Construction of Oxidative Stress-Related Genes Risk Model Predicts the Prognosis of Uterine Corpus Endometrial Cancer Patients

Simple Summary Uterine corpus endometrial carcinoma (UCEC) is the fifth most common malignancy and has become one of the most frequent gynecological cancers in women. In UCEC, a typical symptom of irregular vaginal bleeding usually occurs, leading to the massive release of heme. Then, oxidative stress can be mediated by the degradation products of heme and thus accelerate the development and occurrence of tumors. There are few pieces of research associated with oxidative stress in UCEC. This study aimed to explore the potential link between oxidative stress and UCEC. We discovered 136 oxidative stress-related differentially expressed genes (DEGs) in UCEC, from which we screened 25 prognostic genes significantly related to the overall survival of UCEC patients. Then, a 7-OSRGs-based risk score (H3C1, CDKN2A, STK26, TRPM2, E2F1, CHAC1, MSX1) was generated by Lasso regression. In summary, our results demonstrated that the signature based on OSRGs could serve as a reliable biomarker for predicting the clinical outcome in UCEC. Abstract Oxidative stress contributes significantly to cancer development. Recent studies have demonstrated that oxidative stress could alter the epigenome and, in particular, DNA methylation. This study aimed to explore the potential link between oxidative stress and uterine corpus endometrial carcinoma (UCEC). An analysis of RNA-seq data and relevant clinical information was conducted with data from The Cancer Genome Atlas (TCGA), and oxidative stress genes were obtained from Gene Set Enrichment Analysis (GSEA). Differentially expressed genes (DEGs) in normal and tumor groups of UCEC were analyzed using GO and KEGG enrichment analysis. As a result of survival analysis, Lasso regression analysis of DEGs, a risk score model of oxidative stress-related genes (OSRGs) was constructed. Moreover, this study demonstrated that OSRGs are associated with immune cell infiltration in UCEC, suggesting oxidative stress may play a role in UCEC development by activating immune cells. We discovered 136 oxidative stress-related DEGs in UCEC, from which we screened 25 prognostic genes significantly related to the overall survival of UCEC patients. BCL2A1, CASP6, GPX2, HIC1, IL19, MSX1, RNF183, SFN, TRPM2 and HIST1H3C are associated with a good prognosis while CDKN2A, CHAC1, E2F1, GSDME, HMGA1, ITGA7, MCM4, MYBL2, PPIF, S100A1, S100A9, STK26 and TRIB3 are involved in a poor prognosis in UCEC. A 7-OSRGs-based risk score (H3C1, CDKN2A, STK26, TRPM2, E2F1, CHAC1, MSX1) was generated by Lasso regression. Further, an association was found between H3C1, CDKN2A, STK26, TRPM2, E2F1, CHAC1 and MSX1 expression levels and the immune infiltrating cells, including CD8 T cells, NK cells, and mast cells in UCEC. NFYA and RFX5 were speculated as common transcription factors of CDKN2A, TRPM2, E2F1, CHAC1, and MSX1 in UCEC.


