Genetic Diversity and Population Structure of Five Meretrix lamarckii Populations Along the Southeast China Sea
Genetic Diversity and Population Structure of Five Meretrix lamarckii Populations Along the Southeast China Sea
Jiantong Feng, Xueping Wen, Yahong Guo, Yingying Ye*, Jiji Li and Baoying Guo
National Engineering Research Center for Marine Aquaculture, Marine Science and Technology College, Zhejiang Ocean University, No.1 Haida South Road, Changzhi Island, Zhoushan, Zhejiang, 316022, P.R. China
ABSTRACT
The clam Meretrix lamarckii is an ecologically and economically important species in the coastal regions of China. In order to characterize the genetic diversity and population structure of M. lamarckii, a 750 bp region of mitochondrial COIII gene and an 822 bp region of 12S rRNA gene were sequenced and analyzed for 118 and 105 individuals from five populations (ZS, WZ, ZP, ST and ZJ) in the Southeast coastal areas of China, respectively. Results revealed that 33 haplotypes were defined in COIII gene, and 30 haplotypes were defined in 12S rRNA gene. The pairwise Fst values between the ZS population and other four populations were range from 0.122~0.154 (COIII, P< 0.05) and 0.052~0.228 (12S rRNA, P<0.05), respectively. The revealed that ZS population was significant divergence from other four populations, and no significant genetic divergence among WZ, ZP, ST and ZJ populations. Moreover, results from the median-joining network, plot of STRUCTURE and the UPGMA trees were similar to pairwise Fst values. Results from AMOVA indicated that the genetic variation of M. lamarckii populations was mainly from the variation within populations (COIII: 93.27%, 12S rRNA: 92.32%). The results of neutrality tests combined with the mismatch distribution indicated recent population expansion of M. lamarckii on large spatial scales in the period of late Pleistocene (0.1-0.12 Ma).
Article Information
Received 21 May 2019
Revised 28 July 2019
Accepted 11 September 2019
Available online 03 April 2020
Authors’ Contribution
YY conceived and designed the experiments. JF, XW and YG performed the experiments. YY and
JL analyzed the data. BG provided analysis tools. YY wrote the
paper. JF and XW collected field material and processed the samples.
Key words
Meretrix lamarckii, 12S rRNA, COIII, Genetic diversity, Genetic structure
DOI: https://dx.doi.org/10.17582/journal.pjz/20190521040515
* Corresponding author: [email protected]
0030-9923/2020/0004-1415 $ 9.00/0
Copyright 2020 Zoological Society of Pakistan
INTRODUCTION
The hard clam Meretrix lamarckii belongs to the Veneridae (Mollusca, Bivalvia, Eulamellibranchia, Venerida, Veneridae). It is an ecologically and economically important in the coastal regions of China, Korea and Japan, which usually inhabits in the shallow water with a sandy seabed in the intertidal zones (Ma, 2001). M. lamarckii is an important marine bivalve molluscs with abundant nutrition and valuable medical properties, which has been widely considered as a delicious seafood (Zhang et al., 2014). It has a brief pelagic phase of about 5-6 days with the adult is benthic and relatively immobile (Shao et al., 2017). In recent decades, the wild stocks of M. lamarckii have been harvested by fishermen because of their high commercial value and it is widely cultured in China. From 2007 to 2011, Zhang et al. (2011) carried out artificial breeding experiments of M. lamarckii. On the basis of successfully bred in 2007, 3 million M. lamarckii seedlings with an average shell length of more than 1 mm were bred in 2011. However, with the rapid increasing in demands, the natural stocks of M. lamarckii have declined dramatically due to environmental pollution, over exploitation and habitat destruction (Shao et al., 2017). Therefore, the genetic information of M. lamarckii is critical for the sustainable management of natural resources and to increase the production of the clam.
At present, genetic information of M. lamarckii has been carried out by 13 microsatellite loci in previous study (Teng et al., 2015). The results show that the genetic diversity of the four geographical populations is in middle level, the variation among populations is high level, and the genetic differentiation level is significant. Genetic diversity and genetic structure of M. lamarckii population by mitochondrial molecular markers has not been reported previously.
