protein-protein interaction network

蛋白质 - 蛋白质相互作用网络
  • 文章类型: Journal Article
    背景:尽管类风湿性关节炎(RA)是一种慢性系统性组织疾病,通常伴有骨质疏松症(OP),这种关联的分子机制尚不清楚.本研究旨在通过使用生物信息学方法鉴定差异表达的mRNAs(DEmRNAs)和长链非编码RNAs(lncRNAs)来阐明RA和OP的发病机理。
    方法:从基因表达综合数据库检索诊断为OP和RA的个体的表达谱。进行差异表达分析。进行基因本体论(GO)和京都基因百科全书和基因组途径(KEGG)途径富集分析以获得与DEmRNA相关的功能类别和分子/生化途径的见解。我们确定了常见DEmRNAs和lncRNAs的交集,并构建了蛋白质-蛋白质相互作用(PPI)网络。常见DEmRNAs和lncRNAs之间的相关性分析促进了编码-非编码网络的构建。最后,RA和OP患者的血清外周血单核细胞(PBMC),以及健康的控制,获得TRAP染色和qRT-PCR以验证从在线数据集评估获得的发现。
    结果:在患有RA和OP的个体中鉴定出总共28个DEmRNAs和2个DElncRNAs。共有DEmRNA的染色体分布分析显示,染色体1具有最高数量的差异表达基因。GO和KEGG分析表明这些DEmRNA主要与“血小板(PLT)脱粒”相关,“血小板α颗粒”,“血小板活化”,“紧密连接”和“白细胞跨内皮迁移”,有许多与PLT功能相关的基因。在PPI网络中,MT-ATP6和PTGS1成为潜在的枢纽基因,来自线粒体DNA的MT-ATP6。共表达分析确定了两个关键的lncRNA-mRNA对:RP11-815J21.2与MT-ATP6和RP11-815J21.2与PTGS1。实验验证证实了健康对照和RA+OP组之间RP11-815J21.2、MT-ATP6和PTGS1的显著差异表达。值得注意的是,RP11-815J21.2的敲减减弱了TNF+IL-6诱导的破骨细胞生成。
    结论:这项研究成功地确定了RA和OP患者的共同失调基因和潜在的治疗靶点,突出它们的分子相似性。这些发现为RA和OP的发病机制提供了新的见解,并为进一步研究和靶向治疗提供了潜在的途径。
    BACKGROUND: Although rheumatoid arthritis (RA) is a chronic systemic tissue disease often accompanied by osteoporosis (OP), the molecular mechanisms underlying this association remain unclear. This study aimed to elucidate the pathogenesis of RA and OP by identifying differentially expressed mRNAs (DEmRNAs) and long non-coding RNAs (lncRNAs) using a bioinformatics approach.
    METHODS: Expression profiles of individuals diagnosed with OP and RA were retrieved from the Gene Expression Omnibus database. Differential expression analysis was conducted. Gene ontology (GO) and Kyoto Encyclopedia of Genes and Genomes pathway (KEGG) pathway enrichment analyses were performed to gain insights into the functional categories and molecular/biochemical pathways associated with DEmRNAs. We identified the intersection of common DEmRNAs and lncRNAs and constructed a protein-protein interaction (PPI) network. Correlation analysis between the common DEmRNAs and lncRNAs facilitated the construction of a coding-non-coding network. Lastly, serum peripheral blood mononuclear cells (PBMCs) from patients with RA and OP, as well as healthy controls, were obtained for TRAP staining and qRT-PCR to validate the findings obtained from the online dataset assessments.
    RESULTS: A total of 28 DEmRNAs and 2 DElncRNAs were identified in individuals with both RA and OP. Chromosomal distribution analysis of the consensus DEmRNAs revealed that chromosome 1 had the highest number of differential expression genes. GO and KEGG analyses indicated that these DEmRNAs were primarily associated with \" platelets (PLTs) degranulation\", \"platelet alpha granules\", \"platelet activation\", \"tight junctions\" and \"leukocyte transendothelial migration\", with many genes functionally related to PLTs. In the PPI network, MT-ATP6 and PTGS1 emerged as potential hub genes, with MT-ATP6 originating from mitochondrial DNA. Co-expression analysis identified two key lncRNA-mRNA pairs: RP11 - 815J21.2 with MT - ATP6 and RP11 - 815J21.2 with PTGS1. Experimental validation confirmed significant differential expression of RP11-815J21.2, MT-ATP6 and PTGS1 between the healthy controls and the RA + OP groups. Notably, knockdown of RP11-815J21.2 attenuated TNF + IL-6-induced osteoclastogenesis.
