Article Text
Abstract
Background Monogenic disorders are estimated to account for 10%–12% of patients with kidney failure. We report the unexpected finding of an unusual uromodulin (UMOD) variant in multiple pedigrees within the British population and demonstrate a shared haplotype indicative of an ancestral variant.
Methods Probands from 12 apparently unrelated pedigrees with a family history of kidney failure within a geographically contiguous UK region were shown to be heterozygous for a pathogenic variant of UMOD c.278_289delTCTGCCCCGAAG insCCGCCTCCT.
Results A total of 88 clinically affected individuals were identified, all born in the UK and of white British ethnicity. 20 other individuals with the variant were identified in the UK 100,000 Genomes (100K) Project and 9 from UK Biobank (UKBB). A common extended haplotype was present in 5 of the UKBB individuals who underwent genome sequencing which was only present in <1 in 5000 of UKBB controls. Significantly, rare variants (<1 in 250 general population) identified within 1 Mb of the UMOD variant by genome sequencing were detected in all of the 100K individuals, indicative of an extended shared haplotype.
Conclusion Our data confirm a likely founder UMOD variant with a wide geographical distribution within the UK. It should be suspected in cases of unexplained familial nephropathy presenting in patients of white British ancestry.
- founder effect
- genetics, population
- mutation
- genetic counseling
- diagnosis
Data availability statement
All data relevant to the study are included in the article or uploaded as supplementary information.
This is an open access article distributed in accordance with the Creative Commons Attribution 4.0 Unported (CC BY 4.0) license, which permits others to copy, redistribute, remix, transform and build upon this work for any purpose, provided the original work is properly cited, a link to the licence is given, and indication of whether changes were made. See: https://creativecommons.org/licenses/by/4.0/.
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WHAT IS ALREADY KNOWN ON THIS TOPIC
A rare uromodulin (UMOD) variant was first reported in a UK pedigree with familial nephropathy in 2001, followed by isolated reports.
A previous study concluded that the variant was a recurrent change rather than a founder effect.
WHAT THIS STUDY ADDS
A further 41 pedigrees with the rare UMOD variant identified through regional centres and large national databases.
Compelling evidence for a pathogenic ancestral variant highly prevalent in the white British population, responsible for kidney failure and chronic kidney disease.
HOW THIS STUDY MIGHT AFFECT RESEARCH, PRACTICE OR POLICY
A high index of clinical suspicion in undiagnosed cases of familial nephropathy of white British ancestry.
Definition of a large affected group of common ancestry sharing the same variant and thus opportunities to study non-allelic contributions to phenotypic variability.
Introduction
Chronic kidney disease (CKD) is estimated to affect up to 10% of the world’s population, making it a leading cause of morbidity and mortality.1 Although CKD and kidney failure usually results from the interaction of lifestyle or environmental factors with complex polygenic traits, monogenic disorders are estimated to account for 10%–12% of kidney failure.2 The vast majority of these cases can be attributed to autosomal dominant polycystic kidney disease but pathogenic gene variants especially associated with autosomal dominant tubulointerstitial kidney disease (ADTKD) and Alport syndrome are being increasingly recognised.2
ADTKD is a rare genetic cause of progressive CKD and kidney failure. It is genetically heterogenous with pathogenic variants in MUC1,3 REN,4 HNF1B 5 and uromodulin (UMOD) 6 identified, with UMOD comprising the highest proportion of ADTKD cases of up to 50%, with a disease prevalence of 9 per million.7 ADTKD-UMOD is estimated to account for 2% of patients with kidney failure,8 with susceptibility UMOD variants also conferring around 20% increased risk for CKD and 15% for hypertension.9 Classically, it is characterised by early onset gout, hyperuricaemia, the absence of haematuria or proteinuria and kidney failure usually occurring between 30 and 60 years.
