scholarly journals Identification of a Gene-Related Risk Signature in Melanoma Patients Using Bioinformatic Profiling

2020 ◽  
Vol 2020 ◽  
pp. 1-13
Author(s):  
Jing Wang ◽  
Peng-Fei Kong ◽  
Hai-Yun Wang ◽  
Di Song ◽  
Wen-Qing Wu ◽  
...  

Introduction. Gene signature has been used to predict prognosis in melanoma patients. Meanwhile, the efficacy of immunotherapy was correlated with particular genes expression or mutation. In this study, we systematically explored the gene expression pattern in the melanoma-immune microenvironment and its relationship with prognosis. Methods. A cohort of 122 melanoma cases with whole-genome microarray expression data were enrolled from the Gene Expression Omnibus (GEO) database. The findings were validated using The Cancer Genome Atlas (TCGA) database. A principal component analysis (PCA), gene set enrichment analysis (GSEA), and gene oncology (GO) analysis were performed to explore the bioinformatic implications. Results. Different gene expression patterns were identified according to the clinical stage. All eligible gene sets were analyzed, and the 8 genes (GPR87, KIT, SH3GL3, PVRL1, ATP1B1, CDAN1, FAU, and TNFSF14) with the greatest prognostic impact on melanoma. A gene-related risk signature was developed to distinguish patients with a high or low risk of an unfavorable outcome, and this signature was validated using the TCGA database. Furthermore, the prognostic significance of the signature between the classified subgroups was verified as an independent prognostic predictor of melanoma. Additionally, the low-risk melanoma patients presented an enhanced immune phenotype compared to that of the high-risk gene signature patients. Conclusions. The gene pattern differences in melanoma were profiled, and a gene signature that could independently predict melanoma patients with a high risk of poor survival was established, highlighting the relationship between prognosis and the local immune response.

2020 ◽  
Vol 10 ◽  
Author(s):  
Qi Wan ◽  
Chengxiu Liu ◽  
Chang Liu ◽  
Weiqin Liu ◽  
Xiaoran Wang ◽  
...  

BackgroundSingle cell sequencing can provide comprehensive information about gene expression in individual tumor cells, which can allow exploration of heterogeneity of malignant melanoma cells and identification of new anticancer therapeutic targets.MethodsSingle cell sequencing of 31 melanoma patients in GSE115978 was downloaded from the Gene Expression Omniniub (GEO) database. First, the limma package in R software was used to identify the differentially expressed metastasis related genes (MRGs). Next, we developed a prognostic MRGs biomarker in the cancer genome atlas (TCGA) by combining univariate cox analysis and the least absolute shrinkage and selection operator (LASSO) method and was further validated in another two independent datasets. The efficiency of MRGs biomarker in diagnosis of melanoma was also evaluated in multiple datasets. The pattern of somatic tumor mutation, immune infiltration, and underlying pathways were further explored. Furthermore, nomograms were constructed and decision curve analyses were also performed to evaluate the clinical usefulness of the nomograms.ResultsIn total, 41 MRGs were screened out from 1958 malignant melanoma cell samples in GSE115978. Next, a 5-MRGs prognostic marker was constructed and validated, which show more effective performance for the diagnosis and prognosis of melanoma patients. The nomogram showed good accuracies in predicting 3 and 5 years survival, and the decision curve of nomogram model manifested a higher net benefit than tumor stage and clark level. In addition, melanoma patients can be divided into high and low risk subgroups, which owned differential mutation, immune infiltration, and clinical features. The low risk subgroup suffered from a higher tumor mutation burden (TMB), and higher levels of T cells infiltrating have a significantly longer survival time than the high risk subgroup. Gene Set Enrichment Analysis (GSEA) revealed that the extracellular matrix (ECM) receptor interaction and epithelial mesenchymal transition (EMT) were the most significant upregulated pathways in the high risk group.ConclusionsWe identified a robust MRGs marker based on single cell sequencing and validated in multiple independent cohort studies. Our finding provides a new clinical application for prognostic and diagnostic prediction and finds some potential targets against metastasis of melanoma.


