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Novel SNP Markers for Non-invasive Samples in Tibetan Macaque (Macaca thibetana)

PJZ_54_4_1819-1827

Novel SNP Markers for Non-invasive Samples in Tibetan Macaque (Macaca thibetana)

Hua Liu, Wei Hou, Li Peng, Changjun Peng, Yansen Cai and Jing Li*

Key Laboratory of Bio-Resource and Eco-Environment of Ministry of Education, College of Life Sciences, Sichuan University, Chengdu 610065, Sichuan, P.R. China

ABSTRACT

Owing to the characteristic of high-throughput, easy transferability between laboratories and low genotyping error, single nucleotide polymorphism (SNPs) are considered to be preferable molecular markers for genetic population analysis. SNP markers that are suitable for non-invasive samples are important to wild population investigations in endangered species. Based on the whole genome sequences of Macaca thibetana, we successfully developed 26 SNP loci that were sensitive to non-invasive samples, then based on which, genetic diversity and population structure of three populations of M. thibetana were estimated. Our results showed the novel SNP loci were polymorphic and bi-allelic. The observed and expected heterozygosity across 38 individuals varied from 0.184-0.605 and 0.405-0.506, respectively. The minor allele frequency were ranged from 0.277 to 0.487 with an average of 0.417 per locus. We detected the lowest genetic diversity in the HS population compared with the EM and FJ population. Population analysis based on Structure and neighbour-joining tree revealed a unique genetic cluster of HS population and a similar genetic background and close relatedness between the EM and FJ population. It is the first reported polymorphic SNP markers in M. thibetana that can be applied to non-invasive samples, and the SNPs based analysis on the population structure and genetic diversity has provided new insight into the relationships among wild populations of M. thibetana.


Article Information

Received 13 November 2019

Revised 02 January 2020

Accepted 15 February 2020

Available online 24 August 2021

(early access)

Published 22 April 2022

Authors’ Contribution

HL performed the laboratory work, analysed the data and wrote the manuscript. WH carried out the bioinformatics analyses. LP designed the primers. CP screened candidate loci. YC collected the samples and performed the experiments. JL supervised the laboratory work, conceived the study and participated in its design.

Key words

M. thibetana, SNP markers, Non-invasive samples, Population structure, Genetic diversity

DOI: https://dx.doi.org/10.17582/journal.pjz/20191113051142

* Corresponding author: ljtjf@126.com

0030-9923/2022/0004-1819 $ 9.00/0

Copyright 2022 by the authors. Licensee Zoological Society of Pakistan.

This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).



INTRODUCTION

The Tibetan macaque (Macaca thibetana), commonly considered to be endemic to China, has wild distributions in Sichuan, Yunnun, Guizhou, Hunan, Guangxi, Anhui, Zhejiang, Guangdong, Jiangxi, and Fujian provinces (Jiang et al., 1996; Zhong et al., 2012). This species is categorized as a near threatened species in the IUCN Red List and is listed in CITES in Appendix II (Wang, 1998). Based on external morphological and anatomical variation analysis, M. thibetana has been divided into four subspecies: M. thibetana huangshanensis, specifically distributed at Huangshan mountain in the east of China; M. thibetana guizhouensis, mainly distributed in the south and southwest of China; M. thibetana thibetana, mostly distributed in the southwest of China; and M. thibetana pullus, wildly distributed in the south and east of China (Jiang et al., 1996). However, continued anthropogenic interference or natural habitat isolation has resulted in a declination of the wild population size of M. thibetana (Li et al., 2014), which subsequently lead to reduction of genetic diversity and modification of population structure. To better understand the status of wild populations of M thibetana in China, it is necessary to develop molecular markers that were appropriate for non-invasive samples to estimate the genetic diversity and analyze population structure of M. thibetana.

Abundant molecular genetic markers can provide great potential for conservation research in wildlife biology (Taberlet et al., 1999; Bastos et al., 2010). Previously, mitochondrial DNA (mtDNA) has been used to investigate genetic differentiation among four subspecies (Liu et al., 2006; Li et al., 2008; Sun et al., 2010; Yao et al., 2013). Another study used microsatellite (SSR) markers to evaluate genetic diversity of the Jianyang captive population (Li et al., 2014), in addition, 26 polymorphic Alu mobile elements were identified in the Tibetan macaques and were applied to investigate genetic diversity between two Tibetan macaque populations (Guo et al., 2015). Compared with mtDNA, SSR, and other markers, single nucleotide polymorphism (SNPs), the third-generation markers, were considered as preferable tools to assay the genetic variations and to support science-based conservation designs (Varshney et al., 2007) because of their abundances in the genomes, high levels of stability and polymorphism (O’Brien et al., 1999; Defaveri et al., 2013). However, so far, only 29 SNP markers have been reported in M. thibetana based on the transcriptome sequencing (Zhang et al., 2018). These SNP loci were identified from one individual and their polymorphism among populations were unsure. To date, most reported markers such as mtDNA, SSR, Alu and SNPs in M thibetana are based on blood or other tissue samples which have limited their applications for non-invasive samples from wild populations.

