Literature DB >> 34824543

Genetic Polymorphisms Affecting Tacrolimus Metabolism and the Relationship to Post-Transplant Outcomes in Kidney Transplant Recipients.

Fang Cheng1,2, Qiang Li1,2, Jinglin Wang1,2, Min Hu1,2, Fang Zeng1,2, Zhendi Wang3, Yu Zhang1,2.   

Abstract

BACKGROUND: Tacrolimus is a key drug in kidney transplantation with a narrow therapeutic index. However, whether tacrolimus exposure variability affects clinical outcomes and adverse reactions remains unknown.
OBJECTIVE: Our study investigated the factors that influence tacrolimus exposure in kidney transplantation recipients and the relationship between tacrolimus concentration and clinical outcomes and adverse reactions. SETTINGS AND METHODS: We examined the effect of tacrolimus concentration on clinical outcomes and adverse reactions in 201 kidney transplantation recipients, and identified clinical and pharmacogenetic factors that explain tacrolimus exposure.
RESULTS: The CYP3A5 genotype was clearly associated with dose-adjusted trough blood tacrolimus concentrations (C0/D), whereas no significant difference was observed in patients with the CYP3A4*1B, CYP3A4*22, ABCB1, ABCC2, POR*28 or PXR alleles. Clinical factors such as red blood cell count, hemoglobin, and albumin were the most useful influence factors affecting tacrolimus C0/D. Besides, Wuzhi capsule increased tacrolimus C0/D in kidney transplantation recipients. Furthermore, higher tacrolimus concentrations were associated with higher diarrhea and post-transplant diabetes mellitus (PTDM) risk but not with acute rejection and chronic allograft kidney dysfunction.
CONCLUSION: Clinical factors, medication, and CYP-enzyme polymorphisms accounted for tacrolimus concentration variability in kidney transplantation recipients. Furthermore, higher tacrolimus concentrations were associated with higher diarrhea and PTDM risk.
© 2021 Cheng et al.

Entities:  

Keywords:  immunosuppression; kidney transplantation; metabolism; pharmacogenetics; tacrolimus

Year:  2021        PMID: 34824543      PMCID: PMC8610755          DOI: 10.2147/PGPM.S337947

Source DB:  PubMed          Journal:  Pharmgenomics Pers Med        ISSN: 1178-7066


Introduction

Kidney transplant recipients require life-long immunosuppression therapy to prevent allograft rejection.1 Tacrolimus, an effective and potent calcineurin inhibitor, is a cornerstone of immunosuppression therapy after kidney transplantation. The essential therapeutic effects of tacrolimus, however, are shadowed by its various side effects, narrow therapeutic index and highly variable pharmacokinetic (PK) properties.2 Therefore, therapeutic drug monitoring (TDM) is recommended for patients receiving tacrolimus. However, due to individual first-pass effects, the target tacrolimus concentration may lag behind relatively. In addition, the target concentration does not guarantee the therapeutic effect or avoid adverse reactions. Several factors can affect the PK properties of tacrolimus, such as diet, drug combinations, genotypes, and clinical factors. In recent years, genetic factors have been considered to play an important role in the interindividual and interethnic variability of tacrolimus.3 Tacrolimus is mainly metabolized by cytochrome P450 3A5 (CYP3A5) and CYP3A4 enzymes.4,5 Therefore, allelic variation of CYP3A5 and CYP3A4 genes can explain most of the tacrolimus PK variability. Previous studies have well established the influence of CYP3A5 genotype on tacrolimus PK.6,7 However, recent studies have shown the limited effectiveness of CYP3A5-guided dose adjustment in achieving target concentrations in kidney transplantation recipients, suggesting that additional factors may participate in tacrolimus PK variability. Even though tacrolimus pharmacogenetic/pharmacogenomic studies have only reached a consensus on CYP3A5*3 as a genetic factor affecting tacrolimus PK,8–10 CYP3A5*3 is believed to account for 40%–50% of variations in tacrolimus dosage requirements,11 and the correct dosage remains undetermined for a large proportion of patients. Recent studies have revealed that several other CYP3A4, ABCB1, POR, ABCC2, and PXR gene variants that impact tacrolimus metabolism also affect tacrolimus PKs in different transplant populations.2,12,13 However, controversies remain about their roles in predicting dose-adjusted trough blood tacrolimus concentrations (C0/D). The effect of tacrolimus concentration on clinical outcomes and adverse reactions is still a matter of discussion. On the one hand, no correlation was found between tacrolimus trough concentration and biopsy proven acute rejection (BPAR) in the combined renal transplantation cohort.14 On the other hand, a study showed that pharmacogenomics and other factors affected the association between tacrolimus trough concentration and clinical outcomes.15 A meta-analysis showed that CYP3A5 non-expressers have a significantly increased risk for acute rejection,16 but a prospective randomized trial failed to demonstrate that CYP3A5-guided dose adjustment was beneficial for acute rejection, nephrotoxicity, or survival.17 In addition, a study has also reported that CYP3A5-guided tacrolimus dosing adjustment did not increase the number of patients reaching therapeutic range and failed to improve clinical outcome.18 Therefore, understanding the predictors of tacrolimus PK variability may provide effective and precise dosing strategies for kidney transplantation recipients. Moreover, it is essential to determine whether tacrolimus levels affect clinical outcomes and adverse reactions. Thus, our study investigated the factors influencing tacrolimus PK variability in kidney transplantation recipients and the effect of tacrolimus exposure on clinical outcomes and adverse reactions.