2021 ◽  
Author(s):  
Eun Jung Kwon ◽  
Hye Ran Lee ◽  
Ju Ho Lee ◽  
Mihyang Ha ◽  
Yun Hak Kim ◽  
...  

Abstract Background: Human papillomavirus (HPV) is the major cause of cervical cancer (CC) etiology; its contribution to head and neck cancer (HNC) incidence is steadily increasing. As individual patients’ response to the treatment of HPV-associated cancer is variable, there is a pressing need for the identification of biomarkers for risk stratification that can help determine the intensity of treatment. Methods: We have previously reported a novel prognostic and predictive indicator (HPPI) scoring system in HPV-associated cancers regardless of the anatomical locations by analyzing the TCGA and GEO databases. In this study, we comprehensively investigated the association of group-specific expression patterns of common differentially expressed genes (DEGs) between high-risk and low-risk groups in HPV-associated CC and HNC, identifying a molecular biomarkers and pathways for the risk stratification. Results: Among the identified 174 DEGs, expression of the genes associated with extracellular matrix (ECM)-receptor interaction pathway (ITGA5, ITGB1, LAMB1, LAMC1) were increased in high-risk groups in both HPV-associated CC and HNC while expression of the genes associated with the T-cell immunity (CD3D, CD3E, CD8B, LCK, and ZAP70) were decreased vise versa. The individual genes showed statistically significant prognostic impact on HPV-associated cancers but not on HPV-negative cancers. The expression levels of identified genes were similar between HPV-negative and HPV-associated high-risk groups with distinct expression patterns only in HPV-associated low-risk groups. Each group of genes showed negative correlations, and distinct patterns of immune cell infiltration in tumor microenvironments. Conclusion: These results identify molecular biomarkers and pathways for risk stratification in HPV-associated cancers regardless of anatomical locations. The identified targets are selectively working in only HPV-associated cancers, but not in HPV-negative cancers indicating possibility of the selective targets governing HPV-infective tumor microenvironments.


Blood ◽  
2016 ◽  
Vol 128 (22) ◽  
pp. 4423-4423 ◽  
Author(s):  
Caoilfhionn Connolly ◽  
Alokkumar Jha ◽  
Alessandro Natoni ◽  
Michael E O'Dwyer

