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Erschienen in: Journal of Translational Medicine 1/2022

Open Access 01.12.2022 | Research

Integrated weighted gene coexpression network analysis identifies Frizzled 2 (FZD2) as a key gene in invasive malignant pleomorphic adenoma

verfasst von: Zhenyuan Han, Huiping Ren, Jingjing Sun, Lihui Jin, Qin Wang, Chuanbin Guo, Zhen Tian

Erschienen in: Journal of Translational Medicine | Ausgabe 1/2022

Abstract

Background

Invasive malignant pleomorphic adenoma (IMPA) is a highly malignant neoplasm of the oral salivary glands with a poor prognosis and a considerable risk of recurrence. Many disease-causing genes of IMPA have been identified in recent decades (e.g., P53, PCNA and HMGA2), but many of these genes remain to be explored. Weighted gene coexpression network analysis (WGCNA) is a newly emerged algorithm that can cluster genes and form modules based on similar gene expression patterns. This study constructed a gene coexpression network of IMPA via WGCNA and then carried out multifaceted analysis to identify novel disease-causing genes.

Methods

RNA sequencing (RNA-seq) was performed for 10 pairs of IMPA and normal tissues to acquire the gene expression profiles. Differentially expressed genes (DEGs) were screened out with the cutoff criteria of |log2 Fold change (FC)|> 1 and adjusted p value  < 0.05. Then, WGCNA was applied to systematically identify the hidden diagnostic hub genes of IMPA.

Results

In this research, a total of 1970 DEGs were screened out in IMPA tissues, including 1056 upregulated DEGs and 914 downregulated DEGs. Functional enrichment analysis was performed for identified DEGs and revealed an enrichment of tumor-associated GO terms and KEGG pathways. We used WGCNA to identify gene module most relevant with the histological grade of IMPA. The gene FZD2 was then recognized as the hub gene of the selected module with the highest module membership (MM) value and intramodule connectivity in protein–protein interaction (PPI) network. According to immunohistochemistry (IHC) staining, the expression level of FZD2 was higher in low-grade IMPA than in high-grade IMPA.

Conclusion

FZD2 shows an expression dynamic that is negatively correlated with the clinical malignancy of IMPA and it plays a central role in the transcription network of IMPA. Thus, FZD2 serves as a promising histological indicator for the precise prediction of IMPA histological stages.
Hinweise

Supplementary Information

The online version contains supplementary material available at https://​doi.​org/​10.​1186/​s12967-021-03204-7.
Zhenyuan Han, Huiping Ren and Jingjing Sun are co-first authors and contributed equally to this work.

Publisher's Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Abkürzungen
IMPA
Invasive malignant pleomorphic adenoma
Ca-ex-PA
Carcinoma ex pleomorphic adenoma
RNA-seq
RNA sequencing
DWI
Diffusion-weighted imaging
m6A
N6-methyladenosine
MeRIP-seq
Methylated RNA immunoprecipitation with high throughput sequencing
WGCNA
Weighted gene co-expression network analysis
PTC
Papillary thyroid carcinoma
H&E
Hematoxylin and eosin
IHC
Immunohistochemistry
FZD2
Frizzled 2
DEGs
Differentially expressed genes
DAVID
Database for annotation, visualization and integrated discovery
PPI
Protein–protein interaction
GS
Gene significance
MM
Module membership
ME
Module eigengene
STRING
Retrieval of interacting genes/proteins
BP
Biological process
ECM
Extracellular matrix

