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Frontiers in Genetics logoLink to Frontiers in Genetics
. 2020 Feb 4;11:20. doi: 10.3389/fgene.2020.00020

Genomic Regions Associated With Skeletal Type Traits in Beef and Dairy Cattle Are Common to Regions Associated With Carcass Traits, Feed Intake and Calving Difficulty

Jennifer L Doyle 1,2, Donagh P Berry 1, Roel F Veerkamp 3, Tara R Carthy 1, Siobhan W Walsh 2, Ross D Evans 3,4, Deirdre C Purfield 1,*
PMCID: PMC7010604  PMID: 32117439

Abstract

Linear type traits describing the skeletal characteristics of an animal are moderately to strongly genetically correlated with a range of other performance traits in cattle including feed intake, reproduction traits and carcass merit; thus, type traits could also provide useful insights into the morphological differences among animals underpinning phenotypic differences in these complex traits. The objective of the present study was to identify genomic regions associated with five subjectively scored skeletal linear traits, to determine if these associated regions are common in multiple beef and dairy breeds, and also to determine if these regions overlap with those proposed elsewhere to be associated with correlated performance traits. Analyses were carried out using linear mixed models on imputed whole genome sequence data separately in 1,444 Angus, 1,129 Hereford, 6,433 Charolais, 8,745 Limousin, 1,698 Simmental, and 4,494 Holstein-Friesian cattle, all scored for the linear type traits. There was, on average, 18 months difference in age at assessment of the beef versus the dairy animals. While the majority of the identified quantitative trait loci (QTL), and thus genes, were both trait-specific and breed-specific, a large-effect pleiotropic QTL on BTA6 containing the NCAPG and LCORL genes was associated with all skeletal traits in the Limousin population and with wither height in the Angus. Other than that, little overlap existed in detected QTLs for the skeletal type traits in the other breeds. Only two QTLs overlapped the beef and dairy breeds; both QTLs were located on BTA5 and were associated with height in both the Angus and the Holstein-Friesian, despite the difference in age at assessment. Several detected QTLs in the present study overlapped with QTLs documented elsewhere that are associated with carcass traits, feed intake, and calving difficulty. While most breeding programs select for the macro-traits like carcass weight, carcass conformation, and feed intake, the higher degree of granularity with selection on the individual linear type traits in a multi-trait index underpinning the macro-level goal traits, presents an opportunity to help resolve genetic antagonisms among morphological traits in the pursuit of the animal with optimum performance metrics.

Keywords: cattle, genome-wide association study, linear type traits, single nucleotide polymorphism, skeletal, sequence

Introduction

Linear type traits have been used in both beef and dairy cattle since the early 20th century to characterize the skeletal characteristics of an animal (Berry et al., 2019). These type traits have previously been identified as being moderately to strongly genetically correlated with a range of performance traits in cattle including feed intake (Veerkamp and Brotherstone, 1997; Crowley et al., 2011), reproductive traits (Berry et al., 2004; Wall et al., 2005; Carthy et al., 2016), carcass merit (Mukai et al., 1995; Berry et al., 2019), animal value (Mc Hugh et al., 2010), and health (Ring et al., 2018). As type trait measurements are typically taken when an animal is young (Doyle et al., 2018), they may be useful as early predictors of the correlated traits which are often measured later in life or after the animal is slaughtered. While type traits are also moderately to strongly correlated with live-weight (Mc Hugh et al., 2010; Berry et al., 2019) and carcass weight (Conroy et al., 2010), none of these correlations are unity, implying that two animals with the same weight may be morphologically very different; for example, a tall animal with a short back may have the same (carcass) weight as a short animal with a long back. Therefore, including linear type traits in future genetic and genomic evaluations as part of a multi-trait evaluation including also the goal trait of interest may provide additional information over and above what could be gleaned from the goal trait alone.

While many genomic studies have been carried out on stature in both beef and dairy cattle (Pryce et al., 2011; Bolormaa et al., 2014), few studies have been published on the underlying genomic features contributing to differences in other skeletal linear type traits in either beef (Vallée et al., 2016) or dairy (Cole et al., 2011; Wu et al., 2013; Sahana et al., 2015) cattle. No previous study has attempted to identify quantitative trait loci (QTL) associated with the skeletal traits in multiple breeds or to compare and contrast detected QTLs to previously identified QTLs associated with correlated complex phenotypes such as carcass merit, feed intake and efficiency, and calving performance. Therefore, the objective of the present study was to identify genomic regions associated with five subjectively scored skeletal linear traits to determine if these associated regions are common in multiple beef and dairy breeds and also to determine if these regions overlapped with previously identified QTLs associated with other correlated performance traits.

Materials and Methods

Animal Care and Use Committee approval was not obtained for the present study as the data were obtained from the existing Irish Cattle Breeding Federation (ICBF) national database1.

Beef Phenotypes

Routine scoring of linear type traits is carried out on both registered and commercial beef herds by trained classifiers from the Irish Cattle Breeding Federation as part of the Irish national beef breeding program (Mc Hugh et al., 2010; Berry and Evans, 2014). Five skeletal type traits scored on a scale of 1 to 10 on beef cattle describing the wither height (WH), back length (BL), chest depth (CD), chest width (CW), and hip width (HW) were included for analysis in the present study (Supplementary Table S1). Data on these linear type traits were available on 147,704 purebred Angus (AA), Charolais (CH), Hereford (HE), Limousin (LM), or Simmental (SI) beef cattle, all scored between the ages of 6 and 16 months between the years 2000 and 2016, with only one (i.e., the first) record per animal retained.

Animals were discarded from the dataset if the sire, dam, herd, or classifier was unknown. Only data from classifiers that scored ≥ 100 animals since the year 2000 were kept. Animals were also discarded from the dataset if the parity of the dam was unknown; parity of the dam was subsequently recoded into 1, 2, 3, 4, and ≥ 5. Contemporary group was defined as herd-by-scoring date generated separately per breed. Each contemporary group had to have at least five records. Following edits, data were available on 81,200 animals, aged between 6 and 16 months, consisting of 3,356 AA, 31,049 CH, 3,004 HE, 35,159 LM, and 8,632 SI.

Dairy Phenotypes

Scoring of linear type traits in the Irish dairy herd is undertaken by trained classifiers from the Irish Holstein-Friesian Association (Berry et al., 2004). For the purpose of the present study, three skeletal linear type traits that closely align to one of the five beef skeletal traits were selected for analysis. These traits were stature (STA which is comparable to WH in beef), rump width (RW which is comparable to HW in beef), and chest width (CWD which is comparable to CW in beef). In dairy cattle, these traits were scored on a scale of 1 to 9 (Supplementary Table S2) with the direction of scale the same as the comparable traits in the beef herd. Linear type trait information on 239,776 first parity cows was available between the years 2000 and 2016; only the first record per cow was retained.

Animals were discarded from the dataset if the sire, dam, herd, or classifier was unknown. Records were also discarded from the data set if scored after 10 months of lactation. Only data from classifiers that scored > 100 animals since the year 2000 were retained. Contemporary group was defined as herd-by-scoring date and each contemporary group had to have at least five records. Following edits, data were available on 117,151 primiparous Holstein-Friesian cows (HF) aged between 23 and 42 months at scoring.

Generation of Adjusted Phenotypes

Prior to inclusion in the analysis, all beef cattle phenotypes were adjusted, within breed, in ASREML (Gilmour et al., 2009) using the model:

yijklm = μ + HSDm + Sexj + AMk + DPl + animali + eijklm

where yijklm is the linear type trait, μ represents the population mean, HSDm is the fixed effect of herd-by-scoring date (m = 11,130 levels), Sexj is jth sex of the animal (male or female), AMk is the fixed effect of the age in months of the animal (k = 11 classes from 6 to 16 months), DPl is the fixed effect of the parity of the dam (l = 1, 2, 3, 4, and ≥5), animali is the random additive effect of animal i, and eijklm is the random residual effect. The adjusted phenotype was the raw phenotype less the fixed effect solutions of HSD, Sex, AM, and DP.

The dairy phenotypes were also adjusted in ASREML (Gilmour et al., 2009) using the model:

yijklm = μ + HSDm + AMj + CMk + LSl + animali + eijklm

where yijklm is the linear type trait, μ represents the population mean, HSDm is the fixed effect of herd-by-scoring date (m = 9,591 levels), AMj is the fixed effect of the age in months of the animal at scoring (j = 20 levels from 23 to 42 months), CMk is the fixed effect of the month of calving (k = 12 levels from 1 to 12), LSl if the fixed effect of the stage of lactation of the animals (l = 10 levels from 1 to 10 reflecting number of months of lactation), animali is the random additive effect of animal i, and eijklm is the random residual effect. The adjusted phenotype was the raw phenotype less the fixed effect solutions of HSD, AM, CM, and LS.