Introduction
Uterine corpus endometrial cancer (UCEC) is the most common gynecological malignancy of the female reproductive tract worldwide, especially in advanced countries [1]. Histologically, UCEC can be classified into three subtypes such as endometrioid, serous, or clear cell, of which endometrioid endometrial carcinoma is the major histological type [2,3]. Although women with UCEC usually have a relatively good prognosis, those with high-risk disease characteristics are more likely to experience recurrences [4]. Due to limited treatment options and the poor prognosis of advanced endometrial cancers, an understanding of the genetic drivers of treatment vulnerability, prognostic predictors, and resistance is crucial [5].
Oxidative stress is due to an imbalance between the production of reactive oxygen species and the antioxidant capacity [6]. Recent research has reported oxidative stress is involved in multiple pathological conditions, such as degenerative diseases, aging, and cancer [7,8]. Signaling pathways associated with cell proliferation are demonstrated to be affected by oxidative stress [9]. As an example, the signaling pathways for epidermal growth factor receptors and its pivotal proteins, including RAS/RAF, MEK, protein kinase C, the mitogen-activated protein kinases ERK1/2, nuclear factor erythroid 2-related factor, phospholipase C and phosphatidylinositol 3-kinase are affected by oxidative stress [10,11]. Moreover, ROS also altered the p53 suppressor gene, which functions as a hub factor in apoptosis. In summary, oxidative stress alters gene expression, cell proliferation, and apoptosis [12][13][14].
It has long been believed that the generation of excessive ROS in response to oxidative stress can lead to cell death and tissue damage, potentially causing cancer [15]. Nevertheless, studies on the effects of oxidative stress on cancer have yielded conflicting results. In breast cancer, it is likely that miR-526b and miR-655 contribute to the induction of oxidative stress by regulating TXNRD1 expression [16], the overexpression of which promotes the invasive capacity of breast cancer cells. In prostate cancer, IL-8 activates the mTOR signaling pathway to defend prostate cancer cells against the oxidative damage induced by GSK-3β [8]. In lung cancer, TWIST2 induces oxidative stress in cancer cells by regulating the FGF21-mediated AMPK/mTOR signaling pathway and prevents lung cancer from progressing [17]. In endometrial cancer, Punnonen et al. discovered superoxide dismutase activity was significantly lower in cancer tissues than in normal endometrium, suggesting that endometrial cancer was related to a damaged enzymic antioxidant defense system [18]. Further, Marta et al. demonstrated a modulated response to oxidative stress facilitated the invasion of endometrial cancer via ETV5 [19]. Besides, oxidative stress has been proven to play an important role in the pathogenesis and progression of endometriosis [20]. Levels of oxidation-related markers are markedly elevated in patients with endometriosis [21]. Subsequently, the upregulation of antioxidant functions in endometriosis may lead to the restoration of cell survival and follow-up malignant transformation [22]. Up to now, studies on the prognostic significance of oxidative stress-related genes in UCEC are very limited. Thus, examining how oxidative stress impacts tumor prognosis by investigating the OSRGs in the UCEC could provide useful therapeutic guidance.
In this work, we obtained RNA sequencing (RNA-seq) data from the TCGA dataset and ultimately identified 136 differentially expressed OSRGs and Gene Ontology (GO), and Kyoto Encyclopedia of Genes and Genomes (KEGG) were then used to analyze the mechanism of action of OSRGs in UCEC. Then, we constructed a prognostic model based on 7-OSRGs (H3C1, CDKN2A, STK26, TRPM2, E2F1, CHAC1, MSX1) by Lasso regression. A comparison of the mutation landscapes was made between high-risk and low-risk groups. Moreover, we conducted an immune-infiltration analysis and transcription factor prediction. In summary, our results demonstrated that the signature based on OSRGs could serve as a reliable biomarker for predicting the clinical outcome in UCEC.

Data Acquisition
From The Cancer Genome Atlas (TCGA) website, we downloaded RNA-Seq data and clinicopathological information of 587 UCEC samples, containing 35 normal samples and 552 tumor samples (https://portal.gdc.cancer.gov/projects/TCGA-UCEC, accessed on 10 July 2022). The OSRGs (n = 666) were obtained from the online GSEA website (http://www.gsea-msigdb.org/gsea/index.jsp, accessed on 10 July 2022) [23]. A total of 548 patients with UCEC were included in the analysis after downloading the corresponding clinical and survival information from the TCGA cohort. R software was used to process and normalize the raw reads.

Differential Gene Expression Screening
By using the "limma" dataset software package, we identified the differentially expressed genes (DEGs) in the UCEC samples and normal samples in the TCGA cohort. Then, we also identified the expression of OSRGs in UCEC samples by the "limma" package. Criteria for screening were a log 2 |FC| of >1.5 and adjusted p values < 0.05, which were defined as the oxidative stress-related DEGs. A Venn diagram was used to illustrate the results, and the R packages "heatmap" and "volcanoes" were utilized to visualize the DEGs.

Functional Enrichment Analysis of DEGs
Analysis of multiple genes was conducted to identify possible biological processes and enrichment pathways of DEGs by using GO and KEGG. Go database focuses on gene characteristics involving cell components, biological processes, and molecular functions at different dimensions and levels. KEGG is a kind of gene annotation database that integrates genomics, chemistry, and systemic functional information. Statistics were considered significant when the adjusted p-value was less than 0.05.

The Prognostic Values of the Oxidative Stress-Related DEGs
In order to determine the key genes associated with the prognosis of patients with UCEC, The TCGA database was searched for the acquisition of prognostic and clinicopathological data of 545 patients with UCEC. The R package "survminer" and "survival" were used to screen prognostic-related genes in UCEC. Further, Kaplan-Meier survival analysis was used to evaluate whether OSRGs influenced overall survival (OS) among patients with UCEC. A p-value < 0.05 was used as the screening standard.

