<?xml version="1.0" encoding="UTF-8"?>
<!DOCTYPE article PUBLIC "-//NLM//DTD Journal Publishing with OASIS Tables v3.0 20080202//EN" "journalpub-oasis3.dtd">
<article xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:oasis="http://docs.oasis-open.org/ns/oasis-exchange/table" xml:lang="en" dtd-version="3.0"><?xmltex \bartext{Original study}?>
  <front>
    <journal-meta><journal-id journal-id-type="publisher">AAB</journal-id><journal-title-group>
    <journal-title>Archives Animal Breeding</journal-title>
    <abbrev-journal-title abbrev-type="publisher">AAB</abbrev-journal-title><abbrev-journal-title abbrev-type="nlm-ta">Arch. Anim. Breed.</abbrev-journal-title>
  </journal-title-group><issn pub-type="epub">2363-9822</issn><publisher>
    <publisher-name>Copernicus Publications</publisher-name>
    <publisher-loc>Göttingen, Germany</publisher-loc>
  </publisher></journal-meta>
    <article-meta>
      <article-id pub-id-type="doi">10.5194/aab-62-501-2019</article-id><title-group><article-title>Selection signature analysis reveals genes <?xmltex \hack{\break}?> underlying sheep milking performance</article-title><alt-title>Selection signature analysis reveals genes underlying sheep milking performance</alt-title>
      </title-group><?xmltex \runningtitle{Selection signature analysis reveals genes underlying sheep milking performance}?><?xmltex \runningauthor{Z.~Yuan et al.}?>
      <contrib-group>
        <contrib contrib-type="author" corresp="no" rid="aff1">
          <name><surname>Yuan</surname><given-names>Zehu</given-names></name>
          
        </contrib>
        <contrib contrib-type="author" corresp="no" rid="aff1">
          <name><surname>Li</surname><given-names>Wanhong</given-names></name>
          
        </contrib>
        <contrib contrib-type="author" corresp="yes" rid="aff1 aff2">
          <name><surname>Li</surname><given-names>Fadi</given-names></name>
          <email>lifd@lzu.edu.cn</email>
        </contrib>
        <contrib contrib-type="author" corresp="yes" rid="aff1">
          <name><surname>Yue</surname><given-names>Xiangpeng</given-names></name>
          <email>lexp@lzu.edu.cn</email>
        </contrib>
        <aff id="aff1"><label>1</label><institution>State Key Laboratory of Grassland Agro-Ecosystems; Key Laboratory of Grassland Livestock Industry Innovation, Ministry of Agriculture and Rural
Affairs; College of Pastoral Agriculture Science and Technology, Lanzhou
University, Lanzhou, 730020, P. R. China</institution>
        </aff>
        <aff id="aff2"><label>2</label><institution>Engineering Laboratory of Sheep Breeding and Reproduction
Biotechnology in Gansu Province, <?xmltex \hack{\break}?> Minqin, 733300, P. R. China</institution>
        </aff>
      </contrib-group>
      <author-notes><corresp id="corr1">Fadi Li (lifd@lzu.edu.cn) and Xiangpeng Yue (lexp@lzu.edu.cn)</corresp></author-notes><pub-date><day>8</day><month>August</month><year>2019</year></pub-date>
      
      <volume>62</volume>
      <issue>2</issue>
      <fpage>501</fpage><lpage>508</lpage>
      <history>
        <date date-type="received"><day>19</day><month>March</month><year>2019</year></date>
           <date date-type="rev-recd"><day>17</day><month>June</month><year>2019</year></date>
           <date date-type="accepted"><day>15</day><month>July</month><year>2019</year></date>
      </history>
      <permissions>
        <copyright-statement>Copyright: © 2019 Zehu Yuan et al.</copyright-statement>
        <copyright-year>2019</copyright-year>
      <license license-type="open-access"><license-p>This work is licensed under the Creative Commons Attribution 4.0 International License. To view a copy of this licence, visit <ext-link ext-link-type="uri" xlink:href="https://creativecommons.org/licenses/by/4.0/">https://creativecommons.org/licenses/by/4.0/</ext-link></license-p></license></permissions><self-uri xlink:href="https://aab.copernicus.org/articles/62/501/2019/aab-62-501-2019.html">This article is available from https://aab.copernicus.org/articles/62/501/2019/aab-62-501-2019.html</self-uri><self-uri xlink:href="https://aab.copernicus.org/articles/62/501/2019/aab-62-501-2019.pdf">The full text article is available as a PDF file from https://aab.copernicus.org/articles/62/501/2019/aab-62-501-2019.pdf</self-uri>
      <abstract><title>Abstract</title>
    <p id="d1e117">Sheep milk is the most important feed resource for
newborn lambs and an important food resource for humans. Sheep milk production and ingredients are influenced by genetic and environmental
factors. In this study, we implemented selection signature analysis using
Illumina Ovine SNP50 BeadChip data of 78 meat Lacaune and 103 milk Lacaune sheep, which have similar genetic backgrounds, from the Sheep HapMap project to identify candidate genes related to ovine milk traits. Since different
methods can detect different variation types and complement each other, we
used a haplotype-based method (hapFLK) to implement selection signature
analysis. The results revealed six selection signature regions showing signs of being selected (<inline-formula><mml:math id="M1" display="inline"><mml:mrow><mml:mi>P</mml:mi><mml:mo>&lt;</mml:mo><mml:mn mathvariant="normal">0.001</mml:mn></mml:mrow></mml:math></inline-formula>): chromosomes 1, 2, 3, 6, 13
and 18. In addition, 38 quantitative trait loci (QTLs) related to sheep milk performance were
identified in selection signature regions, which contain 334 candidate
genes. Of those, <italic>SUCNR1</italic> (succinate receptor 1) and <italic>PPARGC1A</italic> (PPARG coactivator 1 alpha) may be the most significant genes that affect sheep milking performance, which supply a significant indication  for future studies to investigate candidate genes that play an important role in milk production and quality.</p>
  </abstract>
    </article-meta>
  </front>
<body>
      

