Literature DB >> 30922268

Living-donor transplantation leads to a major improvement in physical functioning: an observational study on the impact on potential donors and their recipients.

Natascha J H Broers1,2, Tsz Yeung Fung3, Jeroen P Kooman3,4, Maarten H L Christiaans3,4.   

Abstract

BACKGROUND: Prospective studies combining physical functioning (PF), physical activity (PA), and body composition (BC) after living donor transplantation/donation are scarce. We aimed to study differences in these parameters between kidney transplant recipients and their living donors by examining changes in these parameters in the first post-operative year in both groups.
METHODS: Twenty-two kidney transplant recipients and 22 healthy kidney donors were included in this prospective longitudinal study with a follow-up until twelve months. PF was assessed by handgrip strength (HGS), and by the physical domains of health-related quality of life (HRQOL) using the Short Form-36 questionnaire [PF (SF-36 PF) and physical component summary (PCS) score]. BC was measured by the Body Composition Monitor©, and PA was measured by the SenseWear™ pro3.
RESULTS: At baseline, recipients had significantly lower HGS (after adjustment for sex and body weight), SF-36 PF, PCS, and PA, as compared with their donors. In recipients HGS significantly increased in the first year after transplantation, but PA did not change in the first six months after transplantation. Furthermore, no significant increase in lean tissue mass was observed. For healthy donors no significant changes in these parameters were observed, with exception of SF-36 PF, which declined in the first three months after donation, but equaled baseline values after twelve months.
CONCLUSION: Recipients showed impressive improvements in PF and the physical domains of HRQOL in the first year after transplantation, reaching levels of healthy kidney donors already three to six months after transplantation. On the contrary, living kidney donation did not show any deterioration of the investigated parameters, supporting little impact for well-screened donors, while there is high benefit for transplant recipients.

Entities:  

Keywords:  Body composition; Kidney transplantation; Living donor; Physical activity; Physical functioning

Year:  2019        PMID: 30922268      PMCID: PMC6440145          DOI: 10.1186/s12882-019-1299-9

Source DB:  PubMed          Journal:  BMC Nephrol        ISSN: 1471-2369            Impact factor:   2.388


Background

Kidney transplantation (KTx) is the treatment of choice in end-stage renal disease (ESRD) patients, due to increased patient survival [1, 2], and better health-related quality of life (HRQOL) [3, 4]. Nevertheless, recurrent events such as graft failure and cardiovascular events affect long-term survival [2]. Decreased physical functioning (PF) and physical activity (PA), and concomitant weight gain in the first post-operative year after KTx are additional risk factors [5], and are associated with decreased patient survival [6]. Numerous studies showed that recipients gaining an average of almost 10 % body weight in the first post-operative year after KTx [7, 8], and that weight gain observed in the first months after KTx is predominantly due to an increase in fat mass [9]. Furthermore, weight gain is influenced by multiple factors such as age, food intake, basal metabolic rate, and PA [6, 10]. Studies combining different parameters related to the physical health domains are scarce. In addition, studies addressing PF, PA, body composition (BC) and HRQOL post-KTx [6, 11, 12] only focused on the early post-transplant outcomes (four months post-KTx) [13], used subjective measures for PA pre- and post-KTx [12], did not include healthy controls as comparators [14], or did not have parameters available before KTx [15]. Living donor transplantation provides the unique opportunity of studying the effects of a (near) reversal of the uremic state. Moreover, literature describing outcomes reflecting domains of PF and PA in living kidney donors are scarce as well [16], despite the fact that also in healthy donors these domains play an important role in the performance of activities of daily living and concomitant experienced HRQOL. Therefore, we measured parameters reflecting PF, PA and BC in this study, and compared these parameters with their healthy donors. Furthermore, the parameters were assessed longitudinally during the first year after KTx and donation to consider the impact of the procedure in living donors and transplant recipients.

Methods

This study was conducted between October 2013 and January 2018, and consisted of a cross-sectional part and a prospective longitudinal part. For this study 22 recipients and 22 donors were included, see Fig. 1 for the recruitment and flow of participants. Recipients and donors were recruited from the pre-transplantation clinic at the Maastricht University Medical Center+ in The Netherlands.
Fig. 1

Recruitment and flow of participants; KTx = Kidney transplantation

Recruitment and flow of participants; KTx = Kidney transplantation Inclusion criteria for recipients were: age ≥ 18 years, ability to provide informed consent, receiving a living donor kidney transplant. Not having an implantable cardioverter defibrillator (ICD) or pacemaker for bioimpedance measurements due to interference with the body composition monitor (BCM). Patients with an ICD or pacemaker had no restrictions for other measurements in the study. Inclusion criteria for donors were: age ≥ 18 years, ability to provide informed consent, and suitable for living kidney donation, i.e. no uncontrolled or severe hypertension, and/or diabetes mellitus. Recipients and donors were requested to be in a fasting state for the measurements, with exception of the PA measurements. For each patient written informed consent was obtained prior to study participation. The Ethical Committee azM/UM (NL43381.068.13) and the Hospital Board of the Maastricht University Medical Center+ approved the study.

