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      Identification and validation of neurotrophic factor-related gene signatures in glioblastoma and Parkinson’s disease

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          Abstract

          Background

          Glioblastoma multiforme (GBM) is the most common cancer of the central nervous system, while Parkinson’s disease (PD) is a degenerative neurological condition frequently affecting the elderly. Neurotrophic factors are key factors associated with the progression of degenerative neuropathies and gliomas.

          Methods

          The 2601 neurotrophic factor-related genes (NFRGs) available in the Genecards portal were analyzed and 12 NFRGs with potential roles in the pathogenesis of Parkinson’s disease and the prognosis of GBM were identified. LASSO regression and random forest algorithms were then used to screen the key NFRGs. The correlation of the key NFRGs with immune pathways was verified using GSEA (Gene Set Enrichment Analysis). A prognostic risk scoring system was constructed using LASSO (Least absolute shrinkage and selection operator) and multivariate Cox risk regression based on the expression of the 12 NFRGs in the GBM cohort from The Cancer Genome Atlas (TCGA) database. We also investigated differences in clinical characteristics, mutational landscape, immune cell infiltration, and predicted efficacy of immunotherapy between risk groups. Finally, the accuracy of the model genes was validated using multi-omics mutation analysis, single-cell sequencing, QT-PCR, and HPA.

          Results

          We found that 4 NFRGs were more reliable for the diagnosis of Parkinson’s disease through the use of machine learning techniques. These results were validated using two external cohorts. We also identified 7 NFRGs that were highly associated with the prognosis and diagnosis of GBM. Patients in the low-risk group had a greater overall survival (OS) than those in the high-risk group. The nomogram generated based on clinical characteristics and risk scores showed strong prognostic prediction ability. The NFRG signature was an independent prognostic predictor for GBM. The low-risk group was more likely to benefit from immunotherapy based on the degree of immune cell infiltration, expression of immune checkpoints (ICs), and predicted response to immunotherapy. In the end, 2 NFRGs (EN1 and LOXL1) were identified as crucial for the development of Parkinson’s disease and the outcome of GBM.

          Conclusions

          Our study revealed that 4 NFRGs are involved in the progression of PD. The 7-NFRGs risk score model can predict the prognosis of GBM patients and help clinicians to classify the GBM patients into high and low risk groups. EN1, and LOXL1 can be used as therapeutic targets for personalized immunotherapy for patients with PD and GBM.

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          Most cited references77

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          limma powers differential expression analyses for RNA-sequencing and microarray studies

          limma is an R/Bioconductor software package that provides an integrated solution for analysing data from gene expression experiments. It contains rich features for handling complex experimental designs and for information borrowing to overcome the problem of small sample sizes. Over the past decade, limma has been a popular choice for gene discovery through differential expression analyses of microarray and high-throughput PCR data. The package contains particularly strong facilities for reading, normalizing and exploring such data. Recently, the capabilities of limma have been significantly expanded in two important directions. First, the package can now perform both differential expression and differential splicing analyses of RNA sequencing (RNA-seq) data. All the downstream analysis tools previously restricted to microarray data are now available for RNA-seq as well. These capabilities allow users to analyse both RNA-seq and microarray data with very similar pipelines. Second, the package is now able to go past the traditional gene-wise expression analyses in a variety of ways, analysing expression profiles in terms of co-regulated sets of genes or in terms of higher-order expression signatures. This provides enhanced possibilities for biological interpretation of gene expression differences. This article reviews the philosophy and design of the limma package, summarizing both new and historical features, with an emphasis on recent enhancements and features that have not been previously described.
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            Robust enumeration of cell subsets from tissue expression profiles

            We introduce CIBERSORT, a method for characterizing cell composition of complex tissues from their gene expression profiles. When applied to enumeration of hematopoietic subsets in RNA mixtures from fresh, frozen, and fixed tissues, including solid tumors, CIBERSORT outperformed other methods with respect to noise, unknown mixture content, and closely related cell types. CIBERSORT should enable large-scale analysis of RNA mixtures for cellular biomarkers and therapeutic targets (http://cibersort.stanford.edu).
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              The 2016 World Health Organization Classification of Tumors of the Central Nervous System: a summary.