Background

Invasive malignant pleomorphic adenoma (IMPA) is characterized by high malignancy and invasive growth. It is a subtype of carcinoma ex pleomorphic adenoma (Ca-ex-PA) that arises mainly in the parotid gland, with more than 1.5 mm of cancerous components extending beyond the adenoma capsule into surrounding tissues [1, 2]. Based on the histological morphology of the malignant components, IMPA can be subclassified into the myoepithelial subtype and adenocarcinoma subtype. Briefly, if two or more tumor myoepithelial markers, such as Calponin, S100, or SMA are positively expressed at the same time, IMPA is considered to be a myoepithelial carcinoma subtype. If tumors do not meet the above criteria or are only positive for the epithelial marker Ckpan, they are categorized as adenocarcinoma subtypes [3, 4]. To date, surgical resection combined with radiotherapy and chemotherapy is the main treatment strategy, but the prognosis is poor due to higher local recurrence, distant metastasis and a lower survival rate after surgery [1, 5, 6]. Thus, further research on more accurate molecular targets for early diagnosis and targeted therapy and predictors of a good prognosis of IMPA are urgently needed to develop more efficient therapy that can improve patient survival and quality of life.
A diffusion-weighted imaging (DWI)-based triple-classification radiomics model to characterize intratumoral heterogeneity for preoperative auxiliary diagnosis of pleomorphic adenoma (PA) and a nomogram for predicting the prognosis in an individual with Ca-ex-PA have been established [7]. However, these models are limited to neoplasms and more precise early diagnostic biomarkers are necessary [8]. As bioinformatics analysis is widely applied to cancer research, our previous study first profiled the N6-methyladenosine (m6A) methylome map in IMPA by methylated RNA immunoprecipitation with high-throughput sequencing (MeRIP-seq) [9]. This study indicated a significant effect of m6A modification on IMPA progression, but gene-targeted diagnostic biomarkers are not clear. Weighted gene coexpression network analysis (WGCNA) is a suitable tool to establish free-scale coexpression networks and it is utilized to determine the hub genes based on the correlation between gene modules and clinical characteristics [10, 11]. It has been successfully used in a variety of tumor studies. With WGCNA, potential biomarkers and molecular mechanisms of breast cancer, papillary thyroid carcinoma (PTC) and medulloblastoma (MB) etc. have been identified [1214], but a gene coexpression network for identifying hub genes closely related to IMPA is still poorly characterized.
Therefore, we evaluated the relationship between the hub gene and tumor grade using WGCNA since histological grade has a strong effect on diagnosis, treatment and prognosis. To the best of our knowledge, our research is the first to utilize WGCNA for the underlying mechanism profiling and biomarker verification of IMPA, which might provide new ideas for increasing diagnosis accuracy and designing efficient strategies for IMPA.

Methods

Tissue samples

Ten pairs of IMPA and adjacent normal control tissues for RNA sequencing (RNA-seq) were obtained from Shanghai Ninth People’s Hospital. In addition, another 45 Formalin-fixed and paraffin-embedded IMPA tissues with clinicopathological information were retrieved for verification of hub genes via Immunohistochemistry (IHC). The clinicopathological information of these 45 tissue samples is summarized in Table 1. This study was approved by the ethics committee of Shanghai Ninth People’s Hospital.
Table 1
Clinicopathological characteristics of IMPA samples used for FZD2 IHC staining
Characteristics
Category
Number of cases (%)
Age (years)
< 60
14 (31.1%)
≥ 60
31 (68.9%)
Gender
Female
10 (22.2%)
Male
35 (77.8%)
Site
Major salivary gland
40 (88.9%)
Minor salivary gland
5 (11.1%)
Subtype
Adenocarcinoma subtype
21 (46.7%)
Myoepithelial subtype
24 (53.3%)
Grade
High
29 (64.4%)
Low
16 (35.6%)
Lymph node metastasis
Yes
18 (40.0%)
No
27 (60.0%)
Perineural invasion
Yes
28 (62.2%)
No
17 (37.8%)
Expression of FZD2
Low expression
24 (53.3%)
High expression
21 (46.7%)

Histological analyses

All IMPA tissues and adjacent normal controls were fixed in 4% PFA for  > 4 h at 4 °C. Then, these fixed tissues were dehydrated with graded ethanol (70–100%) and embedded in paraffin. Sections (4 μm) were cut on a Leica HistoCore BIOCUT RM2235. Hematoxylin–eosin (H&E) staining was performed following standard procedures. Stained sections were imaged using a Leica LF200 microscope.

