Skip to main content

Mitochondrial genomes provide insights into the Euholognatha (Insecta: Plecoptera)

Abstract

Background

Euholognatha is a monophyletic group within stoneflies comprised by a superfamily Nemouroidea and a family Scopuridae. Based on morphological data, the family-level phylogenetic relationships within Euholognatha are widely accepted, but there is still controversy among different molecular studies. To better understand the phylogeny of all six extant euholognathan families, we sequenced and analyzed seven euholognathan mitogenomes.

Results

The sequence heterogeneity analysis observed a low degree of compositional heterogeneity in euholognathan mitogenomes. Meanwhile, leuctrid mitogenomes were more heterogeneous than other euholognathan families, which may affect the phylogenetic reconstruction. Phylogenetic analyses with various datasets generated three topologies. The Leuctridae was recovered as the earliest branching lineage, and the sister relationship of Capniidae and Taeniopterygidae was supported by most tree topologies and FcLM analyses. When separately excluding sparsely sampled Scopuridae or high heterogeneity leuctrid taxa, phylogenetic analyses under the same methods generated more stable and consistent tree topologies. Finally, based on the results of this study, we reconstructed the relationships within Euholognatha as: Leuctridae + (Scopuridae + ((Taeniopterygidae + Capniidae) + (Nemouridae + Notonemouridae))).

Conclusion

Our research shows the potential of data optimizing strategies in reconstructing phylogeny within Euholognatha and provides new insight into the phylogeny of this group.

Peer Review reports

Introduction

The Plecoptera (also called stoneflies) is a group of hemimetabolous aquatic insects that includes over 4,400 extant species [1, 2]. Stonefly nymphs are important members of the stream ecosystem. They are frequently employed as bioindicators for monitoring the quality of water because their nymphs are extremely sensitive to water quality [3]. In addition, some nymphs can be used as the diet of fish and invertebrate predators [4]. Due to their important ecological and economic value, the taxonomy and systematics of stoneflies have become a research hotspot nowadays.

In the last few decades, the higher classification of Plecoptera has undergone numerous revisions [5,6,7,8,9]. In 2000, Zwick revised the higher classification of the Plecoptera and proposed a widely accepted classification system for stoneflies [1]. The infraorder Euholognatha, which belongs to the suborder Arctoperlaria, was recovered as a monophyletic group in Zwick’s study [1]. The euholognathan species are mainly distributed in the Northern Hemisphere, comprising a superfamily (Nemouroidea) and a family (Scopuridae) [1, 2]. The former includes five families: Capniidae, Leuctridae, Nemouridae, Notonemouridae, and Taeniopterygidae. The phylogenetic relationships within the infraorder Euholognatha were proposed as Scopuridae + (Taeniopterygidae + ((Capniidae + Leuctridae) + (Nemouridae + Notonemouridae))) [1].

Although the family-level relationship within Euholognatha is supported by morphological data, this has never been well supported by molecular evidence. Thomas et al. presented a phylogeny of Plecoptera based on a single gene [10], and the result conflict on some relationships. For instance, the monophyly of Euholognatha and Nemouroidea was not recovered. The family Scopuridae was sister to the suborder Antarctoperlaria, and the superfamily Nemouroidea was separated from the remainder of the Plecoptera [10]. Based on six molecular markers, Terry and Whiting reconstructed phylogenetic relationships among stoneflies [11]. The result demonstrated the monophyly of the Euholognatha, but the family-level relationships are still controversial. The family relationships were recovered as Leuctridae + (Notonemouridae + ((Nemouridae + Capniidae) + (Taeniopterygidae + Scopuridae))) [11]. Recently, South et al. used transcriptomic data to study the phylogeny of North American Plecoptera [12]. They recovered a monophyletic Nemouroidea, but inconsistent tree topologies have been generated by using different methods and datasets. However, the family-level phylogenetic relationships remain unresolved. In addition, mitochondrial genomic data has also been used for the phylogeny of Plecoptera. Nevertheless, more conflicting hypotheses have been proposed. Such as, some studies have proposed controversial phylogenetic relationships about the relative position of Scopuridae and Leuctridae [13,14,15,16,17].

The mitochondrial genome (mitogenome), as an important molecular marker, has been widely used in phylogenetic analyses of various insect orders. However, many factors can affect the phylogenetic reconstruction with mitogenome sequences, such as high A + T content, compositional heterogeneity, and accelerated sequence evolution [18,19,20]. To evaluate the possible impact of these factors and to reduce artifacts associated with tree reconstruction, an effective method that might be used is to sample more taxa [21,22,23]. However, many previous studies had limited taxon sampling with only one species per family, causing unstable and inconsistent phylogenetic relationships among euholognathan families [13,14,15,16,17].

