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Genomic approach for conservation and the sustainable management of endangered species of the Amazon
Genomic approach for conservation and the sustainable management of endangered species of the Amazon

Competing Interests: The authors have declared that no competing interests exist.

Article Type: research-article Article History
Abstract

A broad panel of potentially amplifiable microsatellite loci and a multiplex system were developed for the Amazonian symbol fish species Arapaima gigas, which is currently in high danger of extinction due to the disorderly fishing exploitation. Several factors have contributed to the increase of this threat, among which we highlight the lack of genetic information about the structure and taxonomic status of the species, as well as the lack of accurate tools for evaluation of the effectivity of current management programs. Based on Arapaima gigas’ whole genome, available at the NCBI database (ID: 12404), a total of 95,098 unique perfect microsatellites were identified, including their proposed primers. From this panel, a multiplex system containing 12 tetranucleotide microsatellite markers was validated. These tools are valuable for research in as many areas as bioinformatics, ecology, genetics, evolution and comparative studies, since they are able to provide more accurate information for fishing management, conservation of wild populations and genetic management of aquaculture.

Fazzi-Gomes,Aguiar,Cabral,Marques,Palheta,Moreira,Rodrigues,Cavalcante,Souza,Silva,Hamoy,Santos,and Chiang: Genomic approach for conservation and the sustainable management of endangered species of the Amazon

1. Introduction

The species Arapaima gigas (Schinz, 1822) belongs to the Arapaimidae family–order of the Osteoglossiformes [1], which composes one of the oldest groups of teleost fishes. It is the world's largest scale fish, and specimens may reach up to 200 kg of body mass and 3 m of length [2]. The species can be found in basins of South American countries, such as Brazil, Peru, Colombia, Ecuador, Bolivia and Guyana [3, 4]. Since years ago, A. gigas has been relevant in aquaculture due to its fast growth, high fillet yield, mild-flavored white meat, and great market acceptance, both domestically and abroad [5, 6].

A. gigas is listed in Annex II of the International Convention on the Trade in Endangered Species (CITES) and in the International Union for Conservation of Nature’s (IUCN) Red List of Endangered Species, within the category “data deficient”, meaning that there is no proper information to make a direct or indirect assessment of its extinction risk based on its distribution and/or population status. Furthermore, in Brazil, arapaima were not included in the national list of endangered species due to lack of data [7].

Many reasons have contributed to the aggravation of the threat to A. gigas, including (i) the exploitation background of wild individuals, coupled with poor management strategies to comply with current fishing legislation; (ii) the current poorly refined genetic data on taxonomic structure and status; and (iii) the lack of management in certain areas, as well as the lack of accurate tools for evaluating the effectiveness on current management programs [812].

In Brazil, the predatory fishing of A. gigas–a practice which was intensified in the 1970s, impacted its population distribution in most parts of the Amazon basin. Consequently, strategies for management of the species were adopted by government agencies, such as the establishment of a minimum size for capture, the determination of reproductive season, and the annual fishing prohibition in the states of Amazonas, Pará, Amapá, Rondônia, Roraima, Tocantins and Acre [1315]. However, the supervision of these strategies is deficient due to the lack of financial and human resources, as well as the lack of well-defined methods to identify the origins of the A. gigas’s derived products, hindering the actions of the management system. For instance, recent data shows that 77% of A. gigas meat marketed in Santarém-PA comes from illegal fishing [16]. Furthermore, a substantial amount of A. gigas fresh or salty-conserved meat is exported illegally to Brazilian markets by middlemen, through the Guayaramerín border, in Bolivia [17].

The population structure of A. gigas is still undefined, and although genetic analyses revealed the existence of two distinct populations in Amazon and Araguaia-Tocantins basins, there are evidences showing the existence of multiple species of Arapaima [18, 19]. On the other hand, the translocation of individuals is also an imminent threat [20], which can lead to loss of genetic diversity, decreased fitness and increased risk of extinction [21], since young individuals have often been translocated among different parts of the Amazon basin–and among this basin and others, mainly to attend aquaculture demand [22]. Therefore, the collection of molecular data is essential for monitoring and defining adequate strategies for the management actions.

It is a consensus that A. gigas populations are following a declining trend, where the main threat is overfishing [16, 23], and the majority of communities do not practice sustainable management–with few exceptions, such as the Mamirauá Reserve, in Brazil. However, even in communities where sustainable management is done, there is no consistent, available data concerning the current conservation status of the species, much less concerning the population trends within these communities [11]. This reinforces the need of more precise management and the establishment of stakeholders to ensure the conservation and sustainable management of the species [24].

Due to the history of disorderly exploitation and the risk of extinction of the Amazonian’s symbol fish Arapaima gigas, specialists emphasize the need of using molecular markers to support management strategies and the evaluation of the effectiveness of the A. gigas’s conservation programs, highlighting the importance of using these markers for the identification and genetic tracing of marketed specimens [18].