Mitochondrial DNA (mtDNA) sequence is extensively used to evaluate genetic diversity in marine species due to its small molecular weight, maternal inheritance, relatively rapid substitution rate, and lack of recombination (Guo et al., 2004). The mtDNA is well established as a molecular marker in a wide range of taxonomic, phylogenetic, population and evolutionary investigations in animals (Liu et al., 2018). COIII gene, as one of mitochondrial cytochrome oxidase subunits, it has a moderate rate of evolution. The 12S rRNA gene is a highly conserved evolutionary marker and it is an effective genetic marker commonly used to explore the molecular phylogenetics and classification of aquatic animals (Zhou et al., 2015; Wang et al., 2017). In the present study, we used the gene sequences of partial mitochondrial cytochrome oxidase subunit III (COIII), and ribosomal 12S subunit (12S rRNA) to assess the genetic diversity and population structure of five natural populations of M. lamarckii in Southeast China Sea. It provides theoretical data for the genetic structure of natural resources of M. lamarckii along the coast of China and provides research basis and reference for the breeding of its seedlings. The results of this study will provide details about the status of genetic diversity within cultured populations and support future genetic management and germplasm identification.
MATERIALS AND METHODS
Sample collection and DNA extraction
Wild adult specimens of M. lamarckii were collected from 5 coastal localities in the Southeast China Sea (Zhoushan [ZS], Wenzhou [WZ], Zhejiang Province and Zhangpu [ZP], Fujian Province and Shantou [ST], Zhanjiang [ZJ], Guangdong Province). Geographic locations and sample sizes of all the examined populations are provided in Figure 1 and Table I. All the samples were collected from September 2016 to April 2017. Tissues from the adductor muscle were dissected from fresh specimens, preserved in absolute ethanol before DNA extraction.
The genomic DNA of M. lamarckii was extracted by using the improve salting-out method (Rivero et al., 2006), and electrophoresis in a 1.5% agarose gel. The concentration and purity of DNA was determined on the Nano Drop 2000c UV-Vis Spectrophotometer (Thermo Scientific). The extracted DNA was dissolved in 1×TE buffer and stored frozen at -20 0C.
Amplification and sequencing
Primers were designed based on the complete mitochondrial genome in NCBI database (GenBank accession: KP244452) by using the Primer-premer 6.0 (Singh et al., 1998). The primers of COIII gene were amplified using forward primer COIII-F: 5’-ACAAGCAGTTCGACTCTG-3’, and reverse primer COIII-R: 5’-GACCTACATAAGCCTCAATCT-3’. The primers of 12S rRNA gene were amplified using forward primer 12S-F: 5’-GCTTAGATAGTCGTGTTG-3’, and reverse primer 12S rRNA-R: 5’-CGCCTAGACCCCACAA-3’. Each PCR reaction was performed in a final volume of 50μL containing 40ng template DNA, 6 pM of each primer, 2 ×Taq PCR Master Mix (Com Win Biotech Co., Ltd, Beijing, China) and plus ddH2O to 50μL. The PCR amplification was performed in a thermocycler (BIO-RAD, S1000TM, USA) under the reaction conditions: he reaction conditions were as follows: initial denaturation at 950C for 3 min; 35 cycles of 950C for 30 s (denaturation), 510C for 30 s (annealing), 720C for 1.5min (elongation), final elongation at 720C for 10 min and stored at 40C. The quality of extracted PCR products was assessed using electrophoresis on 1.5% agarose gel in TAE buffer and observed under UV light. Fragments were DNA sequenced using both forward and reverse primers by Hangzhou TSINGKE ZiXi Biotechnology Co. Ltd., Hangzhou, China.
Sequence analysis
For all sequence analyses, genetic similarities were evaluated using BLAST (http://www.ncbi.nlm.nih.gov/BLAST) to identify the origin. Sequence alignments were performed with CLUSTAL W (Thompson et al., 1994) using default parameters, and manual adjustments were made in MEGA7.0 (Kumar et al., 2016). DNASP 6.0 (Rozas et al., 2017) was used to estimate the total number of haplotypes (N). All of the haplotypes for each locus were deposited in the Genbank database (accession numbers: MG888543-MG888575). Molecular diversity indices such as haplotype diversity (h), nucleotide diversity (π) for each population. Analysis of Molecular Variance (AMOVA), genetic differentiation coefficient (Fst) and neutrality tests
Table I. The details of populations and the genetic parameters of COIII and 12S rRNA genes in M. lamarckii.