IHC staining

IHC staining was carried out as previously described [15]. In brief, tissue Sections (4 μm) were dewaxed in xylene twice for 2 min each and then rehydrated in a graded series of ethanol (100–70%). Antigen retrieval was performed by boiling sections for 15 min in sodium citrate buffer (10 mM citrate acid, 10 mM sodium citrate, pH 6.0). Then, 5% normal donkey serum was used to block nonspecific antigens. IHC was performed using the Dako EnvisionTM method for antibody incubation and then developed by using the DAB peroxidase substrate kit (Beyotime, P0202). IHC-stained sections were imaged by a Leica LF200 microscope.
Antibodies for IHC included anti-S100 (Dako Z0311, 1:200), anti-Calponin (Dako M3556, 1:100), anti-SMA (Dako M0851, 1:100), anti-CK7 (Dako M7018, 1:50) and anti-CK19 (Dako M0888, 1:100), anti-FZD2 (Bioworld BS3163, 1:50), which were purchased from commercial sources.

RNA-seq and differentially expressed gene (DEG) identification

Ten pairs of IMPA tissue samples and the surrounding normal control were immediately placed into RNase-free centrifuge tubes and snap-frozen in liquid nitrogen for RNA-seq. Briefly, total RNA was extracted and controlled for quality using a BioAnalyzer 2100 system (Agilent Technologies, Inc., USA). Then, RNA-seq was performed by Illumina NovaSeq™ 6000. EdgeR was performed to normalize the raw data [16] and the DEGs were identified via adjusted p value and Fold change (FC).

Functional and pathway enrichment analysis

The acquired DEGs were analyzed by the database for annotation, visualization and integrated discovery (DAVID) database (https://​david.​ncifcrf.​gov/​) [17, 18] online tool for gene ontology (GO) [19] enrichment analysis and Kyoto Encyclopedia of Genes and Genomes (KEGG) [20] pathway enrichment analysis to identify potential biological functions of DEGs in IMPA.

Weighted gene co‑expression network construction

The R package ‘WGCNA’ was used to construct a gene coexpression network of DEGs [10]. The correlation strength between nodes was calculated using an adjacency matrix and the formula was as follows:
$${\text{s}}ij = \left| {{\text{cor}}\left( {{\text{x}}i,{\text{ x}}j} \right)} \right|{\text{a}}ij = {\text{S}}ij\beta$$
Briefly, i and j in the formula were two distinct genes and xi and xj represented their expression values. sij is Pearson’s correlation coefficient and aij is the strength of the correlation between two genes. The soft-threshold β was 10 in this study. Then, we transformed the adjacency matrix into the topological overlap matrix and performed hierarchical clustering to identify modules with min. Module Size  = 30. Notably, genes without characteristics were assigned to the grey module. Subsequently, gene significance (GS), module membership (MM), module eigengene (ME) and other parameters were calculated to identify the module most relevant with histological grade of IMPA.

Identification and validation of hub genes

Genes in the selected clinically relevant module were uploaded to the Search Tool for the Retrieval of Interacting Genes/Proteins (STRING) (https://​string-db.​org/​) [21, 22]to analyze the protein–protein interaction (PPI) network of DEGs. The PPI network was visualized via Cytoscape software [23]. KEGG pathway enrichment of these genes was analyzed with the R package ‘ClusterProfiler’ to investigate the biological functions of the module [24]. Of note, the gene with MM  > 0.8 and the highest degree of connectivity was determined to be the hub gene. IHC was further performed to examine the expression level of the hub gene in different clinical stages of IMPA.

Statistical analysis

Data were expressed as mean  ±  standard deviation (SD) and analyzed using SPSS version 23 statistical analysis package (SPSS Inc., Chicago, IL, USA). Unpaired/paired Student’s t test (two-tailed) was applied to analyze differences between two groups. Pearson’s chi-square test was used to assess differences between the low-grade and high-grade groups. The Pearson’s correlation coefficient analysis was performed to examine the correlation. Statistical significance was described as follows: *p value  < 0.05; **p value  < 0.01; ***p value  < 0.001.

Results

Pathologic subtypes of IMPA

IMPA can be divided into the myoepithelial subtype and the adenocarcinoma subtype [4]. In the 45 IMPA samples for IHC staining, there were 24 myoepithelial IMPAs, which were S100+SMA+Calponin+CK7CK19 (Fig. 1) and 21 adenocarcinoma IMPAs, which were CK7+CK19+S100SMACalponin (Fig. 2).

