Q-omics provides the consensus-scored ATP6V1B1 profile across patient tissues and cancer cell-line models. ATP6V1B1 expression is associated with patient survival in 23 of 34 cancer types, with the highest sampling consensus in ACC. Among the 18 cancer types available for tumor–normal comparison, ATP6V1B1 is differentially expressed in 13, with the highest sampling consensus in KIRC. Additionally, ATP6V1B1 protein abundance shows 28,617 significant protein co-abundance associations, with the highest sampling consensus in PDAC. Together, these results highlight ACC, KIRC, and PDAC as cancer lineages where ATP6V1B1 shows reproducible signals across survival, tumor–normal expression, and patient cross-omics 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.
Premium analyses for ATP6V1B1 — synthetic lethality, tumor antigen, and pembrolizumab response.
This table summarizes ATP6V1B1 survival associations across molecular data types. ATP6V1B1 RNA expression shows survival associations in the most cancer types (23), followed by mutation status (2) and mass-spec protein abundance (9). The rightmost column indicates the cancer type with the highest sampling consensus for each molecular layer.
This table ranks reproducible ATP6V1B1 RNA expression–survival associations across cancer types. High ATP6V1B1 expression shows unfavorable associations in ACC, COAD, THCA, BLCA and KIRC, but favorable associations in BRCA. The ACC Kaplan–Meier curve shows clear separation, with the high-expression group declining faster, consistent with the unfavorable association (log-rank p < 0.001). Together, the overview and detailed table identify ACC as the clearest survival context for ATP6V1B1 RNA expression.
This table summarizes ATP6V1B1 tumor–normal expression differences by data type. RNA shows broader differences across cancer types, with a lineage consensus of 13, while mass-spec protein shows differences in 11. The strongest signals are observed in KIRC for RNA and CCRCC for protein.
This table ranks reproducible tumor–normal expression differences for ATP6V1B1. A negative fold-change indicates higher expression in normal tissue than in tumor tissue. ATP6V1B1 shows lower tumor expression in KIRC and KIRP and higher tumor expression in COAD, THCA, LIHC and BLCA. The KIRC box plot shows higher ATP6V1B1 RNA expression in normal versus tumor tissue (log2 FC = −6.017, t-test p < 0.001).
This table shows molecular features associated with ATP6V1B1 in patient tissues and cancer cell lines. In patient samples, ATP6V1B1 shows the broadest associations at the RNA and protein expression levels, with PDAC recurring as the lineage with the largest associated feature set. In cancer cell lines, ATP6V1B1 RNA and mutation anchors are most strongly linked to RNA-expression features, especially in UPPER_AERODIGESTIVE_TRACT, while CRISPR and shRNA rows add functional-dependency signals in LIVER and BONE.