Next Article in Journal
The Outstanding Chemodiversity of Marine-Derived Talaromyces
Next Article in Special Issue
A Combined Biomarker That Includes Plasma Fibroblast Growth Factor 23, Erythropoietin, and Klotho Predicts Short- and Long-Term Morbimortality and Development of Chronic Kidney Disease in Critical Care Patients with Sepsis: A Prospective Cohort
Previous Article in Journal
Eosinophils, Basophils, and Neutrophils in Bullous Pemphigoid
Previous Article in Special Issue
Dynamics of Urinary Extracellular DNA in Urosepsis
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

PKD1 Mutation Is a Biomarker for Autosomal Dominant Polycystic Kidney Disease

1
Department of Urology, Juntendo University Graduate School of Medicine, Tokyo 113-8431, Japan
2
Department of Advanced Informatics for Genetic Diseases, Juntendo University Graduate School of Medicine, Tokyo 113-8431, Japan
3
Department of Urology, Juntendo University Nerima Hospital, Tokyo 177-8521, Japan
4
Human Disease Models, Institute of Laboratory Animals, Tokyo Women’s Medical University, Tokyo 162-8666, Japan
5
Diagnostics and Therapeutics of Intractable Diseases, Intractable Disease Research Center, Juntendo University Graduate School of Medicine, Tokyo 113-8431, Japan
6
Department of Public Health, Juntendo University Graduate School of Medicine, Tokyo 113-8431, Japan
7
Department of Digital Therapeutics, Juntendo University Graduate School of Medicine, Tokyo 113-8431, Japan
*
Author to whom correspondence should be addressed.
Biomolecules 2023, 13(7), 1020; https://doi.org/10.3390/biom13071020
Submission received: 2 May 2023 / Revised: 8 June 2023 / Accepted: 18 June 2023 / Published: 21 June 2023
(This article belongs to the Special Issue Biomarkers in Renal Diseases)

Abstract

:
Background: Autosomal dominant polycystic kidney disease (ADPKD) occurs in 1 in 500–4000 people worldwide. Genetic mutation is a biomarker for predicting renal dysfunction in patients with ADPKD. In this study, we performed a genetic analysis of Japanese patients with ADPKD to investigate the prognostic utility of genetic mutations in predicting renal function outcomes. Methods: Patients clinically diagnosed with ADPKD underwent a panel genetic test for germline mutations in PKD1 and PKD2. This study was conducted with the approval of the Ethics Committee of Juntendo University (no. 2019107). Results: Of 436 patients, 366 (83.9%) had genetic mutations. Notably, patients with PKD1 mutation had a significantly decreased ΔeGFR/year compared to patients with PKD2 mutation, indicating a progression of renal dysfunction (−3.50 vs. −2.04 mL/min/1.73 m2/year, p = 0.066). Furthermore, PKD1 truncated mutations had a significantly decreased ΔeGFR/year compared to PKD1 non-truncated mutations in the population aged over 65 years (−6.56 vs. −2.16 mL/min/1.73 m2/year, p = 0.049). Multivariate analysis showed that PKD1 mutation was a more significant risk factor than PKD2 mutation (odds ratio, 1.81; 95% confidence interval, 1.11–3.16; p = 0.020). Conclusions: The analysis of germline mutations can predict renal prognosis in Japanese patients with ADPKD, and PKD1 mutation is a biomarker of ADPKD.

1. Introduction

Polycystic kidney disease is a disorder characterized by the development of numerous bilateral kidney cysts. It is classified into autosomal dominant polycystic kidney disease (ADPKD) and autosomal recessive polycystic kidney disease (ARPKD) according to the type of inheritance [1]. ADPKD is estimated to have an incidence of approximately 1 in 500–4000 people worldwide and occurs in both sexes, with no sex differences [1,2,3,4,5].
With age, numerous cysts develop progressively and enlarge bilaterally in the kidneys, which is accompanied by decreased renal function [3]. Most patients are asymptomatic until the age of 30–40 years, after which renal function gradually declines, and approximately half of them develop end-stage kidney disease (ESKD) by the age of 60–70 years [1,5]. However, phenotypes such as clinical symptoms appear in adulthood. In addition to the autosomal manifestation of inheritance, the second-hit theory is thought to explain why phenotypes differ even in the same family [6].
The two representative mutations in ADPKD are PKD1 and PKD2, which encode polycystin 1 (PC1) and polycystin 2 (PC2), respectively [7,8,9]. Approximately 85% of patients with ADPKD have a PKD1 mutation, whereas the remaining 15% have a PKD2 mutation [10]. The significance of studying the genetic background of patients with ADPKD includes not only the diagnostic aspect, but also the predictive aspect of renal prognosis. Patients with PKD1 mutations have been shown to have a poorer renal prognosis than those with PKD2 mutations; in addition, patients below 55–58 years of age with a family history of ESKD are more likely to have PKD1 mutations, and those above 68–70 years of age with a family history of ESKD are more likely to have PKD2 mutations [11]. Furthermore, the truncated PKD1 mutation that results in a major change in protein structure has been reported to be associated with a worse renal prognosis, with a median age of 55.6 years, while that for the non-truncated mutation is 67.9 years [12]. As mentioned above, PKD1 truncated mutations are known to have a faster rate of renal function decline and worse renal prognosis than non-truncated mutations.
Currently, tolvaptan, a vasopressin V2 receptor antagonist, is approved and has been shown to be an effective prophylactic treatment for ADPKD with worsening renal outcomes [13,14]. However, due to the side effects and medication management, it is not generally recommended for use in all patients with ADPKD, and the target population remains controversial.
Blood and urine markers have been reported to be useful for predicting worsening renal function in patients with ADPKD, and, in a previous report, neutrophil gelatinase-associated lipocalin, lipocalin-2 (NGAL), macrophage-colony stimulating factor (M-CSF), and monocyte chemoattractant protein-1 (MCP-1) were useful urinary biomarkers [15,16,17,18,19,20,21,22]. The severity classifications of ADPKD include the Mayo classification and the Predicting Renal Outcome in Polycystic Kidney Disease (PROPKD) score [23,24]. The Mayo classification predicts renal prognosis by correlating this with decreased eGFR through stratification by age and HtTKV (classes 1A–E). In contrast, the PROPKD score is based on (1) sex (0 for females, 1 for males), (2) hypertension (0 for none, 1 for all), (3) urologic events (0 for none, 1 for all), and (4) genetic mutations (PKD2 mutation: 0, PKD1 non-truncated mutation: 2, PKD1 truncated mutation: 4). The median age for ESKD onset has been reported to be 49 years for a score of ≥7, 56.9 years for a score of 4–6, and 70.6 years for a score of 0–3, and the higher the score, the worse the prognosis [24].
Although there have been several reports of genetic mutations in Japanese patients with ADPKD, including ours [7,25,26], they have not been sufficiently investigated as biomarkers on a large scale. Therefore, we performed a large-scale genetic analysis of Japanese patients with ADPKD to investigate the prognostic value of genetic variants for predicting renal outcomes.
This study aimed to establish a database of Japanese patients with ADPKD and analyze information on genetic mutations leading to exacerbations. This may assist in the understanding of the pathophysiology of ADPKD and provide appropriate therapeutic interventions for ADPKD patients.

2. Materials and Methods

2.1. Study Subjects

We included adult patients who were clinically diagnosed with ADPKD according to Ravine’s criteria [27] between November 2018 and March 2023 and who, after receiving a full explanation of their participation in the study, provided free and voluntary written consent with full understanding. Patients were excluded if they were ineligible due to missing data or missed hospital visits. This study was conducted with the approval of the Juntendo University Ethics Committee (no. 2019107). The exclusion criterion was the determination of inappropriateness to participate in this study by the principal investigator.