Materials and Methods

Patient Selection

This investigation was a retrospective single-center study, it included 201 kidney transplantation recipients in Union Hospital, Tongji Medical College, Huazhong University of Science and Technology from June 2015 to December 2019. The enrolment criteria were as follows: (a) received tacrolimus, mycophenolate mofetil, and corticosteroids for graft rejection prevention after kidney transplantation, (b) 18–70 years old, (c) complete clinical data. The exclusion criteria were age under 18 years, combined other organs’ transplantation, exposure to cyclosporine or intravenous tacrolimus, co-administration of azole antifungal agents, or missing data. The study was approved by the institutional ethics board of Tongji Medical College, Huazhong University of Science and Technology (Wuhan, China) (Number: [2018] S331). This investigation did not interfere with patient diagnosis or the treatment process. Oral informed consent was provided by all patients and approved by the ethics committee, and this study conformed to the ethical standards of the Declaration of Helsinki. In our study, we recruited 201 patients who received kidney transplant from donations after cardiac death (DCD). DCD kidneys were regionally distributed within the organ sharing network system of China, which is similar to the United Network for Organ Sharing. The process of DCD in China has been described previously.19 All DCDs were performed by the Organ Procurement Organization of Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, and were conducted in accordance with the Declaration of Istanbul. Information obtained through the electronic medical record system included, demographic data, symptoms, underlying comorbidities, laboratory tests, and clinical medication during peri-operation. Adverse reactions and clinical outcomes were obtained through patient follow-up.

Drug Administration

All recipients received a calcineurin inhibitor-based triple immunosuppressive regimen (tacrolimus, mycophenolate mofetil, and corticosteroids). Tacrolimus was administered orally under fasting conditions, and the starting dosage was 3.0–5.0 mg twice daily on Day 2 after transplantation. Mycophenolate mofetil treatment started at 0.5–1.0 g twice daily on the transplantation day.

Therapeutic Drug Monitoring

Tacrolimus was administered on the 2nd day after kidney transplantation, and the blood concentration of tacrolimus was detected on the 5th day after the operation. Drug concentrations were measured twice weekly or more frequently if justified (suspicion of rejection or adverse event). Tacrolimus concentrations were measured in whole blood using the Roche cobas®e411 electrochemiluminescence analyzer with a range of 0.5–40 ng/mL. The target trough concentration (C0) range of tacrolimus in the first month was 8–10 ng/mL in our hospital. Tacrolimus concentrations were available at 1, 3, 9, and 12-month post-transplant. The effect of clinical and genetic variables on tacrolimus PKs was quantified by examining the changes in tacrolimus C0/D, a measure used in numerous previous studies.

Genotypes

Genotyping of polymorphic genes is not routine in the current clinical practice. After therapeutic drug monitoring, we centrifuged the blood samples, removed the supernatant, and precipitated for DNA extraction using the QIAamp DNA Mini Kit (Qiagen, 51306). Genotyping was performed on peripheral blood samples using a Capital Biotechnology Precision Medicine Research Array (CBT-PMRA) Kit (Thermo Fisher Scientific, Waltham, MA, USA) with Applied Biosystems Axiom 2.0 platform. The microarray contained more than 787,400 single nucleotide polymorphisms (SNPs), which included 50,000 novel markers covering East and South Asian populations based on the human genome version 19 (GRCH 37). Microarray experiments were performed following the official standard operating procedures. The whole experiment was divided into five stages and lasted for 4.5 days. In the first phase, DNA amplification lasted 24 h. DNA fragmentation and precipitation were performed on the following day. DNA pellets were then oven-dried and dissolved in a resuspension buffer. DNA concentrations and fragment sizes were tested to assess whether they could be used in subsequent hybridization experiments. Furthermore, DNA hybridization, ligation, staining, washing and array scanning were all performed on the GeneTitan™ MC Instrument. Finally, genotyping was performed using the AxiomTM analysis suite v4.0.1. To explain residual PK variability, we selected SNPs that have been reported to significantly affect tacrolimus metabolism,13 including (CYP3A5*3 (rs776746), CYP3A4*1B (rs2740574), CYP3A4*22 (rs35599367), ABCB1 (rs1128503, rs2032582 and rs1045642), ABCC2 (rs717620, rs2273697 and rs3740066), and POR*28 (rs1057868) and PXR (rs6785049).