Microsatellite markers, also known as short tandem repeats (STR) or simple sequence repeats (SSR), are DNA sequences consisting of tandemly repeating mononucleotide, dinucleotide, trinucleotide, tetranucleotide and pentanucleotide units, arranged throughout the genomes of most eukaryotic species [25]. They present features such as broad distribution in eukaryotic genomes, which can easily be detected by polymerase chain reaction (PCR), locus-specific nature, co-dominant inheritance, and high mutation rate, being highly polymorphic and hyper-variable [2628]. All these features contribute to the advantages of using microsatellite markers in several research areas–as forensic and population genetics, conservation biology, and for genome mapping in evolutionary and biological scenarios, since these biomarkers allow two or more loci amplifications in a single multiplex PCR reaction.

The multiplex PCR system consists of the simultaneous amplification of various loci, tagged by a distinct fluorescent label, and posterior analysis by capillary electrophoresis in an automated sequencing machine. It is considered a trustworthy technique since the use of capillary electrophoresis with fluorescently labeled primers provides high detection sensibility of the amplified DNA fragments [29]. Several methods are used in microsatellite markers design. However, the majority of these are longstanding and more laborious. With the advances in Next Generation Sequencing (NGS) technologies, increased data became available, allowing a faster, cost-effective, large-scale mining of molecular markers [30, 31].

It is urgent to develop new, more accurate and numerous A. gigas molecular markers, not only to be applied as a tool for genetic studies, but also to improve the management system, refining the effectiveness of conservation programs, as well as to be used as a tool for the genetic tracing of wild and marketed individuals.

Thus, in order to contribute to the preservation and sustainable management, we developed a broad genomic panel of microsatellite loci potentially amplifiable. Based on this broad panel, we designed an unprecedented multiplex system containing 12 tetranucleotide microsatellite markers, which are more defined markers and are easily discriminated in polyacrylamide gel. Hence, the use of tetranucleotide markers is also a low-cost approach, which can be optimized in laboratories equipped with simpler infrastructure, being useful in populational genetics, conservation biology, and forensic studies of the A. gigas.

2. Results

2.1. Broad panel

A broad amplifiable panel of microsatellites was designed (available at Figshare online data repository via https://doi.org/10.6084/m9.figshare.8088533), based on the A. gigas’ genome published by Vialle et al. (2018), who obtained a total of 76.91 Gb of high-quality filtered data, such as assembled genome size of 661,278,939 bp, 5,301 scaffolds, scaffold N50 = 668 kb, contig N50 = 51.23 kb, largest scaffold of 5,332,704 (bp), and GC content of 43.18% [32].

We found a set of 95,098 single loci of perfect microsatellites with simple repeat sequences, from the dinucleotide to hexanucleotide classes, in the genome of the A. gigas (as observed in the Supplementary Table S1 via https://doi.org/10.6084/m9.figshare.8088533). The set contained information about the microsatellite motif, the repeat copy number, the initial and final positions, the scaffold and size, the forward and reverse primers, and the expected Polymerase Chain Reaction (PCR) products. The average size of the estimated PCR products was 207 bp. However, we could not design primers for 647 loci, since these sequences were rich in TA repeats, and because the TA motif were at the beginning or at end of the scaffold.

Table 1 presents the abundance of the motifs categorized by class. Here, the dinucleotide class is the most frequent, representing more than 70% of the total microsatellites found in A. gigas’s genome. In this class, the TG-repeat motif was the most frequent (15,8). Additionally, we characterized the minisatellites present in 387 loci (see Supplementary Table S2 via https://doi.org/10.6084/m9.figshare.8088629).

Table 1
Absolute and relative frequency (percentage) of different perfect microsatellite motifs found in the genome of Arapaima gigas.
Motif classCount%
Dinucleotides71,26974.94
Trinucleotides13,02613.70
Tetranucleotides8,7859.24
Pentanucleotides1,1071.16
Hexanucleotides9110.96
Total95,098100

The number of repeats in microsatellites present in the genome of A. gigas was quite variable among the 6 classes, presenting an inverse relationship with the size of the motif. The dinucleotide class, for example, presented the largest number of repeats, whereas the class of hexanucleotides presented fewer repeats (Fig 1).

Distribution of the classes of Arapaima gigas microsatellites how much to number of repetitions.
Fig 1

Distribution of the classes of Arapaima gigas microsatellites how much to number of repetitions.

The majority of the identified microsatellites were located out of exon and intron sequences, referred here as genomic regions: 68.1% of these were dinucleotides (71,269), 67.8% were trinucleotides (13,026), 67.6% were tetranucleotides (8,785), 67.4% were pentanucleotides (1,107), and 69.9% were hexanucleotides (911). We observed a few microsatellites located within gene coding regions, 8.3% of which were dinucleotides (5,915), 8.1% were trinucleotides (1,054), 8.3% were tetranucleotides (725), 8.2% were pentanucleotides (91) and 7.8% were hexanucleotides (71) (Fig 2).

Distribution of microsatellites in genic, intergenic and genome regions in Arapaima gigas.
Fig 2

Distribution of microsatellites in genic, intergenic and genome regions in Arapaima gigas.