Study design

This study included a cross-sectional and a longitudinal part. The methodology as described below has been described previously by our group [17, 18]. See Fig. 2 for an outline of the visits and measurements per visit. Visits were combined with regular pre- and post-operative visits at the out-patient transplant clinic or during period of hospitalization of the patient.
Fig. 2

Overview of visits and measurements; HGS = handgrip strength, SF-36 PF = Short Form-36 physical functioning, SF-36 PCS = Short Form-36 physical component summary, PA = physical activity, BC = body composition, LAB = laboratory parameters, KTx = Kidney transplantation

Overview of visits and measurements; HGS = handgrip strength, SF-36 PF = Short Form-36 physical functioning, SF-36 PCS = Short Form-36 physical component summary, PA = physical activity, BC = body composition, LAB = laboratory parameters, KTx = Kidney transplantation

Objectively measured physical functioning by muscle strength

Muscle strength, as an objective measure of PF, was determined with a hand held dynamometer (Jamar®, Sammons Preston Inc., Bolingbrook, IL). Mean handgrip strength (HGS) was determined in the dominant hand by measuring HGS in twofold. Measurements were taken in stand-up position with the arm flexed in a position of 90 degrees. For recipients who had already started hemodialysis (HD) therapy measurements were taken contralateral of the shunt arm.

Self-reported physical functioning and physical activity related quality of life

Participants filled out Short Form-36 (SF-36) version 1 questionnaires to measure self-reported physical functioning (SF-36 PF) and the SF-36 physical component summary (PCS) score to evaluate the physical domains of HRQOL. Worldwide, the SF-36 is the most widely used questionnaire to assess HRQOL in the field of nephrology [19]. This multi-purpose short-form health survey, which includes 36 items, provides a measure of physical and mental health with a range from 0 (“worst possible health”) to 100 (“best possible health”). Questionnaires were scored using the algorithm of Ware et al. [20, 21]. T-score transformation was used to normalize scales (mean, 50 ± 10 [SD]) in order to make them comparable to the general population and other patients with specific diseases [21, 22].

Physical activity measurements

To measure different parameters of PA [such as, total energy expenditure (TEE), activity related energy expenditure (AEE), number of steps] participants were asked to wear a SenseWear™ pro 3 armband (Bodymedia®, Pittsburg, PA) for two consecutive days. This is considered to be sufficient to measure daily physical activity [23, 24].The mean of the total on-body time was calculated for the analyses (which are showed as TEE, AEE and number of steps per 24 h). In addition, both TEE and AEE were expressed per kilogram body weight. Furthermore, we made no distinction between data collected on weekdays or weekends, both were included in the analyses for all participants.

Body composition measurements

We determined BC by the use of bioimpedance spectroscopy with the Body Composition Monitor (BCM®, Fresenius Medical Care, Bad Homburg, Germany). The BCM uses a three-compartment model [adipose tissue mass (ATM), lean tissue mass (LTM), and a separate fluid overload (FO) compartment] as described by the model of Chamney et al. [25]. Measurements were performed as described by the manufacturer [26]. Patients were measured in supine position. For recipients who had already started dialysis therapy before KTx measurements were taken contralateral to the shunt arm in HD patients, or with a full abdomen in peritoneal dialysis (PD) patients for practical reasons. Moreover, it is shown that sequestered fluid in the trunk only has a little impact on whole-body bioimpedance measurements [27-29]. Furthermore, body weight was adjusted for PD fluid in the abdomen, as prescribed by the manufacturer [26]. Not all patients were in fasting state as requested for practical reasons e.g. diabetics. In addition, it has been shown that differences in pre- and postprandial BC estimates are small, and unlikely to be of clinical significance [30].

Laboratory parameters

Laboratory parameters were determined during routine patient laboratory measurements. Estimated glomerular filtration rate (eGFR) was calculated by the CKD-EPI equation based on serum creatinine [31].

Other clinical characteristics

Cause of renal disease, diabetes mellitus, and history of cardiovascular disease were based on the diagnosis as reported in the patient’s electronic health record. Office blood pressure was measured with an electronic sphygmomanometer (Omron M4-I, Omron, Japan).

