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Exploring Genetic Factors Associated with Tapeworm Resistance in Central Anatolian Merino Sheep via GWAS Approach

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05 September 2024

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06 September 2024

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Abstract
Gastrointestinal parasite (GIP) infections pose significant challenges in pasture-based sheep farming, leading to economic losses and welfare concerns. This study aimed to uncover the ge-netic basis of resistance to tapeworm (Monezia spp.) infections in Central Anatolian Merino (CAM) sheep and explore the immunogenetic mechanisms underlying this resistance. Ge-nome-wide association studies (GWAS) were conducted between tapeworm egg burden and ge-nomic data from 227 CAM lambs. Thirteen significant SNPs were identified, with five surpassing the genome-wide threshold and eight exceeding the chromosome-wide threshold. Functional annotation revealed associations with genes involved in immune function, notably CD79A and MAP3K7. CD79A, integral to B-cell activation and antibody production, plays a key role in the immune response against parasitic infections. Its interaction with helminth-derived proteins modulates B-cell function, highlighting its potential as a therapeutic target. MAP3K7, a central regulator of immune signaling pathways, modulates host responses to helminth infections by influencing NF-κB activity. Additionally, it regulates macrophage function in bacterial infec-tions, showcasing its versatility in mediating immune responses against diverse pathogens. From a practical perspective, the findings of the current research underscore the potential of in-tegrating genomic information into breeding programs to bolster disease resilience in livestock populations for sustainable production purposes. However, further research is needed to eluci-date the functional significance of identified SNPs and associated genes. Functional studies and multi-omic approaches may provide a comprehensive understanding of host-parasite interac-tions. This study underscores the potential of genomic approaches in combating parasitic dis-eases and promoting sustainable agriculture in sheep production systems.
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1. Introduction

Gastrointestinal parasite (GIP) infections present notable health challenges in pasture-based farm animal production systems, manifesting in weight loss, anemia, and retrogadation, all of which undermine animal productivity and welfare [1]. These infections impose substantial economic burdens on both farm and national economies, primarily through diminished growth rates and heightened mortality rates among young animals. Tapeworm infections in sheep are typically of minimal clinical or economic significance. However, heavy infestations in younger animals can lead to symptoms such as abdominal distension, constipation or occasional diarrhea, stunted growth, roughened coat, and anemia. These tapeworms, primarily M. expansa and occasionally M. benedini, complete their life cycle in the small intestines of grazing ruminants, with eggs being shed in the feces and subsequently ingested by intermediate hosts, typically oribatid mites, before being transmitted back to sheep through grazing [2].
The economic ramifications of parasitic infections extend to direct losses in animal productivity, such as reduced growth rates and lamb deaths, as well as indirect costs associated with intervention strategies, including expenditures on anti-helminthic drugs and veterinary services. According to the studies, even a modest 10% decrease in lamb weight gain during the growth phase can lead to considerable financial losses, estimated at £4.40 per lamb [3]. Moreover, in recent years, the use of intensive chemical agents in parasite control has made the sector dependent on anti-parasitic drugs and it has increased year by year [4]. Either the economic burden of using more drugs or the risk of anti-parasitic drug resistance which parasites have developed more and more every year, have led the industry to use more innovative and sustainable control methods such as the selection of resistant animals. In light of this, addressing the economic losses attributed to parasitic infections is imperative for ensuring the sustainability of sheep production. Consequently, in recent years, efforts in animal breeding have concentrated on creating more resistant herds by integrating complex disease resistance traits into selection indexes, reflecting a disease control strategy embraced by many countries [5,6].
The immune response against gastrointestinal parasite (GIP) infections in sheep is a complex process influenced by several factors such as genetics of the host, age, type of parasite, and exposure level and time [7,8]. The immune response involves both innate and adaptive mechanisms. Innate immunity encompasses physical barriers like the mucus layer and smooth muscle contractions in the gastrointestinal system, along with the secretion of bioactive molecules and activation of pattern recognition receptors [9,10]. Additionally, cytotoxic cells like mast cells play a role in defense against parasitic infections [11,12]. The adaptive immune response is primarily orchestrated by antigen-presenting cells, which capture and present antigens to T cells, triggering cytokine secretion and facilitating T cell differentiation. [13]. Genetic factors influencing the synthesis of bioactive molecules and receptors contribute to individual differences in parasite resistance in sheep. Research is ongoing to understand the genetic basis of the immune response against GIP from genome to phenotype [12,14,15,16,17]
Recent advancements in molecular genetics have revolutionized human and animal genetics, particularly with the detailed mapping of the reference genome of the species facilitating the development of Genome-Wide Association Analysis (GWAS) methods. These methods leverage high-density polymorphisms, such as Single Nucleotide Polymorphisms (SNPs), spread across the entire genome, enabling the understanding of genetic variations and the identification of genomic regions associated with health-related traits, even those with low heritability. GWAS studies have successfully identified genomic regions linked to traits like parasite resistance [18,19,20] Technological advancements have facilitated the integration of health-related traits, which are often influenced by the collective effects of multiple genes, into genetic improvement programs [21].
The study aimed to uncover the genetic basis of resistance to tapeworm infections in sheep and explore the genomic regions and the immunogenetic mechanisms underlying this resistance. To achieve this, genome-wide association studies were carried out, between the parasite egg burden in CAM sheep naturally exposed to tapeworm infections in pasture and their genome.