Genotype Data

Of the edited dataset of 81,200 beef animals and 117,151 dairy animals with linear type trait information, 23,943 animals from six breeds (1,444 AA, 6,433 CH, 1,129 HE, 8,745 LM, 1,698 SI, and 4,494 HF) also had genotype information available. These genotypes were imputed to whole genome sequence (WGS) as part of a larger dataset of 638,662 genotyped animals from multiple breeds as detailed by Purfield et al. (2019). All 638,662 genotyped animals were genotyped using either the Bovine Illumina SNP50 (n = 5,808; 54,001 SNPs), the Illumina High Density (HD; n = 5,504; 777,972 SNPs), the Illumina 3k panel (n = 2,256, 2,900 SNPs), the Illumina LD genotyping panel (n = 15,107, 6,909 SNPs) or a bespoke genotype panel (IDB) developed in Ireland (Mullen et al., 2013) which was either on version 1 (n = 28,288; 17,137 SNPs), version 2 (n = 147,235; 18,004 SNPs) or version 3 (n = 434,464; 53,450 SNPs). Each animal had a call rate ≥ 90%. Only autosomal SNPs, SNPs with a call rate ≥ 90% and those with a known chromosome and position on UMD 3.1 were retained for imputation.

Imputation to HD was carried out on all genotyped animals using a two-step approach in FImpute2 with pedigree information (Sargolzaei et al., 2014); this involved imputing animals genotyped on the 3k, LD, or IDB panels to the Bovine SNP50 density and subsequently imputing all resulting genotypes (including the Bovine SNP50 genotypes) to HD using a multi-breed reference population of 5,504 influential sires genotyped on the HD panel. Imputation to WGS was then undertaken using a reference population of 2,333 Bos Taurus animals of multiple breeds from Run6.0 of the 1000 Bulls Genomes Project by first phasing all 638,662 imputed HD genotypes using Eagle (version 2.3.2; Loh et al., 2016) and subsequently imputing to WGS using minimac3 (Das et al., 2016).

Quality control edits were imposed on the imputed sequence genotypes within each of the six breeds separately; all SNPs with a minor allele frequency (MAF) ≤ 0.002 were removed and regions of poor WGS imputation accuracy, identified using 147,309 verified parent-progeny relationships as previously described by Purfield et al. (2019), were then removed. Following all SNP edits, 16,342,970, 17,733,147, 16,638,022, 17,803,135, 17,762,681, and 15,542,919 autosomal SNPs remained for analysis in the AA, CH, HE, LM, SI and HF populations, respectively.

Association Analyses

The association analyses were performed, within each breed separately, using a mixed linear model in Genome-wide Complex Trait Analysis (GCTA) (Yang et al., 2011). Autosomal SNPs from the original HD density panel (i.e., 734,159 SNPs) were used to construct the genomic relationship matrix (Yang et al., 2010). The model used for the within-breed analysis was:

y=μ+xb+u+e

where y is a vector of preadjusted phenotypes, μ is the overall mean, x is the vector of imputed genotypes, b is the additive fixed effect of the candidate SNP to be tested for association, u ∼ N(0,Gσu2) is the vector of additive genetic effects, where G is the genomic relationship matrix calculated from the imputed HD SNP genotypes, and σu2 is the additive genetic variance, and e ∼ N(0,Iσe2) is the vector of random residual effects, with I representing the identity matrix and σe2 the residual variance.

QTL Detection, Gene Annotation, and Variance Explained

A significance threshold of p ≤ 1 × 10–8 and a suggestive threshold of p ≤ 1 × 10–5 was applied genome-wide for each SNP in each trait as per Wang et al. (2016). Significant and/or suggestive SNPs that were within 500 kb of each other were classed as being within the same QTL. Genes within these QTLs were then identified using Ensembl 94 (Zerbino et al., 2017) on the UMD 3.1 bovine genome assembly. Cattle QTLdb2 was used to identify if any of the QTLs identified within the present study had previously been associated with any other traits in beef or dairy cattle. To identify QTL regions that were suggestive in more than 1 breed, each chromosome was split into 1 kb genomic windows and windows containing suggestive SNPs (p ≤ 1 × 10–5) were compared across the breeds.

The proportion of genetic variance of a trait explained by a SNP was calculated as:

2p(1-p)a2σg2

where p is the frequency of the minor allele,a is the allele substitution effect and σg2 is the genetic variance of the trait in question as calculated from the association analyses.

Meta-Analyses

Following the within breed analyses, meta-analyses were conducted for CD and BL across the five beef breeds and for WH, CW, and HW across all six breeds using the weighted Z-score method in METAL (Willer et al., 2010). METAL uses the p-values and the direction of SNP effects from the individual analysis and weights the individual studies based on the sample size to calculate an overall Z-score:

Z=ΣiziwiΣiwi2

where w is the square root of the sample size of the ith breed, and z is the z-score for the ith breed calculated as zi = ϕ(−1) (1−Pi/2)Δi, where Φ is the cumulative distribution function, and Pi and Δi are the P-value and direction of effect for breed i, respectively.

Enrichment Analyses

Enrichment analysis was carried out among all suggestive and significant SNPs within each trait and each breed separately to estimate if the number of SNPs in each annotation class was greater than what would be expected by chance (Bouwman et al., 2018):

enrichment=ab[cd]-1

where a is the number of suggestive and/or significant SNPs in the annotation class of interest, b is the total number of suggestive and/or significant SNPs that were associated, c is the total number of SNPs in the annotation class in the association analysis, and d is the overall number of SNPs included in the association analysis.

Results

The scale of measurement, number of records, mean, and standard deviation of the linear type traits in each breed is in the Supplementary Tables S1, S2. The average age of the beef cattle at measurement was 10 months, while the average age of the dairy cows was 28 months; hence there was, on average, an 18-month difference in age at classification between the dairy and beef populations. Significant (p ≤ 1 × 10–8) and/or suggestive (p ≤ 1 × 10–5) SNPs were detected for all of the traits in all six breeds; however, the exact locations of these SNPS, and the direction of the effects of these SNPs, differed by breed.

Wither Height/Stature

No 1 kb genomic window associated with height was common to all six breeds. There was, however, some overlap in suggestive 1 kb windows between the AA and LM where 79 suggestive windows located on BTA6 were common to both breeds (Supplementary Figure S1). Six genes were identified within these windows on BTA6 including NCAPG and LCORL. There were also two suggestive 1 kb windows located at approximately 94.9 Mb on BTA5 common to both the AA and HF.

The strongest associations in both the AA and LM were intergenic variants located in QTLs surrounding the NCAPG and LCORL genes on BTA6 (Table 1 and Supplementary Figure S2) and accounted for 0.6 and 0.04% of the genetic variation in WH in the AA and LM, respectively. Five intronic variants and three downstream gene variants located within the LCORL gene, and 12 intronic variants located within the NCAPG gene, were suggestively associated in the AA (p < 9.18 × 10–6) and significantly associated in the LM (p < 1.29 × 10–12). Interestingly, the positive (i.e., taller) allele of these SNPs occurred at similar frequencies (0.08–0.09) in both the AA and LM and had a similar effect size in both breeds. In comparison, while these SNPs were segregating in both the HE and HF, and had similar allele frequencies in the HE as in the AA and LM, none of these SNPs were near significance in either the HE (p > 0.11) or HF (p > 0.88). However, a suggestive association was detected 21 Mb further upstream of LCORL on BTA6 in the HF where the strongest association within this QTL, rs209851496 (p = 1.94 × 10–6), was located 1kb upstream of the CHRNA9 gene.

TABLE 1.

The location of the most significant QTLs, limited to the top 5, which were associated with wither height or stature, and the genes located within these QTLs within each breed.

