2023
DOI: 10.3389/fimmu.2023.1128390
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Identification and validation of a novel senescence-related biomarker for thyroid cancer to predict the prognosis and immunotherapy

Abstract: IntroductionCellular senescence is a hallmark of tumors and has potential for cancer therapy. Cellular senescence of tumor cells plays a role in tumor progression, and patient prognosis is related to the tumor microenvironment (TME). This study aimed to explore the predictive value of senescence-related genes in thyroid cancer (THCA) and their relationship with the TME.MethodsSenescence-related genes were identified from the Molecular Signatures Database and used to conduct consensus clustering across TCGA-THC… Show more

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Cited by 15 publications
(13 citation statements)
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“…Accumulating evidence has demonstrated a superior prognostic value of optimized combination of SRGs‐derived signature in multiple cancers 14,48 . We have effectively developed and verified a 7‐SRGs OSCC‐specific prognostic signature with favorable prognostic powers in multiple independent patient cohorts as supported by ROC and C‐index analyses.…”
Section: Discussionmentioning
confidence: 78%
See 1 more Smart Citation
“…Accumulating evidence has demonstrated a superior prognostic value of optimized combination of SRGs‐derived signature in multiple cancers 14,48 . We have effectively developed and verified a 7‐SRGs OSCC‐specific prognostic signature with favorable prognostic powers in multiple independent patient cohorts as supported by ROC and C‐index analyses.…”
Section: Discussionmentioning
confidence: 78%
“…40,47 These abovementioned findings suggest these SRGs identified here might have oncogenic or tumorsuppressive roles underlying OSCC progression by Accumulating evidence has demonstrated a superior prognostic value of optimized combination of SRGsderived signature in multiple cancers. 14,48 We have effectively developed and verified a 7-SRGs OSCC-specific prognostic signature with favorable prognostic powers in multiple independent patient cohorts as supported by ROC and C-index analyses. Furthermore, we generated a novel SRG nomogram integrating SRG signature and clinicopathological characteristics because of the nomogram benefits which elucidated the personalized requirement for therapeutic interventions or support.…”
Section: Discussionmentioning
confidence: 90%
“…The RS of each EC patient was calculated, and the median RS was used as the critical value to further divide the EC patients into high-risk group and low-risk group (high-risk group: RS≥median; low-risk group: RS < median). Considering the sample size and referring to previous literature [ 43 , 44 ], the total samples (Total Set, n =545) were randomly divided into a Train Set ( n =273) and a Test Set ( n =272) in a one-to-one ratio using the random sampling function in the R programming language to minimize information leakage and enhance model performance evaluation accuracy. Initially, the risk scores for patients in the Training Set were computed using the aforementioned formula.…”
Section: Methodsmentioning
confidence: 99%
“…The most significant GLRGs among the GLRGs in the GLRG-related signature were further screened out by integrating 12 machine learning (ML) algorithms and combining 113 algorithm combinations [ 55 ] to authenticate GLRGs with high accuracy and stability between EC and normal samples. As previously mentioned, considering the sample size and referring to previous literature [ 43 , 44 ], the total samples (All Set) were randomly and equally partitioned into a Train Set and a Test Set. The same Train Set was utilized to construct signatures among the 113 algorithms, and subsequently, the validation of these signatures was performed based on the calculation results obtained from both the same Test Set and All Set.…”
Section: Methodsmentioning
confidence: 99%
“…[7] Several prediction models derived from cell senescence-related genes (CSRGs) have been developed to predict prognosis and treatment efficacy for multiple types of cancer, highlighting the critical role of these genes in cancer biology. [8,9] In this study, we firstly generated molecular clusters derived from CSRGs, and then established a risk signature for the overall survival (OS) prediction of BC patients. Differences in clinical characteristics, immune infiltration, chemotherapy and radiotherapy response between different risk groups were further analyzed.…”
Section: The Datasets Generated During And/or Analyzed During the Cur...mentioning
confidence: 99%