Statistical analysis

Data are expressed as mean ± SD or median [25th -75th percentile], unless indicated otherwise. For the cross-sectional analyses, differences in the categorical variables were assessed by Chi-square tests. Differences in the continuous variables PCS scores, SF36-PF, HGS, PA, and BC between groups were examined with Mann-Whitney U tests as parameters were not normally distributed. Each cross-sectional analysis between recipients and healthy donors was based on all available data per parameter. In an additional multivariable regression analysis, we adjusted the between-group differences in HGS for differences in the distribution of sex and body weight, since these parameters were unequally distributed between groups. For the longitudinal analyses, comparison of changes over time within the recipient and the donor group were evaluated using Friedman tests, as most variables were not normally distributed. Each longitudinal analysis was based on complete cases per parameter (i.e. the recipient/donor was solely included into the analysis of a parameter if data was available for each time point). All statistical analyses were performed with IBM SPSS Statistics for Windows, version 24 (IBM Corp. Armonk, NY, USA). P-values ≤0.05 were considered to be statistically significant.

Results

Patient characteristics

Baseline patient characteristics are summarized in Table 1. In addition, one patient was excluded from the study due to intercurrent disease before KTx (Fig. 1).
Table 1

Patient demographics

Pre-surgery RecipientsDonors
Number of Patients2122
Male/Female (%)47.6 / 52.436.4 / 63.6
Age (years)54.1 ± 12.555.5 ± 10.6
Height (cm)173.1 ± 10.4171.6 ± 7.6
Weight (kg)73.8 ± 17.381.3 ± 15.7
BMI (kg/m2)24.5 ± 4.527.5 ± 4.6
FO (L)0.5 ± 1.8−0.2 ± 1.3 (n = 21c)
Cause of end-stage renal disease
Diabetic nephropathy (%)9.5 (n = 2)-
Polycystic kidney disease (%)23.8 (n = 5)
Nephrosclerosis (%)4.8 (n = 1)
Hypertensive nephropathy (%)19.0 (n = 4)
IgA nephropathy (%)14.3 (n = 3)
Unknown cause (%)4.8 (n = 1)
Other (%)23.8 (n = 5)
Diabetes Mellitus (%)14.3 (n = 3)0
Cardiovascular Disease (%)a14.3 (n = 3)13.6 (n = 3)b
eGFR (ml/min/1.73m2)8.7 ± 3.685.7 ± 11.8
Albumin (g/L)36.7 ± 4.740.4 ± 4.0 (n = 20c)
C-reactive protein (mg/L)5.0 ± 5.72.7 ± 3.2 (n = 20c)
Hemoglobin (mmol/L)7.5 ± 0.98.9 ± 0.9 (n = 16c)
Total CO2 (mmol/L)27.1 ± 2.9
Previous transplant (%)14.3 (n = 3)
Pre-emptive transplant (%)42.9 (n = 9)
Pre-KTx HD/PD6/6
SBP (mmHg)149.6 ± 24.4140.3 ± 19.9
DBP (mmHg)86.3 ± 12.486.8 ± 12.3
Post-surgery
 eGFR (ml/min/1.73m2)(n = 17c)
 1 month post-surgery45.1 ± 11.5
 3 months post-surgery48.1 ± 10.458.8 ± 11.1 (n = 18c)
 6 months post-surgery52.2 ± 9.6
 12 months post-surgery53.9 ± 8.754.5 ± 8.8 (n = 15c)
 Hemoglobin (mmol/L)(n = 16c)n/a
 1 month post-surgery6.8 ± 1.3
 3 months post-surgery7.5 ± 1.2
 6 months post-surgery8.2 ± 1.1
 12 months post-surgery7.9 ± 2.2
Blood pressure (mmHg)SBPDBPSBPDBP
(n = 17c)(n = 17c)(n = 18c)(n = 18c)
1 month post-surgery148.6 ± 25.986.9 ± 11.8
3 months post-surgery134.2 ± 21.184.5 ± 15.4132.7 ± 21.587.1 ± 11.1
6 months post-surgery139.8 ± 16.786.2 ± 14.0
12 months post-surgery138.5 ± 16.482.6 ± 11.2135.6 ± 27.186.7 ± 12.8

Data are presented as mean ± SD

BMI body mass index, FO fluid overload, SBP systolic blood pressure, DBP diastolic blood pressure, eGFR estimated glomerular filtration rate

aHypertension is excluded, bCVD diagnoses in kidney transplant donors included infrarenal aortic abdominal aneurysm (n = 1), and transient ischemic attack (n = 2), c Data available in number of patients (n=)

Patient demographics Data are presented as mean ± SD BMI body mass index, FO fluid overload, SBP systolic blood pressure, DBP diastolic blood pressure, eGFR estimated glomerular filtration rate aHypertension is excluded, bCVD diagnoses in kidney transplant donors included infrarenal aortic abdominal aneurysm (n = 1), and transient ischemic attack (n = 2), c Data available in number of patients (n=)