No of suggestive and significant SNPs Most significant SNP Allele frequency of positive allele

Breed Chr Start End P-Value AA CH HE LM SI HF Candidate genes within this QTL
Angus 6 37859028 40529961 96 39955422a 7.31 × 10–9 0.114 0.000 0.000 0.064 0.000 0.042 ABCG2, PKD2, SPP1, MEPE, LAP3, NCAPG*, LCORL*
6 40760106 41784760 14 41276346b 2.74 × 10–7 0.445 0.000 0.372 0.522 0.000 0.784 SLIT2*, PACRGL, KCNIP4
16 72342264 73978632 25 72877647a 1.46 × 10–7 0.995 0.002 0.003 0.000 0.996 0.996 RPS6KC1, BATF3, PPP2R5A*
20 46866355 47884741 51 47372538a 7.48 × 10–7 0.161 0.310 0.523 0.768 0.822 0.834 ENSBTAG00000048105
26 40278450 41826296 23 41323903c 2.21 × 10–7 0.993 0.980 0.982 0.017 0.983 0.000 WDR11*, PTPRG, FHIT
Charolais 2 5346602 6349651 2 5846602a 6.02 × 10–8 0.690 0.585 0.703 0.000 0.586 0.390 NAB1, MSTN, MFSD6
5 40455760 41765149 12 40955760a 5.68 × 10–8 0.000 0.038 0.987 0.000 0.016 0.010 SLC2A13*, ABCD2
6 33942529 35471763 9 34442529a 7.78 × 10–6 0.998 0.011 0.000 0.003 0.000 0.000 CCSER1
27 11896148 12929004 15 12428578a 7.97 × 10–7 0.295 0.464 0.000 0.513 0.501 0.344 TENM3, DCTD
28 11615130 12630615 8 12127037a 6.97 × 10–7 0.758 0.975 0.273 0.138 0.153 0.146
Hereford 3 74681893 76225687 5 75725687b 5.73 × 10–7 0.005 0.003 0.976 0.000 0.995 0.390 CTH, LRRC7*, LRRC40
5 79055337 80113473 8 79564409a 3.32 × 10–7 0.536 0.606 0.975 0.487 0.403 0.900 SINHCAF
7 81624551 82816882 4 82124551a 1.88 × 10–7 0.994 0.003 0.995 0.000 0.003 0.991 TENM2, WWC1
20 19842459 20942794 51 20401686a 2.44 × 10–7 0.043 0.098 0.266 0.271 0.198 0.146 PDE4D, RAB3C
23 50140690 51876442 10 51357892b 8.96 × 10–7 0.277 0.755 0.229 0.786 0.184 0.582 SLC22A23, RIPK1, NQO2, GMDS*
Limousin 4 57644495 58664115 9 58148365a 5.52 × 10–7 0.974 0.053 0.932 0.092 0.953 0.335 IMMPL2
6 31747431 35203508 1588 33609037a 1.17 × 10–18 0.249 0.879 0.415 0.151 0.260 0.812 SMARCAD1, ATOH1, CCSER1
6 36934944 41871562 663 38035891d 1.45 × 10–16 0.086 0.000 0.000 0.128 0.636 0.007 PPM1K^, ABCG2^, PKD2^, SPP1^, MEPE*, LAP3, NCAPG^, LCORL^
6 42312608 43680601 17 42990479b 1.48 × 10–7 0.000 0.006 0.000 0.029 0.000 0.000 ADGRA3, KCNIP4*
11 104805923 105866536 3 105366536b 1.04 × 10–7 0.032 0.979 0.008 0.010 0.983 0.035 BRD3, WDR5, CACNA1B*
Simmental 8 82805400 83805881 3 83305881a 1.67 × 10–6 0.367 0.688 0.693 0.540 0.279 0.675 FANCC
8 106857510 107869952 3 107357510b 8.48 × 10–7 0.990 0.073 0.928 0.093 0.859 0.878 PAPPA*, TRIM32
12 55018060 56018149 3 55518060a 2.66 × 10–7 0.000 0.955 0.004 0.967 0.005 0.000 SPRY2
12 89258864 90269817 3 89758864a 2.78 × 10–6 0.015 0.988 0.992 0.028 0.950 0.982 ANKRD10, ING1, SOX1, TUBGCP3
22 1921471 3018467 32 2517667a 4.87 × 10–7 0.000 0.000 0.000 0.000 0.003 0.000 CMC1, AZI2
Holstein Friesian 4 108676456 109728131 8 109185322a 1.49 × 10–6 0.096 0.203 0.081 0.775 0.365 0.794 TPK1
5 59814571 62558882 76 60701477a 4.28 × 10–8 0.257 0.900 0.953 0.874 0.949 0.894 NEUROD4, TSPA1, NTN4*, SNRPF*, AMDHD1*, LTA4H*, CDK17*, NEDD1
5 104934097 106783101 135 106283101a 3.77 × 10–8 0.096 0.679 0.437 0.000 0.802 0.475 ANO2, NTF3, KCNA1, NDUFA9, FGF6*, FGF23*, TIGAR*
6 60485248 61489096 26 60985248d 1.94 × 10–6 0.965 0.903 0.148 0.000 0.904 0.973 UBE2K, N4BP2, RHOH, CHRNA9*, RBM47
7 23221527 24809431 46 23789810b 1.24 × 10–7 0.110 0.834 0.952 0.000 0.031 0.903 IRF1, PDLIM4, P4HA2, IL3, ACSL6, FNIP1*, HINT1

AA, Angus; CH, Charolais; HE, Hereford; LM, Limousin; SE, Simmental; HF, Holstein-Friesian. Superscript denotes SNP classification:aintergenic, bintron, cupstream gene variant, ddownstream gene variant. Symbols denote the significance of SNPs within genes: * gene contained at least one suggestive (p ≤ 1 × 10–5) SNP ^ gene contained at least one significant (p ≤ 1 × 10–8) SNP.

Of the 514 SNPs that were suggestively associated with stature in the HF, 281 were located on BTA5. Both the AA and HF had suggestive associations on this autosome; two intergenic SNPs, rs798298008 (AA) and rs475950607 (HF), located just 17 bp apart and 63 Kb from the PTPRO gene, were associated with WH in these breeds. The strongest associations in the remaining breeds were all intergenic SNPs, although their location differed by chromosome; the strongest association in the CH was on BTA2 in a 1 Mb QTL containing MSTN; the strongest association in the HE was in BTA7, with the strongest association for the SI located on BTA12.

There were 1,055 suggestive and 36 significant SNPs associated with WH in the meta-analysis (Supplementary Table S3). A single QTL on BTA15 containing multiple plausible candidate genes, such as ALKBH8 and RAB39A, was the only QTL identified that had not previously been associated with WH in any of the within-breed analyses.

Chest Width

The window-based analyses revealed no 1 kb genomic region suggestively associated with CW in more than one breed (Supplementary Figure S1). Similar to WH, BTA6 harbored the strongest QTL association with CW in the LM. This QTL, which also encompassed the NCAPG/LCORL complex, contained 34 suggestively associated SNPs, of which the strongest (rs110194711) was in the MEPE gene. A similar genomic region on BTA6 was also associated with CW in the HE, suggesting that the QTL region on BTA6 may harbor an across-breed pleiotropic association since it was also associated with WH in the AA and LM. Although four of the 6 breeds (AA, CH, HE, and HF) had QTLs on BTA10 suggestively associated with CW (Table 2 and Supplementary Figure S3), these all differed in their location across the chromosome which may suggest that BTA10 contains multiple genomic regions influencing CW.

TABLE 2.

The location of the most significant QTLs, limited to the top 5, which were associated with chest width, and the genes located within these QTLs within each breed.

No of suggestive and significant SNPs Most significant SNP Allele frequency of positive allele