Clinical Outcomes and Adverse Reactions

Clinical outcomes include acute rejection (AR) and chronic kidney allograft dysfunction (CKAD) in our study. We defined AR as an acute deterioration of graft function associated with specific pathologic changes in graft biopsies occurring during the first year after transplantation. CKAD was defined according to the guidelines of The Chinese Society of Organ Transplantation of the Chinese Medical Association (CSOT). Our study included the following individual adverse reactions: post-transplant diabetes mellitus (PTDM), secondary infections, liver dysfunction, and diarrhea.

Statistical Analysis

Categorical variables were described as frequency rates and percentages. When the data were normally distributed, means for continuous variables were described using mean ± standard deviation. Otherwise, data were presented as the median and interquartile range values. Genotype distribution was evaluated with Hardy–Weinberg equilibrium analysis. Spearman correlation was applied for univariate analysis. Then, the association between genetic and clinical variables of interest and tacrolimus concentration was modeled with multivariate regression analyses. To investigate the relationship between clinical outcomes and adverse reactions and tacrolimus concentration, when the data were normally distributed, means for continuous variables were compared using independent group t-tests. Otherwise, the Mann–Whitney test was performed. All statistical analyses were performed using SPSS version 20.0 (IBM Corp., Armonk, NY, USA). P-values <0.05 indicated statistically significant differences.

Results

Patient Characteristics

Of the 201 patients included in this study, 148 (73.3%) were males. Demographic data and clinical information of the recipients and donors are shown in Table 1. The median age of the recipients was 42 years old (interquartile range (IQR) 34−50). Hypertension (N=182 [90.1%]) and anemia (N=87 [43.1%]) were the most common pre-existing conditions. The mean preoperative hemoglobin concentration of the recipients was 100.89±22.55 g/L, and that of creatinine was 945.84±105.74 μmol/L. Most patients received induction therapy with antithymocyte globulin (N=178 [88.1%]), and mycophenolate as an antiproliferative agent (N=194 [96.0%]). And 79 (39.3%) patients took Wuzhi capsules (WZC) to increase tacrolimus concentration.
Table 1

Demographic and Clinical Characteristics of Kidney Transplant Recipients and Donors

Recipients
Gender (male)148 (73.3)
Age, years, median (IQR)42 (34–50)
BMI, mean±SD21.25±2.38
Comorbidity, n (%)
Hypertension182 (90.1)
Anemia87 (43.1)
Hepatitis B11 (5.4)
Diabetes11 (5.4)
Arthrolithiasis5 (2.5)
Coronary heart disease, n (%)4 (2.0)
Others5 (2.5)
Laboratory findings, mean±SD
White blood cell count, ×109/L6.13±1.78
Red blood cell count, ×109/L4.81±1.97
Hemoglobin, g/L100.89±22.55
Hematocrit, %32.64±8.70
Platelet count, ×109/L179.03±34.29
Neutrophil count, ×109/L4.19±1.58
Total bilirubin, μmol/L8.80±3.40
ALT, U/L30.28±8.61
AST, U/L19.81±4.43
ALP, U/L85.77±15.40
TP, g/L71.71±10.74
ALB, g/L43.20±6.56
BUN, mmol/L19.56±7.12
Cre, μmol/L945.84±105.74
Uric acid, μmol/L373.62±51.4
Donors
Gender (male)145 (71.8)
Age48 (37–58)
BMI24.48±6.40
Immunosuppression regimens
Induction agent, n (%)
Basiliximab24 (11.9)
Antithymocyte globulin178 (88.1)
Antiproliferative agent, n (%)
Mycophenolate194 (96.0)
Azathioprine8 (4.0)
Corticosteroid dose, mg, median (IQR)32 (26–38)

Abbreviations: IQR, interquartile range; SD, standard deviation; BMI, body mass index; ALT, alanine aminotransferase; AST, aspartate aminotransferase; ALP, alkaline phosphatase; TP, total protein; ALB, albumin; BUN, blood urea nitrogen; Cre, creatinine.

Demographic and Clinical Characteristics of Kidney Transplant Recipients and Donors Abbreviations: IQR, interquartile range; SD, standard deviation; BMI, body mass index; ALT, alanine aminotransferase; AST, aspartate aminotransferase; ALP, alkaline phosphatase; TP, total protein; ALB, albumin; BUN, blood urea nitrogen; Cre, creatinine.

Pharmacogenetic Analysis

We investigated whether the CYP3A5*3 (rs776746), CYP3A4*22 (rs35599367), CYP3A4*1B (rs2740574), ABCB1 (rs1128503, rs2032582 and rs1045642), ABCC2 (rs717620, rs2273697 and rs3740066), POR28 (rs2868177), and PXR (rs6785049) polymorphisms affected the tacrolimus C0/D in the first month after kidney transplantation. The results of the Hardy-Weinberg equilibrium analysis were shown in , and all genes met the conditions of Hardy-Weinberg equilibrium (P > 0.05). The individual trend of tacrolimus trough concentration after one-year post-transplantation (Figure 1) showed a wide deviation from the target range of 8–12 ng/mL. We divided the 201 recipients into two groups: CYP3A5 expressers (AA + AG, *1/*1+*1/*3) and non-expressers (GG, *3/*3). Patients who were CYP3A5 non-expressers had higher tacrolimus trough concentration and C0/D than CYP3A5 expressers, which indicated CYP3A5 genotype strongly associated with tacrolimus C0/D (Figure 2). However, no significant difference was observed in patients with the ABCB1, ABCC2, POR*28 or PXR alleles (Table 2).
Figure 1

Tacrolimus concentration distribution in patients at different time interval.