<sec id="Ch1.S1" sec-type="intro">
  <label>1</label><title>Introduction</title>
      <p id="d1e147">Sheep have been raised for milk for thousands of years, which is much longer
than cow milk production (Zervas and Tsiplakou, 2011). Sheep milk
and its products are widely consumed in some parts of the world, especially
in the Mediterranean. Sheep milk has a high degree of similarity to human
milk in total fatty acid composition, which makes it a good raw material
for infant formula production (Martin et al., 2016). In the sheep
industry, prolific sheep usually cannot lactate enough milk for lambs, which
could decrease lamb survival rate (Bradford, 1985). A milk replacer
is sometimes used as alternative, but it is costly and labor-intensive.
Therefore, it is important to identify genes related to sheep milk and then
genetically improve sheep milk performance, which will obtain a better
profitability in the sheep industry and diversify human milk resources.</p>
      <p id="d1e150"><?xmltex \hack{\newpage}?>Specialized strains of livestock have been cultivated by humans in
long-standing husbandry practices; artificial and natural selection
have imposed detectable selection signatures within genomes. These selection
signatures can provide deep insights into selection mechanism and further
uncover the causal genes related to relevant phenotypes. In sheep,
selection signature analyses of closely related populations with divergent
production purposes were successfully implemented in milk traits
(Moioli et al., 2013), tail types (Moradi et al., 2012; Moioli et
al., 2015; Yuan et al., 2017), gastrointestinal nematode-resistant traits
(McRae et al., 2014) and reproductive traits (El-Halawany et al., 2016).</p>
      <?pagebreak page502?><p id="d1e154">In order to find genes associated with ovine milk traits, researchers
have conducted a selection signature analysis between five non-milk sheep breeds
and five milk sheep breeds, and they have identified some milk-related genes such as
<italic>ABCG2</italic> and <italic>SPP1</italic> (Gutierrez-Gil et al., 2014). However, this
previous study still had some limitations in experimental design. First, the
sheep breeds that they have chosen have different characteristics not only
in milk performance but also in other phenotypic differences, such
as in wool traits, which could lead to some false positives of the candidate
genes. Meanwhile, this study analyzed milk Lacaune and meat Lacaune genome
only using site frequency-based methods, although it has been suggested that
the regression-based selection mapping approach is more accurate than that
of haplotype-based analysis methods (e.g., extended haplotype homozygosity,
EHH; integrated haplotype score, iSH) (Wiener and
Pong-Wong, 2011). However, different methods can detect different variation
types and complement each other, which could accurately and comprehensively
reveal the selection signature that exists within the genome. With meat and
milk Lacaune from the Sheep HapMap project
(<uri>http://www.sheephapmap.org/hapmap.php</uri>, last access: 6 August 2019), we used a haplotype-based method (hapFLK) and considered population stratification to conduct the
selection signatures searching within the sheep genome. We further identified
genes related to sheep milk and then provided a potential theoretical basis
for sheep breeding.</p>
</sec>
<sec id="Ch1.S2">
  <label>2</label><title>Materials and methods</title>
<sec id="Ch1.S2.SS1">
  <label>2.1</label><title>Experimental data pre-processing</title>
      <p id="d1e181">The Illumina Ovine SNP50 BeadChip data of 78 meat-purpose Lacaune sheep and
103 milk-purpose Lacaune sheep were downloaded from the Sheep HapMap project
database (<uri>http://www.sheephapmap.org/</uri>, last access: 6 August 2019). The detailed description of these data was well done by Kijas et al. (2012). To facilitate subsequent gene annotation, the PLINK 1.07 software (Purcell et al., 2007) was used to upgrade the
map file to match the sheep genome Oar_v3.1 and implement
data quality control. Single-nucleotide polymorphisms (SNPs) were excluded from the subsequent analysis:
(1) call rate <inline-formula><mml:math id="M2" display="inline"><mml:mo>&lt;</mml:mo></mml:math></inline-formula> 90 %, (2) minor allele frequency (MAF) <inline-formula><mml:math id="M3" display="inline"><mml:mo>&lt;</mml:mo></mml:math></inline-formula> 0.01 and
(3) significantly deviated from Hardy–Weinberg equilibrium (<inline-formula><mml:math id="M4" display="inline"><mml:mrow><mml:mi>P</mml:mi><mml:mo>&lt;</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">6</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula>).</p>
</sec>
<sec id="Ch1.S2.SS2">
  <label>2.2</label><title>Population structure analysis</title>
      <p id="d1e227">The filtered SNPs were pruned using the indep-pairwise option (plink
– file input – indep-pairwise 50 5 0.1) in PLINK 1.07 software
(Purcell et al., 2007) to avoid the strong
influence of SNP clusters in principal component analysis (PCA) and
relatedness analysis. PCA identifies the principal components representing