UMOD encodes uromodulin, the most abundant mammalian urinary protein, which is predominantly produced by the thick ascending limb of the loop of Henle in the renal tubule.10 Uromodulin contains an N-terminal signal peptide, three epidermal growth factor-like (EGF-like) domains, an eight-cysteine domain (D8C), a zona pellucida (ZP) domain and a glycosylphosphatidylinositol anchor segment. Although the physiological roles of uromodulin have not been fully established, studies on UMOD knockout mice have suggested protective roles against urinary tract infections (UTIs),11–13 calcium oxalate formation14 and in facilitating electrolyte reabsorption in the renal tubules.15 16 Pathogenic UMOD variants lead to protein misfolding resulting in intracellular accumulation within the endoplasmic reticulum (ER)17 and a subsequent reduction in urinary secretion.18 Over 100 distinct UMOD variants have been reported to contribute to ADTKD-UMOD, with 95% localising in exon 3 and exon 4.19 The clinical presentation across ADTKD-UMOD genotypes appears to be variable with no clear genotype-phenotype correlation.20
In this study, we report a rare UMOD variant, c.278_289delTCTGCCCCGAAG insCCGCCTCCT detected in a cluster of unrelated families within a contiguous geographical area with unexplained CKD leading to kidney failure. In national UK cohorts (100,000 Genomes (100K) Project and UK Biobank (UKBB)), we detected other cases with the same variant from other geographical regions but who share a common extended haplotype indicative of an ancestral mutation originating in the UK population.
Materials and methods
Study population
All probands were referred to the renal genetic clinics at Sheffield and Nottingham due to a family history of kidney failure of unknown aetiology. Index cases with heterozygous UMOD variant c.278_289delTCTGCCCCGAAG insCCGCCTCCT had their family history assessed. Affected relative with CKD and at-risk, apparently healthy family members were subsequently invited to a renal genetics consultation where they were offered genetic testing and had their clinical features, kidney function and kidney morphology (ultrasound) assessed. The age of onset of kidney failure was recorded and patients without kidney failure had their latest estimated glomerular filtration rate (eGFR) estimated using the Chronic Kidney Disease Epidemiology Collaboration (CKD-EPI) 2009 equation. The definition and staging of CKD followed the Kidney Disease Outcomes Quality Initiative and Kidney Disease Improving Global Outcomes (KDIGO) guidelines. CKD was defined as the presence of an eGFR <60 mL/min/1.73 m2 or the presence of markers indicating kidney damage, such as albuminuria for >3 months. Staging of CKD was based on eGFR and severity of albuminuria, and their CKD class specified according to KDIGO guidelines.21 22 A retrospective review of all patients screened for the UMOD variant at both renal genetic clinics was conducted.
Mutational analysis
The recurrent pathogenic UMOD variant c.278_289delTCTGCCCCGAAG insCCGCCTCCT (exon 3) was identified using targeted analysis or panel-based sequencing in familial cases of kidney failure. Five of the index cases were identified on a six gene ADTKD next-generation sequencing gene panel offered through the Sheffield Diagnostic Genetics Service comprising the following genes: REN, UMOD, HNF1B, SEC61A1, TSC1, TSC2 and another five through a two gene panel (UMOD, REN) offered through Oxford University Hospitals. The remaining two cases were diagnosed on direct UMOD testing or on a 15 gene tubulointerstitial kidney disease panel (R202, Panel App V.1.3) which includes UMOD (Bristol Genetics Laboratory).
