Fengling Shao's research while affiliated with Chongqing Medical University and other places

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Publications (11)


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Work process.
Mendelian randomization of 123 plasma circulating metabolites with nephritis.
Mendelian randomization results of inverse variance weighted (IVW) estimates of associations between 249 plasma circulating metabolites and nephritis.
Inverse variance weighting (IVW) estimated risk associations between lipid-lowering medications and changes in plasma omega-3 polyunsaturated fatty acid levels and nephritis.

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Causal association of plasma circulating metabolites with nephritis: a Mendelian randomization study
  • Article
  • Full-text available

May 2024

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2 Reads

Frontiers in Nutrition

Frontiers in Nutrition

Fengling Shao

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Yingling Yao

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Dunchu Weng

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[...]

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Yajun Xie

Background Nephritis is a pivotal catalyst in chronic kidney disease (CKD) progression. Although epidemiological studies have explored the impact of plasma circulating metabolites and drugs on nephritis, few have harnessed genetic methodologies to establish causal relationships. Methods Through Mendelian randomization (MR) in two substantial cohorts, spanning large sample sizes, we evaluated over 100 plasma circulating metabolites and 263 drugs to discern their causal effects on nephritis risk. The primary analytical tool was the inverse variance weighted (IVW) analysis. Our bioinformatic scrutiny of GSE115857 (IgA nephropathy, 86 samples) and GSE72326 (lupus nephritis, 238 samples) unveiled anomalies in lipid metabolism and immunological characteristics in nephritis. Thorough sensitivity analyses (MR-Egger, MR-PRESSO, leave-one-out analysis) were undertaken to verify the instrumental variables’ (IVs) assumptions. Results Unique lipoprotein-related molecules established causal links with diverse nephritis subtypes. Notably, docosahexaenoic acid (DHA) emerged as a protective factor for acute tubulointerstitial nephritis (ATIN) (OR1 = 0.84, [95% CI 0.78–0.90], p1 = 0.013; OR2 = 0.89, [95% CI 0.82–0.97], p2 = 0.007). Conversely, multivitamin supplementation minus minerals notably increased the risk of ATIN (OR = 31.25, [95% CI 9.23–105.85], p = 0.004). Reduced α-linolenic acid (ALA) levels due to lipid-lowering drugs were linked to both ATIN (OR = 4.88, [95% CI 3.52–6.77], p < 0.001) and tubulointerstitial nephritis (TIN) (OR = 7.52, [95% CI 2.78–20.30], p = 0.042). While the non-renal drug indivina showed promise for TIN treatment, the use of digoxin, hydroxocobalamin, and liothyronine elevated the risk of chronic tubulointerstitial nephritis (CTIN). Transcriptome analysis affirmed that anomalous lipid metabolism and immune infiltration are characteristic of IgA nephropathy and lupus nephritis. The robustness of these causal links was reinforced by sensitivity analyses and leave-one-out tests, indicating no signs of pleiotropy. Conclusion Dyslipidemia significantly contributes to nephritis development. Strategies aimed at reducing plasma low-density lipoprotein levels or ALA supplementation may enhance the efficacy of existing lipid-lowering drug regimens for nephritis treatment. Renal functional status should also be judiciously considered with regard to the use of nonrenal medications.

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HMGCS2 serves as a potential biomarker for inhibition of renal clear cell carcinoma growth

September 2023

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22 Reads

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2 Citations

Scientific Reports

3-Hydroxymethylglutaryl-CoA synthase 2 (HMGCS2) is the rate-limiting enzyme for ketone body synthesis, and most current studies focus on mitochondrial maturation and metabolic reprogramming. The role of HMGCS2 was evaluated in a pan-cancer multi-database using R language, and HMGCS2 was lowly expressed or not differentially expressed in all tumor tissues compared with normal tissues. Correlation analysis of clinical case characteristics, genomic heterogeneity, tumor stemness, and overall survival revealed that HMGCS2 is closely related to clear cell renal cell carcinoma (KIRC). Single-cell sequencing data from normal human kidneys revealed that HMGCS2 is specifically expressed in proximal tubular cells of normal adults. In addition, HMGCS2 is associated with tumor immune infiltration and microenvironment, and KIRC patients with low expression of HMGCS2 have worse prognosis. Finally, the results of cell counting kit 8 assays, colony formation assays, flow cytometry, and Western blot analysis suggested that upregulation of HMGCS2 increased the expression of key tumor suppressor proteins, inhibited the proliferation of clear cell renal cell carcinoma cells and promoted cell apoptosis. In conclusion, HMGCS2 is abnormally expressed in pan-cancer, may play an important role in anti-tumor immunity, and is expected to be a potential tumor prognostic marker, especially in clear cell renal cell carcinoma.


