Identification of potential biomarkers for bone metastasis using human cancer metastasis database.

IF 2 Q2 MEDICINE, GENERAL & INTERNAL
Mahima Bhardwaj, Thanvi Sri, Srirama Krupanidhi, Sachidanand Singh
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引用次数: 0

Abstract

Objective: Information theory has been successfully employed to identify optimal pathway networks, mutual information (MI), and entropy as a dynamic response in statistical methods and estimate input and output information in systems biology. This research aims to investigate potentially integrated gene signatures for bone metastasis using graph-based information theory from the dynamic interaction interphase.

Methods: The expression dataset with the series ID GSE26964 for bone metastasis from prostate cancer was retrieved. The dataset was segregated for differentially expressed genes (DEGs) using the Human Cancer Metastasis Database. MI was considered to capture non-linear connections to classify the key DEGs from the collected dataset using gene-gene statistical analysis and then a protein-protein interaction network (PPIN). The PPIN was used to calculate centrality metrics, bottlenecks, and functional annotations.

Results: A total of 531 DEGs were identified. Thirteen genes were classified as highly correlated based on their gene expression data matrix. The extended PPIN of the 13 genes comprised 53 nodes and 372 edges. A total of four DEGs were identified as hubs. One novel gene was identified with strong network connectivity.

Conclusion: The novel biomarkers for metastasis may provide information on cancer metastasis to the bone by implying MI and information theory.

利用人类癌症转移数据库鉴定骨转移的潜在生物标志物。
目的:信息论已被成功地用于识别最优通路网络、互信息(MI)和作为统计方法动态响应的熵,以及估算系统生物学中的输入和输出信息。本研究旨在利用基于图的信息论,从动态相互作用间期研究骨转移的潜在整合基因特征:方法:检索序列号为 GSE26964 的前列腺癌骨转移表达数据集。利用人类癌症转移数据库(Human Cancer Metastasis Database)对数据集的差异表达基因(DEGs)进行分离。使用基因-基因统计分析和蛋白质-蛋白质相互作用网络(PPIN)对收集到的数据集中的关键 DEGs 进行分类,以捕捉非线性连接。PPIN 用于计算中心度量、瓶颈和功能注释:结果:共鉴定出 531 个 DEGs。根据基因表达数据矩阵,13 个基因被归类为高度相关基因。这 13 个基因的扩展 PPIN 包括 53 个节点和 372 条边。共有 4 个 DEGs 被确定为枢纽。结论:转移的新型生物标记物是一种新的生物标记物:癌症转移的新型生物标志物可通过 MI 和信息论提供癌症骨转移的信息。
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来源期刊
International Journal of Health Sciences-IJHS
International Journal of Health Sciences-IJHS MEDICINE, GENERAL & INTERNAL-
自引率
15.00%
发文量
49
审稿时长
8 weeks
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