Many researches indicate that non-invasive samples such as shed skin, hair, saliva and feces, are necessary alternatives to tissue samples without handing, capturing or even hurting individuals, which held great promise for the wildlife genetic analysis (Taberlet et al., 1999). However, researchers also are aware of potential weakness of non-invasive samples such as bad DNA contamination and low DNA quantity (Waits and Paetkau, 2005; Ruell and Crooks, 2007; Norman and Spong, 2015). Null alleles, false alleles and allelic dropout thus may be likely to be common in PCR amplification using such templates and lead to error genotyping (Taberlet et al., 1999). Hence, it is imperative to develop SNP markers with high sensibility and accuracy for non-invasive samples so as to apply to wild populations of endangered species. Taking the advantages of whole genome resequencing data from multiple individuals of M. thibetana, this study aims to identify polymorphic SNP loci, from which genetic markers that are sensitive and responsible to non-invasive samples could be developed. Base on the fecal samples collected from wild populations of different geographic distribution, we also aim to investigate the genetic diversity and population structure of M. thibetana.

MATERIALS AND METHODS

Sample collections and DNA extraction

In total, we collected 38 samples from wild M. thibetana, including two muscle samples, three blood samples, and 33 fecal samples. All the fecal samples were collected in 2018 from three wild populations at Emeishan-Shengtaihouqu in Sichuan Province (EM, n=11), Fanjingshan-huilongwan in Guizhou Province (FJ, n=11) as well as Huangshan-Yulinkeng in Anhui Province (HS, n=11). Sample collection sits are shown in Figure 1. These three populations are representatives of three subspecies of M. thibetana. Caution was taken to select fresh and individual-based feces according to its shape, color, size as well as moisture level of surface to avert sample repetition, and fecal samples split in different separate pellets to avoid and cross-individuals contamination (Yao et al., 2013). SSR markers together with sex markers were used for individual determination (data not shown). Blood samples provided by Administration Department of Emei Mountain Scenic Area, were taken from six injured individuals of M. thibetana. While two muscle samples were provided by Prof. Binhua Sun at Anhui University and from two dead individuals in 2017 and 2018, respectively. Genomic DNA was extracted using TIANamp Blood and Tissue Genomic DNA Kit or TIANamp Stool DNA Kit flowing the manufacturer protocol instructions. This study was approved by the Animal Care and Use Committee of the Institute of Laboratory Animal Science and Sichuan University Ethics Association.

Polymorphic SNPs isolation and PCR amplification

A dataset containing whole genome resequencing data of eight individuals of M. thibetana, provided by Sichuan Key Laboratory of Conservation Biology on Endangered Wildlife, was used for polymorphic SNP identification. M. thibetana genome was sequenced using the Illumina HiSeq X Ten platform generating ~444 million clean reads for the 8 individuals, with an average 31.09-fold genome coverage ranging from 28.41-fold to 39.09-fold (unpublished data). Due to the close relatedness between M. thibetana and M. mulatta, all the reads of eight M. thibetana were aligned to the M. mulatta reference genome rhcMac8 by bowtie software, the putative SNP loci were identified using GATK and bcftoos (De Summa et al., 2017; Danecek and Mccarthy, 2017). The polymorphic SNP loci were screened with the following strict criteria: (1) SNP loci were not located in repeat sequence; (2) SNP loci appeared as bi-allelic in the 8 individuals. (3) Each SNP locus showed highly polymorphism with minimum allele frequency (MAF) ranging from 0.50 to 0.75 among the 8 individuals. (4) The franking regions of SNPs (250bp both sides) were conservative for primer designs. Candidate SNPs were randomly selected for primer designs using Primer Premier 5. The primers were firstly tested by In-Silico PCR (http://genome.ucsc.edu) using rhcMac8 as reference and then validated by PCR amplification on a DNA panel from blood and muscle samples. Those primers generated one single band of expected size were further applied to PCR amplification for non-invasive samples.

