Literature DB >> 33447054

PDIA4 Correlates with Poor Prognosis and is a Potential Biomarker in Glioma.

Haoyu Li1, Qing Liu1, Kai Xiao1, Zhengxi He2, Chao Wu3, Jianjun Sun3, Xin Chen3, Suhua Chen3, Jun Yang3, Qianquan Ma3, Jun Su4.   

Abstract

PURPOSE: Gliomas, characterized by aggressiveness and invasiveness, remain incurable after conventional therapies. The molecular mechanisms driving the progression and maintenance of glioma are still poorly understood.
METHODS: The TCGA and CGGA databases were chosen for bioinformatics analysis. Gene expression profiling interactive analysis (GEPIA) was performed for differential analysis. The Kaplan-Meier method was chosen for survival analysis. Analysis of stromal and immune infiltration was performed using the ESTIMATE algorithm and xCell package. qPCR and Western blotting were performed to measure the expression of PDIA4 at the mRNA and protein levels. IHC was performed to detect the expression of PDIA4 in glioma tissues. The viability of glioma cells was evaluated by the CCK8 assay.
RESULTS: In this study, we identified high PDIA4 expression in gliomas that correlated with poor prognosis. The association between IDH1 and different glioma patterns also indicated the potential biological role of PDIA4 in tumor development. Mechanistically, PDIA4 interacted with multiple immunological components to promote an immunosuppressive tumor microenvironment (TME). Knockdown of PDIA4 significantly impaired the proliferation of GBM cells.
CONCLUSION: Our results confirm that PDIA4 is an efficient biomarker of gliomas, with clinical implications for prognosis and therapeutic strategies.
© 2021 Li et al.

Entities:  

Keywords:  PDIA4; biomarker; glioma; immune cells; prognosis

Year:  2021        PMID: 33447054      PMCID: PMC7802790          DOI: 10.2147/OTT.S287931

Source DB:  PubMed          Journal:  Onco Targets Ther        ISSN: 1178-6930            Impact factor:   4.147


Introduction

Gliomas are one of the most common malignant tumors in the central nervous system (CNS) and account for nearly 75% of primary tumors in adults.1 According to the histopathological features and prognostic factors, the World Health Organization (WHO) classifies gliomas into four grades (I–IV), from which the glioblastomas (GBMs) are categorized as the most malignant subtype (grade IV).2 Traditional multimodal therapeutic strategies against gliomas, including advanced neurosurgery, radiotherapy and chemotherapy, are unable to improve the prognosis of glioma patients. GBM patients have a poorer prognosis, with a median overall survival time of less than 17 months.3 Tolerance against multiple treatments and the invariable relapse of gliomas have been extensively studied and known to be caused by certain molecular or chromosomal subtypes, oncogenic activations, and the distinct metabolic immunosuppressive tumor microenvironment (TME).3–6 Pursuing a better understanding of the molecular landscape in gliomas, clinically significant novel markers have been detected. Various discoveries, such as promoter mutations in TERT, mutations in IDH1/IDH2, co-deletion of chromosome arms 1p/19q, and H2K27M-mutant are clearly associated with improved homogeneity in clinical outcomes and are referred to as critical predictors in clinical practice.3,7–9 Further strengthening the knowledge of such molecular alterations will improve our perception of gliomas. In this regard, investigating novel molecular biomarkers or driver genes will facilitate the understanding of tumor promotion and the development of better therapeutic strategies to cure this disease. Protein disulfide isomerases (PDIs) were originally discovered in the endoplasmic reticulum (ER) and were known to participate in protein folding.10 Encoded by the P4HB gene, PDI is a 57-kDa redox-dependent protein with a multi-domain structure.11 As critical ER enzymes, PDIs are primarily involved in oxidoreductase and chaperone activities that mediate the redox state in the cell and maintain proper protein folding and function.11,12 The biological functions of PDIs as reductases, oxidases, and chaperones in the ER have been associated with abundant physiopathological mechanisms, such as infection, coagulation, cellular viability, neurodegeneration, and immunization.10,13–16 PDIA4, one of the largest PDI members, comprises 645 amino acids and three classical CGHC active motifs. Similar to other PDI members, PDIA4 initiates coagulation and enhances thrombus formation via a series of cascade reactions.17 In addition to the classic biological functions of PDIA4, emerging evidence indicates a potential association between PDIA4 and tumor development.17 Upregulated expression of PDIA4 was detected in a variety of tumor cell lines and in human lung adenocarcinoma tissue. PDIA4 expression mediates the inhibition of mitochondrial apoptosis-induced tumor death.18 Further, a study revealed that PDIA4 promotes tumor progression through the reduction of caspases 3/7.12 The ectopic expression and function of PDIA4 have also been reported in ovarian cancer. In ovarian carcinoma, PDIA4 was found as to take part in the drug-resistance phenotype and serve as a critical prognostic marker.19,20 Moreover, in pancreatic carcinoma, hepatocellular carcinoma, and esophageal squamous cell carcinoma, the increased expression of PDIA4 was associated with tumor development.21–25 In our previous studies, we have already described PDIA4 as one of the prognostic markers in lower-grade gliomas and its association with immunosuppressive TME.26 From this perspective, we designed further experiments to study the molecular mechanisms and novel pathophysiological behaviors of PDIA4 in gliomas.

Materials and Methods

Data Sets

The patient clinical annotation and gene expression data used in this study were obtained from publicly available databases. The TCGA lower grade glioma and glioblastoma (GBM; LGG) dataset, which included genomic and phenotypic data, were obtained from the University of California, Santa Cruz, Xena browser (). Another cohort of glioma patients (LGG and GBM) was obtained from the Chinese Glioma Genome Atlas (CGGA, ) and the mRNA sequencing data (RSEM) and clinical data were downloaded.