2.2. Multiplex system

The broad panel generated in our study allowed the fast selection and validation of 12 tetranucleotide microsatellite loci on a multiplex system (Agig13519, Agig50571, Agig58115, Agig08356, Agig67103, Agig93614, Agig33291, Agig90836, Agig05001, Agig70664, Agig08912 and Agig06409). The multiplex system presented a high resolution, with no overlap between the microsatellite alleles and no artifact peaks (Fig 3). Moreover, we did not detect any genotyping errors attributed to stutter bands, large allele dropouts or null alleles, which are frequent in dinucleotide microsatellites.

Multiplex PCR panel electrophoretogram for Arapaima gigas showing the allele size range obtained using the ABI 3130 Genetic Analyzer (Applied Biosystems) and the GeneMapper 3.7 (Applied Biosystems) software and discrimination power per locus.
Fig 3

Multiplex PCR panel electrophoretogram for Arapaima gigas showing the allele size range obtained using the ABI 3130 Genetic Analyzer (Applied Biosystems) and the GeneMapper 3.7 (Applied Biosystems) software and discrimination power per locus.

Colors were assigned to microsatellite primers labeled with 6-FAM (blue), HEX (green), NED (black), and PET (red) fluorescent dyes.

The panel was used to evaluate a wild population of A. gigas from Santarem (n = 30). The obtained data revealed a total of 73 alleles. The average rate of alleles per locus (NA) is 6.08. The observed (HO) and expected (HE) heterozygosity rates range from 0.867 (Agig 33291) to 0.100 (Agig 05001), with an average of 0.59 and 0.64, respectively (Table 2).

Table 2
PCR multiplex panel characteristics of 12 microsatellite markers of Arapaima gigas, which was used to genotype 30 individuals from Santarém, a city in the Brazilian Amazon.
Locus (GenBank)Primer (5ꞌ→3ꞌ)Repeat MotifDyeProportion in primer #NA (Size Range)HOHEFISPICPDPE
Agig13519 (MN190311)F:* GTGGAGAAATGGAGAATTGCAT(ATAG)166 –FAM0.259 (153–201)0.6670.7820.150.7360.9150.378
R: CATGGTTTTTCCTCAAAACAGC
Agig50571* (MN190312)F: *GATCTCACACATACACTGGCTTG(GATA)160.510 (233–273)0.6670.8490.2170.8150.9270.379
R: AGTTTGACTGTTACACGCAGGA
Agig58115 (MN190313)F:*ATATCACACCCTACATCCTCCTAAA(AGAT)160.55 (311–343)0.50.486-0.030.4460.6670.187
R: GAAGCTGAAATGCAAGAACTCA
Agig08356 (MN190314)F: *ACCTCTCACCCAAGTCAAGAAA(ATCT)15HEX0.55 (165–189)0.60.589-0.020.5460.7820.291
R: GAAATGGGATACACAACACTACACA
Agig67103 (MN190315)F: *TCAGACTCAATACCTCCGTCCT(ATCT)160.65 (283–311)0.6330.563-0.1280.4710.6890.333
R: CCTTGGTTCCCCTTATCTTACA
Agig93614 (MN190316)F: *CAGGAAAGGGGTAGAACTCGTA(ATCT)170.66 (373–393)0.70.698-0.0030.6510.8510.428
R: GAGAGAGACAGTGGCATTCAAA
Agig33291 (MN190317)F: *GGGGTAGTCTTTTGATGTTAAGGA(ATCT)16NED0.58 (181–209)0.8670.842-0.0290.8080.9150.728
R: ATGACCAGGAGCAATACAAACC
Agig90836 (MN190318)F: *CAGTCAGCAGTTGGTATGGAGTT(GATG)180.610 (308–352)0.8330.8540.0250.8220.9350.662
R: GGCCTCAGCTTCTCTAAAATGAC
Agig05001 (MN190319)F: *AGTGACCTGCATTGGACAGAT(GATG)16PET0.62 (180–184)0.10.097-0.0360.090.1800.008
R: TGCACCATTGTTTTGCCTAA
Agig70664 (MN190321)F: *TGCAGGTAGTTTCATAGCCTGA(TGGA)160.64 (252–272)0.50.650.2340.580.7980.187
R: AGAGCGGGATTTGAACATAAGA
Agig08912 (MN190320)F: *CCCTGGTTCTAGTGACAGTTCAG(ATCT)150.64 (330–342)0.50.5850.1470.4850.7220.187
R: GGATGCGTTTTGTATCAGGAA
Agig06409 (MN190322)F: *CGGTCCTCAAATATGCATTACA(TGGA)160.65 (364–380)0.5330.6550.1880.6010.8180.218
R: GATGCAAGCAAAGAACAGACAC
Average6.080.590.640.060.590.770.33
CPD>0.999
CPE>0.999

Abbreviations: F, forward primer; R, reverse primer; NA, allele number per locus; HO, observed heterozygosity; HE, expected heterozygosity; FIS, inbreeding coefficient; PIC, polymorphism information content; PD, power of discrimination; PE, power of exclusion; CPD, combined power of discrimination; CPE, combined power of exclusion.

*Fluorescent dye added in the forward primer.

#Relative proportion in primer mix, made up from 100 μM solutions.

There was no significant deviation from Hardy-Weinberg equilibrium (HWE) after Bonferroni correction (p<0.0041). Loci pairs in linkage disequilibrium (LD) were not registered. The average inbreeding coefficient value (FIS) was 0.06.

