» Articles » PMID: 37893423

Robust Identification of Differential Gene Expression Patterns from Multiple Transcriptomics Datasets for Early Diagnosis, Prognosis, and Therapies for Breast Cancer

Overview
Publisher MDPI
Specialty General Medicine
Date 2023 Oct 28
PMID 37893423
Authors
Affiliations
Soon will be listed here.
Abstract

Breast cancer (BC) is one of the major causes of cancer-related death in women globally. Proper identification of BC-causing hub genes (HubGs) for prognosis, diagnosis, and therapies at an earlier stage may reduce such death rates. However, most of the previous studies detected HubGs through non-robust statistical approaches that are sensitive to outlying observations. Therefore, the main objectives of this study were to explore BC-causing potential HubGs from robustness viewpoints, highlighting their early prognostic, diagnostic, and therapeutic performance. Integrated robust statistics and bioinformatics methods and databases were used to obtain the required results. We robustly identified 46 common differentially expressed genes (cDEGs) between BC and control samples from three microarrays (GSE26910, GSE42568, and GSE65194) and one scRNA-seq (GSE235168) dataset. Then, we identified eight cDEGs (, , , , , , , and ) as the BC-causing HubGs by the protein-protein interaction (PPI) network analysis of cDEGs. The performance of BC and survival probability prediction models with the expressions of HubGs from two independent datasets (GSE45827 and GSE54002) and the TCGA (The Cancer Genome Atlas) database showed that our proposed HubGs might be considered as diagnostic and prognostic biomarkers, where two genes, and , exhibit better performance. The expression analysis of HubGs by Box plots with the TCGA database in different stages of BC progression indicated their early diagnosis and prognosis ability. The HubGs set enrichment analysis with GO (Gene ontology) terms and KEGG (Kyoto Encyclopedia of Genes and Genomes) pathways disclosed some BC-causing biological processes, molecular functions, and pathways. Finally, we suggested the top-ranked six drug molecules (Suramin, Rifaximin, Telmisartan, Tukysa Tucatinib, Lynparza Olaparib, and TG.02) for the treatment of BC by molecular docking analysis with the proposed HubGs-mediated receptors. Molecular docking analysis results also showed that these drug molecules may inhibit cancer-related post-translational modification (PTM) sites (Succinylation, phosphorylation, and ubiquitination) of hub proteins. : This study's findings might be valuable resources for diagnosis, prognosis, and therapies at an earlier stage of BC.

Citing Articles

Exploring bacterial key genes and therapeutic agents for breast cancer among the Ghanaian female population: Insights from In Silico analyses.

Kibria M, Ali M, Haque Mollah M PLoS One. 2024; 19(11):e0312493.

PMID: 39585882 PMC: 11588272. DOI: 10.1371/journal.pone.0312493.


Screening of differential gene expression patterns through survival analysis for diagnosis, prognosis and therapies of clear cell renal cell carcinoma.

Ajadee A, Mahmud S, Hossain M, Ahmmed R, Ali M, Reza M PLoS One. 2024; 19(9):e0310843.

PMID: 39348357 PMC: 11441673. DOI: 10.1371/journal.pone.0310843.

References
1.
Hong Z, Wang Q, Hong C, Liu M, Qiu P, Lin R . Identification of Seven Cell Cycle-Related Genes with Unfavorable Prognosis and Construction of their TF-miRNA-mRNA regulatory network in Breast Cancer. J Cancer. 2021; 12(3):740-753. PMC: 7778540. DOI: 10.7150/jca.48245. View

2.
Mu R, Ma Z, Lu C, Wang H, Cheng X, Tuo B . Role of succinylation modification in thyroid cancer and breast cancer. Am J Cancer Res. 2021; 11(10):4683-4699. PMC: 8569371. View

3.
Peng Z, Xu B, Jin F . Circular RNA hsa_circ_0000376 Participates in Tumorigenesis of Breast Cancer by Targeting miR-1285-3p. Technol Cancer Res Treat. 2020; 19:1533033820928471. PMC: 7257864. DOI: 10.1177/1533033820928471. View

4.
Zhang J, Zhou Y, Yu Z, Chen A, Yu Y, Wang X . Identification of core genes and clinical roles in pregnancy-associated breast cancer based on integrated analysis of different microarray profile datasets. Biosci Rep. 2019; 39(6). PMC: 6591572. DOI: 10.1042/BSR20190019. View

5.
Yan Z, Wang Q, Sun X, Ban B, Lu Z, Dang Y . OSbrca: A Web Server for Breast Cancer Prognostic Biomarker Investigation With Massive Data From Tens of Cohorts. Front Oncol. 2020; 9:1349. PMC: 6932997. DOI: 10.3389/fonc.2019.01349. View