    CONCLUSIONS: This study successfully identified shared dysregulated genes and potential therapeutic targets in individuals with RA and OP, highlighting their molecular similarities. These findings provide new insights into the pathogenesis of RA and OP and suggest potential avenues for further research and targeted therapies.
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  • 文章类型: Journal Article
    2型糖尿病(T2D)与女性不孕症(FI)有关。然而,我们对分子标志和潜在机制的理解仍然难以捉摸。这篇研究文章旨在寻找集线器基因,通路,转录因子,和miRNA参与。对于这项研究,像细胞景观这样的软件,字符串,Enrichr,FFL回路,等。,被利用。本研究使用差异表达基因(DEGs)来鉴定多个生物学靶标,以了解T2D与女性不孕症(FI)之间的关联。在T2D和FI之间,我们发现3869个差异表达基因。我们还分析了不同的途径,如甲状腺激素信号通路,AGE-RAGE信号通路在糖尿病并发症和泛素介导的蛋白水解中的作用.此外,hub基因MED17,PRKCG,THRA,FOXO1,NCOA2,PLCG2,COL1A1,CXCL8,PRPF19,ANAPC5,UBE2I,已确定XIAP和KEAP1。此外,这些hub基因被用于鉴定T2D相关女性不育症特异性miRNA-mRNA调控网络.在FFL研究(前馈回路)中,转录因子(SP1,NFKB1,RELA和FOX01),miRNA(has-mir-7-5p,has-let-7a-5p,hsa-mir-16-5p,hsa-mir-155-5p,has-mir-122-5p,has-let-7b-5p,has-mir-124-3p,has-mir-34a-5p,has-mir-130a-3p,has-let-7i-5p,和hsa-mir-27a-3p)和六个基因(XIAP,THRA,13个关键基因中的NCOA2,MED17,FOXO1和COL1A1)被认为是调节剂和抑制剂。我们的分析表明,这些基因可以作为与2型糖尿病相关的女性不孕症的重要生物标志物。通过候选基因的优先排序。这项研究使我们深入了解T2D相关FI的分子和细胞机制。这一发现有助于开发新的治疗方法,并将提高疗效并减少治疗的副作用。这项研究需要对主要目标进行进一步的实验研究。
    Type 2 diabetes mellitus (T2D) has been linked with female infertility (FI). Nevertheless, our understanding of the molecular hallmarks and underlying mechanisms remains elusive. This research article aimed to find the hub genes, pathways, transcription factors, and miRNA involved. For this study, softwares like cytoscape, string, Enrichr, FFL loop, etc., were utilized. This research article employed differentially expressed genes (DEGs) to identify multiple biological targets to understand the association between T2D and female infertility (FI). Between T2D and FI, we found 3869 differentially expressed genes. We have also analyzed different pathways like thyroid hormone signaling pathways, AGE-RAGE signaling pathways in diabetic complications and ubiquitin-mediated proteolysis through pathway analysis. Moreover, hub genes MED17, PRKCG, THRA, FOXO1, NCOA2, PLCG2, COL1A1, CXCL8, PRPF19, ANAPC5, UBE2I, XIAP and KEAP1 have been identified. Additionally, these hub genes were subjected to identify the miRNA-mRNA regulation network specific to T2D-associated female infertility. In the FFL study (Feed Forward Loop), transcription factor (SP1, NFKB1, RELA and FOX01), miRNA (has-mir-7-5p, has-let-7a-5p, hsa-mir-16-5p, hsa-mir-155-5p, has-mir-122-5p, has-let-7b-5p, has-mir-124-3p, has-mir-34a-5p, has-mir-130a-3p, has-let-7i-5p, and hsa-mir-27a-3p) and six genes (XIAP, THRA, NCOA2, MED17, FOXO1, and COL1A1) among the thirteen key genes were recognized as regulator and inhibitor. Our analysis reveals that these genes can serve as a significant biomarker for female infertility linked with Type 2 Diabetes, through the prioritization of candidate genes. This study gives us insight into the molecular and cellular mechanism of T2D-associated FI. This finding helps in developing novel therapeutic approaches and will improve efficacy and reduce side effects of the treatment. This research requires further experimental investigation of the principal targets.