Immunosuppressive protocol

The main features of our center immunosuppressive protocol were: all patients received from time of transplant tacrolimus (TAC) and mycophenolate mofetil (MMF). In addition, all recipients received corticosteroids for ten days. Prednisolone was only continued or re-introduced in recipients with a high risk for rejection or in patients with an IgA Nephropathy as primary disease. After three months MMF was stopped in patients with low or intermediate immunological risk and without rejection in the first three months, and a normal protocol biopsy at month three. In addition, three patients included in this study were simultaneously enrolled in a different study (TRANSFORM) (Identifier Clinicaltrials.gov: NCT01950819). Two of these three patients were randomized to receive TAC, everolimus and prednisolone as triple therapy from time of transplant. One of these two patients withdrew consent for our study in the first week after KTx due to personal reasons. The other patient withdrew consent for the TRANSFORM study due to personal reasons; this patient was converted to TAC based dual-therapy after the six month follow up visit of our study. The third patient was randomized to receive TAC, MMF and prednisolone as triple therapy from time of transplant. Twelve months post-KTx seven patients were on TAC-based monotherapy, six patients on TAC based dual-therapy and five patients on TAC-based triple therapy.

Rejections

During the twelve month follow-up period of this study four patients were treated for rejection. All received methylprednisolone. In addition, two patients received intravenous immunoglobulin because of a humoral rejection component.

Kidney function

At baseline eGFR was 8.7 ± 3.6 ml/min/1.73m2 in the recipient group, and 85.7 ± 11.8 ml/min/1.73m2 in the donor group. At the twelve month follow-up visit eGFR increased to 53.9 ± 8.7 ml/min/1.73m2 in the recipient group. In the donor group eGFR declined to 54.5 ± 8.8 ml/min/1.73m2 twelve months post-donation, comparable to eGFR values of the recipient group at twelve months post-KTx (Table 1).

Muscle strength

In the cross-sectional analysis no statistically significant difference was found for HGS (Table 2), whereas after adjustment for differences in sex and body weight HGS was significantly lower in the recipient group before KTx, as compared with that of the healthy donor group (− 4.7 kg, 95% CI -9.3 to − 0.1; p = 0.047).
Table 2

Cross-sectional analyses of parameters of physical functioning and physical activity

Cross-sectional analyses Recipients vs. Donors (baseline)
Handgrip strength (kg)
 Recipient (n = 20)24.3 [20.0–39.0]
 Donor (n = 22)29.5 [23.0–37.8]
 p-value0.378a
SF-36 PCS score (%)
 Recipient (n = 21)46.3 [38.1–51.2]
 Donor (n = 22)56.3 [54.3–57.8]
 p-value< 0.001
SF-36 Physical functioning (%)
 Recipient (n = 21)46.1 [41.8–52.5]
 Donor (n = 22)56.8 [52.0–56.8]
 p-value< 0.001
Number of Steps/day b
 Recipient (n = 15)6003.0 [3608.0–10,429.0]
 Donor (n = 14)12,711.0 [9460.5–15,194.0]
 p-value0.004
TEE/kg/day −1 b
 Recipient (n = 15)29.4 [26.5–34.2]
 Donor (n = 14)32.7 [31.0–37.7]
 p-value0.063
AEE/kg/day −1b
 Recipient (n = 15)2.3 [1.0–8.7]
 Donor (n = 14)7.6 [5.7–9.9]
 p-value0.016

Data are presented as median [25th and 75th percentile]

SF short form, TEE total energy expenditure, AEE activity related energy expenditure

aAfter adjustment for differences in sex and bodyweight p = 0.047, c Data available in 15 recipients/14 donors

Cross-sectional analyses of parameters of physical functioning and physical activity Data are presented as median [25th and 75th percentile] SF short form, TEE total energy expenditure, AEE activity related energy expenditure aAfter adjustment for differences in sex and bodyweight p = 0.047, c Data available in 15 recipients/14 donors In the longitudinal analysis HGS significantly changed in the first year after KTx (p < 0.001), with values comparable to their donors by three months post-KTx. (Table 3, Fig. 3). No significant changes in HGS were found over time in the donor group, where twelve month HGS values were equal to pre-donation values.
Table 3

Longitudinal analyses of parameters of physical functioning and physical activity