Differential Expression Analysis

Gene Expression Profiling Interactive Analysis (GEPIA) is an interactive web platform for gene expression analysis, which includes 9736 tumors and 8587 normal samples from TCGA and GTEx databases. Its gene expression data have been re-computed from raw RNA-Seq data based on the UCSC Xena project and a uniform pipeline for solving the imbalance between tumor and normal data.27 Differential expression analysis of PDIA4 between gliomas and normal brain tissues was performed using GEPIA.

Survival Analysis

Kaplan–Meier survival analysis and the Cox proportional hazard model were used to estimate the prognostic value of PDIA4 based on TCGA and CGGA datasets using R language packages (survival and survminer).

Gene Ontology (GO) Enrichment Analysis

The functional enrichment analysis, including gene ontology (GO) analysis comprised of cellular component (CC), molecular function (MF), biological process (BP), and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway, were performed via the cluster Profiler package in R language.28 Enriched ontological terms with an adjusted P value < 0.05 were regarded as statistically significant.

Analysis of Stromal and Immune Infiltration

Stromal and immune infiltration was analyzes as described previously.29 The scores, calculated by the ESTIMATE algorithm,30 were downloaded from . The pre-calculated TCGA data based on xCell31 was downloaded from . The correlation between PDIA4 expression and ESTIMATE scores and 64 cell types from the TCGA glioma dataset were then analyzed using R language.

Protein–Protein Interaction (PPI) Analysis

The Search Tool for the Retrieval of Interacting Genes,32 an online database, was used to identify proteins that can interact with PDIA4 and construct PPI networks.

Cell Lines and Culture

All the cell lines were purchased from ATCC. The human glioma cell-lines (U87, U251, and T98G) and the normal glial cell-line HEB were cultured in DMEM with 10% FBS and antibiotics (100 μg/mL penicillin and 100 μg/mL streptomycin), and maintained under standard culture conditions.

RNA Extraction and Real-Time RT-PCR

Total RNA was extracted from cell lines or human tissues using TRIzol reagent (Invitrogen) according to the manufacturer’s protocol. Total RNA was quantified and 1 μg of RNA was reverse-transcribed with the Reverse Transcription Kit (Thermo Fisher Scientific). qPCR was performed using SYBR Premix Ex Taq II (Takara Bio). β-actin mRNA was used to normalize gene expression. The primers used were as follows: PDIA4: F: 5ʹ- GGCAGGCTGTAGACTACGAG-3ʹ and R: 5ʹ- TTGGTCAACACAAGCGTGACT-3ʹ GAPDH: F: 5ʹ-GGGAGCCAAAAGGGTCAT-3ʹ and R: 5ʹ-GTCCTTCCACGATACCAA-3ʹ.

PDIA4 shRNA Gene Silencing

U87 and U251 cells were transfected with lentiviruses harboring PDIA4 shRNA (CTTGGTCCTAAATGATGCAAA) and control shRNA. Prior to use, shRNA-positive cells were validated by green fluorescence microscopy and selected for culturing in medium containing 2 µg/mL puromycin for 1 week.

Western Blotting

Cells were lysed with in RIPA buffer containing protease inhibitors. Equal amounts of protein samples were separated electrophoretically and then transferred onto PVDF membranes (Bio-Rad, Hercules, CA, USA). The membranes were blocked for 1h in Tris-buffered saline containing Tween-20 (TBST) and 5% non-fat milk. Thereafter, Western blot analysis was performed using primary antibodies against PDIA4 (1:1000, Bioss ANTIBODIES, bs-13106R), and β-actin in a blocking buffer containing 5% non-fat milk and 0.1% Tween-20 in TBS. The blots were then developed using Lumiglo substrate (KP Laboratories, Gaithersburg, MD) on BioMax LS film (Eastman Kodak, Rochester, NY).

IHC Staining

Paraffin-embedded human glioma samples taken from glioma patients in Xiangya Hospital were resected. All patients signed informed consent to participate before taking samples. The cohort consisted of 15 cases, including 4, 5, and 6 cases of WHO grade II-Ⅳ glioma tissues. The tumor tissues were formalin-fixed, processed, and paraffin-embedded. Antigens were retrieved by autoclaving in 0.01 mol/L sodium citrate buffer (pH 6.0) at 121°C and 20 psi for 3–5 min. Endogenous peroxidase activity and nonspecific antibody-binding sites were blocked using 3% hydrogen peroxide and 5% goat serum, respectively. The blocked sections were incubated overnight at 4°C with primary antibody followed by 30 min incubation with secondary antibody. The slides were stained with diaminobenzidine (DAB) for 2 min and counterstained with hematoxylin. Scoring was performed considering the average percentage of positively stained cells counted in ten randomly selected visual fields. IHC was performed with primary antibodies against PDIA4 (1:100, Bioss ANTIBODIES, bs-13106R). IHC staining and quantification were performed by two blinded individuals.

CCK8

Proliferation in GBM cells was measured by Cell Counting kit-8 (Sigma-Aldrich, Shanghai, China), according to the manufacturer’s instructions. Briefly, cells were seeded at a density of 3000 cells per well in 96-well plates. At each desired time point, CCK-8 solution was added (10 μL/well) to all wells and incubated for 2 h at 37°C, followed by measurement of absorbance at 420 nm in a microplate reader (Model 680 microplate reader, Bio-Rad Laboratories). Each experiment was performed in five replicates.

Statistical Analysis

Several packages (ggplot2, survival, survminer, corrplot) in the statistical software environment R, version 3.5.3 () were used for statistical computations and for creating figures. Student’s t-test and one-way ANOVA were used to analyze two or more groups of measurement data; Pearson’s r was used for correlation analysis. All the data were statistically significant (P < 0.05). The experiment was repeated three times.