Identification of DEGs

Based on |log2 FC|> 1 and adjusted p value  < 0.05, a total of 1970 DEGs between IMPA and normal samples were screened out, including 1056 upregulated and 914 downregulated genes (Fig. 3a) [25]. In addition, volcano plots listed the top 10 upregulated and downregulated genes (Fig. 3b, Table 2). More details can be found in Additional file 1: Table S1.
Table 2
The top 10 upregulated DEGs and downregulated DEGs
Gene_symbol
Log2 FC
adjusted p value
MAGEA2
23.71767826
1.48E−12
SULT1C3
23.27972921
9.83E−20
ARL2-SNX15
22.89375721
8.54E−12
CSAG3
8.151055524
0.000359128
CASP14
7.905691636
0.000307196
SCGB2A2
7.86520853
5.69E−10
SPINK8
7.381732165
0.004260212
FGG
7.100609633
0.004865952
CA9
7.072063302
2.36E−06
ACTL8
7.062711902
0.009017509
AMY1B
− 8.017880777
6.76E−09
ETNPPL
− 8.146282116
1.11E−09
PRB1
− 8.596065483
4.87E−08
CST2
− 8.759797112
1.73E−11
PRB4
− 9.022705183
2.75E−09
AMY1A
− 9.068037572
1.57E−06
SLC13A5
− 9.586123392
6.87E−17
PRB2
− 9.787907831
4.01E−12
PRB3
− 10.29818453
7.14E−11
CST5
− 10.46657151
9.83E−20

Functional and pathway enrichment analysis of DEGs

GO and KEGG pathway enrichment analyses were used to verify the potential functional and molecular pathways associated with DEGs. The upregulated DEGs were significantly enriched in biological process of GO terms including nuclear division, organelle fission, extracellular matrix (ECM) organization and chromosome segregation (Fig. 4a). On the other hand, downregulated DEGs were mainly involved in second messenger-mediated signaling, lipid catabolic processes and purine-containing compound catabolic processes (Fig. 4b). In addition, KEGG pathway analysis revealed that upregulated DEGs exhibited enrichments in the cell cycle, ECM-receptor interaction and p53 signaling pathway (Fig. 4c), whereas downregulated DEGs were mainly enriched in salivary secretion, calcium signaling and cAMP signaling pathways (Fig. 4d).
In general, GO and KEGG pathway analyses both suggestd that upregulated DEGs in IMPA exerted functions of promoting tumorigenesis. They were involved in cell cycle progression, ECM organization and tumor-associated signaling regulation. Similarly, downregulated DEGs were revealed to participate in the modulation of second messenger-mediated signaling, which is extremely important for oncogenesis. Notably, the KEGG pathway analysis of downregulated DEGs also showed enrichments in second messenger-mediated signaling (e.g., cAMP and calcium), indicating a critical role of second messengers in IMPA pathogenesis.

Identification of gene module relevant with IMPA histological grade

A cluster dendrogram of 1970 DEGs was produced via WGCNA based on the criteria of soft-threshold β  = 10 and scale-free R2  = 0.85 (Fig. 5a–c). Then, 11 gene modules were identified in the hierarchical clustering, based on a merge cut height of 0.25 and a minimum module size of 30 (Figs. 5d,  6a). The enriched GO terms and KEGG pathways of these 11 gene modules are summarized in Additional file 2: Table S2. It was intriguing to find that there were 6 modules exhibiting enrichment of tumor-associated signaling pathways or GO terms, namely, the cyan module, green module, grey60 module, midnight blue module, salmon module and yellow module. Reasonably, those modules were significantly relevant to the onset and progression of IMPA. The remaining 5 gene modules did not show tumor-related pathway or GO enrichments and thus were not deeply explored in this study.
Among the 6 tumor-associated modules, the green one showed the strongest correlation with the histological grade of IMPA (R  = − 0.62; p  = 0.06; Fig. 6b). Besides, the green module had the highest correlation with histological grade in GS analysis (Fig. 6c). It was noteworthy that MM and GS of the green module were positively related (Fig. 6d). Therefore, the green module was selected for further analysis.

