Introduction
Locusts are characterised by their gregarious behaviour, strong reproductive capacity, omnivorous diet, and strong migratory ability, causing severe damage to crops and grasslands, thereby posing a serious threat to food security and the healthy development of the ecological environment. Conducting scientifically effective comprehensive control measures is crucial. Chemical pesticide spraying is the primary method for locust control, particularly effective in controlling migratory and outbreak locust plagues. However, it often leads to serious issues such as locust resistance, pesticide residues, and environmental pollution. Therefore, there is an urgent need to find environmentally friendly, safe, and efficient pest control strategies.
Paranosema locustae is a single-celled eukaryotic organism that parasitises selectively on locusts and other orthopteran insects. It infects hosts and reproduces indefinitely, causing metabolic disorders, hindered organ development, reduced mobility, prolonged developmental periods, weakened reproductive capacity, and continuously spreads horizontally and vertically within locust populations, playing an important role in regulating locust population numbers (Zhang and Lecoq, Reference Zhang and Lecoq2021; Liu et al., Reference Liu, Wei, Ye, Zhang, Yang, Shi, Zhang, Jashenko, Ji and Hu2023; Zhang et al., Reference Zhang, Xu, Cao, Wang and Zhang2023a, Reference Zhang, Yang, Wang, Liu, Shi, Kabak, Ji and Hu2023b). P. locustae exhibits high safety to non-orthopteran insects, vertebrates, and minimal environmental impact, thus becoming an important means of green locust control (Dakhel et al., Reference Dakhel, Latchininsky and Jaronski2019; Chen et al., Reference Chen, Gao, Li, Zhang, Huang, Wang, Song, Xing, Liu, Nie, Nie, Hua, Zhang, Wang, Ma and Zhang2020; Zhang and Lecoq, Reference Zhang and Lecoq2021).
To resist pathogen infections, locusts must invest a considerable amount of energy. However, limited energy intake cannot simultaneously meet the energy demands of immunity and reproduction. Therefore, there is a trade-off in resource allocation when organisms face stress (Schwenke, et al., Reference Schwenke, Lazzaro and Wolfner2016; Budischak et al., Reference Budischak, Hansen, Caudron, Garnier, Kartzinel, Pelczer, Cressler, Leeuwen and Graham2018; Shang et al., Reference Shang, Niu, Ding, Zhang, Ye, Zhang, Smagghe and Wang2018; Yao et al., Reference Yao, Xu, Dong, Que, Quan and Chen2018). Wang et al. (Reference Wang, Liu, Xia, Xie, Tang and Wang2019a) demonstrated that upon infection with Micrococcus luteus, genes such as PPO1, antimicrobial peptides, and defensins were upregulated, while Vgs expression levels were downregulated, indicating that locusts prioritise increasing investment in immune responses to maintain survival under M. luteus stress. P. locustae infection can induce immune response reactions in various host tissues, leading to increased immune investment and upregulation of immune-related gene expression. Lv et al. (Reference Lv, Mohamed, Zhang, Zhang and Zhang2016) found that P. locustae infection induces the expression of defensins in Locusta migratoria fat bodies and salivary glands, but the transcription levels of defensins in fat bodies are lower, suggesting that P. locustae may weaken the immune response of fat bodies, making them more susceptible to infection. After L. migratoria infection with P. locustae, significant decreases in vitellogenin and vitellogenin receptor transcription expression, as well as reductions in vitellin content in fat bodies, haemolymph, and ovaries were observed, accompanied by significant decreases in egg cell number, ovarian length, and ovarian weight in female locusts, inhibiting vitellin deposition and ultimately reducing reproductive capacity (Chen et al., Reference Chen, Shen, Song, Zhang and Yan2002; Zhang and Lecoq, Reference Zhang and Lecoq2021; Hu et al., Reference Hu, Wang, Tang, Xie, Ding, Xu, Tang, Zhang and Wang2022). Most studies imply that there is a mutual constraint between immunity and reproduction in the body after infection. The activation of immune responses leads to a diminished reproductive capacity.