Genomics England 100,000 Genomes Project
Inclusion and genotyping of participants in the 100K was managed by Genomics England Limited (GEL). All participants in 100K provided written consent to access their anonymised clinical and genomic data for research purposes (https://re.extge.co.uk/ovd/). Whole-genome sequencing (WGS) was performed on all participants and processed using the GEL rare disease analysis pipeline as previously described.23 24 Phenotypes of identified carriers were manually reviewed in the Genomics England Participant Explorer. Initially, affected candidates were filtered based on c.278_289delTCTGCCCCGAAG insCCGCCTCCT UMOD variant (rs878855325) in the interactive variant analysis browser (IVA V.2.0, CG38 and RD38). Further detailed analysis of rs878855325 for the selected cases was extracted from the IVA browser and phenotype information from the KIBANA Data discovery (V.3.2) browser. KIBANA and IVA are part of the secured access environment. Cohort statistics were expressed as very rare (frequency <0.1%), rare (frequency <0.5%), average (frequency <5%), common (frequency >5%) or not observed.25 Conservation was assessed as follows: PhyloP score (positive scores—measure conservation, which is slower evolution than expected, at sites that are predicted to be conserved), PhastCons (scores represent probabilities of negative selection and range between 0 and 1) and Genomic Evolutionary Rate Profiling (score ranges from −12.3 to 6.17, with 6.17 being the most conserved). Selected cases and phenotype history were recorded in an excel file using a pseudo-case ID. Finally, recorded data were subjected to downstream bioinformatics analysis.
UK Biobank
The UKBB comprises approximately 500 000 participants with extensive phenotyping and genetic data linked to clinical care records.26 The whole-exome sequencing pipeline and quality control has been recently described.27 We examined the available UKBB cohort exome data for the presence of the c.278_289delTCTGCCCCGAAG insCCGCCTCCT variant in the UMOD gene using the NM_003361.3 transcript and obtained demographic data from baseline assessment including age and sex. Clinical phenotype data relevant to ADTKD-UMOD including CKD-EPI eGFR, systolic and diastolic blood pressure, albumin:creatinine ratio and serum urate concentration from enrolment in UKBB were obtained along with Hospital Episode Statistics (HES) data for CKD and gout. Ancestry was determined by self-reporting at the assessment centre. Statistical differences in clinical data were determined by independent t-test for continuous data and a Fisher’s exact test for categorical data.
Haplotype analysis
We used the directly genotyped SNP chip data from UKBB to phase haplotypes on chromosome 16. The genotyping and quality control of UKBB has been described previously.26 We only used SNPs with a minor allele frequency >5% with a missingness rate <1%. We used SHAPEIT228 for haplotype phasing.
To support the common variant haplotype analyses, we used WGS data available in 150 000 UKBB individuals. Five of the nine individuals with the c.278_289delTCTGCCCCGAAG insCCGCCTCCT variant had WGS data available. The genome sequencing and quality control have been described in detail elsewhere (doi: https://doi.org/10.1101/2021.11.16.468246).
We identified four rare variants (<0.5% frequency in the UKBB) in the 1 Mb window around c.278_289delTCTGCCCCGAAG insCCGCCTCCT and tested whether they were associated with the presence of the UMOD variant using Fisher’s exact test. We determined ancestry using principal component analysis as previously described.29
We then assessed the frequency of four rare variants associated with c.278_289delTCTGCCCCGAAG insCCGCCTCCT in the UKBB in the 100K participants. The genome sequencing and quality control have been described previously.24 We used Fisher’s exact test to test for an increased frequency of these variants in the c.278_289delTCTGCCCCGAAG insCCGCCTCCT heterozygotes compared with the 100K background population.