Figure 2

The effect of CYP3A5 genotype on tacrolimus pharmacokinetic (PK) variability. (A) Tacrolimus concentration/dose ratio (C0/D) over time by CYP3A5 genotype. (B) Tacrolimus concentrations over time by CYP3A5 genotype.

Table 2

Pharmacogenetic Analysis of ABCB1, ABCC2, POR28 and PXR Polymorphism

C0/DCCCTTT
ABCB1 (rs1128503)1 mo.1.40 (1.13–1.60)1.43 (1.22–1.75)1.44 (1.16–1.73)
3 mo.1.52 (1.27–1.86)1.61 (1.21–1.93)1.63 (1.08–1.96)
9 mo.1.51 (1.23–1.83)1.64 (1.25–1.98)1.65 (1.21–2)
12 mo.1.67 (1.45–1.91)1.82 (1.47–2.18)1.72 (1.32–2.28)
CCCTTT
ABCB1 (rs2032582)1 mo.1.42 (1.09–1.57)1.42 (1.18–1.79)1.45 (1.18–1.71)
3 mo.1.52 (1.02–1.86)1.66 (1.27–1.91)1.52 (1.14–1.99)
9 mo.1.51 (1.24–1.98)1.65 (1.23–1.94)1.64 (1.19–2.03)
12 mo.1.76 (1.28–2.38)1.78 (1.47–1.99)1.66 (1.35–2.19)
CCCTTT
ABCB1 (rs1045642)1 mo.1.41 (1.15–1.60)1.47 (1.22–1.82)1.41 (1.15–1.75)
3 mo.1.55 (1.13–1.9)1.67 (1.21–1.93)1.51 (1.16–2.04)
9 mo.1.6 (1.2–1.91)1.65 (1.29–2.03)1.69 (1.17–2.03)
12 mo.1.76 (1.41–2.11)1.81 (1.46–2.18)1.5 (1.33–2.23)
CCTCTT
ABCC2 (rs717620)1 mo.1.40 (1.13–1.60)1.43 (1.22–1.75)1.14 (1.06–1.43)
3 mo.1.67 (1.24–1.96)1.45 (1.11–1.88)1.30 (0.95–1.75)
9 mo.1.66 (1.33–2.03)1.56 (1.15–1.93)1.37 (1.18–1.74)
12 mo.1.83 (1.47–2.34)1.73 (1.31–2.01)1.5 (1.23–1.69)
GGAG/AA
ABCC2 (rs2273697)1 mo.1.42 (1.09–1.57)1.15 (1.08–1.41)
3 mo.1.61 (1.14–1.90)1.60 (1.33–1.99)
9 mo.1.64 (1.2–1.95)1.63 (1.40–1.99)
12 mo.1.77 (1.37–2.13)1.77 (1.48–2.49)
CCTCTT
ABCC2 (rs37400660)1 mo.1.41 (1.15–1.60)1.47 (1.22–1.82)1.21 (1.05–1.55)
3 mo.1.67 (1.24–1.96)1.61 (1.08–1.91)1.38 (0.96–1.69)
9 mo.1.65 (1.31–1.99)1.58 (1.15–1.97)1.37 (1.08–1.7)
12 mo.1.81 (1.47–2.34)1.76 (1.31–2.14)1.5 (1.27–1.63)
CCTCTT
POR28 (rs2868177)1 mo.1.22 (1.09–1.65)1.48 (1.24–1.76)1.43 (1.16–1.64)
3 mo.1.45 (1.05–1.86)1.67 (1.25–1.88)1.51 (1.22–2.05)
9 mo.1.42 (1.18–1.8)1.70 (1.33–1.95)1.63 (1.24–2.17)
12 mo.1.54 (1.31–1.94)1.81 (1.38–2.13)1.77 (1.44–2.51)
GGAGAA
PXR (rs6785049)1 mo.1.45 (1.20–1.74)1.38 (1.15–1.65)1.51 (1.24–1.77)
3 mo.1.63 (1.33–1.95)1.61 (1.12–1.91)1.56 (1.13–2.06)
9 mo.1.6 (1.27–2.09)1.63 (1.19–1.93)1.74 (1.22–2.14)
12 mo.1.77 (1.46–2.37)1.70 (1.35–2.14)1.83 (1.32–2.33)

Abbreviations: ABCB1, ATP binding cassette subfamily B member 1; ABCC2, ATP binding cassette subfamily C member 2; POR, P450 oxidoreductase; PXR, pregnane X receptor.