Sample site (Abbr.) |
Sampling Date |
Latitude, longitude |
COIII |
12S rRNA |
||||||
N |
n |
h |
π |
N |
n |
h |
π |
|||
Zhoushan (ZS) |
2016.09 |
122°31′30°04′ |
24 |
5 |
0.754 |
0.00267 |
16 |
10 |
0.917 |
0.00282 |
Wenzhou (WZ) |
2016.12 |
120°52′23°52′ |
23 |
7 |
0.715 |
0.00239 |
23 |
12 |
0.842 |
0.00231 |
Zhangpu (ZP) |
2017.01 |
117°36′24°07′ |
24 |
10 |
0.783 |
0.00244 |
22 |
7 |
0.636 |
0.00116 |
Shantou (ZT) |
2017.04 |
116°42′23°39′ |
23 |
14 |
0.822 |
0.00295 |
23 |
7 |
0.522 |
0.00084 |
Zhanjiang (ZJ) |
2017.04 |
110°33′21°07′ |
24 |
12 |
0.844 |
0.00303 |
21 |
6 |
0.495 |
0.00090 |
N: NO. of samples n: NO. of haplotypes h: Haplotype diversity π: Nucleotide diversity.
(Tajima’s D and Fu’s Fs) were performed using Arlequin 3.5 software (Excoffier and Lischer, 2010). The UPGMA tree of five samples was constructed based on the Nei standard genetic distance with 1,000 bootstrap replicates using the program MEGA 7.0. The software Network 5.1 (Bandelt et al., 1999) was utilized to construct the haplotypes network based on the Median-Joining method. The genetic structure of the population was analyzed by using the STRUCTURE v2.3 software (Pritchard et al., 2009). The calculated results were analyzed by using the STRUCTURE HARVESTER (Earl, 2012), it is the theoretical population number. Ka/Ks values of COIII and 12S rRNA gene sequences of M. lamarckii were calculated by using KaKs Calculator 2.0 software (Wang et al., 2010) in gMYN model, and Ka/Ks box plot was drawn by R program.
RESULTS
Genetic diversity
Sequences of the five populations obtained 750 base pair COIII gene sequences from 118 individuals and 33 haplotypes were detected (GenBank accession number MG888543-MG888575). Haplotype 2 was shared by five populations with the largest number (38.14% in total). Haplotype 5 was found to be shared by four populations. Haplotype 7, haplotype 9 and haplotype 14 each were shared by three populations. Haplotype 15 and haplotype 17 were shared by two populations. The other haplotypes each was found in a specific population (Table II). The haplotype diversity (h) and the nucleotide diversity (π) within populations ranged from 0.715 (WZ) to 0.844 (ZJ) and from 0.00239 (WZ) to 0.00303 (ZJ), respectively (Table I).
Sequences of the 822bp 12S rRNA gene were obtained from 105 specimens, and 30 haplotypes were detected among all samples (GenBank accession number MG888513-MG888542). Haplotype 1 was shared by five populations with the largest number (52.38% in total). Haplotype 8 was found to be shared by four populations. Haplotype 7 was shared by three populations. Haplotype 3, haplotype 16 and haplotype 18 each were shared by two populations. The other haplotypes each was found in a specific population (Table II). The haplotype diversity (h) and the nucleotide diversity (π) within populations ranged from 0.495 (ZJ) to 0.917 (ZS) and from 0.00084 (ST) to 0.00282 (ZS), respectively (Table I).
Genetic variation
The pairwise Fst values of five populations of M. lamarckii showed that (Table III), in the COIII gene, the Fst values ranged from - 0.016 (ZP-ST) to 0.168 (ZS-ZP). ZS showed great genetic divergences when compared to the other four populations (WZ, ZP, ST and ZJ populations), with significantly Fst values (P<0.05). No significant divergence was found among WZ, ZP, ST and ZJ populations (P>0.05). Similar result of Fst values was found in the 12S rRNA gene. The Fst values ranged from - 0.015 (ST-ZJ) to 0.228 (ZS-ZJ) in 12S rRNA gene.
The AMOVA test of M. lamarckii based on haplotype frequencies revealed that the genetic variation occurred within populations was 93.27% for COIII gene and 92.32% for 12S rRNA gene, among populations was 6.73% for COIII gene and 7.68% for 12S rRNA gene (Table IV). The haplotype networks of COIII and 12S rRNA genes (Fig. 2) showed a radial structure centered on the haplotype shared by five populations (COIII: Hap2, 12S rRNA: Hap1). The haplotypes of the ZS population (yellow) were different from other haplotypes. The haplotypes of the four populations except ZS did not show a significant trend of division, suggesting that there might be greater genetic differentiation between the ZS population and the other four populations. The results of COIII and 12S rRNA gene calculation were consistent with those of UPGMA phylogenetic tree (Nei, 1972), indicating that the five populations were obviously divided into two branches, of which ZS was an independent branch and the other four populations were clustered into one branch (Fig. 3).