To date, approximately thirty mitogenomes of Euholognatha are available in the NCBI database. In this study, we sequenced seven mitogenomes, representing Capniidae, Leuctridae, Taeniopterygidae, and Scopuridae (Table 1). We analyzed the general features and sequence heterogeneity of Euholognatha mitogenomes, and investigated the phylogenetic relationships within Euholognatha. In addition, we used four-cluster likelihood mapping (FcLM) to assess the incongruent relationships among five Nemouroidea families generated by our analyses and previous studies. This study aims to improve our understanding of the phylogeny of these groups.

Table 1 Taxonomic information of mitochondrial genomes used in the study

Methods

Sample collecting, DNA extraction and sequencing

A total of seven species were used in this study, and the collection information was listed in Table S1. All the samples were identified by Weihai Li and Dávid Murányi, and were preserved in 100% ethanol. Total genomic DNA for each specimen was extracted using DNeasy Blood & Tissue Kit (Qiagen, Germany) according to the manufacturer’s instructions. The voucher specimens and extracted DNA were stored at − 20℃ until used.

Genomic DNA with qualified concentration was submitted to Berry Genomics Co., Ltd. (Beijing, China) for library construction and high-throughput sequencing. An Illumina TruSeq library with average insert sizes of approximately 350 bp was generated and then sequenced as 150 bp paired-end runs on the Illumina HiSeq 2500 platform.

Sequence assembly, annotation and analyses

The mitogenome assembly strategy refers to our previous studies [13, 16, 24,25,26,27]. Each library generated about 10 Gb of raw data. Then, raw reads were filtered using Trimmomatic v0.30 with default parameters [28]. Clean data were subject to de novo assembling using IDBA-UD [29] with the parameters: similarity threshold 98%, minimum k value 80, and maximum k value 240. All the newly sequenced mitogenomes have already been deposited in GenBank, and the detailed information is listed in Table S1.

All 22 transfer RNA genes (tRNAs) were annotated using MITOS web server [30]. Protein-coding genes (PCGs) and ribosomal RNA genes (rRNAs) were identified by alignment with their homologous genes.

Nucleotide composition was analyzed with MEGA 7.0 [31]. Composition skew values were obtained with AT skew = (A − T)/(A + T) and GC skew = (G − C)/(G + C) [32]. The rates of non-synonymous substitutions (Ka) and the rate of synonymous substitutions (Ks) for PCGs were determined with DnaSP 5.0 [33].

Phylogenetic analyses

For phylogenetic reconstruction, the 13 PCGs and two rRNAs of the 7 samples sequenced here, plus 28 published euholognathan mitogenomes and two perlid mitogenomes (used as outgroups) were used (Table 1). Each PCG was aligned with MAFFT algorithm as implemented in TranslatorX online using codon–based multiple alignments [34]. Two rRNAs were aligned individually using the G-INS-I strategy in MAFFT online [35], and ambiguously aligned regions masked with Gblocks [36]. All alignments were imported into MEGA 7.0 and concatenated into four datasets: (1) PCG matrix, including all codon positions of PCGs with 11,181 nucleotides; (2) PCGR matrix, including 13 PCGs plus two rRNA genes with 13,191 nucleotides; (3) PCG12 matrix, including the first and second codon positions of 13 PCGs with 7,454 nucleotides; (4) PCG12R matrix, including the first and second codon positions of 13 PCGs plus two rRNAs with 9,464 nucleotides. The heterogeneity of sequence divergence within the two datasets was analyzed using AliGROOVE [37] with default parameters. To evaluate single phylogenetic splits, FcLM analysis was conducted using TreePuzzle v5.3 [38].

ModelFinder was used to select the best–fit partitioning schemes for each dataset [39]. According to the Akaike Information Criterion (AIC), the best schemes were selected and subsequently employed in Bayesian inference (BI) and maximum likelihood (ML) analyses (Table S2). IQ–TREE [39] and MrBayes 3.2.6 [40] were used to construct the ML and BI tree, respectively. For ML analysis, phylogenetic trees were generated using an ultrafast bootstrap approximation with 1000 replicates. For MrBayes, parameters were set as follows: two simultaneous chains running for 10 million generations, sampling a tree every 1000 generations, and discarding the first 25% as burn-in.

