European Journal of Internal Medicine 23 (2012) 283–286
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Original article
Hematocrit, urea and gender: The Hematocrit, Urea and GEnder formula for prognosing progressive renal failure in diabetic nephropathy Nicolás Roberto Robles a,⁎, Flavio Ferreira b, Rocio Martinez-Gallardo b, Joaquin Alvarez Gregori a, Emilio Sanchez-Casado a, Juan Jose Cubero b, Juan Macias a a b
Cardiovascular Risk Chair, University of Salamanca School of Medicine, Salamanca, Spain Nephrology Department, Hospital Infanta Cristina, Badajoz, Spain
a r t i c l e
i n f o
Article history: Received 26 July 2011 Received in revised form 25 September 2011 Accepted 20 October 2011 Available online 21 November 2011 Keywords: Diabetic nephropathy HUGE score Predictive model
a b s t r a c t Objective: Diabetic nephropathy is a common cause of end stage renal disease. Notwithstanding, wide interindividual variations in the speed of progression of diabetic nephropathy are frequent. We have used the score of the HUGE formula to predict progression of kidney disease in a group of diabetic nephropathy patients. Design and methods: The sample consisted of 84 type 2 diabetic patients. At treatment entry, the mean age was 62.1 ± 12.5 years and 59.5% were male. Blood pressure was measured at office at each visit. Serum creatinine, urea, hematocrit and 24 h proteinuria were analyzed every 6 months. HUGE score was calculated from gender, urea and hematocrit. Results: Mean HUGE score was 0.99 ± 3.88. Using as cut off point 1.5, those patients who had a score equal or higher (n = 31) showed a bigger increase in serum creatinine after one year (41.8 ± 62.1%) than those subjects with score b 1.5 (n = 53) (18.7 ± 38.6%, p = 0.041). 5 patients with low HUGE score reached end stage renal failure (9.4%) and 10 patients in the high HUGE score group (32.3, p = 0.008). When logistic regression analysis was performed only a HUGE score higher than 1.5 (p = 0.003) and proteinuria higher than 2 g/day (p = 0.041) were independently associated to CRF progression (creatinine increment > 25%). Conclusions: In diabetic nephropathy patients the HUGE equation may be useful to detect the subjects prone to progressive renal failure. Wider samples will be needed to confirm this finding and, most important, its applicability to other kinds of nephropathy. © 2011 European Federation of Internal Medicine. Published by Elsevier B.V. All rights reserved.
1. Introduction Diabetic nephropathy occurs in 20–40% of patients with diabetes and is the single leading cause of end-stage renal disease (ESRD) in most developed countries. Persistent albuminuria in the range of 30–299 mg/24 h (microalbuminuria) has been shown to be the earliest stage of diabetic nephropathy in type 1 diabetes and a marker for development of nephropathy in type 2 diabetes [1]. Patients with microalbuminuria who progress to macroalbuminuria (≥300 mg/ 24 h) are likely to progress to ESRD over a period of years [2,3]. Notwithstanding, wide inter-individual variations in the speed of progression of diabetic nephropathy are frequent. In fact, estimated glomerular filtration rate (eGFR) is not sufficient for clinical decision making [4,5]. The HUGE formula with data obtained from a general population, offers a straightforward readily available and inexpensive method based on hematocrit plasma serum urea levels and gender [6]. It is ⁎ Corresponding author at: Servicio de Nefrologia, Hospital Infanta Cristina, Carretera de Portugal s/n. 06070, Badajoz, Spain. Tel./fax: + 34 924218117. E-mail address:
[email protected] (N.R. Robles).