Breed Chr Start End P-Value AA CH HE LM SI HF Candidate genes within this QTL
Angus 8 19919026 20930648 3 20426751b 4.18 × 10–6 0.057 0.980 0.014 0.896 0.112 0.989 ELAVL2*
10 101530896 102548539 4 102040999b 5.32 × 10–7 0.232 0.678 0.305 0.306 0.216 0.223 TTC8, FOXN3*
11 52112729 53133828 13 52632756a 1.85 × 10–6 0.639 0.241 0.895 0.908 0.898 0.105
12 12006341 13006349 2 12506341a 2.69 × 10–8 0.073 0.047 0.943 0.000 0.918 0.963 VWA8, DGKH, TNFSF11, AKIP11
28 2715813 4028680 11 3522966d 1.14 × 10–6 0.832 0.806 0.201 0.000 0.808 0.220 SPRTN, TRIM67*
Charolais 3 75099566 76200376 43 75636445b 2.40 × 10–7 0.111 0.071 0.000 0.000 0.903 0.168 CTH, LRRC7*, LRRC40
9 12560255 13754168 9 13060255a 3.52 × 10–7 0.990 0.016 0.991 0.985 0.987 0.000 MTO1, EEF1A1
10 42104985 43116388 3 42604985a 3.68 × 10–7 0.003 0.039 0.992 0.948 0.030 0.991 RPL36AL, MGAT2, ARF6, SOS2
11 10962219 12944023 11 11462219b 3.04 × 10–7 0.000 0.007 0.000 0.000 0.000 0.000 ALMS1, EGR4, SMYD5, CYP26B1, SFXN5*
18 57584619 58600780 3 58084619d 1.61 × 10–7 0.002 0.012 0.991 0.004 0.031 0.000 ENSBTAG00000014593*
Hereford 4 82061233 83396596 4 82561233a 2.12 × 10–7 0.000 0.989 0.023 0.012 0.994 0.993 POU6F2
6 38955125 39995325 14 39461621a 6.63 × 10–7 0.308 0.000 0.852 0.000 0.000 0.604 LCORL
7 79663134 80729587 3 80197062a 8.60 × 10–9 0.013 0.014 0.996 0.000 0.012 0.978
10 56443792 57546809 7 57025496a 9.84 × 10–8 0.961 0.000 0.967 0.050 0.893 0.062 WDR72
23 8222426 9377363 9 8722426d 1.37 × 10–7 0.010 0.009 0.005 0.005 0.010 0.979 UHRF1BP1*, HMGA1, NUDT3, SCUBE3
Limousin 1 61741512 63549298 3 63048403a 1.08 × 10–6 0.439 0.000 0.650 0.730 0.449 0.225
6 37530341 38792617 34 38284104b 1.09 × 10–7 0.298 0.000 0.685 0.565 0.722 0.460 PPM1K, ABCG2*, PKD2*, SPP1, MEPE*, LAP3
18 9391406 10382598 13 9891406b 1.69 × 10–6 0.211 0.249 0.109 0.137 0.447 0.136 CDH13*, HSBP1, MLYCD
18 55221720 56247875 3 55721720d 1.39 × 10–6 0.995 0.000 0.002 0.003 0.000 0.000 LIG1, KCNJ14, CYTH2, RPL18, PPP1R15A
20 7457546 8466248 16 7959103a 9.82 × 10–7 0.057 0.008 0.990 0.987 0.979 0.000 UTP15, ANKRA2
Simmental 13 70061402 71118226 7 70573855a 2.82 × 10–6 0.010 0.050 0.987 0.897 0.055 0.998 TOP1, PLCG1, LPIN3
23 10151181 11174475 3 10651181b 1.20 × 10–6 0.071 0.913 0.054 0.128 0.068 0.959 CPNE5*, PIM1, TMEM217, TBC1D22B
23 30033517 31047355 4 30533517c 1.67 × 10–6 0.099 0.072 0.219 0.187 0.902 0.146 ZSCAN31, ZKSCAN4, HIST1H2BB
25 8699062 9699134 5 9199062a 6.83 × 10–7 0.000 0.000 0.996 0.000 0.005 0.996 EMP2, NUBP1, CLEC16A
26 48445354 49451650 6 48945354a 2.03 × 10–6 0.989 0.008 0.996 0.041 0.996 0.000
Holstein Friesian 1 57000435 58139976 15 57582901b 7.42 × 10–7 0.034 0.225 0.209 0.688 0.000 0.195 ABHD10, CD200*, ATG3, CCDC80
2 30344158 31344250 3 30844250a 7.56 × 10–7 0.003 0.000 0.994 0.987 0.998 0.990 TTC21B, GALNT3, CSRNP3
10 39919494 41220895 5 40476976a 1.04 × 10–6 0.004 0.004 0.975 0.991 0.982 0.861 MDGA3*
13 78475631 79544490 9 79027846a 9.15 × 10–7 0.059 0.098 0.045 0.765 0.840 0.073 SNAI1, UBE2V1, PTPN1
24 827290 2268995 9 1331600a 4.86 × 10–7 0.064 0.067 0.986 0.000 0.924 0.013 PQLC1, KCNG2, NFATC1, ATP9B

AA, Angus; CH, Charolais; HE, Hereford; LM, Limousin; SE, Simmental; HF, Holstein-Friesian. Superscript denotes SNP classification:aintergenic, bintron, cupstream gene variant, ddownstream gene variant. Symbols denote the significance of SNPs within genes: * gene contained at least one suggestive (p ≤ 1 × 10–5) SNP ^ gene contained at least one significant (p ≤ 1 × 10–8) SNP.

The meta-analysis of all 23,943 animals failed to identify a genomic region significantly associated with CW, but 170 SNPs were suggestively associated (Supplementary Table S3). The majority of these associations were singular SNPs, although peaks of suggestive association were detected on BTA1, BTA2, BTA8, BTA16, and BTA19.

Hip Width/Rump Width

There were no 1 kb suggestive windows common to any of the breeds associated with width of hips. The QTL on BTA6 surrounding the NCAPG and LCORL genes was again significant in the LM although it failed to reach significance in the remaining five breeds (Table 3 and Supplementary Figure S4). Of the 222 SNPs suggestively associated with HW in the HE population, 52% were located in a QTL on BTA4 surrounding the CLEC5A gene. Although MSTN may have been expected to influence HW in the CH, the QTL on BTA2 associated with HW was located much further down-stream, between 30.21 and 31.26 Mb (Table 3). Several plausible candidate genes were located within this QTL on BTA2 including multiple voltage−gated sodium−channel genes, TTC21B, and CSRNP3; nonetheless only 0.07% of the genetic variation in HW was explained by the strongest association within this QTL. In the HF, the most significant SNP associated with RW was an intergenic SNP, rs382714953 (2.03 × 10–7), located on BTA20.

TABLE 3.

The location of the most significant QTLs, limited to the top 5, which were associated with hip width or rump width, and the genes located within these QTLs within each breed.

No of suggestive and significant SNPs Most significant SNP Allele frequency of positive allele

Breed Chr Start End P-Value AA CH HE LM SI HF Candidate genes within this QTL
Angus 4 115417450 116432669 15 115922671b 6.53 × 10–7 0.031 0.925 0.109 0.840 0.788 0.268 KMT2C, ACTR3B*,XRCC2, CCT8L2
5 30902961 31924821 5 31402961a 2.79 × 10–7 0.002 0.992 0.978 0.006 0.002 0.990 RHEBL1, PRKAG1, WNT1, WNT10B, CCDC65
11 81485390 82623280 5 81985390b 1.09 × 10–6 0.004 0.000 0.000 0.996 0.994 0.000 FAM49A*
20 13855925 14889348 17 14374205a 1.16 × 10–6 0.004 0.021 0.013 0.000 0.016 0.002 TRIM23, ADAMTS6
25 15156974 16246007 4 15656974a 5.63 × 10–7 0.003 0.983 0.011 0.973 0.974 0.000 XYLT1
Charolais 2 30205997 31264765 30 30705997a 2.83 × 10–8 0.978 0.993 0.995 0.008 0.007 0.267 GALNT3*, SCN1A, SCN2A, SCN3A, TTC21B, CSRNP3
8 4328030 5328051 4 4828030b 1.09 × 10–6 0.000 0.005 0.004 0.028 0.026 0.997 GALNTL6*
9 12598999 13731582 8 13113448a 6.49 × 10–7 0.990 0.024 0.010 0.009 0.011 0.027 MTO1, EEF1A1
15 7774063 8881109 3 8274063b 2.59 × 10–7 0.000 0.004 0.000 0.005 0.998 0.000 ARHGAP42*
28 5674318 6741712 5 6241712c 1.09 × 10–6 0.002 0.004 0.996 0.000 0.006 0.000 PCNX2*
Hereford 4 105760789 106772084 113 106265147a 2.78 × 10–7 0.596 0.432 0.695 0.000 0.572 0.521 TAS2R3, TAS2R4, TAS2R38
8 4170402 5731161 6 4670402b 3.39 × 10–6 0.000 0.989 0.997 0.000 0.000 0.000 GALNTL6*, GALNT7
13 53374292 54375561 4 53874292a 2.94 × 10–6 0.784 0.292 0.690 0.727 0.309 0.880 STK35, PDYN, SIRPA
14 5352193 6396755 6 5852193a 4.29 × 10–6 0.000 0.000 0.986 0.000 0.000 0.000 COL22A1, FAM135B
18 21513927 22756651 3 22256651b 3.63 × 10–6 0.983 0.006 0.008 0.993 0.991 0.040 CHD9, RBL2, RPGRIP1L*, FTO*, IRX3
Limousin 5 16612583 17626967 5 17112583a 4.66 × 10–7 0.030 0.000 0.008 0.983 0.994 0.066
6 32350666 34490506 812 33611754a 1.95 × 10–9 0.246 0.880 0.366 0.150 0.232 0.819
6 37341111 40835172 153 38030341b 1.55 × 10–9 0.084 0.000 0.000 0.126 0.366 0.006 ABCG2^, PKD2^, SPP1*, MEPE, LAP3, NCAPG*, LCORL*
13 76534127 77546426 23 77045666d 4.01 × 10–6 0.962 0.000 0.988 0.041 0.023 0.101 NCOA3, SULF2
21 38149733 39222453 23 38702258a 3.41 × 10–7 0.000 0.940 0.003 0.002 0.997 0.000
Simmental 1 79028842 80104503 3 79590057b 1.77 × 10–7 0.022 0.040 0.000 0.040 0.005 0.027 LPP*
10 86379935 87382277 3 86879935c 1.13 × 10–6 0.009 0.988 0.000 0.000 0.995 0.000 YLPM1, PGF, EIF2B2, MLH3, ACYP1, ZC2HC1C, NEK9, TMED10
11 24184879 25302455 4 24684879a 1.36 × 10–6 0.000 0.000 0.000 0.000 0.998 0.006 PKDCC
18 9064056 10795231 11 10281382a 3.42 × 10–7 0.000 0.000 0.000 0.000 0.986 0.040 CDH13*, OSGIN1, MBTPS1, DNAAF1, TAF1C
22 25717794 30456249 16 29136317a 1.11 × 10–6 0.000 0.030 0.000 0.987 0.997 0.000 CHL1*, CNTN3, PDZRN3, GXYLT2
Holstein Friesian 1 8144528 9875908 27 9335614a 1.37 × 10–6 0.097 0.209 0.206 0.000 0.783 0.226 ADAMTS1, ADAMTS5, APP
9 31692809 33191394 7 32273403a 3.55 × 10–6 0.005 0.021 0.006 0.973 0.030 0.995 MAN1A1*, ASF1A, CEP85L, PLN, SLC35F1
13 78476376 79544490 4 78976376a 1.23 × 10–6 0.862 0.640 0.923 0.629 0.701 0.230 SNAI1, UBE2V1, PTPN1
20 63192522 64260191 3 63722163a 2.03 × 10–7 0.003 0.025 0.000 0.023 0.995 0.995 TAS2R1, SEMA5A
24 49503031 50528738 3 50024697b 5.55 × 10–7 0.081 0.901 0.938 0.066 0.023 0.936 ACAA2, MYO5B*, MBD1, CXXC1