2. Materials and Methods

2.1. Study Population and Phenotype

The study was conducted in the outskirts of Ankara province, Türkiye, characterized by a continental climate with cold, snowy winters and hot, dry summers. The region experiences an annual rainfall of 389 mm, an average temperature of 11.7 °C, and an average altitude of 938 m. Additionally, the region has expansive but predominantly poor and unproductive pastures. Two hundred twenty-seven CAM lambs, comprising 57 males and 170 females were selected from three different farms participating in the National Community-based Small Ruminant Breeding Program. A randomization strategy was applied for animal selection on these different farms. This strategy ensured that animals randomly selected from each farm were examined for parasite load and genetic variations. The randomization process was meticulously planned to enhance the representativeness of the sample and the generalizability of the results. All animals from these three herds were exposed to the same communal pasture. Born between December 2020 and February 2021, the lambs were weaned at an average age of three months and grazed on pasture during the subsequent summer without additional feed. Selection for the study populations was based on observed growth rates around the mating period (e.g., August-September). Lambs were monitored from birth until fecal sample collection at around six to eight months of age. Environmental factors, including sex, herd, birth type, feeding regime, and location, were recorded for all study animals. Fecal samples were collected from the rectum of 226 animals at an average age of 6-8 months (August 2021), with 20-30 grams collected per sample to minimize contamination. It was ensured that at least 60 days had passed since the animals' last anti-parasite treatment. Blood samples (approximately 6 ml each) were also collected from the jugular veins of the animals during the August sampling. Additionally, the live weights of the lambs were recorded during the collection of fecal samples, and the daily live weights gain were calculated based on birth weights and recorded live weights. Therefore, Pearson's correlation was calculated between parasite load and daily live weight gain.
Gastrointestinal parasite (GIP) resistance phenotypes in sheep were determined based on fecal egg counts (FEC) of tapeworms (Moniezia spp.), with the number of tapeworm eggs counted using the McMaster technique [22] and treated as continuous traits.

2.2. Genotyping and Quality Control

The blood samples of 227 were transferred to the Genetics Laboratory of the International Center for Livestock Research and Training (ICLRT) for DNA extraction. DNA extraction was conducted using the Qiacube HT automated device and a commercial kit (Qiagen Blood kit, Hilden, Germany) to minimize contamination. Quality control checks were performed on the extracted DNA, and samples meeting quality criteria (A260/280>1.8, A260/230>1.5, >70 ng/µl, high DNA integrity) were transferred to genotyping. Genotyping was carried out using the OvineSNP50 Beadchip Genotyping Array (Illumina Inc., San Diego, CA) with the iScan system according to the user guideline.
Following genotyping, data filtering was conducted to reduce Type-I and Type-II error rates, utilizing quality control criteria established by McCarthy et al [23], The Wellcome Trust Case Control Consortium [24], and Weale [25]. SNPs with a minor allele frequency (MAF) below 0.05, a call rate under 95%, and those mapped on sex chromosomes were excluded. Additionally, samples with a call rate below 90% and an Identity By State (IBS) value exceeding 95% were removed. SNPs deviating from Hardy-Weinberg Equilibrium (HWE) (i.e., p-value= 0.05/number of SNPs) were also excluded using the Bonferroni correction.

