# Finding Significant Hits in Networks: a network-based tool for analyzing gene-level P-values to identify significant genes missed by standard methods

**Authors:** Sandeep Acharya, Vaha Akbary Moghaddam, Wooseok J Jung, Yu S Kang, Shu Liao, Michael A Province, Michael R Brent

PMC · DOI: 10.1093/bib/bbag061 · Briefings in Bioinformatics · 2026-03-08

## TL;DR

FISHNET is a tool that identifies genes with meaningful associations missed by traditional methods by analyzing gene-level P-values in the context of biological networks and functions.

## Contribution

FISHNET introduces a novel network-based approach to detect significant gene-trait relationships that are missed by genome-wide significance thresholds.

## Key findings

- FISHNET identified 19 gene-trait relationships that missed genome-wide significance but replicated in an independent cohort.
- FISHNET uncovered a novel association between RUNX1 expression and HDL cholesterol levels supported by experimental evidence.
- FISHNET also found an association between LTB expression and BMI supported by experimental validation.

## Abstract

Finding Significant Hits in Networks (FISHNET) uses prior biological knowledge, represented as gene interaction networks and gene function annotations, to identify genes that do not meet the genome-wide significance threshold but replicate, nonetheless. Its input is gene-level P-values from any source, including omicsWAS, aggregation of genome-wide association studies P-values, CRISPR screens, or differential expression analysis. It is based on the idea that genes whose P-values are low purely by chance are distributed randomly across networks and functions, so genes with suggestive P-values that cluster in densely connected subnetworks and share common functions are less likely to reflect chance and more likely to replicate. FISHNET combines network and function analysis with permutation-based P-value thresholds to identify a small set of exceptional genes that we call FISHNET genes. Applied to 11 cardiovascular risk traits, FISHNET identified 19 gene-trait relationships that missed genome-wide significance thresholds but, nonetheless, replicated in an independent cohort. The replication rate of FISHNET genes matched that of genes with lower P-values. FISHNET identified a novel association between RUNX1 expression and HDL that is supported by experimental evidence that RUNX1 promotes white fat browning, which increases HDL cholesterol levels. FISHNET also identified an association between LTB expression and BMI that is supported by experimental evidence that higher LTB expression increases BMI via activation of the LTβR pathway. Both associations failed genome-wide significance thresholds, highlighting FISHNET’s ability to uncover meaningful relationships missed by traditional methods. FISHNET software is freely available at https://brentlab.github.io/fishnet/.

## Linked entities

- **Genes:** RUNX1 (RUNX family transcription factor 1) [NCBI Gene 861], LTB (lymphotoxin beta) [NCBI Gene 4050]

## Full-text entities

- **Genes:** GATA2 (GATA binding protein 2) [NCBI Gene 2624] {aka DCML, IMD21, MONOMAC, NFE1B}, Ppargc1a (peroxisome proliferative activated receptor, gamma, coactivator 1 alpha) [NCBI Gene 19017] {aka A830037N07Rik, Gm11133, PGC-1, PPARGC-1-alpha, Pgc-1alpha, Pgc1}, Apoa5 (apolipoprotein A-V) [NCBI Gene 66113] {aka 1300007O05Rik, Apoav, RAP3}, Hck (Hck proto-oncogene, Src family tyrosine kinase) [NCBI Gene 15162] {aka Bmk}, LTBR (lymphotoxin beta receptor) [NCBI Gene 4055] {aka D12S370, LT-BETA-R, TNF-R-III, TNFCR, TNFR-RP, TNFR2-RP}, Cx3cr1 (C-X3-C motif chemokine receptor 1) [NCBI Gene 13051] {aka mCX3CR1}, SRF (serum response factor) [NCBI Gene 6722] {aka MCM1}, RUNX1 (RUNX family transcription factor 1) [NCBI Gene 861] {aka AML1, AML1-EVI-1, AMLCR1, CBF2alpha, CBFA2, EVI-1}, CEBPB (CCAAT enhancer binding protein beta) [NCBI Gene 1051] {aka C/EBP-beta, IL6DBP, NF-IL6, TCF5}, LTB (lymphotoxin beta) [NCBI Gene 4050] {aka TNFC, TNFSF3, TNLG1C, p33}, Tnf (tumor necrosis factor) [NCBI Gene 21926] {aka DIF, TNF-a, TNF-alpha, TNFSF2, TNFalpha, Tnfa}, Ucp1 (uncoupling protein 1 (mitochondrial, proton carrier)) [NCBI Gene 22227] {aka Slc25a7, Ucp}, HMGCR (3-hydroxy-3-methylglutaryl-CoA reductase) [NCBI Gene 3156] {aka LDLCQ3, LGMDR28, MYPLG}, F3 (coagulation factor III, tissue factor) [NCBI Gene 2152] {aka CD142, TF, TFA}, Ltb (lymphotoxin B) [NCBI Gene 16994] {aka LTbeta, Tnfc, Tnfsf3, Tnlg1c, p33}, SREBF2 (sterol regulatory element binding transcription factor 2) [NCBI Gene 6721] {aka SREBP-2, SREBP2, bHLHd2}, Runx1 (runt related transcription factor 1) [NCBI Gene 12394] {aka AML1, CBF-alpha-2, Cbfa2, Pebp2a2, Pebpa2b}, Cdk6 (cyclin dependent kinase 6) [NCBI Gene 12571] {aka Crk2}, Cx3cl1 (C-X3-C motif chemokine ligand 1) [NCBI Gene 20312] {aka ABCD-3, CX3C, Cxc3, D8Bwg0439e, FK, Scyd1}, Ltbr (lymphotoxin B receptor) [NCBI Gene 17000] {aka LTbetaR, Ltar, TNF-R-III, TNFCR, TNFR-RP, TNFR2-RP}
- **Diseases:** inflammation (MESH:D007249), Schizophrenia (MESH:D012559), obese (MESH:D009765), FISHNET (MESH:D009461), Rheumatoid arthritis (MESH:D001172), cardiovascular risk (MESH:D002318), Molecular degeneration (MESH:D009410), Coronary artery disease (MESH:D003324), FHS (MESH:D006331), Bipolar disorder (MESH:D001714), hypertriglyceridemia (MESH:D015228), LLFS (MESH:D000094024)
- **Chemicals:** Triglycerides (MESH:D014280), KPF (MESH:C006552), cholesterol (MESH:D002784), lipids (MESH:D008055), glucose (MESH:D005947)
- **Species:** Mus musculus (house mouse, species) [taxon 10090], Homo sapiens (human, species) [taxon 9606]
- **Mutations:** rs2834707

## Full text

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## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12967332/full.md

## References

66 references — full list in the complete paper: https://tomesphere.com/paper/PMC12967332/full.md

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Source: https://tomesphere.com/paper/PMC12967332