2.2. Research Methods

(1)
Sample Collection
We collected 7 mL of blood from the patients, and an additional 7 mL of blood was collected when the blood cells were cultured prior to extraction for total RNA sequence analysis. This was performed only for the purpose of conducting this study, rather than incidentally when performing the tests necessary for the diagnosis and treatment of the subjects’ own diseases. We collected blood samples every 3 months;
(2)
Use of Existing Data and Information
We obtained written consent from the patients for the use of existing blood tests, imaging tests, and other data from medical records in this genetic analysis study. To assess renal function and the progression of renal dysfunction, we used estimated glomerular filtration rate (eGFR) and ΔeGFR/year. The eGFR was calculated as follows: eGFR = 194 × serum Cr-1.094 × age-0.287 (×0.739 if female) [28]. Additionally, the ΔeGFR/year was calculated by creating an approximate curve from the eGFR values measured over time. The cutoff value of ΔeGFR/year was 3.61 mL/min/1.73 m2/year [29,30]. Furthermore, the total kidney volume (TKV) was assessed and measured using computed tomography or magnetic resonance imaging. A single urologist performed the TKV measurements to avoid different results from different raters. The TKV was estimated using the ellipsoid volume of revolution method as follows: (π/6 × major diameter × [minor diameter]2). In the current study, we used the height-adjusted TKV (HtTKV), which has been shown to correlate with renal function without sex differences [31]. We used the Irazabal equation to calculate future eGFR and estimated the age leading to ESKD (future eGFR < 15 mL/min/1.73 m2) (Table 1) [23,32].
Future eGFR = α + β + γ(baseline age)
+ δ(baseline eGFR) + θ
+ ε(years from baseline)
+ λ(1 if male, 0 otherwise) (years from baseline) + μ(current age)(years from baseline)
+ σ(years from baseline);
(3)
Genes/Gene Groups to be Analyzed and Analysis Methods
  • Targeted Resequencing
In this study, we performed a panel genetic test for germline mutations that targets known causative genes of the target disease and the diseases to be differentiated. Target genes included PKD1, PKD2, PKHD1, TSC1, TSC2, PRKCSH, SEC63, LRP5, VHL, HNF1B, MUC1, UMOD, OFD1, and GANAB.
We designed primers for target genomic regions using the Ion AmpliSeqTM Designer, performed target enrichment to enrich target DNA fragments by multiplex PCR amplification using Ion Chef, and performed library and template preparation following the manufacturer’s instructions.
Sequencing data were obtained by performing the sequence on bench-top next-generation sequencers such as the Ion S5 Plus or Ion PGM systems;
ii.
Sanger Sequencing
We performed gene-specific long PCR for the exon1 region of the PKD1 mutation that could not be covered by targeted resequencing, and direct sequencing was performed using this as a template;
iii.
Copy Number Variation Analysis (Multiplex Ligation-Dependent Probe Assay (MLPA) Method)
The MLPA method was used to detect copy number variations in each exon unit of a gene using the SALSA MLPA probe mix and SALSA MLPA EK1 reagent kit (MRC-Holland). Moreover, a 3500 Genetic Analyzer was used for fragment analysis, and the obtained data were analyzed using the MRC-Holland software. The obtained data were analyzed using MRC-Holland’s coffalyser.net software;
iv.
Total RNA Sequence Analysis
We performed total RNA sequence analysis to detect fusion genes, intragenic inversions, splicing abnormalities caused by mutations in deep intron regions, transcriptional repression caused by mutations in promoter regions, and promoter switching, which could not be detected by DNA sequencing.
Total RNA was extracted from peripheral blood using the QIAGEN RNeasy Mini Kit or the QIAamp RNA Blood Mini Kit, following the manufacturer’s instructions. Libraries were prepared using Illumina’s TruSeq Stranded mRNA Library Prep Kit, and sequencing data were obtained using HiSeq4000;
v.
Whole-Exome Sequencing Analysis
We performed exome capture and library preparation using SureSelect Human All Exome V6 (58 M) (Agilent), and analysis was performed using an Illumina next-generation sequencer;
vi.
Bioinformatics Analysis
We performed data quality checks, mapping, assembly, and mutation detection using FASTQ files obtained using existing pipelines. For known pathological mutations, we used databases such as ClinVar, The PKD Mutation Database, Mutation Database Autosomal Recessive Polycystic Kidney Disease (ARPKD/PKHD1), The Human Gene Mutation Database (HGMD), and other databases to determine pathogenicity. Moreover, for mutations not registered in public databases, pathological mutations were classified according to the ACMG guidelines [33].
Variants of unknown significance (VUS) were classified as pathological mutations according to the ACMG guidelines [33] using software programs such as PANTHER, PROVEAN, MAPP, Align-GVGD, PON-P2, and FATHMM. We analyzed candidate splicing mutations using prediction tools such as the Human Splicing Finder and BDGP (Splice Site Prediction by Neural Network);
vii.
Statistical Analysis
We performed analyses to investigate the relationship between pathological variants of causative genes such as PKD1/PKD2 and annual changes in renal function and TKV. Furthermore, we evaluated the following clinicopathological prognostic factors indicated by a previous study as adjustment factors: sex, age, hypertension by 35 years of age, urologic events by 35 years of age (including cyst infection, gross hematuria, and/or flank pain related to cysts), and urinalysis [24]. We also compared the following categories of pathological genetic variants: (a) among the three causative gene groups (PKD1, PKD2, and others) and (b) between the two groups of PKD1 genetic mutations (truncated and non-truncated). PKD1 truncated and non-truncated mutations were divided into two groups based on the World Health Organization definition of the elderly: those aged 65 years or older and others.
For the genetic analysis, the Mann–Whitney U test was used for comparison between two groups in the subgroup analysis, and the Kruskal–Wallis test was used for comparison between three or more groups. Additionally, we used the chi-square and Fisher’s exact tests as analytical methods to compare the ratios between genetic variants and other variables. For risk factors, parameters associated with decreased renal function were selected as explanatory variables, and multivariate analysis using logistic regression was used to examine the significant differences between the groups. To adjust for patient background, we used matched-pair analysis with propensity score matching. We used the Irazabal equation to calculate future eGFR and estimated the age leading to ESKD (future eGFR < 15 mL/min/1.73 m2) [23,32]. Kaplan–Meier survival curves were plotted and compared using the log-rank test. All statistical analyses were performed using EZR (Saitama Medical Center, Jichi Medical University, Saitama, Japan) [34], and statistical significance was defined as p < 0.05.

