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Identify truly high-risk TP53-mutated diffuse large B cell lymphoma patients and explore the underlying biological mechanisms.

Authors :
Du, Kai-Xin
Wu, Yi-Fan
Hua, Wei
Duan, Zi-Wen
Gao, Rui
Liang, Jun-Heng
Li, Yue
Yin, Hua
Wu, Jia-Zhu
Shen, Hao-Rui
Wang, Li
Shao, Yang
Li, Jian-Yong
Liang, Jin-Hua
Xu, Wei
Source :
Cell Communication & Signaling. 8/15/2024, Vol. 22 Issue 1, p1-16. 16p.
Publication Year :
2024

Abstract

TP53 mutation (TP53-mut) correlates with inferior survival in many cancers, whereas its prognostic role in diffuse large B-cell lymphoma (DLBCL) is still in controversy. Therefore, more precise risk stratification needs to be further explored for TP53-mut DLBCL patients. A set of 2637 DLBCL cases from multiple cohorts, was enrolled in our analysis. Among the 2637 DLBCL patients, 14.0% patients (370/2637) had TP53-mut. Since missense mutations account for the vast majority of TP53-mut DLBCL patients, and most non-missense mutations affect the function of the P53 protein, leading to worse survival rates, we distinguished patients with missense mutations. A TP53 missense mutation risk model was constructed based on a 150-combination machine learning computational framework, demonstrating excellent performance in predicting prognosis. Further analysis revealed that patients with high-risk missense mutations are significantly associated with early progression and exhibit dysregulation of multiple immune and metabolic pathways at the transcriptional level. Additionally, the high-risk group showed an absolutely suppressed immune microenvironment. To stratify the entire cohort of TP53-mut DLBCL, we combined clinical characteristics and ultimately constructed the TP53 Prognostic Index (TP53PI) model. In summary, we identified the truly high-risk TP53-mut DLBCL patients and explained this difference at the mutation and transcriptional levels. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
1478811X
Volume :
22
Issue :
1
Database :
Academic Search Index
Journal :
Cell Communication & Signaling
Publication Type :
Academic Journal
Accession number :
179039463
Full Text :
https://doi.org/10.1186/s12964-024-01765-w