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  • 文章类型: Journal Article
    全反式维甲酸(ATRA)具有很好的抗乳腺癌活性。然而,ATRA抗癌作用的确切机制仍然复杂,尚未完全了解。在这项研究中,采用网络药理学和分子对接方法鉴定与ATRA抗乳腺癌活性相关的关键靶基因.使用注释数据库对预测的ATRA靶标进行基因/疾病富集分析,可视化和集成发现(DAVID)比较毒性基因组学数据库(CTD),和基因集癌症分析(GSCA)数据库。蛋白质-蛋白质相互作用网络(PPIN)的产生和分析是通过搜索工具进行的,用于检索相互作用的基因/蛋白质(STRING)和细胞,分别。使用来自CTD的MyGeneVenn评估癌症相关基因。差异表达分析使用肿瘤,正常,和转移(TNM)绘图工具和人类蛋白质图谱(HPA)。Glide对接程序用于预测配体-蛋白质结合。使用受试者工作特征(ROC)绘图仪和OncoDB数据库进行治疗反应预测和临床概况评估。分别。使用MTT/荧光测定法和实时PCR测量细胞毒性和基因表达,分别。ATRA靶标(n=209)的分子功能包括类花生酸受体活性和转录因子活性。一些富集的途径包括包涵体肌炎和核受体途径。网络分析显示,35个集线器基因促成了3个模块,其中16例与乳腺癌有关。这些基因参与细胞凋亡,细胞周期,雄激素受体途径,和ESR介导的信号,在其他人中。CCND1、ESR1、MMP9、MDM2、NCOA3和RARA在肿瘤样品中显著过表达。ATRA显示出对CCND1/CDK4和MMP9的高亲和力。CCND1,ESR1和MDM2与不良治疗反应相关,并且在用ATRA治疗乳腺癌细胞系后下调。CCND1和ESRl在乳腺癌各阶段表现出差异表达。因此,部分ATRA抗乳腺癌活性可能通过CCND1/CDK4复合物发挥。
    All-trans retinoic acid (ATRA) has promising activity against breast cancer. However, the exact mechanisms of ATRA\'s anticancer effects remain complex and not fully understood. In this study, a network pharmacology and molecular docking approach was applied to identify key target genes related to ATRA\'s anti-breast cancer activity. Gene/disease enrichment analysis for predicted ATRA targets was performed using the Database for Annotation, Visualization and Integrated Discovery (DAVID), the Comparative Toxicogenomics Database (CTD), and the Gene Set Cancer Analysis (GSCA) database. Protein-Protein Interaction Network (PPIN) generation and analysis was conducted via Search Tool for the Retrieval of Interacting Genes/Proteins (STRING) and cytoscape, respectively. Cancer-associated genes were evaluated using MyGeneVenn from the CTD. Differential expression analysis was conducted using the Tumor, Normal, and Metastatic (TNM) Plot tool and the Human Protein Atlas (HPA). The Glide docking program was used to predict ligand-protein binding. Treatment response predication and clinical profile assessment were performed using Receiver Operating Characteristic (ROC) Plotter and OncoDB databases, respectively. Cytotoxicity and gene expression were measured using MTT/fluorescent assays and Real-Time PCR, respectively. Molecular functions of ATRA targets (n = 209) included eicosanoid receptor activity and transcription factor activity. Some enriched pathways included inclusion body myositis and nuclear receptors pathways. Network analysis revealed 35 hub genes contributing to 3 modules, with 16 of them were associated with breast cancer. These genes were involved in apoptosis, cell cycle, androgen receptor pathway, and ESR-mediated signaling, among others. CCND1, ESR1, MMP9, MDM2, NCOA3, and RARA were significantly overexpressed in tumor samples. ATRA showed a high affinity towards CCND1/CDK4 and MMP9. CCND1, ESR1, and MDM2 were associated with poor treatment response and were downregulated after treatment of the breast cancer cell line with ATRA. CCND1 and ESR1 exhibited differential expression across breast cancer stages. Therefore, some part of ATRA\'s anti-breast cancer activity may be exerted through the CCND1/CDK4 complex.