more accurate than MDRD formulae to differentiate chronic renal failure (CRF) from eGFR b 60 ml/min/1.73 m 2. It has tested in databases with a total of 125.373 subjects. It is particularly useful in persons aged over 70 years of age and overcoming the disadvantages derived from the use of serum creatinine to calculate eGFR, since it reduces the diagnosis of CKD by a 10.46% in elderly people. In Spain, where it has been estimated a CRF prevalence using MDRD equation about 6.8% in general population (2.992.000 subjects) [7], the HUGE formula would cut this figure by more than 300.000 persons. We have used the score of the HUGE formula, which can be easily implemented in clinical practice, to predict progression of chronic kidney disease (CKD) in a group of diabetic nephropathy patients. 2. Material and methods The sample consisted of 84 type 2 diabetic patients who were treated with ACE inhibitors or ARB due to diabetic nephropathy between January of 2004 and December of 2008. Data were evaluated retrospectively. At treatment entry, the mean age was 62.1 ± 12.5 years and 59.5% were male. Criteria for diagnosis of diabetic nephropathy were the presence of overt proteinuria (albuminuria > 300 mg/day)
0953-6205/$ – see front matter © 2011 European Federation of Internal Medicine. Published by Elsevier B.V. All rights reserved. doi:10.1016/j.ejim.2011.10.014
N.R. Robles et al. / European Journal of Internal Medicine 23 (2012) 283–286
associated to diabetic retinopathy lesions in fundoscopy. Whenever diabetic retinopathy was not present at renal biopsy was performed to confirm de diagnosis of diabetic nephropathy (3 patients needed this invasive method). Patients with isolated microalbuminuria (albuminuria b 300 mg/24 h) were not recruited. Follow up time was 35.8 ± 12.5 months (median). Blood pressure was measured at office at each visit. Three measurements, taken at 3-min intervals in the sitting position, were averaged and used as the clinical BP reference value. To evaluate the degree of blood pressure control all measurements during the follow up were averaged. Heart rate was measured from the radial pulse during 30 s. Serum creatinine, urea, hematocrit and 24 h proteinuria were analyzed every 6 months. eGFR was calculated using the MDRD-4 formula. The mathematical expression of HUGE formulation is: L ¼ 2:505458–ð0:264418 HematocritÞ þ ð0:118100 UreaÞ ½þ1:383960ifmale:
Survival Functions 1,0
HUGE score < 1.5
0,8
Cum Survival
284
HUGE score > 1.5
0,6
0,4
0,2
0,0 0,00
10,00
20,00
30,00
40,00
50,00
FOLLOW UP (months) If L is lower than “0”, it means that the individual does not have CRF. If L is higher than “0”, it means that the individual have CRF. Absolute score of HUGE formulation was used as predictor of progressive CRF. For comparison we have used 1.5 as cutoff point since it was the third quartile of HUGE score value for patients whose renal function decreased more than 25%. Results are expressed as mean ± 1 standard deviation. Continuous values have been compared through paired Student “t” test. The chi square test was used for discrete data. All statistical tests were twosided. Binary logistic regression analysis was used to find the clinical and biochemical characteristics associated to CRF progression (defined as an increase ≥25% of serum creatinine). p values lower than 0.05 were considered as significant. Analysis was developed with the statistical package PASW 17.0. 3. Results Mean HUGE score was 0.99 ± 3.88. Using as cutoff point 1.5, those patients who had a score equal or higher (n = 31) showed a bigger increase in serum creatinine after one year (41.8 ± 62.1%) than those subjects with score b 1.5 (n = 53) (18.7 ± 38.6%, p = 0.041, Student t test). The changes in serum creatinine have been plotted in Fig. 1. In the same way, eGFR was reduced by an 11.2 ± 23.4% in the group with score b 1.5 vs. 24.4 ± 21.5% in the other group (p = 0.012, Student t test). Renal survival before starting renal replacement therapy was calculated through the Kaplan–Meier method (Fig. 2) comparing patients with HUGE score b 1.5 with those with score ≥ 1.5. Only 5 patients with lower HUGE score reached ESRD (9.4%, 95%IC
3 2,5
Fig. 2. Kaplan–Meier analysis of renal survival before ESRD. Differences are significant (p = 0.008, Square chi test).
4.1–20.3), comparatively 10 patients in the high HUGE score group reached the same CKD stage (32.3%, 95%IC 18.6–49.9, p = 0.008, chi square test). Conversely, when patients were compared by a serum creatinine increase higher than 25% at one year, the HUGE score was lower in those with a lesser progression (n= 58, mean score 0.25± 3.65) than those which serum creatinine increased more than 25% (n= 26; mean score 2.70 ± 3.94, p = 0.007, Student t test). The evolution of changes in HUGE score has been plotted in Fig. 2. Contrariwise, eGFR was not different between both groups (serum creatinine increment≥ 25%, 52.3± 24.7 ml/min; serum creatinine incrementb 25%, 60.2 ± 25.2 ml/ min, p = 0.182, Student t test). Logistic regression analysis results are showed in Table 1. Systolic blood pressure ≥ 140 mm Hg, eGFR b 60 ml/min, proteinuria ≥ 2 g/day, gender, age ≥ 65 years and HUGE score were introduced as causative variables. Only a HUGE score higher than 1.5 (p= 0.003) and proteinuria higher than 2 g/day (p= 0.041) were independently associated to CRF progression (creatinine increment> 25%).
4. Discussion HUGE formula was developed and validated to improve the diagnosis of CRF in general population. This model use clinical and laboratory data that are obtained routinely in patients with CKD (hematocrit, serum urea and gender) and it could be easily integrated into a laboratory information system or a clinic health record. Our data suggest that this formulation could also be used for prognostic purposes in diabetic nephropathy patients.