The structure analysis indicated that K=2 is the most likely number of clusters (Fig. 4). The results further confirm the similarity between groups: ZS and other groups are assigned to one cluster, and the other four groups are assigned to another cluster. The results are also consistent with the Fst value and haplotype networks.
Population dynamics analysis
Tajima’ D and Fu’s Fs tests were performed to test whether the COIII and 12S rRNA fragments evolved under neutrality or not. Both Tajima’ D and Fu’s Fs tests resulted in negative values in most of the populations (Table V), while no value was statistically significant (P > 0.05) in
Table II. Distribution of haplotypes in COIII and 12S rRNA genes in M. lamarckii.
COIII |
12S rRNA |
|||||||||
ZS |
WZ |
ZP |
ST |
ZJ |
ZS |
WZ |
ZP |
ST |
ZJ |
|
Hap1 |
1 |
Hap1 |
2 |
9 |
13 |
16 |
||||
Hap2 |
4 |
12 |
11 |
10 |
8 |
Hap2 |
1 |
|||
Hap3 |
1 |
Hap3 |
1 |
1 |
||||||
Hap4 |
1 |
Hap4 |
2 |
|||||||
Hap5 |
1 |
3 |
1 |
6 |
Hap5 |
1 |
||||
Hap6 |
1 |
Hap6 |
1 |
|||||||
Hap7 |
6 |
2 |
1 |
Hap7 |
1 |
1 |
||||
Hap8 |
1 |
Hap8 |
3 |
3 |
4 |
|||||
Hap9 |
2 |
1 |
1 |
Hap9 |
1 |
|||||
Hap10 |
1 |
Hap10 |
1 |
|||||||
Hap11 |
1 |
Hap11 |
1 |
|||||||
Hap12 |
1 |
Hap12 |
1 |
|||||||
Hap13 |
1 |
Hap13 |
1 |
|||||||
Hap14 |
2 |
1 |
1 |
Hap14 |
1 |
|||||
Hap15 |
2 |
1 |
Hap15 |
1 |
||||||
Hap16 |
1 |
Hap16 |
1 |
|||||||
Hap17 |
10 |
3 |
Hap17 |
2 |
||||||
Hap18 |
1 |
Hap18 |
1 |
|||||||
Hap19 |
1 |
Hap19 |
||||||||
Hap20 |
1 |
Hap20 |
1 |
|||||||
Hap21 |
1 |
Hap21 |
1 |
|||||||
Hap22 |
1 |
Hap22 |
1 |
|||||||
Hap23 |
1 |
Hap23 |
1 |
|||||||
Hap24 |
1 |
Hap24 |
1 |
|||||||
Hap25 |
1 |
Hap25 |
1 |
|||||||
Hap26 |
1 |
Hap26 |
1 |
|||||||
Hap27 |
1 |
Hap27 |
4 |
|||||||
Hap28 |
2 |
Hap28 |
1 |
|||||||
Hap29 |
1 |
Hap29 |
1 |
|||||||
Hap30 |
1 |
Hap30 |
1 |
|||||||
Hap31 |
1 |
|||||||||
Hap32 |
2 |
|||||||||
Hap33 |
2 |
COIII gene and all values were statistically significant (P < 0.05) in 12S rRNA gene. The sum of the square deviations (SSD) per locality of ST and ZJ population were 0.00000 and 0.00741, respectively, and range from 0.00043 to 0.00730 for the 12S rRNA gene. P-values of SSD between the observed and expected mismatch distributions were all statistically insignificant (P > 0.05), indicating the presence of non-equilibrium and a population expansion event in M. lamarckii. The results suggested very little population change in the past in M. lamarckii. The distribution curves of base mismatch under population expansion were calculated by DnaSP 6.0 software (Fig. 5). The overall mismatch curves of the five populations showed a single peak distribution, which accorded with Poisson distribution. The parameters of population expansion are estimated by Arlequin software. Under the 95% confidence interval, estimating population expansion events based on generalized nonlinear minimum variance. The expansion time of the group is 0.1-0.12 Ma, according to the formula t=τ/2μk conversion (where t is the time since expansion; μ is the mutation rate for the whole sequence under study, which is 2.0% ~ 2.4% per million years; k is the sequence length). According to the Ka/Ks box plot (Fig. 6), the mean values of Ka/Ks of each population in COIII fragments were relatively close, and no population was obviously selected by purification. In the 12S rRNA fragment, the Ka/Ks mean of ZJ and ZS populations was significantly higher than that of other populations, which may be that the two populations were more significantly affected by population purification selection.
