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Communication

Genetic Diversity Estimation and Genome-Wide Selective Sweep Analysis of the Bazhou Yak

1
Institute of Animal Sciences (IAS), Chinese Academy of Agricultural Sciences (CAAS), No. 2 Yuanmingyuan Western Road, Haidian District, Beijing 100193, China
2
State Key Laboratory of Sheep Genetic Improvement and Healthy Breeding, Institute of Animal Husbandry and Veterinary Sciences, Xinjiang Academy of Agricultural and Reclamation Sciences, Shihezi 832000, China
3
National Animal Husbandry Service, Beijing 100193, China
*
Authors to whom correspondence should be addressed.
Animals 2025, 15(6), 849; https://doi.org/10.3390/ani15060849
Submission received: 28 January 2025 / Revised: 1 March 2025 / Accepted: 14 March 2025 / Published: 15 March 2025
(This article belongs to the Section Animal Genetics and Genomics)

Simple Summary

The Bazhou yak is a distinctive meat yak breed in Xinjiang, China, renowned for its intramuscular fat (IMF) content. This study assessed the genetic diversity, population structure, and phylogenetic relationships of Bazhou yaks in comparison to nine other yak populations. The results revealed that Bazhou yaks possess substantial genetic diversity and unique genomic features that differentiate them from other yak populations. Additionally, genome-wide selection signal scanning identified a large number of genes associated with fat synthesis and deposition in Bazhou yaks. These findings advance our understanding of the genetic basis of the IMF trait in Bazhou yaks.

Abstract

The Bazhou yak, a major native meat yak breed in Xinjiang, China, is renowned for its fast growth rate, strong adaptability, and particularly high intramuscular fat (IMF) content. However, limited knowledge regarding its phylogenetic history and genomic composition has hindered its long-term conservation and utilization. This study evaluated the genetic diversity, population phylogenetics, and genome-wide selective sweep analysis (GWSA) of 100 newly obtained Bazhou yaks through genome resequencing, as well as 340 public yak genomes from nine other populations on the Qinghai–Tibet Plateau. The results revealed moderate diversity, lower genomic inbreeding levels, and rapid linkage disequilibrium (LD) decay in Bazhou yaks. Principal component analysis (PCA) and phylogenetic analysis showed a clear separation of Bazhou yaks from other yak populations, indicating the Bazhou yak as an independent genetic population. Furthermore, less genetic differentiation was found between the Bazhou yak and the Huanhu yak, while ADMIXTURE analysis revealed a common ancestral lineage between Bazhou yaks and Huanhu yaks, indicating an important genetic contribution of the Qinghai yak population to Bazhou yaks. The GWSA identified a total of 833 selected genes in Bazhou yaks using the top 5% interaction windows of both parameters (FST, Pi ratio, and XP-EHH). A significant number of these genes are related to fat synthesis and deposition, such as MTOR, APOA1, and GPAT4. In summary, this study sheds light on the phylogenetic status and distinctive genomic features of Bazhou yaks, which facilitates our understanding of the genetic basis of the IMF phenotype in Bazhou yaks.

1. Introduction

The diversified breeds of indigenous yaks have become the mainstay of the pastoral economy in the Qinghai–Tibet Plateau and its surrounding areas [1]. Among these, the Bazhou yak, a unique local breed endemic to the Bortala Mongol Autonomous Prefecture of Xinjiang, is predominantly distributed in the central of Tian Shan. Historical records indicate that the Bazhou yak population numbered fewer than 200 individuals in the 1920s but has since expanded exponentially to over 180,000 by 2024 [2,3]. It is documented that Bazhou yaks were initially introduced to Hejing County in Xinjiang from Tibet by the Mongolian royal family [4]. In the late 1980s, to meet the needs of local pastoral economic development, a large number of yaks of various breeds were introduced to improve the Bazhou yak, including breeds from Jiulong in Sichuan, Datong in Qinghai, semi-wild yaks, and local wild yaks from the Altai Mountains [3].
To date, Bazhou yaks have made significant contributions to the local economy, leveraging their notable advantages such as rapid growth, strong adaptability, and high survival rates. Notably, research has demonstrated that the intramuscular fat (IMF) content in the longest dorsal muscles of adult male Bazhou yaks can reach up to 10.91% [5], a figure markedly higher than that observed in most yaks from the Tibetan Plateau. For instance, the IMF content in Huanhu yaks is 2.23% [6], Jinchuan yaks is 5.99% [7], Mawa yaks is 1.51% [8], Niangya yaks is 2.33% [9], Pali yaks is 2.06% [9], Sibu yaks is 2.98% [9], Tianzhu white yaks is 2.01% [10], and Yushu yaks is 2.65% [11]. It is widely recognized that the fat content in fresh meat is a crucial determinant of meat quality and flavor [12]; the United States Department of Agriculture deems beef with a fat content exceeding 8% to be of high quality [13]. Consequently, the exceptional IMF levels in Bazhou yaks position them as a valuable genetic resource for breeding programs aimed at improving meat quality. However, critical gaps persist in understanding the Bazhou yak’s conservation status and the genetic mechanisms underlying its economically important traits, hindering targeted utilization and sustainable development.
Since the publication of the first domestic yak genome in 2012 [14], numerous studies have delved into the phylogenetic relationships among various yak populations. For example, Qiu et al. (2015) unveiled the domestication history of yaks, dating back to approximately 7300 BC, and pinpointed candidate selected genes associated with domestication, such as ADCYAP1R1, PLXNB1, and SCRIB [15]. Subsequently, Zhang et al. (2016) reported on the genetic differentiation and copy number variation (CNV) distribution patterns between wild yaks and the domestic Tibetan Plateau yaks [16]. Wang et al. (2019) further contributed a CNV map of 16 yak populations and identified a suite of candidate genes associated with hypoxic adaptation, including DCC, MRPS28, and GSTCD [17]. Moreover, studies have confirmed the association of TUBA8 and TUBA4A with the multi-ribbed traits of Jinchuan yaks through comparative whole-genome selection analysis [18,19]. Liu et al. (2023) identified structural variant (SV) divergence patterns between wild and domestic yaks, elucidating that an SV in the KIT gene serves as a critical genetic determinant for the white coat phenotype in yaks [20]. Wu et al. (2024) utilized whole-genome sequencing data to identify several candidate genes related to the brown coat phenotype in yaks, such as PLCB1, LEF1, and DTNBP1 [21]. Additionally, Peng et al. (2024) utilized genome-wide data to reveal genes associated with yak domestication, including ANKRD28, HECW1, and HECW2 [22]. Gangwar et al. (2024) uncovered genomic differences among Indian, Chinese, and wild yak populations, identifying species-specific marker genes like ADGRB3, ANK1, and CACNG7 [23].
Meat quality in yaks is closely tied to lipid metabolism and fat deposition. For example, studies have shown that the differences in meat tenderness between female and male yaks’ longissimus dorsi muscle are related to the distribution of fatty acids, which may be related to the expression levels of some genes, such as SCD, PLIN5, and LPL [24]. Subsequently, a study used lipidomics and RNA sequencing technology to reveal the relationship between fat content and gene expression in the longissimus dorsi muscle of yaks and pointed out key candidate genes related to muscle fatty acid content, including FASN, SLC16A13, and FADS6 [25]. In 2023, Luo et al.’s study based on the whole transcriptome of the longissimus dorsi muscle of yaks demonstrated that HIF-1α is a key regulator of fat content, controlling fat deposition in yak adipocytes by regulating the expression of C/EBPα and FABP4 [26]. Moreover, Ding et al. (2024) reported differences in the expression of lipid metabolism-related genes in yak adipose tissue under different feeding conditions, including ACACA, INSIG1, and ACSL1 [27]. Furthermore, Xu et al. (2024) utilized yak adipose tissue RNA sequencing data and proteomics data to reveal candidate genes related to yak fat deposition, including MYL3, ACADS, L2HGDH, etc., among which ACADS plays a vital role in the negative feedback regulation of fat deposition [28]. These studies provide important references for research on the meat quality traits of yaks.
However, to date, no research has been conducted on the genome-wide analysis of Bazhou yaks and a comprehensive understanding of the genomic genetic basis of IMF traits in Bazhou yaks is still lacking. This study employs whole-genome sequencing to assess genetic diversity and population structure of Bazhou yaks and identify candidate genes associated with high IMF content through genome-wide selection scans. Our findings aim to inform conservation strategies for Bazhou yaks and advance the genetic understanding of economically important meat trait in yak breeds.

