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The Machine-Learning-Mediated Interface of Microbiome and Genetic Risk Stratification in Neuroblastoma Reveals Molecular Pathways Related to Patient Survival.

Authors :
Li, Xin
Li, Xin
Wang, Xiaoqi
Huang, Ruihao
Stucky, Andres
Chen, Xuelian
Sun, Lan
Wen, Qin
Zeng, Yunjing
Fletcher, Hansel
Wang, Charles
Xu, Yi
Cao, Huynh
Sun, Fengzhu
Li, Shengwen Calvin
Zhang, Xi
Zhong, Jiang F
Li, Xin
Li, Xin
Wang, Xiaoqi
Huang, Ruihao
Stucky, Andres
Chen, Xuelian
Sun, Lan
Wen, Qin
Zeng, Yunjing
Fletcher, Hansel
Wang, Charles
Xu, Yi
Cao, Huynh
Sun, Fengzhu
Li, Shengwen Calvin
Zhang, Xi
Zhong, Jiang F
Source :
Cancers; vol 14, iss 12, 2874; 2072-6694
Publication Year :
2022

Abstract

Currently, most neuroblastoma patients are treated according to the Children's Oncology Group (COG) risk group assignment; however, neuroblastoma's heterogeneity renders only a few predictors for treatment response, resulting in excessive treatment. Here, we sought to couple COG risk classification with tumor intracellular microbiome, which is part of the molecular signature of a tumor. We determine that an intra-tumor microbial gene abundance score, namely M-score, separates the high COG-risk patients into two subpopulations (Mhigh and Mlow) with higher accuracy in risk stratification than the current COG risk assessment, thus sparing a subset of high COG-risk patients from being subjected to traditional high-risk therapies. Mechanistically, the classification power of M-scores implies the effect of CREB over-activation, which may influence the critical genes involved in cellular proliferation, anti-apoptosis, and angiogenesis, affecting tumor cell proliferation survival and metastasis. Thus, intracellular microbiota abundance in neuroblastoma regulates intracellular signals to affect patients' survival.

Details

Database :
OAIster
Journal :
Cancers; vol 14, iss 12, 2874; 2072-6694
Notes :
application/pdf, Cancers vol 14, iss 12, 2874 2072-6694
Publication Type :
Electronic Resource
Accession number :
edsoai.on1341877409
Document Type :
Electronic Resource