DISCUSSION
Genetic diversity
This study showed that the genetic diversity of the five populations of M. lamarckii in the southeastern coast of China was in the middle level. The average haplotype diversity (h) was 0.784 (COIII) and 0.682 (12S rRNA), and the average nucleotide diversity (π) was 0.00270 (COIII) and 0.00161 (12S rRNA), respectively. It is slightly lower than that of other marine organisms, such as Mytilus galloprovincialis h = 0.946, π = 0.0207 (COIII) (Zhou et al., 2015a). Octopus variabilis h = 0.909, π = 0.034 (COIII), h = 0.984, π = 0.028 (12S rRNA) (Xu et al., 2011). The results were consistent with that of the four geographical populations in the southeastern coast of China based on microsatellite markers (Teng et al., 2015). In addition, the results of two mitochondrial gene analyses were slightly different, which may be related to the difference of evolution rate and conservation (Gao et al., 2007).
Genetic structure and differentiation and dynamic analysis
Fst is the most widely used parameter to measure the degree of genetic differentiation among populations. In this study, the genetic differentiation coefficients of ZS population and other populations ranged from 0.122 to 0.168, P < 0.05 (COIII) and 0.052 to 0.228, P < 0.05 (12S rRNA) (0.05 < Fst < 0.25), indicating that there was moderate significant genetic differentiation between ZS population and other populations. However, the Fst values of the other four populations (WZ, ZP, ST and ZJ) were less than or close to 0.05 and were no significant (P > 0.05), indicating that the genetic differentiation among these four populations was not obvious, and there was frequent gene flow among the four populations. Structure analysis, haplotype networks and the UPMGA cluster analysis all supported the conclusions.
The main reason for this result may be the formation of ocean current pattern, lack of effective barriers in the marine environment (Gu et al., 2015). From the geographical distance, short distance between ZS and WZ, but there was a significant genetic differentiation. This may be because ZS is located in the Qiantang River estuary with Hangzhou Bay, which affects the gamete exchange of M. lamarckii. Lv and Song (2007) found that all the year round in the ZS area are affected by the Yangtze River diluted water and the Yellow Sea and East China Sea mixed water mass, with sufficient water exchange capacity. In summer, during the breeding season of M. lamarckii (late July to the end of August), the Yangtze River diluted water moved southeastward and then quickly turned to the direction of northeastern Jeju Island between
Table III. The pairwise Fst values based on COIII (below) and 12S rRNA (above).
Sample (Abbr.) |
Zhoushan |
Wenzhou |
Zhangpu |
Shantou |
Zhanjiang |
Zhoushan |
0.05224* |
0.13544* |
0.22477* |
0.22752* |
|
Wenzhou |
0.12229* |
0.00766 |
0.06072* |
0.05418 |
|
Zhangpu |
0.16836* |
0.00364 |
0.01369 |
0.00201 |
|
Shantou |
0.14067* |
-0.00664 |
-0.01581 |
-0.01497 |
|
Zhanjiang |
0.15409* |
0.03895 |
-0.00111 |
0.01092 |
Note: Values with superscripts* are significantly different (P<0.05).
Table IV. Analysis of molecular variance (AMOVA) of M. lamarckii populations.
Gene |
Source of variation |
d.f. |
Sum of squares |
Variance components |
Percentage variation% |
COIII |
Among populations |
4 |
4.237 |
0.02828Va |
6.73 |
Within populations |
113 |
44.288 |
0.39193Vb |
93.27 |
|
Total |
117 |
48.525 |
0.42021 |
100 |
|
12S rRNA |
Among populations |
4 |
3.672 |
0.02786Va |
7.68 |
Within populations |
100 |
33.509 |
0.33509Vb |
92.32 |
|
Total |
104 |
37.181 |
0.36295 |
100 |
Table V. The analysis of neutrality test for five populations.