AA, Angus; CH, Charolais; HE, Hereford; LM, Limousin; SE, Simmental; HF, Holstein-Friesian. Superscript denotes SNP classification:aintergenic, bintron, cupstream gene variant, ddownstream gene variant. Symbols denote the significance of SNPs within genes: * gene contained at least one suggestive (p ≤ 1 × 10–5) SNP ^ gene contained at least one significant (p ≤ 1 × 10–8) SNP.

In comparison to WH and CW, the lead variant within the top five QTLs associated with HW in the AA, CH, HE and SI breeds was near fixation (Table 3). All of the lead variants in the top five QTLs in the SI breed were close to the fixation for the positive (i.e., wider) allele in the SI and fixed for the negative (i.e., narrower) allele in the HE. In contrast, the frequency of the positive alleles for each of the lead variants identified in the LM population ranged from low to moderate.

In the meta-analysis of HW and RW, suggestively associated QTL were located on BTA11, BTA15, BTA18, and BTA23 (Supplementary Table S3); none of these QTL had been previously identified in the individual breed analyses but they contained multiple possible candidate genes including FKBP1P, CDH13, HSPB1, DNAAF1, and PSMB9.

Back Length

The window-based analyses revealed that no 1kb genomic region was suggestively associated with BL in all breeds, but 40 1 kb windows on BTA6 surrounding the NCAPG and LCORL genes were suggestively associated with BL in both the AA and LM (Supplementary Figure S1). In total, 96 SNPs within a QTL spanning from 37.9 to 40.4 Mb on BTA6 were suggestively associated with BL in the AA, of which 12 SNPs were either intronic SNPs, or downstream or upstream variants of the NCAPG and LCORL genes. In the LM, the most strongly associated SNP, rs110343895 (p = 4.24 × 10–13), was an intronic SNP located within NCAPG (Table 4 and Supplementary Figure S5). In total, seven SNPs located within the NCAPG gene and 15 SNPs within the LCORL gene were suggestively associated with BL in the LM. Of the 33 potentially disruptive variants within the NCAPG and LCORL complex that were tested for association, six were segregating in the LM population but none were significant. LM animals that had at least one copy of the minor allele for the top three associated SNPs, rs465117501, rs378370406 or rs110343895, within the NCAPG and LCORL complex had a longer back, 0.37 (SE = 0.18) units longer on average, than those with two copies of the major allele.

TABLE 4.

The location of the most significant QTLs, limited to the top 5, which were associated with back length, and the genes located within these QTLs within each breed.

No of suggestive and significant SNPs Most significant SNP Allele frequency of positive allele

Breed Chr Start End P-Value AA CH HE LM SI Candidate genes within this QTL
Angus 6 37939769 40455422 70 38443019a 5.79 × 10–7 0.139 0.000 0.847 0.207 0.311 PKD2, SPP1, MEPE, LAP3, NCAPG*, LCORL*
6 40762050 42494936 24 41262050b 8.44 × 10–7 0.032 0.003 0.000 0.000 0.000 SLIT2*, PACRGL, KCNIP4*
9 11789073 12803143 4 12298383a 1.17 × 10–6 0.008 0.032 0.979 0.987 0.969 RIMS1, KCNQ5
12 84208854 85283107 29 84720853a 6.13 × 10–8 0.949 0.000 0.013 0.035 0.981
13 68993173 70000878 3 69495192a 6.75 × 10–7 0.026 0.000 0.032 0.073 0.060
Charolais 2 1 10036842 5525 6808074a 3.96 × 10–48 0.000 0.079 0.000 0.972 0.996 WDR75, ASNSD1, ARHGEF4, MYO7B, NAB1, MFSD6, MSTN, PMS1, ORMDL1, COL3A1, COL5A2, ANKAR, SLC40A1
14 33353270 34356964 4 33853270a 1.19 × 10–7 0.000 0.013 0.000 0.000 0.992 ARFGEF1, CPA6, PREX2
14 44425358 45430890 3 44928243a 7.51 × 10–7 0.209 0.273 0.605 0.423 0.423 STMN2, HEY1, MRPS28
28 19217733 21371343 36 19836248a 1.01 × 10–7 0.418 0.784 0.575 0.583 0.626 NRBF2, REEP3*
28 30350477 31864396 38 31332353a 6.88 × 10–9 0.450 0.859 0.629 0.426 0.629 KAT6B*, DUPD1, DUSP13, VDAC2
Hereford 4 1 910718 5 223774a 1.15 × 10–6 0.975 0.984 0.981 0.981 0.000 VSTM2A*
4 37522586 38567213 13 38055263a 2.31 × 10–6 0.959 0.283 0.130 0.851 0.201 PCLO*
8 85462715 87578203 16 86646431a 1.63 × 10–6 0.000 0.000 0.998 0.000 0.000 OGN, ASPN, ECM2, IPPK, BICD2, FGD3, NINJ1, BARX1*,PTPDC1*
14 30747311 31758061 7 31247311a 3.41 × 10–6 0.429 0.333 0.485 0.636 0.648 BHLHE22, MTFR1
18 29621954 30630622 5 30130622a 8.58 × 10–7 0.996 0.995 0.996 0.985 0.010 CDH8
Limousin 1 66063243 67175049 15 66587440b 2.16 × 10–7 0.002 0.030 0.983 0.997 0.018 GTF2E1, STXBP5L, POLQ*, FBXO40, HCLS1, GOLGB1
3 24752329 26688150 3 26188150d 9.48 × 10–7 0.000 0.897 0.908 0.917 0.888 SPAG17*, WDR3, MAN1A2, VTCN1*, TRIM45, TTF2, CD101, PTGFRN
6 32025422 34384319 1058 33661101a 5.14 × 10–13 0.753 0.904 0.407 0.142 0.259 ATOH1
6 36996616 41253691 469 38792702b 4.24 × 10–13 0.097 0.000 0.105 0.091 0.000 ABCG2, PKD2, SPP1*, MEPE, LAP3, NCAPG, LCORL, SLIT2
21 33476048 34502357 6 33999605a 1.55 × 10–6 0.006 0.017 0.005 0.017 0.005 CSPG4, SNX33, IMP3, PTPN9
Simmental 15 77047714 78087312 9 77558153b 5.09 × 10–7 0.811 0.000 0.270 0.000 0.264 DGKZ, ATG13, ARHGAP1, ZNF408, CKAP5*
16 10050545 11308116 5 10550545a 6.88 × 10–7 0.000 0.000 0.000 0.000 0.981
17 62751558 63784022 12 63254862b 1.24 × 10–6 0.047 0.940 0.977 0.930 0.969 LHX5*, PLDB2, OAS2, OAS1Y, OAS1X
20 43798108 44854685 5 44298108a 2.56 × 10–6 0.042 0.069 0.240 0.074 0.109
21 10803227 11841095 7 11303227a 2.88 × 10–6 0.998 0.012 0.980 0.006 0.994 NR2F2

AA, Angus; CH, Charolais; HE, Hereford; LM, Limousin; SE, Simmental; HF, Holstein-Friesian. Superscript denotes SNP classification:aintergenic, bintron, cupstream gene variant, ddownstream gene variant. Symbols denote the significance of SNPs within genes: * gene contained at least one suggestive (p ≤ 1 × 10–5) SNP gene contained at least one significant (p ≤ 1 × 10–8) SNP.

A QTL on BTA2 was significantly associated with BL in the CH; this QTL stretched 10 Mb and contained 1,765 significant and 3,760 suggestive SNPs (Table 4). Fifty significant and 12 suggestive SNPs within this QTL were located within the MSTN gene; these SNPs included the well-known Q204X stop-gain mutation, rs110344317 (p = 2.01 × 10–35). When Q204X was forced into the model as a fixed effect, the most significant of the remaining SNPs on BTA2 generally reduced in significance relative to when Q204X was not included in the model. The most significant SNP on BTA2 after accounting for the variability in the Q204X genotype was rs41638272, an intergenic SNP located 15 kb from the SLC40A1 gene. The QTL associated with BL also overlapped the QTL on BTA2 associated with WH suggesting this QTL may play a major role in affecting the morphology of an animal. No other significant associations with BL were identified in any of the remaining beef breeds.

