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Bioinformatics analysis of differentially expressed genes in rotator cuff tear patients using microarray data

Abstract

Background

Rotator cuff tear (RCT) is a common shoulder disorder in the elderly. Muscle atrophy, denervation and fatty infiltration exert secondary injuries on torn rotator cuff muscles. It has been reported that satellite cells (SCs) play roles in pathogenic process and regenerative capacity of human RCT via regulating of target genes. This study aims to complement the differentially expressed genes (DEGs) of SCs that regulated between the torn supraspinatus (SSP) samples and intact subscapularis (SSC) samples, identify their functions and molecular pathways.

Methods

The gene expression profile GSE93661 was downloaded and bioinformatics analysis was made.

Results

Five hundred fifty one DEGs totally were identified. Among them, 272 DEGs were overexpressed, and the remaining 279 DEGs were underexpressed. Gene ontology (GO) and pathway enrichment analysis of target genes were performed. We furthermore identified some relevant core genes using gene–gene interaction network analysis such as GNG13, GCG, NOTCH1, BCL2, NMUR2, PMCH, FFAR1, AVPR2, GNA14, and KALRN, that may contribute to the understanding of the molecular mechanisms of secondary injuries in RCT. We also discovered that GNG13/calcium signaling pathway is highly correlated with the denervation atrophy pathological process of RCT.

Conclusion

These genes and pathways provide a new perspective for revealing the underlying pathological mechanisms and therapy strategy of RCT.

Introduction

The rotator cuff muscle complex of the shoulder is comprised of four distinct muscles (supraspinatus, infraspinatus, teres minor, and subscapularis), which controls essential shoulder movements [1, 2]. The rotator cuff tear (RCT) is a common cause of impact pain, nocturnal pain and shoulder joint dysfunction, which seriously affect the life and working ability of patients, and reduce the quality of life of patients [3, 4]. Most tears require reparative surgery; however, recurrence of tears following surgery is common, with failure rates ranging from 30 to 94% [5]. Rotator cuff tendon tears are accompanied by secondary changes in the rotator cuff muscles, including muscle atrophy, denervation, and fatty infiltration, which may explain the progressive loss of function after an acute injury and also the high rate of surgical failure. However, the underlying mechanism is not well understood.

Satellite cells (SCs) are mitotically quiescent muscle stem cells located between the basal lamina and the muscle membrane, which are known to play a key role in the adaptive response of muscle to exercise, and in the maintenance of the regenerative capacity of muscle. Hepatocyte growth factor (HGF) and nitric oxide (NO) could regulate transit of a SC from the quiescent G0 state into the G1 (activated) stage of the cell cycle [6]. Recently, Deanna et al. discovered possible supraspinatus denervation in RCT and suggested NO-donor treatment combined with stretching has potential to promote growth in atrophic supraspinatus muscle after RCT and improve functional outcome [7, 8]. Lundgreen et al. showed patients with full-thickness tears had a reduced density of SCs, fewer proliferating cells, and atrophy of myofibers [9]. With muscle atrophy, fatty infiltration into skeletal muscles is thought to cause muscle degeneration by impairing the myogenic function of SCs [10].

Here, we downloaded the gene expression profile GSE93661 from the Gene Expression Omnibus database (GEO) and made bioinformatics analysis to investigate differentially expressed genes (DEGs) of SCs that regulated between torn supraspinatus (SSP) samples and intact subscapularis (SSC) samples from RCT patients. By doing this, we hope that the key target genes and pathways involved in the pathological process of RCT could be identified and existing molecular mechanisms could be revealed.

Materials and methods

Gene expression microarray data

The gene expression profile GSE93661 was downloaded from the Gene Expression Omnibus (GEO, www.ncbi.nlm.nih.gov/geo/). GSE93661 was based on Agilent-026652 Whole Human Genome Microarray 4x44K v2 platform. GSE93661 dataset contained four samples, including two torn SSP samples, and two intact SSC samples.