In silico studies
The three-dimensional (3D) structure of uromodulin (UniProt: P07911) was downloaded from AlphaFold DB (https://alphafold.ebi.ac.uk/). An experimentally validated indel mutant structure is not available, and therefore we generated a mutant structure by introducing the indel mutation in silico, computationally modelled by AlphaFold Colab (https://github.com/deepmind/alphafold).30 All types of direct interactions: polar and non-polar, favourable and unfavourable, including clashes, were analysed using contacts command in UCSF Chimera V.1.14.31 In the output, the atom-atom contacts are listed in order of decreasing van der Waals (VDW) overlap: positive where the atomic VDW spheres are intersecting, zero if just touching and negative if separated by space. The superimposed 3D structural model of the EGF II domain was obtained by superimposing mutated EGF II into the EGF II of the UMOD model, using the MatchMaker tool on UCSF Chimera V.1.14.31 The evolutionary conservation score of each amino acid of UMOD (EGF II domain) was determined using the ConSurf algorithm, based on the phylogenetic relationships between sequence homologues.32 The predicted impact of the mutation on protein function was analysed using DeepFRI (Graph Convolutional Network for predicting protein functions).33
Maps and plots
The bubble and choropleth map plots were created in R studio (R V.4.0.5). Shapefile: NUTS Level 2 (Counties) Boundaries file was downloaded from geoportal.statistics.gov.uk (valid as of January 2018). A Sankey diagram was created using packages Canvg and d3.js (https://github.com/nowthis/sankeymatic). Pedigree structures were plotted manually in Microsoft PowerPoint.
Statistical analysis
Descriptive measures were presented as mean±SD or median (IQR or range as specified). Renal survival was defined as time to the start of renal replacement therapy and was displayed as Kaplan-Meier survival plots. Patients were censored if they did not receive renal replacement therapy in the study duration and a log-rank test was used for comparison between sex. A χ2 test was used to determine association between hypertensive status and the development of kidney failure. A p value of <0.05 was deemed as significant. All statistical analysis was done with SPSS V.26.
Results
Clinical findings at presentation
Genetic testing
A total of 91 patients across 12 families with available clinical data were reviewed and their diagnostic outcomes were summarised (online supplemental figure 1). Altogether, there were 88 patients with definite or likely ADTKD-UMOD, 38 with a genetic diagnosis and 50 with a presumptive diagnosis (not genotyped) based on their clinical characteristics and family history according to diagnostic criteria laid out by the KDIGO Consensus Report on ADTKD.34 Of the latter, 94% (47/50) had a recorded diagnosis of kidney failure and 66% (33/50) were deceased.
Supplemental material
Kidney function
Online supplemental table 1 shows the breakdown of clinical features in the patients with ADTKD-UMOD. Eighty-two per cent (71/88) had a diagnosis of CKD with 69% (61/88) having kidney failure. The median age of kidney failure was 52 years (range 32–76). The remaining 31% (27/88) who did not have CKD on presentation were younger and had a median age of 32.5 years (range 17–73). The median age of kidney survival was 55 years with no significant sex difference (p=0.31 by log-rank test) based on Kaplan-Meier survival analysis (online supplemental figure 2). Within each family however, the age of kidney failure varied greatly between individuals with a median age of 52 (range 32–76) years; pedigree 12 had no information on individuals reaching kidney failure (online supplemental figure 3).
Clinical features
Hypertension was present in 65% (30/46) of our cohort with available blood pressure readings. Hypertension showed a non-significant association with the development of kidney failure (p=0.07). Proteinuria was rarely seen and only three patients had proteinuria ≥30 mg/g. Microscopic haematuria (trace or 1+) was detected in 18% (7/40); no case of macroscopic haematuria was reported. Where available, hyperuricaemia was noted in 32% (9/28) at presentation and 61% (17/28) had transient hyperuricaemia recorded on at least one occasion. Nonetheless, gout was not a prominent feature, with only 6.9% (6/87) reporting incident gout at a median age onset of 42.5 (range 29–61) years. Only two patients had renal stones, one was asymptomatic and diagnosed incidentally. Of patients with available information, 15% (8/55) reported an episode of UTI during their lifetime; recurrent UTIs were present in 4% (2/55).
Renal ultrasound
Among patients with available renal ultrasound results (n=28), 61% (17/28) had normal-sized kidneys and the remaining 39% (11/28) had small kidneys. Renal cysts were uncommon: 18% (5/28) had either one or two cysts in each kidney and only one patient had >10 cysts in each kidney.