ParameterRecipientsDonors
Handgrip strength (kg)
 Baseline24.5 [20.5–40.0]29.5 [23.0–41.8]
 1 month post-surgery26.5 [19.0–41.3]
 3 months post-surgery28.5 [22.8–41.5]28.5 [22.4–46.9]
 6 months post-surgery30.0 [24.3–41.0]
 12 months post-surgery33.0 [25.0–41.0]29.0 [25.0–39.4]
 p-value< 0.001 (n = 17)0.986 (n = 18)
SF-36 PCS score (%)
 Baseline45.1 [37.7–51.2]56.7 [54.9–57.8]
 1 month post-surgery33.7 [30.5–43.1]
 3 months post-surgery44.8 [34.3–52.1]55.3 [48.8–57.9]
 6 months post-surgery52.2 [47.9–54.6]
 12 months post-surgery52.1 [48.5–56.3]55.2 [50.4–59.0]
 p-value< 0.001 (n = 17)0.234 (n = 18)
SF-36 Physical Functioning (%)
 Baseline46.1 [41.8–52.5]56.8 [54.1–56.8]
 1 month post-surgery41.8 [35.3–50.3]-
 3 months post-surgery50.3 [41.8–54.6]54.6 [50.9–56.8]
 6 months post-surgery54.6 [50.3–54.6]
 12 months post-surgery54.6 [52.5–54.6]54.6 [52.5–56.8]
 p-value< 0.001 (n = 17)0.049 (n = 18)
Number of Steps/day a
 Baseline6599.0 [4459.5–11,320.0]13,287.0 [9917.0–14,731.0]
 3 months post-surgery11,513.0 [9839.0–14,429.0]
 6 months post-surgery7042.0 [5198.5–10,078.5]
 12 months post-surgery12,773.0 [9243.0–18,508.0]
 p-value0.917 (n = 13)0.529 (n = 11)
TEE/kg/day −1 a
 Baseline31.2 [26.8–35.3]32.8 [31.1–37.7]
 3 months post-surgery32.8 [28.9–39.9]
 6 months post-surgery31.6 [29.5–36.1]
 12 months post-surgery33.2 [29.1–38.8]
 p-value0.552 (n = 13)0.850 (n = 11)
AEE/kg/day −1a
 Baseline4.7 [0.9–9.3]9.0 [5.9–10.6]
 3 months post-surgery5.7 [4.8–15.0]
 6 months post-surgery3.4 [2.6–6.9]
 12 months post-surgery5.4 [4.8–14.5]
 p-value0.972 (n = 13)0.486 (n = 11)

Data are presented as median [25th and 75th percentile]

TEE total energy expenditure, AEE activity related energy expenditure, SF short form

aData available in 13 recipients/11 donors

Fig. 3

Handgrip strength. Data are presented as median

Longitudinal analyses of parameters of physical functioning and physical activity Data are presented as median [25th and 75th percentile] TEE total energy expenditure, AEE activity related energy expenditure, SF short form aData available in 13 recipients/11 donors Handgrip strength. Data are presented as median In the cross-sectional analyses SF-36 PF and the PCS score, both measured by the SF-36, were significantly lower in the recipient group as compared with the healthy donor group (p < 0.001) (Table 2). In the recipient group SF-36 PF and the PCS score did significantly increase in the first year after KTx (p < 0.001), and reached values approaching those of healthy donors six months after KTx (Table 3, Fig. 4). No significant changes over time were observed in the donor group for PCS scores (Table 3, Fig. 4). SF-36 PF statistically significantly declined in the first year after donation (median ∆SF-36 PF: 0.0 [− 2.1–0.0], p = 0.049). Although values were borderline significant, no clinically significant decline was observed in SF-36 PF (Table 3, Fig. 4).
Fig. 4

Physical domains of the Short Form-36 scores; SF-36 PCS = Short Form-36 physical component summary, SF-36 PF = Short Form-36 physical functioning. Data are presented as median

Physical domains of the Short Form-36 scores; SF-36 PCS = Short Form-36 physical component summary, SF-36 PF = Short Form-36 physical functioning. Data are presented as median

Physical activity

In the cross-sectional analysis, the average monitoring period with the sensewear armband was 1.92 ± 0.43 days with a mean on-body time of 97.7% in the recipient group, and 1.86 ± 0.92 days with a mean on-body time of 97.7% in the donor group. In the longitudinal analysis of the recipient group the average monitoring period with the sensewear armband was 1.92 ± 0.25 days with a mean on-body time of 97.3% prior to KTx, and 1.78 ± 0.51 days with a mean on-body time of 98.7% six months after KTx. In the donor group the average monitoring period with the sensewear armband was 1.91 ± 1.02 days with a mean on-body time of 98.1% prior to donation, 1.84 ± 0.54 days with a mean on-body time of 94.2% three months after donation, and 2.07 ± 0.46 days with a mean on-body time of 92.8% twelve months after donation. Number of steps were significantly lower in ktx recipients as compared with those in healthy donors (p = 0.003) (Table 2). AEE was also significantly lower as compared with healthy donors (p = 0.016), and TEE showed a clear tendency to significance (p = 0.063) (Table 2). Furthermore, the longitudinal analyses showed that in the first six months after KTx number of steps did not significantly increase over time in the recipient group (Table 3). Likewise, in the donor group no significant changes in PA parameters were found in the first year after donation (Table 3).