Pharmacogenetic Analysis of ABCB1, ABCC2, POR28 and PXR Polymorphism Abbreviations: ABCB1, ATP binding cassette subfamily B member 1; ABCC2, ATP binding cassette subfamily C member 2; POR, P450 oxidoreductase; PXR, pregnane X receptor. Tacrolimus concentration distribution in patients at different time interval. The effect of CYP3A5 genotype on tacrolimus pharmacokinetic (PK) variability. (A) Tacrolimus concentration/dose ratio (C0/D) over time by CYP3A5 genotype. (B) Tacrolimus concentrations over time by CYP3A5 genotype.

Prognostic Factors of Tacrolimus C0/D in the First Month After Kidney Transplantation

The Pearson correlation analysis showed that recipients’ body mass index (BMI), anemia, red blood cell count (RBC), hemoglobin (HGB), albumin (ALB), blood urea nitrogen (BUN), CYP3A5*3 (rs776746), ABCC2 (rs717620), ABCC2 (rs37400660), and WZC might be closely related to tacrolimus C0/D (). Therefore, these 10 factors were included in the multivariate regression analyses, which showed that RBC, HGB, ALB, CYP3A5*3 (rs776746), and WZC were the most useful influence factors affecting tacrolimus C0/D (Figure 3).
Figure 3

Regression coefficients of multivariable linear regression.

Regression coefficients of multivariable linear regression. Next, we investigated the relationship between adverse reaction occurrence and tacrolimus concentration at different periods (Table 3). Diarrhea occurred in 28 of 201 patients (13.9%), mostly during the first month. The 28 patients with diarrhea had significantly higher tacrolimus concentration than patients without diarrhea. The receiver operating characteristic (ROC) curve of tacrolimus concentration at 1 month after transplantation was statistically significant (area under the curve (AUC)=0.779, P<0.001). Tacrolimus concentration at 1 month after transplantation <12.2 ng/mL, which was the best cutoff value for diarrhea. The sensitivity was 67.9%, and the specificity was 90.9% (Figure 4). At 9-month post-transplantation, tacrolimus concentrations in patients with PTDM were significantly higher than that in patients without PTDM. The ROC curve of tacrolimus concentration at 9-month after transplantation was statistically significant (AUC=0.903, P<0.001). Tacrolimus concentration at 9-month after transplantation <9.1 ng/mL, which was the best cutoff value for PTDM. The sensitivity was 72.7%, and the specificity was 94.2% (Figure 5).
Table 3

The Relationship Between Adverse Reactions Occurrence and Tacrolimus Concentration at Different Periods

Tacrolimus Concentration (ng/mL), Median (IQR)
1 mo.3 mo.9 mo.12 mo.
ARNon-AR9.9 (8.0–11.6)7.5 (6.3–8.8)6.8 (5.6–8.0)6.6 (5.8–7.9)
AR8.9 (7.3–11.3)7.3 (5.6–8.0)6.3 (5.3–8.3)7.6 (6.4–8.3)
CKADNon-CKAD9.9 (7.9–11.5)7.5 (6.3–8.5)6.8 (5.7–7.9)6.6 (5.9–7.9)
CKAD10.0 (8.2–12.0)7.5 (6.2–10.1)6.8 (5.4–8.1)6.2 (5.3–8.4)
PTDMNon-PTDM9.9 (7.9–11.6)7.5 (6.3–8.5)6.6 (5.6–7.8)a*6.6 (5.8–8.0)
PTDM9.4 (8.2–11.0)7.0 (5.4–9.7)10.3 (7.5–12.1)7.0 (5.9–8.5)
DiarrheaNon-diarrhea9.7 (7.7–11.0)a*7.5 (6.3–8.8)6.9 (5.8–8.1)6.5 (5.7–7.9)
Diarrhea13.2 (9.0–16.6)7.1 (6.1–8.4)6.2 (5.1–7.4)7.4 (6.2–8.3)
InfectionsNon-infection9.8 (7.9–11.4)7.5 (6.3–8.7)6.8 (5.7–7.8)6.6 (5.8–7.8)
Infection9.9 (8.3–12.0)7.3 (6.4–8.8)6.9 (5.1–8.2)7.6 (5.4–8.5)
Liver dysfunctionNon-liver dysfunction9.9 (8.0–11.6)7.5 (6.3–8.7)6.8 (5.6–7.7)6.6 (5.8–7.9)
Liver dysfunction9.2 (7.0–11.4)6.9 (5.6–8.2)7.3 (5.6–7.7)7.8 (5.2–9.1)

Note: a*p<0.05.

Abbreviations: IQR, interquartile range; AR, acute rejection; CKAD, chronic kidney allograft dysfunction; PTDM, post-transplant diabetes mellitus, mo, month.

Figure 4

The relationship between diarrhea occurrence and tacrolimus concentration. (A) Tacrolimus concentration over time in the non-diarrhea and diarrhea group. (B) Receiver operating characteristic (ROC) curve. **p<0.01.