3. Results

Of the 436 patients clinically diagnosed with ADPKD, 366 (83.9%) had genetic mutations (Figure 1). The genetic mutations identified (n = 366) were PKD1 truncated, PKD1 non-truncated, PKD2 truncated, PKD2 non-truncated, GANAB non-truncated, OFD1 truncated, and SEC63 non-truncated. Three patients (0.8%) had mutations other than PKD1 and PKD2 genetic mutations, as detected by the target gene panel (GANAB non-truncated, OFD1 truncated, and SEC63 non-truncated, respectively). Within the 363 patients with a genetic mutation of PKD1 (273 patients, 74.6%) or PKD2 (90 patients, 24.6%), sixteen patients (4.4%) had CNVs detected by MLPA (Table S1 in Supplement [33,35]).
Table 2 shows that the median age was 48 (41–55) years, the median HtTKV was 748.0 mL (483.3–1002.2 mL), the median ΔeGFR/year was −3.10 mL/min/1.73 m2 (−5.69 to −1.0 mL/min/1.73 m2), and classes 1A, 1B, 1C, 1D, and 1E of Mayo classification were 19, 103, 121, 54, and 12, respectively.
Furthermore, the number of patients with PKD1 truncated, PKD1 non-truncated, PKD2 truncated, and PKD2 non-truncated genetic mutations was 139 (45.0%), 86 (27.8%), 68 (22.0%), and 16 patients (5.2%), respectively (Table 2).
A subgroup analysis of ΔeGFR/year was performed on 309 patients with ADPKD who had genetic mutations, after excluding those with missing data (Table 3). The median values for each clinical factor are shown in Table 2. These values were compared between the groups.
We performed additional analyses for clinically important factors that were related to the rate of change in ΔeGFR in the subgroup analyses. We found that the group of patients with a PKD1 mutation had a significantly decreased ΔeGFR/year compared to the group of patients with a PKD2 mutation, indicating the progression of renal dysfunction (−3.50 vs. −2.04 mL/min/1.73 m2/year, p = 0.066) (Figure 2A). Moreover, the group with a HtTKV ≥ 750 mL had a significantly decreased ΔeGFR/year compared to the group with a HtTKV < 750 mL (−3.65 vs. −2.64 mL/min/1.73 m2/year, p = 0.020) (Figure 2B). Regarding the Mayo classification using HtTKV and age, patients in groups 1C, 1D, and 1E had a significantly decreased ΔeGFR/year compared to patients in groups 1A and 1B, indicating progression of renal dysfunction (−2.38 vs. −3.61 mL/min/1.73 m2/year, p = 0.035) (Figure 2C). However, there was no significant difference in ΔeGFR/year between those with truncated and non-truncated PKD1 mutations in all age groups (−3.65 vs. −3.41 mL/min/1.73 m2/year, p = 0.955) (Figure 2D). In contrast, in the population older than 65 years, PKD1 truncated mutations showed a significantly decreased eGFR/year compared to PKD1 non-truncated mutations (−6.56 vs. −2.16 mL/min/1.73 m2/year, p = 0.049) (Figure 2E).
Table 4 shows the percentage change in ΔeGFR/year for the following factors with body mass index (BMI), HtTKV, and Mayo classification that were significantly different in the subgroup analysis: PKD1 or PKD2 mutations, truncated or non-truncated PKD1 mutations in patients aged 65 years and older, and truncated or non-truncated PKD1 mutations in patients aged 65 years and older. There was a significant difference in the Mayo classification ratio between PKD1 and PKD2 mutations (p = 0.015), whereas none of the ratios for BMI or HtTKV was significantly different.
In the univariate logistic regression analysis, there were no significant differences in sex, hypertension before 35 years of age, or urologic events before 35 years of age as risk factors when ΔeGFR/year > 3.61 mL/min/1.73 m2/year was used as the cutoff value. We also found that PKD1 mutation was a more significant risk factor than PKD2 mutation (odds ratio (OR), 1.81; 95% confidence interval (CI), 1.08–3.05; p = 0.025), and HtTKV ≥ 750 mL was also a significant risk factor (OR, 1.62; 95% CI, 1.03–2.54; p = 0.027). Then, in the multivariate logistic regression analysis, PKD1 mutation was a more significant risk factor than PKD2 mutation (OR, 1.87; 95% CI, 1.11–3.16; p = 0.020), and HtTKV ≥ 750 mL was also a significant risk factor (OR, 1.67; 95% CI, 1.06–2.63; p = 0.029). Furthermore, the data were abstracted using matched-pair analysis with propensity score matching to adjust for the background with age, sex, height, BMI, hypertension before 35 years of age, urologic event before 35 years of age, and U-pro (Table S2). Additionally, in the multivariate logistic regression analysis of this data after adjustment on the propensity score, PKD1 mutation was a more significant risk factor than PKD2 mutation (OR, 2.44; 95% CI, 1.23–4.82; p = 0.011), and HtTKV ≥ 750 mL was also a significant risk factor (OR, 2.58; 95% CI, 1.30–5.13; p = 0.007) (Table 5).
In 315 patients, including six dialysis patients for whom ΔeGFR could not be calculated, we used future eGFR to predict age leading to ESKD (future eGFR < 15 mL/min/1.73 m2).
As shown in Figure 3, the median age at ESKD onset in PKD1 mutation group was 55 years (95% CI, 54–59 years), and the median age at ESKD onset in the PKD2 mutation group was 71 years (95% CI, 67–74 years) (p = 0.001). Moreover, the median age at ESKD onset in the PKD1 truncated mutation group was 55 years (95% CI, 54–57 years), and the median age at ESKD onset in the PKD1 non-truncated mutation group was 58 years (95% CI, 54–65 years) (p = 0.032).
In a Kaplan–Meier kidney survival plot, we found that the group of patients with a PKD1 mutation showed significantly worse kidney survival compared to the group of patients with a PKD2 mutation, and those with PKD1 truncated mutations showed significantly worse kidney survival compared to those with PKD1 non-truncated mutations.