2. Materials and Methods

2.1. Sample Collection and Sequencing

In this study, blood samples from 100 Bazhou yaks (Bazhou) were provided by a farm containing more than 6000 Bazhou yaks in Hejing County, Xinjiang, China (altitude > 3000 m, N 42°19′19.1″, E 86°22′54.3″). All individuals were confirmed to have no kinship within three generations. Genomic DNA was extracted using the TIANamp Genomic DNA Kit (TIANGEN, China). Sequencing libraries were prepared with the Annoroad® Universal DNA Library Prep Kit v2.0 (Illumina®, San Diego, CA, USA), and sequenced on the BGISEQ-500 platform (Beijing Genomics Institute, Shenzhen, China) with an average coverage depth of 10× per sample.
Additionally, 340 publicly available yak genome datasets from nine populations were downloaded from the Sequence Read Archive (SRA) database (Table S1). These populations included Huanhu yaks (n = 34), Jinchuan yaks (n = 149), Maiwa yaks (n = 31), Niangya yaks (n = 22), Pali yaks (n = 10), Sibu yaks (n = 5), Tianzhu white yaks (n = 40), Yushu yaks (n = 27), and Wild yaks (n = 22), which were subsequently utilized in population evolution and selective sweep analysis.

2.2. SNP Calling and Annotation

Raw sequencing data (15,056.99 GB) were filtered using fastp (v0.23.4) [29] with default parameters, yielding 14,364.80 GB of clean data (99.38 GB clean reads). Clean reads were aligned to the yak reference genome (NWIPB_DYAK_1.0, GCA_027580245.1) using bwa-mem2 (v2.2.1) [30]. SNP calling was performed via the HaplotypeCaller module of GATK (v4.5.0.0) [31] with a joint calling method. No reference SNP correction was applied to preserve breed-specific variants, followed by hard-filtering with the parameters “QD < 2.0, QUAL < 30.0, SOR > 3.0, FS > 60.0, MQ < 40.0, MQRankSum < −12.5, ReadPosRankSum < −8.0”. Filtered SNPs were further processed using PLINK 2.0 (www.cog-genomics.org/plink/2.0/, accessed on 13 March 2025) with the parameters “--min-alleles 2 --max-alleles 2 –not-chr X --geno 0.1 --maf 0.05”, retaining 11,403,916 high-quality autosomal biallelic SNPs. Functional annotation of the SNPs was conducted using the Annovar software (v2024Feb19) [32].

2.3. Genetic Diversity Estimation and Phylogenetic Analysis

The observed heterozygosity (Ho) and expected heterozygosity (He) for each population were calculated using PLINK (v1.9) [33]. The nucleotide diversity (Pi) was estimated using vcftools (v0.1.16) [34] with a sliding window size of 50 kb and a step size of 20 kb. Linkage disequilibrium (LD) for each population was assessed via PopLDdecay (v3.43) [35]. The runs of homozygosity (ROH) were detected through Plink (v1.9) [33] using the following parameters: a window size of 50 kb, a maximum of three heterozygous SNPs, a minimum SNP density of 50, a minimum homozygosity percentage of 5%, and a gap size of 100 kb between windows [21,36]. ROH regions longer than 300 kb were considered. The inbreeding coefficients based on ROH (FROH) were calculated using the following formula:
F R O H = L R O H L a u t o
where L R O H means the total length of ROHs of each individual, L a u t o means the total length of the autosomal genome (2432.055 Mb, consistent with the NWIPB_DYAK_1.0 genome assembly).
Additionally, SNP sites with high LD were filtered by plink (v1.9) [33] with the following parameters “--indep-pairwise 50 10 0.2”, and 991,997 remaining SNPs were used for principal component analysis (PCA), population structure analysis and phylogenetic tree construction. The PCA was performed by plink (v1.9) [33] and visualized via ggplot2 (v3.5.1) [37]. Population clustering analysis was performed using ADMIXTURE (v1.3.0) [38,39], considering 2 to 10 clusters (K). The results for K = 2 to 5 were visualized using Pophelper (v2.3.1) [40]. The maximum likelihood (ML) phylogenetic tree was constructed using the TVM + F+I + R10 model in iqtree2 (v 2.3.6) [41] and visualized using ggtree (v3.14.0) [42]. The pairwise population genetic distance was calculated via vcftools (v0.1.16) [34] with the parameters “--fst-window-size 50000 --fst-window-step 20000”, and a neighbor-joining (NJ) tree was generated in PHYLIP (v3.6) (https://evolution.gs.washington.edu/phylip.html, accessed on 1 January 2025) and visualized using iTOL (v6) [43].

2.4. Selective Sweep Analysis

The genome-wide selective sweep analysis (GWSA) between the Bazhou yak and the other eight domestic yak populations (Huanhu yaks, Jinchuan yaks, Maiwa yaks, Niangya yaks, Pali yaks, Sibu yaks, Tianzhu white yaks, and Yushu yaks) was performed using three methods: the fixation index (FST) [44], the differences in nucleotide diversity (Pi ratio) [45], and the cross-population extended haplotype homozygosity (XP-EHH) [46]. FST and Pi ratio analysis were performed using vcftools (v0.1.16) [34] with a 50 kb sliding window and a 20 kb step [39]. For XP-EHH analysis, firstly, haplotype phasing for each population was performed using Beagle (v5.4) [47], followed by calculation of XP-EHH using Selscan (v2.0.3) [48]. The average normalized XP-EHH scores for 50 kb regions were used to identify candidate selective sweep regions. The top 5% windows of each method were extracted, and interaction regions of at least two methods were considered as candidate selective regions, with the following thresholds: FS ≥ 0.0604692, Pi ratio ≥ 1.31258, and XP-EHH ≥ 1.321455. Candidate selected genes located in overlapping regions were obtained using bedtools (v2.31.1) [49].

2.5. Gene Function Annotation

The Gene Ontology (GO) and the Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment of selective genes were performed using KOBAS (v2.0) [50] (accessed on 10 January 2025); the significance threshold of pathway enrichment was considered as p < 0.05.