Locusts possess strong reproductive abilities, which are the main reason for their outbreak. How do reproductive organs respond when the organism is under P. locustae infection stress? This study conducted transcriptome sequencing on gonadal tissues of L. migratoria males and females infected and uninfected with P. locustae at different developmental stages, analysed relevant bioinformatics data, and identified key genes and metabolic pathways involved in the balance between immunity and reproduction in L. migratoria gonadal tissues. This research provides data support for exploring the molecular biology mechanisms of interaction between P. locustae and locusts, screening optimal pest control targets, and further improving pest control effectiveness.
Materials and methods
Insect sources
L. migratoria eggs obtained from laboratory breeding were incubated in an artificial breeding chamber under the following conditions: temperature at 30 ± 1°C, humidity at 50 ± 5%, and a light–dark cycle of 14 L:10 D. After hatching, locust nymphs were reared to adulthood under the aforementioned conditions.
P. locustae infection
P. locustae provided by China Agricultural University was stored at −20°C. Based on preliminary trial results, each L. migratoria was infected with 1 × 104 spores of P. locustae. L. migratoria third-instar nymphs were infected using an individual feeding method (Panek et al., Reference Panek, El Alaoui, Mone, Urbach, Demettre, Texier, Brun, Zanzoni, Peyretaillade, Parisot, Lerat, Peyret, Delbac and Biron2014). Infected third-instar nymphs were reared to adulthood under the conditions mentioned in the section ‘Insect sources’. Then testes/ovaries were collected at third-instar nymphs (1 day post-infection) and also 1, 9, and 19 days post-eclosion of adults. These tissues were placed in RNA preservation solution (Tiangen, Beijing, China) and stored at −80°C for transcriptome sequencing. Three replicates were set for each age group, totalling 48 samples. Uninfected nymphs served as the control group.
RNA extraction and transcriptome sequencing
Total RNA from each sample was extracted using Trizol (Invitrogen, USA), and residual genomic DNA was removed using DNase I (Takara, China). The quantity and quality of RNA samples were assessed using a Nano Drop spectrophotometer (Thermo Fisher Scientific, DE). Transcriptome sequencing was conducted by Beijing Novogene Company using Illumina sequencing technology.
Data quality control
The Illumina platform converts the sequenced image signals into text signals via CASAVA Base Calling and stores them as raw data in the fastq format. Clean reads were obtained by removing reads containing adapter, poly-N, and low-quality reads from raw data. At the same time, Q20, Q30, and GC (guanine deoxyribonucleotide and cytosine deoxyribonucleotide) content of the clean data were calculated. All the downstream analyses were based on the clean reads with high quality.
De novo transcriptome assembly and gene annotation
Trinity was used to assemble clean reads (Grabherr et al., Reference Grabherr, Haas, Yassour, Levin, Thompson, Amit, Adiconis, Lin, Raychowdhury, Zeng, Chen, Mauceli, Hacohen, Gnirke, Rhind, Palma, Birren, Nusbaum, Lindblad-Toh, Friedman and Regev2011). Corset (Davidson and Oshlack, Reference Davidson and Oshlack2014) was adopted to cluster the assembled contigs based on shared reads. The longest transcripts of each cluster were selected as unigenes, which were then annotated and applied for the following analyses. Gene function was annotated based on the following databases: Nr (NCBI non-redundant protein sequences), Nt (NCBI non-redundant nucleotide sequences), Pfam (Protein family), COG (Cluster of Orthologous Groups of proteins) and KOG (euKaryotic Orthologous Groups), Swiss-Prot (a manually annotated and reviewed protein sequence database), KEGG (Kyoto Encyclopaedia of Genes and Genome), and GO (Gene Ontology).