Biopsy findings
Eight patients with the variant had renal biopsies and only one patient had a normal biopsy report (online supplemental table 1). Among biopsies with abnormal findings, interstitial fibrosis and tubular atrophy were the most common findings seen: examples from two patients are shown in online supplemental figure 4. Arterial profiles were mostly thick walled, hyalinosis was rare and seen in only one patient. There was an absence of immune reactants on immunofluorescence. All glomerular basement membranes visualised on electron microscopy were reported to be normal. In one patient (3.5), an enlargement in lysosomes was seen in podocytes.
Overview of the clinical pedigrees presenting to renal genetic clinics
A total of 53 individuals from Sheffield (6 pedigrees) and 35 individuals from Nottingham (6 pedigrees) were identified. The index cases from each of the 12 pedigrees presented at a median age of 50 (range 26–60 years), following a referral from either the renal team or general practice. On initial presentation, all had an eGFR <60 mL/min/1.73 m2, with the majority having a known diagnosis of hypertension (n=9). Across the Sheffield and Nottingham cohorts, a family history of CKD or kidney failure was present in up to three generations in one pedigree, four generations in nine pedigrees and five generations in two pedigrees. Details of all 12 pedigrees (SN1–12) are summarised in online supplemental figures 5 and 6.
The c.278_289delTCTGCCCCGAAG insCCGCCTCCT variant in UMOD leads to a predicted change in EGF II domain structure and altered Ca2+ binding
The mature UMOD protein is 616 amino acids in length. The predicted structure of UMOD contains four EGF-like domains (EGF I–IV), a cysteine-rich D8C domain and a bipartite C-terminal ZP domain (ZPN and ZPC) (figure 1A). Domains EGF II and EGF III are predicted to bind Ca2+.
The specific indel variant results in the replacement of five amino acids ‘VCPEG’, by four novel residues ‘AASC’. DeepFRI results were: EGF II wild type—GO:0043169 score=0.84 and GO:0005509 score=0.54 and indel—GO:0043169 score=0.60. Based on in silico predictions using AlphaFold and DeepFRI, this change is predicted to alter protein folding and structural integrity of the EGF II domain and could alter the dynamics of Ca2+ binding and protein polymerisation.
The c.278_289delTCTGCCCCGAAG insCCGCCTCCT variant is present in 20 individuals with and without a renal phenotype in the 100,000 Genome Project (GEL)
To identify potential cases from a wider geographical area in England, we accessed the 100K database and identified the c.278_289delTCTGCCCCGAAG insCCGCCTCCT variant (Indel rs878855325, ClinVar 242346) in 20 individuals (online supplemental table 3). Within the RD38 (rare disease) cohort, 17 individuals were identified across 9 families (GE1–9), with 6 families recruited for kidney phenotypes and 3 for non-kidney phenotypes (online supplemental figure 7). A further three individuals were identified within the CG38 (cancer germline) cohort but without additional phenotypic information. The calculated allele frequency was 0.0001582 (0.01582%) for the RD38 population and 0.00009841 (0.009841%) for the CG38 population. We did not identify any positive cases in The Cancer Genome Atlas (PanCancer Atlas Studies, cBioPortal V.4.1.9) and The Genome Aggregation Database (GnomAD V.3.1.2).
Nine individuals are heterozygous for the c.278_289delTCTGCCCCGAAG insCCGCCTCCT variant in UK Biobank
Out of 450 993 individuals in the UKBB with exome sequencing data, 9 individuals, 7 males, 2 females were found to possess a single copy of the c.278_289delTCTGCCCCGAAG insCCGGCTCCT variant (table 1). This variant had been miscalled as six separate variants, but visualisation of Integrative Genomics Viewer (IGV) plots of individuals with these variants showed that individuals with these six variants all represent the single p.Val93_Gly97delinsAlaAlaSerCys variant (figure 2). Although we were unable to confirm these cases by Sanger sequencing, we noted that the same pattern was observed in the 100K individuals with this variant, and all have been confirmed by Sanger sequencing. No other UMOD variants were identified in these individuals.