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  • 文章类型: Journal Article
    2019年冠状病毒病(COVID-19)大流行在全球产生了重大影响,导致更高的死亡人数和幸存者持续的健康问题,特别是那些有预先存在的医疗条件。许多研究表明,灾难性的COVID-19结果与糖尿病之间存在很强的相关性。为了获得更深入的见解,我们分析了COVID-19和糖尿病周围神经病患者的转录组数据集.使用R编程语言,差异表达基因(DEGs)进行鉴定和分类的基础上,向上和向下的规定。然后在这些组之间探索DEG的重叠。使用基因本体论(GO)对这些常见DEG进行功能注释,京都基因和基因组百科全书(KEGG),生物星球,Reactome,和Wiki途径。使用生物信息学工具创建了蛋白质-蛋白质相互作用(PPI)网络,以了解分子相互作用。通过对PPI网络的拓扑分析,我们确定了hub基因模块并探索了基因调控网络(GRN).此外,该研究扩展到基于综合分析为已鉴定的相互DEG提出潜在的药物分子.通过深入了解潜在的治疗干预措施,这些方法可能有助于了解COVID-19在糖尿病周围神经病变患者中的分子复杂性。
    The coronavirus disease 2019 (COVID-19) pandemic has had a significant impact globally, resulting in a higher death toll and persistent health issues for survivors, particularly those with pre-existing medical conditions. Numerous studies have demonstrated a strong correlation between catastrophic COVID-19 results and diabetes. To gain deeper insights, we analysed the transcriptome dataset from COVID-19 and diabetic peripheral neuropathic patients. Using the R programming language, differentially expressed genes (DEGs) were identified and classified based on up and down regulations. The overlaps of DEGs were then explored between these groups. Functional annotation of those common DEGs was performed using Gene Ontology (GO), Kyoto Encyclopedia of Genes and Genomes (KEGG), Bio-Planet, Reactome, and Wiki pathways. A protein-protein interaction (PPI) network was created with bioinformatics tools to understand molecular interactions. Through topological analysis of the PPI network, we determined hub gene modules and explored gene regulatory networks (GRN). Furthermore, the study extended to suggesting potential drug molecules for the identified mutual DEG based on the comprehensive analysis. These approaches may contribute to understanding the molecular intricacies of COVID-19 in diabetic peripheral neuropathy patients through insights into potential therapeutic interventions.
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  • 文章类型: Journal Article
    背景:溃疡性结肠炎(UC)的病理生理学被认为受到免疫学的严重影响,这对诊断和治疗都提出了挑战。这项研究的主要目的是加深我们对与疾病相关的免疫学特征的理解,并确定诊断和治疗有价值的生物标志物。
    方法:UC数据集来自GEO数据库,并使用无监督聚类进行分析以识别UC的不同亚型。开发了12种机器学习算法和深度学习模型DNN来识别潜在的UC生物标志物。使用LIME和SHAP方法解释模型的发现。PPI网络用于验证确定的关键生物标志物,然后是连接超级增强器的网络,转录因子和基因构建。利用单细胞测序技术研究过氧化物酶体增殖物激活受体γ(PPARG)在UC中的作用及其与巨噬细胞浸润的相关性。此外,在体外和体内实验中,通过Westernblot(WB)和免疫组织化学(IHC)验证了PPARG表达的改变.
    结果:利用生物信息学技术,我们能够将PPARG确定为UC的关键生物标志物.细胞模型中PPARG的表达显著降低,UC动物模型,和葡聚糖硫酸钠(DSS)诱导的结肠炎模型。有趣的是,PPARG的过表达能够恢复H2O2诱导的IEC-6细胞的肠屏障功能。此外,免疫相关差异表达基因(DEGs)可将UC样本有效分类为中性粒细胞和线粒体代谢亚型.结合了三个疾病特异性基因PPARG的诊断模型,PLA2G2A,和IDO1在区分UC组和对照组方面表现出很高的准确性。此外,单细胞分析显示,结肠组织中PPARG表达的降低可能通过激活炎症途径促进M1巨噬细胞的极化.
    结论:结论:PPARG,与免疫有关的基因,已被确立为诊断和治疗UC的可靠潜在生物标志物。它控制的免疫反应通过使特征性生物标志物与免疫浸润细胞之间相互作用,在UC的进展和发展中起关键作用。
    BACKGROUND: The pathophysiology of ulcerative colitis (UC) is believed to be heavily influenced by immunology, which presents challenges for both diagnosis and treatment. The main aims of this study are to deepen our understanding of the immunological characteristics associated with the disease and to identify valuable biomarkers for diagnosis and treatment.
    METHODS: The UC datasets were sourced from the GEO database and were analyzed using unsupervised clustering to identify different subtypes of UC. Twelve machine learning algorithms and Deep learning model DNN were developed to identify potential UC biomarkers, with the LIME and SHAP methods used to explain the models\' findings. PPI network is used to verify the identified key biomarkers, and then a network connecting super enhancers, transcription factors and genes is constructed. Single-cell sequencing technology was utilized to investigate the role of Peroxisome Proliferator Activated Receptor Gamma (PPARG) in UC and its correlation with macrophage infiltration. Furthermore, alterations in PPARG expression were validated through Western blot (WB) and immunohistochemistry (IHC) in both in vitro and in vivo experiments.