Abstract Introduction Advances in genomics have highlighted the potential for individualized prognostication and therapy in multiple myeloma (MM). Previously developed gene expression signatures have identified patients with high risk (Kuiper et al, Blood 2016) however, they provide few insights into underlying disease biology thereby limiting their use in informing treatment decisions. Glycosylation is deregulated in MM (Glavey et al), and potential consequences include altered cell adhesion, signaling, immune evasion and drug resistance. In this study we have utilized RNA sequencing data from the IA7 CoMMpass cohort to characterize the expression profile of genes involved in glycosylation. This represents a novel approach to identify a distinct molecular pathway related to outcome, which is potentially actionable. Methods A pathway based approach was adopted to evaluate genes implicated in glycosylation, including the generation of selectin ligands. A literature review and KEGG pathway analysis of pathways relating to O-glycans, N-glycans, sialic acid metabolism, glycolipid synthesis and metabolism was completed. RNA Cufflinks-gene level FPKM expression of 458 patients enrolled in the IA7 cohort of the Multiple Myeloma Research Foundation (MMRF) CoMMpass trial (NCT145429) were analysed as derivation cohort. We developed expression cut-offs using a novel approach of adjusted existing linear regression model to define the gene expression cut-off by applying 3rd Quartile data (q1+q2/2-qmin). The analysis of overall survival (OS) was completed using adjusted 'kpas' R-package according to our cut-off model. Association between individual transcripts and OS was analyzed with log-rank test. Genes with p-value <0.2 were used in subsequent prioritization analysis. This cut-off methodology was employed to define the nearest neighbor for a gene for Gene Set Enrichment Analysis (GSEA). As far as 4th neighbor above and below the cut off was used to have centrally driven gene selection method for prioritization. The gene signature was validated in GSE2658 (Shaughnessy et al) dataset. Results Initial analysis yielded 184 prospective genes. 147 were significant on univariate analysis. Following further prioritization of these genes, we identified thirteen genes that had significant impact upon outcomes (GiMM13). Figure 1 reveals that GiMM13 signature has a significant correlation with inferior OS (HR 4.66 p-value 0.022). The prognostic impact of stratifying GiMM13 positive (High risk) or GiMM13 negative (Low risk) by ISS stage was evaluated. In Table 1. Kaplan Meier estimates generated for GiMM13 (High) or GiMM13 (Low) stratified by ISS are compared statistically using the log rank test. The prognostic ability of GiMM13 to synthesize distinct subgroups relative to each ISS stage is shown in Figure 2. ISS1-Low is the the lowest risk group with best prognosis. Hazard ratios relative to the ISS1-Low group were 1.8, p-value 0.029 (ISS2-Low), 2.1, p-value 0.031 (ISS3-Low), 4.3, p-value 0.04 (ISS1-HR), 5.9, p-value 0.039 (ISS2-HR) and 3.1, p-value 0.001 (ISS3-HR). The GiMM13 signature enhances the prognostic ability of ISS to identify patients with inferior or superior outcomes respectively. Conclusion While the therapeutic armamentarium for MM has expanded considerably, the significant molecular heterogeneity in the disease still poses a significant challenge. Our data suggests aberrant transcription of glycosylation genes, involved predominantly in selectin ligand synthesis, is associated with inferior survival outcomes and may help identify patients likely to benefit from treatment with agents targeting aberrant glycosylation, e.g. E-selectin inhibitor. Consistent with recent findings in chemoresistant minimal residual disease (MRD) (Paiva et al, Blood 2016), it would appear that O-glycosylation, rather than N-glycosylation is most significantly implicated in this biological processes conferring inferior outcomes. In conclusion, using a novel pathway-based approach to identify a 13-gene signature (GiMM13), we have developed a robust tool that can refine patient prognosis and inform clinical decision-making. Acknowledgment These data were generated as part of the Multiple Myeloma Research Foundation Personalized Medicine Initiatives (https://research.themmrf.org and www.themmrf.org). Disclosures O'Dwyer: Glycomimetics: Consultancy, Honoraria, Research Funding; Celgene: Consultancy, Honoraria, Research Funding; Janssen: Consultancy, Honoraria, Research Funding.


2021 ◽  
Vol 14 (1) ◽  
Author(s):  
Wei Hu ◽  
Mingyue Li ◽  
Qi Zhang ◽  
Chuan Liu ◽  
Xinmei Wang ◽  
...  

Abstract Background Copy number variation (CNVs) is a key factor in breast cancer development. This study determined prognostic molecular characteristics to predict breast cancer through performing a comprehensive analysis of copy number and gene expression data. Methods Breast cancer expression profiles, CNV and complete information from The Cancer Genome Atlas (TCGA) dataset were collected. Gene Expression Omnibus (GEO) chip data sets (GSE20685 and GSE31448) containing breast cancer samples were used as external validation sets. Univariate survival COX analysis, multivariate survival COX analysis, least absolute shrinkage and selection operator (LASSO), Chi square, Kaplan-Meier (KM) survival curve and receiver operating characteristic (ROC) analysis were applied to build a gene signature model and assess its performance. Results A total of 649 CNV related-differentially expressed gene obtained from TCGA-breast cancer dataset were related to several cancer pathways and functions. A prognostic gene sets with 9 genes were developed to stratify patients into high-risk and low-risk groups, and its prognostic performance was verified in two independent patient cohorts (n = 327, 246). The result uncovered that 9-gene signature could independently predict breast cancer prognosis. Lower mutation of PIK3CA and higher mutation of TP53 and CDH1 were found in samples with high-risk score compared with samples with low-risk score. Patients in the high-risk group showed higher immune score, malignant clinical features than those in the low-risk group. The 9-gene signature developed in this study achieved a higher AUC. Conclusion The current research established a 5-CNV gene signature to evaluate prognosis of breast cancer patients, which may innovate clinical application of prognostic assessment.


2020 ◽  
Vol 2020 ◽  
pp. 1-9 ◽  
Author(s):  
Jia Li ◽  
Huiyu Wang ◽  
Zhaoyan Li ◽  
Chenyue Zhang ◽  
Chenxing Zhang ◽  
...  