FZD2 as a promising biomarker of IMPA malignancy

KEGG pathway analysis was performed to determine the possible functions of the 132 genes in the green module. As a result, the 132 genes in the green module were primarily enriched in pathways of the Wnt signaling pathway, protein digestion and absorption and ECM-receptor interaction (Fig. 7a). Subsequently, the PPI network of the green module was constructed via the STRING database (Fig. 7b). Notably, FZD2 had the highest MM value and intramodule connectivity among genes involved in the PPI network (Table 3; Additional file 3: S3) and was therefore selected as the core gene. IHC staining of FZD2 revealed that the expression level of FZD2 was negatively correlated with the clinical malignancy of IMPA; that is, the FZD2 protein level was lower in high-grade IMPA than in low-grade IMPA. FZD2 IHC staining was then performed in distinct grades of IMPA tissues and showed identical results (Fig. 7c–e; Table 4). These results suggest that FZD2 might be an ideal indicator for predicting the histological stages of IMPA.
Table 3
The intramodule connectivity values of 41 genes in the PPI network
Gene_symbol
Intramodule
Gene_symbol
Intramodule
ACAN
52.61026603
GP1BB
32.09642238
APLN
49.50281239
GPC1
17.64166846
BGN
12.90972979
GRIN2C
42.02411118
BPIFB2
7.554629672
HS3ST6
33.2011835
C9orf50
54.8184171
LEFTY2
20.31343892
CA9
30.21814133
MATN3
48.9472058
CERS1
53.16205839
MFAP2
34.5194173
CERS6
10.1562834
NES
11.29861431
CILP2
52.35240828
NOS1
37.27240571
CLU
44.52886375
NOTUM
52.54787108
COL11A1
17.74844867
NPW
51.46013624
COL11A2
49.91357347
PROC
17.31603023
COL23A1
16.6497107
RBP4
54.28793703
COL2A1
51.2326001
SCX
20.11143562
COMP
52.0206045
SERPINA1
10.12214108
CSPG4
15.87510143
SLC2A1
6.839166971
EMILIN1
51.4866436
SLC2A4
33.68282253
ENO2
33.90715954
STRA6
23.69469976
FZD2
56.74186498
TLL2
19.18490841
FZD8
24.15239668
TREM2
10.95125665
GAP43
15.30427057
  
Table 4
Association between FZD2 expression level and histological grade of IMPA
Group
High expression of FZD2
Low expression of FZD2
χ2
p value
High grade
10
19
4.865
0.027*
Low grade
11
5
Pearson’s Chi-square test
*p value  < 0.05