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HMGCS2 serves as a potential biomarker for inhibition of renal clear cell carcinoma growth

February 2023

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40 Reads

3-Hydroxymethylglutaryl-CoA synthase 2 (HMGCS2) is the rate-limiting enzyme for ketone body synthesis, and most current studies focus on mitochondrial maturation and metabolic reprogramming. The role of HMGCS2 was evaluated in a pan-cancer multi-database using R language, and HMGCS2 was lowly expressed or not differentially expressed in all tumor tissues compared with normal tissues. Correlation analysis of clinical case characteristics, genomic heterogeneity, tumor stemness, and overall survival revealed that HMGCS2 is closely related to clear cell renal cell carcinoma (KIRC). Single-cell sequencing data from normal human kidneys revealed that HMGCS2 is specifically expressed in proximal tubular cells of normal adults. In addition, HMGCS2 is associated with tumor immune infiltration and microenvironment, and KIRC patients with low expression of HMGCS2 have worse prognosis. Finally, the results of cell counting kit 8 assays, colony formation assays, flow cytometry, and Western blot analysis suggested that upregulation of HMGCS2 increased the expression of key tumor suppressor proteins, inhibited the proliferation of clear cell renal cell carcinoma cells and promoted cell apoptosis. In conclusion, HMGCS2 is abnormally expressed in pan-cancer, may play an important role in anti-tumor immunity, and is expected to be a potential tumor prognostic marker, especially in clear cell renal cell carcinoma.


Expression of ADRB2 in children with neuroblastoma and its influence on prognosis

November 2022

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15 Reads

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1 Citation

Objective Neuroblastoma (NB), originating from sympathetic spinal tissue, is a serious threat to the life of children. Especially in the high-risk group, an overall five-year survival rate less than 50% indicates an extremely poor clinical outcome. Here, the expression the of β -2 adrenergic (ADRB2) receptor gene in tumor tissues of children with NB was detected and the correlation between its expression and clinical characteristics and prognosis was analyzed. Methods Forty-five tumor tissue samples and forty-eight paraffin sections of NB were obtained from Children’s Hospital of Chongqing Medical University from 2015 to 2021. Real-time fluorescence quantitative polymerase chain reaction (RT–qPCR) was utilized to detect the expression of ADRB2 at the mRNA level and immunohistochemistry (IHC) at the protein level. Results For the RT–qPCR, the analysis showed that the expression of ADRB2 in the high-risk group was significantly lower ( P = 0.0003); in addition, there were also statistically significant differences in Shimada classification ( P = 0.0025) and N-MYC amplification ( P = 0.0011). Survival prognosis analysis showed that the prognosis was better with high ADRB2 expression ( P = 0.0125), and the ROC curve showed that ADRB2 has a certain accuracy in predicting prognosis (AUC = 0.707, CI: 0.530–0.884). Moreover, the expression of ADRB2, N-MYC amplification and bone marrow metastasis were the factors that independently affected prognosis, and at the protein level, the results showed that the differential expression of ADRB2 was conspicuous in risk ( P = 0.0041), Shimada classification ( P = 0.0220) and N-MYC amplification ( P = 0.0166). In addition, Kaplan–Meier curves showed that the prognosis in the group with high expression of ADRB2 was better ( P = 0.0287), and the ROC curve showed that the score of ADRB2 had poor accuracy in predicting prognosis (AUC = 0.662, CI: 0.505–0.820). Conclusion ADRB2 is a protective potential biomarker and is expected to become a new prognostic biomolecular marker of NB.