Results

General features of Euholognathan mitogenomes

For the comparative analyses, 29 of the 35 species have complete mitogenomes (Table 1). All the euholognathan mitogenomes have 37 typical genes (i.e., 22 tRNAs, 13 PCGs, and two rRNAs) and a control region, as has been reported in other published stoneflies and insects [13,14,15,16,17,18, 20]. Gene order was consistent with the ancestral gene order of Drosophila yakuba [41].

The complete mitogenomes of the 29 euholognathan species ranged from 15,016 bp (Sphaeronemoura acutispina) to 16,602 bp (Nemoura nankinensis) in length (Fig. 1; Table 1). The length variation in control regions is mostly responsible for the observed length variation among mitogenomes (Fig. 1). All 35 mitogenomes showed a strong AT bias with an average A + T content of 69.1% ranging from 66.3% (Amphinemura longispina) to 71.9% (Perlomyia kappa) (Table S3). Furthermore, all 35 mitogenomes presented a positive AT–skew (from 0.01 in Capnia zijinshana to 0.08 in A. longispina) and a negative GC–skew (from − 0.15 in Doddsia occidentalis to − 0.28 in Scopura montana) for the whole mitogenome, which is typical in insect mitogenomes [13,14,15,16,17,18].

Fig. 1
figure 1

Size of the complete mitogenomes and complete control regions of 29 euholognathan species

Sequence heterogeneity in Euholognathan mitogenomes

The sequence heterogeneity analysis found low heterogeneity in sequence divergence for a subset of taxa (Fig. 2). The degree of heterogeneity of the PCG12 (mean similarity score, 0.654) and PCG12R datasets (0.644) were lower than that of the PCG (0.574) and PCGR datasets (0.568) (Fig. 2), suggesting that third codon positions are more heterogeneous than other two codon positions. This finding was supported by additional research on sequence divergence in datasets defined by codon position alone (Fig. S1). Because negative similarity scores were found in most pairwise sequence comparisons of the third codon position (Fig. S1). In addition, sequence heterogeneity for leuctrid species displayed relatively lower similarity scores (Fig. 2), suggesting that the leuctrid mitogenomes are more heterogeneous than other euholognathan families.

Fig. 2
figure 2

Heterogeneous sequence divergence within Euholognatha mitogenomes. The mean similarity score between sequences is represented by a colored square, based on AliGROOVE scores ranging from − 1, indicating the great difference in rates from the remainder of the data set, that is, heterogeneity (red coloring), to + 1, indicating rates match all other comparisons (blue coloring)

We investigated the compositional diversity of nucleotides of mitochondrial PCGs across the available euholognathan mitogenomes (Fig. 3). The A + T content in Leuctridae (69.18 ± 1.98%) was higher than that in other families, but the degree of heterogeneity among euholognathan mitogenomes at the family level was low (from 66.85 ± 1.48% to 69.18 ± 1.98%). In addition, Ka was low for all euholognathan mitogenomes (< 0.200). However, the average Ka in Leuctridae (0.184 ± 0.001) was significantly higher than that in other families, suggesting an accelerated evolutionary rate in Leuctridae.

Fig. 3
figure 3

Systematic errors in phylogenetic analyses under site-homogeneous models. The tree was obtained by ML analysis of the PCG dataset. Numbers close to the branching points are bootstrap proportion (BP). The numbers in the brackets indicate the number of species used for phylogenetic analyses in the corresponding taxa. The branch lengths were calculated by IQ–TREE based on PCG dataset. The A + T content (%), and rate of non–synonymous substitutions (Ka) were calculated from the protein–coding genes. Error bars represent standard deviations from the data of multiple species

Phylogenetic and four–cluster likelihood mapping (FcLM) analyses

In this study, BI and ML trees were inferred for each of the four datasets (Table S2). Although ML and BI analysis showed inconsistent topologies across the different datasets, some relationships were highly supported in most of the analyses (Fig. 4). Such as, Nemouridae was sister to Notonemouridae in all analyses with strong support (Bayesian posterior probabilities (PP) = 1.00, bootstrap probabilities (BP) = 100), and Leuctridae was recovered at the basal position of the tree (PP = 1.00, BP = 100). The sister group of Capniidae and Taeniopterygidae was supported by most BI and ML analyses, but most support values were relatively low (PP = 0.71/0.99, 53 ≤ BP ≤ 84) (Fig. 4a and b). In these topologies, Scopuridae was the sister group to all the rest of the Nemouroidea families (Fig. 4a and c) or to the clade Capniidae plus Taeniopterygidae (Fig. 4b). Our result shows that regardless of the position of Scopuridae, Nemouroidea would be recovered as non-monophyletic, as the positioning of Leuctridae remained unchanged (Fig. 4).