Forensic parameters investigated for this multiplex system presented average polymorphic informative content (PIC) value of 0.53. The average power of discrimination (PD) was 0.77 and the power of exclusion (PE) was 0.33. The average combined power of discrimination (CPD) and the combined power of exclusion (CPE) for the 12 microsatellite markers investigated was 0.999 and 0.999, respectively (Table 2).

3. Discussion

The rapid development of sequencing technologies allowed the obtention of complete genome sequences from an increasing number of species [33], which is an excellent source for identification of microsatellite markers already used in several species [3438]. However, the use of sequencing Technologies demands laboratories equipped with high infrastructure and skilled personal resources, which in many cases does not match the reality of several laboratories in the Amazon region.

In this study, we identified a microsatellites panel based on sequences of the complete genome of A. gigas, a low-cost approach which can be standardized for use in laboratories equipped with both in high or low-cost infrastructure, and can be applied in studies concerning the population genetics, conservation and forensic biology of the A. gigas, and the sustainable management of this species in aquaculture.

Microsatellite markers with number of repeats among 15–20 tend to be highly polymorphic [39], being the most indicated for population genetic studies. The panel of microsatellite markers developed for A. gigas included the dinucleotide, trinucleotide and tetranucleotide classes presenting motifs with repeats within this range (Fig 1), however the tetranucleotides markers produced weaker stutter bands and had no artificial multiband patterns [40].

Microsatellite markers are observed in almost all known eukaryotic and prokaryotic genomes, both in coding and noncoding regions [41]. In the A. gigas genome, microsatellite markers are more abundant in non-coding sequences, here called genomic regions (Fig 2). This corroborates data available in the literature towards the distribution of these markers–which may be explained by the fact that, in promoter regions, the length of microsatellites may influence the transcription activity [42].

It is suggested that microsatellite polymorphisms are associated with the number of loci replications [43]. Microsatellites with higher number of repeats are more prone to mutation/expansion than those with fewer replicates. The correlation between repeat length and microsatellite variability is comprehensible according to replication slippage model, which is a widely accepted mutation mechanism [44]. Another variable could be the microsatellite classification, and their results indicate that tetranucleotide microsatellites have the lowest polymorphism rate, comparing to dinucleotide microsatellites. Hence, we emphasize the importance considering the number of repeats and the class of the microsatellite while selecting markers for the accomplishment of scientific studies.

In the last years, several studies aiming to elucidate population genetics and conservation biology of the A. gigas have used dinucleotide microsatellites as molecular markers, as reported by Farias et al., 2003 [45], among other studies [19, 4650]. However, our results reveal that the use of tetranucleotide microsatellite markers has higher cost-effectiveness and may be suitable for laboratories equipped with high-technology or low-cost labs. Nevertheless, it is important to consider the necessity of standardization of allelic designation and internal size-standards, so the data interchange among different laboratories will become more effective and accurate [51]

To validate our findings, we developed a multiplex system using the panel of 12 microsatellite markers to evaluate the conservation status of an A. gigas population. This tetranucleotide microsatellite markers of the multiplex system have the advantage of being highly polymorphic, more stable and presenting clearer bands than the dinucleotide markers described in literature.

It is important to emphasize that the history of fierce fishing exploitation of the A. gigas is a determinant factor for the findings of this study in the population of Santarem. The reduction of natural populations and the decrease in average volume and length of the specimens landed in the Amazon due to overfishing soon lead to the fishing collapse in 1970 [52]. This suggest that these populations may have undergone a bottleneck effect, leading to a loss of genetic variability, however, more studies are necessary to probe this hypothesis.

Among the investigated forensic parameters, the values of PIC were considered satisfying accordingly to the scale reported by Botstein et al., 1980 [53]. The CPD and CPE values of this panel allow the distinction of one individual in one billion, which is similar to other multiplex genotyping systems. For instance, the system reported by Hamoy et al., 2012 [54] was used in conservation studies and in the aquaculture support.

Population genetics data are undoubtedly the most important component of the baseline of any conservation and management plan [55]. The broad microsatellite panel developed for A. gigas opens perspectives for studies in as many fields as bioinformatics, ecology, genetics, evolution, and comparative studies among species [32]. And the multiplex system designed for A. gigas allows an accurate, faster, cost-effective, and affordable genotyping for low-income laboratories and conservation studies focusing on this species.

The set of 12 loci was able to measure the genetic variability of the investigated population, providing high statistic power data, sufficient for determining kinship patterns for population attribution tests. Therefore, this multiplex system can represent a valuable and powerful tool for small and large-scale studies in the areas of forensic/conservation biology and population genetics, furthermore, it can also be used as a tool for the management of wild and cultivated populations of A. gigas.

4. Materials and methods

4.1. Data mining

The development of this study was based on the complete genome of Arapaima gigas, published by Vialle et al., 2018 [32], available from the National Center for Biotechnology Information (NCBI) database (https://www.ncbi.nlm.nih.gov/assembly), ID: 12404.

Raw sequencing data are available at Figshare Data Repository: https://doi.org/10.6084/m9.figshare.8088533, https://doi.org/10.6084/m9.figshare.8088629.