HPGDS is a novel prognostic marker associated with lipid metabolism and aggressiveness in lung adenocarcinoma

October 2022

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35 Reads

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7 Citations

Background Lung adenocarcinoma (LUAD) is the most common respiratory globallywith a poor prognosis. Lipid metabolism is extremely important for the occurrence and development of cancer. However, the role of genes involved in lipid metabolism in LUAD development is unclear. We aimed to identify the abnormal lipid metabolism pathway of LUAD, construct a novel prognostic model of LUAD, and discover novel biomarkers involved in lipid metabolism in LUAD. Methods Based on differentially expressed genes involved in lipid metabolism in LUAD samples from The Cancer Genome Atlas (TCGA), abnormal lipid metabolism pathways in LUAD were analyzed. The lasso penalized regression analysis was performed on the TCGA cohort (training set) to construct a risk score formula. The predictive ability of the risk score was validated in the Gene Expression Omnibus (GEO) dataset (validation set) using Kaplan-Meier analysis and ROC curves. Finally, based on CRISPR gene editing technology, hematopoietic prostaglandin D synthase (HPGDS) was knocked out in A549 cell lines, the changes in lipid metabolism-related markers were detected by western blotting, and the changes in cell migration were detected by transwell assay. Results Based on the differential genes between lung cancer tissue and normal tissue, we found that the arachidonic acid metabolism pathway is an abnormal lipid metabolism pathway in both lung adenocarcinoma and lung squamous cell carcinoma. Based on the sample information of TCGA and abnormally expressed lipid metabolism-related genes, a 9-gene prognostic risk score was successfully constructed and validated in the GEO dataset. Finally, we found that knockdown of HPGDS in A549 cell lines promoted lipid synthesis and is more invasive than in control cells. Rescue assays showed that ACSL1 knockdown reversed the pro-migration effects of HPGDS knockdown. The knockdown of HPGDS promoted migration response by upregulating the expression of the lipid metabolism key enzymes ACSL1 and ACC. Conclusion The genes involved in lipid metabolism are associated with the occurrence and development of LUAD. HPGDS can be a therapeutic target of a potential lipid metabolism pathway in LUAD, and the therapeutic target of lipid metabolism genes in LUAD should be studied further.


Figure 1. Pan-cancer analysis of CHD5 expression. (A) Differential expression of CHD5 between tumor and normal tissues in pan-cancer analysis. (B,C) Expression of CHD5 in various cancer cell lines. (D) Cellular localization of CHD5 (p < 0.05). * p < 0.05; ** p < 0.01, **** p < 0.0001.
Figure 3. Correlations between CHD5 expression and pan-cancer clinicopathology. (A) The expression of CHD5 correlates with patient's age in Glioma (p = 0.02), KIRC (p = 0.03), UCS (p = 0.03) and MESO (p = 0.01). (B) The expression of CHD5 was correlated with gender (p < 0.05). (C) CHD5 was significantly differentially expressed across different stages of Glioma (p = 0.04). * p < 0.05.
Figure 4. Correlation between CHD5 expression and CNV, TMB, and MSI in various cancer types. (A) Landscape of CHD5 mutation in 30 cancer types, (B) The CNV landscape of CHD5 mutations in 32 types of cancers, (C,D) Spearman correlation analysis for TMB, MSI and CHD5 gene expression. In the figure, the horizontal axis represents the correlation coefficient between the genes and TMB, and the vertical axis represents the different tumors. The size of the dots in the figure represents the correlation coefficient, and the different colors represent the significance of the p value. The bluer the color in the diagram, the smaller the p value. * p < 0.05, ** p < 0.01, *** p < 0.001, **** p < 0.0001.
Figure 5. Relationship between CHD5 expression and tumor microenvironment factors. (A) CHD5 expression was negatively correlated with the stroma scores in Glioma, SARC, KIPAN, and ACC, and was positively correlated with the stroma scores in PRAD and CHOL. (B) CHD5 expression was negatively correlated with the immune scores in Glioma, LGG, SARC, KIRP, KIPAN and ACC.
Figure 6. Pan-cancer analysis of the relationship between CHD5 expression and immune cell infiltration. (A) Correlation between CHD5 expression and B cell, CD4+T cell, CD8+ T cell, neutrophil, macrophage, DC infiltration in each patient. (B) CHD5 expression was significantly associated with immune cell infiltration in 41 types of cancers. * p < 0.05; ** p < 0.01, *** p < 0.001, **** p < 0.0001.
Pan-Cancer Analysis Identifies CHD5 as a Potential Biomarker for Glioma

