Gastric Cancer Biomarker Candidates Identified by Machine Learning and Integrative Bioinformatics: Toward Personalized Medicine.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Vigneshwar Suriya Prakash Sinnarasan, Dahrii Paul, Rajesh Das, Amouda Venkatesan
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Abstract

Gastric cancer (GC) is among the leading causes of cancer-related deaths worldwide. The discovery of robust diagnostic biomarkers for GC remains a challenge. This study sought to identify biomarker candidates for GC by integrating machine learning (ML) and bioinformatics approaches. Transcriptome profiles of patients with GC were analyzed to identify differentially expressed genes between the tumor and adjacent normal tissues. Subsequently, we constructed protein-protein interaction networks so as to find the significant hub genes. Along with the bioinformatics integration of ML methods such as support vector machine, the recursive feature elimination was used to select the most informative genes. The analysis unraveled 160 significant genes, with 88 upregulated and 72 downregulated, 10 hub genes, and 12 features from the variable selection method. The integrated analyses found that EXO1, DTL, KIF14, and TRIP13 genes are significant and poised as potential diagnostic biomarkers in relation to GC. The receiver operating characteristic curve analysis found KIF14 and TRIP13 are strongly associated with diagnosis of GC. We suggest KIF14 and TRIP13 are considered as biomarker candidates that might potentially inform future research on diagnosis, prognosis, or therapeutic targets for GC. These findings collectively offer new future possibilities for precision/personalized medicine research and development for patients with GC.

由机器学习和综合生物信息学确定的胃癌生物标志物候选物:走向个性化医疗。
胃癌(GC)是全球癌症相关死亡的主要原因之一。寻找可靠的GC诊断生物标志物仍然是一个挑战。本研究试图通过整合机器学习(ML)和生物信息学方法来确定GC的生物标志物候选物。分析胃癌患者的转录组谱,以确定肿瘤与邻近正常组织之间的差异表达基因。随后,我们构建了蛋白-蛋白相互作用网络,以寻找重要的枢纽基因。随着支持向量机等ML方法与生物信息学的融合,采用递归特征消去法选择信息量最大的基因。该分析揭示了160个重要基因,其中88个上调,72个下调,10个枢纽基因,以及变量选择方法的12个特征。综合分析发现,EXO1、DTL、KIF14和TRIP13基因是重要的,并且有望成为与GC相关的潜在诊断生物标志物。受试者工作特征曲线分析发现KIF14和TRIP13与GC的诊断密切相关。我们建议将KIF14和TRIP13作为潜在的生物标志物候选物,为GC的诊断、预后或治疗靶点的未来研究提供潜在的信息。这些发现共同为胃癌患者的精准/个性化医学研究和开发提供了新的未来可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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