    RESULTS: By utilizing bioinformatics techniques, we were able to pinpoint PPARG as a key biomarker for UC. The expression of PPARG was significantly reduced in cell models, UC animal models, and colitis models induced by dextran sodium sulfate (DSS). Interestingly, overexpression of PPARG was able to restore intestinal barrier function in H2O2-induced IEC-6 cells. Additionally, immune-related differentially expressed genes (DEGs) allowed for efficient classification of UC samples into neutrophil and mitochondrial metabolic subtypes. A diagnostic model incorporating the three disease-specific genes PPARG, PLA2G2A, and IDO1 demonstrated high accuracy in distinguishing between the UC group and the control group. Furthermore, single-cell analysis revealed that decreased PPARG expression in colon tissue may contribute to the polarization of M1 macrophages through activation of inflammatory pathways.
    CONCLUSIONS: In conclusion, PPARG, a gene related to immunity, has been established as a reliable potential biomarker for the diagnosis and treatment of UC. The immune response it controls plays a key role in the progression and development of UC by enabling interaction between characteristic biomarkers and immune infiltrating cells.
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  • 文章类型: Journal Article
    目的:确定SARS-CoV-2差异和相似性背后的分子机制将有助于寻找新的治疗方法。本研究确定了响应HCoV-229E和SARS-CoV-2病毒的网络共享和非共享(特定)关键因素,以推荐候选药物。
    方法:我们检索了感染HCoV-229E和SARS-CoV-2的呼吸道细胞的组学数据,构建了PPIN和GRN,并检测到簇和主题。使用药物-基因相互作用网络,我们确定了其宿主反应和药物再利用背后机制的相似性和差异性.
    结果:CXCL1,KLHL21,SMAD3,HIF1A,和STAT1是两种病毒蛋白质-蛋白质相互作用网络(PPIN)和基因调控网络(GRN)之间的共享DEG。NPM1是HCoV-229E的特定关键节点,并且是HCoV-229E中PPI和GRN之间共享的集线器瓶颈。HLA-F,ADCY5,TRIM14,RPF1和FGA是SARS-CoV-2PPI网络子网络中的种子蛋白,HSPA1A和RPL26蛋白是HCOV-229EPPI网络子网络中的种子。TRIM14,STAT2和HLA-F在SARS-CoV-2中起相同的作用。最富集的KEGG途径包括HCoV-229E和RIG-I样受体中的细胞周期和蛋白酶体,趋化因子,细胞因子-细胞因子,NOD样受体,SARS-CoV-2中的TNF信号通路。我们建议一些COVID-19患者肺部的候选药物,包括Noccapine,甲磺酸异丙嗪,环丝氨酸,Ethamsylate,十六烷基吡啶,维甲酸,Ixazomib,伏立诺他,维奈托克,伏立诺他,Ixazomib,维奈托克,和epoetinalfa用于进一步的体外和体内研究。
    结论:我们建议CXCL1、KLHL21、SMAD3、HIF1A、和STAT1、ADCY5、TRIM14、RPF1和FGA,STAT2和HLA-F作为关键基因和十六烷基吡啶,环丝氨酸,Noccapine,Ethamsylate,依泊汀阿尔法,甲磺酸异丙嗪,利巴韦林,和维甲酸药物进一步研究它们在治疗COVID-19肺部并发症中的重要性。
    OBJECTIVE: Identifying the molecular mechanisms behind SARS-CoV-2 disparities and similarities will help find new treatments. The present study determines networks\' shared and non-shared (specific) crucial elements in response to HCoV-229E and SARS-CoV-2 viruses to recommend candidate medications.
    METHODS: We retrieved the omics data on respiratory cells infected with HCoV-229E and SARS-CoV-2, constructed PPIN and GRN, and detected clusters and motifs. Using a drug-gene interaction network, we determined the similarities and disparities of mechanisms behind their host response and drug-repurposed.