4. Discussion

To our knowledge, the present study identifying risk factors for renal function decline in Japanese patients with ADPKD is the largest single-center prospective study in Japan with the largest number of patients. We showed that patients with PKD1 mutations and increased HtTKV with PKD1 truncated mutations are expected to have a more rapid progression of renal dysfunction with age than those with non-truncated mutations.
In the present study, of the 436 patients clinically diagnosed with ADPKD, 366 (83.9%) had genetic mutations (Figure 1). Among patients with genetic mutations, 273 (74.6%) carried a PKD1 mutation, and 90 (24.6%) carried a PKD2 mutation. The five prior large cohort studies reported the distribution of PKD1 and PKD2 mutations in 202 (USA) [36], 700 (France) [35], 220 (Canada) [37], 643 (Italy) [38], and 1119 (USA) [39] patients. Each of these studies reported high detection rates at 89.1%, 89.9%, 84.5%, 80%, and 92.4%, respectively, which do not differ from that observed in the present study.
In this study, although no significant difference was observed in the overall age group in the rate of change of ΔeGFR (−3.65 vs. −3.41 mL/min/1.73 m2/year, p = 0.955) between the PKD1 truncated mutation group and non-truncated mutation group (Figure 2D), a significant difference in the rate of change of ΔeGFR was observed in the population aged 65 years and older (−6.56 vs. −2.16 mL/min/1.73 m2/year, p = 0.049) between these groups (Figure 2E). The median age at ESKD onset in the PKD1 mutation group was 55 years (95% CI, 54–59 years), and the median age at ESKD onset in the PKD2 mutation group was 71 years (95% CI, 67–74 years) (p = 0.001) (Figure 3A). Moreover, the median age at ESKD onset in the PKD1 truncated mutation group was 55 years (95% CI, 54–57 years), and the median age at ESKD onset in the PKD1 non-truncated mutation group was 58 years (95% CI, 54–65 years) (p = 0.032) (Figure 3B). Cornec-Le Gall et al. reported that the median age at ESKD onset was 55.6 years (95% CI, 53.6–57.7 years) in the PKD1 truncated mutation group and 67.9 years (95% CI, 62.4–73.4 years) in the PKD1 non-truncated mutation group, showing a difference in the PKD1 non-truncated mutation group, as compared with that in our study [12].
Regarding renal function in ADPKD, the GFR is normal owing to nephron compensation until renal enlargement is marked by numerous cysts. The GFR begins to decline at an average age of approximately 40 years, and the rate of renal function decline increases as renal reserves are reduced [40]. Therefore, the identification of genetic mutations at a young age can help identify patients at high risk of a faster decline in renal function, leading to earlier treatment interventions.
Tolvaptan, a vasopressin V2 receptor inhibitor used for the treatment of ADPKD, has been shown to inhibit renal volume increase and renal function decline [41]. Moreover, earlier induction is associated with a lower renal prognosis [13,30,41,42]. Additionally, the higher the volume of HtTKV, the faster the rate of renal function decline and the worse the renal prognosis [17,18,40,43,44,45]. In the present study, significant differences were observed in the two groups divided by an HtTKV cutoff value of 750 mL (−3.65 vs. −2.64 mL/min/1.73 m2/year, p = 0.020) (Figure 2B). A previous study reported that an algorithm using age and eGFR can predict the rapid progression of renal function and identify patients who can be treated with tolvaptan [20]. This suggests that patients with PKD1 truncated mutations require early and appropriate treatment. However, there have been some reports on tolvaptan that suggest concerns regarding its influence on the patients’ quality of life and its cost effectiveness [46], and the question of whether tolvaptan administration should be recommended to patients is a worldwide issue. This current study showed that genetic mutations are associated with differences in renal function, which provides a rationale for considering aggressive intervention with tolvaptan in patients with PKD1 mutations, especially in those with truncated mutations, as described above. This highlights the importance of genetic testing in clinical practice.
In the present study, there was a significant difference between PKD1 or PKD2 mutations and the percentages of low- or high-risk groups according to Mayo classification, as shown in Table 4. PKD1 mutation was significantly associated with the high-risk group according to the Mayo classification. This suggests that PKD1 mutations have an important prognostic relevance for renal function outcomes.
In this study, we found that the severity classification factors of the PROPKD score, hypertension < 35 years, and urological events < 35 years were not significant risk factors (Table 5). Sex has been reported as a risk factor for ADPKD in men [40,47]; however, in the present study, no significant correlation was found between sex and decreased renal function. In addition, urinalysis has previously been reported as a biomarker for predicting the progression of ADPKD. In particular, Messchendorp and Fick-Brosnahan et al. showed that urinary β2MG, urinary MCP-1, and proteinuria are useful predictive biomarkers of renal prognosis [16,17]. However, in the present study, no significant correlation was found between urinary protein and decreased renal function.
The present study had some limitations. First, there was a possibility of insufficient explanatory variables for risk factors in the multivariate analysis of ΔeGFR/year. Other explanatory variables that could have been included were blood markers such as hemoglobin, thrombocytes, blood sugar, uric acid, and high-density lipoprotein cholesterol [21,48,49,50,51]. Second, genetic testing is currently available in only a few facilities; therefore, the need for specialized genetic counseling and the cost of the test must be considered if the test is to be used as a popular and common test.
Nevertheless, in the present study, PKD1 mutations (OR, 1.87; 95% CI, 1.11–3.16; p = 0.020) and an HtTKV ≥ 750 mL (OR, 1.67; 95% CI, 1.06–2.63; p = 0.029) were shown to be independent risk factors for ADPKD. The results of the multivariate analysis in the present study also indicated that each of these factors is an independent risk factor, suggesting that each factor is an important biomarker for predicting renal prognoses in Japanese patients (Table 5). In the Kaplan–Meier kidney survival plot, we found that the group of patients with a PKD1 mutation showed significantly worse kidney survival compared to the group of patients with a PKD2 mutation, and those with PKD1 truncated mutations showed significantly worse kidney survival compared to those with PKD1 non-truncated mutations (Figure 3). Therefore, in addition to kidney volume measurements, it is important to identify genetic mutation sites in Japanese patients with ADPKD.

5. Conclusions

In this large single-center prospective study that identified risk factors for renal function decline in Japanese patients with ADPKD, we showed that patients with PKD1 mutations, especially truncated mutations, as well as those with increased HtTKV, are expected to show a rapid progression of renal dysfunction. Therefore, we showed that genetic mutations are useful biomarkers for predicting renal prognosis in ADPKD and that identification of genetic mutations by genetic testing can identify Japanese patients with ADPKD who are eligible for early treatment. We are hopeful that this study will lead to more widespread use of genetic testing for patients with ADPKD.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/biom13071020/s1, Table S1: Genetic diagnosis; Table S2: The data abstracted using matched-pair analysis with propensity score matching.

Author Contributions

Conceptualization: H.K. and S.H.; Methodology: T.T., H.E. and Y.O.; Software: T.K.; Validation: T.K., N.M. and H.K.; Formal analysis: T.K.; Investigation: T.K.; Resources: H.K., S.M., Y.L., Y.O. and H.I.; Data curation: T.K., H.K., S.M., H.W., H.E., Y.O. and H.I.; Writing—original draft preparation: T.K., N.M. and H.K.; Writing—review and editing: T.K., N.M. and H.K.; Visualization: T.K., N.M. and H.K.; Supervision: S.H.; Project administration: S.H.; Funding acquisition: S.H. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by a grant from Otsuka Pharmaceutical Co., Ltd. (OAK-ISS-2018-000479).

Institutional Review Board Statement

The study was conducted in accordance with the Declaration of Helsinki and was approved by the Ethics Committee of Juntendo University (no. 2019107).

Informed Consent Statement

Informed consent was obtained from all patients involved in the study.

Data Availability Statement

Data are available upon request due to privacy or ethical restrictions.

Acknowledgments

Medical writing support, in accordance with GPP guidelines, was provided by English editing organizations and included editorial and proofreading services.

Conflicts of Interest

Shigeo Horie has received honoraria for lectures and grant support as an endowed department from Otsuka Pharmaceutical Co., Ltd. Haruna Kawano belongs to an endowed department sponsored by Otsuka Pharmaceutical Co., Ltd. Satoru Muto has received honoraria for lectures from Otsuka Pharmaceutical Co., Ltd. and belongs to an endowed department sponsored by Otsuka Pharmaceutical Co., Ltd. All other authors declare no conflicts of interest related to the present study.

