Single-cell deconvolution

  • 文章类型: Journal Article
    这项研究引入了一种新的预后工具,二硫化物掺杂相关lncRNA指数(DRLI),整合二硫化物掺杂和长链非编码RNA(lncRNAs)的分子特征与肿瘤微环境的细胞异质性,预测透明细胞肾细胞癌(ccRCC)患者的临床结局。
    我们分析了来自癌症基因组图谱(TCGA)的530个肿瘤和72个正常样本,采用基于二硫化物相关基因表达的k-means聚类将ccRCC样本分为预后组。与二硫化物掺杂相关的lncRNAs被鉴定并用于构建DRLI,通过Kaplan-Meier和受试者工作特性曲线进行了验证。我们利用单细胞去卷积分析来估计肿瘤微环境中免疫细胞类型的比例。而ESTIMATE和TIDE算法用于评估免疫浸润和对免疫疗法的潜在反应。
    二硫化物掺杂剂相关的lncRNA指数(DRLI)有效地将ccRCC患者分为高危组和低危组,显着影响生存结局(P<0.001)。高危患者,以与二硫化物掺杂相关的独特lncRNA谱为标志,面临更糟糕的预后。单细胞分析显示明显的肿瘤微环境异质性,尤其是在免疫细胞组成中,与患者风险水平相关。在预后预测中,DRLI优于传统临床指标,在1年内实现0.779、0.757和0.779的AUC值,3年,和训练中的5年生存率,以及验证集中的0.746、0.734和0.750。值得注意的是,而构建的列线图显示出对短期预后的出色预测能力(AUC=0.877),DRLI显示出显著的长期预测准确性,其10年生存率的AUC值达到0.823,紧密接近列线图的表现。
    该研究介绍了DRLI作为ccRCC的开创性分子分层工具,提高预后的准确性和潜在的指导个性化治疗策略。这种进步在长期生存预测的背景下尤其重要。我们的发现还阐明了二硫化物之间复杂的相互作用,lncRNAs,和ccRCC中的免疫微环境,对其发病机制和进展提供了全面的视角。DRLI和列线图共同代表了ccRCC研究的重大进展,强调基于分子的评估在预测患者预后中的重要性。
    UNASSIGNED: This study introduces a novel prognostic tool, the Disulfidoptosis-Related lncRNA Index (DRLI), integrating the molecular signatures of disulfidoptosis and long non-coding RNAs (lncRNAs) with the cellular heterogeneity of the tumor microenvironment, to predict clinical outcomes in patients with clear cell renal cell carcinoma (ccRCC).
    UNASSIGNED: We analyzed 530 tumor and 72 normal samples from The Cancer Genome Atlas (TCGA), employing k-means clustering based on disulfidoptosis-associated gene expression to stratify ccRCC samples into prognostic groups. lncRNAs correlated with disulfidoptosis were identified and used to construct the DRLI, which was validated by Kaplan-Meier and receiver operating characteristic curves. We utilized single-cell deconvolution analysis to estimate the proportion of immune cell types within the tumor microenvironment, while the ESTIMATE and TIDE algorithms were employed to assess immune infiltration and potential response to immunotherapy.
    UNASSIGNED: The Disulfidoptosis-Related lncRNA Index (DRLI) effectively stratified ccRCC patients into high and low-risk groups, significantly impacting survival outcomes (P < 0.001). High-risk patients, marked by a unique lncRNA profile associated with disulfidoptosis, faced worse prognoses. Single-cell analysis revealed marked tumor microenvironment heterogeneity, especially in immune cell makeup, correlating with patient risk levels. In prognostic predictions, DRLI outperformed traditional clinical indicators, achieving AUC values of 0.779, 0.757, and 0.779 for 1-year, 3-year, and 5-year survival in the training set, and 0.746, 0.734, and 0.750 in the validation set. Notably, while the constructed nomogram showed exceptional predictive capability for short-term prognosis (AUC = 0.877), the DRLI displayed remarkable long-term predictive accuracy, with its AUC value reaching 0.823 for 10-year survival, closely approaching the nomogram\'s performance.
    UNASSIGNED: The study introduces the DRLI as a groundbreaking molecular stratification tool for ccRCC, enhancing prognostic precision and potentially guiding personalized treatment strategies. This advancement is particularly significant in the context of long-term survival predictions. Our findings also elucidate the complex interplay between disulfidoptosis, lncRNAs, and the immune microenvironment in ccRCC, offering a comprehensive perspective on its pathogenesis and progression. The DRLI and the nomogram together represent significant strides in ccRCC research, highlighting the importance of molecular-based assessments in predicting patient outcomes.