Results

Association of PDIA4 with Clinicopathological Characters in Gliomas

In accordance with the hypothesis that PDIA4 plays a critical role in glioma aggressiveness, we first measured the expression of PDIA4 in glioma tissues compared to normal brain tissues. The remarkably increased expression of PDIA4 was observed in both GBM samples and low-grade glioma (LGG) samples (Figure 1A, p <0.001). To further validate this result, we performed q-PCR in glioma cell lines. The results showed that the mRNA expression of PDIA4 was elevated in glioma cell lines when compared with normal glial cell lines (Figure 1B). To further determine the expression of PDIA4 in glioma, we measured the expression level of PDIA4 in glioma tumor tissues via IHC staining. Resected glioma samples (Grade II–IV) were obtained from Xiangya Hospital and stained by PDIA4 primary antibody. We found a significant increase in the staining intensity in grade IV glioma samples, compared to the lower grade of tumors (Figure 1C and D). Similarly, PDIA4 expression positively correlated with glioma histological grade in both TCGA and CGGA cohorts (Figure 1E). It is widely recognized that mutations in isocitrate dehydrogenase genes (IDH1 and IDH2) have strong connections with tumor behaviors in gliomas. Patients with IDH-mutant (IDH-Mut) histology exhibited better prognosis than IDH-wildtype (IDH-Wt). Intriguingly, we also observed elevated expression levels of PDIA4 in the IDH-Wt subtype of glioma when compared with IDH-Mut tumors (Figure 1F). Additionally, we evaluated the expression of PDIA4 in different glioma patterns. The results showed higher expression of PDIA4 in mesenchymal and classical subtypes rather than neural and proneural subtypes (Figure 1G).
Figure 1

PDIA4 is highly expressed in gliomas and significantly associated with the advanced stage of tumors. (A) Differential expression of LCTL in brain lower grade glioma (LGG) and glioblastoma (GBM) compared to levels in normal brain tissues. *P < 0.05. (B) Relative mRNA expression level of PDIA4 in the normal glial cell line HEB and glioma cell lines. *P < 0.05; **P < 0.01; ***P < 0.001. (C) IHC staining of PDIA4 in WHO grade IV gliomas of and comparison with normal brain tissues resected at Xiangya Hospital. Original magnification, ×100. Scale bar, 50μm. (D) The upper section shows the intensity of IHC staining of PDIA4 in the cytoplasm of glioma tissue arrays. The lower section shows the representative intensity at each level of PDIA4 IHC staining. *P < 0.05; **P < 0.01. (E) PDIA4 expression in gliomas of WHO grade III–V, based on both TCGA and CGGA datasets. *P < 0.05; ***P < 0.001. (F) The expression of PDIA4 in IDH subtypes of gliomas based on both the TCGA and CGGA datasets. ***P < 0.001. (G) PDIA4 expression pattern in different molecular subtypes of glioma (classical, mesenchymal, neural, proneural) in the TCGA dataset. *P < 0.05; ***P < 0.001.

PDIA4 is highly expressed in gliomas and significantly associated with the advanced stage of tumors. (A) Differential expression of LCTL in brain lower grade glioma (LGG) and glioblastoma (GBM) compared to levels in normal brain tissues. *P < 0.05. (B) Relative mRNA expression level of PDIA4 in the normal glial cell line HEB and glioma cell lines. *P < 0.05; **P < 0.01; ***P < 0.001. (C) IHC staining of PDIA4 in WHO grade IV gliomas of and comparison with normal brain tissues resected at Xiangya Hospital. Original magnification, ×100. Scale bar, 50μm. (D) The upper section shows the intensity of IHC staining of PDIA4 in the cytoplasm of glioma tissue arrays. The lower section shows the representative intensity at each level of PDIA4 IHC staining. *P < 0.05; **P < 0.01. (E) PDIA4 expression in gliomas of WHO grade III–V, based on both TCGA and CGGA datasets. *P < 0.05; ***P < 0.001. (F) The expression of PDIA4 in IDH subtypes of gliomas based on both the TCGA and CGGA datasets. ***P < 0.001. (G) PDIA4 expression pattern in different molecular subtypes of glioma (classical, mesenchymal, neural, proneural) in the TCGA dataset. *P < 0.05; ***P < 0.001.

The Expression of PDIA4 is Correlated with Prognosis in Glioma Patients

Based on the findings that PDIA4 was aberrantly expressed in gliomas and showed strong relationships with histological grade and specific molecular subtype, we further studied the prognostic value of PDIA4 by Kaplan-Meier survival analysis using data obtained from TCGA and CGGA datasets. The results indicated that high PDIA4 expression consistently correlated with poor patient outcomes in both the GBM group (Figure 2A and B) and LGG group (Figure 2C and D). To study whether PDIA4 is an independent prognostic factor in glioma, we also performed Cox regression analysis with data obtained from TCGA and CGGA. In multivariate analysis, after adjusting for many clinical factors, such as patient age, patient sex, WHO grade, and IDH status, the results suggested that the expression of PDIA4 was a strong predictor in patients with glioma (Tables 1 and 2).
Figure 2

PDIA4 is a prognostic factor for glioma patients. (A and B) Kaplan–Meier survival analysis showing high PDIA4 expression predicts poor prognosis for glioblastoma multiform (GBM) patients in both the TCGA and CGGA datasets. The upper quartile number was used in this analysis. (C and D) Kaplan–Meier survival analysis showing that high PDIA4 expression predicts poor prognosis for lower grade glioma (LGG) patients in both the TCGA and CGGA datasets. The median number was used in this analysis.