DEGs in torn SSP and intact SSC samples

The raw data files used for the analysis included TXT files. The analysis was carried out using GEO2R, which can perform comparisons on original submitter-supplied processed data tables using the GEO query and limma R packages from Bioconductor project. The P value < 0.05 and log fold change (FC) > 2.0 or log FC < − 2.0 were used as the cut-off criteria. The DEGs with statistical significance between the torn SSP samples and intact SSC samples were selected and identified.

GO and KEGG analysis of DEGs

Target genes list were submitted to the DAVID 6.8 (https://david.ncifcrf.gov/tools.jsp) and ClueGO version 2.33 (based on Cytoscape software version 3.4.0 (www.cytoscape.org)) to identify overrepresented GO categories and pathway categories. Gene ontology (GO) analysis was used to predict the potential functions of the DEGs in biological process (BP), molecular function (MF), and cellular component (CC). The Kyoto Encyclopedia of Genes and Genomes (KEGG) is a knowledge base for systematic analysis of gene functions, linking genomic information with higher-level systemic functions. Finally, the overrepresented pathway categories were considered statistically significant using KEGG pathway enrichment analysis.

Gene interaction network construction

A large number of DEGs we obtained may be RCT-associated genes, and it is suggested that these DEGs in torn SSP samples may participate in the progression of RCT. Firstly, DEGs list was submitted to the Search Tool for the Retrieval of Interacting Genes (STRING) database (http://www.string-db.org/), and an interaction network chart with a combined score > 0.4 was saved and exported. Subsequently, the interaction regulatory network of RCT-associated genes was visualized using Cytoscape software version 3.4.0. The distribution of core genes in the interaction network was made by NetworkAnalyzer in Cytoscape. Then, the plugin Molecular Complex Detection (MCODE) was applied to screen the modules of the gene interaction network in Cytoscape. Venn diagram was drawn using Venny 2.1 (http://bioinfogp.cnb.csic.es/tools/venny/).

Result

Identification of DEGs

The gene expression profile GSE93661 was downloaded from the GEO, and the GEO2R method was used to identify DEGs in torn SSP samples compared with intact SSC samples. P value < 0.05, log FC > 2.0, or log FC < − 2.0 were used as the cut-off criteria. After analyzing, differentially expression gene profiles were obtained. Totally, 551 DEGs were identified including 272 upregulated DEGs and 279 downregulated DEGs screened in torn SSP samples compared with intact SSC samples. Parts of DEGs were listed in Table 1.

Table 1 The top 10 Regulated DEGs in SCs of torn rotator cuff muscle with P value< 0.05

GO term enrichment analysis of DEGs

Functional annotation of the 551 DEGs was clarified using the DAVID 6.8 online tool. GO analysis indicated that these DEGs were significantly enriched in muscle contraction, aging, regulation of ion transmembrane transport, mesenchymal cell development, and other biological processes (Fig. 1). For MF, the DEGs were enriched in ion channel activity, calcium ion binding, structural molecule activity, and others. In addition, GO CC analysis also showed that the DEGs were significantly enriched in keratin filament, integral component of plasma membrane, axon, cornified envelope, cortical cytoskeleton, and others.

Fig. 1
figure 1

Gene ontology (GO)-enrichment analysis of biological processes (a) molecular functions (b) and cellular components (c). The labels in Y axis mean enrichment score (−log10 P value), and labels in X axis mean GO terms

KEGG pathway analysis of DEGs

The result of KEGG pathway analysis revealed that target genes were enriched in butanoate metabolism, ABC transporters, notch signaling pathway, arachidonic acid metabolism, hedgehog signaling pathway, cell adhesion molecules (CAMs), prolactin signaling pathway, neuroactive ligand-receptor interaction, dopaminergic synapse, GABAergic synapse, calcium signaling pathway, cGMP-PKG signaling pathway, drug metabolism, B cell receptor signaling pathway, NF-kappa B signaling pathway, estrogen signaling pathway, cAMP signaling pathway, and others. These key pathways were showed in Fig. 2. Besides, these core pathways and their associated genes found were summarized in Table 2. The first-ranking butanoate metabolism signaling pathway had the 10.71% associated genes, which included ACSM2B, ACSM4, and ACSM6. The second-placed ABC transporters signaling pathway had the 8.89% associated genes, which included ABCA3, ABCD1, ABCG2, and ABCG4. The third-placed notch signaling pathway had the 8.33% associated genes, which included JAG2, MAML3, MFNG, and NOTCH1.