In the meta-analysis of BL, significantly associated QTLs were identified on BTA2 and BTA6, similar to what was identified in the CH and LM breeds, respectively (Supplementary Table S3). Other QTLs on BTA12 and BTA13 were also associated with BL; the QTL on BTA13 contained numerous possible candidate genes including DNTTIP1, TNNC2, PLTP, and CDH22 while no obvious candidate genes were identified on BTA12.

Chest Depth

No suggestive or significant 1kb window associated with CD was common to more than one breed (Supplementary Figure S1). Only a single QTL on BTA6 containing the NCAPG and LCORL genes in LM was significantly associated with any of the breeds for CD (Table 5 and Supplementary Figure S6), suggesting that CD has a highly polygenic architecture in the beef breeds. Four of the five lead variants identified within the top five QTLs associated with CD in the AA were near fixation for the negative (i.e., narrower) allele while four of the five lead variants associated in the SI were close to fixation for the positive (i.e., deeper) allele. Only 90 SNPs were suggestively associated with CD in the CH, of which 19 were located on BTA10, but the proportion of genetic variance accounted for by the strongest association on this autosome was minimal (0.001%).

TABLE 5.

The location of the most significant QTLs, limited to the top 5, which were associated with chest depth, and the genes located within these QTLs within each breed.

No of suggestive and significant SNPs Most significant SNP Allele frequency of positive allele

Breed Chr Start End P-Value AA CH HE LM SI Candidate genes within this QTL
Angus 4 109535218 110566320 118 110035226a 2.08 × 10–7 0.003 0.000 0.000 0.000 0.998 CNOT4*
8 51491571 52874502 6 52374502b 1.55 × 10–7 0.004 0.011 0.998 0.990 0.000 OSTF1, PCSK5*
18 42431986 42811277 6 41931986a 8.41 × 10–8 0.004 0.003 0.000 0.014 0.996
19 25487490 26528596 129 25988404b 2.68 × 10–7 0.003 0.953 0.003 0.977 0.076 PITPNM3*, UBE2G1, MYBBP1A, GGT6, PIMREG
23 27713725 28798254 34 28273994c 6.31 × 10–7 0.043 0.104 0.023 0.023 0.904 MIC1, TCF19, CCHCR1, VARS2, PPP1R18, TRIM26, TRIM15, TRIM10, TRIM40, TRIM31, TRIM39*, PPP1R11
Charolais 4 103847357 105940963 3 104347357b 2.48 × 10–6 0.000 0.006 0.000 0.993 0.005 HIPK, SLC37A3, WEE2, SSBP1, PARP12*
10 29295461 30295461 12 29796031b 4.91 × 10–6 0.808 0.756 0.252 0.672 0.000 TMCO5B, SCG5
10 75515119 76535772 7 76015119b 1.17 × 10–6 0.006 0.995 0.995 0.980 0.987 KCNH5, PPP2R5E*, SYNE2
12 81616525 82648669 15 82139001a 4.14 × 10–6 0.053 0.100 0.000 0.027 0.921 NALCN, ITGB1
14 49295193 50325837 6 49825837b 1.24 × 10–6 0.916 0.795 0.285 0.185 0.860 UTP23, EIF3H*
Hereford 3 63308338 64320629 4 63808996a 1.19 × 10–6 0.990 0.000 0.038 0.063 0.919
5 99016506 100071368 31 99516506a 6.26 × 10–7 0.100 0.056 0.070 0.966 0.046
17 61625220 62663494 3 62157617a 1.37 × 10–6 0.000 0.003 0.969 0.000 0.000 TBX3, TBX5
18 41115715 42140232 4 41635699a 3.00 × 10–6 0.997 0.014 0.002 0.997 0.000 ZNF536, TSHZ3
20 9677922 10679487 5 10177922b 2.93 × 10–6 0.863 0.257 0.741 0.666 0.219 MCCC2, BDP1, SERF1A, SMN2, SLC30A5
Limousin 5 26076148 27084460 3 26576148c 8.02 × 10–7 0.000 0.004 0.007 0.009 0.000 HOXC4, HOXC5, HOXC6, HOXC8, HOXC8, HOXC9, HOXC10, HOXC11, HOXC12, HOXC13
6 32350666 34308736 456 33560360a 2.14 × 10–7 0.060 0.049 0.053 0.097 0.968
6 37037069 40568831 211 38075438b 2.92 × 10–9 0.087 0.000 0.000 0.131 0.368 PPM1K, ABCG2, PKD2, SPP1, MEPE, LAP3, NCAPG*, LCORL*
7 16966648 17927749 15 17466648a 5.13 × 10–7 0.991 0.956 0.978 0.052 0.941 EBF1*
11 77828096 78855720 3 78355720a 5.74 × 10–7 0.000 0.000 0.000 0.003 0.000 GDF7, RHOB, SDC1
Simmental 2 97634951 98536954 3 98035848b 2.77 × 10–7 0.000 0.002 0.000 0.000 0.004 KANSL1L, ACADL, MYL1
11 42337336 43357452 3 42837336a 4.45 × 10–7 0.865 0.815 0.000 0.975 0.991 BCL11A, GTF2A1L*
21 50755259 51864196 11 51364196a 4.44 × 10–8 0.000 0.002 0.000 0.002 0.998 LRFN5
24 49238747 50334349 12 49739134d 4.03 × 10–7 0.997 0.002 0.005 0.005 0.995 CDH2*, DYM, ACAA2, MYO5B
27 9276392 10276408 3 9776396a 3.29 × 10–7 0.000 0.007 0.000 0.975 0.998

AA, Angus; CH, Charolais; HE, Hereford; LM, Limousin; SE, Simmental; HF, Holstein-Friesian. Superscript denotes SNP classification:aintergenic, bintron, cupstream gene variant, ddownstream gene variant. Symbols denote the significance of SNPs within genes: * gene contained at least one suggestive (p ≤ 1 × 10–5) SNP gene contained at least one significant (p ≤ 1 × 10–8) SNP.

In the meta-analysis, three SNPs were identified to be significantly associated with CD while 249 SNPs were suggestively associated. Three QTLs associated with CD in the meta-analysis were not significant in any of the single breed analyses and were located on BTA1, BTA5, and BTA13 (Supplementary Table S3 and Supplementary Figure S7).

Across Trait Overlap

Quantitative trait loci associated with two or more skeletal traits were identified within each breed (Supplementary Figures S3, S8). The NCAPG and LCORL genes were identified as pleiotropic genes associated with all five traits in the LM breed and with both WH and BL in the AA breed. There were also suggestive genomic windows in common between CW and HW in the AA with five windows on BTA4 and a single window on BTA8 being common to both of these traits. These five windows on BTA4 contained six SNPs that were suggestively associated with both CW and HW; all six of these SNPs were intronic SNPs located within the ENSBTAG00000008032 gene. No gene was located within the 1kb window on BTA8.

A greater overlap in QTLs associated with both WH and BL was identified in the CH and HE. Ten 1 kb windows were associated with both WH and BL in the CH, nine of which were located on BTA28. Eight 1 kb windows overlapped between WH and BL in the HE with 6 windows located on BTA23 encompassing the GMDS gene. Further overlap among traits was identified in the CH breed where three windows on BTA9 and three windows on BTA19 were associated with both WH and CW. The SI breed had the fewest number of pleiotropic associations of all beef breeds, as only one window on BTA12 near the SPRY2 gene was suggestively associated with both WH and BL. The only overlap in associated QTLs between the beef and dairy breeds was in WH/Stature between the AA and HF. These breeds had two overlapping 1 kb windows on BTA5 but no obvious candidate genes were identified in this region.

Enrichment of SNPs

Intergenic SNPs were the most common annotation class of SNPs associated with each trait in each breed. This annotation class was enriched for all traits in the HE, four traits in the LM (WH, BL, CD, and HW), three traits in the SI (WH, CW, and CD) and AA (WH, BL, and HW), and two in both the CH (WH and BL) and HF (CWD and RW; Table 6). The second most common annotation was the intronic SNPs; this class was enriched for three traits in the AA (CW, CD, and HW) and CH (BL, CW, and HW) and two traits in the SI (BL and HW). Downstream gene variants were enriched in all breeds for CW and at least one breed for all the remaining traits (Table 6). Stop-gain SNPs that were significantly associated with BL were enriched in all breeds in which they were associated.

TABLE 6.

Fold enrichment/depletion of SNPs in each annotation class in each trait in each breed.

