Differential gene expression profile evaluation between uterine leiomyoma and leiomyosarcoma using a machine learning approach

Q4 Medicine
Sonal Upadhyay , Ravi Bhushan , Anima Tripathi , Lavina Chaubey , Amita Diwakar , Pawan K. Dubey
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引用次数: 0

Abstract

Objective

The objective of this study is to differentiate between uterine leiomyomas (ULM) and uterine leiomyosarcomas (ULMS) by conducting molecular differential analysis and identifying potential prognostic biomarkers for diagnosis.

Methods

The microarray datasets (GSEID: GSE64763 and GSE185543) were retrieved from the Gene Expression Omnibus database. Data preprocessing and differential gene expressions (DEGs) analysis were performed. The DEGs were further intersected to find the common DEGs in ULM and ULMS and further validation of selected DEGs were performed. Further, a machine learning classifier was also applied in the selection of biomarkers. Protein-protein interaction network based upon STRING v 10.5, was constructed. Additionally, Gene Ontology (GO) and KEGG (Kyoto Encyclopedia of Genes and Genomes) pathway enrichment analyses were also performed to dissect possible functions and pathways.

Results

A total of 50 significant DEGs for ULM while 321 DEGs for ULMS have been identified with their official gene symbol. Between ULM and ULMS, a total of 14 common DEGs were identified of which 8 were up-regulated while 6 were down-regulated. The DEGs of (GSE185543) were also analyzed and the significant genes were retrieved common in both datasets for further analysis. Using a machine learning approach, 10 feature genes were identified. Using the expression profiles of these genes, a sequential minimal optimization (SMO) prediction model was built on the training set, and it accurately and reliably classified features expression in ULM and ULMS in the independent test set. Furthermore, Co- Enrichment analysis was also performed.

Conclusion

The study identified several DEGs, including ZNF365, EPYC, COL11A1, SHOX2, MMP13, TNN, GPM6A, and GATA2, through cross-validation, machine learning classifier, and Co- Enrichment analysis. These candidate disease genes may provide valuable insight into the underlying mechanisms and could be used as potential diagnostic biomarkers for ULM and ULMS. However, further validation of these genes is necessary to better understand their roles in the pathogenesis of ULM and ULMS.

使用机器学习方法评估子宫平滑肌瘤和平滑肌肉瘤的差异基因表达谱
目的通过分子鉴别分析和鉴别诊断子宫平滑肌瘤(ULM)和子宫平滑肌肉瘤(ULMS)的潜在预后生物标志物,对两者进行鉴别。方法从Gene Expression Omnibus数据库中检索微阵列数据集(GSEID: GSE64763和GSE185543)。数据预处理和差异基因表达(DEGs)分析。进一步将这些deg相交以找到ULM和ULMS中的共同deg,并对所选的deg进行进一步验证。此外,还将机器学习分类器应用于生物标记物的选择。构建了基于STRING v10.5的蛋白-蛋白互作网络。此外,还进行了基因本体(GO)和KEGG(京都基因和基因组百科全书)途径富集分析,以剖析可能的功能和途径。结果共有50个特异的ULM基因,321个特异的ULMS基因被鉴定出其官方基因符号。在ULM和ULMS之间,共鉴定出14个共同的deg,其中8个表达上调,6个表达下调。对(GSE185543)的deg进行分析,并检索到两个数据集中共有的显著基因进行进一步分析。使用机器学习方法,确定了10个特征基因。利用这些基因的表达谱,在训练集上建立序列最小优化(SMO)预测模型,并在独立测试集上对ULM和ULMS中的特征表达进行准确可靠的分类。此外,还进行了Co富集分析。结论通过交叉验证、机器学习分类器和Co- Enrichment分析,鉴定出ZNF365、EPYC、COL11A1、SHOX2、MMP13、TNN、GPM6A和GATA2等多个基因。这些候选疾病基因可能为潜在机制提供有价值的见解,并可作为ULM和ULMS的潜在诊断生物标志物。然而,为了更好地了解这些基因在ULM和ULMS发病机制中的作用,需要进一步验证这些基因。
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
Gynecology and Obstetrics Clinical Medicine
Gynecology and Obstetrics Clinical Medicine Medicine-Obstetrics and Gynecology
CiteScore
0.70
自引率
0.00%
发文量
35
审稿时长
18 weeks
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