Body composition

At baseline, statistically significant differences in BC were found between recipients and healthy donors in ATM, which was significantly lower in the recipient group; (median 31.8 kg [21.0;39.0]) vs. (35.0 kg [26.4;50.6]) (p = 0.044), and FO which was significantly higher in the recipient group; (median 0.9 L [− 0.1;1.5]) vs. (− 0.3 L [− 0.9;0.4]) (p = 0.005), respectively. Body composition; BW = body weight, ATM = adipose tissue mass, LTM = lean tissue mass. Data are presented as median Significant changes over time were found in the recipient group for BC parameters body weight (p = 0.001) (Table 4, Fig. 5), BMI (p = 0.001), and FO (p = 0.032) (Table 4). No changes in BC were found in the healthy donor group in the first year after donation (Table 4, Fig. 5).
Table 4

Longitudinal analyses of body composition parameters

ParameterRecipientsDonors
Body weight (kg)
 Baseline78.0 [59.4–89.0]78.5 [71.4–92.4]
 1 month post-surgery72.5 [58.6–85.8]
 3 months post-surgery72.0 [59.6–87.0]78.0 [70.3–92.8]
 6 months post-surgery73.1 [60.0–89.0]
 12 months post-surgery77.0 [61.0–90.5]75.5 [71.5–95.3]
 p-value0.001 (n = 17)0.554 (n = 18)
BMI (kg/m 2 )
 Baseline24.4 [21.5–28.7]26.4 [23.0–29.6]
 1 month post-surgery24.2 [20.5–26.6]
 3 months post-surgery24.5 [20.6–26.9]26.1 [22.9–28.5]
 6 months post-surgery23.8 [21.5–27.3]
 12 months post-surgery23.8 [21.3–28.6]26.3 [22.6–28.7]
 p-value0.001 (n = 17)0.554 (n = 18)
LTM (kg)
 Baseline41.1 [36.4–59.7]39.4 [35.0–50.9]
 1 month post-surgery40.7 [35.8–47.2]
 3 months post-surgery40.6 [33.8–58.9]39.7 [34.2–47.7]
 6 months post-surgery40.1 [36.0–53.2]
 12 months post-surgery43.6 [34.8–53.5]38.4 [34.3–52.1]
 p-value0.173 (n = 15a)0.200 (n = 18)
ATM (kg)
 Baseline24.0 [20.6–39.5]34.0 [26.6–50.3]
 1 month post-surgery26.1 [17.1–40.8]
 3 months post-surgery28.6 [19.6–36.4]35.4 [27.2–48.0]
 6 months post-surgery29.6 [21.5–38.1]
 12 months post-surgery26.5 [19.6–39.7]36.0 [26.4–44.3]
 p-value0.283 (n = 15a)0.504 (n = 18)
FO (L)
 Baseline0.9 [−0.1–1.2]−0.3 [−1.0–0.5]
 1 month post-surgery1.7 [0.4–2.5]
 3 months post-surgery1.2 [0.2–1.7]−0.3 [− 0.7–0.3]
 6 months post-surgery0.7 [− 0.2–1.7]
 12 months post-surgery0.5 [− 0.1–1.0]−0.6 [− 1.1–0.2]
 p-value0.032 (n = 16a)0.689 (n = 18)

Data are given as median [25th and 75th percentile]

BMI body mass index, LTM lean tissue mass, ATM adipose tissue mass, FO fluid overload

aData available in number of patients (n=)

Fig. 5

Body composition; BW = body weight, ATM = adipose tissue mass, LTM = lean tissue mass. Data are presented as median

Longitudinal analyses of body composition parameters Data are given as median [25th and 75th percentile] BMI body mass index, LTM lean tissue mass, ATM adipose tissue mass, FO fluid overload aData available in number of patients (n=)