3′ UTR variant 5′ UTR variant Downstream gene variant Intergenic variant Intron variant Missense variant Missense variant and splice Non-coding transcript Splice region variant Stop gained Synonymous variant Upstream gene variant
WH AA 5.70 0.83 1.04 0.95 0.79 0.86 0.61
CH 0.54 1.24 0.50 0.69 0.67
HE 0.23 1.25 0.54 0.71 0.52 0.45
LM 0.21 0.53 1.28 0.39 1.29 0.66 0.54 0.79
SI 1.11 0.31 1.10 0.92 0.78 1.14 0.37
HF 4.41 3.20 0.93 0.82 2.32 1.68 1.37
BL AA 0.53 1.09 0.87 1.65 0.80 0.77
CH 2.94 0.41 1.21 1.00 1.04 0.43 6.35 1.18 0.41
HE 3.80 4.37 1.22 1.02 0.91 1.97 68.90 0.48 0.82
LM 1.26 0.58 1.26 0.44 0.95 7.85 1.67 0.85 0.42 0.72
SI 1.09 0.76 1.56 2.70 135.73 0.99 1.16
CW AA 1.11 0.99 1.12 1.11 0.36
CH 5.66 1.33 0.87 1.36 1.71 1.90 0.41
HE 1.20 2.22 1.16 0.46 0.61 0.98
LM 2.25 0.83 1.36 2.26 0.36
SI 2.84 2.08 0.96 0.99 0.93
HF 3.85 1.09 0.44 1.06
CD AA 1.15 0.82 1.41 1.43 12.15 9.56 6.21 0.56
CH 1.23 0.96 0.96 1.39 2.08
HE 1.11 1.21 0.46 9.67 0.83 0.98
LM 0.39 1.31 0.39 0.54 0.29
SI 0.77 1.20 0.51 1.07 2.34 1.00
HW AA 3.31 0.28 1.01 1.10 3.32 0.36
CH 2.96 1.00 0.92 1.20 1.50 1.13
HE 1.78 0.30 1.18 0.53 1.23 1.81 1.64
LM 1.54 0.50 1.30 0.38 1.19 0.20 0.40
SI 3.01 1.19 0.79 1.53 0.99
HF 1.68 1.05 0.59 29.22 2.44

AA, Angus; CH, Charolais; HE, Hereford; LM, Limousin; SE, Simmental; HF, Holstein-Friesian.

Discussion

Several QTLs were discovered in the present study to be associated with each of the skeletal type traits although the majority of these regions, excluding the NCAPG/LCORL locus in the LM population, were unique to a single trait or a single breed. This indicates the existence of breed-specific and trait-specific QTL for skeletal traits, which has implications for the usefulness of such QTL in across-breed genomic evaluations where only purebreds are used. Previous studies have documented both across-breed and breed-specific QTL associated with carcass traits, birth weight, weaning weight, and mature weight (Saatchi et al., 2014b), as well as dry matter intake, growth and feed efficiency (Saatchi et al., 2014a), carcass traits (Purfield et al., 2019), and muscular type traits (Doyle et al., 2020) in beef cattle. Excluding stature (Bouwman et al., 2018), the present study is the first published genome study on the skeletal linear type traits in beef cattle using imputed sequence data and is one of few genome-based studies comparing QTLs across multiple breeds of cattle. The present study, however, also incorporated imputed genome sequence information on 4,494 dairy cattle to compare to the beef animals. This comparison is rarely carried out (Purfield et al., 2015) as such multi-breed data are not always readily available for incorporation into the same study. Nonetheless, the difference in age at classification between the beef and dairy animals varied substantially with the beef animals all being < 16 months and the dairy animals > 23 months when assessed. Previous heritability estimates of the linear type traits assessed in the dairy cows were all ≥ 0.26 (Berry et al., 2004) indicating these traits are expected to be moderately to highly repeatable over time. This was substantiated by the fact that some common QTL were detected for Angus and Holstein-Friesian.

An earlier study on the beef cattle population from the dataset used in the present study (Doyle et al., 2018) summarized the heritability estimates of, and genetic correlations among, the skeletal type traits in each breed. In general, the genetic variance within each trait and the correlations between each trait differed by breed indicating that breed-specific and trait-specific QTL may be underlying these traits. Similarities were observed between the CH and LM in terms of heritability estimates and genetic correlations (Doyle et al., 2018); from this it was theorized that the genetic architecture of these breeds may be quite similar. The present study is an advanced version of this study (Doyle et al., 2018) where the contributors to the genetic variation within and across breeds have been identified.

Type traits have previously been proposed as potential early predictors of carcass weight and conformation (Conroy et al., 2010) and of overall carcass merit (Berry et al., 2019) given the genetic correlations between these traits and linear type traits are generally moderate to strong. However, as these correlations are not unity, two animals with the same live-weight may be morphologically very different which may lead to very different carcass value owing to the distribution of primal cuts (Berry et al., 2019). Therefore, type traits may be useful in future multi-trait genetic and genomic evaluations as they provide more information than live-weight alone. Consequently, knowledge of the QTLs associated with the skeletal traits could be used in these genome-based evaluations as part of a multi-trait evaluation targeting the altering of the morphology of an animal to increase the output of the goal trait (high quality primal cuts) thus improving the profitability of the farm system.

In total, over 90% of the QTLs identified in the present study have been previously documented to be associated with other production traits in beef or dairy cattle when compared to those within the Cattle QTLdb database (Accessed 08 January 2019). Of the top 140 QTLs associated with the skeletal type traits (Tables 2–6), 80 of these had previously been identified as being associated with body weight at either birth (Lu et al., 2013), as a yearling (Snelling et al., 2010), as a weanling (Saatchi et al., 2014b), at slaughter (Sherman et al., 2008), or at maturity (Saatchi et al., 2014b). Furthermore, some of the top 140 QTLs were also previously associated with carcass weight (McClure et al., 2010; Saatchi et al., 2014a) and residual feed intake (Nkrumah et al., 2007; Lu et al., 2013; Saatchi et al., 2014a) in cattle. Nineteen QTLs identified in the present study have also been identified previously as being associated with linear type traits describing the muscular characteristics of cattle (Doyle et al., 2020).

Across-Breed Comparison

With the exception of the NCAPG and LCORL genes, the majority of QTLs associated with the skeletal type traits were breed-specific and in many cases, also trait specific. The differences observed in associated QTLs among the breeds may be due to epistatic or gene-by-environment interactions, or simply due to differences in the power to detect significance due to the large differences in population sizes among the breeds (Saatchi et al., 2014b). The age difference between the dairy and beef animals when classified may also have contributed to some of the inconsistencies in discovered QTL between the dairy and beef cattle. In many cases, the SNPs detected to associate with a trait in one breed were not segregating in all five breeds. Observed differences in detected QTL among the breeds may also be due to limitations in imputation where the imputed genotypes may not be perfect; this may result in the causal SNP not being identified as the most significant association especially if that SNP is rare in the populations (Bouwman et al., 2018).

Both NCAPG and LCORL are widely accepted as being associated with stature in many mammals including cattle (Bouwman et al., 2018), humans (Gudbjartsson et al., 2008), and horses (Tetens et al., 2013); therefore it was not unexpected that these genes were associated with all the skeletal traits in the LM population and with BL and WH in the AA. The NCAPG and LCORL genes have also been previously linked to growth and carcass traits in the SI (Zhang et al., 2018), carcass weight in the AA, CH, and LM (Purfield et al., 2019), and with both feed intake and body weight gain in a population containing 14 different breeds of cattle (Lindholm-Perry et al., 2011). Interestingly, the QTL containing NCAPG and LCORL was not associated with any of the skeletal traits evaluated in the SI or HF even though SNPs within these regions were segregating in both breeds. Although imputed sequence variants were used, we were unable to identify which of the two genes is causal; indeed none of the segregating missense variants within either gene were suggestively associated with any trait. However, a previous study that associated LCORL with growth and carcass traits in cattle, proposed that it is the non-coding and regulatory expression of LCORL that influences a trait (Han et al., 2017). This theory is further substantiated by the significant over-representation of the intergenic variant SNP class within the present study which suggests that it is the regulatory expression of many genes that influence animal morphology rather than the causative disruption of gene functionality.

Carcass Traits

Some skeletal linear type traits in beef cattle are moderately genetically correlated with carcass traits including carcass cut weights (Pabiou et al., 2012), primal cut yields (Berry et al., 2019), and rib and subcutaneous fat thickness (Mukai et al., 1995). Thus, it is not surprising that there was overlap among some of the QTLs associated with linear type traits in the present study with those previously reported for carcass traits. Across all breeds and traits, there were 22 QTLs associated with the skeletal type traits in the present study that have been previously associated with carcass weight (McClure et al., 2010; Nishimura et al., 2012; Sharma et al., 2014). Twelve of these QTLs were located on BTA6 and incorporated the NCAPG and LCORL genes. Interestingly, the NCAPG and LCORL genes, while being associated with size have also been associated with subcutaneous fat thickness in beef cattle (Lindholm-Perry et al., 2011). More overlap among the QTLs associated with the skeletal type traits and fat thickness was on BTA2, where a QTL containing MSTN which was associated with BL and WH in the CH has also been documented to be associated with fat thickness at the 12th rib (Casas et al., 1998).