The PCR amplifications were carried out in a total volume of 20μL reaction mixtures, including 40-400ng DNA, 2.5μL 10×Tag Buffer (1.5-2mM Mg2 + plus), 40um dNTP Mix (10mM each), 80μm of each primer (10μM), 0.2U Tag DNA Polymerase, 15pmom bovine serum albumin (BSA) and ddH2O. The PCR amplification procedures were conducted as follows: predenaturation at 95oC for 5 min, followed by 40 cycles of denaturation at 95oC for 30s, annealing at locus-specific temperature (54oC, 56oC, 58oCand 60oC) for 30s and extension at 72oCfor 40s, and final extension at 72oC for 10min. The PCR products were sequenced in both forward and reverse directions with the primers used for 2-5 times independent PCR amplifcations on the ABI3730XL Genetic Analyser (Applied biosystems) (Sangong, Chengdu, China). Subsequently, the sequenced fragments were aligned using Vector NTI 10.3.0 (Invitrogen, Carlsbad, CA, USA), and putative SNPs were identified manually. The consensus genotypes per locus were determined when each loci were amplified in at least two independent PCR results.

Data analysis

Genetic diversity: To characterize the newly developed SNP loci, the observed (Ho) and expected (He) heterozygosities as well as minor allele frequency (MAF) were calculated using CERVUS 3.0 (Kalinowski, 2007). The PIC, the P-value for the Hardy–Weinberg equilibrium (HWE) together with inbreeding coefficient index (Fis) for each locus among loci, were estimated by GENEPOP v4.2 (François, 2008). To test its discrimination power of individual identification, probability of identity (PI), cumulative probability of identity (CDP) and the cumulative probability of identity among sibs (PIDsib) across all the samples were first calculated using GIMLET software (Valière, 2010). Further individual identification simulations were performed using CERVUS software across all the SNP and sex markers (SRY and Dead box1) (Affara et al., 1993; Villesen et al., 2006).

Genetic structure: To infer the population structure among EM, FJ, FJ geographical populations, an admixture-model-based clustering method for inferring population structure based on a set of allele frequency at each locus was employed using the STRUCTURE v 2.3.4 program (Pritchard et al., 2000). In this computational approach, it assumed that all the loci are at Hardy-Weinberg equilibrium and not significant in Linkage Disequilibrium within populations. Simulations were implemented using 10,000 Markov chain Monte Carlo (MCMC) iterations, 100,000 burn-in period and 10 independent runs for each value of K (where K may be unknown). The value of K was set from 1 to 6, the maximum number of putative subpopulations (FJ, HS, and EM) plus 3 (Evanno et al., 2005). Meanwhile, STRUCTURE HARVESTER (Earl and von Holdt, 2012) (http://taylor0.biology.ucla.edu/structureHarvester/#) enable us selecting the most posterior probabilities of the K values. Next, neighbour-joining tree (Saitou and Nei, 1987), a phylogenetic tree of individuals was constructed based on the Nei’s standard genetic distance, (Nei, 1972) with 1000 bootstraps using POPULATION v1.2 (Takezaki et al., 2010) software and visualized by SPLITREE v4.1 (Huson, 1998). Owing to its highly resolved networks in the Neighbor-Net, it provides a detailed informative for genetic differentiations analysis (Bryant and Moulton, 2002).

RESULTS

Polymorphic SNPs isolation

With the criteria mentioned above, a total of 169 putative SNP loci were identified from the genome resequencing data. We randomly selected 87 polymorphic SNP loci among the eight genomes to examine their potentiality as genetic markers. We designed primers for the 87 loci, 62 (72%) of them could be genotyped successfully in both blood and muscle samples. However, when they were applied to fecal samples, 36 of the 62 loci generated either no amplification result or multiple results. Whereas the remaining 26 loci (30%, Table I) showed stable and sensitive in amplification in fecal samples indicating the prospect as genetic markers for non-invasive samples.

 

Characterization of the novel SNP loci

The 26 novel SNP markers were bi-alleles and highly polymorphic in M. thibetana individuals. Characteristics of the 26 loci in the non-invasive samples of M. thibetana were examined. The average minor allele frequency (MAF) were 0.417 per locus ranging from 0.2763 to 0.4868 (Table I). The observed heterozygosity (Ho) varied from 0.184 to 0.605 with an average of 0.401 per locus, and the expected heterozygosity (He) were from 0.405 to 0.506 with an average of 0.486 per locus. The Genepop analysis exhibited that the Fis across all the SNP loci were ranged from 0.1986 to 0.5915 and the HW test showed all loci were in line with Hardy-Weinberg equilibrium with P values varied from 0.1060 to 1.000 (P>0.01) after Bonferroni correction in the overall samples.

 

Table II. The simulation of individual identification of 38 individuals based on different number of SNP loci.