Development of a Prognostic Gene Signature Based on the Oxidative Stress-Related DEGs
Lasso-Cox regression is one of the most commonly used methods for high-dimensional predictor selection. In the current study. A Lasso Cox regression model was analyzed using the R package "glmnet." Based on the minimum criteria, seven genes with nonzero coefficients were selected, and the risk score of a gene signature was calculated using the formula below: Risk Score = ∑ n i X i × Y i (X: coefficient of each gene, Y: gene expression level). The median risk score of each patient was used to determine which patients were low-risk and high-risk. Next, we compared the OS time and survival possibility between groups at low and high risk by the Kaplan-Meier analysis. A 2, 3, 5 year ROC curve was constructed to evaluate the risk score's sensitivity and specificity by the "survival," "survminer," and "timeROC" R packages.

Somatic Mutation Analysis between Two Subgroups
UCEC somatic mutation data were downloaded from the TCGA Data Portal in "maf" format. The "Maftools" package in R software was used to generate waterfall plots. This tool enabled the visualization and summarization of the mutation between low-risk and high-risk groups.

Immune Landscape Differences between Two Subgroups
In order to analyze immune characteristics in UCEC, the expression data were loaded into CIBERSORT (https://cibersort.stanford.edu/, accessed on 15 July 2022) and repeated 1000 times to calculate the proportion of 22 different types of immune cells [12]. Ultimately, our results are presented in a landscape map that shows the relative proportion of 22 immune cell types between the low-and high-risk groups.

Differential Analysis of Immune Cell Infiltration and Immune Checkpoint between Two Subgroups
A CIBERSORT approach combined with the LM22 signature matrix was used to determine differences in immune infiltration between the 2 subtypes. Based on the ESTIMATE algorithm, the stromal scores, immune scores and the ESTIMATE score of TCGA-UCEC samples were calculated. Genes related to immune checkpoints were acquired according to previous research [24]. In addition, we utilized the "GSVA" package to explore the correlation between 7-OSRGs expression and 22 kinds of immune infiltrating cells.

Verification of Prognosis-Related 7-OSRGs Expression
To verify the protein expression of OSRGs expression in normal and tumor tissues, we analyzed data from Human Protein Atlas (HPA) (https://www.proteinatlas.org/, accessed on 15 July 2022) and determined whether the differences in protein expression levels were consistent with the previous mRNA expression from TCGA.

Prediction of Transcription Factors of 7 OSRGs in UCEC
To investigate the upstream regulatory mechanism of the 7 OSRGs selected based on Lasso regression, an online tool, CHEA3 (https://maayanlab.cloud/chea3/, accessed on 1 August 2022), was used to predict the transcription factors of 7 OSRGs in UCEC.

Identification of Oxidative Stress-Related DEGs in UCEC
As a whole, 7905 DEGs were identified with the criteria of log 2 |FC| > 1.5 and a pvalue < 0.05, whereas the expression pattern of DEGs in normal samples and tumor samples is visualized with volcano maps ( Figure 1B). The Venn diagram ( Figure 1C) showed that 136 differentially expressed OSRGs were screened from the overlap of OSRGs and DEGs, and the expression pattern of differentially expressed OSRGs is shown in the hierarchical heatmap ( Figure 1A).

Functional Analysis of Differentially Expressed OSRGs
The most distinct GO category with significant enrichment of OSRGs was identified by GO enrichment analysis. GO annotation revealed that the differentially expressed OSRGs were involved in the cellular intrinsic apoptotic signaling pathway, DNA packaging, chromatin assembly or disassembly, cell adhesion molecule binding, cadherin binding, etc. (Figure 2A-C). Subsequently, we performed KEGG analysis and revealed that the OSR DEGs contributed to systemic lupus erythematosus, viral carcinogenesis transcriptional misregulation in cancer, etc. ( Figure 2D and Table 1).

Functional Analysis of Differentially Expressed OSRGs
The most distinct GO category with significant enrichment of OSRGs was identified by GO enrichment analysis. GO annotation revealed that the differentially expressed OSRGs were involved in the cellular intrinsic apoptotic signaling pathway, DNA packaging, chromatin assembly or disassembly, cell adhesion molecule binding, cadherin binding, etc. (Figure 2A-C). Subsequently, we performed KEGG analysis and revealed that the OSR DEGs contributed to systemic lupus erythematosus, viral carcinogenesis transcriptional misregulation in cancer, etc. ( Figure 2D and Table 1).