4.2. Bioinformatics analysis

Simple Sequence Repeat Identification Tool (SSRIT) [39] was used to find all simple sequence repeats (SSRs). We changed the default parameters related to motif-repeat in the source code of SSRIT, which was made in Perl, to specify motif length and the minimum number of repeats (Table 3). The other attributes remained with their default values.

Table 3
Parameters modified in SSRIT analysis.
Motif LengthMinimum Number of Repeats
210
38
46
55
6–124

Microsatellites sequences counted from all samples generated by the SSRIT were processed by in-house scripts in Python (v. 3.7.2) to insert the flanking regions in the 5' and 3' portions of DNA sequence, and transform them in a “doc.fasta” file. After, the sequences which exhibited microsatellites were submitted to Primer 3 (v. 4.1.0), whose premise is design PCR primers from DNA sequences. In Primer 3, the default parameters of primer length, (|Primer Opt Size = 20|, |Primer Min Size = 18|, and |Primer Max Size = 23|) were modified to 24, 20, and 28, respectively. The parameters of primer product size range were modified for 50–1200 nucleotides.

The microsatellites were individually filtered by abundance and number of repetitions per class, and subsequently mapped in regions of intron (intergenic region) and regions of exon (exonic regions). The ones which are not present in any of the previous regions were classified as belonging to the genome. The development of all figures was made using Matplotlib (v. 3.0.1), which is a Python 2D plotting library.

4.3. Validation of the multiplex microsatellite system

4.3.1. Sample collection and DNA extraction

This research was approved by the Ethics Committee on Animal Use (CEUA) of the Federal Rural University of Amazon—UFRA, protocol number 055/2017 (CEUA)– 23084.017501/2017-02 (UFRA).

We collected 2 g of muscle tissue of 30 specimens of A. gigas from a fishing vessel landed at the city of Santarem, localized in the Low Amazon mesoregion, Brazil. The samples were preserved in 70% ethanol and posteriorly stored in -20°C.

Total genomic DNA was extracted from the digested tissue in proteinase K solution/ Sodium Dodecyl Sulfate (SDS) and purified in Phenol/Chloroform, followed by precipitation in Isopropanol [56]. The DNA concentration was measured in the NanoDrop ND1000 spectrophotometer (Thermo Scientific).

4.3.2. Selection of microsatellites and polymorphism testing

After assembling the broad microsatellite panel for A. gigas, a total of 12 microsatellite markers were selected to compose the multiplex system, according to the following criteria: tetranucleotide microsatellites, with at least 15 repeats and at maximum 20 repeats, outside of coding regions. The polymorphisms of the 12 selected loci were tested in 7% polyacrylamide gel electrophoresis, stained with silver nitrate.

4.3.3. Primer testing and genotyping

The possibility of formation of secondary structures among the primers was tested in AutoDimer Software [57]. A PCR reaction consisting of the simultaneous amplification of 12 markers was standardized to a final volume of 9.5 μL, using 5.0 μL 2X Qiagen Multiplex PCR Master Mix (Qiagen), 1.0 μL of Q-Solution (Qiagen), 2.0 μL of H2O, 0.5 μL of primer mix, and 1.0 μL of genomic DNA. The relative proportion of each primer in the primer mix (made up of 100 μM solutions) is listed in Table 1. The reactions were optimized to amplify 5 ng of genomic DNA.

Amplification reactions were performed in a Veriti thermocycler (Applied Biosystems). The thermocycling conditions were: initial denaturation at 95°C for 15 min, followed by 10 cycles at 94°C for 30 s, 60°C for 90 s, and 72°C for 60 s; 20 cycles at 94°C for 30 s, 58°C for 90 s, and 72°C for 60 s, and a final extension at 72°C for 60 min, 10° for min. Then, 1 μL of the amplification resulting solution was mixed with 8.5 μL of Hi-Di deionized formamide (Applied Biosystems), and 0.5 μL of GeneScan 500 LIZ (Applied Biosystems) as a molecular weight standard. The final product was analyzed using an ABI 3130 Genetic Analyzer (Applied Biosystems). The determination of fragment size and allele designation was done with the GeneMapper 3.7 software (Applied Biosystems).

4.4. Statistical analysis

The dataset was checked for genotyping errors and null alleles using Micro-Checker [58]. We analyzed the genetic variability using the allele number per locus (NA), the observed (HO) and expected (HE) heterozygosity indexes, and the deviation from Hardy-Weinberg equilibrium (HWE), using Arlequin 3.5.1.257 [59], followed by Bonferroni’s correction [60]. The same program was used to determine the proportion of locus pairs in linkage disequilibrium (LD).

The inbreeding coefficient (FIS) was calculated in GENEPOP [61]. The polymorphism information content (PIC), the power of discrimination (PD), and the power of exclusion (PE) for all markers using the forensic statistic tool FORSTAT [62].

Acknowledgements

We thank the Federal University of Pará and Rural Federal University of the Amazon for all the support.