Table 1

Univariate and Multivariate Analysis Based on the TCGA Dataset

VariableUnivariate AnalysisMultivariate Analysis
HR (95% CI)PHR (95% CI)P
PDIA43.000 (2.608–3.452)<0.0011.304 (1.007–1.689)<0.05
Gender0.817(0.637–1.049)>0.050.758 (0.572–1.004)>0.05
Age1.068 (1.058–1.078)<0.0011.036 (1.024–1.049)<0.001
WHO grade9.524 (7.230–12.550)<0.0012.021 (1.368–2.986)<0.01
IDH status10.01 0(7.441–13.470)<0.0013.477 (2.110–5.729)<0.001
Table 2

Univariate and Multivariate Analysis Based on the CCGA Dataset

VariableUnivariate AnalysisMultivariate Analysis
HR (95% CI)PHR (95% CI)P
PDIA41.618 (1.477–1.773)<0.0011.271 (1.149–1.406)<0.001
Gender1.012 (0.826–1.241)>0.050.977 (0.793–1.205)>0.05
Age1.027 (1.018–1.035)<0.0011.011 (1.002–1.019)<0.05
WHO grade3.979 (3.227–4.906)<0.0012.142 (1.621–2.831)<0.001
IDH status3.238 (2.616–4.009)<0.0011.846 (1.422–2.397)<0.001
Univariate and Multivariate Analysis Based on the TCGA Dataset Univariate and Multivariate Analysis Based on the CCGA Dataset PDIA4 is a prognostic factor for glioma patients. (A and B) Kaplan–Meier survival analysis showing high PDIA4 expression predicts poor prognosis for glioblastoma multiform (GBM) patients in both the TCGA and CGGA datasets. The upper quartile number was used in this analysis. (C and D) Kaplan–Meier survival analysis showing that high PDIA4 expression predicts poor prognosis for lower grade glioma (LGG) patients in both the TCGA and CGGA datasets. The median number was used in this analysis.

Functional Enrichment of PDIA4 in Glioma

To understand the mechanism by which PDIA4 promotes tumor growth and illustrates the key signaling regulated by PDIA4, we performed GO functional enrichment analysis. Data from both TCGA and CGGA were analyzed by Pearson correlation analysis and genes with |R| >0.6 were collected for functional enrichment. As a consequence, 408 terms of biological process (BP), 110 terms of cellular component (CC), 40 terms of molecular function (MF) were identified from TCGA database, and 140 terms of BP, 56 terms of CC, and 15 terms of MF were identified from the CGGA database ( and ). The top 10 terms of BP mainly enriched functions of neutrophil-mediated immune function (Figure 3A and B). MF enrichment indicated functions predominantly involved in transferase activities, cell adhesion, and molecule binding (Figure 3C and D). Meanwhile, genes from CC terms were significantly associated with focal adhesion, cell-substrate junctions, and endoplasmic reticulum lumen (Figure 3E and F). We also conducted KEGG pathway analysis with selected genes. The results revealed a strong correlation between PDIA4 related genes and important biological signaling, such as protein processing in the endoplasmic reticulum, human immunodeficiency virus 1 infection, and apoptosis (Figure 3G and H).
Figure 3

Functional enrichment analysis of PDIA4 in TCGA and CGGA cohorts. Data of all grades of glioma were used in this analysis. (A and B) The top10 biological process terms of GO enrichment analysis based on TCGA and CGGA datasets, respectively. (C and D) The top10 molecular function terms of GO enrichment analysis based on TCGA and CGGA datasets, respectively. (E and F) The top10 cellular component terms of GO enrichment analysis based on TCGA and CGGA datasets, respectively. (G and H) KEGG pathway analysis based on TCGA and CGGA datasets and the top 10 terms were visualized.

Functional enrichment analysis of PDIA4 in TCGA and CGGA cohorts. Data of all grades of glioma were used in this analysis. (A and B) The top10 biological process terms of GO enrichment analysis based on TCGA and CGGA datasets, respectively. (C and D) The top10 molecular function terms of GO enrichment analysis based on TCGA and CGGA datasets, respectively. (E and F) The top10 cellular component terms of GO enrichment analysis based on TCGA and CGGA datasets, respectively. (G and H) KEGG pathway analysis based on TCGA and CGGA datasets and the top 10 terms were visualized.

PDIA4 Correlates with the TME and Promotes the Viability of Glioma Cells

Considering the results from GO and KEGG pathway analysis, which elucidated strong connections between PDIA4 and immunological functions, we next performed examinations to confirm this phenomenon. First, we examined the association between PDIA4 expression and immune scores. The results showed that PDIA4 expression had a relatively lower correlation with both stromal score and immune score in GBM patients (Figure 4A). However, in LGG samples, we found a strong correlation between PDIA4 and stromal or immune scores (Figure 4B). Moreover, we studied the correlation between PDIA4 and 64 non-cancerous cell types to determine the critical cellular components involved in PDIA4 associated immunological processes. The results revealed that 46 cell types correlated with PDIA4, among which 33 types were positively related, whereas 13 types were negatively related (Figure 4C, Table 3). Notably, the cellular components that exhibited a dramatic correlation with PDIA4, such as astrocytes, M1 macrophages, CD4+ memory T cells, CD8+ T cells, Tregs, and eosinophils, have already been demonstrated to play critical roles in the glioma TME. We further validated the correlation between PDIA4 and immune properties via classic immunological markers. The results suggested that PDIA4 was closely related to several immunosuppressive factors, especially the dendritic cells, M2 macrophages, monocytes, and T cell exhaustion markers (Table 4). Besides, we subjected PDIA4 to protein interaction analysis (PPI) to study the regulatory network of this protein. Based on these results, we found that PDIA4 interacts with several heat shock proteins (Figure 4D). Functional studies revealed that these genes were closely related to stress-reduced responses and endoplasmic reticulum, which was consistent with the data described above. Meanwhile, the majority of PDIA4-related genes, such as PDIA6, ERO1LB, ERO1L, HSPA5, HSP90B1, and HYOU1, were found to be tightly involved in the tumor-promoting phenotype. To explore the role of PDIA4 in GBM tumorigenesis, we established PDIA4 knockdown clones of U87 and U251 glioma cells with specific shRNA. The efficiency of PDIA4 knockdown was confirmed by Western blotting and selected for the next CCK8 experiments (Figure 4E). We found that knockdown of PDIA4 significantly inhibited the proliferative activities compared to control cells (Figure 4F).
Figure 4