References

  1. Horie, S.; Mochizuki, T.; Muto, S.; Hanaoka, K.; Fukushima, Y.; Narita, I.; Nutahara, K.; Tsuchiya, K.; Tsuruya, K.; Kamura, K.; et al. Evidence-based clinical practice guidelines for polycystic kidney disease 2014. Clin. Exp. Nephrol. 2016, 20, 493–509. [Google Scholar] [CrossRef] [Green Version]
  2. Horie, S. Autosomal dominant polycystic kidney disease. Nihon Jinzo Gakkai Shi 2011, 53, 6–9. [Google Scholar]
  3. Torres, V.E.; Harris, P.C.; Pirson, Y. Autosomal dominant polycystic kidney disease. Lancet 2007, 369, 1287–1301. [Google Scholar] [CrossRef] [PubMed]
  4. Lanktree, M.B.; Haghighi, A.; Guiard, E.; Iliuta, I.-A.; Song, X.; Harris, P.C.; Paterson, A.D.; Pei, Y. Prevalence Estimates of Polycystic Kidney and Liver Disease by Population Sequencing. J. Am. Soc. Nephrol. 2018, 29, 2593–2600. [Google Scholar] [CrossRef] [Green Version]
  5. Chebib, F.T.; Torres, V.E. Autosomal Dominant Polycystic Kidney Disease: Core Curriculum 2016. Am. J. Kidney Dis. 2016, 67, 792–810. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  6. Bergmann, C.; Guay-Woodford, L.M.; Harris, P.C.; Horie, S.; Peters, D.J.M.; Torres, V.E. Polycystic kidney disease. Nat. Rev. Dis. Prim. 2018, 4, 50. [Google Scholar] [CrossRef] [PubMed]
  7. Horie, S. ADPKD: Molecular characterization and quest for treatment. Clin. Exp. Nephrol. 2005, 9, 282–291. [Google Scholar] [CrossRef]
  8. The European Polycystic Kidney Disease Consortium. The polycystic kidney disease 1 gene encodes a 14 kb transcript and lies within a duplicated region on chromosome 16. Cell 1994, 77, 881–894. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  9. Mochizuki, T.; Wu, G.; Hayashi, T.; Xenophontos, S.L.; Veldhuisen, B.; Saris, J.J.; Reynolds, D.M.; Cai, Y.; Gabow, P.A.; Pierides, A.; et al. PKD2, a Gene for Polycystic Kidney Disease That Encodes an Integral Membrane Protein. Science 1996, 272, 1339–1342. [Google Scholar] [CrossRef] [PubMed]
  10. Chang, A.R.; Moore, B.S.; Luo, J.Z.; Sartori, G.; Fang, B.; Jacobs, S.; Abdalla, Y.; Taher, M.; Carey, D.J.; Triffo, W.J.; et al. Exome Sequencing of a Clinical Population for Autosomal Dominant Polycystic Kidney Disease. JAMA 2022, 328, 2412–2421. [Google Scholar] [CrossRef]
  11. Barua, M.; Cil, O.; Paterson, A.D.; Wang, K.; He, N.; Dicks, E.; Parfrey, P.; Pei, Y. Family History of Renal Disease Severity Predicts the Mutated Gene in ADPKD. J. Am. Soc. Nephrol. 2009, 20, 1833–1838. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  12. Gall, E.C.-L.; Audrézet, M.-P.; Chen, J.-M.; Hourmant, M.; Morin, M.-P.; Perrichot, R.; Charasse, C.; Whebe, B.; Renaudineau, E.; Jousset, P.; et al. Type of PKD1 Mutation Influences Renal Outcome in ADPKD. J. Am. Soc. Nephrol. 2013, 24, 1006–1013. [Google Scholar] [CrossRef] [Green Version]
  13. Muto, S.; Kawano, H.; Higashihara, E.; Narita, I.; Ubara, Y.; Matsuzaki, T.; Ouyang, J.; Torres, V.E.; Horie, S. The effect of tolvaptan on autosomal dominant polycystic kidney disease patients: A subgroup analysis of the Japanese patient subset from TEMPO 3:4 trial. Clin. Exp. Nephrol. 2015, 19, 867–877. [Google Scholar] [CrossRef]
  14. Horie, S.; Muto, S.; Kawano, H.; Okada, T.; Shibasaki, Y.; Nakajima, K.; Ibuki, T. Preservation of kidney function irrelevant of total kidney volume growth rate with tolvaptan treatment in patients with autosomal dominant polycystic kidney disease. Clin. Exp. Nephrol. 2021, 25, 467–478. [Google Scholar] [CrossRef] [PubMed]
  15. Petzold, K.; Poster, D.; Krauer, F.; Spanaus, K.; Andreisek, G.; Nguyen-Kim, T.D.L.; Pavik, I.; Ho, T.A.; Serra, A.L.; Rotar, L. Urinary Biomarkers at Early ADPKD Disease Stage. PLoS ONE 2015, 10, e0123555. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  16. Messchendorp, A.L.; Meijer, E.; Visser, F.W.; Engels, G.E.; Kappert, P.; Losekoot, M.; Peters, D.J.M.; Gansevoort, R.T.; DIPAK-1 study investigators. Rapid Progression of Autosomal Dominant Polycystic Kidney Disease: Urinary Biomarkers as Predictors. Am. J. Nephrol. 2019, 50, 375–385. [Google Scholar] [CrossRef] [PubMed]
  17. Fick-Brosnahan, G.M.; Belz, M.M.; McFann, K.K.; Johnson, A.M.; Schrier, R.W. Relationship between renal volume growth and renal function in autosomal dominant polycystic kidney disease: A longitudinal study. Am. J. Kidney Dis. 2002, 39, 1127–1134. [Google Scholar] [CrossRef]
  18. Torres, V.E.; King, B.F.; Chapman, A.B.; Brummer, M.E.; Bae, K.T.; Glockner, J.F.; Arya, K.; Risk, D.; Felmlee, J.P.; Grantham, J.J.; et al. Magnetic Resonance Measurements of Renal Blood Flow and Disease Progression in Autosomal Dominant Polycystic Kidney Disease. Clin. J. Am. Soc. Nephrol. 2007, 2, 112–120. [Google Scholar] [CrossRef] [Green Version]
  19. Gansevoort, R.T.; van Gastel, M.D.; Chapman, A.B.; Blais, J.D.; Czerwiec, F.S.; Higashihara, E.; Lee, J.; Ouyang, J.; Perrone, R.D.; Stade, K.; et al. Plasma copeptin levels predict disease progression and tolvaptan efficacy in autosomal dominant polycystic kidney disease. Kidney Int. 2019, 96, 159–169. [Google Scholar] [CrossRef]
  20. Furlano, M.; Loscos, I.; Martí, T.; Bullich, G.; Ayasreh, N.; Rius, A.; Roca, L.; Ballarín, J.; Ars, E.; Torra, R. Autosomal Dominant Polycystic Kidney Disease: Clinical Assessment of Rapid Progression. Am. J. Nephrol. 2018, 48, 308–317. [Google Scholar] [CrossRef] [PubMed]
  21. Uchiyama, K.; Mochizuki, T.; Shimada, Y.; Nishio, S.; Kataoka, H.; Mitobe, M.; Tsuchiya, K.; Hanaoka, K.; Ubara, Y.; Suwabe, T.; et al. Factors predicting decline in renal function and kidney volume growth in autosomal dominant polycystic kidney disease: A prospective cohort study (Japanese Polycystic Kidney Disease registry: J-PKD). Clin. Exp. Nephrol. 2021, 25, 970–980. [Google Scholar] [CrossRef] [PubMed]
  22. Kawano, H.; Muto, S.; Ohmoto, Y.; Iwata, F.; Fujiki, H.; Mori, T.; Yan, L.; Horie, S. Exploring urinary biomarkers in autosomal dominant polycystic kidney disease. Clin. Exp. Nephrol. 2014, 19, 968–973. [Google Scholar] [CrossRef] [PubMed]