Fig. 2
figure 2

Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway analysis of differentially expressed genes (DEGs). The different colors mean different pathways, and the closer the colors are, the closer the function clustering of pathways are

Table 2 Core pathways and their associated genes found

Interaction network of DEGs and core genes in the interaction network

Based on the information in the STRING database, the gene interaction network contained 386 nodes and 440 edges. The nodes indicated the DEGs, and the edges indicated the interactions between the DEGs. NetworkAnalyzer in Cytoscape software was used to analyze these genes, and core genes were ranked according to the predicted scores. The top 10 high-degree hub nodes included GNG13, GCG, NOTCH1, BCL2, NMUR2, PMCH, FFAR1, AVPR2, GNA14, and KALRN. Among these genes, GNG13 showed the highest node degree which was 32. The core genes and their corresponding degree were shown in Table 3. The distribution of core genes in the interaction network was revealed in Fig. 3. The correlation between the data points and corresponding points on the line is approximately 0.993. The R2 value is 0.902, giving a relatively high confidence that the underlying model is indeed linear. Then, we used MCODE to screen the modules of the gene interaction network, and eight modules were showed in Fig. 4.

Table 3 The core genes and their corresponding degree
Fig. 3
figure 3

The distribution of core genes in the interaction network. The black node means the core gene. The red line mans the fitted line, and the blue line means the power law. The correlation between the data points and corresponding points on the line is approximately 0.993. The R2 value is 0.902, giving a relatively high confidence that the underlying model is indeed linear

Fig. 4
figure 4

The top 8 modules from the gene–gene interaction network. The squares represent the differentially expressed genes (DEGs) in modules, and the lines show the interaction between the DEGs

The score of top 1 module including GCG, GNG13, NMUR2, and KALRN was 14, which had 14 nodes and 91 edges. The score of top 2 module including BCL2 and CD22 was 6, which had 6 nodes and 15 edges. The score of top 3 module including CBLB, RNF6, TRIM9, and FBXO44 was 6, which had 6 nodes and 15 edges. Lastly, the interaction network of the top 10 high-degree hub nodes (core genes) was made by STRING database in Fig. 5. GNG13, GCG, NOTCH1, BCL2, NMUR2, PMCH, FFAR1, AVPR2, GNA14, and KALRN, which regulate 7, 7, 2, 2, 6, 6, 6, 3, 6, and 7 targets, respectively, showed the good connectivity.

Fig. 5
figure 5

The interaction network of the top 10 core genes. The nodes indicated the top core genes, and the edges indicated the interactions between the core genes

Interestingly, Chaudhury et al. [9, 11] reported that gene expression profiles of different-sized human rotator cuff tendon tears versus normal rotator cuff tendons. In order to seek the possibly common target genes, we pooled together the top 10 high-degree core genes as mentioned earlier and the 77 significantly DEGs of Chaudhury’s research using Venn diagram [9, 11]. GNG13 was discovered as the only common target gene in Fig. 6.

Fig. 6
figure 6

The Venn diagram

Discussion

RCT is common and painful. Even after surgery, joint stability and function may not recover [11]. SCs play a major role in muscle regeneration. However, human SCs in muscles with atrophy, denervation, and fatty infiltration are unclear due to the difficulty in isolating from small samples, and the mechanism has not been elucidated [12,13,14]. In the present study, the gene expression profile of GSE93661 was downloaded and a bioinformatics analysis was performed. The results showed that there were 551 DEGs in SCs of torn rotator cuff tendons and normal rotator cuff tendons. Furthermore, GO, KEGG pathway, and gene–gene interaction network analysis were performed to obtain the biomarkers or the major genes related to pathogenicity mechanism of RCT.