2.3. Statistic Analyses

In instances of missing genotypes, an expected genotype score estimated from the population was utilized for imputation, following the approach outlined by Chen and Abecasis [26]. GWAS analyses were performed using Mixed Linear Models to identify significant SNPs associated with phenotypes. Although incorporating population structure (PS) through principal component (PC) analysis in GWAS models is a common practice, it may not entirely mitigate the risk of erroneous SNP associations. This limitation arises from the inability of population structure analysis to delineate kinship relationships among individuals accurately. Consequently, to address this challenge, we computed the genomic relationship matrix (G) following the method proposed by Astle and Balding [27]. The model incorporated the additive genetic effect of SNPs, with a genomic relationship matrix included to account for covariance between related individuals and population stratification. The following linear model for univariate analysis, utilizing the 'GenABEL' package in R [28] to estimate genomic heritability and the SNP effect was employed.
y = µ+ Xβ + Zu + e
Where y represents the vector of individual observations for each blood parameter, µ denotes the population mean for the trait of interest, β signifies the vector of SNP and fixed environmental effects, u indicates the polygenic background effect obtained from MVN (u ~ 0, σu2), and e represents the vector of random residual errors obtained from MVN (e~0, σe2). X and Z correspond to the design matrices mapping fixed effects and polygenic background effects to each observation, respectively.
Quantile-quantile plots were employed to compare observed test statistics for each SNP to those expected under the null hypothesis of "no association," aiming to detect any inflation in the test statistics due to systematic biases. Genomic control was applied to p-values, following the method outlined by Devlin and Roden [29], to mitigate higher inflation in test statistics.
Manhattan plots were utilized to visualize the -log10 (p-value) of all SNPs relative to their positions on associated chromosomes. Genome-wide and chromosome-wide significance thresholds, determined using Bonferroni correction, were applied to minimize Type-I Error rates arising from multiple testing of SNPs. Accordingly, the genome-wide significance threshold was set at 1.11e-06 (0.05/44.871), and the chromosome-wide significance threshold was set at 2.89e-05 ((0.05/44.871) × 26).

2.4. Functional Gene Annotation

Positional information for significant SNPs and nearby genes was obtained from NCBI Genome Data Viewer using the Oar_v4.0 genome assembly [30]. Genes overlapping with SNPs were considered as candidates, and if the significant SNP was not located within a gene, a scan within ± 25Kbp distance from the SNP was conducted to identify candidate genes. Functional annotation on identified candidate genes was acquired using DAVID Bioinformatics Resources 2021 [31]. In cases where annotation in the sheep genome reference was insufficient, orthology between species was utilized, and annotations from cattle, goats, mice, and humans were employed. Furthermore, the biological processes involving the genes of significant SNPs were represented using their Gene Ontology (GO) terms, which can be further explored on the QuickGo website [32].