  23. Irazabal, M.V.; Rangel, L.J.; Bergstralh, E.J.; Osborn, S.L.; Harmon, A.J.; Sundsbak, J.L.; Bae, K.T.; Chapman, A.B.; Grantham, J.J.; Mrug, M.; et al. Imaging classification of autosomal dominant polycystic kidney disease: A simple model for selecting patients for clinical trials. J. Am. Soc. Nephrol. 2015, 26, 160–172. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  24. Cornec-Le Gall, E.; Audrezet, M.P.; Rousseau, A.; Hourmant, M.; Renaudineau, E.; Charasse, C.; Morin, M.P.; Moal, M.C.; Dantal, J.; Wehbe, B.; et al. The PROPKD Score: A New Algorithm to Predict Renal Survival in Autosomal Dominant Polycystic Kidney Disease. J. Am. Soc. Nephrol. 2016, 27, 942–951. [Google Scholar] [CrossRef] [Green Version]
  25. Sekine, A.; Hoshino, J.; Fujimaru, T.; Suwabe, T.; Mizuno, H.; Kawada, M.; Hiramatsu, R.; Hasegawa, E.; Yamanouchi, M.; Hayami, N.; et al. Genetics May Predict Effectiveness of Tolvaptan in Autosomal Dominant Polycystic Kidney Disease. Am. J. Nephrol. 2020, 51, 745–751. [Google Scholar] [CrossRef]
  26. Kinoshita, M.; Higashihara, E.; Kawano, H.; Higashiyama, R.; Koga, D.; Fukui, T.; Gondo, N.; Oka, T.; Kawahara, K.; Rigo, K.; et al. Technical Evaluation: Identification of Pathogenic Mutations in PKD1 and PKD2 in Patients with Autosomal Dominant Polycystic Kidney Disease by Next-Generation Sequencing and Use of a Comprehensive New Classification System. PLoS ONE 2016, 11, e0166288. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  27. Ravine, D.; Gibson, R.N.; Walker, R.G.; Sheffield, L.J.; Kincaid-Smith, P.; Danks, D.M. Evaluation of ultrasonographic diagnostic criteria for autosomal dominant polycystic kidney disease 1. Lancet 1994, 343, 824–827. [Google Scholar] [CrossRef] [PubMed]
  28. Matsuo, S.; Imai, E.; Horio, M.; Yasuda, Y.; Tomita, K.; Nitta, K.; Yamagata, K.; Tomino, Y.; Yokoyama, H.; Hishida, A.; et al. Revised Equations for Estimated GFR From Serum Creatinine in Japan. Am. J. Kidney Dis. 2009, 53, 982–992. [Google Scholar] [CrossRef] [PubMed]
  29. Lavu, S.; Vaughan, L.E.; Senum, S.R.; Kline, T.L.; Chapman, A.B.; Perrone, R.D.; Mrug, M.; Braun, W.E.; Steinman, T.I.; Rahbari-Oskoui, F.F.; et al. The value of genotypic and imaging information to predict functional and structural outcomes in ADPKD. JCI Insight 2020, 5, e138724. [Google Scholar] [CrossRef]
  30. Torres, V.E.; Chapman, A.B.; Devuyst, O.; Gansevoort, R.T.; Perrone, R.D.; Koch, G.; Ouyang, J.; McQuade, R.D.; Blais, J.D.; Czerwiec, F.S.; et al. Tolvaptan in Later-Stage Autosomal Dominant Polycystic Kidney Disease. N. Engl. J. Med. 2017, 377, 1930–1942. [Google Scholar] [CrossRef]
  31. Chapman, A.B.; Bost, J.E.; Torres, V.E.; Guay-Woodford, L.; Bae, K.T.; Landsittel, D.; Li, J.; King, B.F.; Martin, D.; Wetzel, L.H.; et al. Kidney Volume and Functional Outcomes in Autosomal Dominant Polycystic Kidney Disease. Clin. J. Am. Soc. Nephrol. 2012, 7, 479–486. [Google Scholar] [CrossRef] [Green Version]
  32. Mader, G.; Mladsi, D.; Sanon, M.; Purser, M.; Barnett, C.L.; Oberdhan, D.; Watnick, T.; Seliger, S. A disease progression model estimating the benefit of tolvaptan on time to end-stage renal disease for patients with rapidly progressing autosomal dominant polycystic kidney disease. BMC Nephrol. 2022, 23, 334. [Google Scholar] [CrossRef]
  33. Richards, S.; Aziz, N.; Bale, S.; Bick, D.; Das, S.; Gastier-Foster, J.; Grody, W.W.; Hegde, M.; Lyon, E.; Spector, E.; et al. Standards and guidelines for the interpretation of sequence variants: A joint consensus recommendation of the American College of Medical Genetics and Genomics and the Association for Molecular Pathology. Genet. Med. 2015, 17, 405–424. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  34. Kanda, Y. Investigation of the freely available easy-to-use software ‘EZR’ for medical statistics. Bone Marrow Transp. 2013, 48, 452–458. [Google Scholar] [CrossRef] [Green Version]
  35. Audrézet, M.-P.; Gall, E.C.-L.; Chen, J.-M.; Redon, S.; Quéré, I.; Creff, J.; Bénech, C.; Maestri, S.; Le Meur, Y.; Férec, C. Autosomal dominant polycystic kidney disease: Comprehensive mutation analysis of PKD1 and PKD2 in 700 unrelated patients. Hum. Mutat. 2012, 33, 1239–1250. [Google Scholar] [CrossRef] [PubMed]
  36. Rossetti, S.; Consugar, M.B.; Chapman, A.B.; Torres, V.E.; Guay-Woodford, L.M.; Grantham, J.J.; Bennett, W.M.; Meyers, C.M.; Walker, D.L.; Bae, K.; et al. Comprehensive Molecular Diagnostics in Autosomal Dominant Polycystic Kidney Disease. J. Am. Soc. Nephrol. 2007, 18, 2143–2160. [Google Scholar] [CrossRef] [Green Version]
  37. Hwang, Y.-H.; Conklin, J.; Chan, W.; Roslin, N.M.; Liu, J.; He, N.; Wang, K.; Sundsbak, J.L.; Heyer, C.M.; Haider, M.; et al. Refining Genotype-Phenotype Correlation in Autosomal Dominant Polycystic Kidney Disease. J. Am. Soc. Nephrol. 2016, 27, 1861–1868. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  38. Carrera, P.; Calzavara, S.; Magistroni, R.; Dunnen, J.T.D.; Rigo, F.; Stenirri, S.; Testa, F.; Messa, P.; Cerutti, R.; Scolari, F.; et al. Deciphering Variability of PKD1 and PKD2 in an Italian Cohort of 643 Patients with Autosomal Dominant Polycystic Kidney Disease (ADPKD). Sci. Rep. 2016, 6, 30850. [Google Scholar] [CrossRef] [Green Version]
  39. Heyer, C.M.; Sundsbak, J.L.; Abebe, K.Z.; Chapman, A.B.; Torres, V.E.; Grantham, J.J.; Bae, K.T.; Schrier, R.W.; Perrone, R.D.; Braun, W.E.; et al. Predicted Mutation Strength of Nontruncating PKD1 Mutations Aids Genotype-Phenotype Correlations in Autosomal Dominant Polycystic Kidney Disease. J. Am. Soc. Nephrol. 2016, 27, 2872–2884. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  40. Grantham, J.J.; Torres, V.E.; Chapman, A.B.; Guay-Woodford, L.M.; Bae, K.T.; King, B.F., Jr.; Wetzel, L.H.; Baumgarten, D.A.; Kenney, P.J.; Harris, P.C.; et al. Volume Progression in Polycystic Kidney Disease. N. Engl. J. Med. 2006, 354, 2122–2130. [Google Scholar] [CrossRef] [Green Version]
