# From GWAS Signals to Causal Genes in Chronic Kidney Disease

**Authors:** Charlotte Delrue, Reinhart Speeckaert, Marijn M. Speeckaert

PMC · DOI: 10.3390/cimb48020148 · 2026-01-28

## TL;DR

This paper reviews how genetic discoveries from GWAS can be translated into understanding the genes and mechanisms behind chronic kidney disease.

## Contribution

The paper provides a unifying framework to connect GWAS signals with causal genes and mechanisms in chronic kidney disease.

## Key findings

- Emerging transcriptomic atlases help map genetic risk to specific kidney cell types.
- Combining multi-omics and CRISPR studies refines causal relationships in CKD.
- Genetic prioritization aids in therapeutic target discovery and precision nephrology.

## Abstract

Genome-wide association studies (GWAS) have transformed the study of chronic kidney disease (CKD) by identifying hundreds of genetic loci associated with multiple aspects of kidney function, including albuminuria and CKD risk factors, in diverse populations. A major challenge is translating statistically significant signals into causal genes and mechanisms, as most CKD-associated variants lie in non-coding regulatory regions and often act in a cell type- and context-specific manner. In this review, we provide an overview of the current strategies for moving from GWAS signals toward the identification of causal genes for CKD. We discuss advances in four areas: statistical and functional fine-mapping, molecular quantitative trait locus (QTL) mapping, colocalization, and transcriptome-wide associations, highlighting the advantages and disadvantages of each. We further examined how emerging kidney-specific single-cell, single-nucleus, and spatial transcriptomic atlases have enabled the mapping of genetic risk to specific renal cell types and microanatomical niches. By combining these approaches with chromatin interaction data, multi-omics analytics, and clustered regularly interspaced short palindromic repeats (CRISPR)-based studies, the process of generating causal relationships and mechanistic understanding has been further refined. Importantly, this review provides a unifying framework that synthesizes cross-sectional and longitudinal GWAS with kidney-specific functional genomics to distinguish genetic determinants of CKD susceptibility from modifiers of disease progression, thereby highlighting how regulatory variation and disease trajectories inform precision nephrology. As a result, we can provide insights into the role of genetically informed gene prioritization for experimentation, therapeutic target discovery, and the development of a framework for precision nephrology. Together, these advancements highlight how human genetics, in conjunction with functional genomics and experimental biology, can link an association signal to a clinically relevant interpretation of CKD.

## Linked entities

- **Diseases:** chronic kidney disease (MONDO:0005300)