Construction and Prognostic Value of Differentially Expressed OSRGs
A total of 25 differentially expressed OSRGs were related to prognosis. An analysis of Lasso regression was performed in order to prevent the prognostic model from being overfit ( Figure 4A-C). Eventually, the corresponding seven OSRGs were selected for the model, which were H3C1, CDKN2A, STK26, TRPM2, E2F1, CHAC1, and MSX1. Furthermore, we were able to calculate the corresponding regression coefficients, which were −0.2438, 0.1117, 0.1156, −0.2271, 0.1264, 0.0195, and −0.0834, respectively. By using the formula above in combination with the beta value of multivariate Cox regression, the risk score formula is as follows:

Construction and Prognostic Value of Differentially Expressed OSRGs
A total of 25 differentially expressed OSRGs were related to prognosis. An analysis of Lasso regression was performed in order to prevent the prognostic model from being overfit ( Figure 4A-C). Eventually, the corresponding seven OSRGs were selected for the model, which were H3C1, CDKN2A, STK26, TRPM2, E2F1, CHAC1, and MSX1. Furthermore, we were able to calculate the corresponding regression coefficients, which were -0.2438, 0.1117, 0.1156, −0.2271, 0.1264, 0.0195, and −0.0834, respectively. By using the formula above in combination with the beta value of multivariate Cox regression, the risk score formula is as follows:  According to the above formula, each UCEC patient's risk score was directly determined. Next, patients were categorized into the high-and low-risk subgroups. High-risk patients' survival rates were lower than those of low-risk patients, according to a Kaplan-Meier analysis. (Figure 5A, log-rank p < 0.001; HR = 3.83, 95% CI = 2.55−5.75). The area under the curve (AUC) for predicting 2-, 3-, and 5-year OS was 0.661, 0.689, and 0.689, respectively ( Figure 5B). As a result, the seven-gene risk model had high accuracy for predicting the OS of UCEC patients. According to the above formula, each UCEC patient's risk score was directly determined. Next, patients were categorized into the high-and low-risk subgroups. High-risk patients' survival rates were lower than those of low-risk patients, according to a Kaplan-Meier analysis. (Figure 5A, log-rank p < 0.001; HR = 3.83, 95% CI = 2.55−5.75). The area under the curve (AUC) for predicting 2-, 3-, and 5-year OS was 0.661, 0.689, and 0.689, respectively ( Figure 5B). As a result, the seven-gene risk model had high accuracy for predicting the OS of UCEC patients.

Mutation Landscape Associated with OSRGs Risk Scores
We compared the mutation landscapes for high-and low-risk groups. showed that TP53 mutation events were more frequent in samples with higher risk while more mutation events of PTEN/PIK3/ARIDIA occurred in samples with low scores. (Figure 6).

Mutation Landscape Associated with OSRGs Risk Scores
We compared the mutation landscapes for high-and low-risk groups. Results showed that TP53 mutation events were more frequent in samples with higher risk scores, while more mutation events of PTEN/PIK3/ARIDIA occurred in samples with lower risk scores. (Figure 6).

Mutation Landscape Associated with OSRGs Risk Scores
We compared the mutation landscapes for high-and low-risk groups. Results showed that TP53 mutation events were more frequent in samples with higher risk scores, while more mutation events of PTEN/PIK3/ARIDIA occurred in samples with lower risk scores. (Figure 6).

Immune Status Analysis
An analysis of the association between OSRGs-related risk and immune status was conducted in the TCGA cohort. The low-risk group exhibited considerably elevated percentages of CD8 T cells. There was a stronger tumor immune response in the low-risk

Immune Status Analysis
An analysis of the association between OSRGs-related risk and immune status was conducted in the TCGA cohort. The low-risk group exhibited considerably elevated per-centages of CD8 T cells. There was a stronger tumor immune response in the low-risk group compared to the high-risk group ( Figure 7B). Immune, ESTIMATE, and stromal scores were used to assess the tumor immune microenvironment, illustrating that OSRG-related risks and immune reactions are negatively correlated ( Figure 7C). In addition, compared to the low-risk group, the high-risk group had significantly lower expression of immune checkpoint-related genes such as CTLA4, HAVCR2, TIGIT, and PDCD1 ( Figure 7D).
Cancers 2022, 14, x 10 of 17 group compared to the high-risk group ( Figure 7B). Immune, ESTIMATE, and stromal scores were used to assess the tumor immune microenvironment, illustrating that OSRGrelated risks and immune reactions are negatively correlated ( Figure 7C). In addition, compared to the low-risk group, the high-risk group had significantly lower expression of immune checkpoint-related genes such as CTLA4, HAVCR2, TIGIT, and PDCD1 (Figure 7D).  In addition, a spearman correlation analysis showed a correlation between H3C1 expression and Th2 cells, NK cells, Th17 cells, and aDC ( Figure 8) . CDKN2A expression level  correlated with macrophages, CD8 T cells, aDC, iDC, NK cd56dim cells, DC, pDC, T cells,  T helper cells, Tcm, Th17 cells, and Th2 cells. STK26 expression level correlated with the  Cytotoxic cells