Figure 5

The relationship between post-transplant diabetes mellitus (PTDM) occurrence and tacrolimus concentration. (A) Tacrolimus concentration over time in the non-PTDM and PTDM group. (B) Receiver operating characteristic (ROC) curve. **p<0.01.

The Relationship Between Adverse Reactions Occurrence and Tacrolimus Concentration at Different Periods Note: a*p<0.05. Abbreviations: IQR, interquartile range; AR, acute rejection; CKAD, chronic kidney allograft dysfunction; PTDM, post-transplant diabetes mellitus, mo, month. The relationship between diarrhea occurrence and tacrolimus concentration. (A) Tacrolimus concentration over time in the non-diarrhea and diarrhea group. (B) Receiver operating characteristic (ROC) curve. **p<0.01. The relationship between post-transplant diabetes mellitus (PTDM) occurrence and tacrolimus concentration. (A) Tacrolimus concentration over time in the non-PTDM and PTDM group. (B) Receiver operating characteristic (ROC) curve. **p<0.01.

Discussion

Kidney transplantation recipients usually receive a standard weight-based dose, which is then adjusted based on TDM to maintain tacrolimus blood concentrations within the therapeutic range. However, the correlation between tacrolimus concentration and clinical outcome is still a matter of discussion. This study revealed that the CYP3A5 polymorphism was closely associated with tacrolimus C0/D. We also suggested that clinical variables such as RBC, hemoglobin, albumin, and WZC could explain tacrolimus PK variability. Furthermore, we found that higher tacrolimus concentrations were significantly associated with diarrhea and PTDM risk at different periods. These findings will provide guidance for precision tacrolimus dosing in kidney transplantation recipients. CYP3A5 is the predominant tacrolimus metabolic pathway, and previous studies have indicated that the CYP3A5 genotype was the most significant source of tacrolimus PK variability.7,20 In our study, patients categorized as CYP3A5 non-expresser (poor metabolizers) had higher C0/D compared with CYP3A5 expresser (intermediate and extensive metabolizers), which indicated that the CYP3A5 genotype strongly associated with tacrolimus C0/D. Compared with CYP3A5 polymorphisms, the associations between the tacrolimus PK and polymorphisms in CYP3A4, ABCB1, ABCC2, POR, and PXR genes are inconsistent. A previous study suggested that CYP3A4*22 was significantly related to increased tacrolimus concentrations in 1560 European-American kidney transplant recipients.21 However, the CYP3A4*22 and CYP3A4*1B SNPs have frequencies of less than 1% Asian populations. Thus, in our study, no mutation was observed in the CYP3A4*1B allele, and only one patient carried the minor allele of CYP3A4*22. Therefore, the effect of CYP3A4*22 and CYP3A4*1B were not evaluated. Furthermore, studies involving the relationship between tacrolimus PKs and ABCB1 have yielded conflicting results. Some have reported an association between tacrolimus PK and ABCB1,22,23 while most found no relationship between ABCB1 and tacrolimus C0/D.24,25 ABCC2 may also be related to tacrolimus metabolism. A study has reported that the ABCC2 c.3972C>T polymorphism affected tacrolimus C0/D in kidney transplant recipients.26 However, other studies have reached negative results about the associations between tacrolimus PKs and ABCC2 polymorphisms.23 According to our current findings, ABCB1 and ABCC2 had no effect on tacrolimus C0/D in Chinese kidney transplant recipients. The POR gene encodes the CYP oxidoreductase, and plays a key role in CYP-mediated drug oxidation. Previous studies have suggested that the POR*28 variant allele decreased tacrolimus exposure in CYP3A5 expressers.18 Conversely, some studies have shown that POR*28 did not affect the tacrolimus PKs.27 This is consistent with the fact that we did not observe any effect of POR*28 on tacrolimus C0/D. PXR, encoded by NR1I2, regulates the expression of CYP3A and ABCB1. Studies on the relationship between PXR and tacrolimus PKs yielded conflicting results.28,29 However, there were no significant differences observed between POR*28 or PXR alleles and tacrolimus C0/D in our study. Since more than 90% of tacrolimus in circulation is confined to RBCs, RBC count is expected to affect blood tacrolimus concentration.30 Previous studies also reported that tacrolimus was highly bound to plasma proteins, mainly to serum albumin.31 Therefore, hemoglobin and albumin influence the free fraction but not the unbound concentration of tacrolimus in blood. Previous studies reported an association between hemoglobin and albumin and tacrolimus PKs.32,33 A decrease in hemoglobin and albumin levels increases the free fraction of tacrolimus in blood, increasing whole blood clearance, and ultimately resulting in a decrease in tacrolimus blood levels.34 These changes are important for the correct interpretation of TDM results. Consistent with prior studies in kidney and other transplant populations, we observed that low RBC, hemoglobin, and albumin levels would result in a low tacrolimus C0/D. Tacrolimus