Discussion

IMPA is a seriously malignant salivary gland neoplasm with a high risk of recurrence and poor prognosis [1, 2], especially in high-grade tumors [8]. Thus, better biomarkers are needed and the underlying pathogenesis must be clarified for precise diagnosis, targeted treatment and the prognosis prediction of IMPA. Therefore, 10 pairs of IMPA tissue and tumor-surrounding normal tissue samples were subjected to RNA-seq analysis in this study.
In our study, 1970 DEGs were identified according to the criteria of |log2 FC|> 1 and adjusted p value  < 0.05. These DEGs included 1056 upregulated genes and 914 downregulated genes. According to the GO analysis results, upregulated DEGs were mainly enriched in nuclear division and extracellular matrix (ECM) organization. The upregulated DEGs, as revealed by KEGG enrichment analysis, participated in pathways such as ECM-receptor interaction and p53 signaling. The ECM provides biochemical and essential structural support for cellular constituents of the tissue and is responsible for cell proliferation, cell adhesion and cell–cell communication [2527]. Aberrant ECM organization has been reported to be associated with the progression of multiple tumors (e.g., breast cancer and hepatocellular carcinoma) and may likewise contribute to IMPA development [28, 29]. Furthermore, the downregulated DEGs exhibited an enrichment in the GO category of second messenger-mediated signaling and were involved in salivary secretion and calcium signaling pathways. Notably, intracellular calcium ions (Ca2+) are well-studied second messengers and they play direct and robust roles in many biological processes. Calcium signaling changes reflect the ‘in or out’ of intracellular Ca2+ [30, 31]. Studies have revealed that calcium signaling regulates cancer progression mainly by modulating immune-associated pathways and remodeling the tumor microenvironment [32, 33]. Therefore, there can be dysregulation of intracellular Ca2+ and calcium signaling in IMPA.
To determine the hub genes of the 1970 DEGs, WGCNA was performed to construct a gene coexpression network associated with the clinical features of IMPA. Among the 11 identified gene modules, the green module, comprised of 132 DEGs, had the strongest correlation with IMPA stage and grade and was selected for further analysis. Enrichment analysis showed that genes in the green module were enriched in the Wnt signaling pathway, protein digestion and absorption, ECM—receptor interaction and neuroactive ligand receptor interaction. The Wnt signaling pathway is a critical pathway in multiple biological processes [34]. Aberrant activity of the Wnt pathway plays an important role in carcinogenesis, cancer proliferation, metastasis and invasion [35]. Moreover, the activation of protein anabolism is important to high-grade cancers because proteins are required for cell division during proliferation and against cancer-associated cachexia and malnutrition [36]. Studies have reported that neuroactive ligand receptor interactions are involved in tumor immune infiltration and metastasis [3739]. Therefore, these pathway analysis results may contribute to the comprehensive illumination of the hidden pathogenesis of IMPA.
FZD2 encodes a transmembrane protein with seven transmembrane domains and an extracellular cysteine-rich domain [40, 41]. It can strongly bind to Wnt proteins, which subsequently activates the expression of downstream genes by the Wnt signaling pathway [40, 41]. A study performing a comprehensive analysis of FZD2 in 33 cancer types indicated that FZD2 was associated with high oncogenicity [42]. It was implicated to participate in cancer cell growth, migration and invasion and dominantly affected treatment and prognosis, suggesting the importance of FZD2 in cancer [42]. In oral neoplasms, FZD2 promotes the oncogenesis of oral squamous cell carcinoma [43, 44]. Interestingly, FZD2 was found to act as an inhibitor in salivary adenoid cystic carcinoma, which might be due to the different microenvironment of these tumors [45]. Nonetheless, the role of FZD2 in malignant pleomorphic adenoma has not been reported till now.
In the present study, we showed that FZD2 in this module has the strongest relationship with the grade characteristics of IMPA. Some reports have demonstrated that the expression of FZD2 varies with the different clinical stages and histological grades in cancers [42, 46]. Here, we first found that FZD2 was more highly upregulated in low-grade IMPA than in high-grade IMPA, indicating that FZD2 serves as an ideal indicator for the precise prediction of IMPA histological stages. In general, our study has uncovered an important role of FZD2 in the pathological progression of IMPA. Hub genes of the other 5 tumor-associated modules have also been screened out (Table 5), which might also play a role in IMPA. Further studies are necessary to figure out detailed functions of FZD2 as well as other 5 hub genes in IMPA.
Table 5
The hub genes of 6 tumor-associated gene modules
Module
Hub gene
Cyana
IL6
Green
FZD2
Grey60a
IL1B
Midnight bluea
AURKA
Salmona
SRC
Yellowa
CENPE
aObtained by the Maximal Clique Centrality (MCC) algorithm of CytoHubba plugin

Conclusions

The expression of FZD2 is negatively correlated with the clinical malignancy of IMPA. Moreover, FZD2 was identified as one of the hub genes in the IMPA transcription network and can play a vital role in regulating IMPA progression. In general, FZD2 serves as a promising indicator for predicting the histological stages of IMPA.

Acknowledgements

The authors would like to thank Professor Chunye Zhang and Dr. Biao Yang for their valuable assistance and instructions to improve this study.

Declarations

This study was approved by the Ethics Committee of Shanghai Ninth People’s Hospital.
Not applicable.

Competing interests

The authors declare that they have no competing interests.
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Metadaten
Titel
Integrated weighted gene coexpression network analysis identifies Frizzled 2 (FZD2) as a key gene in invasive malignant pleomorphic adenoma
verfasst von
Zhenyuan Han
Huiping Ren
Jingjing Sun
Lihui Jin
Qin Wang
Chuanbin Guo
Zhen Tian
Publikationsdatum
01.12.2022
Verlag
BioMed Central
Erschienen in
Journal of Translational Medicine / Ausgabe 1/2022
Elektronische ISSN: 1479-5876
DOI
https://doi.org/10.1186/s12967-021-03204-7

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