Screening and enrichment analysis of differentially expressed genes
FPKM values were calculated to represent gene expression levels (Trapnell et al., Reference Trapnell, Williams, Pertea, Mortazavi, Kwan, van Baren, Salzberg, Wold and Pachter2010). DESeq2 was used to determine differences in gene expression levels between two groups (Love et al., Reference Love, Huber and Anders2014), calculating P-values, performing multiple hypothesis testing correction (Benjamini–Hochberg), and obtaining false-discovery rates (represented as P adj). Using P adj < 0.05 and |log2FoldChange| > 2 as criteria for selecting differentially expressed genes (DEGs). DEGs were screened for CFn3 vs. TFn3 (third-instar female locusts in the control group vs. infected group), CF1 vs. TF1 (1-day-old female locusts in the control group vs. infected group), CF9 vs. TF9 (9-day-old female locusts in the control group vs. infected group), CF19 vs. TF19 (19-day-old female locusts in the control group vs. infected group), CMn3 vs. TMn3 (third-instar male locusts in the control group vs. infected group), CM1 vs. TM1 (1-day-old male locusts in the control group vs. infected group), CM9 vs. TM9 (9-day-old male locusts in the control group vs. infected group), and CM19 vs. TM19 (19-day-old male locusts in the control group vs. infected group). GOseq (Young et al., Reference Young, Wakefield, Smyth and Oshlack2010) and KOBAS (Mao et al., Reference Mao, Cai, Olyarchuk and Wei2005) were used for GO and KEGG annotation and functional enrichment analysis of DEGs, with P adj < 0.05 as the significance enrichment threshold.
PPI network construction
We performed protein–protein interaction (PPI) network analysis of the DEGs using the STRING database to construct potential interactions of genes with interaction scores >0.15. Then the networks created by STRING were imported into Cytoscape (version 3.9.1) software for visualisation.
Expression analysis of gonadal tissue stress response-related genes
Three immune- and reproductive-related genes were validated by quantitative real-time polymerase chain reaction (qRT-PCR) using TB Green® Premix Ex Taq™ II (Takara, China), with EF1α as the reference gene. Each reaction system (20 μl) included 10 μl TB Green, 1.0 μl each of upstream and downstream primers (table S1), 1 μl cDNA template, and 7.0 μl double-distilled water. The reaction programme included pre-denaturation at 95°C for 2 min; followed by 40 cycles of denaturation at 95°C for 10 s, annealing at 60°C for 10 s, and extension at 72°C for 10 s; and a final melting curve stage. Three samples were selected for each age group, with each sample tested three times. The Ct values were collected after the reaction, and the relative gene expression levels were calculated using the 2−ΔΔCt method. Data were represented as mean ± standard error. Single-factor analysis of variance (ANOVA) was performed using Origin2022 software (P < 0.05).
Results and analysis
Quality assessment of sequencing results
Transcriptome sequencing of gonadal tissues of infected and uninfected L. migratoria males and females with P. locustae was conducted using the Illumina HiSeq™ 6000 sequencing platform. Clean data for each sample ranged from 5.8 to 6.7 Gb, with GC content between 37.77 and 47.33%, and Q20 and Q30 values ranging from 97.14 to 97.77 and 92.45 to 93.71, respectively. A total of 226,186 unigenes were obtained, with an average length of 845 bp and an N50 length of 1088 bp. Unigenes longer than 1 kb accounted for 19.791% of the total (table 1). The assembly quality of Trinity.fasta, unigene.fasta, and cluster.fasta was evaluated using BUSCO software. The results showed a level of 98.1, 93.2, and 93.2% completeness for Trinity, unigene, and cluster, respectively, indicating good assembly completeness and high accuracy, suitable for subsequent analysis (fig. S1).
Analysis of DEGs in L. migratoria gonadal tissues of infected and uninfected P. locustae
Using the transcriptome data of uninfected P. locustae male and female gonadal tissues as controls, analysis of DEGs was performed. Upon infection with P. locustae, L. migratoria third-instar nymphs exhibited 2382 DEGs in female ovary tissues, with 1134 downregulated genes and 1248 upregulated genes; and 4957 DEGs in male testis tissues, with 2580 downregulated genes and 2377 upregulated genes. After nymphs eclosed into adults, the number of DEGs increased. Female locusts had the most DEGs at 1 day post-eclosion, with 7141 DEGs, including 3902 downregulated and 3239 upregulated genes. DEGs in male locusts continued to increase, peaking at 9 days post-eclosion with 11,245 DEGs, including 6412 downregulated and 4833 upregulated genes (fig. 1). Venn diagrams illustrated the overlap of DEGs among different comparison groups. After infection with P. locustae, there were 25 common DEGs in female groups (CFn3 vs. TFn3, CF1 vs. TF1, CF9 vs. TF9, CF19 vs. TF19) and 205 common DEGs in male groups (CMn3 vs. TMn3, CM1 vs. TM1, CM9 vs. TM9, CM19 vs. TM19) (fig. 2).