3. Results

The outliers in the fecal egg count for tapeworms were detected and eliminated from the dataset, yielding a mean egg count of 646 ± 176 per gram. Comprehensive details regarding the phenotype data are provided in Table 1. Initially, the raw genotype dataset consisted of 49.355 SNPs for 227 animals. Following quality control procedures applied to the genotypic data, 44.871 SNPs and 226 animals were retained for further analysis.
Prior to the GWAS analysis, a linear mixed model was employed to assess the effects of fixed factors. Results indicated that sex, herd, and age (in days) significantly influenced egg count. Consequently, these factors were incorporated into the GWAS models. Notably, herd and age were found to exert statistically significant effects, warranting their inclusion in subsequent analyses. Genomic heritability estimates were found 0.14 for the trait. Additionally, the live weights of the lambs were recorded during the collection of fecal samples, and the daily live weights were calculated based on birth weights and recorded live weights. Pearson's correlation was calculated between parasite load (tapeworm egg count) and daily live weight gain the live weights of the lambs were recorded during the collection of fecal samples, and the daily live weights were calculated based on birth weights and recorded live weights. Pearson's correlation was calculated between parasite load and daily live weight gain, and a correlation of -0.15 was found.
To validate the GWAS results, we generated quantile-quantile (Q-Q) plots of observed test statistics for each SNP, comparing them with those expected under the null hypothesis (Figure S1). The Q-Q plots, along with the estimated inflation factor lambda (λ), were obtained for the phenotype, with genomic control applied to normalize the data. These plots confirmed the appropriateness of our model and the adequacy of the genomic control applied.
The GWAS identified several significant SNPs associated with tapeworm resistance. Corrected p-values for each trait were derived, and Manhattan plots illustrating these results are provided in Figure 1. Genome- and chromosome-wide significance thresholds are indicated by dashed lines, with 5 genome-wide significant SNPs and 9 chromosome-wide significant SNPs identified in the GWAS for the egg count of CAM lambs. Further details on significant SNPs can be found in Table 2.
Through genome-wide association analyses, 13 significant SNPs were identified, with 5 surpassing the genome-wide threshold and 8 exceeding the chromosome-wide threshold. The names of these SNPs and the chromosomes they are located on, along with more detailed information, are presented in Table 2.
In terms of functional annotation, based on positional information obtained from NCBI Genome Data Viewer using the Oar_v4.0 assembly, 8 of these SNPs were directly associated with specific genes. Among these 8 SNPs, 5 were found within 6 distinct genes, while the remaining 3 were associated with 6 different genes within a ± 25 Kbp distance. These findings provide insight into potential genetic mechanisms underlying tapeworm resistance in sheep.
The identified genes include CD79A, ARHGEF1, LYPD4, RPS19, DMRTC2, FAM193A, MAP3K7, SH3BP2, FAT4, CDH8, QRSL1, RTN4IP1, and ABCC9. The roles of these genes suggest a range of biological processes potentially involved in immune response and resistance to tapeworm infection. For instance, CD79A is involved in the initiation of immune responses, and MAP3K7 plays a role in inflammatory responses.
The identification of these genes and their associated SNPs provides a foundation for further research into the genetic basis of tapeworm resistance. Understanding these genetic factors could lead to the development of targeted breeding programs aimed at enhancing resistance to tapeworm infections in sheep populations. Detailed information regarding the significant SNPs and their associated genes can be found in Figure 1 and Table 2. This study contributes to the growing body of knowledge on the genetic factors influencing parasite resistance and offers potential pathways for improving animal health and productivity through genetic selection.