  41. Torres, V.E.; Chapman, A.B.; Devuyst, O.; Gansevoort, R.T.; Grantham, J.J.; Higashihara, E.; Perrone, R.D.; Krasa, H.B.; Ouyang, J.; Czerwiec, F.S.; et al. Tolvaptan in Patients with Autosomal Dominant Polycystic Kidney Disease. N. Engl. J. Med. 2012, 367, 2407–2418. [Google Scholar] [CrossRef] [Green Version]
  42. Torres, V.E.; Chapman, A.B.; Devuyst, O.; Gansevoort, R.T.; Perrone, R.D.; Dandurand, A.; Ouyang, J.; Czerwiec, F.S.; Blais, J.D.; TEMPO 4:4 Trial Investigators. Multicenter, open-label, extension trial to evaluate the long-term efficacy and safety of early versus delayed treatment with tolvaptan in autosomal dominant polycystic kidney disease: The TEMPO 4:4 Trial. Nephrol. Dial. Transp. 2017, 33, 477–489. [Google Scholar] [CrossRef] [Green Version]
  43. Horie, S.; Muto, S. Kidney volume and renal function in ADPKD. Nihon Jinzo Gakkai Shi 2012, 54, 501–505. [Google Scholar]
  44. Perrone, R.D.; Mouksassi, M.-S.; Romero, K.; Czerwiec, F.S.; Chapman, A.B.; Gitomer, B.Y.; Torres, V.E.; Miskulin, D.C.; Broadbent, S.; Marier, J.F. Total Kidney Volume Is a Prognostic Biomarker of Renal Function Decline and Progression to End-Stage Renal Disease in Patients With Autosomal Dominant Polycystic Kidney Disease. Kidney Int. Rep. 2017, 2, 442–450. [Google Scholar] [CrossRef] [Green Version]
  45. Yu, A.S.; Shen, C.; Landsittel, D.P.; Harris, P.C.; Torres, V.E.; Mrug, M.; Bae, K.T.; Grantham, J.J.; Rahbari-Oskoui, F.F.; Flessner, M.F.; et al. Baseline total kidney volume and the rate of kidney growth are associated with chronic kidney disease progression in Autosomal Dominant Polycystic Kidney Disease. Kidney Int. 2018, 93, 691–699. [Google Scholar] [CrossRef] [Green Version]
  46. Erickson, K.F.; Chertow, G.M.; Goldhaber-Fiebert, J.D. Cost-Effectiveness of Tolvaptan in Autosomal Dominant Polycystic Kidney Disease. Ann. Intern. Med. 2013, 159, 382. [Google Scholar] [CrossRef] [Green Version]
  47. Gabow, P.A.; Johnson, A.M.; Kaehny, W.D.; Kimberling, W.J.; Lezotte, D.C.; Duley, I.T.; Jones, R.H. Factors affecting the progression of renal disease in autosomal-dominant polycystic kidney disease. Kidney Int. 1992, 41, 1311–1319. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  48. Chen, D.; Ma, Y.; Wang, X.; Yu, S.; Li, L.; Dai, B.; Mao, Z.; Sun, L.; Xu, C.; Rong, S.; et al. Clinical Characteristics and Disease Predictors of a Large Chinese Cohort of Patients with Autosomal Dominant Polycystic Kidney Disease. PLoS ONE 2014, 9, e92232. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  49. Torres, V.E.; Grantham, J.J.; Chapman, A.B.; Mrug, M.; Bae, K.T.; King, B.F., Jr.; Wetzel, L.H.; Martin, D.; Lockhart, M.E.; Bennett, W.M.; et al. Potentially Modifiable Factors Affecting the Progression of Autosomal Dominant Polycystic Kidney Disease. Clin. J. Am. Soc. Nephrol. 2011, 6, 640–647. [Google Scholar] [CrossRef] [Green Version]
  50. Tsubakihara, Y.; Akizawa, T.; Iwasaki, M.; Shimazaki, R. High Hemoglobin Levels Maintained by an Erythropoiesis-Stimulating Agent Improve Renal Survival in Patients with Severe Renal Impairment. Ther. Apher. Dial. 2015, 19, 457–465. [Google Scholar] [CrossRef] [PubMed]
  51. Kim, H.; Koh, J.; Park, S.K.; Oh, K.H.; Kim, Y.H.; Kim, Y.; Ahn, C.; Oh, Y.K. Baseline characteristics of the autosomal-dominant polycystic kidney disease sub-cohort of the KoreaN cohort study for outcomes in patients with chronic kidney disease. Nephrology 2019, 24, 422–429. [Google Scholar] [CrossRef] [PubMed]
Figure 1. Flow chart of patients with ADPKD. ADPKD: autosomal dominant polycystic kidney disease.
Figure 1. Flow chart of patients with ADPKD. ADPKD: autosomal dominant polycystic kidney disease.
Biomolecules 13 01020 g001
Figure 2. Mann−Whitney analysis of the clinically important factors related to the rate of change in ΔeGFR performed in the subgroup analysis and comparison of ΔeGFR between patients with PKD1 and PKD2 (A), HtTKV (B), Mayo 1A and 1B and 1C, 1D, and 1E (C), PKD1 truncated or non-truncated mutations (D), and PKD1 truncated or non-truncated mutations in the population aged ≥65 years (E). HtTKV: height-adjusted total kidney volume (mL/m), eGFR: estimated glomerular filtration rate, ΔeGFR/year: represents the 1-year change in eGFR calculated using the least-squares method based on the change in eGFR values before tolvaptan treatment, aged ≥65 years: population aged ≥65 years.
Figure 2. Mann−Whitney analysis of the clinically important factors related to the rate of change in ΔeGFR performed in the subgroup analysis and comparison of ΔeGFR between patients with PKD1 and PKD2 (A), HtTKV (B), Mayo 1A and 1B and 1C, 1D, and 1E (C), PKD1 truncated or non-truncated mutations (D), and PKD1 truncated or non-truncated mutations in the population aged ≥65 years (E). HtTKV: height-adjusted total kidney volume (mL/m), eGFR: estimated glomerular filtration rate, ΔeGFR/year: represents the 1-year change in eGFR calculated using the least-squares method based on the change in eGFR values before tolvaptan treatment, aged ≥65 years: population aged ≥65 years.
Biomolecules 13 01020 g002
Figure 3. Kaplan–Meier kidney survival plot of the group of patients with a PKD1 mutation and the group of patients with a PKD2 mutation (A), PKD1 truncated or non-truncated mutations (B).
Figure 3. Kaplan–Meier kidney survival plot of the group of patients with a PKD1 mutation and the group of patients with a PKD2 mutation (A), PKD1 truncated or non-truncated mutations (B).
Biomolecules 13 01020 g003
Table 1. Irazabal equation coefficients for estimating future eGFR.
Table 1. Irazabal equation coefficients for estimating future eGFR.
Irazabal Equation Coefficients for Estimating Future eGFR
VariableDescriptionValue
αIntercept21.18
βSex (reference is male)−1.26
γAge at HtTKV0 (years)−0.26
δeGFR at HtTKV0 (mL/min per 1.73 m2)0.90
θbSubclass 1B0.58
θcSubclass 1C−1.14
θdSubclass 1D−1.93
θeSubclass 1E−6.26
ξYears from HtTKV0−0.23
λSex, years from HtTKV00.19
μAge at HtTKV, years from HtTKV0−0.02
σcSubclass 1C, years from HtTKV0−2.63
σdSubclass 1D, years from HtTKV0−3.48
σeSubclass 1E, years from HtTKV0−4.78