Fig. 4
figure 4

Phylogenetic trees obtained from the Bayesian inferences and maximum–likelihood analyses. a The congruent topology from the analysis of ML–PCG (BP in left), ML–PCG12 (BP in middle), and ML–PCG12R (BP in right); b The congruent topology from the analyses of ML–PCGR (BP in left), BI–PCG (PP in middle), and BI–PCGR (PP in right); c The congruent topology from the analyses of BI–PCG12 (PP in left), BI–PCG12R (PP in right). Values at node represented the Bayesian posterior probabilities (PP) or bootstrap probabilities (BP). We showed a schematic version of the trees (bc) with some ingroups collapsed and outgroups removed for clarity

To evaluate the incongruent relationships among the five Nemouroidea families generated by our analysis and previous studies, particularly whether Capniidae is grouped with Taeniopterygidae or Leuctridae, we excluded the family Scopuridae and conducted four-cluster likelihood mapping (FcLM) analyses. The FcLM analysis preferred for the sister group relationship of Capniidae and Taeniopterygidae (79.7%/83.8%/85.8%/94.7%) (Fig. 5). Alternative relationships were weakly supported: Capniidae as the sister group to Leuctridae (1.6%/1.4%/0.1%/0.1%), and Capniidae as sister group to Nemouridae plus Notonemouridae (18.7%/14.8%/14.2%/5.2%). Moreover, considering the unstable phylogenetic position of Scopuridae and the potential noise introduced by certain species in the analysis, we also excluded the family Scopuridae and reconstructed the phylogenetic relationships among the five Nemouroidea families. Across various datasets and analysis methods, consistent tree topologies were obtained (Fig. S2). The results supported the basal position of Leuctridae (all PPs = 1, BPs = 100) and the sister group relationship between Capniidae and Taeniopterygidae (all PPs = 1, 85 ≤ BP ≤ 94).

Fig. 5
figure 5

Results of Four-cluster Likelihood Mapping as 2D simplex graphs. a Four-cluster Likelihood Mapping based on PCG; b four-cluster Likelihood Mapping based on PCGR; c four-cluster Likelihood Mapping based on PCG12; d four-cluster Likelihood Mapping based on PCG12R

Discussion

In this research, seven mitogenomes from the infraorder Euholognatha were sequenced. We found a low heterogeneity among the euholognathan families, and a relatively high compositional heterogeneity in Leuctridae. Therefore, leuctrid species may be placed in an unstable or possibly misplaced position on phylogenetic trees, as previous studies have shown that the compositional variability of mitogenomes in particular groups may lead to the improper grouping of unrelated taxa [18,19,20].

Recently, many studies have reported the highly A + T content, accelerated substitution rates, and relatively high compositional heterogeneity in some groups of insect mitogenomes [20, 42,43,44]. These potential biases are major sources of systematic error in phylogenetic reconstruction, leading to topological contradiction with morphological and/or other molecular datasets [20, 23, 43]. Previous studies found a low degree of sequence heterogeneity within Systellognatha and Plecoptera [14, 27]. In this study, analyses of sequence divergence, base composition, and substitution rates also revealed a low degree of compositional heterogeneity in euholognathan mitogenomes. Meanwhile, leuctrid mitogenomes have the highly A + T content, accelerated substitution rates, and relatively high compositional heterogeneity, indicating low nodal support values and unstable phylogenetic relationships among the corresponding families may occur in phylogenetic reconstructions.

In the current study we reconstructed the family-level phylogenetic relationships within Euholognatha. The monophyly of Euholognatha is evidenced by three morphological characteristics: a single corpus allatum, a soft egg chorion, and the crossing of segmental nerves under longitudinal abdominal muscles [1]. Drumming and related female structures can easily distinguish Scopuridae from Nemouroidea, and five Nemouroidea families can be distinguished by the sperm transfer mode and related morphological changes [1, 45]. The monophyly of each euholognathan family was well supported by morphological data, and the Scopuridae are the sister group of the large superfamily Nemouroidea [1]. However, the relationships among the Nemouroidea families were controversial for a long time. An interesting arrangement occurred in Nemouroidea, because the northern hemisphere distributed nemourids and the southern hemisphere distributed notonemourids were listed as sister groups by morphological studies [1, 8, 46]. This arrangement differs from the previous morphological hypothesis (Illies place Leuctridae as the sister of Nemouroidae [6]) and some molecular analyses [10, 11]. In addition, the basal position of Nemouroidea is also controversial. Previous morphological studies placed Taeniopterygidae at the base of Nemouroidea [1], while Leuctridae was supported as the earliest branching group by most molecular analyses [11, 13, 24, 25]. Although our analyses generated three inconsistent topologies, the basal position of Leuctridae was recovered by all analyses (Fig. 4). Comparable to many previous phylogenetic studies, the sister groups of Nemouridae plus Notonemouridae and Capniidae plus Taeniopterygidae were also recovered by most mitogenome studies [13, 16, 17, 24, 25, 47]. Although morphological analyses have supported the sister group of Nemouridae and Notonemouridae, the clade Capniidae plus Taeniopterygidae and the position of Leuctridae remain in conflict with the morphological findings [1].