3. Results and Discussion

A total of 3424.44 GB raw sequencing data were generated from 100 Bazhou yaks. After rigorous quality control measures, 3242.45 GB of high-quality data were retained for alignment against the reference genome (Table S2). Subsequent variant annotation led to the identification of 11.40 million autosomal SNPs across all 440 yak individuals. These SNPs were predominantly located within intergenic regions (accounting for 74.73%) and intronic regions (comprising 23.58%). Within exonic regions, a detailed annotation revealed 36,976 synonymous variants and 25,813 nonsynonymous variants (Table S3).
Genetic diversity analysis revealed that the He across all populations ranged from 0.264983 to 0.299342. Specifically, the He of the Bazhou yak was 0.293166, which was higher than its Ho of 0.259915 (Table S4). Moreover, similar levels of Pi were observed among the 10 yak populations, spanning a range of 0.001212 to 0.001391, with the Bazhou yak displaying a moderate level of Pi at 0.001337 (Figure 1A, Table S4). Furthermore, LD decay analysis demonstrated that the Yushu yak exhibited the most rapid decay of LD, a pattern mirrored in geographically isolated populations, including Huanhu yaks, Bazhou yaks, and Maiwa yaks (Figure 1B).
In the context of ROH analysis, a comprehensive total of 24,871 ROH segments were detected across the 10 yak populations, with fragment lengths varying between 300 Kb and 2 Mb (Figure 1C, Table S5). Notably, the Bazhou yak population had the shortest and least cumulative length of ROH segments. Moreover, the FROH among all yak populations ranged from 0.003 to 0.018, with the Bazhou yak population exhibiting the lowest FROH value of 0.003 (Figure 1D). These findings suggest that despite the Bazhou yak population’s initially limited size, its bloodline has been continuously enriched through multiple introductions over recent decades (Li et al., 2017). Additionally, the adoption of free-grazing practices has helped avoid the pitfalls of intensive production models that could potentially disrupt the animals’ mating system. Consequently, due to random mating, the integration of exogenous bloodlines, and population expansion, the Bazhou yak population has maintained a rich genetic diversity and a relatively low level of genomic inbreeding.
The individual ML-tree (Figure 2B) reveals that all Bazhou yaks cluster together show no admixture with other populations. Additionally, similar phylogenetic relationships were found between the three Tibetan yak populations (Niangya yaks, Pali yaks, and Sibu yaks), which was consistent with the previous report by Ji et al. (2021) [51]. According to the FST-based NJ tree presented in Figure 2C, the Bazhou yak is genetically closest to the Qinghai Huanhu yak and farthest from the Wild yak (Table S6). The PCA reveals that the first principal component (PC1, accounting for 2.21%) distinctly separates most Bazhou yaks from other yak populations, while the second principal component (PC2, accounting for 1.35%) primarily separates Bazhou yaks, Huanhu yaks, and Jinchuan yaks into the same group (Figure 2D). The ADMIXTURE analysis indicates that at K = 2, all yak individuals exhibit evidence of multi-lineage ancestry (Figure 2E). When K = 3, Bazhou yaks, Huanhu yaks, and Jinchuan yaks further diverge into two distinct lineages. At K = 4, which corresponds to the minimum cross-validation (CV) error, some Bazhou yaks exhibit a unique lineage, while others display a mixed lineage resembling that of Huanhu yaks (Table S7). Notably, the geographic distribution of Bazhou yaks is in the Tianshan Mountains, isolated from other domestic yak populations on the Qinghai–Tibet Plateau, as shown in Figure 2A. Both the ML tree and PCA results suggest that the Bazhou yak has evolved into a unique genetic population. Furthermore, compared to other yak populations, the Bazhou yak exhibits a closer genetic distance to the Huanhu yak (Figure 2B). Additionally, ADMIXTURE results reveal that Bazhou yaks share a common ancestral lineage with some Huanhu yaks, suggesting that the Qinghai yak population had important genetic contributions to the Bazhou yak, which is consistent with the view proposed by Li et al. (2017) [3]. In summary, despite the influence of external genetic factors, Bazhou yaks have gradually evolved into a distinct local population through natural and artificial selection over a century, distinguishing it from other yak populations.
The GWSA identified a total of 164 candidate genes (CDGs) within 723 genomic overlapping regions (GORs) using the FST and Pi ratio methods (Figure 3A–C, Table S8), 226 CDGs within 769 GORs using the FST and XP-EHH methods (Figure 3A,B,D, Table S9), and 719 CDGs within 2348 GORs using the Pi ratio and XP-EHH methods (Figure 3A,B,E, Table S10), respectively, with the top 5% interaction window thresholds set at FST ≥ 0.0604692, Pi ratio ≥ 1.31258, and XP-EHH ≥ 1.321455. Among the total of 833 CDGs located in these genomic overlapping regions, 767 of them were found to be significantly enriched in 549 GO terms (Figure 3E, Table S11) and 92 KEGG pathways (Figure 3F, Table S12). Notably, the majority of these genes exhibited significant enrichment in metabolic pathways, including B4GALNT4, ATP6V1D, and GGCX. Additionally, they were enriched in the PI3K-Akt signaling pathway (e.g., PIK3CD, MTOR, and RPTOR) and the MAPK signaling pathway (e.g., MAP2K1, MAP4K3, and NLK). Remarkably, numerous genes were distinctly involved in pathways related to fatty acid biosynthesis, such as the PPAR signaling pathway (e.g., RXRA, HMGCS1, and APOA1), glycerophospholipid metabolism (e.g., GPAT4, PLPP5, and MBOAT7), and the adipocytokine signaling pathway (e.g., CPT1A, CPT1C, and G6PC2).
It is well documented that the IMF content in the muscles of domesticated meat animals is closely related to the biological mechanisms that control fat synthesis and deposition [52]. Our study has drawn particular attention to the abundance of selected genes in Bazhou yaks that are associated with lipid synthesis and metabolism. For example, PIK3CD and mTOR are enriched in pathways that mediate insulin-regulated de novo lipogenesis, which is crucial for fat synthesis in adipose tissue [53]. PIK3CD, a class I phosphoinositide 3-kinase (PI3K) member, plays a pivotal role in downstream Akt activation [54]. Extensive research underscores the indispensable function of the PI3K/Akt pathway in insulin-mediated de novo lipogenesis [55]. In yaks, recent studies have demonstrated a connection between the PI3K/Akt pathway and fat deposition in the longissimus dorsi muscle [56]. Qin et al. (2024) further reported that miR-129 enhances the activation of the PI3K/Akt pathway in intramuscular adipocytes, thereby promoting the differentiation and adipogenesis of intramuscular preadipocytes. In pigs, a positive correlation has been observed between PIK3CD expression in the longissimus dorsi muscle and intramuscular fat content [57]. Moreover, mTOR, a downstream effector of the PI3K/Akt pathway, is integral to the regulation of fat synthesis [58]. The proteins encoded by mTOR and RPTOR constitute essential subunits of mTORC1, which modulate fat synthesis via S6K1, SREBP, and lipin [59]. Additionally, mTOR serves as a core component of mTORC2, another vital regulator of fat synthesis [60]. Studies in Caenorhabditis elegans have shown that mTORC2 regulates fat storage through SGK-1 [61], while mTORC2 deficiency in brown mouse adipose tissue impairs fat generation [62]. These findings collectively emphasize the significance of the PI3K/Akt/mTOR pathway in the regulation of IMF content in domesticated meat animals.
Numerous studies have revealed the key regulatory role of the PPAR signaling pathway in fatty acid metabolism [63]. Notably, several CDGs are significantly enriched in this pathway, including RXRA, HMGCS1, APOA1, APOA5, and APOC3. RXRA, a member of the retinoid X receptor family, acts as a pivotal heterodimerization partner for PPARγ in adipose tissue, mediating lipid transport, storage, and metabolism [64]. Elevated RXRA expression levels have been observed in the fat tissue of obese chickens compared to lean ones [65]. Similarly, high RXRA expression is noted in duck preadipocytes, facilitating the accumulation of triglycerides in adipocytes [66]. Significantly, Qian et al. reported that RXRA promoted the differentiation of mesenchymal stem cells into adipocytes [67], confirming its significant contribution to fat deposition in adipose tissue. In parallel, HMGCS1, a key enzyme in cholesterol biosynthesis, catalyzes the formation of HMG-CoA, a precursor to cholesterol [68]. Previous research has demonstrated a positive correlation between cholesterol content and fat content in commercial pig adipose tissue [69]. HMGCS1’s involvement in lipid metabolism is further supported by studies showing that its overexpression increases total cholesterol, triglycerides, and lipid droplets in ACSS2 knockout neoplasm cells [70]. Furthermore, APOA1 encodes the apolipoprotein A-I, a major component of high-density lipoprotein that facilitates de novo synthesis of cholesterol esters and triglycerides [71]. Another apolipoprotein, APOA5, regulates plasma triglyceride levels, and mutations in APOA5 lead to increased blood triglycerides and fat deposition [72]. Similarly, APOC3 modulates lipid metabolism by inhibiting low-density lipoprotein-mediated lipolysis and hepatic lipase-mediated conversion of very low-density lipoprotein, thereby influencing blood triglyceride levels and promoting hepatic fat accumulation [73]. Notably, APOC3 genetic knockout enhances low-density lipoprotein dependent triglyceride-derived fatty acid uptake and fat deposition in mouse adipose tissue [74].
Rich findings determinate that chemical modification of fatty acids provides essential substrate sources for fat synthesis [75], and GPAT4, PLPP5, CHPT1, PEMT, and MBOAT7 have been found to be involved in lipid metabolic processes such as dephosphorylation of fatty acids, lipid esterification, and acyl transfer. GPAT4, a rate-limiting enzyme in triglyceride biosynthesis, exhibits high expression levels in both brown and white adipose tissues [76]. This enzyme catalyzes the conversion of glycerol-3-phosphate and acyl-CoA into lysophosphatidic acid, which subsequently reacts with acyl-CoA to produce phosphatidic acid [77]. Phosphatidic acid is then dephosphorylated by phospholipid phosphatases to generate diacylglycerol (DAG) [78]. Consistent with its functional importance, GPAT4-deficient mice exhibit reduced adipose triglyceride accumulation, diminished white adipocytes, lower DAG and triacylglycerol levels, and altered monounsaturated/polyunsaturated fatty acid profiles [79]. Of particular interest, PLPP5 (a phosphatidic acid phosphatase family member) catalyzes the dephosphorylation of lysophosphatidic acid, PA, and diacylglycerol pyrophosphate to produce DAG and inorganic phosphate, thereby facilitating triglyceride biosynthesis [78]. Additionally, CHPT1 encodes choline phosphotransferase, an enzyme that catalyzes the synthesis of phosphatidylcholine (PC) from phosphorylcholine and DAG [80]. PC is essential for fat absorption and transport in animals [81], and polymorphisms in the CHPT1 gene have been significantly associated with fat deposition traits in pigs [82]. Moreover, PEMT facilitates hepatic PC synthesis via phosphatidylethanolamine methylation, serving dual roles in both de novo PC generation and lipoprotein-mediated fat biosynthesis [83]. Mechanistically, PEMT orchestrates adipocyte differentiation and adipogenesis through ERK1 and Akt signaling pathways [84]. Furthermore, MBOAT7, a lysophosphatidylinositol acyltransferase, regulates liver fat deposition, and its knockout leads to excessive liver fat accumulation [85]. MBOAT7 also mediates the remodeling of arachidonic acid-containing phosphatidylinositol [86]. Arachidonic acid is a significant flavor compound in meat, and MBOAT7 serves as the primary source of arachidonic acid-containing phosphatidylinositol in adipose tissue [87].
The degree of fat deposition is further influenced by the regulation of fatty acid oxidation (FAO) rate-controlling genes [88]. We found that some selected candidate genes (CREB3, CPT1A, and CPT1C) are enriched in the FAO process. CREB3 belongs to the leucine zipper family of DNA-binding proteins and plays a pivotal role in modulating lipid oxidation and triglyceride storage through its mediation of PPARGC1A transcriptional regulation [89,90]. In the context of lipid storage maintenance, CREB3 holds a crucial position, as evidenced by CREB3 knockout mice exhibiting heightened PGC-1α expression, elevated energy expenditure, enhanced gluconeogenesis, and reduced body fat levels [91]. Moreover, CPT1A, a carrier protein tasked with transporting fatty acids into mitochondria and regulated by acetyl-CoA carboxylase 1, a key enzyme in fatty acid synthesis, also plays a significant role in the FAO process [92]. Studies indicate that overexpressing CPT1A promotes the proliferation of goat intramuscular preadipocytes, facilitating the subsequent development of adipose tissue [93]. Another fatty acid transporter, CPT1C, exerts an influence on triglyceride content in both liver and intramuscular tissues. Research has demonstrated that CPT1C knockout mice are more prone to high-fat diet-induced intramuscular triglyceride accumulation [94]. In summary, these findings enhance our understanding of the genetic mechanisms underlying IMF deposition in Bazhou yaks and provide a theoretical foundation for targeted breeding strategies and genetic marker development aimed at meat quality improvement.