Identification of Transcription Factors of 7 OSRGs in UCEC
To investigate the upstream regulatory mechanism of the 7 OSRGs selected based on Lasso regression, the CHEA3 website (https://maayanlab.cloud/chea3/, accessed on 10 August 2022) was used to identify transcription factors involved in regulating their expression. In total, 4 transcription factors (CTCF, FOS, NFYA, RFX5) were found, and all showed significant correlations with the 7 OSRGs ( Figure 10A-C). Among the four transcription factors enriched, NFYA and RFX5 showed significantly higher correlation than others, while analysis of expression profiles indicated NFYA and RFX5 were significantly upregulated in UCEC compared to normal samples ( Figure 10D, p < 0.001). Moreover, high expression of NFYA indicated a worse survival outcome of UCEC ( Figure 10E). Cancers 2022, 14, x 12 of 17

Identification of Transcription Factors of 7 OSRGs in UCEC
To investigate the upstream regulatory mechanism of the 7 OSRGs selected based on Lasso regression, the CHEA3 website (https://maayanlab.cloud/chea3/, accessed on 10 August 2022) was used to identify transcription factors involved in regulating their expression. In total, 4 transcription factors (CTCF, FOS, NFYA, RFX5) were found, and all showed significant correlations with the 7 OSRGs ( Figure 10A-C). Among the four transcription factors enriched, NFYA and RFX5 showed significantly higher correlation than others, while analysis of expression profiles indicated NFYA and RFX5 were significantly upregulated in UCEC compared to normal samples ( Figure 10D, p < 0.001). Moreover, high expression of NFYA indicated a worse survival outcome of UCEC ( Figure 10E).

Discussion
Endometrial cancer (UCEC) is the fifth most common malignancy and has become one of the most frequent gynecological cancers in women [25]. The Cancer Genome Atlas