Purpose. Establishing prognostic gene signature to predict clinical outcomes and guide individualized adjuvant therapy is necessary. Here, we aim to establish the prognostic efficacy of a gene signature that is closely related to tumor immune microenvironment (TIME). Methods and Results. There are 13,035 gene expression profiles from 130 tumor samples of the non-small cell lung cancer (NSCLC) in the data set GSE103584. A 5-gene signature was identified by using univariate survival analysis and Least Absolute Shrinkage and Selection Operator (LASSO) to build risk models. Then, we used the CIBERSORT method to quantify the relative levels of different immune cell types in complex gene expression mixtures. It was found that the ratio of dendritic cells (DCs) activated and mast cells (MCs) resting in the low-risk group was higher than that in the high-risk group, and the difference was statistically significant (P<0.001 and P=0.03). Pathway enrichment results which were obtained by performing Gene Set Variation Analysis (GSVA) showed that the high-risk group identified by the 5-gene signature had metastatic-related gene expression, resulting in lower survival rates. Kaplan–Meier survival results showed that patients of the high-risk group had shorter disease-free survival (DFS) and overall survival (OS) than those of the low-risk group in the training set (P=0.0012 and P<0.001). The sensitivity and specificity of the gene signature were better and more sensitive to prognosis than TNM (tumor/lymph node/metastasis) staging, in spite of being not statistically significant (P=0.154). Furthermore, Kaplan–Meier survival showed that patients of the high-risk group had shorter OS and PFS than those of the low-risk group (P=0.0035, P<0.001, and P<0.001) in the validating set (GSE31210, GSE41271, and TCGA). At last, univariate and multivariate Cox proportional hazard regression analyses were used to evaluate independent prognostic factors associated with survival, and the gene signature, lymphovascular invasion, pleural invasion, chemotherapy, and radiation were employed as covariates. The 5-gene signature was identified as an independent predictor of patient survival in the presence of clinical parameters in univariate and multivariate analyses (P<0.001) (hazard ratio (HR): 3.93, 95% confidence interval CI (2.17–7.1), P=0.001, (HR) 5.18, 95% CI (2.6995–9.945), P<0.001), respectively. Our 5-gene signature was also related to EGFR mutations (P=0.0111), and EGFR mutations were mainly enriched in low-risk group, indicating that EGFR mutations affect the survival rate of patients. Conclusion. The 5-gene signature is a powerful and independent predictor that could predict the prognosis of NSCLC patients. In addition, our gene signature is correlated with TIME parameters, such as DCs activated and MCs resting. Our findings suggest that the 5-gene signature closely related to TIME could predict the prognosis of NSCLC patients and provide some reference for immunotherapy.


Blood ◽  
2004 ◽  
Vol 104 (11) ◽  
pp. 571-571 ◽  
Author(s):  
Susanne Schnittger ◽  
Viola Conrad ◽  
Alexander Kohlmann ◽  
Martin Dugas ◽  
Sylvia Merk ◽  
...  