PDIA4 correlates with TME and promotes glioma cell proliferation.(A) PDIA4 expression positively correlated with immune score and stromal score in glioblastoma multiform (GBM) patients. (B) PDIA4 expression positively correlated with immune score and stromal score in lower grade glioma (LGG) patients. (C) PDIA4 expression significantly correlated with 46 cell types, as calculated by xCells in glioma. Data of all grades of glioma were used in this analysis. (D) Protein–protein interaction (PPI) network of PDIA4. Data of all grades of glioma were used in this analysis. (E) Demonstration of PDIA4 knockdown (KD) in U87 and U251 GBM cells by Western blotting analysis. Cells transfected with non-specific shRNA were used as control. (F) A total of 3000 control and PDIA4 KD glioma cells were plated in a 96-well plate in 200 μL medium. Cell viability was assayed using CCK8 assay. Both PDIA4 KD U87 and U251 cells showed significantly reduced cell viability compared to control. ***P < 0.001.

Table 3

Correlation Ship Between PDIA4 and 64 Types of Non-Cancerous Cells

xCellsCategoryPearson’s r (95% CI)adj.p
B cellslymphoids0.089(−0.042~0.217)*
CD4+ memory T cellslymphoids0.541(0.442~0.627)***
CD4+ naive T cellslymphoids0.175(0.045~0.298)***
CD4+ T cellslymphoids−0.021(−0.151~0.109)
CD4+ Tcmlymphoids−0.091(−0.219~0.04)*
CD4+Temlymphoids0.054(−0.076~0.183)
CD8+ naive T cellslymphoids0.127(−0.004~0.253)**
CD8+ Tcmlymphoids−0.413(−0.515~-0.299)***
CD8+ Temlymphoids0.055(−0.075~0.184)
CD8+T cellslymphoids0.062(−0.069~0.19)
Class switched memory B cellslymphoids−0.295(−0.409~-0.171)***
Memory B cellslymphoids0.003(−0.127~0.133)
naive B cellslymphoids−0.002(−0.132~0.129)
NK cellslymphoids−0.094(−0.222~0.036)*
Natural killer T cells (NKT)lymphoids0.043(−0.088~0.172)
Plasma cellslymphoids−0.359(−0.467~-0.24)***
pro B cellslymphoids0.006(−0.124~0.136)
Tgd cellslymphoids0.038(−0.093~0.168)
Th1 cellslymphoids0.394(0.278~0.499)***
Th2 cellslymphoids0.198(0.07~0.32)***
Tregslymphoids−0.627(−0.7~-0.541)***
Activated dendritic cells (aDC)myeloids0.468(0.36~0.564)***
Basophilsmyeloids−0.325(−0.437~-0.204)***
Conventional dendritic cells (cDC)myeloids0.02(−0.111~0.149)
Dendritic cells (DC)myeloids0.234(0.107~0.354)***
Eosinophilsmyeloids−0.491(−0.584~-0.385)***
Immature DC (iDC)myeloids0.202(0.074~0.324)***
Macrophages ymyeloids0.551(0.454~0.636)***
Macrophages M1myeloids0.593(0.501~0.671)***
Macrophages M2myeloids0.441(0.329~0.54)***
Mast cellsmyeloids0.061(−0.07~0.189)
Monocytesmyeloids0.401(0.286~0.505)***
Neutrophilsmyeloids0.286(0.162~0.401)***
Plasmacytoid dendritic cells (pDC)myeloids−0.093(−0.22~0.038)*
Astrocytesothers0.767(0.707~0.815)***
Epithelial cellsothers0.517(0.415~0.607)***
Hepatocytesothers0.331(0.21~0.442)***
Keratinocytesothers0.064(−0.067~0.193)
Melanocytesothers0.002(−0.128~0.133)
Mesangial cellsothers0.505(0.401~0.596)***
Myocytesothers−0.163(−0.287~-0.033)***
Neuronsothers−0.687(−0.75~-0.612)***
Sebocytesothers0.273(0.148~0.389)***
Common lymphoid progenitors (CLP)stem cells0.565(0.47~0.648)***
Common myeloid progenitors (CMP)stem cells0.007(−0.123~0.137)
Erythrocytesstem cells0.092(−0.038~0.22)*
Granulocyte-macrophage progenitor (GMP)stem cells0.138(0.008~0.264)***
Hematopoietic stem cells (HSC)stem cells0.283(0.158~0.398)***
Megakaryocytesstem cells−0.01(−0.14~0.121)
Megakaryocyte-erythroid progenitors (MEP)stem cells0.273(0.148~0.39)***
Multipotent progenitors (MPP)stem cells−0.015(−0.145~0.116)
Plateletsstem cells−0.399(−0.503~-0.283)***
Adipocytesstromal cells−0.01(−0.141~0.12)
Chondrocytesstromal cells0.026(−0.104~0.156)
Endothelial cellsstromal cells0.412(0.297~0.514)***
Fibroblastsstromal cells0.376(0.259~0.483)***
ly Endothelial cellsstromal cells0.248(0.122~0.366)***
Mesenchymal stem cells (MSC)stromal cells−0.196(−0.318~-0.067)***
mv Endothelial cellsstromal cells0.333(0.212~0.444)***
Osteoblaststromal cells0.108(−0.022~0.235)**
Pericytesstromal cells−0.171(−0.295~-0.042)***
Preadipocytesstromal cells0.385(0.268~0.49)***
Skeletal musclestromal cells0.128(−0.002~0.254)**
Smooth musclestromal cells0.393(0.277~0.498)***

Notes: *P < 0.05; **P < 0.01; ***P < 0.001.