In contrast to morphological studies, there is no doubt about the relationship between Nemouridae and Notonemouridae, and the debate has mainly focused on whether Taeniopterygidae or Leuctridae is the sister group of Capniidae. After excluding mitogenomes of the family Scopuridae, the FcLM analysis tends to support a sister group relationship between Capniidae and Taeniopterygidae (Fig. 5). The sister group of Capniidae and Taeniopterygidae is also supported by the phylogenetic analysis results after excluding two scopurid mitogenomes (Fig. S2). These results were consistent with most tree topologies based on four datasets (Fig. 4a and b) and most mitogenome studies [13, 16, 17, 24, 25, 47], but inconsistent with Zwick’s phylogenetic analyses [1].

According to the result of sequence heterogeneity, leuctrid mitogenomes are more heterogeneous than other euholognathan families, which may affect the relationships among corresponding families in phylogenetic reconstruction. Here, we used the same methods to reconstruct an additional eight phylogenetic trees with a reduced number of leuctrid taxa to see if certain species within Leuctridae had an obvious impact on topologies. After removing three leuctrid species with relatively high compositional heterogeneity,, our results provide more stable phylogenetic relationships (Fig. 6). All BI and ML trees had the same topological structures. The monophyly of Nemouroidea was not supported, and the relationships among six Euholognatha families were recovered as: Leuctridae + (Scopuridae + ((Taeniopterygidae + Capniidae) + (Nemouridae + Notonemouridae))). This result is consistent with the findings in Fig. 4a, indicating that reducing certain leuctrid species contributes to obtaining a more consistent topology.

Fig. 6
figure 6

Molecular phylogeny of Euholognatha. Topology refers to the ML tree generated in IQ-TREE based on PCG dataset. Nodal supports from various analyses of different datasets are shown as squares at the nodes, with explanation of different colours shown in the bottom left box. PP and BP mean Bayesian posterior probabilities and bootstrap probabilities, respectively

Our results provide a new insight into the phylogeny of Euholognatha. Although the euholognathan mitogenomes showed a low degree of compositional heterogeneity, a more heterogeneous Leuctridae can indeed affect the phylogenetic reconstruction. In addition, using mitogenome data alone may not be sufficient to recover the relationships among euholognathan families, as evidenced by the relatively low support values of some family-level relationships. Furthermore, mitogenomes of these euholognathan families (especially Scopuridae and Notonemouridae) are still limited, and errors may be introduced in the phylogenetic reconstruction of these clades. Dense sampling of mitogenomes can serve as an effective approach to enhance estimations of molecular rates and variations in base composition, thereby producing robustly supported phylogenetic inferences [21, 23]. Therefore, combining other types of data (such as morphological characters and nuclear genes) and adding taxonomic samples are needed to resolve these problems.

Conclusions

In this research, seven mitogenomes from the infraorder Euholognatha were sequenced. We found a low heterogeneity among the euholognathan families, and a relatively high compositional heterogeneity in Leuctridae. Our analysis generated different tree topologies, and the position of some families was different from the currently accepted phylogeny. These conflicting topologies may result from employing different strategies for taxon sampling, utilizing diverse types of data, and applying various phylogenetic methods (e.g., substitution models). Nonetheless, the conflicting topologies reflect the complex phylogenetic signals present in the sequence data, particularly in the mitogenome sequences of Euholognatha. Our study found that by separately excluding sparsely sampled Scopuridae or high heterogeneity leuctrid taxa, the impact of these data on phylogenetic reconstruction can be effectively reduced, resulting in a more consistent tree topology. Although these results have not yet reconstructed the monophyly of Nemouroidea and differ somewhat from morphological results, like most molecular studies, they all support the sister group relationship between Taeniopterygidae and Capniidae. Finally, based on the results of this study, we reconstructed the relationships within Euholognatha as: Leuctridae + (Scopuridae + ((Taeniopterygidae + Capniidae) + (Nemouridae + Notonemouridae))). However, considering the relatively low support values for certain nodes, the position of some families (especially Scopuridae) still requires further investigation.

