基于机器学习和单细胞 RNA 测序数据的骨关节炎诊断中 anoikis 相关基因的综合分析。

IF 4.5 3区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Jun-Song Zhang, Run-Sang Pan, Guo-Lu Li, Jian-Xiang Teng, Hong-Bo Zhao, Chang-Hua Zhou, Ji-Sheng Zhu, Hao Zheng, Xiao-Bin Tian
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引用次数: 0

摘要

骨关节炎(OA)是一种与Anoikis密切相关的退行性疾病。这项工作的目的是发现新的基于转录组的与Anoikis相关的生物标记物和OA进展的通路。GeneCards数据库收集了与anoikis相关的基因。使用维恩图确定了差异 anoikis 相关基因(DEARGs)的交叉基因。渗透分析用于识别和研究差异表达基因(DEGs)。使用Aoikis聚类来识别DEGs。通过基因聚类,利用 DEGs 形成了两个 OA 亚组。GSE152805 用于分析单细胞水平的 OA 软骨。通过拉索分析确定了 10 个 DEARGs,并构建了两个 Anoikis 亚型。在疾病 WGCNA 分析中发现了 MEgreen 模块,而 MEturquoise 模块在基因簇 WGCNA 中最为重要。XGB、SVM、RF 和 GLM 模型确定了五个中心基因(CDH2、SHCBP1、SCG2、C10orf10、P FKFB3),利用这五个基因建立的诊断模型在训练和验证队列中表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comprehensive analysis of anoikis-related genes in diagnosis osteoarthritis: based on machine learning and single-cell RNA sequencing data.

Osteoarthritis (OA) is a degenerative disease closely associated with Anoikis. The objective of this work was to discover novel transcriptome-based anoikis-related biomarkers and pathways for OA progression.The microarray datasets GSE114007 and GSE89408 were downloaded using the Gene Expression Omnibus (GEO) database. A collection of genes linked to anoikis has been collected from the GeneCards database. The intersection genes of the differential anoikis-related genes (DEARGs) were identified using a Venn diagram. Infiltration analyses were used to identify and study the differentially expressed genes (DEGs). Anoikis clustering was used to identify the DEGs. By using gene clustering, two OA subgroups were formed using the DEGs. GSE152805 was used to analyse OA cartilage on a single cell level. 10 DEARGs were identified by lasso analysis, and two Anoikis subtypes were constructed. MEgreen module was found in disease WGCNA analysis, and MEturquoise module was most significant in gene clusters WGCNA. The XGB, SVM, RF, and GLM models identified five hub genes (CDH2, SHCBP1, SCG2, C10orf10, P FKFB3), and the diagnostic model built using these five genes performed well in the training and validation cohorts. analysing single-cell RNA sequencing data from GSE152805, including 25,852 cells of 6 OA cartilage.

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来源期刊
Artificial Cells, Nanomedicine, and Biotechnology
Artificial Cells, Nanomedicine, and Biotechnology BIOTECHNOLOGY & APPLIED MICROBIOLOGY-ENGINEERING, BIOMEDICAL
CiteScore
10.90
自引率
0.00%
发文量
48
审稿时长
20 weeks
期刊介绍: Artificial Cells, Nanomedicine and Biotechnology covers the frontiers of interdisciplinary research and application, combining artificial cells, nanotechnology, nanobiotechnology, biotechnology, molecular biology, bioencapsulation, novel carriers, stem cells and tissue engineering. Emphasis is on basic research, applied research, and clinical and industrial applications of the following topics:artificial cellsblood substitutes and oxygen therapeuticsnanotechnology, nanobiotecnology, nanomedicinetissue engineeringstem cellsbioencapsulationmicroencapsulation and nanoencapsulationmicroparticles and nanoparticlesliposomescell therapy and gene therapyenzyme therapydrug delivery systemsbiodegradable and biocompatible polymers for scaffolds and carriersbiosensorsimmobilized enzymes and their usesother biotechnological and nanobiotechnological approachesRapid progress in modern research cannot be carried out in isolation and is based on the combined use of the different novel approaches. The interdisciplinary research involving novel approaches, as discussed above, has revolutionized this field resulting in rapid developments. This journal serves to bring these different, modern and futuristic approaches together for the academic, clinical and industrial communities to allow for even greater developments of this highly interdisciplinary area.
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