the population structure based on genetic correlations (shared
identity-by-state segments) among individuals. The PCA was implemented using
the snpStats R package (<uri>https://www.rdocumentation.org/packages/snpStats</uri>, last access: 6 August 2019). To verify PCA results, ADMIXTURE (Alexander et al., 2009)
was implemented. ADMIXTURE estimates ancestry in a model-based manner from
large autosomal SNP genotype datasets, and it includes a cross-validation
procedure that allows the user to identify the number of presumed ancestral
populations (<inline-formula><mml:math id="M5" display="inline"><mml:mi>K</mml:mi></mml:math></inline-formula>) for which the model has best predictive accuracy. In this
study, <inline-formula><mml:math id="M6" display="inline"><mml:mi>K</mml:mi></mml:math></inline-formula> was set from 1 to 5, and a 10-fold cross-validation procedure was
performed.</p>
</sec>
<sec id="Ch1.S2.SS3">
  <label>2.3</label><title>Genome scans for selection signatures using hapFLK</title>
      <p id="d1e255">The hapFLK statistics detect selection signatures based on differences of
haplotype frequencies between populations (Fariello et
al., 2013). Considering the population stratification of samples, the hapFLK
method, which is based on haplotype frequency and considers population
stratification, was used in this experiment. We used hapFLK software to
compute the hapFLK statistic and kinship matrix assuming 10 clusters in the
fastPHASE model and used 98 Australia Poll Merino samples as an outgroup
(<uri>http://www.sheephapmap.org/hapmap.php</uri>, last access: 6 August 2019). Then the hapFLK statistic was
computed as the average across 20 expectation–maximization (EM) iterations
to fit the LD model. However, the hapFLK statistic does not strictly follow
any of the existing statistical distributions. To investigate the
distribution of the hapFLK statistics, we plot a histogram of the hapFLK
statistic. Then, we standardized hapFLK following Eq. (1):
            <disp-formula id="Ch1.E1" content-type="numbered"><label>1</label><mml:math id="M7" display="block"><mml:mrow><?xmltex \hack{\hbox\bgroup\fontsize{8.5}{8.5}\selectfont$\displaystyle}?><mml:mi mathvariant="normal">Standardized</mml:mi><mml:mspace width="0.25em" linebreak="nobreak"/><mml:mi mathvariant="normal">hapFLK</mml:mi><mml:mo>=</mml:mo><mml:mstyle displaystyle="true"><mml:mfrac style="display"><mml:mrow><mml:mi mathvariant="normal">Raw</mml:mi><mml:mspace width="0.25em" linebreak="nobreak"/><mml:mi mathvariant="normal">hapFLK</mml:mi><mml:mo>-</mml:mo><mml:mi mathvariant="normal">mean</mml:mi><mml:mo>(</mml:mo><mml:mi mathvariant="normal">raw</mml:mi><mml:mspace linebreak="nobreak" width="0.25em"/><mml:mi mathvariant="normal">hapFLK</mml:mi><mml:mo>)</mml:mo></mml:mrow><mml:mrow><mml:mi mathvariant="normal">SD</mml:mi><mml:mo>(</mml:mo><mml:mi mathvariant="normal">raw</mml:mi><mml:mspace linebreak="nobreak" width="0.25em"/><mml:mi mathvariant="normal">hapFLK</mml:mi><mml:mo>)</mml:mo></mml:mrow></mml:mfrac></mml:mstyle><mml:mo>,</mml:mo><?xmltex \hack{$\egroup}?></mml:mrow></mml:math></disp-formula>
          where SD (raw hapFLK) is standard deviation of raw hapFLK. Thus, the
standardized hapFLK (<inline-formula><mml:math id="M8" display="inline"><mml:mi>Z</mml:mi></mml:math></inline-formula> scores) roughly follows a standardized normal
distribution. Finally, we computed the <inline-formula><mml:math id="M9" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> value for each SNP according to this standardized normal distribution.</p>
</sec>
<sec id="Ch1.S2.SS4">
  <label>2.4</label><title>Gene annotation</title>
      <p id="d1e333">Candidate regions identified by hapFLK were annotated using ovine reference
genome (Oar_v3.1). Gene function was annotated using the
National Center for Biotechnology Information Gene
(<uri>http://www.ncbi.nlm.nih.gov/gene/</uri>, last access: 6 August 2019), which was used for Gene Ontology (GO)
analysis. The sheep QTL database
(<uri>http://www.animalgenome.org/cgi-bin/QTLdb/OA/index</uri>, last access: 2 May 2019) was used to find
whether the known milk-related QTLs are located in selection signature regions.
In addition, the online database OMIM (<uri>http://www.ncbi.nlm.nih.gov/omim/</uri>, last access: 6 August 2019) and genomic information from other species, including humans, mice and bovines, were used to predict gene function.</p>
</sec>
<sec id="Ch1.S2.SS5">
  <label>2.5</label><title>GO and KEGG enrichment analysis</title>
      <p id="d1e354">To extract biological meanings from the list of candidate genes,  GO enrichment and Kyoto Encyclopedia of Genes and<?pagebreak page503?> Genomes (KEGG)
enrichment analyses were performed using the OmicShare tools
(<uri>https://www.omicshare.com/tools/</uri>, last access: 6 August 2019). For GO enrichment, all candidate genes were
mapped to GO terms in the Gene Ontology database. Gene numbers were
calculated for every term, and significantly enriched GO terms in candidate
genes compared to the genome background were defined by a hypergeometric
