencies and increase in inbreeding, i.e. number of reproducers for Nes and variance of their progeny size for Nev, whereas other methods used coancestry or inbreeding rate to measure the evolution of IBD probability directly. In addition, estimation of these rates differed with the method used, which, among other consequences, impacted the time scale considered. The advantage of methods based on IBD increases between successive generations (NeCt and NeFt) is the possibility of choosing the time length included in the computation model and thus analysing the evolution of IBD probability during a variable number of years or generations. However, they also have several weaknesses that are related with the fluctuation of

IBD over time because of changes in breeding schemes, registration of individuals without knowing their pedigree or sampling effects. Indeed, IBD can decrease over a given period, leading to a negative Ne value. This is a problem, particularly when analysing a large number of breeds in which case, determining a time period during which IBD does not decrease in any of the breeds is almost impossible. Here, we chose a relatively short period of time (two generations) to estimate NeCt and NeFt, and among the 280 estimations, negative values were observed in five cases only. In the literature, studies considering longer periods of time to compute Ne encountered the same problem even for a more or less small number of breeds [10,12,27]. Methods based on individual IBD probabilities (NeCi and NeFi) clearly overcome this problem, since the computation is based on the rooting of IBD coefficients by EqG. With these methods, knowledge of the whole pedigree is taken into account. However, this means that for breeds with different levels of pedigree knowledge, the time period considered will vary according to breed. Another difference in these methods is the sample considered and therefore the precision of Ne estimation. Since coancestry is averaged on a much larger number of coefficients than inbreeding (see Table 3), the precision of Ne estimation is expected to be higher in the first case, as underlined by Cervantes et al. [9]. For breeds with large current population sizes, it may be necessary to average coancestry on a sample of individual pairs (100 000 in our case) to overcome the problem of computing time. Even in such situations, standard error was on average five times lower with coancestry than with inbreeding.

The issue of minimum viable population sizes is not new and it has been suggested to use Ne thresholds of 50 and 500 for risks of extinction on the short or long runs, respectively [4]. Although the existence of these "magic numbers" has been discussed and criticized, they

Table 3 Characteristics of the different methods used to compute effective population size Ne

Method Genealogy required Parameters measured Indicator used to compute Ne Time period or number of generations taken into account Theoretical sample size for a reference population of size n

Nes no change in allele frequency / heterozygosity loss number of reproducers generation n -

Nev yes change in allele frequency / heterozygosity loss variance/covariance of progeny sizes generation n-1 -

NeFt yes heterozygosity loss inbreeding period or number of generations to be fixed n

NeCt yes heterozygosity loss coancestry period or number of generations to be fixed n x (n-1)

NeFi yes heterozygosity loss inbreeding allknown generations n

NeCi yes heterozygosity loss coancestry allknown generations n x (n-1)

NeCi = method based on individual coancestry rate; NeCt = method based on coancestry rate between two successive generations; NeFi = method based on individual inbreeding rate; NeFt = method based on inbreeding rate between two successive generations; Nes = Ne method based on sex ratio; Nev = method based on variance of progeny size.

do constitute an interesting tool for stakeholders [30]. According to the FAO [31], a breed can be categorized as critical if the total number of breeding females is less or equal to 100 or the total number of breeding males is less or equal to 5, and endangered if the total number of breeding females is less or equal to 1000 or the total number of breeding males is less or equal to 20. Since pedigree information is not always available, i.e. for livestock breeds in developing countries or wild populations, the FAO has based its recommendations on sex ratio considerations (similar to those in the Nes computation) to determine the level of endangerment of a breed. However, as underlined in our study and by Martyniuk [32], the FAO figures for breed risk-status do not provide a full picture of the level of genetic diversity.