    RESULTS: CXCL1, KLHL21, SMAD3, HIF1A, and STAT1 were the shared DEGs between both viruses\' protein-protein interaction network (PPIN) and gene regulatory network (GRN). The NPM1 was a specific critical node for HCoV-229E and was a Hub-Bottleneck shared between PPI and GRN in HCoV-229E. The HLA-F, ADCY5, TRIM14, RPF1, and FGA were the seed proteins in subnetworks of the SARS-CoV-2 PPI network, and HSPA1A and RPL26 proteins were the seed in subnetworks of the PPI network of HCOV-229E. TRIM14, STAT2, and HLA-F played the same role for SARS-CoV-2. Top enriched KEGG pathways included cell cycle and proteasome in HCoV-229E and RIG-I-like receptor, Chemokine, Cytokine-cytokine, NOD-like receptor, and TNF signaling pathways in SARS-CoV-2. We suggest some candidate medications for COVID-19 patient lungs, including Noscapine, Isoetharine mesylate, Cycloserine, Ethamsylate, Cetylpyridinium, Tretinoin, Ixazomib, Vorinostat, Venetoclax, Vorinostat, Ixazomib, Venetoclax, and epoetin alfa for further in-vitro and in-vivo investigations.
    CONCLUSIONS: We suggested CXCL1, KLHL21, SMAD3, HIF1A, and STAT1, ADCY5, TRIM14, RPF1, and FGA, STAT2, and HLA-F as critical genes and Cetylpyridinium, Cycloserine, Noscapine, Ethamsylate, Epoetin alfa, Isoetharine mesylate, Ribavirin, and Tretinoin drugs to study further their importance in treating COVID-19 lung complications.
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  • 文章类型: Journal Article
    缺血再灌注损伤(IRI)在肾移植中是不可避免的,作为一个复杂的病理生理过程,它可以受到铁死亡和免疫炎症的极大影响。我们的研究旨在鉴定肾IRI(RIRI)的生物标志物,并阐明它们与免疫浸润的关系。在这项研究中,GSE148420数据库用作训练集来分析差异基因,并将其与铁凋亡相关基因重叠,以使用蛋白质-蛋白质相互作用(PPI)网络来识别集线器基因,最小绝对收缩和选择运算符(LASSO),和随机森林算法(RFA)。我们在涉及大鼠单侧IRI和对侧肾切除术的验证集和动物实验中验证了hub基因和铁凋亡相关表型。根据hub基因对单基因进行基因集富集分析(GSEA),预测相关内源性RNA(ceRNA)和药物建立网络。最后,我们使用Cibersort进行了免疫学浸润分析,并进行了Spearman\的相关性分析。我们鉴定了5456个差异基因,并获得了26个与铁凋亡相关的差异表达基因。通过PPI,拉索,RFA,Hmox1被鉴定为唯一的hub基因,其表达水平使用验证集进行验证。在动物实验中,Hmox1被验证为关键生物标志物。单个基因的GSEA揭示了七种最相关的途径,CERNA网络包括138个mRNA和miRNA。我们预测了11种相关药物及其三维结构图。因此,Hmox1是RIRI中铁凋亡的关键生物标志物和调节因子,其对铁凋亡的调节与免疫浸润密切相关。
    Ischemia-reperfusion injury (IRI) is inevitable in kidney transplantations and, as a complex pathophysiological process, it can be greatly impacted by ferroptosis and immune inflammation. Our study aimed to identify the biomarkers of renal IRI (RIRI) and elucidate their relationship with immune infiltration. In this study, the GSE148420 database was used as a training set to analyze differential genes and overlap them with ferroptosis-related genes to identify hub genes using a protein-protein interaction (PPI) network, the least absolute shrinkage and selection operator (LASSO), and random forest algorithm (RFA). We verified the hub gene and ferroptosis-related phenotypes in a verification set and animal experiments involving unilateral IRI with contralateral nephrectomy in rats. Gene set enrichment analysis (GSEA) of single genes was conducted according to the hub gene to predict related endogenous RNAs (ceRNAs) and drugs to establish a network. Finally, we used the Cibersort to analyze immunological infiltration and conducted Spearman\'s correlation analysis. We identified 5456 differential genes and obtained 26 ferroptosis-related differentially expressed genes. Through PPI, LASSO, and RFA, Hmox1 was identified as the only hub gene and its expression levels were verified using verification sets. In animal experiments, Hmox1 was verified as a key biomarker. GSEA of single genes revealed the seven most related pathways, and the ceRNAs network included 138 mRNAs and miRNAs. We predicted 11 related drugs and their three-dimensional structural maps. Thus, Hmox1 was identified as a key biomarker and regulator of ferroptosis in RIRI and its regulation of ferroptosis was closely related to immune infiltration.