Abbreviations

CITESInternational Convention on the Trade in Endangered Species
IUCNInternational Union for Conservation of Nature’s
STRShort Tandem Repeats
SSRSimple Sequence Repeats
PCRPolymerase Chain Reaction
NGSNext Generation Sequencing

References

C.J.Ferraris Family Arapaimatidae In Check List of the Freshwater Fishes of South and Central America; R. E.Reis, S. O.Kullander, C. J.FerrarisJr., Eds.; Edipucrs: Porto Alegre, Brasil, 2003; pp. 3031.

R.F.Bezerra; M.C.F.Soares; E.V.M.M.Carvalho; L.CoelhoC B.B. The Amazonian Giant Fish is Briefly Reviewed; Nova Science: New York, EUA, 2013; pp. 910.

M.Pereira-Filho; R.Roubach Pirarucu (Arapaima gigas) In Espécies Nativas para a Piscicultura no Brasil, 2nd ed.; B.Baldisserotto, L. C.Gomes, Eds.; UFSM: Santa Maria, Brasil, 2010; pp. 2756.

R.Froese; D.Pauly FishBase. World Wide Web electronic publication. www.fishbase.org (2019).

E.P.Imbiriba Potencial de criação de Pirarucu, Arapaima gigas, em cativeiro. Acta Amaz. 2001, 31, 299299.

O.Fontenele (1982). Contribuição para o conhecimento da biologia do pirarucu, "Arapaima gigas" (Cuvier) em cativeiro (Actinopterygii, Osteoglossidae). Rev. Bras. Biol. 1948, 8(4), 445459.

L.Castello; C.C.Arantes; D.G.McGrath; D.J.Stewart; F.S.Sousa Understanding fishing-induced extinctions in the Amazon. Aquat. Conserv. 2014, 25(5), 447458.

V.J.Isaac; V.L.CRocha; SMota. Considerações sobre a legislação da “piracema” e outras restrições da pesca da região do Médio Amazonas In Povos das Águas: Realidade e Perspectiva na Amazônia, 1nd ed; L.G.Furtado, A.F.Mello, W.Leitão, Eds.; Museu Paraense Emilio Goeldi: Belém, Brasil, 1993; pp. 187211.

V.J.Isaac, M.L.Ruffino; A.Milstein Fisheries ecology in the Lower Amazon: A typical artisanal practice in the tropics. Ecotropica. 1998, 4, 99114.

10 

C.Miyaki Filogeografia e a descrição da diversidade genética da fauna brasileira. Megadiversidade. 2009, 5, 96100.

11 

L.Castello; D.Stewart; C.C.Arantes O que sabemos e precisamos fazer a respeito da conservação de pirarucu (Arapaima spp.) na Amazônia In Biologia, Conservação e Manejo Participativo de Pirarucus na Pan-Amazônia, E.S.A.Figueiredo, Eds.; IDSM: Tefé, Brasil, 2013; pp. 1731.

12 

A.F.P.Oviedo; M.Bursztyn; J.A.Drummond Agora sob nova administração: Acordos de Pesca nas Várzeas da Amazônia Brasileira. Ambient. soc. 2015, 18(4), 119138.

13 

BRASIL. Instrução Normativa 34/2004 Estabelecer normas gerais para o exercício da pesca do pirarucu (Arapaima gigas), na bacia hidrográfica do rio amazonas. Brasília: Congresso Nacional, 2004.

14 

BRASIL. Instrução Normativa 24/2005 Proíbe a captura, o transporte, a comercialização e a armazenagem do pirarucu (Arapaima gigas) na bacia hidrográfica dos rios Araguaia-Tocantins, no período que especifica. Brasília: Congresso Nacional, 2005.

15 

BRASIL. Instrução Normativa 1/2008 Proibe de 1° de junho a 30 de novembro a captura, o transporte, a armazenagem e a comercialização do pirarucu (Arapaima gigas) no estado do Acre.Brasília: Congresso Nacional, 2008.

16 

L.M.Cavole; C.C.Arantes; L.Castello How illegal are tropical small-scale fisheries? An estimate for Arapaima in the Amazon. Fish. Res. 2015, 168, 15.

17 

A.E.Macnaughton; F.M.Carvajal-Vallejos; A.Argote; T.K.Rainville; P.A.Van Damme; J.Carolsfeld “Paiche Reigns!” Species Introduction and Indigenous Fisheries in the Bolivian Amazon”. Marit. Stud. 2015, 14, 17.

18 

LSTorati, JBTaggart, ESVarela, JAraripe, SWehner, HMigaud. Genetic diversity and structure in Arapaima gigas populations from Amazon and Araguaia-Tocantins river basins. BMC Genetics. 2019;20 10.1186/s12863-018-0711-y

19 

IPFarias, SWillis, ALeão, JTVerba, MCrossa, FForesti, et al The largest fish in the world’s biggest river: Genetic connectivity and conservation of Arapaima gigas in the Amazon and Araguaia-Tocantins drainages. WEAguirre, editor. PLOS ONE. 2019;14: e0220882 10.1371/journal.pone.0220882

20 

L.Castello; D.J.Stewart Assessing CITES non-detriment finding procedures for Arapaima in Brazil. Appl. Ichthyol. 2010, 26, 4956.