In general, if an allele was associated with a wider or longer skeletal type trait, it also had the same effect direction on the other traits, i.e., if an allele was associated with wider CW it tended to be associated with deeper CD and vice versa. Interestingly, this was not always the case for the alleles associated with WH and BL indicating that some alleles associated with taller WH were associated with shorter BL; thus, the correlation between these two traits (Doyle et al., 2018) could be broken leading to a morphologically different animal. The knowledge of SNPs and QTLs that influence one or more traits of interest (e.g., a longer back but with better muscling) would enable the selection for the desired trait combinations despite any genetic antagonisms. Furthermore, including traits such as WH and BL in a multi-trait genetic evaluation for terminal beef cattle, along with the other trait of interests (e.g., carcass weight, carcass conformation, and carcass fat) would provide more information on an animal’s carcass and conformation than what is possible from the carcass traits alone.

Feed Intake and Efficiency

Feed intake is both genetically and phenotypically correlated with body weight and average daily gain (Arthur et al., 2001; Crowley et al., 2010); on average, bigger, heavier cattle tend to eat more. Feed is generally the greatest cost associated with beef production (Montano-Bermudez et al., 1990); thus, improvements in the efficiency of which feed is utilized should contribute to greater economic returns in the whole beef production system (Archer et al., 1999). Difficulty in selection for feed efficiency is mainly due to a lack of genetic evaluations for feed intake; data are generally readily available for the energy sink components of feed efficiency and thus selection for feed efficiency is being hindered by data on feed intake (or correlated traits). Feed intake is linked to the morphology of an animal (Crowley et al., 2011). While genomic evaluations for feed intake could be useful, the reference population required to generate accurate genomic evaluations are few. Having knowledge of potential QTLs associated with feed intake, discovered using much larger datasets on correlated traits (i.e., the present study), could be used as prior information in such genomic evaluations (MacLeod et al., 2016); the correlated traits could also be considered in a multi-trait genomic evaluation.

Among the QTLs associated with at least one of the skeletal type traits, 51 QTLs were previously identified as being associated with feed intake (Nkrumah et al., 2007; Sherman et al., 2010; Lindholm-Perry et al., 2011; Lu et al., 2013; Saatchi et al., 2014a) while 80 were previously identified as being associated with body weight at various stages of the animal’s life (Sherman et al., 2008; Snelling et al., 2010; Saatchi et al., 2014a) and body weight gain (Snelling et al., 2010). Given the generally small dataset sizes used in genomic analyses of feed intake traits, the QTL detected from the present study could actually be used as prior information in Bayesian-type analyses for genomic analyses (including genomic predictions) for traits like feed intake where the dataset size is limiting; such an approach could be deployed using models similar to those proposed by MacLeod et al. (2016).

Calving Difficulty

The difficulty or ease of calving has long been thought to be related to the conformation of the dam (Ali et al., 1984) and the size of the calf (Sieber et al., 1989). Cows with wider hips and long rumps generally have larger internal pelvic openings which in turn lead to an easier calving; cows with smaller pelvic areas have more difficulty calving (Ali et al., 1984). Moreover, bigger, heavier calves are often more difficult to calve than their smaller, lighter counterparts (Sieber et al., 1989). It is, therefore, no surprise that 58 QTLs associated with the skeletal (i.e., size) type traits have previously been documented to be associated with calving difficulty in cattle (Purfield et al., 2015; Sahana et al., 2015). Seven of these 58 QTLs were associated with HW or RW in the present study; these QTLs were located on BTA1 in AA, BTA14 in HE, BTA6, BTA13, and BTA21 in LM, BTA10 in SI, and BTA1 in HF. None of the lead SNPs in these QTLs were segregating in all six breeds and a number of the lead SNPs were close to fixation for either the positive (i.e., wider hips) or negative (i.e., narrower hips) allele depending on the breed. Knowledge of the underlying quantitative trait variant associated with different morphological characteristics facilitates the development of more precise mating advice systems, over and above consideration of the holistic calving difficulty estimate breeding values based on genome-wide quantitative trait variants. For example, the choice of mate for a female with a genetic predisposition for a wide pelvic area is likely to differ from that of a female with a narrower pelvic area; knowledge of genetic merit of the mate for different skeletal characteristics, even with the same estimated breeding value for calving difficulty, should be exploited in the decision.

Omnigenic Model of Complex Traits

It has long been hypothesized that many genes, each with a small effect size, underlie complex traits that do not exhibit simple Mendelian inheritance (Fisher, 1918). In recent years, and with the advancement of genomic technology, many studies have reported that even the most significant loci across the genome associated with a trait have small effect sizes and only explain a small percentage of the predicted genetic variance (Wood et al., 2014; Boyle et al., 2017). The term omnigenic has been used to describe the phenomenon whereby a very large number of genes with seemingly no relevance to the trait of interest are associated with that trait due to being in the same regulatory networks as the relevant genes (Boyle et al., 2017). The results of the individual genome-based analyses in the present study, where many SNPs of small effect, often located within regulatory regions were associated with each trait within each breed, confirms that a complex omnigenic genetic architecture underlies the skeletal type traits in the six cattle breeds.

Despite millions of SNPs being tested for associations with each of the skeletal traits investigated, only 140 of the SNPs suggestively or significantly associated with a trait were located within the coding regions of the genome. The majority (i.e., 57.2%) of SNPs associated with any trait were intergenic SNPs; the number of intergenic SNPs and also 3′ UTR and 5′ UTR variants were enriched for the majority of traits they were associated with in each breed, demonstrating the importance of regulatory networks within the genome to the cattle skeletal traits. Inference could also be drawn, therefore, on the contribution of regulatory regions to the correlated traits like carcass merit and feed intake. Downstream and upstream gene variants were also enriched in many of the traits. In general, the SNPs located within, or close to, the genes identified as candidate genes were located within these non-coding or regulatory regions. For example, 22 SNPs that were suggestively or significantly associated with WH in the LM were located within the LCORL/NCAPG gene; 19 of these were intronic variants and three were downstream gene variants. Thus regulatory non-coding regions, while not having an effect on the coding sequence of a gene, may be of particular importance for cattle skeletal development via the proposed omnigenic model (Boyle et al., 2017).

Conclusion

While many QTLs were identified as being associated with each trait in each breed, a large-effect QTL on BTA6 containing the NCAPG and LCORL genes was the only QTL associated with more than two traits and in more than one breed. This indicates that while the NCAPG and LCORL genes may affect multiple traits in multiple breeds, the majority of QTLs underlying the skeletal type traits are both trait-specific and breed-specific. This has implications on the perceived usefulness of across-breed genomic evaluations for the component traits as well as possibly for their correlated economically important traits (e.g., carcass merit, feed intake) based solely on purebreds. Many of the QTLs identified in the present study have previously been documented to be associated with a number of other performance traits in cattle, including carcass traits, feed intake and calving difficulty.

Data Availability Statement

Sequence variant genotypes were provided by participation in the 1000 Bulls Consortium and a subset of the sequences can be found at NCBI BioProject PRJNA238491, PRJEB9343, PRJNA176557, PRJEB18113, PRNJA343262, PRJNA324822, PRJNA324270, PRJNA277147, PRJNA474946, and PRJEB5462.

Ethics Statement

Ethical review and approval was not required for the animal study because as the data were obtained from the existing Irish Cattle Breeding Federation (ICBF) national database (http://www.icbf.com).

Author Contributions

JD, DB, RV, and DP participated in the design of the study and were involved in the interpretation of the results. JD performed the analyses and wrote the first draft of the manuscript. All authors read and approved the final manuscript.

Conflict of Interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Acknowledgments

The authors would like to thank the 1000 Bull Genomes Consortium for the reference population used to impute genotypes to sequence.

Funding. This work was funded in part by a research grant from Science Foundation Ireland, award number 14/IA/2576, as well as a research grant from Science Foundation Ireland and the Department of Agriculture, Food and the Marine on behalf of the Government of Ireland under the Grant 16/RC/3835 (VistaMilk, Dublin, Ireland).

Supplementary Material

The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fgene.2020.00020/full#supplementary-material

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Data Availability Statement

Sequence variant genotypes were provided by participation in the 1000 Bulls Consortium and a subset of the sequences can be found at NCBI BioProject PRJNA238491, PRJEB9343, PRJNA176557, PRJEB18113, PRNJA343262, PRJNA324822, PRJNA324270, PRJNA277147, PRJNA474946, and PRJEB5462.


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