is a substrate of P-gp and is mainly metabolized by CYP3A in the liver and small intestine. Therefore, investigating the potential drug interaction effects is necessary before considering combination therapy. Previous study demonstrated that pharmacokinetic interaction occurs between steroids and tacrolimus in renal transplant patients.35 Although all transplant patients in our study received the same standard therapeutic regimen (tacrolimus, mycophenolate mofetil, and corticosteroids), there were dose differences in corticosteroids. Therefore, an effect on tacrolimus PKs cannot be ruled out. Azole antifungal agents, such as fluconazole, itraconazole, and posaconazole, could inhibit the activity of CYP3A enzymes and thus reduce tacrolimus clearance, increasing tacrolimus concentrations.36 However, kidney transplant patients of our hospital rarely used azoles; therefore, we excluded patients using azole antifungal drugs. In China, a traditional Chinese medicine named Wuzhi capsules (WZC) (registration number in China: Z20025766) is often prescribed to increase tacrolimus concentration in clinical practice.37 In vivo and in vitro PK studies demonstrated that WZC inhibited P-gp-mediated efflux and CYP3A-mediated metabolism of tacrolimus, and increased tacrolimus oral bioavailability.38–40 Our results also suggested that WZC significantly increased tacrolimus C0/D. In addition, we did not consider the impact of calcium channel blockers (amlodipine and nifedipine, used for treating hypertension), and this should be clarified in future large-scale studies. Tacrolimus therapy is associated with risks of nephrotoxicity, neurotoxicity, hypertension, dyslipidemia, diarrhea, and PTDM.41–43 The clinical efficacy of any dose of tacrolimus administered for kidney transplantation recipients depends on whether exposure variability negatively impacts outcomes and adverse reactions. However, the correlation between tacrolimus concentration and clinical outcome is still in discussion. Low tacrolimus exposure may increase the risk of acute rejection in the first year after kidney transplantation.44 In addition, tacrolimus trough concentrations above 9.3 ng/mL were significantly associated with higher BPAR risk in the first three months after transplantation.45 However, other studies found no significant difference in acute rejection between tacrolimus trough concentrations in the first year or the first two weeks after transplantation, respectively.46,47 Our study revealed no association between differential tacrolimus exposure and AR and CKAD after one-year post-transplantation, but the number of patients was small and the follow-up was short. However, we found that tacrolimus concentrations at different periods were significantly associated with diarrhea and PTDM. Mycophenolate mofetil (MMF) is often considered to be the cause of unexplained diarrhea in kidney transplantation recipients. However, recent studies suggest that systemic exposures to MMF and its metabolites are not associated with diarrhea in liver transplant recipients.48 Diarrhea is also a frequent side effect of tacrolimus, but the relationship between tacrolimus and diarrhea has not attracted much attention. In clinical trials, diarrhea was reported in 22–72% of recipients taking tacrolimus.49 Previous studies suggested that the increased diarrhea associated with the combination of tacrolimus and MMF as compared with cyclosporine A and MMF may therefore not simply be caused by increased exposure to MMF.50 In addition, diarrhea further increases tacrolimus exposure, fueling a vicious cycle.51 Our results showed that diarrhea was correlated with tacrolimus concentration in the first month after transplantation, which was also consistent with the previous study. A tacrolimus concentration of 12.2 ng/mL was the best cutoff value for diarrhea. At present, the mechanism of tacrolimus-induced diarrhea is not clear. Tacrolimus can affect intestinal transport and barrier function, thus affecting glucose absorption.52 However, diarrhea can damage intestinal epithelial cells, reducing the activity of CYP3A4 and CYP3A5 metabolic enzymes in the local intestine, and decreasing the expression of P-gp or its activity, thereby affecting the metabolism and absorption of tacrolimus, and leading to an increase of tacrolimus concentration.51 Confirming whether higher tacrolimus concentrations cause diarrhea or diarrhea increases tacrolimus concentrations requires further studies. Recent studies have shown that the incidence of PTDM after transplantation is approximately 16%–61%,53 depending on medical centers. PTDM is associated with poorer graft function and all-cause mortality as well as an increased risk of infections and cardiovascular events.54 Higher tacrolimus levels were consistently considered as an important risk factor for PTDM. We also found that high tacrolimus levels in 9 months post-transplantation were related to an increased risk of PTDM. The tacrolimus concentration at 9 months after transplantation of 9.1 ng/mL was the best cutoff value for PTDM.