Source: [23,32]. eGFR: estimated glomerular filtration rate, HtTKV: height-adjusted total kidney volume, HtTKV0: baseline height adjusted total kidney volume.
Table 2. Patient characteristics.
Table 2. Patient characteristics.
TotalPKD1
Truncated
PKD1
Non-Truncated
PKD2
Truncated
PKD2
Non-Truncated
p-Value
Patients, n (%)309 (100)139 (45.0)86 (27.8)68 (22.0)16 (5.2)
Age, median (IQR)48 (41–55)46 (38–50)46 (41–54)52 (46–62)54 (48–59)<0.001
Sex 0.78
  Female17679493711
  Male1336037315
Height, m, median (IQR)1.65 (1.58–1.72)1.66 (1.60–1.73)1.65 (1.60–1.72)1.64 (1.56–1.70)1.62 (1.57–1.66)0.021
BMI, kg/m2, median (IQR)22.0 (20.2–24.6)21.7 (20.0–24.0)22.7 (20.7–25.3)21.9 (20.6–25.1)23.0 (21.3–24.1)0.304
TKV, mL, median (IQR)1224.0 (808.0–1720.5)1277.0 (840.0–1760.8)1108.5 (755.2–1566.5)1240.5 (809.8–1695.1)1344 (900.8–3048.3)0.016
HtTKV, mL/m, median (IQR)748.0 (483.3–1002.2)761.0 (525.5–1016.4)694.1 (440.0–929.7)753.9 (490.3–1033.6)877.4 (575.6–1957.0)0.011
ΔeGFR/year, mL/min/1.73 m2, median (IQR)−3.10 (−5.69 to −1.0)−3.65 (−6.39 to −1.35)−3.41 (−5.69 to −1.66)−2.04 (−5.01 to −0.60)−2.22 (−5.00 to −0.58)0.166
Hypertension before 35 years of age 0.118
  Yes41241241
  No268115746415
Urologic event before 35 years of age 0.201
  Yes1174437315
  No19295493711
Mayo subclass 0.01
  Class 1A194771
  Class 1B1033929296
  Class 1C1215828305
  Class 1D54292023
  Class 1E129201
Data are presented as either median (IQR) or n (%). IQR: interquartile range, BMI: body mass index, TKV: total kidney volume, HtTKV: height-adjusted total kidney volume, eGFR: estimated glomerular filtration rate, ΔeGFR/year: represents the 1-year change in eGFR calculated using the least-squares method based on the change in eGFR values before tolvaptan treatment.
Table 3. Subgroup analyses for ΔeGFR (n = 309).
Table 3. Subgroup analyses for ΔeGFR (n = 309).
ΔeGFR/Year (mL/min/1.73 m2/Year)p-Value
Age 0.334
  <48−3.41 [−5.88 to −1.03]
  ≥48−2.81 [−5.50 to −0.90]
Sex 0.956
  Female−2.91 [−5.92 to −1.03]
  Male−3.40 [−5.30 to −0.99]
Height 0.867
  <1.65−2.86 [−5.7 to −1.24]
  ≥1.65−3.41 [−5.63 to −0.98]
BMI 0.046
  <22.0−2.73 [−5.35 to −0.81]
  ≥22.0−3.61 [−6.09 to −1.38]
HtTKV 0.020
  <750−2.64 [−5.12 to −0.83]
  ≥750−3.65 [−6.58 to −1.37]
Mayo classification 0.035
  1A, 1B−2.38 [−4.98 to −0.98]
  1C, 1D, 1E−3.61 [−6.39 to 1.15]
Germline mutations
  PKD1−3.50 [−6.31 to −1.40]0.006
  PKD2−2.04 [−5.01 to −0.60]
  PKD1 truncated−3.65 [−6.39 to −1.35]0.955
  PKD1 non-truncated−3.41 [−5.69 to −1.66]
  PKD1 truncated (aged ≥ 65 years) −6.56 [−6.58 to −4.80]0.049
  PKD1 non-truncated (aged ≥ 65 years)−2.16 [−3.37 to −1.58]
Hypertension before 35 years of age 0.207
 Yes−3.76 [−6.46 to −1.20]
  No−2.95 [−5.57 to −0.99]
Urologic event before 35 years of age 0.715
  Yes−3.03 [−5.62 to −0.80]
  No−3.13 [−5.69 to −1.03]
Data are presented as median (IQR). BMI: body mass index (kg/m2), HtTKV: height-adjusted total kidney volume (mL/m), eGFR: estimated glomerular filtration rate, ΔeGFR/year: represents the 1-year change in eGFR calculated using the least-squares method based on the change in eGFR values before tolvaptan treatment, aged > 65 years: the population over 65 years of age, IQR: interquartile range.
Table 4. Comparison of genetic mutations and factors that were significantly different in the subgroup analysis in the chi-square and Fisher’s exact tests.
Table 4. Comparison of genetic mutations and factors that were significantly different in the subgroup analysis in the chi-square and Fisher’s exact tests.
PKD1PKD2p-Value PKD1 TruncatedPKD1 Non-Truncatedp Value PKD1 Truncated
Aged ≥65 Years
PKD1 Non-Truncated
Aged ≥65 Years
p-Value
BMI 0.676 0.134 0.676
  <22.011540773825
  ≥22.011044624837
HtTKV 0.626 0.253 0.626
  <75011640674939
  ≥75010944723723
Mayo classification 0.015 0.127 0.131
  1A, 1B79434336412
  1C, 1D, 1E14641965010
BMI: body mass index (kg/m2), HtTKV: height-adjusted total kidney volume (mL/m).
Table 5. Odds ratios in the univariate and multivariate logistic regression analyses for renal dysfunction *.
Table 5. Odds ratios in the univariate and multivariate logistic regression analyses for renal dysfunction *.
Univariate AnalysisMultivariate AnalysisMultivariate Analysis
(PSM Data)
OR (95% CI) p-Value OR (95% CI)p-ValueOR (95% CI)p-Value
Age: ≥48 vs. <48 years0.82
[0.52–1.28]
0.382
Sex: male vs. female1.01
[0.64–1.59]
0.968
Height: ≥1.65 vs. <1.65 m1.10
[0.70–1.72]
0.676
BMI: ≥22.0 vs. <22.01.50
[0.96–2.35]
0.078
HtTKV: ≥750 vs. <7501.62
[1.03–2.54]
0.0271.67
[1.06–2.63]
0.0292.44
[1.23–4.82]
0.011
PKD1 vs. PKD21.81
[1.08–3.05]
0.0251.87
[1.11–3.16]
0.0202.58
[1.30–5.13]
0.007
PKD1: truncated vs. non-truncated1.17
[0.68–2.00]
0.575
Hypertension before 35 years of age1.33
[0.69–2.58]
0.390
Urologic event before 35 years of age0.78
[0.49–1.26]
0.307
U-pro2.03
[0.97–4.24]
0.060
* Renal function using ΔeGFR/year > 3.61 mL/min/1.73 m2/year as the cutoff value [29,30]. BMI: body mass index (kg/m2), HtTKV: height-adjusted total kidney volume (mL/m), U-pro: urine protein, OR: odds ratio, CI: confidence interval, PSM: propensity score matching.
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Kimura, T.; Kawano, H.; Muto, S.; Muramoto, N.; Takano, T.; Lu, Y.; Eguchi, H.; Wada, H.; Okazaki, Y.; Ide, H.; et al. PKD1 Mutation Is a Biomarker for Autosomal Dominant Polycystic Kidney Disease. Biomolecules 2023, 13, 1020. https://doi.org/10.3390/biom13071020

AMA Style

Kimura T, Kawano H, Muto S, Muramoto N, Takano T, Lu Y, Eguchi H, Wada H, Okazaki Y, Ide H, et al. PKD1 Mutation Is a Biomarker for Autosomal Dominant Polycystic Kidney Disease. Biomolecules. 2023; 13(7):1020. https://doi.org/10.3390/biom13071020

Chicago/Turabian Style

Kimura, Tomoki, Haruna Kawano, Satoru Muto, Nobuhito Muramoto, Toshiaki Takano, Yan Lu, Hidetaka Eguchi, Hiroo Wada, Yasushi Okazaki, Hisamitsu Ide, and et al. 2023. "PKD1 Mutation Is a Biomarker for Autosomal Dominant Polycystic Kidney Disease" Biomolecules 13, no. 7: 1020. https://doi.org/10.3390/biom13071020

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop