Negative regulation of cellular senescence

associated omics data
GO:2000773Ontology (GO BP)GO biological process · ~24 member genes

Q-omics provides the Negative regulation of cellular senescence (GO:2000773) pathway profile, scoring each patient from the combined activity of its roughly 24 member genes. Pathway activity is associated with patient survival in 27 of 34 cancer types, with the highest sampling consensus in UCS. Among the 18 cancer types available for tumor–normal comparison, the pathway is differentially active in 11, with the highest sampling consensus in HNSC. Additionally, pathway RNA activity shows 36,460 significant cross-omics associations, again with the highest sampling consensus in STAD. Together, these results highlight UCS, HNSC, and STAD as cancer lineages where the pathway shows reproducible signals across outcome, tissue activity, and molecular association analyses.

Every result is evaluated using two consensus scores. Sampling consensus measures how consistently a finding is reproduced within a cancer lineage across different conditions. Lineage consensus measures how broadly the result is shared across cancer types, distinguishing pan-cancer signals from lineage-specific patterns. Pathway-against-pathway and pathway-against-mutation comparisons are not available for ontology entities.

Survival associations

This table summarizes Negative regulation of cellular senescence survival associations by molecular data type. RNA-level pathway activity shows survival associations in the most cancer types (27). The rightmost column indicates the cancer type with the highest sampling consensus for each layer.
Data typeSurvival analysisLineage consensusLineage of highest sampling consensus
GO function (RNA)Kaplan–Meier27UCS (90)view →
GO function (Protein (mass-spec))Kaplan–Meier5OV (4)view →
This table ranks reproducible pathway activity–survival associations across cancer types. High Negative regulation of cellular senescence activity shows favorable associations in UCS and SKCM, but unfavorable associations in ACC, LGG, SARC and LUSC. In the UCS Kaplan–Meier curve the low-activity group declines faster, consistent with the favorable association (log-rank p = .002). UCS ranks highest by sampling consensus for Negative regulation of cellular senescence.
LineageMeasureSplitStageAUC1
high
AUC2
low
pSampling consensus
UCSDFSMedianAll0.3960.124.00290view →
ACCOSMedianAll0.6350.878<.00172view →
LGGOSQuartileAll0.3060.483.00232view →
SKCMOSMedianIV0.8670.236.00330view →
SARCDFSTertileAll0.5020.672<.00127view →
LUSCDFSTertileIII,IV0.1440.854<.00125view →
Pink = unfavorable, green = favorable. all 27 lineages →

Negative regulation of cellular senescence-UCS (DFS)

Kaplan–Meier survival curve for Negative regulation of cellular senescence pathway activity in UCS: high vs low activity groups.

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Tumor vs Normal activity

This table summarizes Negative regulation of cellular senescence tumor–normal activity differences by data type. RNA-level activity shows significant tumor–normal differences in 11 cancer types, while mass-spec protein activity shows differences in 3. The strongest signals are in HNSC for RNA and COAD for protein.
Data typeActivity analysisLineage consensusLineage of highest sampling consensus
GO function (RNA)Box plot11HNSC (12)view →
GO function (Protein (mass-spec))Box plot3COAD (9)view →
This table ranks reproducible tumor–normal activity differences for the pathway. A positive fold-change indicates higher activity in tumor tissue. The pathway shows higher tumor activity across HNSC, READ and LIHC and lower tumor activity in UCEC, KICH and BRCA. In the HNSC box plot, tumor samples show higher pathway activity than matched normal samples (log2 FC = +0.058, t-test p < 0.001).
LineageGenderStageFold-changepSampling consensus
HNSCMaleIII,IV+0.058<.00112view →
UCECAllAll−0.062<.0016view →
KICHFemaleAll−0.048<.0016view →
BRCAAllAll−0.030<.0016view →
READAllII,III,IV+0.042.0164view →
LIHCFemaleAll+0.022<.0014view →
Pink = higher activity in tumor. all 11 lineages →

Negative regulation of cellular senescence-HNSC

Tumor-vs-normal pathway-activity box plot for Negative regulation of cellular senescence in HNSC.

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Cross-omics associations

This table shows molecular features associated with Negative regulation of cellular senescence pathway activity in patient tissues and cancer cell lines. In patient samples, pathway activity is most strongly linked to RNA and protein features, with the largest associated set in STAD. In cancer cell lines, RNA-expression features and functional dependencies dominate, with the largest set in BLOOD_Leukemia.
Associated data typeStrength (# associated data)Lineage of highest associated data
RNA
RNA36,460STAD (24360)view →
Protein (mass-spec)8,890BRCA (2932)view →
Protein (mass-spec)
Protein (mass-spec)16,462GBM (4107)view →
RNA3,072COAD (982)view →
Associated data typeStrength (# associated data)Lineage of highest associated data
CRISPR
RNA1,890BLOOD_Leukemia (421)view →
CRISPR1,658CNS (135)view →
RNA
RNA6,229BLOOD_Leukemia (2600)view →
CRISPR2,044BLOOD_Lymphoma (216)view →
Protein (mass-spec)
RNA2,470BLOOD_Leukemia (277)view →
CRISPR1,432SOFT_TISSUE (158)view →
shRNA
RNA1,616LUNG_SCLC (801)view →
shRNA1,189LUNG_SCLC (221)view →