Table 4

Correlation Analysis Between LAYN and Relate Genes and Markers of Immune Cells Based on TCGA Database

DescriptionGene MarkersPearson’s r (95% CI)P
CD8+ T cellCD8A0.375 (−0.062–0.692)**
CD8B0.322 (−0.123–0.659)*
T cell (general)CD3D0.332 (−0.111–0.665)*
CD3E0.433 (0.006–0.726)**
CD20.427 (−0.001–0.723)**
B cellCD190.201 (−0.248–0.579)
CD79A0.233 (−0.216–0.601)
MonocyteCD860.616 (0.255–0.826)***
CD115 (CSF1R)0.617 (0.257–0.826)***
TAMCCL20.569 (0.187–0.802)***
CD680.806 (0.577–0.917)***
IL100.355 (−0.086–0.68)*
M1 macrophageINOS (NOS2)0.386 (−0.05–0.698)**
IRF50.638 (0.289–0.837)***
COX2(PTGS2)0.354 (−0.087–0.679)*
M2 macrophageCD1630.555 (0.167–0.794)***
VSIG40.651 (0.309–0.844)***
MS4A4A0.66 (0.324–0.848)***
NeutrophilsCD66b (CEACAM8)0.121 (−0.323–0.522)
CD11b (ITGAM)0.553 (0.164–0.793)***
CCR70.34 (−0.102–0.67)*
Natural killer cellKIR2DL1−0.039 (−0.459–0.395)
KIR2DL3−0.003 (−0.43–0.425)
KIR2DL40.069 (−0.369–0.483)
KIR3DL10.13 (−0.315–0.528)
KIR3DL20.057 (−0.38–0.473)
KIR3DL3−0.374 (−0.691–0.064)**
KIR2DS40.051 (−0.385–0.468)
Dendritic cellHLA-DPB10.644 (0.299–0.84)***
HLA-DQB10.549 (0.159–0.791)***
HLA-DRA0.692 (0.376–0.864)***
HLA-DPA10.652 (0.311–0.844)***
BDCA-1(CD1C)0.17 (−0.278–0.557)
BDCA-4(NRP1)0.876 (0.716–0.948)***
CD11c (ITGAX)0.529 (0.131–0.78)***
Th1T-bet (TBX21)0.372 (−0.066–0.69)**
STAT40.081 (−0.36–0.491)
STAT10.822 (0.608–0.925)***
IFN-g (IFNG)0.128 (−0.317–0.526)
TNF-a (TNF)0.158 (−0.289–0.549)
Th2GATA30.389 (−0.047–0.7)**
STAT60.808 (0.582–0.918)***
STAT5A0.735 (0.449–0.885)***
IL130.076 (−0.364–0.488)
TfhBCL60.703 (0.394–0.869)***
IL21−0.154 (−0.546–0.293)
Th17STAT30.896 (0.759–0.957)***
IL17A−0.083 (−0.493–0.358)
TregFOXP30.316 (−0.129–0.655)*
CCR80.098 (−0.344–0.505)
STAT5B0.756 (0.485–0.895)***
TGFb (TGFB1)0.8 (0.567–0.915)***
T cell exhaustionPD-1 (PDCD1)0.37 (−0.068–0.689)**
CTLA40.257 (−0.192–0.617)
LAG30.484 (0.071–0.756)***
TIM-3 (HAVCR2)0.648 (0.305–0.842)***
GZMB0.243 (−0.206–0.607)

Notes: *P < 0.05; **P < 0.01; ***P < 0.001.

Correlation Ship Between PDIA4 and 64 Types of Non-Cancerous Cells Notes: *P < 0.05; **P < 0.01; ***P < 0.001. Correlation Analysis Between LAYN and Relate Genes and Markers of Immune Cells Based on TCGA Database Notes: *P < 0.05; **P < 0.01; ***P < 0.001. PDIA4 correlates with TME and promotes glioma cell proliferation.(A) PDIA4 expression positively correlated with immune score and stromal score in glioblastoma multiform (GBM) patients. (B) PDIA4 expression positively correlated with immune score and stromal score in lower grade glioma (LGG) patients. (C) PDIA4 expression significantly correlated with 46 cell types, as calculated by xCells in glioma. Data of all grades of glioma were used in this analysis. (D) Protein–protein interaction (PPI) network of PDIA4. Data of all grades of glioma were used in this analysis. (E) Demonstration of PDIA4 knockdown (KD) in U87 and U251 GBM cells by Western blotting analysis. Cells transfected with non-specific shRNA were used as control. (F) A total of 3000 control and PDIA4 KD glioma cells were plated in a 96-well plate in 200 μL medium. Cell viability was assayed using CCK8 assay. Both PDIA4 KD U87 and U251 cells showed significantly reduced cell viability compared to control. ***P < 0.001.