Abstract Approximately 50% of acute myeloid leukemia (AML) have no karyotype changes or those with yet unknown prognostic significance. They are usually pooled together into the prognostically intermediate group. Here we approached the role of CEBPA mutations within this AML subgroup. In total, 255 AML, 237 with normal and 18 with “other” intermediate risk group karyotypes were screened for CEBPA mutations by sequencing. The total incidence of CEBPA mutations was 51/255 (20%) (48/237 (20.3%) in the normal and 3/18 (16.7%) in the “other” karyotypes). Most of the patients showed an M1 (n=16), or M2 (n=25) morphology, but there were also some with FAB M0 (n=1), M4 (n=4), M5 (n=3), and M6 (n=2). CEBPA+ cases were younger as compared to the CEBPA- cases (54.7 vs. 60.0, p=0.023). Leukocyte und platelet counts were similar. Clinical follow up data were available for 191 (37 mutated, 154 unmutated) patients. OS and EFS were significantly better in the patients with compared to those without CEBPA mutations (median 1092 vs. 259 days, p=0.0072; 375 vs. 218 days, p=0.0102, respectively). In addition, 18/42 (42.9%) of CEBPA+ cases had an FLT3-LM, 4/40 (10%) an FLT3-TKD, 4/41 (9.8%) an MLL-PTD, 3/34 (8.8%) an NRAS, 2/40 (5%) a KITD816 mutation. In four cases 2 additional mutations were detected: 1 x FLT3-LM+KITD816, 1 x FLT3-LM+FLT3-TKD, and 2 x MLL-PTD+FLT3-LM. The favorable prognostic impact of CEBPA mutations was not affected by additional mutations. Furthermore, 22 of the CEBPA+ case were analyzed by microarray analysis using the U133A+B array set (Affymetrix) and compared to the expression profile of 131 CEBPA- normal karyotype AML, as well as to 204 AML characterized by the reciprocal translocations t(15;17) (n=43), t(8;21) (n=36), inv(16) (n=48), t(11q23) (n=50), inv(3) (n=27). The discrimination of CEBPA+ cases and reciprocal translocations revealed a classification accuracy of 94.7% with 75% sensitivity and 98.5% specificity. However, the CEPBA+ cases did not show a specific expression pattern within the total group with normal karyotype and could not be discriminated from CEBPA- cases. By use of PCA and hierachical cluster analysis it was obvious that the CEBPA+ cases separated into two domains. One subcluster (cluster 1) was distributed among the cases with CEBPA- normal karyotype AML. A second cluster (cluster 2) was very close to the t(8;21) cases. Accordingly, cases of cluster 2 similar to t(8;21) and in contrast to cluster 1 highly expressed MPO and had low expression of HOXA3, HOXA7, HOXA9, HOXB4, HOXB6, and PBX3. Using the top 100 differentially expressed genes and applying 100 runs of SVM with 2/3 of samples being randomly selected as training set and 1/3 as test set samples, groups A and B could be classified with an overall accuracy of 100% (sensitivity 100% and specificity 100%). A detailed analysis of the two subclusters showed that all 8 cases of cluster 1 revealed mutations in the TAD2 domain of CEBPA and 6 of these had an FLT3-LM in addition. In contrast, 12/14 cases of cluster 2 had mutations that lead to an N-terminal stop and only 2 had an FLT3-LM. Thus these two subclusters have biological differences that may explain the different gene expression patterns. Despite the different functional consequences of the mutations in the two CEBPA-clusters no differences with respect to FAB type and prognosis were found between cluster 1 and 2.


Blood ◽  
2014 ◽  
Vol 124 (21) ◽  
pp. 1071-1071
Author(s):  
Chiara Palmi ◽  
Daniela Silvestri ◽  
Ilaria Bronzini ◽  
Gunnar Cario ◽  
Angela Savino ◽  
...  