21 

A.R.Weeks et al Assessing the benefits and risks of translocations in changing environments: a genetic perspective. Evol. Appl. 2011, 4, 709725. 10.1111/j.1752-4571.2011.00192.x

22 

D.J.Wright et al The impact of translocations on neutral and functional genetic diversity within and among populations of the Seychelles warbler. Mol. Ecol. 2014, 23(9), 21652177. 10.1111/mec.12740

23 

H.L.Queiroz; A.D.Sardinha A preservação e o uso sustentado dos pirarucus (Arapaima gigas, Osteoglossidae) em Mamirauá In Estratégias para Manejo dos Recursos Pesqueiros em Mamirauá; H.L.Queiroz, W. G. RCrampton, Eds.; CNPq/MCT: Brasília, Brasil, 1999; 208 p.

24 

J.Campos-Silva, C.Peres Community-based management induces rapid recovery of a high-value tropical freshwater fishery. Sci Rep 2016 6, 34745.

25 

B.Pokhriyal; K.Thorat; D.A.Limaye; Y.M.Joshi; V.J.Kadam Microsatellite markers–a novel tool in molecular genetics. Int. J. Res. Pharm. Chem. 2012, 2, 397412.

26 

H.Sakai et al Distinct Evolutionary Patterns of Oryza Glaberrima Deciphered by Genome Sequencing and Comparative Analysis. Plant J.2011, 66, 796805. 10.1111/j.1365-313X.2011.04539.x

27 

Y.Z.Wang; C.Li-Jun; Z.Jia-Ying; W.Shu-Jun Development and Characterization of Novel Microsatellite Markers for the Peach Fruit Moth Carposina Sasakii (Lepidoptera: Carposinidae) Using Next-Generation Sequencing. Int. J. Mol. Sci. 2016, 17, 362 10.3390/ijms17030362

28 

C.Jan; L.Fumagalli Polymorphic DNA Microsatellite Markers for Forensic Individual Identification and Parentage Analyses of Seven Threatened Species of Parrots (Family Psittacidae). PeerJ. 2016, 4, 7.

29 

D.Li; S.Wang; Y.Shen; X.Meng; X.Xu; RWang; et al A Multiplex Microsatellite PCR Method for Evaluating Genetic Diversity in Grass Carp (Ctenopharyngodon Idellus). Aquacult. Fish. 2018, 3(6), 23845.

30 

S.Ismail; N.Vineesh; R.Peter; P.Vijayagopal; A.Gopalakrishnan Identification of microsatellite loci, gene ontology and functional gene annotations in Indian salmon (Eleutheronema tetradactylum) through next-generation sequencing technology using illumina platform. Ecol. Genet. Genomics. 2019, 11, 100038.

31 

X.Duan et al De novo transcriptome analysis and microsatellite marker development for population genetic study of a serious insect pest, Rhopalosiphum padi (L.) (Hemiptera: Aphididae). PLoS One. 2017, 12, e0172513 10.1371/journal.pone.0172513

32 

R. A.Vialle et al Whole Genome Sequencing of the Pirarucu (Arapaima gigas) Supports Independent Emergence of Major Teleost Clades. Genome Biol. Evol. 2018, 10(9), 23662379. 10.1093/gbe/evy130

33 

H.Zhu et al Genome wide characterization of simple sequence repeats in watermelon genome and their application in comparative mapping and genetic diversity analysis. BMC Genomics. 2016, 17, 557 10.1186/s12864-016-2870-4

34 

G.M.Yazbeck et al A broad genomic panel of microsatellite loci from Brycon orbignyanus (Characiformes: Bryconidae) an endangered migratory Neotropical fish. Sci. Rep. 2018, 8, 8511 10.1038/s41598-018-26623-x

35 

Z.Li et al Genome-wide mapping and characterization of microsatellites in the swamp eel genome. Sci. Rep. 2017, 7, 3157 10.1038/s41598-017-03330-7

36 

Y.Wang et al Genome-wide distribution comparative and composition analysis of the SSRs in Poaceae. BMC Genet. 2015, 16, 18 10.1186/s12863-015-0178-z

37 

A. V.Sarika; M. A.Iquebal; A.Rai; D.Kumar In silico mining of putative microsatellite markers from whole genome sequence of water buffalo (Bubalus bubalis) and development of first BuffSatDB. BMC Genomics. 2013, 14, 43 10.1186/1471-2164-14-43

38 

J. M.Hancock Simple sequences and the expanding genome. BioEssays. 1996, 18, 421425. 10.1002/bies.950180512

39 

Temnykh et al Computational and experimental analysis of microsatellites in rice (Oryza sativa L.): frequency, length variation, transposon associations, and genetic marker potential. Genome Res. 2001, 11, 14411452. 10.1101/gr.184001

40 

L.Yu et al New tetranucleotide STRP markers for detecting the 22q11.2 deletion. Mol. Cell. Probes. 20(6), 35965 (2006). 10.1016/j.mcp.2006.03.008

41 

H.Ellegren Microsatellites: simple sequences with complex evolution. Nat. Rev. Genet. 2004, 5(6), 43545. 10.1038/nrg1348