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  • 文章类型: Journal Article
    蛋白质被认为是必不可少的促进生物体的生存能力,生殖能力,和其他基本生理功能。传统的生物测定的特点是持续时间延长,广泛的劳动力需求,和财务费用,以确定必需的蛋白质。因此,人们普遍认为,采用计算方法是成功识别必需蛋白质的最迅速和有效的方法。尽管是机器学习(ML)应用程序中的热门选择,由于正样本和负样本的高质量训练集的可用性有限,因此不建议将深度学习(DL)方法用于基于序列特征的特定研究工作。然而,一些关于有限的数据可用性的DL工作也在最近执行,这将是我们未来的工作范围。因此,与DL方法相比,由于其优越的性能,因此在这项工作中使用了常规的ML技术。考虑到上述问题,这里提出了一种称为EPI-SF的技术,它使用ML来识别蛋白质-蛋白质相互作用网络(PPIN)中的必需蛋白质。蛋白质序列是蛋白质结构和功能的主要决定因素。所以,最初,从PPIN内的蛋白质中提取相关的蛋白质序列特征。这些特征随后被用作各种机器学习模型的输入,包括XGB增强分类器,AdaBoost分类器,逻辑回归(LR),支持向量分类(SVM),决策树模型(DT),随机森林模型(RF)和朴素贝叶斯模型(NB)。目的是检测PPIN内的必需蛋白。对酵母进行的初步调查检查了酵母PPIN的各种ML模型的性能。在这些模型中,射频模型技术的有效性最高,正如它的精确度所表明的,召回,F1分数,AUC值分别为0.703、0.720、0.711和0.745。与基于传统中心性的其他国家相比,也发现性能更好,例如中间性中心性(BC),接近中心性(CC),等。深度学习方法也像DeepEP,正如结果部分所强调的那样。由于其良好的性能,EPI-SF后来被用于预测人PPIN内部的新型必需蛋白。由于病毒倾向于选择性靶向参与人类PPIN内疾病传播的必需蛋白,进行调查以评估这些蛋白质可能参与COVID-19和其他相关严重疾病。
    Proteins are considered indispensable for facilitating an organism\'s viability, reproductive capabilities, and other fundamental physiological functions. Conventional biological assays are characterized by prolonged duration, extensive labor requirements, and financial expenses in order to identify essential proteins. Therefore, it is widely accepted that employing computational methods is the most expeditious and effective approach to successfully discerning essential proteins. Despite being a popular choice in machine learning (ML) applications, the deep learning (DL) method is not suggested for this specific research work based on sequence features due to the restricted availability of high-quality training sets of positive and negative samples. However, some DL works on limited availability of data are also executed at recent times which will be our future scope of work. Conventional ML techniques are thus utilized in this work due to their superior performance compared to DL methodologies. In consideration of the aforementioned, a technique called EPI-SF is proposed here, which employs ML to identify essential proteins within the protein-protein interaction network (PPIN). The protein sequence is the primary determinant of protein structure and function. So, initially, relevant protein sequence features are extracted from the proteins within the PPIN. These features are subsequently utilized as input for various machine learning models, including XGB Boost Classifier, AdaBoost Classifier, logistic regression (LR), support vector classification (SVM), Decision Tree model (DT), Random Forest model (RF), and Naïve Bayes model (NB). The objective is to detect the essential proteins within the PPIN. The primary investigation conducted on yeast examined the performance of various ML models for yeast PPIN. Among these models, the RF model technique had the highest level of effectiveness, as indicated by its precision, recall, F1-score, and AUC values of 0.703, 0.720, 0.711, and 0.745, respectively. It is also found to be better in performance when compared to the other state-of-arts based on traditional centrality like betweenness centrality (BC), closeness centrality (CC), etc. and deep learning methods as well like DeepEP, as emphasized in the result section. As a result of its favorable performance, EPI-SF is later employed for the prediction of novel essential proteins inside the human PPIN. Due to the tendency of viruses to selectively target essential proteins involved in the transmission of diseases within human PPIN, investigations are conducted to assess the probable involvement of these proteins in COVID-19 and other related severe diseases.