Given the contrasted results obtained for cattle between the Nes and the more sophisticated methods, we recommend choosing a higher threshold when considering endangerment level of cattle in comparison to other species, at least in breeds in which animals are mainly bred via AI. Comparing rankings of Ne estimated with the method based on sex-ratio and the more sophisticated ones showed interesting results. In the comparison with the NeCi method, which does not suffer from bias linked to population substructure, sampling size or IBD decrease, the correlation ranged among species from 0.44 (cattle) to 0.60 (sheep). By contrast, correlations between Nev that takes variance of progeny size into account and NeCi were much larger and ranged ranging from 0.59 (dog) to 0.74 (horse). This indicates that, even if the number of reproducing males and females is a major explanatory factor for variation in effective population size, other parameters and, in particular, unbalanced progeny sizes may differ greatly according to breeds. Thus, caution must be taken when interpreting estimated effective population sizes.

According to the French law, a breed may receive financial support as an endangered breed, if it is considered as a French indigenous population and if the total number of females is below a threshold defined - by species - by the European Union (European Union Commission Regulation 445/2002 and 817/2002). As an example, the Clun Forest or the Finnish sheep breeds are not considered as endangered since they are not French. This explains why even if Ne is estimated with the method based on demographic parameters (Nes), some breeds receive financial support although they have a larger Ne than others which do not receive support. This discrepancy is even more pronounced with other methods that take into account other parameters impacting effective population size (Figure 2).

Among other methods to measure effective population size, molecular approaches may constitute an interesting option, especially if many markers are available. Indeed,

methods based on linkage disequilibrium may provide interesting and original information since they can estimate the evolution of effective population size over former generations [33]. When computing effective population size for the international Holstein breed, using between 3000 and 10 000 SNP and the linkage disequilibrium approach, de Roos et al. [34] reported Ne values ranging from 64 to 90 according to country, which are of the same order of magnitude as those calculated in our study with the most sophisticated methods NeCi = 93 and NeFi = 91. However, it should be underlined that similar to the pedigree-based methods, the different molecular methods may give divergent results depending on the sampling strategy or the parameter used to compute Ne (evolution of heterozygosity or variance of allele frequency over time, linkage disequilibrium,. ..) [35,36]. Moreover, given the cost of genotyping, pedigree knowledge will continue to represent a valuable information source in the coming years in many cases.

Conclusions

In this study, we show that indicators of effective population size may follow different trends depending on the species studied and, in particular, on the genetic structure existing within the breed. Further studies are necessary to improve the accuracy of genealogical methods, for instance taking better account of heterogeneity in pedigree knowledge. Finally, it must be stated, that for conservation issues, socio-cultural background is at least as important as effective population size, and should, when possible, be taken into account when assessing the endangerment level of a given breed (e.g., [37]).

Additional files

Additional file 1: Model selection. This file contains information about models tested for variance analysis of effective population size estimates.

Additional file 2: Genealogical parameters and effective population sizes for the 20 cattle breeds. The tables S1 to S4 provide genealogical parameters and Ne estimates for each breed species by species. Table S5 provides residualstandard deviations according to methods and species after variance analysis of effective population size estimates.

Additional file 3: Relation between equivalent complete generations traced EqG and inbreeding F (Figure S1), EqG and coancestry C (Figure S2), F and C (Figure S3) for the 140 breeds.

Figures S1, S2 and S3 show relations between genealogicalindicators according to species studied.

Additional file 4: Correlation circles from the principal component analysis considering the six effective population sizes computed for the four species independently. This figure shows correlations circle between computation methods and the two first components, after PCA have been independently performed for each of the four species.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

GL and EV jointly conceived the design of the study and discussed the results. GL, CDB and SD extracted the pedigree data for dog, cattle and sheep, and horse, respectively. GL computed the pedigree estimators. TMH performed the statisticalanalysis. GL wrote the first draft of the manuscript, which was then modified and discussed with co-authors. Allauthors read and approved the final manuscript.

Acknowledgements

The authors would like to thank the breeding associations for the data provided, Hélène Hayes and Wendy Brand-Williams for linguistic revision.