4. Discussion

Gastrointestinal parasites cause significant weight loss and stunted growth in sheep. In our study, the correlation between daily live weight gain and fecal egg count of tapeworm was -0.15 in CAM lambs. Understanding the genetics of resistance to tapeworm infection becomes crucial for sustainable production because a higher egg load leads to lower live weight gain. Additionally, genomic heritability estimates for fecal egg count (FEC) of tapeworm in CAM sheep yielded a relatively moderate value of 0.14. Conversely, a study on the Akkaraman sheep breed reported a higher genomic heritability estimate of 0.30 for the FEC of tapeworm in lambs [20]. The disparity in genomic heritability estimates observed between these two breeds may suggest genetic differences in parasite resistance. The findings of this study shed light on the genetic basis of resistance to tapeworm infections in sheep and provide insights into the immunogenetic mechanisms underlying this resistance. By conducting genome-wide association studies (GWAS) between the parasite egg burden in CAM sheep and their genome, we identified 13 significant SNPs, with 5 surpassing the genome-wide threshold and 8 exceeding the chromosome-wide threshold.
Identifying these significant SNPs underscores the genetic complexity involved in the host response to gastrointestinal parasite (GIP) infections in sheep. These SNPs on various chromosomes may play crucial roles in modulating the immune response and influencing susceptibility or resistance to tapeworm infections. The findings contribute to the expanding body of research on the genetic basis of parasite resistance in sheep.
The strongest association was observed with OAR16_7985888.1 (rs413439386) on chromosome 16 (Table 2). In official genome annotations, this SNP is located in a gene desert. The closest genes are ENSOARG00020036333 and ENSOARG00020038705, located on either side of rs413439386 at distances of approximately 150-200kb. ENSOARG00020036333 is a protein-coding gene with homology to reverse transcriptase. ENSOARG00020038705 encodes a long noncoding RNA. If this is the true extent of local genes, then rs413439386 or a nearby variant could function through regulatory effects, and further work will be required to define such function. Interestingly, Genscan predicts a gene (Chr16.178) in reverse orientation with exon 3 overlapping the position of rs413439386 on Oar_v4.0 as shown on the UCSC genome browser [33]. If this gene prediction is correct, then rs413439386 encodes a charged R111Q substitution. More work will be required to determine if this gene is expressed in certain contexts, and if so how it functions in the context of Monezia spp. infection.
In the current study, the CD79A and MAP3K7 genes located on chromosomes 14 and 8, respectively, were found to be associated with the fecal egg count of tapeworms. In Scottish Blackface sheep, a wide QTL span (0 - 121 cM) covering the BMS833 and ILSTS02 QTLs, identified through microsatellite marker-based association analyses, was associated with Nematodirus egg count [34]. Additionally, in a study conducted on Akkaraman sheep, the ATRNL1 gene on chromosome 22 was linked to tapeworm egg count [20]. The utilization of animals from different breeds in the current and previous studies provides the most reasonable explanation for the associations of different chromosomes and genes observed in these studies.
Functional annotation of the significant SNPs revealed their association with specific genes involved in diverse biological processes. Notably, some SNPs were directly linked to genes implicated in immune function and host defense mechanisms, such as CD79A, and MAP3K7. These genes play pivotal roles in immune cell signaling, antigen presentation, and cytokine production, suggesting their potential involvement in mediating the host response to tapeworm infections.
The CD79A gene, encoding the Ig-alpha protein of the B-cell antigen receptor complex, emerges as a key player in the immune response against parasitic infections in sheep [35]. This gene is integral to the functionality of the B lymphocyte antigen receptor complex, which includes the antigen-specific component surface immunoglobulin (Ig). The surface Ig, in association with Ig-alpha and Ig-beta proteins, forms the B-cell antigen receptor essential for B-cell activation and antibody production. In the context of parasite resistance, CD79A's involvement in adaptive immune response (GO:0002250), B cell differentiation (GO:0030183), B cell proliferation (GO:0042100), B cell receptor signaling pathway (GO:0050853), B cell receptor complex (GO:0019815), IgM B cell receptor complex (GO:0071755), B cell receptor signaling pathway (K06506), underscores its significance in mounting an effective immune response against invading pathogens such as tapeworm.
The role of CD79A in parasite-host interactions has been elucidated through various studies across different helminth species. Na-ASP-2, a secreted venom allergen-like protein from N. americanus, has been elucidated to bind to CD79A, thereby modulating B-cell responses [36]. Through its interaction with CD79A, Na-ASP-2 downregulates B-cell receptor signaling pathways (GO:0050853), resulting in altered gene expression profiles and impaired B-cell function [12,15,37]. This interaction highlights the sophisticated mechanisms employed by parasites to evade host immune responses and establish successful infections.
Moreover, Ryan et al. [38] showed that the binding of Na-ASP-2 to CD79A not only affects B-cell function but also influences other immune processes, such as leukocyte transendothelial migration (GO:0002686). The downregulation of key molecules involved in leukocyte migration pathways further underscores the immunomodulatory effects of CD79A-binding proteins secreted by parasitic helminths [14,39]. This highlights the multifaceted role of CD79A in orchestrating immune responses against parasitic infections and the intricate interplay between host and pathogen.
Furthermore, the interaction between CD79A and helminth-derived proteins presents potential implications for vaccine development and therapeutic interventions. Understanding the molecular mechanisms underlying CD79A-mediated immune modulation provides valuable insights into host-parasite interactions and may pave the way for the development of novel strategies for controlling parasitic infections. Overall, the evidence gathered from the literature underscores the significance of CD79A in parasite resistance and highlights its potential as a target for therapeutic intervention in combating parasitic diseases in sheep and other susceptible hosts.
The MAP3K7 gene, also known as Transforming growth factor b-activated kinase 1 (TAK1), emerges as a crucial regulator of immune responses against parasitic infections in sheep. This gene encodes a serine/threonine protein kinase that mediates signaling transduction induced by various stimuli, including cytokines and environmental stresses [40]. MAP3K7 plays a central role in the activation of nuclear factor kappa B (NF-κB) and mitogen-activated protein kinase (MAPK) signaling pathways, thereby controlling a multitude of cellular functions such as transcription regulation, apoptosis, and inflammatory responses.
Studies investigating the role of MAP3K7 in parasite resistance have highlighted its significance in involving immune responses against helminth infections. In chronic gastrointestinal helminth burdens, MAP3K7-binding protein 2 (Table 2), a downstream effector of MAP3K7 signaling, was positively correlated with parasite burden, indicating its involvement in modulating host responses to parasitic infections [16]. Moreover, during Schistosoma mansoni infection, adult parasites secrete miRNA-containing extracellular vesicles that target MAP3K7 in T helper cells, leading to down modulation of NF-κB activity and subsequent suppression of the Th2 immune response [17,41]. This mechanism elucidates how parasites evade host immune surveillance by manipulating key signaling pathways involved in immune cell differentiation and function.
Furthermore, the rewiring of MAPK signaling and activation of MAP3K7/TAK1 kinase has been associated with the induction of macrophage function in response to bacterial infections. The PMA-induced transition of monocytes to macrophages resulted in the upregulation of MAP3K7, highlighting its role as a central signaling hub in bacterial killing and chemokine production [42]. These findings underscore the versatility of MAP3K7 in mediating immune responses against a diverse range of pathogens, including both bacterial and parasitic infections. Understanding the intricate signaling networks involving MAP3K7 provides valuable insights into host-parasite interactions and may pave the way for the development of novel therapeutic strategies targeting key signaling molecules to enhance parasite resistance in sheep and other susceptible hosts.
The current study highlights the importance of integrating genomic information into breeding programs aimed at enhancing disease resistance in livestock populations. By identifying genomic regions and the genetic mechanisms associated with parasite resistance traits, such as tapeworm egg count, breeders can implement targeted selection strategies to improve resilience to GIP infections. This approach aligns with the broader goal of sustainable agriculture and animal husbandry by reducing the reliance on chemical interventions and promoting genetic resilience to parasitic diseases. However, it is essential to acknowledge certain limitations of our study. While GWAS provides valuable insights into the genetic basis of complex traits, including parasite resistance, further research is needed to elucidate the functional significance of the identified SNPs and associated genes. Functional studies, such as gene expression analyses and in vitro assays, are warranted to validate the roles of candidate genes in the immune response to tapeworm infections.