Significant enrichment analysis of DEGs in GO functions
GO functional annotation analysis was performed on DEGs in female ovary tissues. Results showed no significant enrichment in CFn3 vs. TFn3 and CF1 vs. TF1 groups. In the CF9 vs. TF9 group, DEGs were significantly enriched in ribosome (GO:0005840), oxidoreductase activity (GO:0016491), and ribosome biogenesis (GO:0042254), with 91, 191, and 90 differential genes, respectively (P adj < 0.05). In the CF19 vs. TF19 group, DEGs were significantly enriched in transporter activity (GO:0005215), transmembrane transport (GO:0055085), external encapsulating structure (GO:0030312), and molecular transducer activity (GO:0060089), with 196, 165, 24, and 57 differential genes, respectively (P adj < 0.05) (fig. 3).
GO functional annotation analysis of DEGs in male testis tissues showed significant enrichment in oxidoreductase activity (GO:0016491) in the CMn3 vs. TMn3 group, with 239 differential genes (P adj < 0.05). In the CM1 vs. TM1 group, there was no significant enrichment. In the CM9 vs. TM9 group, DEGs were significantly enriched in various categories including catalytic activity (GO:0003824), catalytic activity, acting on a protein (GO:0140096), hydrolase activity (GO:0016787), carbohydrate metabolic process (GO:0005975), transferase activity (GO:0016740), protein modification process (GO:0036211), protein glycosylation (GO:0006486), microtubule-based movement (GO:0007018), lipid metabolic process (GO:0006629), and oxidoreductase activity (GO:0016491), with 2458, 696, 1159, 274, 891, 376, 45, 36, 242, and 450 differential genes, respectively (P adj < 0.05). In the CM19 vs. TM19 group, DEGs were significantly enriched in hydrolase activity (GO:0016787) and molecular transducer activity (GO:0060089), with 625 and 93 differential genes, respectively (P adj < 0.05) (fig. 4).
Enrichment analysis of KEGG pathways for DEGs
Enrichment analysis of KEGG pathways for DEGs in female ovary tissues revealed significant enrichment in various metabolic pathways in different comparison groups. In the CFn3 vs. TFn3 group, DEGs were significantly enriched in pathways such as ascorbate and aldarate metabolism (ko00053), pentose and glucuronate interconversions (ko00040), arginine biosynthesis (ko00220), alanine, aspartate, and glutamate metabolism (ko00250), drug metabolism – other enzymes (ko00983), haematopoietic cell lineage (ko04640), steroid hormone biosynthesis (ko00140), fat digestion and absorption (ko04975), fructose and mannose metabolism (ko00051), retinol metabolism (ko00830), chemical carcinogenesis (ko05204), and metabolism of xenobiotics by cytochrome P450 (ko00980). Differential gene counts ranged from 5 to 13 for these pathways (P adj < 0.05). The CF1 vs. TF1 group showed no significant enrichment. In the CF9 vs. TF9 group, DEGs were significantly enriched only in the ribosome pathway (ko03010), with 72 differential genes (P adj < 0.05). In the CF19 vs. TF19 group, DEGs were significantly enriched in pathways such as lysosome (ko04142), biosynthesis of unsaturated fatty acids (ko01040), pentose and glucuronate interconversions (ko00040), glycosaminoglycan degradation (ko00531), other glycan degradation (ko00511), olfactory transduction (ko04740), metabolism of xenobiotics by cytochrome P450 (ko00980), drug metabolism – other enzymes (ko00983), longevity regulating pathway – worm (ko04212), and chemical carcinogenesis (ko05204). Differential gene counts ranged from 9 to 37 for these pathways (P adj < 0.05) (fig. 5).
For DEGs in male testis tissues, no significant enrichment was observed in the CMn3 vs. TMn3, CM9 vs. TM9, and CM19 vs. TM19 groups. However, in the CM1 vs. TM1 group, DEGs were significantly enriched in the spliceosome pathway (ko03040), with 59 differential genes (P adj < 0.05) (fig. 6).