Availability of data and materials

All the accession numbers and the newly sequenced (ON209193, OQ612621, OQ612622, OQ612623, OQ612624, OQ612625, OQ612626) and assembled mitogenomes for seven accessions of euholognathan species have been uploaded to the National Center for Biotechnology Information database.

References

  1. Zwick P. Phylogenetic system and zoogeography of the Plecoptera. Annu Rev Entomol. 2000;45:709–46.

    Article  CAS  PubMed  Google Scholar 

  2. Plecoptera species file online. Version 5.0/5.0. http://Plecoptera.SpeciesFile.org. Accessed 9 August 2023.

  3. Fochetti R, Tierno de Figueroa JM. Global diversity of stoneflies (Plecoptera: Insecta) in freshwater. Hydrobiologia. 2008;595:365–77.

    Article  Google Scholar 

  4. Stewart KD, Nelson CH, Duffield RM. Occurrence of stoneflies (Plecoptera) in the diet of the red-spotted newt, Notophthalmus viridescens. Entomol News. 2001;112:225–9.

    Google Scholar 

  5. Ricker WE. Some evolutionary trends in Plecoptera. Proc Indiana Acad Sci. 1950;59:197–209.

    Google Scholar 

  6. Illies J. Phylogeny and zoogeography of the Plecoptera. Annu Rev Entomol. 1965;10:117–40.

    Article  Google Scholar 

  7. Zwick P. Plecoptera (Steinfliegen). Handb Zool. 1980;4:1–115.

    Google Scholar 

  8. Nelson CH. Numerical cladistic analysis of the phylogenetic relationships in Plecoptera. Ann Entomol Soc Am. 1984;77:466–73.

    Article  Google Scholar 

  9. Stewart KW, Stark BP. Nymphs of north American stonefly genera (Plecoptera). 2rd ed. Ohio: Caddis Press; 2002.

    Google Scholar 

  10. Thomas MA, Walsh KA, Wolf MR, McPheron BA, Marden JH. Molecular phylogenetic analysis of evolutionary trends in stonefly wing structure and locomotor behavior. Proc Natl Acad Sci USA. 2000;97:13178–83.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  11. Terry MD, Whiting MF. Phylogeny of Plecoptera: molecular evidence and evolutionary trends. Entomol Abh. 2003;61:130–1.

    Google Scholar 

  12. South EJ, Skinner RK, DeWalt RE, Kondratieff BC, Johnson KP, Davis MA, Lee JJ, Durfee RS. Phylogenomics of the north American Plecoptera. Syst Entomol. 2021;46:287–305.

    Article  Google Scholar 

  13. Cao JJ, Wang Y, Guo X, Wang GQ, Li WH, Murányi D. Two complete mitochondrial genomes from Leuctridae (Plecoptera: Nemouroidea): implications for the phylogenetic relationships among stoneflies. J Insect Sci. 2021;21:1–6.

    Article  Google Scholar 

  14. Ding SM, Li WH, Wang Y, Cameron SL, Murányi D, Yang D. The phylogeny and evolutionary timescale of stoneflies (Insecta: Plecoptera) inferred from mitochondrial genomes. Mol Phylogenet Evol. 2019;135:123–35.

    Article  CAS  PubMed  Google Scholar 

  15. Shen Y, Du YZ. The mitochondrial genome of Leuctra sp. (Plecoptera: Leuctridae) and its performance in phylogenetic analyses. Zootaxa. 2019;4671:571–80.

    Article  Google Scholar 

  16. Wang Y, Cao JJ, Li N, Ma GY, Li WH. The first mitochondrial genome from Scopuridae (Insecta: Plecoptera) reveals structural features and phylogenetic implications. Int J Biol Macromol. 2019;122:893–902.

    Article  CAS  PubMed  Google Scholar 

  17. Zhao MY, Huo QB, Du YZ. Molecular phylogeny inferred from the mitochondrial genomes of Plecoptera with Oyamia Nigribasis (Plecoptera: Perlidae). Sci Rep. 2020;10:20955.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  18. Li H, Shao RF, Song N, Song F, Jiang P, Li ZH, Cai WZ. Higher-level phylogeny of paraneopteran insects inferred from mitochondrial genome sequences. Sci Rep. 2015;5:8527.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  19. Timmermans MJTN, Barton C, Haran J, Ahrens D, Culverwell CL, Ollikainen A, Dodsworth S, Foster PG, Bocak L, Vogler AP. Family-level sampling of mitochondrial genomes in Coleoptera: compositional heterogeneity and phylogenetics. Genome Biol Evol. 2015;8:161–75.