test. The <inline-formula><mml:math id="M10" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> value calculated from hypergeometric distribution
follows Eq. (2):
            <disp-formula id="Ch1.E2" content-type="numbered"><label>2</label><mml:math id="M11" display="block"><mml:mrow><mml:mi>P</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">1</mml:mn><mml:mo>-</mml:mo><mml:munderover><mml:mo movablelimits="false">∑</mml:mo><mml:mrow><mml:mi>i</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">0</mml:mn></mml:mrow><mml:mrow><mml:mi>m</mml:mi><mml:mo>-</mml:mo><mml:mi>i</mml:mi></mml:mrow></mml:munderover><mml:mstyle displaystyle="true"><mml:mfrac style="display"><mml:mrow><mml:mfenced close=")" open="("><mml:mstyle displaystyle="false"><mml:mfrac style="text"><mml:mi>M</mml:mi><mml:mi>i</mml:mi></mml:mfrac></mml:mstyle></mml:mfenced><mml:mfenced open="(" close=")"><mml:mstyle displaystyle="false"><mml:mfrac style="text"><mml:mrow><mml:mi>N</mml:mi><mml:mo>-</mml:mo><mml:mi>M</mml:mi></mml:mrow><mml:mrow><mml:mi>n</mml:mi><mml:mo>-</mml:mo><mml:mi>i</mml:mi></mml:mrow></mml:mfrac></mml:mstyle></mml:mfenced></mml:mrow><mml:mstyle displaystyle="false"><mml:mfrac style="text"><mml:mi>N</mml:mi><mml:mi>n</mml:mi></mml:mfrac></mml:mstyle></mml:mfrac></mml:mstyle><mml:mo>,</mml:mo></mml:mrow></mml:math></disp-formula>
          where <inline-formula><mml:math id="M12" display="inline"><mml:mi>N</mml:mi></mml:math></inline-formula> is the number of all GO-annotated genes; <inline-formula><mml:math id="M13" display="inline"><mml:mi>n</mml:mi></mml:math></inline-formula> is the number of
candidate genes in <inline-formula><mml:math id="M14" display="inline"><mml:mi>N</mml:mi></mml:math></inline-formula>; <inline-formula><mml:math id="M15" display="inline"><mml:mi>M</mml:mi></mml:math></inline-formula> is the number of particular GO-term-annotated genes in <inline-formula><mml:math id="M16" display="inline"><mml:mi>N</mml:mi></mml:math></inline-formula>; <inline-formula><mml:math id="M17" display="inline"><mml:mi>m</mml:mi></mml:math></inline-formula> is the number of particular GO-term-annotated genes identified by selection signature in <inline-formula><mml:math id="M18" display="inline"><mml:mi>M</mml:mi></mml:math></inline-formula>. For pathway enrichment analysis, significantly enriched pathways in candidate genes compared to the genome background were also defined by a hypergeometric test. The calculated <inline-formula><mml:math id="M19" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> value went through fast discovery rate (FDR) correction following Eq. (3):
            <disp-formula id="Ch1.E3" content-type="numbered"><label>3</label><mml:math id="M20" display="block"><mml:mrow><mml:mi mathvariant="normal">FDR</mml:mi><mml:mo>=</mml:mo><mml:mi>P</mml:mi><mml:mo>⋅</mml:mo><mml:mi>n</mml:mi><mml:mo>/</mml:mo><mml:mo>(</mml:mo><mml:mi mathvariant="normal">rank</mml:mi><mml:mi>P</mml:mi><mml:mo>)</mml:mo><mml:mo>,</mml:mo></mml:mrow></mml:math></disp-formula>
          where <inline-formula><mml:math id="M21" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> is the raw <inline-formula><mml:math id="M22" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> value, <inline-formula><mml:math id="M23" display="inline"><mml:mi>n</mml:mi></mml:math></inline-formula> is the number of tests and rank<inline-formula><mml:math id="M24" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> is the rank for the specific raw <inline-formula><mml:math id="M25" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> value. Taking FDR <inline-formula><mml:math id="M26" display="inline"><mml:mo>≤</mml:mo></mml:math></inline-formula> 0.05, GO terms and pathways meeting this condition were defined as significantly enriched for candidate genes.</p>
</sec>
</sec>
<sec id="Ch1.S3">
  <label>3</label><title>Results and discussions</title>
<sec id="Ch1.S3.SS1">
  <label>3.1</label><title>Population genetic structure</title>
      <p id="d1e578">A total of 46 781 SNPs and 171 individuals were selected for further
analysis after quality control. After implementing LD pruning, 13 935 SNPs
with low LD were used for PCA and ADMIXTURE analysis. The PCA results showed
that all animals can be divided into two groups by the first principal
component (PC1): milk and non-milk sheep (Fig. 1a). The first two principal
components (PC1 and PC2) can divide these samples into four subgroups (Fig. 1a) and explained 2.8 % and 1.7 % of the variance respectively (Fig. 1b). The results from the ADMIXTURE analysis showed that the least amount of
cross-validation error occurred when <inline-formula><mml:math id="M27" display="inline"><mml:mrow><mml:mi>K</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">4</mml:mn></mml:mrow></mml:math></inline-formula> (Fig. 1c) indicating that <inline-formula><mml:math id="M28" display="inline"><mml:mrow><mml:mi>K</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">4</mml:mn></mml:mrow></mml:math></inline-formula> was the optimal modeling choice. Therefore, these samples could be
appropriately divided into four subgroups (Fig. 1d), which was consistent
with PCA.</p>