42 

Y.C.Li; A.B.Korol; T.Fahima; A.Beiles; E.Nevo Microsatellites: genomic distribution, putative functions and mutational mechanisms: a review. Mol. Ecol. 2002, 11, 24532465. 10.1046/j.1365-294x.2002.01643.x

43 

Z.Xu et al Distribution of Polymorphic and Non-Polymorphic Microsatellite Repeats in Xenopus tropicali. Bioinform. Biol. Insights. 2008, 2, 157169. 10.4137/bbi.s561

44 

G.Levinson; G. A.Gutman High frequency of short frameshifts im poly-CA/GT tandem repeats borne by bacteriophage M13 in Escherichia coli. Nucleic. Acids. Res. 1987, 15, 53235338. 10.1093/nar/15.13.5323

45 

I.P.Farias; T.Hrbek; H.Brinkmann; I.Sampaio; A.Meyer Characterization and isolation of DNA microsatellite primers for Arapaima gigas, an economically important but severely over-exploited fish species of the Amazon basin. Mol. Ecol. Notes. 2003, 3, 128130.

46 

C. A.Vitorino; F.Nogueira; I. L.Souza; J.Araripe; P. C.Venere Low Genetic Diversity and Structuring of the Arapaima (Osteoglossiformes, Arapaimidae) Population of the Araguaia-Tocantins Basin. Front. Genet. 2017, 8, 159 10.3389/fgene.2017.00159

47 

J.Araripe; P. S.do Rêgo; H.Queiroz; I.Sampaio; H.Schneider Dispersal capacity and genetic structure of Arapaima gigas on different geographic scales using microsatellite markers. PloS One. 2013, 8, e54470 10.1371/journal.pone.0054470

48 

P.F.Fazzi-Gomes et al Genetic diversity and differentiation in natural populations of Arapaima gigas from lower Amazon revealed by microsatellites. Genet. Mol. Res. 2017, 16 (1), gmr16019552 10.4238/gmr16019552

49 

I.P.Farias et al Evidence of polygamy in the socially monogamous Amazonian fish Arapaima gigas (Schinz, 1822) (Osteoglossiformes, Arapaimidae). Neotrop. Ichthyol. 2015, 13, 195204.

50 

I.G.Hamoy; E.J.M.Santos; S.E.B.Santos Rapid and inexpensive analysis of genetic variability in Arapaima gigas by PCR multiplex panel of eight microsatellites. Genet. Mol. Res. 2008, 7, 2932. 10.4238/vol7-1gmr394

51 

JSEllis, JGilbey, AArmstrong, TBalstad, ECauwelier, CCherbonnel, et al Microsatellite standardization and evaluation of genotyping error in a large multi-partner research programme for conservation of Atlantic salmon (Salmo salar L.). Genetica. 2011;139: 353367. 10.1007/s10709-011-9554-4

52 

V.J.Isaac; A.Milstein; M.L.Ruffino A pesca artesanal no Baixo Amazonas: Análise multivariada da captura por espécie. Acta Amaz. 1996, 26, 185208.

53 

D.Botstein; R. L.White; M.Skolnick; R. W.Davis Construction of a genetic linkage map in man using restriction fragment length polymorphisms. Am. J. Hum. Genet. 1980, 32, 314331.

54 

I.G.Hamoy; S.Santos Multiplex PCR panel of microsatellite markers for the tambaqui, Colossoma macropomum, developed as a tool for use in conservation and broodstock management. Genet. Mol. Res. 2012, 11, 141146. 10.4238/2012.January.26.1

55 

R.Frankham; J. D.Ballou; D. A.Briscoe Introduction to conservation genetics, 2rd ed.; Cambridge University Press: Cambridge, Inglaterra, 2004; pp. 221223. 10.1073/pnas.0403809101

56 

J.F.Sambrook; D.W.Russell Molecular Cloning: A Laboratory Manual. 3rd ed. Cold Spring Harbor Laboratory Press, New York (2001).

57 

P. M.Vallone; J.M.Butler AutoDimer: a screening tool for primer-dimer and hairpin structures. BioTechniques. 2004, 37, 226231. 10.2144/04372ST03

58 

C. V.Oosterhout; W. F.Hutchinson; D.P.M.Wills; P.Shipley Micro-Checker: Software for identifying and correcting genotyping errors in microsatellite data. Mol. Ecol. Notes. 2004, 4, 535538.

59 

L.Excoffier; H. E. L.Lischer Arlequin suite ver 3.5: A new series of programs to perform population genetics analyses under Linux and Windows. Mol. Ecol. Resour. 2010, 10, 564567. 10.1111/j.1755-0998.2010.02847.x

60 

W.R.Rice Analyzing Tables of Statistical Tests. Evolution. 1989, 43, 223225. 10.1111/j.1558-5646.1989.tb04220.x

61 

F.Rousset Genepop’007: A complete re-implementation of the genepop software for Windows and Linux. Mol. Ecol. Resour. 2008, 8, 103106. 10.1111/j.1471-8286.2007.01931.x

62 

P.G.Ristow; M.E.D’Amato Forensic statistics analysis toolbox (FORSTAT): A streamlined workflow for forensic statistics. Forensic Sci. Int. Genet. Suppl. Ser. 2017, 6, e52e54.