4. Conclusions

This study comprehensively investigated the genomic variations in the Bazhou yak using whole genome sequencing technology, revealing its population’s genetic diversity and confirming the formation of a distinct genetic structure significantly different from other Qinghai Tibetan plateau yak populations. These results provide foundational data and strategic guidance for the genetic assessment, resource conservation, and sustainable utilization of the Bazhou yak. Additionally, selective sweep analysis uncovered candidate genes potentially influencing IMF-related meat quality traits, offering novel insights into genomic selection markers for Bazhou yaks. These findings advance our understanding of the genetic basis underlying yak meat quality traits and provide important directions for formulating rational breeding strategies in future genetic improvement programs.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/ani15060849/s1, Table S1. Information on yak data downloaded from the SRA database. Table S2. Sequencing information of 100 Bazhou yaks. Table S3. Information on autosomal genomic region variants annotation. Table S4. The genetic diversity of the 10 yak populations. Table S5. Numbers of ROH and genomic inbreeding (FROH) of the 10 yak populations. Table S6. Pairwise population FST values. Table S7. Cross validation (CV) errors generated by ADMIXTURE at cluster (K) ranging from 1 to 10. Table S8. Selective regions detected by FST and Pi ratio methods in the Bazhou yak. Table S9. Selective regions detected by FST and XP-EHH methods in the Bazhou yak. Table S10. Selective regions detected by Pi ratio and XP-EHH methods in the Bazhou yak. Table S11. The result of the Gene Ontology (GO) analysis. Table S12. The result of Kyoto Encyclopedia of Genes and Genomes (KEGG) analysis.

Author Contributions

Conceptualization, X.Z. and G.L.; data curation, Z.Y. and Y.N.; formal analysis, H.Z. and X.F.; methodology, X.Z. and G.L.; resources, P.W.; software, H.Z., X.F., Z.Y., J.C., Y.N., and P.W.; supervision, J.C. and X.F.; validation, B.Y.; visualization, B.Y.; writing—original draft preparation, B.Y.; writing—review and editing, X.Z. and G.L.; project administration, X.Z. and P.W.; funding acquisition, X.Z. All authors have read and agreed to the published version of the manuscript.

Funding

This study was funded by the government-purchased service project “Construction of technical route for phenotypic identification of yak plateau adaptation traits” (125A0605), the earmarked fund for the National Key R&D Program of China (2022YFE0100200), the National Natural Science Foundation of China (32161143032), Specially Appointed Expert Program of Tianchi Talent Program in Xinjiang Province (Xueming Zhao), the earmarked fund for CARS (CARS36-16), the National Germplasm Center of Domestic Animal Resources and the Agricultural Science and Technology Innovation Program (ASTIP-2016-IAS-06).

Institutional Review Board Statement

This study was approved by the Animal Care and Ethics Committee for animal experiments, Institute of Animal Science, Chinese Academy of Agricultural Sciences (Permit Number: IAS2023-4).

Informed Consent Statement

Not applicable.

Data Availability Statement

The sequencing data used for analysis have been submitted to China National GeneBank DataBase database with project number CNP0005893. In addition, public data were downloaded from the SRA database with project numbers PRJNA285834, PRJNA483376, PRJNA508860, PRJNA540974, PRJNA670822, PRJNA766811, PRJNA899924, and PRJNA950586.

Acknowledgments

We thank the Animal Husbandry and Veterinary Bureau of Bayingolin Mongol Autonomous Prefecture for their help in sample collection for this study.

Conflicts of Interest

The authors declare no conflicts of interest.

Abbreviations

The following abbreviations are used in this manuscript:
CDGCandidate genes
CNVCopy number variation
DAGDiacylglycero
FAOFatty acid oxidation
FSTThe fixation index
GOGene Ontology
GORsGenomic overlapping regions
GWSAGenome-wide selective sweep analysis
HeThe expected heterozygosity
HoThe observed heterozygosity
IMFIntramuscular fat
KEGGKyoto Encyclopedia of Genes and Genomes
LDLinkage disequilibrium
MLMaximum likelihood
NJNeighbor-joining
PCPhosphatidylcholine
PCAPrincipal component analysis
PiThe nucleotide diversity
PI3KPhosphoinositide 3-kinase
ROHThe runs of homozygosity
XP-EHHThe cross-population extended haplotype homozygosity