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  • 文章类型: Journal Article
    烟草烟雾和红色/加工肉类是众所周知的结肠直肠癌(CRC)的危险因素。大多数研究集中在流行病学研究或体外CRC细胞系治疗中正常结肠活检的研究。这些研究通常受到自我报告数据准确性的挑战的限制,或者,在CRC细胞系的情况下,小样本量和缺乏关系的正常组织的风险。为了解决其中一些限制,我们对来自正常结肠活检的37个独立的类器官细胞系中的代表性致癌物混合物进行了24小时治疗.机器学习算法被应用于批量RNA测序,并揭示了结肠类器官的细胞组成变化。我们确定了738个对致癌物暴露反应的差异表达基因。网络分析确定了显著不同的共表达模块,包括与MSI-H肿瘤生物学相关的基因,和先前通过全基因组关联研究与CRC相关的基因。我们的研究有助于更好地定义吸烟和红肉/加工肉类的代表性致癌物在正常结肠上皮细胞中的分子效应,以及在CRC的MSI-H亚型的病因中,并提示涉及遗传和环境CRC风险的分子机制之间存在重叠。
    Tobacco smoke and red/processed meats are well-known risk factors for colorectal cancer (CRC). Most research has focused on studies of normal colon biopsies in epidemiologic studies or treatment of CRC cell lines in vitro. These studies are often constrained by challenges with accuracy of self-report data or, in the case of CRC cell lines, small sample sizes and lack of relationship to normal tissue at risk. In an attempt to address some of these limitations, we performed a 24-hour treatment of a representative carcinogens cocktail in 37 independent organoid lines derived from normal colon biopsies. Machine learning algorithms were applied to bulk RNA-sequencing and revealed cellular composition changes in colon organoids. We identified 738 differentially expressed genes in response to carcinogens exposure. Network analysis identified significantly different modules of co-expression, that included genes related to MSI-H tumor biology, and genes previously implicated in CRC through genome-wide association studies. Our study helps to better define the molecular effects of representative carcinogens from smoking and red/processed meat in normal colon epithelial cells and in the etiology of the MSI-H subtype of CRC, and suggests an overlap between molecular mechanisms involved in inherited and environmental CRC risk.
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  • 文章类型: Journal Article
    大约15%的结直肠癌(CRC)病例具有高水平的微卫星不稳定性(MSI-H)。大量RNA测序方法已用于阐明MSI-H和微卫星稳定(MSS)CRC肿瘤之间的转录差异。这些方法经常被肿瘤的复杂细胞异质性所混淆。我们在癌症基因组图谱结肠腺癌(TCGA-COAD)数据集上进行了批量RNA测序的单细胞反卷积。使用CIBERSORTx估计每个数据集中的细胞组成。使用线性回归分析细胞组成差异。在TCGA-COAD中,在MSI-H和MSS/MSI-L肿瘤之间的19种细胞类型中的13种观察到丰度的显著差异。这包括MSI-H与MSS/MSI-L肿瘤中增加的肠内分泌(q=3.71E-06)和减少的结肠细胞群(q=2.21E-03)的新发现。我们能够在独立的活检数据集中验证这些差异中的一些。通过将细胞组成纳入我们的回归模型,我们确定了3,193个差异表达基因(q=0.05),其中556人被认为是小说。随后,我们在结肠癌细胞系的独立数据集中验证了许多这些基因。总之,我们表明,一些与细胞异质性相关的挑战可以克服使用单细胞反卷积,通过我们的分析,我们强调了几个新的基因靶标,以便进一步研究。
    Approximately 15% of colorectal cancer (CRC) cases present with high levels of microsatellite instability (MSI-H). Bulk RNA-sequencing approaches have been employed to elucidate transcriptional differences between MSI-H and microsatellite stable (MSS) CRC tumors. These approaches are frequently confounded by the complex cellular heterogeneity of tumors. We performed single-cell deconvolution of bulk RNA-sequencing on The Cancer Genome Atlas colon adenocarcinoma (TCGA-COAD) dataset. Cell composition within each dataset was estimated using CIBERSORTx. Cell composition differences were analyzed using linear regression. Significant differences in abundance were observed for 13 of 19 cell types between MSI-H and MSS/MSI-L tumors in TCGA-COAD. This included a novel finding of increased enteroendocrine (q = 3.71E-06) and reduced colonocyte populations (q = 2.21E-03) in MSI-H versus MSS/MSI-L tumors. We were able to validate some of these differences in an independent biopsy dataset. By incorporating cell composition into our regression model, we identified 3,193 differentially expressed genes (q = 0.05), of which 556 were deemed novel. We subsequently validated many of these genes in an independent dataset of colon cancer cell lines. In summary, we show that some of the challenges associated with cellular heterogeneity can be overcome using single-cell deconvolution, and through our analysis we highlight several novel gene targets for further investigation.
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