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  • 文章类型: Journal Article
    尽管免疫检查点抑制剂和靶向治疗取得了进展,在美国,皮肤癌仍然是一个重大的公共卫生问题。疾病的错综复杂,包括遗传学,免疫反应,和外部因素,呼吁采取全面的方法。系统遗传学技术,包括转录相关分析,功能途径富集分析,和蛋白质-蛋白质相互作用网络分析,在破译复杂的分子机制和确定皮肤癌的潜在诊断和治疗靶点方面被证明是有价值的。最近的研究表明,这些技术在揭示各种皮肤癌类型的分子过程和精确定位诊断标志物方面的功效。强调系统遗传学在推进创新疗法方面的潜力。虽然存在某些限制,例如外部因素的概括性和情境化,人工智能技术的持续进步为克服这些挑战提供了希望。通过提供协议和一个涉及Braf的实际例子,我们的目标是激励早期职业实验皮肤科医生采用这些工具,并将这些技术无缝地整合到他们的皮肤癌研究中,将他们定位在抗击这种毁灭性疾病的创新方法的最前沿。
    Despite progress made with immune checkpoint inhibitors and targeted therapies, skin cancer remains a significant public health concern in the United States. The intricacies of the disease, encompassing genetics, immune responses, and external factors, call for a comprehensive approach. Techniques in systems genetics, including transcriptional correlation analysis, functional pathway enrichment analysis, and protein-protein interaction network analysis, prove valuable in deciphering intricate molecular mechanisms and identifying potential diagnostic and therapeutic targets for skin cancer. Recent studies demonstrate the efficacy of these techniques in uncovering molecular processes and pinpointing diagnostic markers for various skin cancer types, highlighting the potential of systems genetics in advancing innovative therapies. While certain limitations exist, such as generalizability and contextualization of external factors, the ongoing progress in AI technologies provides hope in overcoming these challenges. By providing protocols and a practical example involving Braf, we aim to inspire early-career experimental dermatologists to adopt these tools and seamlessly integrate these techniques into their skin cancer research, positioning them at the forefront of innovative approaches in combating this devastating disease.
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  • 文章类型: Journal Article
    背景:据报道,血根碱(SAN)具有抗氧化剂,抗炎,和具有治疗骨质疏松症(OP)潜力的抗菌活性。
    目的:本研究旨在揭示SAN治疗OP的分子机制。
    方法:从公共数据库预测OP相关基因和SAN相关靶标。采用差异表达分析和VennGraph来检测针对OP的SAN相关靶标。蛋白质-蛋白质相互作用(PPI)网络用于核心靶标鉴定。进一步采用分子对接和DeepPurpose算法研究核心靶标与SAN的结合能力。利用基因集变异分析(GSVA)计算这些靶标的基因途径评分。最后,我们探讨了SAN对成骨细胞前MC3T3-E1细胞核心靶标表达的影响。
    结果:共获得了21种针对OP的SAN候选靶标。此外,确定了六个核心目标,其中CASP3、CTNNB1和ERBB2在OP和健康个体中显著差异表达。SAN与CASP3,CTNNB1和ERBB2的结合能分别为-6,-6.731和-7.162kcal/mol,分别。此外,在OP病例中,Wnt/钙信号通路的GSVA评分显著低于健康个体.此外,CASP3的表达与Wnt/钙信号通路呈正相关。CASP3和ERBB2在SAN组的表达明显低于DMSO组,而CTNNB1的表达则相反。
    结论:CASP3、CTNNB1和ERBB2成为SAN在OP预防和治疗中的潜在靶点。
    BACKGROUND: Sanguinarine (SAN) has been reported to have antioxidant, antiinflammatory, and antimicrobial activities with potential for the treatment of osteoporosis (OP).
    OBJECTIVE: This work purposed to unravel the molecular mechanisms of SAN in the treatment of OP.
    METHODS: OP-related genes and SAN-related targets were predicted from public databases. Differential expression analysis and VennDiagram were adopted to detect SAN-related targets against OP. Protein-protein interaction (PPI) network was served for core target identification. Molecular docking and DeepPurpose algorithm were further adopted to investigate the binding ability between core targets and SAN. Gene pathway scoring of these targets was calculated utilizing gene set variation analysis (GSVA). Finally, we explored the effect of SAN on the expressions of core targets in preosteoblastic MC3T3-E1 cells.
    RESULTS: A total of 21 candidate targets of SAN against OP were acquired. Furthermore, six core targets were identified, among which CASP3, CTNNB1, and ERBB2 were remarkably differentially expressed in OP and healthy individuals. The binding energies of SAN with CASP3, CTNNB1, and ERBB2 were -6, -6.731, and -7.162 kcal/mol, respectively. Moreover, the GSVA scores of the Wnt/calcium signaling pathway were significantly lower in OP cases than in healthy individuals. In addition, the expression of CASP3 was positively associated with Wnt/calcium signaling pathway. CASP3 and ERBB2 were significantly lower expressed in SAN group than in DMSO group, whereas the expression of CTNNB1 was in contrast.
    CONCLUSIONS: CASP3, CTNNB1, and ERBB2 emerge as potential targets of SAN in OP prevention and treatment.
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