All nine individuals were of European descent. Seven were unrelated and two were known to be related to each other. Kidney function was lower in those with the variant: CKD-EPI eGFR 69.0±20.3 vs 90.5±13.0 mL/min/1.73 m² (p=0.016). Systolic blood pressure was higher: 163.6±20.8 vs 144.2±24.1 mm Hg (p=0.023), as was diastolic blood pressure: 99.3±13.0 vs 86.4±13.5 mm Hg (p=0.017). In keeping with previous reports, gout was absent in those with this variant. Serum urate concentration did not differ between those with the variant and the background population 309.7±55.1 vs 309.1±80.4 µmol/L (p=0.98). Only one individual had no evidence of CKD or hypertension (age 43.3 years at baseline). Of the remaining eight (all aged >48 years at baseline), all had hypertension with seven having evidence of CKD (based on HES codes or CKD-EPI eGFR <60 mL/min/1.73 m² at baseline assessment). The age of those carrying the variant did not differ from the background population: 58.5±8.7 vs 57.3±8.0, p=0.69.
Geographical distribution
In total, 117 individuals with the indel variant were identified from the 3 cohorts. Of interest, individual cases were found to originate from several geographical regions across England (figure 1B). Five regions had more than five cases with the highest concentration of cases in South Yorkshire (figure 1C). For the 100K and UKBB cohorts however, wider family history data were not available leading to a potential underestimation of affected individuals in these pedigrees (figure 1D).
Individuals with c.278_289delTCTGCCCCGAAG insCCGCCTCCT share an extended haplotype
All five cases in UKBB with WGS were from the group comprising white British or Irish ancestry (88%) and all nine individuals in UKBB were of European ancestry by principal component analysis. Only two of the individuals were >third-degree relatives. The nine individuals shared a haplotype around c.278_289delTCTGCCCCGAAG insCCGCCTCCT based on phasing directly genotyped common SNPs from the UKBB SNP chip (figure 3). The shared haplotype extends from 7 Mb to >30 Mb between individuals. This minimal shared haplotype occurs in <1 in 5000 of the remaining UKBB samples.
Five of the individuals in UKBB had undergone WGS. In the 1 Mb window around the c.278_289delTCTGCCCCGAAG insCCGCCTCCT variant, there were four rare variants present in individuals with the c.278_289delTCTGCCCCGAAG insCCGCCTCCT, which were rarely found in the general population (present in <1 in 250 individuals; table 2): all individuals with c.278_289delTCTGCCCCGAAG insCCGCCTCCT carried at least one of these variants. We then assessed whether the 20 individuals confirmed to carry c.278_289delTCTGCCCCGAAG insCCGCCTCCT in the 100K also carried these rare variants. All carried at least one of these rare variants, and most all four (table 2). This demonstrates a shared haplotype across all individuals with c.278_289delTCTGCCCCGAAG insCCGCCTCCT.
Discussion
In this study, we provide compelling evidence that the UMOD variant c.278_289delTCTGCCCCGAAG insCCGCCTCCT, widely distributed within the UK population, is a founder variant. One hundred seventeen new individuals from 33 pedigrees were ascertained from clinical referrals within a limited geographic region of England, the 100K cohort and from the UKBB population. When published cases are included, a total of 237 individuals from 55 pedigrees have now been reported with this rare variant, all from the UK.
It is worth noting that the c.278_289delTCTGCCCCGAAG insCCGCCTCCT variant was the second most common change (14 pedigrees) reported in the International ADTKD patient registry of 722 individuals, and all cases were of white British ancestry19 (table 3). These observations are consistent with a founder effect. A previous single-centre study did not identify a common haplotype in four unrelated pedigrees based on limited analysis, the authors concluding that this was likely to be a recurrent change rather than a founder effect.37 Based on the number of cases since reported, the unusual nature of the variant, their restricted geographical and racial origin and now evidence of a shared haplotype, the evidence now points overwhelmingly to the existence of an ancestral mutation present in the UK population.