Conclusion and Relevance

Clinical factors, medication, and CYP-enzyme polymorphisms accounted for tacrolimus concentration variability in kidney transplantation recipients. Furthermore, high tacrolimus concentrations were associated with diarrhea and PTDM risk. However, our study has some limitations. First, it is a retrospective analysis study. This is a single-center study with relatively limited sample size. Multicenter and larger long-term studies would better account for the validity of our results. Secondly, we only studied SNPs that may affect tacrolimus metabolism as previously reported. Genomewide studies may identify additional predictive SNPs. Moreover, although all our transplant patients received the same standard therapeutic regimen, food and additional medications may impact tacrolimus PKs and have consequences on outcome variables. For example, all the patients received different doses of a combination of corticosteroids, known to induce cytochrome P450 expression, which may have affected tacrolimus PK may have been affected. In addition, we did not routinely detect the mycophenolate mofetil concentration. Thus, we cannot rule out the effect of mycophenolate mofetil on diarrhea, which requires further research.
  54 in total

1.  Tacrolimus and diarrhea: pathogenesis of altered metabolism.

Authors:  N Mittal; J F Thompson; T Kato; A G Tzakis
Journal:  Pediatr Transplant       Date:  2001-04

2.  Increase in tacrolimus exposure after steroid tapering is influenced by CYP3A5 and pregnane X receptor genetic polymorphisms in renal transplant recipients.

Authors:  Frank Stifft; Sander M J van Kuijk; Otto Bekers; Maarten H L Christiaans
Journal:  Nephrol Dial Transplant       Date:  2018-09-01       Impact factor: 5.992

3.  The occurrence of diarrhea not related to the pharmacokinetics of MPA and its metabolites in liver transplant patients.

Authors:  Zhang Wei Xia; Chen Yong Jun; Chen Hao; Chen Bing; Shi Min Min; Xie Jun Jie
Journal:  Eur J Clin Pharmacol       Date:  2010-05-15       Impact factor: 2.953

Review 4.  Kidney donation after circulatory death (DCD): state of the art.

Authors:  Dominic M Summers; Christopher J E Watson; Gavin J Pettigrew; Rachel J Johnson; David Collett; James M Neuberger; J Andrew Bradley
Journal:  Kidney Int       Date:  2015-03-18       Impact factor: 10.612

5.  Impact of CYP3A4*22 allele on tacrolimus pharmacokinetics in early period after renal transplantation: toward updated genotype-based dosage guidelines.

Authors:  Laure Elens; Arnaud Capron; Ron H N van Schaik; Martine De Meyer; Luc De Pauw; Djamila C Eddour; Dominique Latinne; Pierre Wallemacq; Michel Mourad; Vincent Haufroid
Journal:  Ther Drug Monit       Date:  2013-10       Impact factor: 3.681

6.  Therapeutic Drug Monitoring of Tacrolimus-Personalized Therapy: Second Consensus Report.

Authors:  Mercè Brunet; Teun van Gelder; Anders Åsberg; Vincent Haufroid; Dennis A Hesselink; Loralie Langman; Florian Lemaitre; Pierre Marquet; Christoph Seger; Maria Shipkova; Alexander Vinks; Pierre Wallemacq; Eberhard Wieland; Jean Baptiste Woillard; Markus J Barten; Klemens Budde; Helena Colom; Maja-Theresa Dieterlen; Laure Elens; Kamisha L Johnson-Davis; Paweł K Kunicki; Iain MacPhee; Satohiro Masuda; Binu S Mathew; Olga Millán; Tomoyuki Mizuno; Dirk-Jan A R Moes; Caroline Monchaud; Ofelia Noceti; Tomasz Pawinski; Nicolas Picard; Ron van Schaik; Claudia Sommerer; Nils Tore Vethe; Brenda de Winter; Uwe Christians; Stein Bergan
Journal:  Ther Drug Monit       Date:  2019-06       Impact factor: 3.681

7.  Relationship of CYP3A5 genotype and ABCB1 diplotype to tacrolimus disposition in Brazilian kidney transplant patients.

Authors:  Diego Alberto C Cusinato; Riccardo Lacchini; Elen A Romao; Miguel Moysés-Neto; Eduardo B Coelho
Journal:  Br J Clin Pharmacol       Date:  2014-08       Impact factor: 4.335

Review 8.  Clinical pharmacokinetics and pharmacodynamics of tacrolimus in solid organ transplantation.

Authors:  Christine E Staatz; Susan E Tett
Journal:  Clin Pharmacokinet       Date:  2004       Impact factor: 6.447

9.  Plasma concentrations of mycophenolic acid acyl glucuronide are not associated with diarrhea in renal transplant recipients.

Authors:  T Heller; T van Gelder; K Budde; J W de Fijter; D Kuypers; W Arns; J Schmidt; L Rostaing; S H Powis; K Claesson; I A M Macphee; E Pohanka; J Engelmayer; G Brandhorst; M Oellerich; V W Armstrong
Journal:  Am J Transplant       Date:  2007-05-26       Impact factor: 8.086

10.  The impact of cytochrome P450 3A genetic polymorphisms on tacrolimus pharmacokinetics in ulcerative colitis patients.

Authors:  Maizumi Furuse; Shuhei Hosomi; Yu Nishida; Shigehiro Itani; Yuji Nadatani; Shusei Fukunaga; Koji Otani; Fumio Tanaka; Yasuaki Nagami; Koichi Taira; Noriko Kamata; Toshio Watanabe; Kenji Watanabe; Yasuhiro Fujiwara
Journal:  PLoS One       Date:  2021-04-22       Impact factor: 3.240

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