Discussion
Endometrial cancer (UCEC) is the fifth most common malignancy and has become one of the most frequent gynecological cancers in women [25]. The Cancer Genome Atlas (TCGA) project proposed four groups of endometrial cancer ranging from good to poor prognoses: (1) POLE-mutated (POLEmut); (2) hyper-mutated "MSI"; (3) low copy number "NSMP;" and (4) a high number of copies "TP53 mutated" (serous-like) [26].In addition to the excellent prognostic value of the TCGA molecular classification shown for UCEC, deep myometrial invasion (DMI) has been considered a crucial risk factor and influenced the risk of recurrence independently from the TCGA groups [27]. To further improve the clinical applicability of the TCGA classification, A combination of MSH6 and PMS2 may allow reducing the cost without a decrease in diagnostic accuracy, Raffone et al. concluded the combination of MSH6 and PMS2 presented the same sensitivity and specificity as four MMR proteins (MLH1, MSH6, PMS2 and MSH2) [28]. Furthermore, Santoro et al. integrated the TCGA molecular classification in the ESGO/ESTRO/ESP guidelines of endometrial carcinoma and offered new insights for UCEC treatment [29]. Apart from the molecular impact on prognosis, Troisi et al. conducted a metabolomic approach for endometrial cancer screening, which made it possible for the early and non-invasive diagnosis of UCEC by detecting circulating biomarkers [30]. Despite the potential link between oxidative stress and UCEC, there have been few studies focusing on oxidative stress in UCEC up to now.
Oxidative stress (OS) occurs when oxidative and antioxidant processes are out of balance. Various cell types are capable of accumulating persistent ROS, such as endometrial epithelial cells, stromal cells, oocytes and vascular endothelial cells. Internal signaling pathways damage cells and tissues either directly or indirectly, which causes a variety of issues with the female reproductive system [31]. Studies have revealed that oxidative stress and polycystic ovary syndrome (PCOS) are closely connected [32]. Further studies reported that women with PCOS have significantly lower ER, which is closely associated with hyperandrogenemia, metabolic disturbances, and intestinal flora imbalance, ultimately leading to an endometrial oxidative stress imbalance [33]. In UCEC, a typical symptom of irregular vaginal bleeding usually occurs, leading to the massive release of heme. Then, oxidative stress can be mediated by the degradation products of heme and thus accelerate the development and occurrence of tumors [34,35]. However, there are relatively few studies available on endometrial oxidative stress.
In this study, we first identified differentially expressed OSRGs in UCEC based on the TCGA-UCEC project. By performing survival, ROC, and Cox analyses, we found that H3C1, CDKN2A, STK26, TRPM2, E2F1, CHAC1, and MSX1 significantly correlated with the prognosis of patients with UCEC, and thus the seven-gene prognostic model was constructed. There is a significant difference in prognosis between the high-and low-risk groups.
As mentioned above, the seven OSRGs were obtained from the online GSEA website (http://www.gsea-msigdb.org/gsea/index.jsp, accessed on 15 August 2022). As reported in the available literature, CDKN2A, STK26, TRPM2, E2F1 and CHAC1 were associated with oxidative stress. For instance, CDKN2A deficiency inhibits oxidative stress, and the hypermethylation of CDKN2A is correlated with oxidative stress [36,37]. STK26 can be activated by oxidative stress and relocated to the cell periphery and subsequently promotes ezrin/radixin/moesin phosphorylation [38]. TRPM2 channel is proven to play a key role in oxidative stress-induced changes in intracellular Ca 2+ and Zn 2+ homeostasis to mediate oxidative stress-induced cell death [39,40]. E2F1-deficient cells are hypersensitive to oxidative stress due to a defect in cell cycle arrest, and E2F1 sumoylation serves as a protective cellular mechanism during oxidative stress response [41,42]. CHAC1 is tightly associated with oxidative stress and apoptosis by degrading glutathione [43].
Based on the seven-genes risk score generated by Lasso regression, patients were categorized into the high-and low-risk subgroups. The mutation landscapes between the two groups were compared. We found TP53 mutation events were more frequent in samples with higher risk scores, while more mutation events of PTEN/PIK3/ARIDIA occurred in samples with lower risk scores, tentatively demonstrating that our risk model is closely related to the progression of UCEC.
Recently, immunotherapy has become increasingly important for cancer treatment. Physically, the endometrial immune system differs from other immune systems for its two sides: while it protects from infections and sexually transmitted pathogens, it also allows for the implantation of allogenic embryos [44]. In the current study, the immune reaction was negatively correlated with the OSRGs-related risk. Specifically, the expression of CTLA4, HAVCR2, TIGIT, and PDCD1 was significantly lower in the high-risk group. In addition, the low-risk group exhibited considerably elevated percentages of CD8 T cells. There is a solid rationale for using CTLA-4 inhibitors in UCEC, but clinical data about two anti-CTLA-4 monoclonal antibodies, like Ipilimumab and Tremelimumab, have not been reported so far. Moreover, we also demonstrated that the expression levels of the seven OSRGs (H3C1, CDKN2A, STK26, TRPM2, E2F1, CHAC1, and MSX1) significantly correlated with Th2 cells, NK cells, Th17 cells, and aDC levels.
In addition, NFYA and RFX5 were speculated to be common transcription factors of 7 OSRGs in UCEC by the CHEA3 website (https://maayanlab.cloud/chea3, accessed on 15 August 2022). Pan et al. determined that LINC01016-miR-302a-3p/miR-3130-3p/NFYA/SATB1 axis played an essential role in endometrial cancer occurrence [45]. Eugenia et al. recently showed that NF-YA is overexpressed in liver hepatocellular, lung and head and neck squamous cell carcinomas [46][47][48]. In the current study, NFYA showed potential as a therapeutic target for UCEC treatment through general regulation of the expression of CDKN2A, TRPM2, E2F1, CHAC1 and MSX1, which requires further experimental validation and clinical trials.

Conclusions
This study utilized bioinformatics analysis to explore the roles of the OSRGs in UCEC progression. In conclusion, our study constructed a seven-OSRGs model generated by Lasso and confirmed its good prediction accuracy. We demonstrated that oxidative stressrelated genes have the potential to be new biomarkers in predicting the prognosis of UCEC. There are several strengths of this study, including the large sample size, the lengthy followup period, and the extensive prognostic information in the TCGA database. The limitation of this study is the lack of quantitative analysis. Although H3C1, CDKN2A, E2F1, CHAC1 and MSX1 expressions in HPA data were coincident with the TCGA database, further experimental validation and clinical trials should be performed, and an extensive amount of tissue and prognosis data is required for the verification of the risk score model.