In the International ADTKD registry, there was no difference in the median age of kidney failure reported for patients with this variant (48 years) compared with the rest of the ADTKD-UMOD population (124 mutations; 47 years).19 The median age of kidney failure in our patients was however later (52 years) than previously reported. Although previous reports suggested longer kidney survival in females with ADTKD-UMOD,19 39 we did not detect a significant change in our clinical cohort. We also noted significant interfamilial and intrafamilial variability in the age of onset of kidney failure (range 32–76 years) implying that non-allelic and environmental factors can significantly modify kidney survival, as in other monogenic diseases.
Gout is a common feature in ADTKD-UMOD, being present in 50% of patients with a median age of onset of 28 years.19 The paucity of gout associated with this variant is striking when compared with other UMOD variants and has been noted previously.35 37 The absence of early onset gout as an alerting symptom is likely to have led to delayed clinical diagnosis but the absence of gout did not appear to impact overall kidney survival; hyperuricaemia is therefore unlikely to be a significant pathogenic factor for disease progression in ADTKD-UMOD. Hypertension was present in 65% of the clinical cases with available data and was also present in eight of the nine UKBB participants at baseline assessment (aged >48 years). Common UMOD variants have been associated with salt-sensitive hypertension, possibly by a functional interaction with the NKCC2 co-transporter.40 41 Only one patient had significant renal cystic disease (>10 cysts/kidney).
The indel sequence results in the deletion of five amino acids and a replacement with four residues (AlaAlaSerCys), disrupting the structure of the second calcium-binding EGF-like domain.37 The molecular mechanism underlying disease in ADTKD is more likely to relate to a dominant-negative or gain-of-function induced by the mutant protein rather than to loss-of-function.9 The intracellular accumulation of the mutant protein likely leads to ER stress and activation of the unfolded protein response pathway.18 42 Initial biochemical studies showed that the recombinant indel mutant protein showed a glycosylation pattern closer to the wild-type protein and was secreted more efficiently by transfected cells than another mutant (C150S).37 However, later assays by the same group using atomic force microscopy revealed that all three different UMOD variants tested (Indel, C150S, C155R) showed similar premature formation of intracellular fibrillar structures compared with the wild-type protein, despite the differences in glycosylation.38 These abnormalities are consistent with the similar age of kidney failure noted for this variant compared with others.19
Conclusion
In summary, we report a pathogenic UMOD variant shared by 12 apparently unrelated families with familial kidney failure within a contiguous geographical region of England but which also appears to be distributed more widely within the UK. Our results demonstrate that this is likely to represent a common ancestral variant in unrelated families rather than a recurrent variant. The absence of early onset gout associated with this variant in comparison with classical UMOD variants likely led to a delay in diagnosis. Our paper highlights the need for genetic testing in all cases of familial CKD of uncertain aetiology. The UMOD variant c.278_289delTCTGCCCCGAAG insCCGCCTCCT should be suspected in all cases of familial nephropathy presenting in patients of white British ancestry.
Data availability statement
All data relevant to the study are included in the article or uploaded as supplementary information.
Ethics statements
Patient consent for publication
Ethics approval
This study was approved by 100,000 Genome Project and the UK Biobank. Participants provided individual consent for genetic testing or entry into the 100,000 Genome Project and the UK Biobank Project. All data are de-identified.
Acknowledgments
We are grateful to all referring clinicians and families for providing relevant clinical information. We thank Anthony Bleyer and Coralie Bingham for helpful discussion.
References
Supplementary materials
Supplementary Data
This web only file has been produced by the BMJ Publishing Group from an electronic file supplied by the author(s) and has not been edited for content.