Discussion

This study showed impressive improvements in PF, assessed by HGS and the SF-36, during the first year after KTx with a living donor. Values of these parameters already approached those of their healthy controls three to six months after KTx. These improvements were not paralleled by comparable changes in BC and PA. Furthermore, this study showed no significant deterioration of any of the parameters investigated in healthy donors in the first year after living kidney donation. To the best of our knowledge this is the first study that included a cohort of healthy donors as a control group to study differences between kidney transplant patients and their living donors. In addition, this is the first study which examined changes in parameters of PF and PA both objectively (by HGS and accelerometry), and subjectively (by patient reported outcomes: SF-36 questionnaires) in both patient groups in the first twelve months after living donor transplantation. These outcomes give a unique insight into the impact of the procedure in both the transplant recipient, and the living kidney donor. Results at baseline showed that recipients had lower levels of PF (as subjectively assessed by SF-36 questionnaire, and objectively assessed by HGS measurements), PCS scores, and PA as compared with the healthy donor group prior to the KTx/donation. Regarding BC; body weight and LTM were not significantly different at baseline in the recipient group as compared with the healthy donors. ATM was significantly higher in the healthy donor group, and FO was significantly higher in the recipient group prior to the KTx/donation. Longitudinal analyses in the healthy donor group showed a significant reduction of residual renal function twelve months after donation to an eGFR of 54.5 ± 8.8 ml/min/1.73m2. However, the decrease in eGFR was not paralleled by a significant decrease in parameters of PF, PA and BC in the first year after donation, with exception for SF-36 PF, which statistically significantly declined in the first three months. Nevertheless, twelve months post-donation it approached baseline values again. Interestingly, in transplant recipients, an increase in eGFR to 53.9 ± 8.7 ml/min/1.73m2 in the first twelve months after KTx, led to significant improvements in parameters of PF and the physical domains of HRQOL. With values comparable to baseline values of their healthy donors, despite the fact that these improvements were not paralleled by an increase in PA or LTM. The significant improvement in HGS in the recipient group after KTx is in line with a study of Lorenz et al. that showed increased HGS four months after KTx as well [13]. Although LTM decreased after KTx, and did not reach baseline values until twelve months post-KTx, possibly due to catabolic effects of surgery itself or reduced dietary intake in the early post-transplant period, an increase in muscle strength in the early post-KTx period was observed. This suggests that other factors might be responsible for the increase in muscle strength such as reversal of uremic myopathy after KTx due to the reversal of the uremic state. This is supported by findings of Painter et al. who showed an increase in muscle strength in the first year after KTx irrespective of receiving exercise interventions or usual patient care [32]. Furthermore, the steroid-sparing immunosuppressive protocol in our center might contribute to positive effects on PF as well. Earlier studies have already described significant improvements in muscle structure, which could contribute to better muscle function and exercise capacity, in KTx patients with a steroid-free maintenance immunosuppression regimen [33]. As a subjective marker of PF, SF-36 PF and PCS scores were measured. Despite the fact that both scores were significantly lower before KTx as compared with scores of their healthy donors, scores were approaching reference values within six months after KTx [34]. In addition, this increase in PCS and SF-36 PF scores after KTx is in line with other studies [35]. The near normalization of PF after KTx, as assessed by the parameters described earlier, is in contrast to earlier findings including those of our own group, which showed lower levels of PF and performance in KTx patients as compared with healthy controls [36]. A possible explanation could be that we used only relatively simplified measures in the present study such as dynamometrically measured HGS and patient-reported outcomes of PF, as compared to those of others who used peak oxygen uptake (VO2 peak) and dynamometric measures of lower extremity function [36, 37]. However, it could be also due to the fact that in our recipient group a near full normalization of renal function was achieved. Interestingly, although the relation between PA and physical performance scores in uremic patients is well established [11], we did not observe changes in PA that paralleled changes in PF. Admittedly, in our study protocol PA was only assessed at baseline and six months after KTx, albeit at that time point impressive improvements in PF were already observed. Although the literature is still contradictory concerning the improvement of PA after KTx [15, 38], it is well described that daily PA recommendations are not reached by the majority of KTx recipients [12, 39, 40]. In the healthy donor group the PCS score did not change in the first year after donation. For SF-36 PF the minor decline in the first three months after donation is most likely due to post-operative outcomes. Nevertheless, scores still remained higher than scores of the general population [34], and equaled baseline values after twelve months. These findings are in line with recent studies of Janki et al. [41, 42], which support our findings that there are no negative short-term consequences for donors with regard to the physical domains of HRQOL. Furthermore, short-term results showed that HGS, parameters of PA, and BC did not change in the first year after donation, despite an approximately 35% decrease in eGFR. These findings support the safety of living kidney donation as well. Although long-term effects still have to be investigated on these domains, short-term changes in terms of PF and PA support a relatively small impact for the healthy donor in contrast to the major benefits for the recipient. Given the fact that a majority of the living kidney donors are related to the recipient, the psychosocial feeling with regard to the donors’ self-esteem and satisfaction after donation are often very positive showing no evidence of harm as well [43]. Some drawbacks deserve consideration: first, the relatively small study population. Nevertheless, comparable studies did not include the pre-transplant period as baseline measures or did not use objective measures as outcome, as discussed previously. Second, as mentioned previously, the design of our protocol included only the assessment of PA at baseline and six months thereafter. Third, we aimed to provide a multidimensional spectrum, though we were only able to include a selected number of parameters for each domain. Admittedly, some measurements, such as MRI, are far more sensitive to assess changes in LTM as compared to bioimpedance spectroscopy. However, we believe that the broad spectrum of measurements balanced out the increased precision of a single more specific measurement.

Conclusions

In conclusion, PF and the physical domains of HRQOL showed impressive improvements in the first year after KTx, reaching levels comparable with healthy kidney donors already three to six months after living KTx, while living kidney donation did not result in any deterioration of the investigated parameters. The outcomes showed relatively minor impact for well-screened donors. With on the opposite high benefits in a relative short period of time for the transplant recipient in terms of regaining levels of PF and HRQOL, as compared with reference values of their healthy donors and the general population, supporting the possibility of living kidney transplantation.
  40 in total

Review 1.  SF-36 health survey update.

