Integration of Multi-Omics Data to Identify Cancer Biomarkers

Peng Li, Bo Sun
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Abstract

A novel method for integrating multi-omics data, including gene expression, copy number variation, DNA methylation, and miRNA data, is proposed to identify biomarkers of cancer prognosis. First, survival analysis was performed for these four types of omics data to obtain survival-related genes. Next, survival-related genes detected in at least two types of omics data were selected as candidate genes. The four types of omics data only composed of candidate genes were subjected to dimension reduction using an autoencoder to obtain a one-dimensional data representation. The mRMR algorithm was used to screen for key genes. This method was applied to lung squamous cell carcinoma and 20 cancer-related genes were identified. Gene function analysis revealed that the genes were related to cancer. Using survival analysis, the genes were verified to distinguish between high- and low-risk groups. These results indicate that the genes can be used as biomarkers for cancer.
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整合多组学数据识别癌症生物标志物
提出了一种整合多组学数据的新方法,包括基因表达、拷贝数变异、DNA甲基化和miRNA数据,以识别癌症预后的生物标志物。首先,对这四种组学数据进行生存分析,获得生存相关基因。接下来,在至少两种组学数据中检测到的生存相关基因被选为候选基因。将仅由候选基因组成的4类组学数据利用自编码器进行降维处理,得到一维数据表示。mRMR算法用于筛选关键基因。将该方法应用于肺鳞状细胞癌,鉴定出20个癌相关基因。基因功能分析显示,这些基因与癌症有关。通过生存分析,这些基因被证实可以区分高风险和低风险群体。这些结果表明,这些基因可以作为癌症的生物标志物。
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