Abstract Introduction: Although risk-adapted therapy improved the prognosis of pediatric T-ALL in the last decades, patients with T-ALL still have a worse outcome compared to B Cell Precursor (BCP)-ALL, and therefore they would benefit from the identification of new prognostic markers for a better treatment stratification and novel strategies to complement current chemotherapy regimens. Among newly reported genomic abnormalities, a subset of BCP-ALL patients is characterized by the over-expression of the Cytokine Receptor-like Factor 2 (CRLF2) gene, due to either an intra-chromosomal deletion causing the P2RY8-CRLF2 fusion or the IGH@-CRLF2 translocation. These two CRLF2 rearrangements were shown to correlate with poor outcome in BCP-ALL patients. In T-ALL, alterations of CRLF2 were not reported yet, but recently, mutations in its partner IL7Rα have been identified in about 10% of T-ALL patients. Aim: To estimate the incidence of CRLF2 aberrations and their prognostic value in pediatric T-ALL. Methods: We analyzed CRLF2 gene expression in 120 T-ALL patients, consecutively enrolled in the AIEOP-BFM ALL2000 study in Italian centers (AIEOP) from September 2000 to July 2005, and, as a validation cohort, in 92 consecutive patients treated with the same protocol in German centers (BFM-G), from July 1999 to December 2004. CRLF2 transcript levels were analyzed by RQ-PCR. Relative gene expression of CRLF2 was quantified by the 2-DDCt method. The DDCt for AIEOP and BFM-G samples was referred to the median DCt of their respective cohort. Results: An heterogeneous expression of CRLF2 was observed among AIEOP T-ALL patients (range: 0.06 to 82 fold change). Seventeen patients (14.2%) presented an expression 5 times higher than the median (‘CRLF2-high’). Interestingly, none of the CRLF2-high cases resulted to be positive for P2RY8-CRLF2 fusion, 1/5 was positive for the IGH@ translocation and 1/7 showed a supernumerary X chromosome. JAK2 and CRLF2 mutations were absent in all 120 cases, while IL7R mutations were detected in 5/107 patients (4.7%), but unexpectedly they were not associated to CRLF2 over-expression. CRLF2-high patients had a significantly inferior 5-y EFS (41.2%±11.9 vs. 68.9%±4.6, p=0.006) and an increased, although not statistically significant, cumulative incidence of relapse (CIR) compared to CRLF2-low patients (41.2%±11.9 vs. 26.3%±4.3, p=0.17). The prognostic value of CRLF2 over-expression was confirmed in the BFM-G cohort (5-y EFS in 12 CRLF2-high patients was 50.0%±14.4 vs 83.8%±4.1, p-=0.008; CIR: 33.3%±13.6 vs. 11.3%±3.5, p= 0.06). Interestingly, CRLF2-high patients were more frequently allocated to the high risk (HR) T-ALL subgroup (20.9% in HR vs.8.3% in no-HR in the two cohorts analyzed together). In this subgroup, CRLF2 over-expression was significantly associated to a poor prognosis (5-y EFS: 31.6%±10.7 vs. 62.5%±5.7, p-value=0.008; CIR: 47.4%±11.5 vs. 29.2%±5.4, p=0.14). When analyzed according to prednisone (PDN) response, 17/28 (61%) were prednisone poor responders (PPR), and in the ‘PPR-only’ subgroup (non-HR by other features) 4/9 (44%) CRLF2-high patients relapsed versus 4/36 (11%) CRLF2-low. Cox model analysis adjusted by risk group showed that CRLF2-high expression had a relevant prognostic impact with a 2-fold increased risk of relapse (Hazard ratio 2.12; 95% CI 1.07-4.21; p=0.03). The mechanisms responsible for CRLF2 over-expression in T-ALL and its contribution to the pathogenesis of the disease is still being investigated. Notably, gene set enrichment analysis (GSEA) showed an inverse correlation between the expression of CRLF2 and positive cell cycle regulators, thus suggesting that CRLF2-high blasts have a low proliferating activity and may therefore be less sensitive to conventional chemotherapy. Conclusions: CRLF2 over-expression is a poor prognostic marker not only in BCP-ALL patients, but also in T-ALL, identifying a subset of HR T-ALL patients with extremely severe outcome. Specifically, this marker would allow identifying T-ALL patients that could benefit from alternative therapy, potentially targetting the CRLF2 pathway. Disclosures No relevant conflicts of interest to declare.


2021 ◽  
Vol 2021 ◽  
pp. 1-13
Author(s):  
Chaocai Zhang ◽  
Minjie Wang ◽  
Fenghu Ji ◽  
Yizhong Peng ◽  
Bo Wang ◽  
...  

Introduction. Glioblastoma (GBM) is one of the most frequent primary intracranial malignancies, with limited treatment options and poor overall survival rates. Alternated glucose metabolism is a key metabolic feature of tumour cells, including GBM cells. However, due to high cellular heterogeneity, accurately predicting the prognosis of GBM patients using a single biomarker is difficult. Therefore, identifying a novel glucose metabolism-related biomarker signature is important and may contribute to accurate prognosis prediction for GBM patients. Methods. In this research, we performed gene set enrichment analysis and profiled four glucose metabolism-related gene sets containing 327 genes related to biological processes. Univariate and multivariate Cox regression analyses were specifically completed to identify genes to build a specific risk signature, and we identified ten mRNAs (B4GALT7, CHST12, G6PC2, GALE, IL13RA1, LDHB, SPAG4, STC1, TGFBI, and TPBG) within the Cox proportional hazards regression model for GBM. Results. Depending on this glucose metabolism-related gene signature, we divided patients into high-risk (with poor outcomes) and low-risk (with satisfactory outcomes) subgroups. The results of the multivariate Cox regression analysis demonstrated that the prognostic potential of this ten-gene signature is independent of clinical variables. Furthermore, we used two other GBM databases (Chinese Glioma Genome Atlas (CGGA) and REMBRANDT) to validate this model. In the functional analysis results, the risk signature was associated with almost every step of cancer progression, such as adhesion, proliferation, angiogenesis, drug resistance, and even an immune-suppressed microenvironment. Moreover, we found that IL31RA expression was significantly different between the high-risk and low-risk subgroups. Conclusion. The 10 glucose metabolism-related gene risk signatures could serve as an independent prognostic factor for GBM patients and might be valuable for the clinical management of GBM patients. The differential gene IL31RA may be a potential treatment target in GBM.