      <?xmltex \floatpos{t}?><fig id="Ch1.F1" specific-use="star"><?xmltex \currentcnt{1}?><label>Figure 1</label><caption><p id="d1e607">Population structure of the seven sheep populations. According to PC1, <bold>(a)</bold> all samples can be divided into four groups, and <bold>(b)</bold> the first two PCs can explain 2.8 % and 1.7 % variance respectively; <bold>(c)</bold> when <inline-formula><mml:math id="M29" display="inline"><mml:mrow><mml:mi>K</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">4</mml:mn></mml:mrow></mml:math></inline-formula>, the least amount of cross-validation error occurred; <bold>(d)</bold> makes it fairly clear that <inline-formula><mml:math id="M30" display="inline"><mml:mrow><mml:mi>K</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">4</mml:mn></mml:mrow></mml:math></inline-formula> was the optimal modeling choice. The blue background represents the meat sheep group; the red background represents the milk group.</p></caption>
          <?xmltex \igopts{width=398.338583pt}?><graphic xlink:href="https://aab.copernicus.org/articles/62/501/2019/aab-62-501-2019-f01.png"/>

        </fig>

</sec>
<sec id="Ch1.S3.SS2">
  <label>3.2</label><title>Genome scans for selection using hapFLK</title>
      <p id="d1e661">The hapFLK histogram shows that the hapFLK statistic approximately follows a
normal distribution (Fig. 2, top right), which is similar to the previous
study (Kijas, 2014; Yuan et al., 2017). Therefore, the <inline-formula><mml:math id="M31" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> values could be
calculated from the normal distribution. Negative <inline-formula><mml:math id="M32" display="inline"><mml:mrow><mml:msub><mml:mi>log⁡</mml:mi><mml:mn mathvariant="normal">10</mml:mn></mml:msub></mml:mrow></mml:math></inline-formula> <inline-formula><mml:math id="M33" display="inline"><mml:mi>P</mml:mi></mml:math></inline-formula> values plotted in genomic order revealed six regions under strong selection (Fig. 2). The genomic location, size, peak SNP and peak genes in the selection regions identified using Oar_v3.1 (Jiang et al., 2014) were summarized in Table S1 in the Supplement. The average size of selective regions was 7.97 Mb ranging from
4.33 to 17.00 Mb. These six selected regions in this study were compared
with the six convergence candidate regions (CCRs) identified by Gutierrez
Gil et al. (2014). However, only an overlapping region (Chr6: 38.64–43.02 Mb) was found, and the majority of selection regions are not overlapping. A similar situation also appeared in the sheep-tail-type selection signature analyses (Moradi et al., 2012; Moioli et al., 2015). There are several reasons that may explain this result: (1) only one breed was analyzed in the current study, while 10 breeds were incorporated in a previous study (Gutierrez-Gil et al., 2014); (2) the methods between
this study and Gutierrez-Gil et al. (2014) were different, which can detect
different variants; (3) the low SNP density in both the current study and
Gutierrez-Gil et al. (2014) might lead to a low statistical power
(Simianer et al., 2014). These results suggested that separate
populations selected for similar breeding goals have the low repeatability
of selection signature analysis results.</p>

      <?xmltex \floatpos{t}?><fig id="Ch1.F2" specific-use="star"><?xmltex \currentcnt{2}?><label>Figure 2</label><caption><p id="d1e691">Manhattan plot of hapFLK statistics. The histogram in the top right
shows the hapFLK statistics roughly followed a normal distribution. Black
dotted line means the suggestive line; the <inline-formula><mml:math id="M34" display="inline"><mml:mrow><mml:mo>-</mml:mo><mml:mi>log⁡</mml:mi><mml:mi>P</mml:mi></mml:mrow></mml:math></inline-formula> value above this line
means significant.</p></caption>
          <?xmltex \igopts{width=341.433071pt}?><graphic xlink:href="https://aab.copernicus.org/articles/62/501/2019/aab-62-501-2019-f02.png"/>

        </fig>

</sec>
<sec id="Ch1.S3.SS3">
  <label>3.3</label><title>Genes and functional annotations</title>
      <p id="d1e720">To understand the function of these selection regions, we mapped them to
the sheep genome Oar_v3.1 and sheep QTL database
(<uri>http://www.animalgenome.org/cgi-bin/QTLdb/OA/index</uri>, last access: 2 May 2019). As a result, 38 QTLs
related to milk traits (Table 1) and 334 candidate genes (Table S1) were
identified in selected regions. These 38 milk-related QTLs were enriched in
all milk-related QTLs in the sheep QTL database with a hypergeometric test of
<inline-formula><mml:math id="M35" display="inline"><mml:mrow><mml:mi>P</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">2.65506</mml:mn><mml:mo>×</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">7</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula> (significantly different from what is expected by chance). Significantly, the majority of milk-related QTLs (27 out of 38) were located at chromosome 1 (Chr1: 228.88–245.88 Mb). In detail, these 27 QTLs were linked to the percentage of milk fat and milk protein as well as yield of milk protein and milk fat in sheep (Sutera et al., 2019; Hao et al., 2019) suggesting that selection region on chromosome 1 may play an important role in sheep milk performance. In chromosome 13 selection region (Chr13: 43.57–53.55 Mb), two copy number variation regions (CNVRs) (Chr13: 48.83–49.71 Mb, Chr13: 49.01–49.71 Mb) were identified to be significantly (<inline-formula><mml:math id="M36" display="inline"><mml:mrow><mml:mi>P</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">6.051</mml:mn><mml:mo>×</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">7</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula>) associated with milk yield in Valle del Belice sheep (Di Gerlando et al., 2019). However, there was no known milk-related QTL in chromosome 18 selection region (Chr18: 37.95–42.60 Mb). This may be the relatively poor annotation of the current sheep QTL database (release 38), and this will be addressed when more milk-related QTLs are identified in the future.</p>