5. Conclusions and Recommendations

The current study underscores the genetic heterogeneity underlying resistance to tapeworm infections in sheep, highlighting the potential of genomic approaches to enhance disease resilience in livestock breeding programs. Our findings, including the identification of significant SNPs associated with tapeworm resistance, such as those on chromosomes 8 and 14, provide a valuable foundation for targeted breeding strategies. Notably, the CD79A gene, involved in immune responses, and the MAP3K7 gene, a crucial regulator of immune signaling, were linked to fecal egg counts, suggesting their important roles in modulating resistance to tapeworm infections. The significant SNP rs413439386 on chromosome 16, although located in a gene desert, potentially influences nearby genes involved in immune regulation. Further research is needed to confirm the function of these genes and their role in parasite resistance. The association of CD79A with immune responses and MAP3K7 with immune signaling pathways provides insights into how these genetic factors might contribute to resistance. CD79A’s involvement in B-cell receptor signaling and MAP3K7’s role in modulating immune responses underscore their relevance in understanding and improving resistance mechanisms. However, our study also has limitations. While GWAS offers valuable insights into the genetic basis of complex traits like parasite resistance, further functional studies are necessary. Gene expression analyses and in vitro assays will be crucial for validating the roles of the identified genes in the immune response to tapeworm infections. Additionally, the genetic architecture of parasite resistance is influenced by host genetics, environmental conditions, and parasite diversity. Future research with larger sample sizes, longitudinal data, and multi-omic approaches will provide a more comprehensive understanding of the host-parasite interactions in livestock populations. Given the significant role of B-cells in the immune response to parasitic infections, we recommend exploring the potential of western blot analyses using serum from animals exposed to tapeworm proteins. Identifying specific antibodies involved in resistance could lead to the development of genetic selection and vaccination strategies. These approaches have the potential to enhance our ability to develop effective methods for controlling tapeworm infections in sheep and improve overall resilience in livestock breeding programs.

Supplementary Materials

The following supporting information can be downloaded at the website of this paper posted on Preprints.org. Figure S1: Quantile-quantile plot compared the observed distribution of –log (p-values) to the expected values under the null hypothesis.

Author Contributions

YA: contributed to the conceptualization, methodology, funding acquisition, project administration, formal analysis, investigation, visualization, and writing- original draft and review & editing. MK: contributed to the conceptualization, methodology, investigation, validation, review & editing. SB: contributed to the conceptualization and implemented review & editing. LMWP: contributed to the writing – review & editing. SNW: provided supervision, conceptualization, methodology, validation, review & editing. MUC: provided supervision, conceptualization, funding acquisition, resources, project administration, methodology, validation, review & editing.