July 2022

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14 Reads

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8 Citations

International Journal of Molecular Sciences

The chromodomain helicase DNA binding domain 5 (CHD5) is required for neural development and plays an important role in the regulation of gene expression. Although CHD5 exerts a broad tumor suppressor effect in many tumor types, its specific functions regarding its expression levels, and impact on immune cell infiltration, proliferation and migration in glioma remain unclear. Here, we evaluated the role of CHD5 in tumor immunity in a pan-cancer multi-database using the R language. The Cancer Genome Atlas (TCGA), Genotype Tissue Expression (GTEx), and Cancer Cell Lines Encyclopedia (CCLE) datasets were utilized to determine the role of CHD5 in 33 types of cancers, including the expression level, prognosis, tumor progression, and immune microenvironment. Furthermore, we explored the effect of CHD5 on glioma proliferation and migration using the cell counting kit 8 (CCK-8) assay, transwell assays and western blot analysis. The findings from our pan-cancer analysis showed that CHD5 was differentially expressed in the tumor tissues as compared to the normal tissues. Survival analysis showed that CHD5 was generally associated with the prognosis of glioblastoma (GBM), low Grade Glioma (LGG) and neuroblastoma, where the low expression of CHD5 was associated with a worse prognosis in glioma patients. Then, we confirmed that the expression level of CHD5 was associated with tumor immune infiltration and tumor microenvironment, especially in glioma. Moreover, si-RNA mediated knockdown of CHD5 promoted the proliferation and migration of glioma cells in vitro. In conclusion, CHD5 was found to be differentially expressed in the pan-cancer analysis and might play an important role in antitumor immunity. CHD5 is expected to be a potential tumor prognostic marker, especially in glioma.


Figure 2 Trajectory of malignant tumor cells. (A) Copy-number variation (CNV) analysis was performed for NEs. (BeD) The Monocle 2 trajectory plot shows the dynamics of ECs, fibroblasts, NEs and steroidogenic cells. (E) Heatmap hierarchical clustering shows genes and pathways regulated during the NE pseudotime trajectory. (F) DEGs were tracked along the pseudotime curve. (G) The CNV trees for fibroblasts, ECs, NEs. (H) UMAP plots are shown for fibroblasts in all samples, and for cells that were classified into four subclusters.
Single-cell landscape analysis reveals distinct regression trajectories and novel prognostic biomarkers in primary neuroblastoma

February 2022

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82 Reads

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14 Citations

Genes & Diseases

Neuroblastoma (NB), which is the most common pediatric extracranial solid tumor, varies widely in its clinical presentation and outcome. NB has a unique ability to spontaneously differentiate and regress, suggesting a potential direction for therapeutic intervention. However, the underlying mechanisms of regression remain largely unknown, and more reliable prognostic biomarkers are needed for predicting trajectories for NB. We performed scRNA-seq analysis on 17 NB clinical samples and three peritumoral adrenal tissues. Primary NB displayed varied cell constitution, even among tumors of the same pathological subtype. Copy number variation patterns suggested that neuroendocrine cells represent the malignant cell type. Based on the differential expression of sets of related marker genes, a subgroup of neuroendocrine cells was identified and projected to differentiate into a subcluster of benign fibroblasts with highly expressed CCL2 and ZFP36, supporting a progressive pathway of spontaneous NB regression. We also identified prognostic markers (STMN2, TUBA1A, PAGE5, and ETV1) by evaluating intra-tumoral heterogeneity. Lastly, we determined that ITGB1 in M2-like macrophages was associated with favorable prognosis and may serve as a potential diagnostic marker and therapeutic target. In conclusion, our findings reveal novel mechanisms underlying regression and potential prognostic markers and therapeutic targets of NB.


a Volcano plot of differentially expressed long noncoding RNAs (lncRNAs) between metastatic osteosarcoma samples and non-metastatic osteosarcoma samples; a total of 75 lncRNAs differentially expressed lncRNAs were identified, including 63 downregulated lncRNAs and 12 upregulated lncRNAs (cut-off criteria: log foldchange(FC) > 1, adjusted p < 0.05). Red represents upregulated lncRNAs, and green represents down-regulated lncRNAs. b Hierarchical clustering analysis of differentially expressed lncRNAs. Red represents upregulated lncRNAs, and green represents down-regulated lncRNAs. LncRNA, long noncoding RNA
Prognostic value of the five-lncRNA signature in patients with osteosarcoma. Risk score distribution (a), expression profiles of the five lncRNAs (b), and survival status (c)
Kaplan–Meier analysis of the overall survival of osteosarcoma patients classified into high-risk and low-risk groups based on the five-lncRNA signature (a). Receiver operating characteristic (ROC) curve analysis of the five-lncRNA signature for predicting the 5-year survival of patients with osteosarcoma (b). AUC, area under the curve; lncRNA, long noncoding RNA
Functional enrichment analysis of the five lncRNAs in the signature based on their correlated protein-coding genes (PCGs). Biological processes (BPs) in the gene ontology (GO) analysis (a). Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway analysis (b)
Protein–protein interaction network of lncRNA-correlated PCGs shown by STRING (a). Network nodes represent proteins, and edges represent protein–protein associations. The bar plot shows the top 10 ranked proteins (b)
A five metastasis-related long noncoding RNA risk signature for osteosarcoma survival prediction