<?xmltex \floatpos{t}?><table-wrap id="Ch1.T1" specific-use="star"><?xmltex \currentcnt{1}?><label>Table 1</label><caption><p id="d1e773">Milk-related QTLs located in selection regions.</p></caption><oasis:table frame="topbot"><oasis:tgroup cols="6">
     <oasis:colspec colnum="1" colname="col1" align="left"/>
     <oasis:colspec colnum="2" colname="col2" align="right"/>
     <oasis:colspec colnum="3" colname="col3" align="right"/>
     <oasis:colspec colnum="4" colname="col4" align="right"/>
     <oasis:colspec colnum="5" colname="col5" align="right"/>
     <oasis:colspec colnum="6" colname="col6" align="left"/>
     <oasis:thead>
       <oasis:row>
         <oasis:entry colname="col1">Region</oasis:entry>
         <oasis:entry colname="col2">Chromosome</oasis:entry>
         <oasis:entry colname="col3">Start</oasis:entry>
         <oasis:entry colname="col4">End</oasis:entry>
         <oasis:entry colname="col5">Size</oasis:entry>
         <oasis:entry colname="col6">Sheep QTL</oasis:entry>
       </oasis:row>
       <oasis:row rowsep="1">
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3">(Mb)</oasis:entry>
         <oasis:entry colname="col4">(Mb)</oasis:entry>
         <oasis:entry colname="col5">(Mb)</oasis:entry>
         <oasis:entry colname="col6"/>
       </oasis:row>
     </oasis:thead>
     <oasis:tbody>
       <oasis:row>
         <oasis:entry colname="col1">1</oasis:entry>
         <oasis:entry colname="col2">1</oasis:entry>
         <oasis:entry colname="col3">228.88</oasis:entry>
         <oasis:entry colname="col4">245.88</oasis:entry>
         <oasis:entry colname="col5">17.00</oasis:entry>
         <oasis:entry colname="col6">170 224 (Chr1: 233736829–233736869, MF) (Sutera et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">170 226 (Chr1: 233736829–233736869, PP) (Sutera et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 252 (Chr1: 236278074–236278174, PY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 251 (Chr1: 236278074–236278174, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 400 (Chr1: 236299569–236299669, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 150 (Chr1: 236964320–236964420, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 182 (Chr1: 237198394–237198494, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 181 (Chr1: 237198394–237198494, MY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 180 (Chr1: 237198394–237198494, PY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 524 (Chr1: 237368505–237368605, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 208 (Chr1: 237476668–237476768, MY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 207 (Chr1: 237476668–237476768, PY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 206 (Chr1: 237476668–237476768, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 442 (Chr1: 237702646–237702746, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 168 (Chr1: 237899096–237899196, MY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 167 (Chr1: 237899096–237899196, PY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 166 (Chr1: 237899096–237899196, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 446 (Chr1: 240960592–240960692, MY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 445 (Chr1: 240960592–240960692, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 280 (Chr1: 241703508–241703608, PY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 279 (Chr1: 241703508–241703608, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 499 (Chr1: 242397140–242397240, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 388 (Chr1: 242789285–242789385, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 387 (Chr1: 242789285–242789385, PY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 386 (Chr1: 242789285–242789385, MY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 551 (Chr1: 243458586–243458686, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row rowsep="1">
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">169 144 (Chr1: 243778419–243778519, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">2</oasis:entry>
         <oasis:entry colname="col2">2</oasis:entry>
         <oasis:entry colname="col3">34.95</oasis:entry>
         <oasis:entry colname="col4">39.28</oasis:entry>
         <oasis:entry colname="col5">4.33</oasis:entry>
         <oasis:entry colname="col6">169 594 (Chr2: 37635669–37635769, MY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">13 911 (Chr2: 37102076–37260066, PP) (Gutierrez-Gil et al., 2009)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">57 738 (Chr2: 32023745–207420807, PP) (Garcia-Gamez et al., 2013)</oasis:entry>
       </oasis:row>
       <oasis:row rowsep="1">
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">13 915 (Chr2: 8804882–248905321, MF) (Gutierrez-Gil et al., 2009)</oasis:entry>
       </oasis:row>
       <oasis:row rowsep="1">
         <oasis:entry colname="col1">3</oasis:entry>
         <oasis:entry colname="col2">3</oasis:entry>
         <oasis:entry colname="col3">91.37</oasis:entry>
         <oasis:entry colname="col4">97.96</oasis:entry>
         <oasis:entry colname="col5">6.59</oasis:entry>
         <oasis:entry colname="col6">57 740 (Chr3: 97143203–97187127, MY) (Garcia-Gamez et al., 2013)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">4</oasis:entry>
         <oasis:entry colname="col2">6</oasis:entry>
         <oasis:entry colname="col3">38.64</oasis:entry>
         <oasis:entry colname="col4">43.94</oasis:entry>
         <oasis:entry colname="col5">5.30</oasis:entry>
         <oasis:entry colname="col6">169 477 (Chr6: 41850279–41850379, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">13 818 (Chr6: 43152047–43302377, MY) (Arnyasi et al., 2009)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">13 819 (Chr6: 43152047–43302377, MLACT) (Arnyasi et al., 2009)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">13 820 (Chr6: 43152047–43302377, MY) (Arnyasi et al., 2009)</oasis:entry>
       </oasis:row>
       <oasis:row rowsep="1">
         <oasis:entry colname="col1"/>
         <oasis:entry colname="col2"/>
         <oasis:entry colname="col3"/>
         <oasis:entry colname="col4"/>
         <oasis:entry colname="col5"/>
         <oasis:entry colname="col6">13 821 (Chr6: 43152047–43302377, MLACT) (Arnyasi et al., 2009)</oasis:entry>
       </oasis:row>
       <oasis:row rowsep="1">
         <oasis:entry colname="col1">5</oasis:entry>
         <oasis:entry colname="col2">13</oasis:entry>
         <oasis:entry colname="col3">43.57</oasis:entry>
         <oasis:entry colname="col4">53.55</oasis:entry>
         <oasis:entry colname="col5">9.98</oasis:entry>
         <oasis:entry colname="col6">169 479 (Chr13: 45264465–45264465, FY) (Hao et al., 2019)</oasis:entry>
       </oasis:row>
       <oasis:row>
         <oasis:entry colname="col1">6</oasis:entry>
         <oasis:entry colname="col2">18</oasis:entry>
         <oasis:entry colname="col3">37.95</oasis:entry>
         <oasis:entry colname="col4">42.60</oasis:entry>
         <oasis:entry colname="col5">4.65</oasis:entry>
         <oasis:entry colname="col6">–</oasis:entry>
       </oasis:row>
     </oasis:tbody>
   </oasis:tgroup></oasis:table><table-wrap-foot><p id="d1e776">Note: milk fat percentage – MF; milk protein percentage – PP; milk protein yield – PY; milk fat yield – FY; milk yield – MY; milk lactose yield – MLACT.</p></table-wrap-foot></table-wrap>