Test |
COIII |
12S rRNA |
||||||||
ZS |
WZ |
ZP |
ST |
ST |
ZS |
WZ |
ZP |
ST |
ZJ |
|
Tajima's D |
2.371 |
1.361 |
1.477 |
0.617 |
0.774 |
0.535 |
1.010 |
1.305 |
2.014 |
1.741 |
p-value |
0.994 |
0.074 |
0.0504 |
0.291 |
0.233 |
0.324 |
0.167 |
0.090 |
0.004 |
0.021 |
FS |
0.980 |
1.258 |
4.316 |
9.582 |
5.798 |
4.988 |
7.219 |
3.519 |
4.731 |
3.128 |
p-value |
0.7315 |
0.233 |
0.006 |
0.000 |
0.001 |
0.002 |
0.000 |
0.003 |
0.000 |
0.002 |
SSD |
- |
- |
- |
0.000 |
0.007 |
0.004 |
0.000 |
0.004 |
0.000 |
0.007 |
p-value |
- |
- |
- |
0.813 |
0.477 |
0.679 |
0.974 |
0.583 |
0.781 |
0.406 |
122°10’ ~ 122°30’E. WZ, ZP, ST and ZJ are all located in the southwest direction of ZS. The influx of water from the Yangtze River prevents the gene flow between ZS and other four populations. Secondly, the coastal current of Zhejiang and Fujian distributes in the coastal waters, south of the Yangtze Estuary, and its flow direction is from south to north, strong in winter and gradually weakening in spring. In May, from the north to the sea area near Pingtan
island in Fujian Province (Ma, 2009), it was difficult for the ZS population to genetic exchange with the four southern populations by means of ocean currents during breeding period. In addition, the coastal current of Eastern Guangdong is strong in summer, and flows northeast, and passes through the Taiwan Strait. The South China Sea warm current flows from southwest to northeast from the coastal areas of Eastern Guangdong and the deep-water areas outside Guangdong. There are currents in the Taiwan Strait flowing to the northeast, and the flows in the Strait connect with those in the East China Sea, East Guangdong, South China Sea. The presence of these currents enables frequent gene exchange among WZ, ZP, ST and ZJ populations through perennial flow exchange. The results of this study were different from those obtained by Teng et al. (2015) using microsatellite markers. This study only collected samples in or near South China Sea area, and the variation among populations was significant, which may be related to the location of sample collection and use different marker. Consistently, marine species with pelagic larvae stages, ocean currents are known to be involved in the formation of population genetic structure (Hedgecock, 1994). With the influence of current, these characteristics of the short larval stage of M. lamarckii cannot facilitate gene flow via the distance transmission. In marine environments lacking adequate reproductive barriers, ocean currents, environmental factors, and the duration of planktonic stages all affected gene exchange and genetic distribution among populations (Arnaud et al., 2000; Vadopalas et al., 2004; Zhan et al., 2009; Xi et al., 2011). Population dynamics analysis suggested that the M. lamarckii had experienced population expansion in the southeastern coast of China. The population expansion time was about 0.1-0.12 million years ago, and it was in the late Pleistocene. Late Pleistocene is about 0.01-0.126 million years ago. With the intense global climate change, the sea level periodically rises and falls, with the maximum amplitude of 120-140 m, and frequent glacial-interglacial alternations, many species experienced significant contraction and expansion during this period (Liu et al., 2017).
Diversity protection and sustainable utilization
At least two distinct geographic populations of M. lamarckii in the southeastern coast of China were identified, which should be divided into management units in fisheries. Relevant management departments should strengthen protection of the wild population of M. lamarckii. Sampling should be done locally due to genetic structure of the local wild population will be affected by long-distance breeding or stock enhancement. In the breeding process, number of parents and effective population size should be increased, and the reduction of genetic diversity caused by inbreeding should be avoided. On this basis, the relevant departments should formulate a scientific and reasonable genetic diversity monitoring program to protect the germplasm resources of M. lamarckii. In addition, we should effective and proper management, protection of species habitats, reduce environmental pollution and improve the reproduction of species, thus ensuring the sustainable development of the resources of M. lamarckii in China.
ACKNOWLEDGMENTS
This work was financially supported by the Natural Science Foundation of Zhejiang Province (Grant No.: LQ18D060004) and the 2017 Scientific Research Startup Foundation of Zhejiang Ocean University (Funding No.: 12245090318).
Statement of conflict of interest
The authors have declared no conflict of interest.
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