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首页> 外文期刊>Technology in cancer research & treatment. >A multiple genomic data fused SF2 prediction model, signature identification, and gene regulatory network inference for personalized radiotherapy
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A multiple genomic data fused SF2 prediction model, signature identification, and gene regulatory network inference for personalized radiotherapy

机译:一种多基因组数据融合SF2预测模型,签名鉴定和基因调节网络推论个性化放射治疗

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Radiotherapy is one of the most important cancer treatments, but its response varies greatly among individual patients. Therefore, the prediction of radiosensitivity, identification of potential signature genes, and inference of their regulatory networks are important for clinical and oncological reasons. Here, we proposed a novel multiple genomic fused partial least squares deep regression method to simultaneously analyze multi-genomic data. Using 60 National Cancer Institute cell lines as examples, we aimed to identify signature genes by optimizing the radiosensitivity prediction model and uncovering regulatory relationships. A total of 113 signature genes were selected from more than 20,000 genes. The root mean square error of the model was only 0.0025, which was much lower than previously published results, suggesting that our method can predict radiosensitivity with the highest accuracy. Additionally, our regulatory network analysis identified 24 highly important ‘hub’ genes. The data analysis workflow we propose provides a unified and computational framework to harness the full potential of large-scale integrated cancer genomic data for integrative signature discovery. Furthermore, the regression model, signature genes, and their regulatory network should provide a reliable quantitative reference for optimizing personalized treatment options, and may aid our understanding of cancer progress mechanisms.
机译:放射疗法是最重要的癌症治疗之一,但其反应在个体患者之间变化很大。因此,预测放射敏感性,识别潜在的签名基因以及其监管网络的推断对于临床和肿瘤的原因很重要。在这里,我们提出了一种新型多种基因组融合部分最小二乘性的深回归方法,同时分析多基因组数据。使用60个国家癌症研究所细胞系作为示例,我们旨在通过优化放射敏感性预测模型和揭示监管关系来识别签名基因。从20,000个基因中选择总共113个签名基因。该模型的根均方误差仅为0.0025,这远远低于先前公布的结果,这表明我们的方法可以预测最高精度的放射敏感性。此外,我们的监管网络分析确定了24个非常重要的“枢纽”基因。我们提出的数据分析工作流程提供统一和计算框架,以利用大规模集成癌症基因组数据的全部潜力进行综合签名发现。此外,回归模型,签名基因及其监管网络应为优化个性化治疗方案提供可靠的定量参考,并有助于我们对癌症进展机制的理解。

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