    Article  PubMed  PubMed Central  Google Scholar 

  20. Song F, Li H, Jiang P, Zhou X, Liu J, Sun C, Vogler AP, Cai WZ. Capturing the phylogeny of Holometabola with mitochondrial genome data and bayesian site-heterogeneous mixture models. Genome Biol Evol. 2016;8:1411–26.

    Article  PubMed  PubMed Central  Google Scholar 

  21. Gillett CPDT, Crampton-Platt A, Timmermans MJTN, Jordal BH, Emerson BC, Vogler AP. Bulk de novo mitogenome assembly from pooled total DNA elucidates the phylogeny of weevils (Coleoptera: Curculionoidea). Mol Biol Evol. 2014;31:2223–37.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  22. Liu YQ, Li H, Song F, Zhao YS, Wilson JJ, Cai WZ. Higher-level phylogeny and evolutionary history of Pentatomomorpha (Hemiptera: Heteroptera) inferred from mitochondrial genome sequences. Syst Entomol. 2019;44:810–9.

    Article  Google Scholar 

  23. Timmermans MJTN, Lees DC, Thompson MJ, Sáfián S, Brattström O. Mitogenomics of OldWorld Acraea butterflies reveals a highly divergent bematistes. Mol Phylogenet Evol. 2016;97:233–41.

    Article  CAS  PubMed  Google Scholar 

  24. Cao JJ, Wang Y, Li WH. Comparative mitogenomic analysis of species in the subfamily Amphinemurinae (Plecoptera: Nemouridae) reveal conserved mitochondrial genome organization. Int J Biol Macromol. 2019;138:292–301.

    Article  CAS  PubMed  Google Scholar 

  25. Guo X, Guo C, Dong X, Zhang H, Murányi D, Li W, Wang Y. Mitochondrial genome of Strophopteryx fasciata (Plecoptera: Taeniopterygidae) with a phylogenetic analysis of Nemouroidea. Genes. 2022;13:1116.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  26. Mo RR, Wang Y, Cao JJ, Wang GQ, Li WH, Murányi D. Two complete mitochondrial genomes of the subfamily Chloroperlinae (Plecoptera: Chloroperlidae) and their phylogenetic implications. Arthropod Sys Phylo. 2022;80:155–68.

    Article  Google Scholar 

  27. Wang Y, Cao JJ, Murányi D, Guo X, Guo CY, Li WH. Family–level phylogeny of infraorder Systellognatha (Insecta: Plecoptera) inferred from mitochondrial genomes. Zool Scr. 2022;51:589–602.

    Article  Google Scholar 

  28. Lohse M, Bolger AM, Nagel A, Fernie AR, Lunn JE, Stitt M, Usadel B. RobiNA: a user-friendly integrated software solution for RNA-Seq based transcriptomics. Nucleic Acids Res. 2012;40:W622–7.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  29. Peng Y, Leung HCM, Yiu SM, Chin FYL. IBDA-UD: a de novo assembler for single-cell and metagenomic sequencing data with highly uneven depth. Bioinformatics. 2012;28:1420–8.

    Article  CAS  PubMed  Google Scholar 

  30. Bernt M, Donath A, Jühling F, Externbrink F, Florentz C, Fritzsch G, Pütz J, Middendorf M, Stadler PF. MITOS: improved de novo metazoan mitochondrial genome annotation. Mol Phylogenet Evol. 2013;69:313–9.

    Article  PubMed  Google Scholar 

  31. Kumar S, Stecher G, Tamura K. MEGA7: molecular evolutionary genetics analysis version 7.0 for bigger datasets. Mol Biol Evol. 2016;33:1870–4.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  32. Perna NT, Kocher TD. Patterns of nucleotide composition at fourfold degenerate sites of animal mitochondrial genomes. J Mol Evol. 1995;41:353–8.

    Article  CAS  PubMed  Google Scholar 

  33. Librado P, Rozas J. DnaSP v5: a software for comprehensive analysis of DNA polymorphism data. Bioinformatics. 2009;25:1451–2.

    Article  CAS  PubMed  Google Scholar 

  34. Abascal F, Zardoya R, Telford MJ, TranslatorX. Multiple alignment of nucleotide sequences guided by amino acid translations. Nucleic Acids Res. 2010;38:W7–W13.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  35. Castresana J. Selection of conserved blocks from multiple alignments for their use in phylogenetic analysis. Mol Biol Evol. 2000;17:540–52.