In order to disclose the underlying molecular mechanisms between SCs and RCT, we characterized the possible GO functional terms and signaling pathways of DEGs. Considering the results of GO function analysis, we linked the DEGs with aging, regulation of ion transmembrane transports, ion channel activity, and calcium ion binding, which are very important for the development process of RCT. When muscle is injured, exercised, overused, or mechanically stretched, SCs are activated to enter the cell cycle, divide, differentiate, and fuse with the adjacent muscle fiber. In this way, SCs are responsible for regeneration and work-induced hypertrophy of muscle fibers. Ryuichi’s results suggested that the activation mechanism is a cascade of molecular events including an influx of calcium ions and their binding to calmodulin, nitric oxide synthase (NOS) activation, NO radical production by cNOS, matrix metalloproteinase activation, HGF release from the matrix, and presentation of HGF to the signaling receptor c-met. Understanding the mechanisms of SC activation is essential when planning procedures that could enhance muscle growth and repair [15].

As previous articles reported, our KEGG pathway analysis showed that notch signaling pathway, hedgehog signaling pathway, dopaminergic synapse, GABAergic synapse, calcium signaling pathway, NF-kappa B signaling pathway, and estrogen signaling pathway were among the most relevant pathways for SCs in RCT. Pasut et al. found that in normal muscle, high levels of notch signaling is required to maintain the uncommitted state of SCs. Notch signaling plays a role in SC fate as activation of Notch1 strongly promotes the lineage switch from myogenic towards brown adipogenic fate [16]. Khayrullin et al. reported that upregulation of Notch signaling suppresses myogenesis and maintains muscle SC quiescence and miRNAs targeting Notch are likely to play important roles in alcohol-related myopathy in zebrafish model [17]. SC self-renewal is an essential process to maintaining the robustness of skeletal muscle regenerative capacity. Ogura’s study demonstrates that TNF-like weak inducer of apoptosis cytokine suppresses SC self-renewal through activating NF-kappa B and repressing Notch signaling [18]. Kamizaki’s findings indicate that Ror1 has a critical role in regulating SC proliferation via NF-kappa B activation during skeletal muscle regeneration of injured muscle [19]. In addition, estrogen regulates myosin heavy chain expression in SCs related to muscle function mainly through an estrogen receptor α-mediated pathway [20]. In Voronova's study, the formation of skeletal muscle during embryogenesis and adult muscle regeneration is regulated by myocyte enhancer factors and myogenic regulatory factors (such as MyoD). Hedgehog signaling could regulate MyoD expression during embryogenesis and adult muscle regeneration in SCs [21].

The gene interaction network analysis revealed top 10 high-degree hub nodes of DEGs including GNG13, GCG, NOTCH1, BCL2, NMUR2, PMCH, FFAR1, AVPR2, GNA14, and KALRN. Most of them were not reported in SCs and RCT research. Only NOTCH1, who is a receptor that mediates intercellular signaling through a pathway conserved across the metazoan, had be studied [22]. Rando et al. found that activation of Notch1 signaling stimulates the proliferation of SCs and leads to the expansion of proliferating myoblasts. And, inhibition of Notch1 signaling abolishes SC activation and impairs muscle regeneration [23]. Also, recent studies found Notch1 is active in quiescent muscle SCs, and Notch1 signaling is critical for maintaining the quiescence of muscle SCs [24, 25]. As a supplement, Fujimaki et al. indicated that Notch1 and Notch2 coordinately maintain the SC pool in the quiescent state by preventing activation and regulate SC-fate decision in the activated state, governing adult muscle regeneration [26]. To sum up, upregulation of Notch1 may result in SC proliferation and self-renewal in the activated state, controlling muscle regeneration and improving muscle atrophy in RCT.