Author details

1AgroParisTech, UMR1313 Génétique Animale et Biologie Intégrative, 16 rue Claude Bernard, F-75321, Paris 05, France. 2INRA, UMR1313 Génétique Animale et Biologie Intégrative, Domaine de Vilvert, F-78352, Jouy-en-Josas, France. 3AgroParisTech, UMR518 Mathématiques et Informatique Appliquées, 16 rue Claude Bernard, F-75321, Paris 05, France. 4IFCE, F-61310, Le Pin au Haras, France. 5Institut de l'Elevage, 149 rue de Bercy, F-75595, Paris 12, France.

Received: 22 June 2012 Accepted: 30 November 2012 Published: 2 January 2013

References

1. Wright S: Evolution in Mendelian populations. Genetics 1931, 16:97-159.

2. Falconer DS, Mackay TFC: Introduction to Quantitative Genetics. 4th edition. Harlow: Longman Group Ltd; 1996.

3. Sjodin P, Kaj I, Krone S, Lascoux M, Nordborg M: On the meaning and existence of an effective population size. Genetics 2005, 169:1061-1070.

4. Harmon LJ, Braude S: Conservation of small populations: Effective population size, inbreeding, and the 50/500 rule. In An Introduction to Methods and Models in Ecology and Conservation Biology. Edited by Braude S, Low SB. Princeton, New Jersey, USA: Princeton University Press; 2010:125-138.

5. Gutiérrez JP, Cervantes I, Molina A, Valera M, Goyache F: Individual increase in inbreeding allows estimating effective sizes from pedigrees. Genet Sel Evol 2008, 40:359-378.

6. Hill WG: Effective size of populations with overlapping generations. Theor Pop Biol 1972, 3:278-289.

7. Malécot G: Les Mathématiques de l'Hérédité. Paris: Masson; 1948.

8. Gutiérrez JP, Cervantes I, Goyache F: Improving the estimation of realized effective population sizes in farm animals. J Anim Breed Genet 2009, 126:327-332.

9. Cervantes I, Goyache F, Molina A, Valera M, Gutiérrez JP: Estimation of effective population size from the rate of coancestry in pedigreed populations. J Anim Breed Genet 2011, 128:56-63.

10. Leroy G, Verrier E, Meriaux JC, Rognon X: Genetic diversity of dog breeds: within-breed diversity comparing genealogical and molecular data. Anim Genet 2009, 40:323-332.

11. Cervantes I, Goyache F, Molina A, Valera M, Gutiérrez JP: Application of individual increase in inbreeding to estimate realized effective sizes from real pedigrees. J Anim Breed Genet 2008, 125:301-310.

12. Groeneveld E, Westhuizen BD, Maiwashe A, Voordewind F, Ferraz JB: POPREP: a generic report for population management. Genet Mol Res 2009, 8:1158-1178.

13. Welsh CS, Stewart TS, Schwab C, Blackburn HD: Pedigree analysis of 5 swine breeds in the United States and the implications for genetic conservation. J Anim Sci 2010, 88:1610-1618.

14. Danchin-Burge C, Leroy G, Brochard M, Moureaux S, Verrier E: Evolution of the genetic variability of eight French dairy cattle breeds assessed by pedigree analysis. J Anim Breed Genet 2012,129:206-217.

15. Blackwell BF, Doerr PD, Reed JM, Walters JR: Inbreeding rate and effective population size: a comparison of estimates from pedigree analysis and a demographic model. Biol Cons 1995, 71:299-304.

16. Amstrong E, Leizagoyen C, Martinez AM, Gonzalez S, Delgado JV, Postiglioni A: Genetic structure analysis of a highly inbred captive population of the African antelope Addax nasomaculatus. Conservation and management implications. Zoo Biol 2010, 30:399-411.

17. Boichard D, Maignel L, Verrier E: The value of using probabilities of gene origin to measure genetic variability in a population. Genet Sel Evol 1997, 29:5-23.

18. Nei M: F-statistics and analysis of gene diversity in subdivided populations. Ann Hum Genet 1977,41:225-233.

19. Boichard D: PEDIG: a fortran package for pedigree analysis suited for large populations. In Proceedings of the 7th World Congress of Genetics Applied to Livestock Production: 19-23 August 2002; Montpellier.; 2002.