    Article  CAS  PubMed  Google Scholar 

  36. Katoh K, Standley DM. MAFFT multiple sequence alignment software version 7: improvements in performance and usability. Mol Biol Evol. 2013;30:772–80.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  37. Kück P, Meid SA, Groß C, Wägele JW, Misof B. AliGROOVE-visualization of heterogeneous sequence divergence within multiple sequence alignments and detection of inflated branch support. BMC Bioinform. 2014;15:294.

    Article  Google Scholar 

  38. Schmidt HA, Strimmer K, Vingron M, Haeseler AV. TREE-PUZZLE: maximum likelihood phylogenetic analysis using quartets and parallel computing. Bioinformatics. 2022;18:502–4.

    Article  Google Scholar 

  39. Nguyen LT, Schmidt HA, von Haeseler A, Minh BQ. IQ-TREE: a fast and effective stochastic algorithm for estimating maximum-likelihood phylogenies. Mol Biol Evol. 2015;32:268–74.

    Article  CAS  PubMed  Google Scholar 

  40. Ronquist F, Teslenko M, van der Mark PVD, Ayres DL, Darling A, Höhna S, Larget B, Liu L, Suchard MA, Huelsenbeck JP. MrBayes 3.2: efficient bayesian phylogenetic inference and model choice across a large model space. Syst Biol. 2012;61:539–42.

    Article  PubMed  PubMed Central  Google Scholar 

  41. Clary DO, Wolstenholme DR. The mitochondrial DNA molecule of Drosophila yakuba: nucleotide sequence, gene organization, and genetic code. J Mol Evol. 1985;22:252–71.

    Article  CAS  PubMed  Google Scholar 

  42. Simon S, Hadrys H. A comparative analysis of complete mitochondrial genomes among Hexapoda. Mol Phylogenet Evol. 2013;69:393–403.

    Article  CAS  PubMed  Google Scholar 

  43. Talavera G, Vila R. What is the phylogenetic signal limit from mitogenomes? The reconciliation between mitochondrial and nuclear data in the Insecta class phylogeny. BMC Evol Biol. 2011;11:315.

    Article  PubMed  PubMed Central  Google Scholar 

  44. Xu S, Wu Y, Liu Y, Zhao P, Chen Z, Song F, Li H, Cai W. Comparative mitogenomics and phylogenetic analyses of Pentatomoidea (Hemiptera: Heteroptera). Genes. 2021;12:1306.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  45. Rupprecht R. Struktur Und Funktion Der Bauchblase Und Des hammers Von Plecopteren. Zool Jahr Abt Anat Ontog Tiere. 1976;95:9–80.

    Google Scholar 

  46. Zwick P. Insecta: Plecoptera. Phylogenetisches System Und Katalog. Berlin: De Gruyter; 1973.

    Google Scholar 

  47. Chen ZT, Du YZ. The first two mitochondrial genomes from Taeniopterygidae (Insecta: Plecoptera): structural features and phylogenetic implications. Int J Biol Macromol. 2018;111:70–6.

    Article  CAS  PubMed  Google Scholar 

Download references

Acknowledgements

We sincerely thank Dr. Fan Song for his constructive comments on the data analysis.

Funding

This research was funded by the National Natural Science Foundation of China (No. 32270492; 31801999), the Program for Science & Technology Innovation Talents in Universities of Henan Province (21HASTIT042), and the Key Scientific Research Project of Henan Province (22A210004).

Author information

Authors and Affiliations

Authors

Contributions

JJC, YW, DM and WHL designed the experiment and drafted the manuscript. JJC and YW, performed the experiment and analyzed the data. DM, JXC and WHL did the field collection. All authors have read and approved the manuscript.

Corresponding authors

Correspondence to Ying Wang, Dávid Murányi or Wei-Hai Li.

Ethics declarations

Ethics approval and consent to participate

Not applicable.

Consent for publication

Not applicable.

Competing interests

The authors declare no competing interests.

Additional information

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Supplementary Information

Additional file 1:

 Fig. S1. AliGROOVE analyses of the codon position of protein-coding genes. Fig. S2. Molecular phylogeny of Nemouroidea. Table S1. Information of Euholognatha species newly sequenced in the present study. Table S2. Best partitioning scheme and model selected by ModelFinder for phylogenetic analyses. Table S3. Mitochondrial nucleotide composition in 35 Euholognathan stoneflies.

Rights and permissions

Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Cao, JJ., Wang, Y., Murányi, D. et al. Mitochondrial genomes provide insights into the Euholognatha (Insecta: Plecoptera). BMC Ecol Evo 24, 16 (2024). https://doi.org/10.1186/s12862-024-02205-6

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://doi.org/10.1186/s12862-024-02205-6

Keywords