The network of PPI of DEGs
To further explore the possible mechanisms of gonadal tissue of L. migratoria resistance to P. locustae infection, the putative 690 key DEGs belonging to the CF1 vs. TF1 group, 225 DEGs belonging to CF9 vs. TF9 group, 757 DEGs belonging to CM1 vs. TM1 group, 1140 DEGs belonging to CM9 vs. TM9 group were used to build PPI networks. As shown in the CF1 vs. TF1 group in fig. 7, immune-related genes, such as ACSL, APC3, DNM1L, GNG13, PTPN11, and TIAM1, were significantly downregulated, while reproductive-related gene, NCOA2, was significantly upregulated in female ovary at 1 day post-eclosion. Similar results were also observed in other groups. The results indicate that immune- and reproductive-related gene expression were regulated to meet the body's demands in different developmental stages after P. locustae infection.
Selection and qRT-PCR validation of immune- and reproductive-related genes in L. migratoria gonadal tissues
Based on functional annotation and enrichment analysis of DEGs, along with relevant literature, immune- and reproductive-related DEGs were selected from the transcriptome data. These genes included Transferrin (Tsf), Hexamerin-like protein 1 (Hex1), Apolipophorin-III (ApoLp-III), and others associated with immune regulation, phagocytosis, stress response, and reproductive regulation (table 2). qRT-PCR was performed to validate the expression levels of Tsf, Hex1, and ApoLp-III. Tsf showed significant upregulation in female ovary tissues at 1 and 19 days post-eclosion and significant downregulation at 9 days post-eclosion (P < 0.05) (fig. 8A). In male testis tissues, Tsf was significantly upregulated in all developmental stages (P < 0.05) (fig. 8B). Hex1 exhibited significant upregulation in female ovary tissues at 1 and 19 days post-eclosion and in third-instar nymph male testis tissues (P < 0.05) (fig. 8C, D). However, its expression was significantly downregulated in male testis tissues at 1 day post-eclosion (P < 0.05) (fig. 8D). ApoLp-III showed significant upregulation in all developmental stages of both female ovary and male testis tissues (P < 0.05) (fig. 8E, F). A regression analysis was performed to evaluate and validate Tsf, Hex1, and ApoLp-III genes from RNA-Seq data using qRT-PCR. The results indicate a significant correlation coefficient (R 2 = 0.71–0.99) between RNA-Seq and qRT-PCR data expressed in log2FC (fig. S2). Correlation analysis revealed that the qRT-PCR expression patterns of Tsf, Hex1, and ApoLp-III were all consistent with the RNA-Seq results, indicating that the RNA-Seq results were highly reliable.
Discussion
Interactions between pests and pathogens have long been a focal point in life sciences research. The gonads, as crucial reproductive organs in insects, play a pivotal role in the balance and regulation of immunity and reproduction when faced with pathogen infection, which ultimately determines the population dynamics of insects. Understanding the response of gonadal tissues to pathogen stress and elucidating the strategies of immunity and reproduction can facilitate the exploration of new pest control methods, especially from the perspective of reproductive regulation.
This study utilised high-throughput transcriptome sequencing to reveal that upon infection with P. locustae, differential gene expression in the ovaries of female L. migratoria primarily enriched in various immune-related GO categories and metabolic pathways, such as ribosome, oxidoreductase activity, transporter activity, etc. The differential gene expression in the testes of male locusts enriched in processes like catalytic activity, protein glycosylation, etc. This indicates that P. locustae infection modulates the basic metabolism and immune response of insect gonadal tissues (Aufauvre et al., Reference Aufauvre, Misme-Aucouturier, Viguès, Texier, Delbac and Blot2014; Zhang et al., Reference Zhang, Chen, Keyhani, Zhang, Li and Xia2015b; Kurze et al., Reference Kurze, Dosselli, Grassl, Le Conte, Kryger, Baer and Moritz2016; Xu et al., Reference Xu, Wu, Yu, Meng, Chen, Liu, Zhong and Pan2023).