      <p id="d1e1543"><?xmltex \hack{\newpage}?>Of those candidate genes, succinate receptor 1 (Chr1: 234.11–234.16 Mb,
<italic>SUCNR1</italic>) has been reported as close to the SNP rs417079368 (Chr1: 233.59 Mb), which was significantly (<inline-formula><mml:math id="M37" display="inline"><mml:mrow><mml:mi>P</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">4.07</mml:mn><mml:mo>×</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">7</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula>) associated with milk fat percentage and protein percentage in Valle del Belice sheep
(Sutera et al., 2019). Its ligand, succinate,
plays  an important role not only in adenosine triphosphate generation
(Littlewood-Evans et al., 2016) but also in signalling transduction by
binding to and activating its specific receptor, SUCNR1  (also known as G-protein-coupled receptor-91, GPR91) (Mu et al., 2017). <italic>SUCNR1</italic> is expressed in multi-tissues and organs in sheep, such <?pagebreak page505?>as the omentum, spleen, liver and mammary gland (Clark et al., 2017). Additionally, the expression of
<italic>SUCNR1</italic> is related to milk protein trait in sheep
(Suarez-Vega et al., 2016). <italic>PPARGC1A</italic> (Chr6: 43.23–43.33 Mb,
PPARG coactivator 1 alpha) located near a multi-effect milk-related QTL
region (Chr6: 43.15–43.30 Mb) (Arnyasi et al., 2009). Many scholars have shown that this gene was associated with milk production, milk fat percentage, and other milk-related properties (Khatib et al., 2007; Weikard et al., 2005; Schennink et al., 2009; Cong et al., 2016).</p>

      <?xmltex \floatpos{t}?><fig id="Ch1.F3" specific-use="star"><?xmltex \currentcnt{3}?><label>Figure 3</label><caption><p id="d1e1584">Second-level GO categories of candidate genes.</p></caption>
          <?xmltex \igopts{width=497.923228pt}?><graphic xlink:href="https://aab.copernicus.org/articles/62/501/2019/aab-62-501-2019-f03.png"/>