              The 2016 World Health Organization Classification of Tumors of the Central Nervous System is both a conceptual and practical advance over its 2007 predecessor. For the first time, the WHO classification of CNS tumors uses molecular parameters in addition to histology to define many tumor entities, thus formulating a concept for how CNS tumor diagnoses should be structured in the molecular era. As such, the 2016 CNS WHO presents major restructuring of the diffuse gliomas, medulloblastomas and other embryonal tumors, and incorporates new entities that are defined by both histology and molecular features, including glioblastoma, IDH-wildtype and glioblastoma, IDH-mutant; diffuse midline glioma, H3 K27M-mutant; RELA fusion-positive ependymoma; medulloblastoma, WNT-activated and medulloblastoma, SHH-activated; and embryonal tumour with multilayered rosettes, C19MC-altered. The 2016 edition has added newly recognized neoplasms, and has deleted some entities, variants and patterns that no longer have diagnostic and/or biological relevance. Other notable changes include the addition of brain invasion as a criterion for atypical meningioma and the introduction of a soft tissue-type grading system for the now combined entity of solitary fibrous tumor / hemangiopericytoma-a departure from the manner by which other CNS tumors are graded. Overall, it is hoped that the 2016 CNS WHO will facilitate clinical, experimental and epidemiological studies that will lead to improvements in the lives of patients with brain tumors.
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                Author and article information

                Contributors
                Journal
                Front Immunol
                Front Immunol
                Front. Immunol.
                Frontiers in Immunology
                Frontiers Media S.A.
                1664-3224
                07 February 2023
                2023
                : 14
                : 1090040
                Affiliations
                [1] 1 Department of Neurosurgery, Wuxi People’s Hospital Affiliated to Nanjing Medical University , Wuxi, Jiangsu, China
                [2] 2 Clinical Medical College, Southwest Medical University , Luzhou, China
                [3] 3 Clinical Molecular Medicine Testing Center, The First Affiliated Hospital of Chongqing Medical University , Chongqing, China
                [4] 4 Department of Oncology, Wuxi People’s Hospital Affiliated to Nanjing Medical University , Wuxi, Jiangsu, China
                [5] 5 Department of Epidemiology and Health Statistics, School of Public Health, Chongqing Medical University , Chongqing, China
                [6] 6 Department of Oncology, Chongqing General Hospital , Chongqing, China
                [7] 7 Department of Radiology, Xichong People’s Hospital , Nanchong, China
                [8] 8 Department of General, Visceral, and Transplant Surgery, Ludwig-Maximilians-University Munich , Munich, Germany
                [9] 9 Department of Clinical Research Center, Wuxi People’s Hospital of Nanjing Medical University , Wuxi, Jiangsu, China
                Author notes

                Edited by: Zhijie Han, Chongqing Medical University, China

                Reviewed by: Qihang Yuan, Dalian Medical University, China; Yingjun Zhao, Xiamen University, China

                †These authors have contributed equally to this work

                This article was submitted to Multiple Sclerosis and Neuroimmunology, a section of the journal Frontiers in Immunology

                Article
                10.3389/fimmu.2023.1090040
                9941742
                36825022
                ed314c15-133e-46fd-b3af-b83f44bc6444
                Copyright © 2023 Zhao, Chi, Yang, Chen, Wu, Lai, Xu, Su, Luo, Peng, Xia, Cheng and Lu

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 04 November 2022
                : 17 January 2023
                Page count
                Figures: 11, Tables: 0, Equations: 0, References: 77, Pages: 17, Words: 7258
                Funding
                This work was supported by General project of Wuxi commission of Health (MS201933, T202120).
                Categories
                Immunology
                Original Research

                Immunology
                pd,gbm,nfrg,immune cell infiltration,machine learning
                Immunology
                pd, gbm, nfrg, immune cell infiltration, machine learning

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