The innate immune system plays a crucial role in insect resistance to pathogen infection. Previous studies have shown that insects such as Bombyx mori (Ma et al., Reference Ma, Li, Pan, Li, Han, Xu, Lan, Chen, Yang, Chen, Sang, Ji, Li, Long and Zhou2013) and Apis mellifera (Chaimanee et al., Reference Chaimanee, Chantawannakul, Chen, Evans and Pettis2012; Aufauvre et al., Reference Aufauvre, Misme-Aucouturier, Viguès, Texier, Delbac and Blot2014) enhance their immune systems by modulating pathways like the Toll signalling pathway, JAK/STAT signalling pathway, and expression of antimicrobial peptides upon pathogen infection. Similarly, upon infection with Metarhizium acridum, the expression of immune-related genes in L. migratoria also changes (Zhang et al., Reference Zhang, Chen, Keyhani, Zhang, Li and Xia2015b). In this study, it was found that upon infection with P. locustae, the expression of immune-related genes in L. migratoria also changed. For instance, Toll-like receptor and DSCAM2 were downregulated after L. migratoria third-instar nymphs were infected with P. locustae, while DSCAM2, Defense, Lysozyme P, c-type Lysozyme were gradually upregulated after eclosion at 1, 9, and 19 days. We might expect that P. locustae may evade the host's immune response by interfering with the expression of key genes in the host's immune system in the initial stages of infection. Subsequently, the body gradually upregulates the expression of immune-related genes to resist P. locustae infection.
In our study, qRT-PCR results revealed significant upregulation of Tsf in the testicular tissues of male L. migratoria upon infection with P. locustae. We speculate that organism can enhance resistance to P. locustae by upregulating Tsf expression to avoid oxidative stress damage caused by iron overload. Iron homoeostasis plays a crucial role in the body's defence and stress response mechanisms. Transferrin (Trf) is a key protein involved in maintaining iron homoeostasis and participates in iron metabolism, oxidative stress defence, and innate immunity (Najera et al., Reference Najera, Coca, Nutsch and Gorman2019; Weber et al., Reference Weber, Park and Gorman2020, Reference Weber, Brummett, Coca, Tabunoki, Kanost, Ragan, Park and Gorman2022; Zafar et al., Reference Zafar, Huang, Xu and Jin2022). Studies have shown that upon exposure to insecticide stress, mosquitoes like Culex pipiens pallens (Tan et al., Reference Tan, Wang, Cheng, Liu, Wang, Gong, Quan, Gao and Zhu2012), Helicoverpa armigera (Zhang et al., Reference Zhang, Shang, Lu, Zhao and Gao2015a), Spodoptera littoralis (Hamama et al., Reference Hamama, Hussein, Fahmy, Fergani, Mabrouk and Farghaley2016), and L. migratoria (Gao, Reference Gao2016) exhibit upregulated expression of transferrin. Similarly, pathogen stress can induce the upregulation of host transferrin expression, thereby regulating iron homoeostasis and transport (Desjardins et al., Reference Desjardins, Sanscrainte, Goldberg, Heiman, Young, Zeng, Madhani, Becnel and Cuomo2015). For instance, in Drosophila melanogaster, transcription levels of Transferrin significantly increase after Escherichia coli infection, where it employs iron inhibition strategies to combat infection, a process dependent on nuclear factor-κB, Toll, Imd, and other signalling pathways (Iatsenko et al., Reference Iatsenko, Marra, Boquete, Peña and Lemaitre2020). Moreover, Plutella xylostella shows increased expression of PxTrf after treatment with Staphylococcus aureus, E. coli, and Isaria cicadae (Xu et al., Reference Xu, Hao, Wang, Li, Guo and Dang2020). Simultaneously, interference with PxTrf expression significantly inhibits the formation of P. xylostella haemocyte nodules and enhances its sensitivity to I. cicadae (Xu et al., Reference Xu, Hao, Wang, Li, Guo and Dang2020). In A. mellifera, infection with Nosema ceranae leads to iron deficiency in the body and induces upregulation of AmTsf expression. Silencing AmTsf expression through RNAi alleviates iron loss, enhances honey bee immunity, and increases survival rates (Rodríguez-García et al., Reference Rodríguez-García, Heerman, Cook, Evans, DeGrandi-Hoffman, Banmeke, Zhang, Huang, Hamilton and Chen2021). This multifaceted role of transferrin in the immune response is evident across various studies.