20. Mc Parland S, Kearney F, Rath M, Berry DP: Inbreeding trends and pedigree analysis of Irish dairy and beef cattle populations. J Anim Sci 2007, 85:322-331.

21. Gutiérrez JP, Altarriba J, Diaz C, Quintanilla R, Canon J, Piedrafita J: Pedigree analysis of eight Spanish beef cattle breeds. Genet Sel Evol 2003, 35:43-63.

22. Sorensen AC, Norberg E: Inbreeding in the Danish populations of five Nordic sheep breeds. Acta Agr Scand 2008, 58:1 -4.

23. Danchin-Burge C, Palhière I, François D, Bibé B, Leroy G, Verrier E: Pedigree analysis of seven small French sheep populations and implications for the management of rare breeds. J Anim Sci 2010, 88:505-516.

24. Calboli FCF, Sampson J, Fretwell N, Balding DJ: Population structure and inbreeding from pedigree analysis of purebred dogs. Genetics 2008, 179:593-601.

25. Voges S, Distl O: Inbreeding trends and pedigree analysis of Bavarian mountain hounds, Hanoverian hounds and Tyrolean hounds. J Anim Breed Genet 2009, 126:357-365.

26. Shariflou MR, James JW, Nicholas FW, Wade CM: A genealogical survey of Australian registered dog breeds. Vet J 2011, 189:203-210.

27. Nagy I, Curik I, Radnai I, Cervantes I, Gyovai P, Baumung R, Farkas J, Szendro Z: Genetic diversity and population structure of the synthetic Pannon White rabbit revealed by pedigree analyses. J Anim Sci 2010,88:1267-1275.

28. Leroy G, Baumung R: Mating practices and the dissemination of genetic disorders in domestic animals, based on the example of dog breeding. Anim Genet 2011, 42:66-74.

29. Leroy G: Genetic diversity, inbreeding and breeding practices in dogs: results from pedigree analyses. Vet J 2011, 189:177-182.

30. Rai UK: Minimum sizes for viable population and conservation biology. Our Nat 2003, 1:3-9.

31. FAO: The State of the World's Animal Genetic Resources for Food and Agriculture. Rome: FAO; 2007.

32. Martyniuk E, Pilling D, Scherf B: Indicators: do we have effective tools to measure trends in genetic diversity of domesticated animals? Anim Genet Res 2010, 47:31-43.

33. Corbin LJ, Liu AY, Bishop SC, Woolliams JA: Estimation of historical effective population size using linkage disequilibria with marker data. J Anim Breed Genet 2012, 129:257-270.

34. de Roos APW, Hayes BJ, Spelman RJ, Goddard ME: Linkage disequilibrium and persistence of phase in Holstein-Friesian, Jersey and Angus cattle. Genetics 2008, 179:1503-1512.

35. Verrier E, Leroy G, Blouin C, Mériaux JC, Rognon X, Hospital F: Estimating the effective size of farm animals populations from pedigree or molecular data: a case study on two French draught horse breeds. In Proceedings of the 9th World Congress on Genetics Applied to Livestock Production: 1-6 August 2010; Leipzig.; 2010.

36. Goyache F, Alvarez I, Fernández I, Pérez-Pardal L, Royo LJ, Lorenzo L: Usefulness of molecular-based methods for estimating effective population size in livestock assessed using data from the endangered black-coated Asturcón pony. J Anim Sci 2011, 89:1251-1259.

37. Lauvie A, Audiot A, Couix N, Casabianca F, Brives H, Verrier E: Diversity of rare breed management programs: Between conservation and development. Livest Sci 2011, 140:161-170.

doi:10.1186/1297-9686-45-1

Cite this article as: Leroy et al.: Methods to estimate effective population size using pedigree data: Examples in dog, sheep, cattle and horse. Genetics Selection Evolution 2013 45:1.