Footnotes
Twitter @mkvalluru, @gilchristNO3, @Ong_lab
Collaborators Genomics England Research Consortium: John C Ambrose (Genomics England, London, UK); Prabhu Arumugam (Genomics England, London, UK); Roel Bevers (Genomics England, London, UK); Marta Bleda (Genomics England, London, UK); Freya Boardman-Pretty (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Christopher R Boustred (Genomics England, London, UK); Helen Brittain (Genomics England, London, UK); Mark J Caulfield (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Georgia C Chan (Genomics England, London, UK); Greg Elgar (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Tom Fowler (Genomics England, London, UK); Adam Giess (Genomics England, London, UK); Angela Hamblin (Genomics England, London, UK); Shirley Henderson (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Tim J P Hubbard (Genomics England, London, UK); Rob Jackson (Genomics England, London, UK); Louise J Jones (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Dalia Kasperaviciute (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Melis Kayikci (Genomics England, London, UK); Athanasios Kousathanas (Genomics England, London, UK); Lea Lahnstein (Genomics England, London, UK); Sarah E A Leigh (Genomics England, London, UK); Ivonne U S Leong (Genomics England, London, UK); Javier F Lopez (Genomics England, London, UK); Fiona MaleadyCrowe (Genomics England, London, UK); Meriel McEntagart (Genomics England, London, UK); Federico Minneci (Genomics England, London, UK); Loukas Moutsianas (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Michael Mueller (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Nirupa Murugaesu (Genomics England, London, UK); Anna C Need (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Peter O’Donovan (Genomics England, London, UK); Chris A Odhams (Genomics England, London, UK); Christine Patch (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Mariana Buongermino Pereira (Genomics England, London, UK); Daniel Perez-Gil (Genomics England, London, UK); John Pullinger (Genomics England, London, UK); Tahrima Rahim (Genomics England, London, UK); Augusto Rendon (Genomics England, London, UK); Tim Rogers (Genomics England, London, UK); Kevin Savage (Genomics England, London, UK); Kushmita Sawant (Genomics England, London, UK); Richard H Scott (Genomics England, London, UK); Afshan Siddiq (Genomics England, London, UK); Alexander Sieghart (Genomics England, London, UK); Samuel C Smith (Genomics England, London, UK); Alona Sosinsky (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Alexander Stuckey (Genomics England, London, UK); Mélanie Tanguy (Genomics England, London, UK); Ana Lisa Taylor Tavares (Genomics England, London, UK); Ellen R A Thomas (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Simon R Thompson (Genomics England, London, UK); Arianna Tucci (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Matthew J Welland (Genomics England, London, UK); Eleanor Williams (Genomics England, London, UK); Katarzyna Witkowska (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK); Suzanne M Wood (Genomics England, London, UK, William Harvey Research Institute, Queen Mary University of London, London, UK).
Contributors MKV, NKXC, MG and MNW performed primary data collection, analysis and data visualisation; LB, JC, AT and AD collected and analysed patient data; MKV, NKXC, MNW and ACMO wrote the paper; ACMO initiated and supervised the project, and is also the guarantor. All authors read and approved the final manuscript.
Funding The UKBB analysis was supported by the Royal Devon University Healthcare NHS Foundation Trust research capacity building fund. MNW acknowledges funding from the Medical Research Council (grant no MR/T00200X/1). This research was made possible through access to the data and findings generated by the 100,000 Genomes Project. The 100,000 Genomes Project is managed by Genomics England Limited (a wholly owned company of the Department of Health and Social Care). The 100,000 Genomes Project is funded by the National Institute for Health Research and NHS England. The Wellcome Trust, Cancer Research UK and the Medical Research Council have also funded research infrastructure. The 100,000 Genomes Project uses data provided by patients and collected by the National Health Service as part of their care and support. This research has been conducted using data from UK Biobank (project ID 49847 and 9072), a major biomedical database (www.ukbiobank.ac.uk) that is supported by its founding funders—the Wellcome Trust and UK Medical Research Council, as well as the Department of Health, Scottish Government, the Northwest Regional Development Agency, British Heart Foundation and Cancer Research UK.
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