In our study, Hex1 was significantly upregulated in the ovarian tissues of female L. migratoria at 1 and 19 days post-eclosion upon infection with P. locustae. We speculate that females prioritise the upregulation of reproductive-related genes in response to immune and reproductive pressures, meeting the amino acid reserve demands for gamete development and gonadal maturation, thereby ensuring population reproduction. Hexamerin is another important functional protein involved in various life activities such as cuticle formation, hormone transport, lipid transportation, energy metabolism, diapause, metamorphosis, and plays a significant role in the immune response (Burmester, Reference Burmester2015; Janashia and Alaux, Reference Janashia and Alaux2016; Lieb et al., Reference Lieb, Ebner and Hartmut2016; Cui et al., Reference Cui, Tu, Hao, Aftab, Chen, Mark and Zhang2019). Circulifer haematoceps exhibits upregulated expression of Hexamerin upon infection with Spiroplasma citri (Eliautout et al., Reference Eliautout, Dubrana, Vincent-Monégat, Vallier, Braquart-Varnier, Poirie, Saillard, Heddi and Arricau-Bouvery2016). Similarly, treatment with organophosphate results in increased Hexamerin expression in Culex quinquefasciatus (Games et al., Reference Games, Alves, Katz, Tomich and Serrao2016). Conversely, effective chlorofluorocarbon pesticide treatment downregulates Hexamerin expression in Spodoptera exigua larvae (Wang et al., Reference Wang, Hu, Wei and Su2019b). This indicates differential regulation of Hexamerin expression under different stresses. In L. migratoria, stimulation with E. coli leads to a trend of first downregulation and then upregulation of Hex1 and Hex2 expression in fat bodies, while Hex3 and Hex4 show the opposite trend, suggesting that Hexamerin family genes have immune functions with possible mutual compensation effects among members (Zhang et al., Reference Zhang, Jiao, He and Yin2018). Injection of Antheraea pernyi larvae with S. aureus, E. coli, and Candida albicans leads to a sharp increase in Ap-hexamerin expression in fat bodies 12 h post-treatment, confirming the significant enhancement of phenoloxidase activity by Ap-hexamerin and its involvement in the early immune response of A. pernyi (Liu et al., Reference Liu, Zhu, Ma, Zhang, Wang and Zhang2019). Hexamerin also plays a crucial role in insect reproduction. Expression analysis of AcHex-2 in 5th- and 12th-instar Acrida cinerea adults shows that it is predominantly expressed in the ovaries and testes, with significantly higher expression in the 12th instar compared to the 5th instar, indicating its tissue specificity and importance during reproduction (Dong et al., Reference Dong, Zhang, Li, Lu and Yin2015).
Our qRT-PCR results indicate a significant upregulation of ApoLp-III expression in the gonadal tissues of male and female L. migratoria at 1, 9, and 19 days post-eclosion after P. locustae infection, suggesting its involvement in the immune defence response of L. migratoria against P. locustae. Additionally, transcriptome results show upregulation of Defense, Toll-like receptor, and Serpin expression in the gonadal tissues of L. migratoria at 1, 9, and 19 days post-eclosion, suggesting the possible involvement of ApoLp-III in regulating key genes of the Toll and serine protease inhibitor pathways in the immune response of L. migratoria. Apolipophorin plays a crucial role in lipid transport, lipoprotein metabolism, and innate immunity in insects, divided into ApoLp-I, ApoLp-II, and ApoLp-III (Browne et al., Reference Browne, Surlis and Kavanagh2014; Wen et al., Reference Wen, Luo, Li, Wu, Zhang, Wang and Zhang2017). As a pattern recognition molecule, ApoLp-III participates in the immune response and phagocytosis process of the organism by activating functional protein activity, thereby enhancing the antibacterial and antifungal capabilities (Zdybicka-Barabas et al., Reference Zdybicka-Barabas, Sowa-Jasiłek, Stączek, Jakubowicz and Cytrynska2015; Wijeratne and Weers, Reference Wijeratne and Weers2019; Stączek et al., Reference Stączek, Zdybicka-Barabas, Wiater, Pleszczynska and