Numbers of loci

6

7

8

9

10

11

12

PID(sib)

4.41×10-2

2.62×10-2

1.56×10-2

9.27×10-3

5.52×10-3

3.29×10-3

1.97×10-3

PI

2.55×10-3

9.4×10-4

3.48×10-4

1.29×10-4

4.76×10-5

1.76×10-5

6.57×10-6

Individual simulations

34

36

37

38

38

38

38

 

In addition, the individual simulation results suggested that the cumulative identity probability (PI) of the 26 SNP loci was 1.06×10-11, and the most informative 9 loci were enough for discriminating 38 individuals with PI value 1.29×10-4 (Table II).

 

 

Genetic diversity analysis

We assessed genetic diversity level among the three wild populations of M. thibetana based on newly identified polymorphic SNP loci. Statistical tests showed the mean Ho of EM, FJ and HS populations were 0.360, 0.531 and 0.315, respectively; The mean He of EM, FJ and HS populations were 0.473, 0.453 and 0.327, respectively. Moreover, the average polymorphic information content (PIC) of three populations were 0.326, 0.333 and 0.250 (Table III), indicating a moderate high level of genetic diversity in the wild populations (0.25<PIC<0.5).

Population structure inferred from SNP data

SNP based population structure analysis showed consistent results over ten repeated runs for each tested K values (1-6) (data not shown). K=2, where ΔK reached the maximum value, indicated the likely presence of two genetic clusters (Fig. 2). The EM and FJ individuals shared a same cluster, while the HS individuals were assigned to another unique genetic cluster. To exclude interference resulting from samples of other groups, we also ran separate structure analysis on the each subset of item pool (EM, FJ or HS population), which generated similar results as shown in Figure 2 (data not shown) suggesting a close relatedness between the EM and FJ population. Furthermore, neighbour-joining tree based on Nei’s standard genetic distance provided a visualization of genetic differentiation among populations (Fig. 3). The partitioning of HS individuals into a unique cluster was consistent with the results of the structure analysis. However, the 11 individuals from the EM population were separately clustered with individuals from the FJ population forming a cluster distinct from the HS population.

 

Table III. The genetic diversity among three populations of M. thibetana.

Sampling sites

Ho

He

PIC

EM

0.360

0.473

0.326

FJ

0.531

0.453

0.333

HS

0.315

0.327

0.250

Overall

0.401

0.486

0.364

 

DISCUSSION

Development of polymorphic SNP loci for non-invasive samples

Given the development of next-generation sequencing technology, the availability of whole genome sequences of the M. thibetana enables us to screen polymorphic SNP markers more rapidly and more efficiently. Previously, our lab reported the first genome of M. thibetana from one individual and identified about 11.9 million single nucleotide variants compared with the genome of M. mulatta (Fan et al., 2014). In this study, genome sequences of different individuals have provided a large database of SNPs, by which the minimum allele frequency of each SNP locus could be estimated to identify SNP loci with high polymorphism. Using strict screening criteria, we successfully identified 169 SNP loci that were bi-allelic and highly polymorphic in the eight individuals, which will greatly benefit development of novel polymorphic SNP markers in M. thibetana.

 

In the genetic analysis for the wild populations, non-invasive sampling provided an alternative approach for research and management conservation in wildlife biology (Taberlet et al., 1999). Researchers can extracted DNA from a variety of discarded sources including shed feather, hair and feces. Nevertheless, DNA extracted from non-invasive samples have serious limitations for PCR amplification resulting from low DNA quality, or poor DNA quantity with plant-containing DNA and microbe-containing DNA (Mondol et al., 2009). Considering the practicability of non-invasive samples, a feasibility analysis of the newly identified SNP loci for the fecal samples was conducted. Although 72% of examined SNP loci could be successfully amplified in all tissue samples, most of them were excluded since their amplification success rate were less than 95% in the non-invasive samples or they generated inconsistent genotypes in three independent PCR results. Zhang et al. (2018) reported 29 polymorphic SNP markers in M thibetana based on blood, their applicability to non-invasive samples are unsure. Finally, we identified 26 SNP loci that showed a moderate polymorphism (0.25<PIC<0.05) in 38 M thibetana individuals, moreover, they had strong stability and sensitivity for all non-invasive samples. In addition, the newly developed SNP loci showed a good ability for individual discrimination. According to Hara et al., (2010), the subset of SNP markers with PI values ranging from 3×10-6 to 1×10-7 was enough for individual identification. The 26 SNP loci had a cumulative PI of 1.06×10-11 and only 9 loci were enough for discriminating all the individuals. Thus, the newly identified SNP loci were effective markers that could be applied to further genetic study on the wild population of M. thibetana.