References

  1. Han, X.; Liang, D. Economic Analysis on Yak Industry in China. Food Nutr. China 2024, 30, 17–20. [Google Scholar] [CrossRef]
  2. Yan, X.; Ma, Z.; Geng, J.; Liu, J.; Yang, G.; Gao, L.; Haung, X. Current Situation, Existing Problems and Countermeasures of High-quality Development of injiang Beef Cattle Industry. Chin. Livest. Poult. Breed. 2024, 20, 142–148. (In Chinese) [Google Scholar]
  3. Li, H.; Zhang, J.; Yan, X.; Wang, Z.; Guan, Y.; Zhang, Y. Report on the Yak Industry in Bayingolin Mongol Autonomous Prefecture, Xinjiang. China Cattle Sci. 2017, 43, 65–68. (In Chinese) [Google Scholar]
  4. Gala; Guangtong, M.; Boyuan, Y.; Qinguo, X.; Yimin, L.; Xueguang, M. The Bazhou Yak in Xinjiang. Chin. Yak 1983, 02, 46–50. (In Chinese) [Google Scholar]
  5. Zhang, Q.; Hao, L.; Liu, S.; Chaishatuo; Niu, J.; Zhang, X.; Wang, X.; Sun, L.; Zhang, C.; Li, J. Comparison of nutritional components of adult yak meat from different regions. Sci. Technol. Food Ind. 2018, 39, 302–307+317. (In Chinese) [Google Scholar] [CrossRef]
  6. Hou, L.; Chai, S.; Liu, S.; Cui, Z.; Zhang, X.; Zhao, Y. Comparative Studies on Beef Amino Acid Composition and Fatty Acid Composition of Qinghai Yak and Qinchuan Cattle. Meat Res. 2013, 27, 30–36. (In Chinese) [Google Scholar]
  7. Zhao, H.; Xie, R.; An, T.; Li, H.; An, D.; Luo, X. Analysis of the meat quality of Jinchuan yak. Heilongjiang Anim. Sci. Vet. 2018, 19, 197–200. (In Chinese) [Google Scholar]
  8. Qiu, X.; Zhang, L.; Wen, Y.; Wang, J.; Liu, L.; Ma, L.; Wu, X.; Jin, J. Nutritional Composition Analysis of Meat from Yak and Yellow Cattle in Sichuan. Food Sci. 2010, 31, 112–116. [Google Scholar] [CrossRef]
  9. Ji, Q.; Pu, Q.; Dawa, Y.; Ciren, D.; Dawa, Q.; Zhang, Y.; Luo, S. Analysis on meat production performance and meat quality of three superior groups of yaks in Tibet. China Herbiv. Sci. 2000, 05, 3–6. (In Chinese) [Google Scholar]
  10. Wang, J.; Huang, H.; Tong, W. Characteristic analysis of physical and chemical indexes of white yak meat in Tianzhu County. Gansu Anim. Vet. Sci. 2019, 49, 62–64. (In Chinese) [Google Scholar] [CrossRef]
  11. Liu, H. Study on the meat quality characteristics of Qinghai yak and Tibetan sheep. Master’s Thesis, Gansu Agricultural University, Lanzhou, China, 2005. (In Chinese). [Google Scholar]
  12. Nguyen, D.V.; Nguyen, O.C.; Malau-Aduli, A.E. Main regulatory factors of marbling level in beef cattle. Vet. Anim. Sci. 2021, 14, 100219. [Google Scholar] [CrossRef] [PubMed]
  13. O’Quinn, T.G.; Brooks, J.C.; Polkinghorne, R.J.; Garmyn, A.J.; Johnson, B.J.; Starkey, J.D.; Rathmann, R.J.; Miller, M.F. Consumer assessment of beef strip loin steaks of varying fat levels. J. Anim. Sci. 2012, 90, 626–634. [Google Scholar] [CrossRef] [PubMed]
  14. Qiu, Q.; Zhang, G.; Ma, T.; Qian, W.; Wang, J.; Ye, Z.; Cao, C.; Hu, Q.; Kim, J.; Larkin, D.M.; et al. The yak genome and adaptation to life at high altitude. Nat. Genet. 2012, 44, 946–949. [Google Scholar] [CrossRef]
  15. Qiu, Q.; Wang, L.; Wang, K.; Yang, Y.; Ma, T.; Wang, Z.; Zhang, X.; Ni, Z.; Hou, F.; Long, R. Yak whole-genome resequencing reveals domestication signatures and prehistoric population expansions. Nat. Commun. 2015, 6, 10283. [Google Scholar] [CrossRef]
  16. Zhang, X.; Wang, K.; Wang, L.; Yang, Y.; Ni, Z.; Xie, X.; Shao, X.; Han, J.; Wan, D.; Qiu, Q. Genome-wide patterns of copy number variation in the Chinese yak genome. BMC Genom. 2016, 17, 379. [Google Scholar] [CrossRef] [PubMed]
  17. Wang, H.; Chai, Z.; Hu, D.; Ji, Q.; Xin, J.; Zhang, C.; Zhong, J. A global analysis of CNVs in diverse yak populations using whole-genome resequencing. BMC Genom. 2019, 20, 61. [Google Scholar] [CrossRef]
  18. Lan, D.; Ji, W.; Xiong, X.; Liang, Q.; Yao, W.; Mipam, T.D.; Zhong, J.; Li, J. Population genome of the newly discovered Jinchuan yak to understand its adaptive evolution in extreme environments and generation mechanism of the multirib trait. Integr. Zool. 2021, 16, 685–695. [Google Scholar] [CrossRef]
  19. Lan, D.; Xiong, X.; Mipam, T.D.; Fu, C.; Li, Q.; Ai, Y.; Hou, D.; Chai, Z.; Zhong, J.; Li, J. Genetic Diversity, Molecular Phylogeny, and Selection Evidence of Jinchuan Yak Revealed by Whole-Genome Resequencing. G3 Genes Genomes Genet. 2018, 8, 945–952. [Google Scholar] [CrossRef]
  20. Liu, X.; Liu, W.; Lenstra, J.A.; Zheng, Z.; Wu, X.; Yang, J.; Li, B.; Yang, Y.; Qiu, Q.; Liu, H.; et al. Evolutionary origin of genomic structural variations in domestic yaks. Nat. Commun. 2023, 14, 5617. [Google Scholar] [CrossRef]
  21. Wu, X.; Xu, L.; Zhang, H.; Zhu, Y.; Zhang, Q.; Zhang, C.E.G. Genome-Wide Selection Sweep Analysis to Identify Candidate Genes with Black and Brown Color in Tibetan Sibu Yaks. Animals 2024, 14, 2458. [Google Scholar] [CrossRef]
  22. Peng, W.; Fu, C.; Shu, S.; Wang, G.; Wang, H.; Yue, B.; Zhang, M.; Liu, X.; Liu, Y.; Zhang, J.; et al. Whole-genome resequencing of major populations revealed domestication-related genes in yaks. BMC Genom. 2024, 25, 69. [Google Scholar] [CrossRef] [PubMed]
  23. Gangwar, M.; Ahmad, S.F.; Ali, A.B.; Kumar, A.; Kumar, A.; Gaur, G.K.; Dutt, T. Identifying low-density, ancestry-informative SNP markers through whole genome resequencing in Indian, Chinese, and wild yak. BMC Genom. 2024, 25, 1043. [Google Scholar] [CrossRef]
  24. Xiong, L.; Pei, J.; Chu, M.; Wu, X.; Kalwar, Q.; Yan, P.; Guo, X. Fat deposition in the muscle of female and male yak and the correlation of yak meat quality with fat. Animals 2021, 11, 2142. [Google Scholar] [CrossRef]
  25. Xiong, L.; Pei, J.; Wang, X.; Guo, S.; Guo, X.; Yan, P. Lipidomics and Transcriptome Reveal the Effects of Feeding Systems on Fatty Acids in Yak’s Meat. Foods 2022, 11, 2582. [Google Scholar] [CrossRef] [PubMed]
  26. Luo, M.; Wang, H.; Zhang, J.; Yixi, K.; Shu, S.; Fu, C.; Zhong, J.; Peng, W. IMF deposition ceRNA network analysis and functional study of HIF1a in yak. Front. Vet. Sci. 2023, 10, 1272238. [Google Scholar] [CrossRef] [PubMed]
  27. Ding, W.; Sun, Y.; Han, Y.; Liu, Y.; Jin, S. Transcriptome comparison revealed the difference in subcutaneous fat metabolism of Qinghai yak under different feeding conditions. PLoS ONE 2024, 19, e0311224. [Google Scholar] [CrossRef]
  28. Xu, F.; Wang, H.; Qin, C.; Yue, B.; Yang, Y.; Wang, J.; Zhong, J.; Wang, H. Combined Multi-Omics Analysis Reveals the Potential Role of ACADS in Yak Intramuscular Fat Deposition. Int. J. Mol. Sci. 2024, 25, 9131. [Google Scholar] [CrossRef]
  29. Chen, S.; Zhou, Y.; Chen, Y.; Gu, J. fastp: An ultra-fast all-in-one FASTQ preprocessor. Bioinformatics 2018, 34, i884–i890. [Google Scholar] [CrossRef]