Funding

The study was funded within the Research Universities Support Program scope, conducted by Turkish Council of Higher Education Presidency, grant number FBAÜ-2023-12523.

Institutional Review Board Statement

The animal study protocol was approved by the Local Ethics Committee of Erciyes University (protocol code 191 and November/2022).

Informed Consent Statement

Not applicable.

Data Availability Statement

The original contributions presented in the study are included in the article, further inquiries can be directed to the corresponding author.

Acknowledgments

The authors thank the Betül-Ziya Eren Genome and Stem Cell Center (GENKÖK) at Erciyes University for providing laboratory facilities. The animals were under the National Community-based Small Ruminant Breeding Program. Therefore, the authors kindly acknowledge the contribution of the General Directorate of Agricultural Research and Policies (Ministry of Agriculture and Forestry) of the Republic of Türkiye, who fund and run the National Community-based Small Ruminant Breeding Program. Furthermore, the authors are also grateful to the Genetic Laboratory of the International Center for Livestock Research and Training (ICLRT), where the laboratory analyses were implemented.

Conflicts of Interest

The authors declare no conflicts of interest.

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Figure 1. Manhattan plots showing –log10 (p-values) of association between every single SNP and phenotype. The associations between host genetics and the tapeworms' fecal egg count were investigated using the genotypes from 227 Central Anatolian Merino sheep. Each dot represents the result from the test association for a single SNP. The upper horizontal dashed line shows a genome-wide threshold with –log10 (1 × 10-6) and the lower dashed line shows a chromosome-wide threshold with –log10 (2 × 10-5).
Figure 1. Manhattan plots showing –log10 (p-values) of association between every single SNP and phenotype. The associations between host genetics and the tapeworms' fecal egg count were investigated using the genotypes from 227 Central Anatolian Merino sheep. Each dot represents the result from the test association for a single SNP. The upper horizontal dashed line shows a genome-wide threshold with –log10 (1 × 10-6) and the lower dashed line shows a chromosome-wide threshold with –log10 (2 × 10-5).
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Table 1. Descriptive statistics for animal age at recording (days), and fecal egg counts for the observations used.
Table 1. Descriptive statistics for animal age at recording (days), and fecal egg counts for the observations used.
Traits N Mean SE Mean Mina Maxb SDc C.V (%)d
Fecal egg count 227 646 176 0 33,939 2661 4,11
Age at fecal egg counting 227 200 2,59 124 274 39 0.19
aMin: minimum, b Max: maximum, cSD: standard deviation, dC.V: coefficient of variation.
Table 2. Significant SNPs associated with the tapeworms’ fecal egg count.
Table 2. Significant SNPs associated with the tapeworms’ fecal egg count.
SNP Name rs id Chr. Position (bp)a p-Value Significance Level Associated Genes
Name Distance (bp)
OAR16_7985888.1 rs413439386 16 7482199 6.93x10-11 GW - -
OAR23_17139338.1 rs403168292 23 15978964 1.44x10-07 GW - -
s21643.1 rs399780906 14 50299438 1.58x10-07 GW CD79AARHGEF1LYPD4RPS19DMRTC2 Within~4Kb~25Kb~9Kb~21Kb
OAR6_116928489.1 rs424147325 6 115312997 5.07x10-07 GW FAM193A Within
S04655.1 rs409459191 8 46831736 9.70x10-07 GW MAP3K7 ~3Kb
S65350.1 rs422791391 6 115244531 2.06x10-06 CW SH3BP2 ~20Kb
OAR17_35112051.1 rs4039744896 17 32126658 2.29x10-06 CW FAT4 Within
OAR25_35637536.1 rs398917787 25 34107540 6.10x10-06 CW - -
OAR14_29936907.1 rs408792120 14 28689202 1.18x10-05 CW CDH8 Within
S50538.1 rs425776415 24 11986747 1.69x10-05 CW - -
OAR25_37746412.1 rs430437733 25 35851406 1.87x10-05 CW - -
OAR8_33063143.1 rs426900187 8 30374437 1.89x10-05 CW QRSL1RTN4IP1 WithinWithin
OAR3_207847578_X.1 rs413235350 3 192922322 2.58x10-05 CW ABCC9 Within
a SNP position based on Oar_v4.0 assembly.
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