Cytrynska2020). Studies have shown significant changes in ApoLp-III levels in various insects such as Apis cerana (Kim and Jin, Reference Kim and Jin2015), Actias selene Hübner (Qian et al., Reference Qian, Wang, Zhu, Wei, Li, Liu and Wang2016), Galleria mellonella (Iwański and Andrejko, Reference Iwański and Andrejko2023), and Spodoptera litura (Vengateswari and Shivakumar, Reference Vengateswari and Shivakumar2023) upon pathogen infection, demonstrating its antimicrobial activity and importance in the response to pathogen stress. In Tenebrio molitor, silencing of TmApoLp-III expression enhances larval sensitivity to Listeria monocytogenes (Patnaik et al., Reference Patnaik, Patnaik, Park, Jo, Le and Han2015). Additionally, induction of ScApoLp-III expression is observed in the gut and fat bodies of Samia cynthia ricini upon S. aureus infection, while it is downregulated upon Pseudomonas aeruginosa induction (Yu et al., Reference Yu, Wang, Zhang, Toufeeq, Li, Li, Yang, Hu and Xu2018). Recombinant ScApoLp-III can bind to E. coli, P. aeruginosa, S. aureus, and Bacillus subtilis, strongly inhibiting the proliferation of E. coli and P. aeruginosa (Yu et al., Reference Yu, Wang, Zhang, Toufeeq, Li, Li, Yang, Hu and Xu2018). Studies have also shown that upon infection with Beauveria bassiana, BmApoLp-III expression is upregulated in B. mori larvae, and recombinant BmApoLp-III protein significantly inhibits the proliferation of B. bassiana, delaying the onset of symptoms and death in infected larvae (Wu et al., Reference Wu, Lin, Zhao, Su, Li, Zhang and Guo2021). Moreover, BmApoLp-III can regulate the expression of genes related to the Toll, JAK/STAT, and Imd signalling pathways, promoting the expression of immune effectors (Wu et al., Reference Wu, Lin, Zhao, Su, Li, Zhang and Guo2021).
Through transcriptomic analysis, our study reveals significant changes in basic metabolism and immune response processes in the gonadal tissues of male and female L. migratoria after P. locustae infection, including amino acid metabolism, carbohydrate metabolism, lipid metabolism, and the involvement of genes such as Transferrin, Hexamerin, Apolipophorin, Toll signalling pathway regulatory proteins, Heat shock proteins, Juvenile hormone-related proteins and enzymes, and Vitellogenin receptor in the immune and reproductive balance of gonadal tissues. These findings are crucial for further elucidating the possible mechanisms underlying the response of L. migratoria gonadal tissues to P. locustae infection, identifying optimal pest control targets, and enhancing the efficacy of P. locustae against locusts.
Supplementary material
The supplementary material for this article can be found at https://doi.org/10.1017/S0007485324000592.
Availability of data and materials
All data generated or analysed during this study are included in this article.
Author contributions
Xuewei Kong carried out the studies, participated in collecting data, in acquisition, analysis, or interpretation of data, performed the statistical analysis, participated in experimental design, drafted the manuscript, and participated in paper review and editing. Xinrui Guo participated in collecting data, in acquisition, analysis, or interpretation of data, performed the statistical analysis. Hui Liu and Huihui Zhang participated in collecting data. Hongxia Hu, Jun Lin, Wangpeng Shi, Rong Ji, and Roman Jashenko participated in paper review and editing. Han Wang participated in funding acquisition, project administration, supervision, and experimental design, performed the statistical analysis, drafted the manuscript, and participated in paper review and editing.
Financial support
This work was supported by Special Project of Innovation Environment (Talent and Base) Construction in Xinjiang Uygur Autonomous Region (grant number 2022D04002); Natural Science Foundation in Xinjiang Uygur Autonomous Region (grant number 2021D01A124); Xinjiang Uygur Autonomous Region Science and Technology support Xinjiang Project plan (mandatory) project (grant number 2022E02007); and Tianshan Talent Training Program (grant number TSYCLJ0016).
Competing interests
None.