  30. Vasimuddin, M.; Misra, S.; Li, H.; Aluru, S. Efficient Architecture-Aware Acceleration of BWA-MEM for Multicore Systems. In Proceedings of the 2019 IEEE International Parallel and Distributed Processing Symposium (IPDPS), Rio de Janeiro, Brazil, 20–24 May 2019; pp. 314–324. [Google Scholar] [CrossRef]
  31. McKenna, A.; Hanna, M.; Banks, E.; Sivachenko, A.; Cibulskis, K.; Kernytsky, A.; Garimella, K.; Altshuler, D.; Gabriel, S.; Daly, M.; et al. The Genome Analysis Toolkit: A MapReduce framework for analyzing next-generation DNA sequencing data. Genome Res. 2010, 20, 1297–1303. [Google Scholar] [CrossRef]
  32. Wang, K.; Li, M.; Hakonarson, H. Annovar: Functional annotation of genetic variants from high-throughput sequencing data. Nucleic Acids Res. 2010, 38, e164. [Google Scholar] [CrossRef]
  33. Purcell, S.; Neale, B.; Todd-Brown, K.; Thomas, L.; Ferreira, M.A.; Bender, D.; Maller, J.; Sklar, P.; de Bakker, P.I.; Daly, M.J.; et al. PLINK: A tool set for whole-genome association and population-based linkage analyses. Am. J. Hum. Genet. 2007, 81, 559–575. [Google Scholar] [CrossRef] [PubMed]
  34. Danecek, P.; Auton, A.; Abecasis, G.; Albers, C.A.; Banks, E.; DePristo, M.A.; Handsaker, R.E.; Lunter, G.; Marth, G.T.; Sherry, S.T.; et al. The variant call format and VCFtools. Bioinformatics 2011, 27, 2156–2158. [Google Scholar] [CrossRef]
  35. Zhang, C.; Dong, S.S.; Xu, J.Y.; He, W.M.; Yang, T.L. PopLDdecay: A fast and effective tool for linkage disequilibrium decay analysis based on variant call format files. Bioinformatics 2019, 35, 1786–1788. [Google Scholar] [CrossRef] [PubMed]
  36. Meyermans, R.; Gorssen, W.; Buys, N.; Janssens, S. How to study runs of homozygosity using PLINK? A guide for analyzing medium density SNP data in livestock and pet species. BMC Genom. 2020, 21, 94. [Google Scholar] [CrossRef]
  37. Wilkinson, L. ggplot2: Elegant graphics for data analysis by WICKHAM, H. Biometrics 2011, 67, 678–679. [Google Scholar] [CrossRef]
  38. Alexander, D.H.; Lange, K. Enhancements to the ADMIXTURE algorithm for individual ancestry estimation. BMC Bioinform. 2011, 12, 246. [Google Scholar] [CrossRef]
  39. Francis, R.M. Pophelper: An R package and web app to analyse and visualize population structure. Mol. Ecol. Resour. 2017, 17, 27–32. [Google Scholar] [CrossRef]
  40. Minh, B.Q.; Schmidt, H.A.; Chernomor, O.; Schrempf, D.; Woodhams, M.D.; von Haeseler, A.; Lanfear, R. IQ-TREE 2: New Models and Efficient Methods for Phylogenetic Inference in the Genomic Era. Mol. Biol. Evol. 2020, 37, 1530–1534. [Google Scholar] [CrossRef]
  41. Xu, S.; Li, L.; Luo, X.; Chen, M.; Tang, W.; Zhan, L.; Dai, Z.; Lam, T.T.; Guan, Y.; Yu, G. Ggtree: A serialized data object for visualization of a phylogenetic tree and annotation data. Imeta 2022, 1, e56. [Google Scholar] [CrossRef]
  42. Letunic, I.; Bork, P. Interactive Tree of Life (iTOL) v6: Recent updates to the phylogenetic tree display and annotation tool. Nucleic Acids Res. 2024, 52, W78–W82. [Google Scholar] [CrossRef]
  43. Nei, M.; Chesser, R.K. Estimation of fixation indices and gene diversities. Ann. Hum. Genet. 1983, 47, 253–259. [Google Scholar] [CrossRef] [PubMed]
  44. Chang, L.; Zheng, Y.; Li, S.; Niu, X.; Huang, S.; Long, Q.; Ran, X.; Wang, J. Identification of genomic characteristics and selective signals in Guizhou black goat. BMC Genom. 2024, 25, 164. [Google Scholar] [CrossRef]
  45. Sabeti, P.C.; Varilly, P.; Fry, B.; Lohmueller, J.; Hostetter, E.; Cotsapas, C.; Xie, X.; Byrne, E.H.; McCarroll, S.A.; Gaudet, R.; et al. Genome-wide detection and characterization of positive selection in human populations. Nature 2007, 449, 913–918. [Google Scholar] [CrossRef]
  46. Li, G.; Luo, J.; Wang, F.; Xu, D.; Ahmed, Z.; Chen, S.; Li, R.; Ma, Z. Whole-genome resequencing reveals genetic diversity, differentiation, and selection signatures of yak breeds/populations in Qinghai, China. Front. Genet. 2022, 13, 1034094. [Google Scholar] [CrossRef]
  47. Browning, B.L.; Tian, X.; Zhou, Y.; Browning, S.R. Fast two-stage phasing of large-scale sequence data. Am. J. Hum. Genet. 2021, 108, 1880–1890. [Google Scholar] [CrossRef] [PubMed]
  48. Szpiech, Z.A. selscan 2.0: Scanning for sweeps in unphased data. Bioinformatics 2024, 40, btae006. [Google Scholar] [CrossRef]
  49. Quinlan, A.R.; Hall, I.M. BEDTools: A flexible suite of utilities for comparing genomic features. Bioinformatics 2010, 26, 841–842. [Google Scholar] [CrossRef] [PubMed]
  50. Xie, C.; Mao, X.; Huang, J.; Ding, Y.; Wu, J.; Dong, S.; Kong, L.; Gao, G.; Li, C.-Y.; Wei, L. KOBAS 2.0: A web server for annotation and identification of enriched pathways and diseases. Nucleic Acids Res. 2011, 39, W316–W322. [Google Scholar] [CrossRef] [PubMed]
  51. Ji, Q.m.; Xin, J.w.; Chai, Z.x.; Zhang, C.f.; Dawa, Y.; Luo, S.; Zhang, Q.; Pingcuo, Z.; Peng, M.S.; Zhu, Y. A chromosome-scale reference genome and genome-wide genetic variations elucidate adaptation in yak. Mol. Ecol. Resour. 2021, 21, 201–211. [Google Scholar] [CrossRef]
  52. Hausman, G.; Dodson, M.; Ajuwon, K.; Azain, M.; Barnes, K.; Guan, L.; Jiang, Z.; Poulos, S.; Sainz, R.; Smith, S. Board-invited review: The biology and regulation of preadipocytes and adipocytes in meat animals. J. Anim. Sci. 2009, 87, 1218–1246. [Google Scholar] [CrossRef]
  53. Smith, U.; Kahn, B.B. Adipose tissue regulates insulin sensitivity: Role of adipogenesis, de novo lipogenesis and novel lipids. J. Intern. Med. 2016, 280, 465–475. [Google Scholar] [CrossRef] [PubMed]
  54. de Souza, D.K.; Salles, L.P.; Camargo, R.; Gulart, L.V.M.; Costa, E.S.S.; de Lima, B.D.; Torres, F.A.G.; Rosa, E.S.A.A.M. Effects of PI3K and FSH on steroidogenesis, viability and embryo development of the cumulus-oocyte complex after in vitro culture. Zygote 2018, 26, 50–61. [Google Scholar] [CrossRef]
  55. Savova, M.S.; Mihaylova, L.V.; Tews, D.; Wabitsch, M.; Georgiev, M.I. Targeting PI3K/AKT signaling pathway in obesity. Biomed. Pharmacother. 2023, 159, 114244. [Google Scholar] [CrossRef]
  56. Wang, H.; Zhong, J.; Zhang, C.; Chai, Z.; Cao, H.; Wang, J.; Zhu, J.; Wang, J.; Ji, Q. The whole-transcriptome landscape of muscle and adipose tissues reveals the ceRNA regulation network related to intramuscular fat deposition in yak. BMC Genom. 2020, 21, 347. [Google Scholar] [CrossRef]
  57. Qin, C.; Wang, H.; Zhong, J.; Ran, H.; Peng, W. miR-129 Regulates Yak Intramuscular Preadipocyte Proliferation and Differentiation through the PI3K/AKT Pathway. Int. J. Mol. Sci. 2024, 25, 632. [Google Scholar] [CrossRef] [PubMed]