Discussion

Despite the current multi-therapeutic strategies against glioma, including modern neurosurgery, radiotherapy, chemotherapy, and immunotherapy, the prognosis of glioma patients remains poor because of the aggressive features of this type of cancer. Novel, efficient management of glioma requires a comprehensive understanding of the biological nature of this disease. The illustration of potential critical factors that overexpress and play an essential role in glioma progression is of great importance to increase our knowledge of this malignant disease. Our present study first identified PDIA4 as a novel molecular marker that shows a close relationship with the clinicopathological characteristics and immunological surveillance of glioma, and provides alternative strategies for the subsequent treatment of this disease. PDIA4 was originally described to be involved in various biological processes, including coagulation,33 thrombosis formation34,35 and injury reaction.36 Recently, there has been a mounting evidence that aberrant expression and the potential mechanisms of PDIA4 participate in the development of multiple types of cancer.12,17,18,21 Moreover, our recent study documented that PDIA4 is involved in the prognostic model in LGG, subsequently participating in the immunosuppressive TME.26 Based on these findings, the present study identified PDIA4 overexpression not only in glioma tissues but also its significant consistency with WHO grade. In addition, our study revealed increased mRNA expression of PDIA4 in glioma cell lines. Mechanistically, PDIA4 was significantly associated with the IDH status and different glioma subtypes. Furthermore, we examined the clinical importance of PDIA4 and found that PDIA4 was an independent prognostic marker whose expression was negatively correlated with the outcomes of glioma patients. To elucidate the critical functions of PDIA4 in glioma, we conducted GO function and KEGG pathway analysis in both TCGA and CGGA datasets. As a result, the PDIA4-related biological functions were mainly enriched in transferase activities, endoplasmic reticulum responses, and immunity. The orchestrated immunological interactions within glioma TME have received increased attention, and harnessing the immune system is becoming a hotspot in the field of oncology. Various components of glioma TME, such as immune cells, cytokines, and markers, coordinately interact with each other to establish the immunosuppressive phenotype and promote the development of glioma.5 From this perspective, advanced clinical practices targeting specific immunotherapies have already shown profound outcomes compared to conventional therapy against glioma. As PDIA4 was previously shown to participate in the immunological TME in LGG, we further detected its correlation with multiple immune factors. Consistent with our study, we found that PDIA4 was tightly related to both the immune and stromal scores in LGG. The relationship between PDIA4 and immune scores was relatively lower in GBM, suggesting the potential heterogeneities between different grades of glioma. After checking the association between PDIA4 and 64 non-cancerous cells, we found a significant link between 46 types of cells and PDIA4. Furthermore, we studied the connections between PDIA4 and classic genes and markers of immune cells. Interestingly, the data showed a close relationship with several infiltrating immune cells, such as monocytes, tumor-associated macrophages, and neutrophils, which are widely considered immunosuppressive components in glioma TME. An association has also been detected among dendritic cell markers and PDIA4, which suggested the potential functions of PDIA4 in the process of antigen presentation and immune surveillance. Consistently, our PPI analysis of PDIA4 indicated that the major proteins related to PDIA4 are members of heat shock proteins or endoplasmic reticulum proteins, which have also been reported to be tumor promoting in various cancers.21,37–40 Next, our phenotypic experiments showed that downregulation of PDIA4 significantly inhibited the proliferation of glioma cells, indicating that pharmacological inhibition of PDIA4 could be regarded as a novel therapeutic target against glioma. Based on our findings, our study is the first to describe the novel function of PDIA4, and we propose a new linkage between PDIA4 and various immune components in glioma. PDIA4 is highly expressed in glioma and is significantly associated with clinical outcomes. The tumor-promoting characteristics of PDIA4 are potentially mediated by the immune system via certain connections with multiple immune factors in the glioma TME. The detailed molecular mechanism of PDIA4 and the development of glioma need to be further elucidated. To this end, our study provides novel possibilities for finding new therapeutic approaches targeting PDIA4 in glioma.

Conclusion

PDIA4 expression was high in glioma samples and associated with a potentially poor prognosis in glioma patients. Mechanistically, we demonstrated that PDIA4 has an immunosuppressive role and regulates the recruitment of immunosuppressive cells within the glioma tumor microenvironment. PDIA4 knockdown significantly impaired the proliferation of GBM cell lines. Therefore, we suggest that PDIA4 could be a novel prognostic marker for glioma.
  40 in total

1.  clusterProfiler: an R package for comparing biological themes among gene clusters.

Authors:  Guangchuang Yu; Li-Gen Wang; Yanyan Han; Qing-Yu He
Journal:  OMICS       Date:  2012-03-28

2.  Microarray-based identification of genes associated with prognosis and drug resistance in ovarian cancer.

Authors:  Fuqiang Yin; Shang Yi; Luwei Wei; Bingbing Zhao; Jinqian Li; Xiangxue Cai; Caihua Dong; Xia Liu
Journal:  J Cell Biochem       Date:  2018-10-18       Impact factor: 4.429

3.  Extracellular protein disulfide isomerase regulates coagulation on endothelial cells through modulation of phosphatidylserine exposure.