        </fig>

      <?pagebreak page506?><p id="d1e1593">In order to further extract known biological meanings from these 334 candidate genes, GO and KEGG enrichment analyses were implemented using the OmicShare tools (<uri>https://www.omicshare.com/tools/</uri>, last access: 6 August 2019). GO analysis has shown that these
candidate genes participated in 47 second-level GO categories (Fig. 3) and
significant (FDR <inline-formula><mml:math id="M38" display="inline"><mml:mo>≤</mml:mo></mml:math></inline-formula> 0.05) enrichment in 12 GO terms (Table S1). The
highest numbers of genes of second-level GO categories of biological processes (BPs), cellular components (CCs) and molecular function (MFs) are cellular process (GO: 0009987, biological process, 221 genes), cell (GO: 0005623, cellular components, 241 genes), cell part (GO: 0044464, cellular components, 241 genes) and binding (GO: 0005488, molecular function, 189 gene). Previously, genes involved in these second-level GO terms showed
strong associations with ruminant milk productivities. For example, it has
been reported that genes located in bovine milk yield QTL regions are preferred
to enrichment in cellular process (GO: 000987), cell (GO: 0005623), cell part
(GO: 0044464) and cellular process (GO: 0009987) (Salih and
Adelson, 2009). Further, genes involved in cellular process (GO: 0009987) were
found to be associated with fat yield, milk yield, protein yield and
fertility index in Nordic red cattle (Iso-Touru et al., 2016). Also,
miRNA target genes of goat mammary gland were enriched in cellular processes
(GO: 000987, biological process), cell (GO: 0005623, cellular component), cell part (GO: 0044464, cellular component) and cellular process (GO: 0005488, molecular function) (Ji et al., 2012). All these
findings support the candidate genes identified in the current study
contribute to fundamental physiology of dairy sheep.</p>
      <p id="d1e1606">The most significant GO term of CC is cytoplasm (GO: 0005737, <inline-formula><mml:math id="M39" display="inline"><mml:mrow><mml:mi>P</mml:mi><mml:mo>=</mml:mo></mml:mrow></mml:math></inline-formula>6.93E10-8, FDR <inline-formula><mml:math id="M40" display="inline"><mml:mo>=</mml:mo></mml:math></inline-formula> <inline-formula><mml:math id="M41" display="inline"><mml:mrow><mml:mn mathvariant="normal">2.98</mml:mn><mml:mo>×</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">5</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula>). The most significant GO term of MF was the
G-protein coupled nucleotide receptor activity (GO: 0001608, <inline-formula><mml:math id="M42" display="inline"><mml:mrow><mml:mi>P</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">6.37007</mml:mn><mml:mo>×</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">5</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula>, FDR <inline-formula><mml:math id="M43" display="inline"><mml:mo>=</mml:mo></mml:math></inline-formula> <inline-formula><mml:math id="M44" display="inline"><mml:mrow><mml:mn mathvariant="normal">6.37007</mml:mn><mml:mo>×</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">5</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula>) and G-protein coupled purinergic nucleotide receptor activity (GO: 0045028, <inline-formula><mml:math id="M45" display="inline"><mml:mrow><mml:mi>P</mml:mi><mml:mo>=</mml:mo><mml:mn mathvariant="normal">6.37007</mml:mn><mml:mo>×</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">5</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula>, FDR <inline-formula><mml:math id="M46" display="inline"><mml:mo>=</mml:mo></mml:math></inline-formula> <inline-formula><mml:math id="M47" display="inline"><mml:mrow><mml:mn mathvariant="normal">6.37007</mml:mn><mml:mo>×</mml:mo><mml:msup><mml:mn mathvariant="normal">10</mml:mn><mml:mrow><mml:mo>-</mml:mo><mml:mn mathvariant="normal">5</mml:mn></mml:mrow></mml:msup></mml:mrow></mml:math></inline-formula>). The finding that the cytoplasm GO term (GO: 0005737) was enriched in our gene set is interesting. Previous studies have reported that
candidate genes associated with milk protein composition traits in a Chinese
Holstein population were significantly (FDR <inline-formula><mml:math id="M48" display="inline"><mml:mo>=</mml:mo></mml:math></inline-formula> 0.0247) enriched in
cytoplasm (GO: 0005737) (Zhou et al., 2019). Apart
from GO analysis, KEGG analysis showed that candidate genes could be
annotated to 36 KEGG classes (Fig. S1) and could participate in 173 pathways. The highest number of genes of KEGG categories was signal transduction (29 genes). However, no significant pathways were found.</p>
</sec>
</sec>
<sec id="Ch1.S4" sec-type="conclusions">
  <label>4</label><title>Conclusions</title>
      <p id="d1e1755">Based on haplotype-based methods, the current study has six significant
selection regions, which contains 38 known QTLs associated with milk yield.
The identified six selection regions harbored 334 candidate genes. Some of
the key candidate genes such as <italic>SUCNR1</italic> and <italic>PPARGC1A</italic> may play an important role in sheep milk performance. The findings from this study can be useful to optimize breeding programs to improve the milk-related traits after further functional studies and validation of the association in other independent populations.</p><?xmltex \hack{\newpage}?>
</sec>

      
      </body>
    <back><notes notes-type="dataavailability"><title>Data availability</title>

      <p id="d1e1770">The data of the paper are available from Sheep
HapMap project database (<uri>http://www.sheephapmap.org/</uri>, International Sheep Genomics Consortium, 2019).</p>
  </notes><app-group>
        <supplementary-material position="anchor"><p id="d1e1776">The supplement related to this article is available online at: <inline-supplementary-material xlink:href="https://doi.org/10.5194/aab-62-501-2019-supplement" xlink:title="zip">https://doi.org/10.5194/aab-62-501-2019-supplement</inline-supplementary-material>.</p></supplementary-material>
        </app-group><notes notes-type="authorcontribution"><title>Author contributions</title>

      <p id="d1e1785">FL and XP designed the experiment and edited the paper. ZY analyzed the data and wrote the paper. WL discussed the results.</p>
  </notes><notes notes-type="competinginterests"><title>Competing interests</title>

      <p id="d1e1791">The authors declare that they have no conflict
of interest.</p>
  </notes><ack><title>Acknowledgements</title><p id="d1e1797">The authors gratefully acknowledge Ruidong Xiang for language editing.</p></ack><notes notes-type="financialsupport"><title>Financial support</title>

      <p id="d1e1802">This research has been supported by the National Key Technology Research and Development Program of the Ministry of Science and Technology of China (grant no. 2015BAD03B05), the Program for Changjiang Scholars and Innovative Research Team in University (grant no. IRT13019), and the China Agriculture Research System (grant no. CARS-38).</p>
  </notes><notes notes-type="reviewstatement"><title>Review statement</title>

      <p id="d1e1808">This paper was edited by Steffen Maak and reviewed by Majid Khansefid and one anonymous referee.</p>
  </notes><ref-list>
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    <!--<article-title-html>Selection signature analysis reveals genes  underlying sheep milking performance</article-title-html>
<abstract-html><p>Sheep milk is the most important feed resource for
newborn lambs and an important food resource for humans. Sheep milk production and ingredients are influenced by genetic and environmental
factors. In this study, we implemented selection signature analysis using
Illumina Ovine SNP50 BeadChip data of 78 meat Lacaune and 103 milk Lacaune sheep, which have similar genetic backgrounds, from the Sheep HapMap project to identify candidate genes related to ovine milk traits. Since different
methods can detect different variation types and complement each other, we
used a haplotype-based method (hapFLK) to implement selection signature
analysis. The results revealed six selection signature regions showing signs of being selected (<i>P</i> &lt; 0.001): chromosomes 1, 2, 3, 6, 13
and 18. In addition, 38 quantitative trait loci (QTLs) related to sheep milk performance were
identified in selection signature regions, which contain 334 candidate
genes. Of those, <i>SUCNR1</i> (succinate receptor 1) and <i>PPARGC1A</i> (PPARG coactivator 1 alpha) may be the most significant genes that affect sheep milking performance, which supply a significant indication  for future studies to investigate candidate genes that play an important role in milk production and quality.</p></abstract-html>
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