基于 microRNA 标识的胰腺癌血液诊断模型的机器学习方法

IF 0.8 4区 医学 Q4 IMMUNOLOGY Critical Reviews in Immunology Pub Date : 2024-01-01 DOI:10.1615/critrevimmunol.2023051250
Bin Huang, Chang Xin, Huanjun Yan, Zhewei Yu
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引用次数: 0

摘要

本研究旨在通过机器学习和生物学实验验证相结合的方法,利用miRNA特征构建胰腺癌(PC)的血液诊断模型。研究人员从基因表达总库(GEO)数据库中获取了胰腺癌患者的基因表达谱和转录组归一化数据。利用随机森林算法、lasso回归算法和多变量cox回归分析,根据算法和功能特性确定了差异表达miRNA的分类器。接着,我们利用 ROC 曲线分析评估了诊断模型的预测性能。最后,我们利用 qRT-PCR 分析了两种特定 miRNA 在 Capan-1、PANC-1 和 MIA PaCa-2 胰腺细胞中的表达。综合微阵列分析显示,33 个常见 miRNA 在肿瘤组和正常组之间的表达谱有显著差异(P 值为 0.05,|logFC| >0.3)。通路分析表明,差异表达的 miRNA 与 P00059 p53 通路、hsa04062 趋化因子信号通路以及包括 PC 在内的癌症相关通路有关。在 ENCORI 数据库中,随机森林算法和拉索回归算法识别出了 hsa-miR-4486 和 hsa-miR-6075,并将其作为诊断 PC 的主要 miRNA 标志物。此外,接收者操作特征曲线分析的曲线下面积得分达到了80%,显示了两个miRNA特征模型在PC诊断中良好的灵敏度和特异性。此外,通过 qRT-PCR 分析,hsa-miR-4486 和 hsa-miR-6075 基因在三种胰腺细胞中的表达均呈上调趋势。总之,这些研究结果表明,hsa-miR-4486 和 hsa-miR-6075 这两种 miRNA 可作为 PC 有价值的预后标志物。
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A Machine Learning Method for a Blood Diagnostic Model of Pancreatic Cancer Based on microRNA Signatures
This study aimed to construct a blood diagnostic model for pancreatic cancer (PC) using miRNA signatures by a combination of machine learning and biological experimental verification. Gene expression profiles of patients with PC and transcriptome normalization data were obtained from the Gene Expression Omnibus (GEO) database. Using random forest algorithm, lasso regression algorithm, and multivariate cox regression analyses, the classifier of differentially expressed miRNAs was identified based on algorithms and functional properties. Next, the ROC curve analysis was used to evaluate the predictive performance of the diagnostic model. Finally, we analyzed the expression of two specific miRNAs in Capan-1, PANC-1, and MIA PaCa-2 pancreatic cells using qRT-PCR. Integrated microarray analysis revealed that 33 common miRNAs exhibited significant differences in expression profiles between tumor and normal groups (P value < 0.05 and |logFC| > 0.3). Pathway analysis showed that differentially expressed miRNAs were related to P00059 p53 pathway, hsa04062 chemokine signaling pathway, and cancer-related pathways including PC. In ENCORI database, the hsa-miR-4486 and hsa-miR-6075 were identified by random forest algorithm and lasso regression algorithm and introduced as major miRNA markers in PC diagnosis. Further, the receiver operating characteristic curve analysis achieved the area under curve score > 80%, showing good sensitivity and specificity of the two-miRNA signature model in PC diagnosis. Additionally, hsa-miR-4486 and hsa-miR-6075 genes expressions in three pancreatic cells were all up-regulated by qRT-PCR. In summary, these findings suggest that the two miRNAs, hsa-miR-4486 and hsa-miR-6075, could serve as valuable prognostic markers for PC.
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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
14
审稿时长
>12 weeks
期刊介绍: Immunology covers a broad spectrum of investigations at the genes, molecular, cellular, organ and system levels to reveal defense mechanisms against pathogens as well as protection against tumors and autoimmune diseases. The great advances in immunology in recent years make this field one of the most dynamic and rapidly growing in medical sciences. Critical ReviewsTM in Immunology (CRI) seeks to present a balanced overview of contemporary adaptive and innate immune responses related to autoimmunity, tumor, microbe, transplantation, neuroimmunology, immune regulation and immunotherapy from basic to translational aspects in health and disease. The articles that appear in CRI are mostly obtained by invitations to active investigators. But the journal will also consider proposals from the scientific community. Interested investigators should send their inquiries to the editor before submitting a manuscript.
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