2020 ◽  
Author(s):  
Jianing Tang ◽  
Gaosong Wu

Abstract Background Metabolic change is the hallmark of cancer. Even in the presence of oxygen, cancer cells reprogram their glucose metabolism to enhance glycolysis and reduce oxidative phosphorylation. In the present study, we aimed to develop a glycolysis-related gene signature to predict the prognosis of breast cancer patients.Methods Gene expression profiles and clinical data of breast cancer patients were obtained from the GEO database. Univariate, Lasso-penalized, and multivariate Cox analysis were performed to construct the glycolysis-related gene signature.Results A four-gene based signature (ALDH2, PRKACB, STMN1 and ZNF292) was developed to separate patients into high-risk and low-risk groups. Kaplan-Meier survival analysis demonstrated that patients in low-risk group had significantly better prognosis than those in the high-risk group. Time-dependent ROC analysis demonstrated that the glycolysis-related gene signature had excellent prognostic accuracy. We further confirmed the expression of the four prognostic genes in breast cancer and paracancerous tissues samples using qRT-PCR analysis. Expression level of PRKACB was higher in paracancerous tissues, while STMN1 and ZNF292 were overexpressed in tumor samples. No difference was found in ALDH2 expression. The same results were observed in the IHC data from the human protein atlas. Global proteome data of 105 TCGA breast cancer samples obtained from the Clinical Proteomic Tumor Analysis Consortium were used to evaluate the prognostic value of their protein levels. Consistently, high expression of PRKACB protein level was associated with better prognosis, while high ZNF292 and STMN1 protein expression levels indicated poor prognosis.Conclusions The glycolysis-related gene signature might provide an effective prognostic predictor and a new view for individual treatment of breast cancer patients.


2021 ◽  
Vol 2021 ◽  
pp. 1-14
Author(s):  
Xiaotao Jiang ◽  
Qiaofeng Yan ◽  
Linling Xie ◽  
Shijie Xu ◽  
Kailin Jiang ◽  
...  

Background. Gastric cancer (GC), an extremely aggressive tumor with a very different prognosis, is the third leading cause of cancer-related mortality. We aimed to construct a ferroptosis-related prognostic model that can be distinguished prognostically. Methods. The gene expression and the clinical data of GC patients were downloaded from The Cancer Genome Atlas (TCGA) and Gene Expression Omnibus database (GEO). The ferroptosis-related genes were obtained from the FerrDb. Using the “limma” R package and univariate Cox analysis, ferroptosis-related genes with differential expression and prognostic value were identified in the TCGA cohort. Last absolute shrinkage and selection operator (LASSO) Cox regression was applied to shrink ferroptosis-related predictors and construct a prognostic model. Functional enrichment, ESTIMATE algorithm, and single-sample gene set enrichment analysis (ssGSEA) were applied for exploring the potential mechanism. GC patients from the GEO cohort were used for validation. Results. An 8-gene prognostic model was constructed and stratified GC patients from TCGA and meta-GEO cohort into high-risk groups or low-risk groups. GC patients in high-risk groups have significantly poorer OS compared with those in low-risk groups. The risk score was identified as an independent predictor for OS. Functional analysis revealed that the risk score was mainly associated with the biological function of extracellular matrix (ECM) organization and tumor immunity. Conclusion. In conclusion, the ferroptosis-related model can be utilized for the clinical prognostic prediction in GC.


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