## Full-text entities

- **Genes:** CUBN (cubilin) [NCBI Gene 8029] {aka IFCR, IGS, IGS1, MGA1, gp280}, NFKB1 (nuclear factor kappa B subunit 1) [NCBI Gene 4790] {aka CVID12, EBP-1, KBF1, NF-kB, NF-kB1, NF-kappa-B1}, GALNTL5 (polypeptide N-acetylgalactosaminyltransferase like 5) [NCBI Gene 168391] {aka GALNACT19, GALNT15, GalNAc-T5L}, PAX2 (paired box 2) [NCBI Gene 5076] {aka FSGS7, PAPRS, PAX-2}, CACNA1S (calcium voltage-gated channel subunit alpha1 S) [NCBI Gene 779] {aka CACNL1A3, CCHL1A3, CMYO18, CMYP18, Cav1.1, DHPRM}, UMOD (uromodulin) [NCBI Gene 7369] {aka ADMCKD2, ADTKD1, FJHN, HNFJ, HNFJ1, MCKD2}, DAB2 (DAB adaptor protein 2) [NCBI Gene 1601] {aka DOC-2, DOC2}, CPS1 (carbamoyl-phosphate synthase 1) [NCBI Gene 1373] {aka CPS1D, CPSASE1, GATD6, PHN}, SLC47A1 (solute carrier family 47 member 1) [NCBI Gene 55244] {aka MATE1}, SLC22A2 (solute carrier family 22 member 2) [NCBI Gene 6582] {aka OCT2}, TPPP (tubulin polymerization promoting protein) [NCBI Gene 11076] {aka TPPP/p25, TPPP1, p24, p25, p25alpha}, MANBA (mannosidase beta) [NCBI Gene 4126] {aka MANB1}, HS6ST1 (heparan sulfate 6-O-sulfotransferase 1) [NCBI Gene 9394] {aka HH15, HS6ST}, LRP2 (LDL receptor related protein 2) [NCBI Gene 4036] {aka DBS, GP330, LRP-2}, RAB38 (RAB38, member RAS oncogene family) [NCBI Gene 23682] {aka NY-MEL-1, rrGTPbp}, EGFR (epidermal growth factor receptor) [NCBI Gene 1956] {aka ERBB, ERBB1, ERRP, HER1, NISBD2, NNCIS}, APOL1 (apolipoprotein L1) [NCBI Gene 8542] {aka APO-L, APOL, APOL-I, FSGS4}, AFG2B (AAA ATPase AFG2B) [NCBI Gene 79029] {aka DFNB119, NEDHLS, SPATA5L1}, FGF5 (fibroblast growth factor 5) [NCBI Gene 2250] {aka HBGF-5, Smag-82, TCMGLY}, HNF1B (HNF1 homeobox B) [NCBI Gene 6928] {aka ADTKD3, FJHN, HNF-1-beta, HNF-1B, HNF1beta, HNF2}, F3 (coagulation factor III, tissue factor) [NCBI Gene 2152] {aka CD142, TF, TFA}, CERS2 (ceramide synthase 2) [NCBI Gene 29956] {aka L3, LASS2, SP260, TMSG1}, SLC34A1 (solute carrier family 34 member 1) [NCBI Gene 6569] {aka FRTS2, HCINF2, NAPI-3, NPHLOP1, NPT2, NPTIIa}, KNG1 (kininogen 1) [NCBI Gene 3827] {aka BDK, BK, HAE6, HK, HMWK, KNG}, SPATA7 (spermatogenesis associated 7) [NCBI Gene 55812] {aka HEL-S-296, HSD-3.1, HSD3, LCA3, RP94}, PGAP3 (post-GPI attachment to proteins phospholipase 3) [NCBI Gene 93210] {aka AGLA546, CAB2, PERLD1, PP1498, hCOS16}, CTSC (cathepsin C) [NCBI Gene 1075] {aka CPPI, DPP-I, DPP1, DPPI, HMS, JP}, ALB (albumin) [NCBI Gene 213] {aka FDAHT, HSA, PRO0883, PRO0903, PRO1341}, SHROOM3 (shroom family member 3) [NCBI Gene 57619] {aka APXL3, MSTP013, SHRM, ShrmL}
- **Diseases:** AKI (MESH:D058186), function (MESH:D003291), proteinuria (MESH:D011507), kidney function decline (MESH:D007680), hematuria (MESH:D006417), hyperglycemia (MESH:D006943), fibrosis (MESH:D005355), inflammation (MESH:D007249), injury to (MESH:D014947), disease (MESH:D004194), atrophy (MESH:D001284), CKD (MESH:D051436), pericardial edema (MESH:D004487), tubular injury (MESH:D000230), ischemic (MESH:D002545), diabetes (MESH:D003920), nephron loss (MESH:D007683), kidney failure (MESH:D051437), dysfunction (MESH:D006331), impaired renal function (MESH:D007674), tissue injury (MESH:D017695), ADPKD (MESH:D016891), diabetic kidney disease (MESH:D003928), death (MESH:D003643), albuminuria (MESH:D000419), anemia (MESH:D000740), end-stage kidney disease (MESH:D007676), cardiovascular disease (MESH:D002318)
- **Chemicals:** streptozotocin (MESH:D013311), salt (MESH:D012492), creatinine (MESH:D003404)
- **Species:** Mus musculus (house mouse, species) [taxon 10090], Danio rerio (leopard danio, species) [taxon 7955], Homo sapiens (human, species) [taxon 9606], Rattus norvegicus (brown rat, species) [taxon 10116]

## Figures

1 figure with captions in the complete paper: https://tomesphere.com/paper/PMC12939580/full.md

---
Source: https://tomesphere.com/paper/PMC12939580