May 2021

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34 Reads

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6 Citations

BMC Medical Genomics

Background Osteosarcoma is a highly malignant and common bone tumour with an aggressive disease course and a poor prognosis. Previous studies have demonstrated the relationship between long noncoding RNAs (lncRNAs) and tumorigenesis, metastasis, and progression. Methods We utilized a large cohort from the Therapeutically Applicable Research to Generate Effective Treatments (TARGET) database osteosarcoma project to identify potential lncRNAs related to the overall survival of patients with osteosarcoma by using univariate and multivariate Cox proportional hazards regression analyses. Kaplan–Meier curves were generated to evaluate the overall survival difference between patients in the high-risk group and the low-risk group. A time-dependent receiver operating characteristic curve (ROC) was employed, and the area under the curve (AUC) of ROC was measured to assess the sensitivity and specificity of the multi-lncRNA signature. Results Five lncRNAs (RP11-128N14.5, RP11-231|13.2, RP5-894D12.4, LAMA5-AS1, RP11-346L1.2) were identified, and a five-lncRNA signature was constructed. The AUC for predicting 5-year survival was 0.745, which suggested good performance of the five-lncRNA signature. In addition, functional enrichment analysis of the five-lncRNA-correlated protein-coding genes (PCGs) was performed to show the biological function of the five lncRNAs. Additionally, PPI network suggested RTP1 is a potential biomarker that regulates the prognosis of osteosarcoma. Conclusions We developed a five-lncRNA signature as a potential prognostic indicator for osteosarcoma.


Identification of MYCN -Related Gene as a Potential Biomarker for Neuroblastoma Prognostic Model by Integrated Analysis and Quantitative Real-Time PCR

December 2020

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46 Reads

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5 Citations

DNA and cell biology

Neuroblastoma (NB) has the highest incidence of all extracranial solid tumors in children and is highly lethal. This study aims to establish a prognostic model of NB with MYCN-related genes. We determined the gene expression profiles of 900 NB samples from the UCSC database and four Gene Expression Omnibus (GEO) data sets, and performed a comprehensive bioinformatics analysis and clinical sample verification. After univariate Cox regression, least absolute shrinkage and selection operator (Lasso), and multivariate Cox regression analyses, four (AKR1C1, CHD5, PDE4DIP, and PRKACB) genes were finally selected and used to construct a risk score prognostic model. In the UCSC data set, the high-risk group exhibited a significantly worse prognosis than the low-risk group. In addition, the nomogram, which includes prognostic markers and clinical factors, demonstrates high prognostic value. Finally, the differential expression of the four genes in the model was verified by quantitative real-time PCR in clinical tissues. These findings of MYCN-related genes provide a new and reliable prognostic model for NB related to MYCN.


Bioinformatics Analysis Combined with Experiments to Explore Neuroblastoma Prognostic Indicators Based on Immune-related Genes.