Furthermore, we analyzed the top 10 high-degree core genes and the 77 significantly DEGs of different-sized human rotator cuff tendon tears versus normal rotator cuff tendons in Chaudhury’s research using Venn diagram [27]. GNG13 was discovered as the only common core gene. Heterotrimeric G proteins, which consist of alpha, beta, and gamma subunits, function as signal transducers for the 7-transmembrane-helix G protein-coupled receptors. GNG13 is a gamma subunit that is expressed in taste, retinal, and neuronal tissues, and plays a key role in taste transduction [28]. Through KEGG pathway results, we discovered that GNG13 acts as an important node in dopaminergic synapse signaling, and targets PLC and AC5 in calcium signaling pathway. Many previous studies had emphasized the importance of calcium signaling pathway and skeletal muscle development, homeostasis, and regeneration. Calcium-ion is an important component of the signaling promoting muscle formation, muscle homeostasis, and regeneration. In particular, calcium-ion changes may direct muscle SCs to maintain their quiescent state, proliferate, or differentiate into functional muscle [29]. What is more, we are still learning how calcium signaling pathway and neuromuscular connections are restored on regenerating muscle. The establishment of connections between the motor nerve terminal and a post-synaptic region of membrane on regenerating fibers is essential to reinnervation and functional contractility, which is important for clarifying denervation atrophy pathological process of injured rotator cuff muscle. Recent researches have implicated SC signaling in the process of muscle reinnervation. SC have potential to influence axon growth and the reappearance of neuromuscular connections by their secretion of semaphorin 3A (Sema3A). Sema3A is a neural chemorepellent that is thought to coordinate the reconnection of motor axons with a differentiating fiber in a regenerating muscle. These direct proofs encourage a possible implication of SCs in the spatiotemporal regulation of extracellular Sema3A concentrations, which potentially ensures coordinating a delay in neurite sprouting and re-attachment of motoneuron terminals onto damaged muscle fibers early in muscle regeneration in synchrony with recovery of muscle-fiber integrity [30,31,32]. In addition, calcium signaling pathway is also linked with the activation of neuromuscular connections, and calcium-ion influx through voltage-gated calcium channels regulates the neuron’s responsiveness to Sema2A-dependent chemorepulsion exerted by the muscle [33]. Our research highlights the crucial role of nerve–muscle interaction in restoring innervation after RCT, and hypothesizes that SC-mediated GNG13 could affect neuromuscular connections and cause denervation atrophy via calcium signaling after rotator cuff muscle injured.

Conclusions

In summary, 551 DEGs were identified including 272 upregulated DEGs and 279 downregulated DEGs screened in SCs of torn SSP samples compared with intact SSC samples. GO and KEGG pathway analysis provided a series of related key genes and pathways to contribute to the understanding of the molecular mechanisms between SCs and RCT, thus yielding clues to speculate the GNG13/calcium signaling pathway is highly correlated with the denervation atrophy pathological process of RCT. Furthermore, further experimental validation should be made in future studies.

Abbreviations

BP:

Biological process

CAMs:

Cell adhesion molecules

CC:

Cellular component

FC:

Fold change

GEO:

Gene Expression Omnibus database

GO:

Gene ontology

HGF:

Hepatocyte growth factor

KEGG:

Kyoto Encyclopedia of Genes and Genomes

MCODE:

Molecular Complex Detection

MF:

Molecular function

NO:

Nitric oxide

NOS:

Nitric oxide synthase

RCT:

Rotator cuff tear

SCs:

Satellite cells

Sema3A:

Semaphorin 3A

SSC:

Subscapularis

SSP:

Supraspinatus

STRING:

Search Tool for the Retrieval of Interacting Genes

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Acknowledgements

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Funding

This research is supported by Foundation of Tianjin Union Medical Center (2017YJ018).

Availability of data and materials

The data was freely downloaded from the public GEO database.

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YMR, YHD, and YBS conceived the design of the study. TY and YMR performed and collected the data, and contributed to the design of the study. TY and YMR analyzed the data. YMR and MQT prepared and revised the manuscript. All authors read and approved the final content of the manuscript.

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Correspondence to Meng-Qiang Tian.

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Ren, YM., Duan, YH., Sun, YB. et al. Bioinformatics analysis of differentially expressed genes in rotator cuff tear patients using microarray data. J Orthop Surg Res 13, 284 (2018). https://doi.org/10.1186/s13018-018-0989-5

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