  58. Caron, A.; Richard, D.; Laplante, M. The roles of mTOR complexes in lipid metabolism. Annu. Rev. Nutr. 2015, 35, 321–348. [Google Scholar] [CrossRef]
  59. Soliman, G.A. The integral role of mTOR in lipid metabolism. Cell Cycle 2011, 10, 1089–1100. [Google Scholar] [CrossRef] [PubMed]
  60. Fu, W.; Hall, M.N. Regulation of mTORC2 signaling. Genes 2020, 11, 1045. [Google Scholar] [CrossRef]
  61. Jones, K.T.; Greer, E.R.; Pearce, D.; Ashrafi, K. Rictor/TORC2 regulates Caenorhabditis elegans fat storage, body size, and development through sgk-1. PLoS Biol. 2009, 7, e1000060. [Google Scholar] [CrossRef]
  62. Guri, Y.; Colombi, M.; Dazert, E.; Hindupur, S.K.; Roszik, J.; Moes, S.; Jenoe, P.; Heim, M.H.; Riezman, I.; Riezman, H. mTORC2 promotes tumorigenesis via lipid synthesis. Cancer Cell 2017, 32, 807–823.e812. [Google Scholar] [CrossRef]
  63. Janani, C.; Kumari, B.R. PPAR gamma gene–a review. Diabetes Metab. Syndr. Clin. Res. Rev. 2015, 9, 46–50. [Google Scholar] [CrossRef]
  64. Hamza, M.S.; Pott, S.; Vega, V.B.; Thomsen, J.S.; Kandhadayar, G.S.; Ng, P.W.P.; Chiu, K.P.; Pettersson, S.; Wei, C.L.; Ruan, Y. De-novo identification of PPARγ/RXR binding sites and direct targets during adipogenesis. PLoS ONE 2009, 4, e4907. [Google Scholar] [CrossRef] [PubMed]
  65. Resnyk, C.W.; Carré, W.; Wang, X.; Porter, T.E.; Simon, J.; Le Bihan-Duval, E.; Duclos, M.J.; Aggrey, S.E.; Cogburn, L.A. Transcriptional analysis of abdominal fat in genetically fat and lean chickens reveals adipokines, lipogenic genes and a link between hemostasis and leanness. BMC Genom. 2013, 14, 557. [Google Scholar] [CrossRef] [PubMed]
  66. Pan, Z.; Li, X.; Wu, D.; Chen, X.; Zhang, C.; Jin, S.; Geng, Z. The Duck RXRA Gene Promotes Adipogenesis and Correlates with Feed Efficiency. Animals 2023, 13, 680. [Google Scholar] [CrossRef] [PubMed]
  67. Qian, H.; Zhao, J.; Yang, X.; Wu, S.; An, Y.; Qu, Y.; Li, Z.; Ge, H.; Li, E.; Qi, W. TET1 promotes RXRα expression and adipogenesis through DNA demethylation. Biochim. Et Biophys. Acta (BBA) Mol. Cell Biol. Lipids 2021, 1866, 158919. [Google Scholar] [CrossRef]
  68. Ma, X.; Bai, Y.; Liu, K.; Han, Y.; Zhang, J.; Liu, Y.; Hou, X.; Hao, E.; Hou, Y.; Bai, G. Ursolic acid inhibits the cholesterol biosynthesis and alleviates high fat diet-induced hypercholesterolemia via irreversible inhibition of HMGCS1 in vivo. Phytomedicine 2022, 103, 154233. [Google Scholar] [CrossRef]
  69. Dorado, M.; Gómez, E.M.n.; Jiménez-Colmenero, F.; Masoud, T. Cholesterol and fat contents of Spanish commercial pork cuts. Meat Sci. 1999, 51, 321–323. [Google Scholar] [CrossRef]
  70. Gu, D.; Ye, M.; Zhu, G.; Bai, J.; Chen, J.; Yan, L.; Yu, P.; Lu, F.; Hu, C.; Zhong, Y. Hypoxia upregulating ACSS2 enhances lipid metabolism reprogramming through HMGCS1 mediated PI3K/AKT/mTOR pathway to promote the progression of pancreatic neuroendocrine neoplasms. J. Transl. Med. 2024, 22, 93. [Google Scholar] [CrossRef]
  71. Cochran, B.J.; Ong, K.-L.; Manandhar, B.; Rye, K.-A. APOA1: A protein with multiple therapeutic functions. Curr. Atheroscler. Rep. 2021, 23, 11. [Google Scholar] [CrossRef]
  72. Guardiola, M.; Ribalta, J. Update on APOA5 genetics: Toward a better understanding of its physiological impact. Curr. Atheroscler. Rep. 2017, 19, 30. [Google Scholar] [CrossRef]
  73. Giammanco, A.; Spina, R.; Cefalù, A.B.; Averna, M. APOC-III: A gatekeeper in controlling triglyceride metabolism. Curr. Atheroscler. Rep. 2023, 25, 67–76. [Google Scholar] [CrossRef] [PubMed]
  74. Duivenvoorden, I.; Teusink, B.; Rensen, P.C.; Romijn, J.A.; Havekes, L.M.; Voshol, P.J. Apolipoprotein C3 deficiency results in diet-induced obesity and aggravated insulin resistance in mice. Diabetes 2005, 54, 664–671. [Google Scholar] [CrossRef] [PubMed]
  75. Nye, C.; Kim, J.; Kalhan, S.C.; Hanson, R.W. Reassessing triglyceride synthesis in adipose tissue. Trends Endocrinol. Metab. 2008, 19, 356–361. [Google Scholar] [CrossRef]
  76. Cooper, D.E.; Grevengoed, T.J.; Klett, E.L.; Coleman, R.A. Glycerol-3-phosphate acyltransferase isoform-4 (GPAT4) limits oxidation of exogenous fatty acids in brown adipocytes. J. Biol. Chem. 2015, 290, 15112–15120. [Google Scholar] [CrossRef]
  77. Yamashita, A.; Kawagishi, N.; Miyashita, T.; Nagatsuka, T.; Sugiura, T.; Kume, K.; Shimizu, T.; Waku, K. ATP-independent fatty acyl-coenzyme A synthesis from phospholipid: Coenzyme A-dependent transacylation activity toward lysophosphatidic acid catalyzed by acyl-coenzyme A: Lysophosphatidic acid acyltransferase. J. Biol. Chem. 2001, 276, 26745–26752. [Google Scholar] [CrossRef]
  78. Tang, X.; Brindley, D.N. Lipid phosphate phosphatases and cancer. Biomolecules 2020, 10, 1263. [Google Scholar] [CrossRef]
  79. Nagle, C.A.; Vergnes, L.; DeJong, H.; Wang, S.; Lewin, T.M.; Reue, K.; Coleman, R.A. Identification of a novel sn-glycerol-3-phosphate acyltransferase isoform, GPAT4, as the enzyme deficient in Agpat6−/− mice. J. Lipid Res. 2008, 49, 823–831. [Google Scholar] [CrossRef] [PubMed]
  80. Dorighello, G.; McPhee, M.; Halliday, K.; Dellaire, G.; Ridgway, N.D. Differential contributions of phosphotransferases CEPT1 and CHPT1 to phosphatidylcholine homeostasis and lipid droplet biogenesis. J. Biol. Chem. 2023, 299, 104578. [Google Scholar] [CrossRef]
  81. Tso, P.; Scobey, M. The role of phosphatidylcholine in the absorption and transport of dietary fat. Fat Absorpt. 2018, 1, 177–196. [Google Scholar] [CrossRef]
  82. Gong, X.; Zheng, M.; Zhang, J.; Ye, Y.; Duan, M.; Chamba, Y.; Wang, Z.; Shang, P. Transcriptomics-based study of differentially expressed genes related to fat deposition in Tibetan and Yorkshire pigs. Front. Vet. Sci. 2022, 9, 919904. [Google Scholar] [CrossRef]
  83. Vance, D.E. Physiological roles of phosphatidylethanolamine N-methyltransferase. Biochim. Et Biophys. Acta (BBA)-Mol. Cell Biol. Lipids 2013, 1831, 626–632. [Google Scholar] [CrossRef] [PubMed]
  84. Presa, N.; Dominguez-Herrera, A.; van der Veen, J.N.; Vance, D.E.; Gómez-Muñoz, A. Implication of phosphatidylethanolamine N-methyltransferase in adipocyte differentiation. Biochim. Biophys. Acta (BBA) Mol. Basis Dis. 2020, 1866, 165853. [Google Scholar] [CrossRef] [PubMed]
  85. Xia, M.; Chandrasekaran, P.; Rong, S.; Fu, X.; Mitsche, M.A. Hepatic deletion of Mboat7 (LPIAT1) causes activation of SREBP-1c and fatty liver. J. Lipid Res. 2021, 62, 100031. [Google Scholar] [CrossRef] [PubMed]