Genetic diversity and population structure inferred from SNP data

Evaluation of genetic diversity was significant and important for the species conservation (Avise and Hamrick, 1996). In the present study, we used the observed Heterozygosity and expected Heterozygosity to evaluate genetic diversity levels. The higher the heterozygosity is, the richer genetic variation and the stronger ability of the species adapt to the environment. Our results shows that the Ho and the He of the wild M. thibetana are 0.401 and 486, respectively (Table III), which are higher than those of a captive population non-human primate breeding centre of the Institute of Laboratory Animal Science, Sichuan Academy of Medical Sciences and Sichuan Provincial People’s Hospital (Chengdu, China) based on 29 SNP markers with Ho and He of 0.331 and 0.332, respectively (Zhang et al., 2018). It may suggest a higher genetic diversity level in the wild M. thibetana than the captive population, although comparison of genetic diversity parameters based on different loci could produce biased assessment if the higher polymorphic loci were included for analysis.

Similar to other primates, M. thibetana has now faced a severe threat of survive resulting from human exploitation and natural habitat fragmentation (Roos et al., 2014; Jiang et al., 1996). It is wildly recognized that continued population isolation caused by anthropogenic or natural habitat fragmentation can lead to a decline of the total effective population size, reduction of genetic diversity and modification of genetic structure among populations (Gaines et al., 1997; Lemer and Planes, 2014). However, besides several reports about genetic differentiation among M. thibetana populations based on the mtDNA sequences (Sun et al., 2010; Li et al., 2008), very little information has been known about genetic diversity and population structure among different geographic populations. In this study, we collected feces from three geographical populations of M. thibetana in China, and they are representatives of three different subspecies according to the external morphological characteristics or mitochondrial markers (Jiang et al., 1996; Yao et al., 2013). Overall, we detected a moderate level of genetic diversity in the three populations, however HS population had the lowest level in all Ho, He and PIC indicating the lowest genetic diversity of HS population compared with the EM and FJ population. On the other hand, genetic diversity levels in the EM and the FJ population are similar. Our results about genetic diversity of M. thibetana based on SNP markers are congruent with that based on mtDNA variations (Sun et al., 2010).

Furthermore, two distinct genetic clusters have been detected among the three populations including one from EM+FJ population and one from HS population, respectively. Moreover, in the NJ tree, individuals from the EM population were separately clustered with those from FJ population forming a cluster distinct from the HS population. To our surprises, our results indicate that there is no significant genetic differentiation between the EM and the FJ population, which is inconsistent with previous study based on the mtDNA variations (Sun et al., 2010). Their results suggested that the EM Tibetan macaques had distinct genetic background from other geographical populations including Guizhou macaques. Several reasons may contribute to the differences on the population structure of M. thibetana. From one hand, both the EM and FJ population are located in the southwest of China compared with eastern population of HS, which may result in close genetic relatedness between the two western populations. As suggested in Yao et al. (2013) study, eastern populations of M. thibetana had distinct genetic background from the western populations. On the other hand, although EM Tibetan macaques and Guizhou Tibetan macaques belong to different subspecies, there is possible to exist subpopulations within each of the subspecies that have different genetic background. At present, the fragmentation of habitat in these Tibetan macaque populations makes it impossible to gene flow among them, however, genetic communication might have occurred between some subpopulations of the subspecies in the evolutionary history. In this case, more populations from the two subspecies should be investigated in future to confirm the hypothesis. At last, differences between genetic markers of mtDNA variations and SNP polymorphism, exhibiting different genetic information and different mutation rates, also may lead to incongruent relationship in population genetic inference (Weiran et al., 2015; Wang et al., 2017).

CONCLUSIONS

In conclusion, we have developed 26 highly polymorphic SNP markers based on the genome resequencing data of M. thibetana. These markers are stable and sensitive to non-invasive samples, which has provided powerful tools for population genetic analysis on the wild populations of M. thibetana. Based on the polymorphism of the SNPs among populations of M. thibetana, we found a low level of genetic diversity in the HS population. Furthermore, no population differentiation has been detected between the EM population and the FJ population although they are categoried as different subspecies of M. thibetana. The results are interesting and worthy of further investigations on the more wild populations of M. thibetana.

ACKNOWLEDGEMENTS

This work was supported by the State Key Program of National Natural Science Foundation of China (Grants No. 31530068), and partly by the National Natural Science Foundation of China (Grants No. 31770415).

Statement of conflict of interest

The authors have declared no conflict of interest.

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Pakistan Journal of Zoology

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Pakistan J. Zool., Vol. 56, Iss. 2, pp. 503-1000

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