October 2020

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32 Reads

Background:Due to the extremely high mortality rate of children with high-risk Neuroblastoma (NB), there is an urgent need for new indicators to further classify children in the high-risk group for more precise treatment. The purpose of our research is to explore the immune-related genes in NB in the high-risk group, and to further identify and develop a prognostic nomogram based on immune IRG signatures. Methods:Through bioinformatics analysis to explore the abnormal expression of immune-related genes in the high-risk group. Cox regression and the least absolute shrinkage and selection operator (LASSO) analysis were conducted to identify the immune and overall survival (OS) related mRNA. The accuracy of the risk score is evaluated by Kaplan-Meier method and receiver operating characteristics (ROC) analysis, which is used to build a nomogram in combination with other clinical characteristics.. Quantitative real-time polymerase chain reaction (qRT-PCR) was conducted to detect the accuracy of our results. Results:A total of 127 common differentially expressed immune genes were found between the high-risk group and the non-high-risk group of the two data sets. Four immune-related genes (IRG) related to prognosis were identified and a risk score was established. Kaplan–Meier survival analysis and time-dependent ROC analysis showed that the 4-IRG risk score has satisfactory predictive potential and achieved consistency in the verification of external data sets. Subsequently, the risk score combined with clinical characteristics draws a nomogram. The reliability of the results was verified on 29 cases of NB tissues by qRT-PCR. Conclusions:Overall, we have developed a powerful multi-gene classifier that can effectively classify NB patients into low- and high-risk groups with poor prognosis, and draw a nomogram for children in the high-risk group. This feature can help select high-risk patients who need more aggressive adjuvant target therapy or immunotherapy.


Citations (6)


... The amplification of the oncogene MYCN is widely considered a deteriorative biomarker in neuroblastoma. The mutations and/or overexpressions of some other genes such as PHOX2B, ALK, LMO1, HACE1, PRAF2, and LIN28B are also representative of poor prognosis [34][35][36], while quite the opposite is observed when ADRB2 over-expresses [37]. Loh et al. [38] managed to enrich and characterize intact floating cells in peripheral circulation using a label-free and size-based separation method. ...

Reference:

Machine‐learning radiomics to predict bone marrow metastasis of neuroblastoma using magnetic resonance imaging
Expression of ADRB2 in children with neuroblastoma and its influence on prognosis
Frontiers in Surgery

Frontiers in Surgery

... These pathways reveal a coping mechanism involving decrease in expression of proteins that are either not survival-critical under metabolic stress induced by ischemia (such as proteins involved in drug metabolism like UGT2B17 or UGT1A8) or those that are energy intensive for the cell (ribosome biogenesis). Ischemia very interestingly appears to slowly breach through this coping mechanism by causing a decrease in tumour survival-critical proteins such as NUDT1, ELOVL, HPGDS or DZIP3 [8,9,10,11]. ...

HPGDS is a novel prognostic marker associated with lipid metabolism and aggressiveness in lung adenocarcinoma
Frontiers in Oncology

Frontiers in Oncology

... For specific types of malignant tumors, especially gliomas, one of the most common primary malignant tumors of the central nervous system, pan-cancer research has proven to be particularly important [6]. For example, pan-cancer analysis has identified CHD5 as a potential biomarker for glioma [7], and pan-cancer research has shown that NUP37 is a prognostic biomarker associated with the immunosuppressive microenvironment of gliomas [8]. In contrast to other tumors, gliomas not only significantly impact patients' quality of life but also draw attention owing to their high recurrence rate, rapid progression, and lack of effective treatment options [9,10]. ...

Pan-Cancer Analysis Identifies CHD5 as a Potential Biomarker for Glioma

International Journal of Molecular Sciences

... Recent sc/snRNAseq studies have further refined this developmental heterogeneity and provided a basis for understanding their genealogical relationships and ability to interconvert. [72][73][74] Whether IGFBPs have a mechanism of action during divine mother differentiation needs further elucidation and in-depth study. F I G U R E 2 Regulatory roles of IGFBP family in NB cell proliferation and differentiation. ...

Single-cell landscape analysis reveals distinct regression trajectories and novel prognostic biomarkers in primary neuroblastoma

Genes & Diseases

... RP5-894D12.4, LAMA5-AS1, and RP11-346L1.2) served as a reliable prognostic signature for OS patients with an AUC (area under the curve) prediction for the 5-year survival rate at a 0.745 accuracy [74]. Both of these studies offer promise for improving the prognoses of OS patients. ...

A five metastasis-related long noncoding RNA risk signature for osteosarcoma survival prediction

BMC Medical Genomics

... The arrival of second-generation sequencing technology and the era of big data have provided new ideas for the prognosis evaluation of NB patients. Risk profiles related to MYCN [36,37], immunity [38] and glycosyltransferases are emerging [39]. Numerous studies have shown that lipid metabolism is related to cancer progression, metastasis and treatment and has the potential to become a new biomarker [40][41][42]. ...

Identification of MYCN -Related Gene as a Potential Biomarker for Neuroblastoma Prognostic Model by Integrated Analysis and Quantitative Real-Time PCR
  • Citing Article
  • December 2020

DNA and cell biology