  86. Caddeo, A.; Hedfalk, K.; Romeo, S.; Pingitore, P. LPIAT1/MBOAT7 contains a catalytic dyad transferring polyunsaturated fatty acids to lysophosphatidylinositol. Biochim. Biophys. Acta (BBA) Mol. Cell Biol. Lipids 2021, 1866, 158891. [Google Scholar] [CrossRef]
  87. Massey, W.J.; Varadharajan, V.; Banerjee, R.; Brown, A.L.; Horak, A.J.; Hohe, R.C.; Jung, B.M.; Qiu, Y.; Chan, E.R.; Pan, C. MBOAT7-driven lysophosphatidylinositol acylation in adipocytes contributes to systemic glucose homeostasis. J. Lipid Res. 2023, 64, 100349. [Google Scholar] [CrossRef]
  88. Abu-Elheiga, L.; Matzuk, M.M.; Abo-Hashema, K.A.; Wakil, S.J. Continuous fatty acid oxidation and reduced fat storage in mice lacking acetyl-CoA carboxylase 2. Science 2001, 291, 2613–2616. [Google Scholar] [CrossRef]
  89. Locke, B.; Campbell, E.; Lu, R. CREB3 mediates the transcriptional regulation of PGC-1α, a master regulator of energy homeostasis and mitochondrial biogenesis. FEBS Lett. 2024, 598, 1730–1739. [Google Scholar] [CrossRef]
  90. Cheng, C.-F.; Ku, H.-C.; Lin, H. PGC-1α as a Pivotal Factor in Lipid and Metabolic Regulation. Int. J. Mol. Sci. 2018, 19, 3447. [Google Scholar] [CrossRef]
  91. Smith, B.S.; Diaguarachchige De Silva, K.H.; Hashemi, A.; Duncan, R.E.; Grapentine, S.; Bakovic, M.; Lu, R. Transcription factor CREB3 is a potent regulator of high-fat diet-induced obesity and energy metabolism. Int. J. Obes. 2022, 46, 1446–1455. [Google Scholar] [CrossRef]
  92. Schlaepfer, I.R.; Joshi, M. CPT1A-mediated fat oxidation, mechanisms, and therapeutic potential. Endocrinology 2020, 161, bqz046. [Google Scholar] [CrossRef]
  93. Tang, Y.; Zhang, W.; Wang, Y.; Li, H.; Zhang, C.; Wang, Y.; Lin, Y.; Shi, H.; Xiang, H.; Huang, L. Expression variation of CPT1A induces lipid reconstruction in goat intramuscular precursor adipocytes. Int. J. Mol. Sci. 2023, 24, 13415. [Google Scholar] [CrossRef] [PubMed]
  94. Gao, X.; Chen, W.; Kong, X.; Xu, A.; Wang, Z.; Sweeney, G.; Wu, D. Enhanced susceptibility of Cpt1c knockout mice to glucose intolerance induced by a high-fat diet involves elevated hepatic gluconeogenesis and decreased skeletal muscle glucose uptake. Diabetologia 2009, 52, 912–920. [Google Scholar] [CrossRef] [PubMed]
Figure 1. The genetic diversity of the Bazhou yak and the other nine yak populations. (A) The genome-wide distribution of nucleotide diversity of each population. The black line in the boxplot is the median line and the outside points are outliers. (B) Genome-wide average LD decay is estimated from each population. One color line represents one population. (C) Number of ROHs and the total ROH length of each yak individual. (D) Box plot of the genomic inbreeding for each population.
Figure 1. The genetic diversity of the Bazhou yak and the other nine yak populations. (A) The genome-wide distribution of nucleotide diversity of each population. The black line in the boxplot is the median line and the outside points are outliers. (B) Genome-wide average LD decay is estimated from each population. One color line represents one population. (C) Number of ROHs and the total ROH length of each yak individual. (D) Box plot of the genomic inbreeding for each population.
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Figure 2. Population structure of the Bazhou yak and its relationship with the other nine yak populations. (A) Geographic distribution of 10 yak populations in China. (B) ML tree of 440 yaks. (C) NJ tree based on population pairwise FST value among 10 yak populations. (D) PCA plot of 440 yaks. Different colored points represent different populations. (E) Model-based clustering of different yak populations using ADMIXTURE with K ranging from 2 to 5. Population names are at the bottom of the plot.
Figure 2. Population structure of the Bazhou yak and its relationship with the other nine yak populations. (A) Geographic distribution of 10 yak populations in China. (B) ML tree of 440 yaks. (C) NJ tree based on population pairwise FST value among 10 yak populations. (D) PCA plot of 440 yaks. Different colored points represent different populations. (E) Model-based clustering of different yak populations using ADMIXTURE with K ranging from 2 to 5. Population names are at the bottom of the plot.
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Figure 3. Results of selective sweep analysis between the Bazhou yak and eight other domestic yak populations. (A) Selective regions detected by pairwise combinations of FST, Pi, and XP-EHH methods. (B) Candidate-selected genes obtained from the selective regions. (C) Manhattan plot of the genome-wide distribution of FST value. (D) Manhattan plot of the genome-wide distribution of Pi ratio value. (E) Manhattan plot of the genome-wide distribution of XP-EHH value. (F) GO terms enriched by candidate selected genes. (G) KEGG pathways enriched by candidate selected genes.
Figure 3. Results of selective sweep analysis between the Bazhou yak and eight other domestic yak populations. (A) Selective regions detected by pairwise combinations of FST, Pi, and XP-EHH methods. (B) Candidate-selected genes obtained from the selective regions. (C) Manhattan plot of the genome-wide distribution of FST value. (D) Manhattan plot of the genome-wide distribution of Pi ratio value. (E) Manhattan plot of the genome-wide distribution of XP-EHH value. (F) GO terms enriched by candidate selected genes. (G) KEGG pathways enriched by candidate selected genes.
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Yang, B.; Zhang, H.; Feng, X.; Yu, Z.; Cao, J.; Niu, Y.; Wan, P.; Liu, G.; Zhao, X. Genetic Diversity Estimation and Genome-Wide Selective Sweep Analysis of the Bazhou Yak. Animals 2025, 15, 849. https://doi.org/10.3390/ani15060849

AMA Style

Yang B, Zhang H, Feng X, Yu Z, Cao J, Niu Y, Wan P, Liu G, Zhao X. Genetic Diversity Estimation and Genome-Wide Selective Sweep Analysis of the Bazhou Yak. Animals. 2025; 15(6):849. https://doi.org/10.3390/ani15060849

Chicago/Turabian Style

Yang, Baigao, Hang Zhang, Xiaoyi Feng, Zhou Yu, Jianhua Cao, Yifan Niu, Pengcheng Wan, Gang Liu, and Xueming Zhao. 2025. "Genetic Diversity Estimation and Genome-Wide Selective Sweep Analysis of the Bazhou Yak" Animals 15, no. 6: 849. https://doi.org/10.3390/ani15060849

APA Style

Yang, B., Zhang, H., Feng, X., Yu, Z., Cao, J., Niu, Y., Wan, P., Liu, G., & Zhao, X. (2025). Genetic Diversity Estimation and Genome-Wide Selective Sweep Analysis of the Bazhou Yak. Animals, 15(6), 849. https://doi.org/10.3390/ani15060849

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