Authors:  J E Ware
Journal:  Spine (Phila Pa 1976)       Date:  2000-12-15       Impact factor: 3.468

2.  A randomized trial of exercise training after renal transplantation.

Authors:  Patricia Lynn Painter; Lisa Hector; Karen Ray; Liliana Lynes; Suzanne Dibble; Steven M Paul; Stephen L Tomlanovich; Nancy L Ascher
Journal:  Transplantation       Date:  2002-07-15       Impact factor: 4.939

3.  Similarities in skeletal muscle strength and exercise capacity between renal transplant and hemodialysis patients.

Authors:  Eugénie C H van den Ham; Jeroen P Kooman; Annemie M W J Schols; Fred H M Nieman; Joan D Does; Frits M E Franssen; Marco A Akkermans; Paul P Janssen; Johannes P van Hooff
Journal:  Am J Transplant       Date:  2005-08       Impact factor: 8.086

4.  Assessment of health-related quality of life in renal transplant recipients and dialysis patients.

Authors:  N Maglakelidze; T Pantsulaia; I Tchokhonelidze; L Managadze; A Chkhotua
Journal:  Transplant Proc       Date:  2011 Jan-Feb       Impact factor: 1.066

5.  Predicting adherence to health care recommendations using health promotion behaviours in kidney transplant recipients within 1-5 years post-transplant.

Authors:  Su-Yueh Lin; Susan J Fetzer; Po-Chang Lee; Ching-Huey Chen
Journal:  J Clin Nurs       Date:  2011-07-13       Impact factor: 3.036

6.  Psychosocial wellbeing after living kidney donation - a longitudinal, prospective study.

Authors:  Hannah Maple; Joseph Chilcot; John Weinman; Nizam Mamode
Journal:  Transpl Int       Date:  2017-06-02       Impact factor: 3.782

7.  Impact of eating and drinking on body composition measurements by bioelectrical impedance.

Authors:  O Androutsos; K Gerasimidis; A Karanikolou; J J Reilly; C A Edwards
Journal:  J Hum Nutr Diet       Date:  2014-08-26       Impact factor: 3.089

8.  Epidemiology of cardiovascular disease after renal transplantation.

Authors:  B L Kasiske
Journal:  Transplantation       Date:  2001-09-27       Impact factor: 4.939

Review 9.  Impact of obesity on renal transplant outcomes.

Authors:  Kirsten A Armstrong; Scott B Campbell; Carmel M Hawley; David W Johnson; Nicole M Isbel
Journal:  Nephrology (Carlton)       Date:  2005-08       Impact factor: 2.506

10.  Health-related quality of life in end-stage renal disease patients: the effects of starting dialysis in the first year after the transition period.

Authors:  Natascha J H Broers; Remy J H Martens; Bernard Canaud; Tom Cornelis; Tom Dejagere; Nanda M P Diederen; Marc M H Hermans; Constantijn J A M Konings; Frank Stifft; Joris J J M Wirtz; Karel M L Leunissen; Frank M van der Sande; Jeroen P Kooman
Journal:  Int Urol Nephrol       Date:  2018-03-26       Impact factor: 2.370

View more
  5 in total

1.  The Effects of Chronic Dialysis on Physical Status, Quality of Life, and Arterial Stiffness: A Longitudinal Study in Prevalent Dialysis Patients.

Authors:  Rens J R Gadaen; Jeroen P Kooman; Tom Cornelis; Frank M van der Sande; Bjorn J Winkens; Natascha J H Broers
Journal:  Nephron       Date:  2020-10-27       Impact factor: 2.847

2.  Identification of CD2, CCL5 and CCR5 as potential therapeutic target genes for renal interstitial fibrosis.

Authors:  Chuanjie Zhang; Xin Hu; Feng Qi; Jun Luo; Xiao Li
Journal:  Ann Transl Med       Date:  2019-09

3.  Physical Function in Kidney Transplantation: Current Knowledge and Future Directions.

Authors:  Dia Yang; Lucy Robinson; Christian Selinski; Thalia Bajakian; Christina Mejia; Meera Nair Harhay
Journal:  Curr Transplant Rep       Date:  2020-05-02

4.  Relations of advanced glycation endproducts and dicarbonyls with endothelial dysfunction and low-grade inflammation in individuals with end-stage renal disease in the transition to renal replacement therapy: A cross-sectional observational study.

Authors:  Remy J H Martens; Natascha J H Broers; Bernard Canaud; Maarten H L Christiaans; Tom Cornelis; Adelheid Gauly; Marc M H Hermans; Constantijn J A M Konings; Frank M van der Sande; Jean L J M Scheijen; Frank Stifft; Joris J J M Wirtz; Jeroen P Kooman; Casper G Schalkwijk
Journal:  PLoS One       Date:  2019-08-13       Impact factor: 3.240

Review 5.  [Rehabilitation after kidney transplantation].

Authors:  Doris Gerbig
Journal:  Nephrologe       Date:  2021-02-08
  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.