Authors:  Narcis I Popescu; Cristina Lupu; Florea Lupu
Journal:  Blood       Date:  2010-05-06       Impact factor: 22.113

4.  ERO1L promotes pancreatic cancer cell progression through activating the Wnt/catenin pathway.

Authors:  Fei Han; Qianqian Xu; Jianguo Zhao; Peng Xiong; Jun Liu
Journal:  J Cell Biochem       Date:  2018-08-04       Impact factor: 4.429

5.  Quantitative proteome analysis of HCC cell lines with different metastatic potentials by SILAC.

Authors:  Ning Chen; Wei Sun; Xinyu Deng; Yunwei Hao; Xilin Chen; Baocai Xing; Wei Jia; Jie Ma; Handong Wei; Yunping Zhu; Xiaohong Qian; Ying Jiang; Fuchu He
Journal:  Proteomics       Date:  2008-12       Impact factor: 3.984

6.  Glioma Groups Based on 1p/19q, IDH, and TERT Promoter Mutations in Tumors.

Authors:  Jeanette E Eckel-Passow; Daniel H Lachance; Annette M Molinaro; Kyle M Walsh; Paul A Decker; Hugues Sicotte; Melike Pekmezci; Terri Rice; Matt L Kosel; Ivan V Smirnov; Gobinda Sarkar; Alissa A Caron; Thomas M Kollmeyer; Corinne E Praska; Anisha R Chada; Chandralekha Halder; Helen M Hansen; Lucie S McCoy; Paige M Bracci; Roxanne Marshall; Shichun Zheng; Gerald F Reis; Alexander R Pico; Brian P O'Neill; Jan C Buckner; Caterina Giannini; Jason T Huse; Arie Perry; Tarik Tihan; Mitchell S Berger; Susan M Chang; Michael D Prados; Joseph Wiemels; John K Wiencke; Margaret R Wrensch; Robert B Jenkins
Journal:  N Engl J Med       Date:  2015-06-10       Impact factor: 176.079

7.  xCell: digitally portraying the tissue cellular heterogeneity landscape.

Authors:  Dvir Aran; Zicheng Hu; Atul J Butte
Journal:  Genome Biol       Date:  2017-11-15       Impact factor: 13.583

8.  Identification of a Tumor Microenvironment-Related Eight-Gene Signature for Predicting Prognosis in Lower-Grade Gliomas.

Authors:  Jun Su; Wenyong Long; Qianquan Ma; Kai Xiao; Yang Li; Qun Xiao; Gang Peng; Jian Yuan; Qing Liu
Journal:  Front Genet       Date:  2019-11-15       Impact factor: 4.599

9.  Acidic microenvironment plays a key role in human melanoma progression through a sustained exosome mediated transfer of clinically relevant metastatic molecules.

Authors:  Zaira Boussadia; Jessica Lamberti; Fabrizio Mattei; Elisabetta Pizzi; Rossella Puglisi; Cristiana Zanetti; Luca Pasquini; Federica Fratini; Luca Fantozzi; Federica Felicetti; Katia Fecchi; Carla Raggi; Massimo Sanchez; Stefania D'Atri; Alessandra Carè; Massimo Sargiacomo; Isabella Parolini
Journal:  J Exp Clin Cancer Res       Date:  2018-10-05

10.  Longitudinal molecular trajectories of diffuse glioma in adults.

Authors:  Floris P Barthel; Kevin C Johnson; Frederick S Varn; Anzhela D Moskalik; Georgette Tanner; Emre Kocakavuk; Kevin J Anderson; Olajide Abiola; Kenneth Aldape; Kristin D Alfaro; Donat Alpar; Samirkumar B Amin; David M Ashley; Pratiti Bandopadhayay; Jill S Barnholtz-Sloan; Rameen Beroukhim; Christoph Bock; Priscilla K Brastianos; Daniel J Brat; Andrew R Brodbelt; Alexander F Bruns; Ketan R Bulsara; Aruna Chakrabarty; Arnab Chakravarti; Jeffrey H Chuang; Elizabeth B Claus; Elizabeth J Cochran; Jennifer Connelly; Joseph F Costello; Gaetano Finocchiaro; Michael N Fletcher; Pim J French; Hui K Gan; Mark R Gilbert; Peter V Gould; Matthew R Grimmer; Antonio Iavarone; Azzam Ismail; Michael D Jenkinson; Mustafa Khasraw; Hoon Kim; Mathilde C M Kouwenhoven; Peter S LaViolette; Meihong Li; Peter Lichter; Keith L Ligon; Allison K Lowman; Tathiane M Malta; Tali Mazor; Kerrie L McDonald; Annette M Molinaro; Do-Hyun Nam; Naema Nayyar; Ho Keung Ng; Chew Yee Ngan; Simone P Niclou; Johanna M Niers; Houtan Noushmehr; Javad Noorbakhsh; D Ryan Ormond; Chul-Kee Park; Laila M Poisson; Raul Rabadan; Bernhard Radlwimmer; Ganesh Rao; Guido Reifenberger; Jason K Sa; Michael Schuster; Brian L Shaw; Susan C Short; Peter A Sillevis Smitt; Andrew E Sloan; Marion Smits; Hiromichi Suzuki; Ghazaleh Tabatabai; Erwin G Van Meir; Colin Watts; Michael Weller; Pieter Wesseling; Bart A Westerman; Georg Widhalm; Adelheid Woehrer; W K Alfred Yung; Gelareh Zadeh; Jason T Huse; John F De Groot; Lucy F Stead; Roel G W Verhaak
Journal:  Nature       Date:  2019-11-20       Impact factor: 69.504

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1.  Comprehensive Analysis of the Clinical and Biological Significances of Endoplasmic Reticulum Stress in Diffuse Gliomas.

Authors:  Ruoyu Huang; Guanzhang Li; Kuanyu Wang; Zhiliang Wang; Fan Zeng; Huimin Hu; Tao Jiang
Journal:  Front Cell Dev Biol       Date:  2021-07-09

2.  A novel necroptosis-related gene signature for predict prognosis of glioma based on single-cell and bulk RNA sequencing.

Authors:  Kai Guo; Xinxin Duan; Jiahui Zhao; Boyu Sun; Xiaoming Liu; Zongmao Zhao
Journal:  Front Mol Biosci       Date:  2022-08-30

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Authors:  Feng Xing; Zhijiao Song; Zhongping Cheng
Journal:  Oncol Rep       Date:  2022-09-09       Impact factor: 4.136

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