弥漫性大b细胞淋巴瘤中铜增生相关lncRNA生物标志物的机器学习鉴定。

IF 5.3 2区 医学 Q2 CELL BIOLOGY
Wenhao Ouyang, Zijia Lai, Hong Huang, Li Ling
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引用次数: 0

摘要

采用多种机器学习技术鉴定弥漫性大b细胞淋巴瘤(DLBCL)中与铜增生相关的关键长链非编码RNA (lncRNA)生物标志物。来自TCGA和GEO数据库的数据帮助鉴定了126个重要的铜突起相关lncrna。各种特征选择方法,如单变量滤波、Lasso、Boruta和随机森林,与基于变压器的模型相结合,开发了一个强大的预测工具。该模型经过五重交叉验证,在预测风险评分方面具有较高的准确性和稳健性。利用机器学习方法的排列特征重要性确定了MALAT1,并在DLBCL细胞系中进一步验证,证实了其在细胞增殖中的重要作用。MALAT1的敲低实验导致细胞增殖减少,强调了其作为治疗靶点的潜力。这种综合方法不仅提高了生物标志物鉴定的准确性,而且为DLBCL提供了一个强大的预后模型,证明了这些lncrna在个性化治疗策略中的实用性。这项研究强调了结合多种机器学习方法在推进DLBCL研究和开发靶向癌症治疗方面的关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based identification of cuproptosis-related lncRNA biomarkers in diffuse large B-cell lymphoma.

Multiple machine learning techniques were employed to identify key long non-coding RNA (lncRNA) biomarkers associated with cuproptosis in Diffuse Large B-Cell Lymphoma (DLBCL). Data from the TCGA and GEO databases facilitated the identification of 126 significant cuproptosis-related lncRNAs. Various feature selection methods, such as Univariate Filtering, Lasso, Boruta, and Random Forest, were integrated with a Transformer-based model to develop a robust prognostic tool. This model, validated through fivefold cross-validation, demonstrated high accuracy and robustness in predicting risk scores. MALAT1 was pinpointed using permutation feature importance from machine learning methods and was further validated in DLBCL cell lines, confirming its substantial role in cell proliferation. Knockdown experiments on MALAT1 led to reduced cell proliferation, underscoring its potential as a therapeutic target. This integrated approach not only enhances the precision of biomarker identification but also provides a robust prognostic model for DLBCL, demonstrating the utility of these lncRNAs in personalized treatment strategies. This study highlights the critical role of combining diverse machine learning methods to advance DLBCL research and develop targeted cancer therapies.

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来源期刊
Cell Biology and Toxicology
Cell Biology and Toxicology 生物-毒理学
CiteScore
9.90
自引率
4.90%
发文量
101
审稿时长
>12 weeks
期刊介绍: Cell Biology and Toxicology (CBT) is an international journal focused on clinical and translational research with an emphasis on molecular and cell biology, genetic and epigenetic heterogeneity, drug discovery and development, and molecular pharmacology and toxicology. CBT has a disease-specific scope prioritizing publications on gene and protein-based regulation, intracellular signaling pathway dysfunction, cell type-specific function, and systems in biomedicine in drug discovery and development. CBT publishes original articles with outstanding, innovative and significant findings, important reviews on recent research advances and issues of high current interest, opinion articles of leading edge science, and rapid communication or reports, on molecular mechanisms and therapies in diseases.
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