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Identification and Validation of a Novel Anoikis-related Prognostic Model for Prostate Cancer

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Specialty Genetics
Date 2024 Apr 4
PMID 38572916
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Abstract

Background: Anoikis resistance is a hallmark characteristic of oncogenic transformation, which is crucial for tumor progression and metastasis. The aim of this study was to identify and validate a novel anoikis-related prognostic model for prostate cancer (PCa).

Methods: We collected a gene expression profile, single nucleotide polymorphism mutation and copy number variation (CNV) data of 495 PCa patients from the TCGA database and 140 PCa samples from the MSKCC dataset. We extracted 434 anoikis-related genes and unsupervised consensus cluster analysis was used to identify molecular subtypes. The immune infiltration, molecular function, and genome alteration of subtypes were evaluated. A risk signature was developed using Cox regression analysis and validated with the MSKCC dataset. We also identify potential drugs for high-risk group patients.

Results: Two subtypes were identified. C1 exhibited a higher level of CNV amplification, immune score, stromal score, aneuploidy score, homologous recombination deficiency, intratumor heterogeneity, single-nucleotide variant neoantigens, and tumor mutational burden compared to C2. C2 showed a better survival outcome and had a high level of gamma delta T cell and activated B cell infiltration. The risk signature consisting of four genes (HELLS, ZWINT, ABCC5, and TPSB2) was developed (area under the curve = 0.780) and was found to be an independent prognostic factor for overall survival in PCa patients. Four CTRP-derived and four PRISM-derived compounds were identified for high-risk patients.

Conclusions: The anoikis-related prognostic model developed in this study could be a useful tool for clinical decision-making. This study may provide a new perspective for the treatment of anoikis-related PCa.

Citing Articles

Anoikis-related genes in breast cancer patients: reliable biomarker of prognosis.

Tang M, Rong Y, Li X, Pan H, Tao P, Wu Z BMC Cancer. 2024; 24(1):1163.

PMID: 39300389 PMC: 11411761. DOI: 10.1186/s12885-024-12830-5.


Identification and validation of a novel anoikis-related prognostic model for prostate cancer.

Zhang P, Lv W, Luan Y, Cai W, Min X, Feng Z Mol Genet Genomic Med. 2024; 12(4):e2419.

PMID: 38572916 PMC: 10993702. DOI: 10.1002/mgg3.2419.

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