2 1,5
Table 1 Logistic regression analysis.
1 0,5 0
0
12
24 Months HUGE < 1.5
36
48
HUGE > 1.5
Fig. 1. Changes in serum creatinine comparing subjects with HUGE score b 1.5 vs. those with score ≥ 1.5. Differences are significant (p = 0.041, Student t test).
HUGE score Age ≥ 65 years Gender SBP ≥ 140 mm Hg eGFR b 60 Proteinuria ≥ 2 g/24 h CI: Confidence interval.
B
CI low limit
CI upper limit
p
2.718 − 0.848 0.269 − 1.133 1.023 1.431
1.809 − 1.563 − 0.479 − 1.818 0.122 0.732
3.627 − 0.133 1.017 − 0.448 1.924 2.130
0.003 0.236 0.719 0.098 0.256 0.041
N.R. Robles et al. / European Journal of Internal Medicine 23 (2012) 283–286
Although diabetic nephropathy has a bad prognosis regarding renal survival [8], there can be considerable individual heterogeneity in the risk for progression to kidney failure. Risk prediction for CRF progression has gained increasing attention over the last years, with emerging literature suggesting improved patient outcomes with individualized risk prediction and with advances in information technology that allow for easy implementation of risk prediction models as components of electronic clinical records [9–11]. The availability of these risk prediction tools and their inclusion in clinical practice guidelines may get better adherence to treatment guidelines and have encouraged individual decision making [12]. Despite these benefits, the lack of easily applicable and externally validated models has delayed the widespread integration of risk prediction in all fields of medicine [13,14]. In this regards, HUGE formulation might offer a simple approach to identify the diabetic patients with worse prognosis in order to implement straighter treatment objectives and a closer follow up without any increased cost since this method does not need to add unusual clinical or biochemical measurements. Recently Tangri et al. [15] have developed and validated two predictive models for progression of CKD to kidney failure. The most accurate model included age, sex, estimated GFR, albuminuria, serum calcium, serum phosphate, serum bicarbonate, and serum albumin. This model was more accurate than a simple model that included age, sex, estimated GFR, and albuminuria. These models have been validated in a wide population and it must be recognized that our sample is rather smaller. Nevertheless, high statistical signification in a small sample reinforces the strong of results. Furthermore, HUGE equation is much simpler to calculate than the first Tangri's formulation, which needs more analytical parameters and, some of them, cumbersome to be measured (i.e. serum bicarbonate). The second Tangri's formula is easier to implement but still needs albuminuria measurement, an expensive issue. In this regard, HUGE formulation may have as advantage a reduced cost of implementation. It is well known that albuminuria provides additional prognostic information for progression to kidney failure [16]. Some studies have examined the use of estimated GFR and albuminuria in prediction models, with additional clinical and laboratory data, but these models are specific to a particular and different type of kidney disease [17–19]. Proteinuria was an independent baseline risk predictor for ESRD in this study. This predictive power has been found in other studies of patients with diabetic nephropathy [20–22]. In RENAAL, there was a nearly linear relationship between progression to ESRD and albuminuria at baseline and on treatment. Nevertheless, we found that the progression of CKD has a stronger statistical association with the HUGE score than with the severity of proteinuria. The anemia of chronic renal failure is not normally observed until the glomerular filtration rate drops to b40 ml/min and, as the renal function deteriorates, the anemia becomes more marked. [23,24]. The mechanisms that may contribute to this anemia include shortened red cell survival, decreased erythropoietin production, blood loss because of defective platelet function, and impaired erythropoiesis secondary to inhibitors or toxic metabolites [25]. The major explanation, however, is a relative erythropoietin deficiency resulting from an inability of the renal fibroblasts to produce erythropoietin to maintain the red cell mass in response to tissue hypoxia. Anemia has been recognized as a frequent complication of diabetic nephropathy, appearing earlier than in nondiabetic renal disease and amplifying the risks of cardiovascular and microvascular complications [26]. It is likely that the introduction of hemoglobin level in the equation have help to improve its prognostic efficacy, but it could made it less effective in non diabetic patients. This issue remains to be established in further studies. The HUGE equation may be useful to detect the subjects more prone to progressive renal failure, at least in diabetic nephropathy patients. Wider samples will be needed to confirm this finding and, most important, its applicability to other kinds of nephropathy.
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Learning points • Diabetic nephropathy is the most common cause of end stage renal failure all over the world. • HUGE formulation was developed and validated to diagnosis renal failure without using serum creatinine and/or glomerular filtration rate. • HUGE score seems to be useful to detect those diabetic nephropathy patients prone to progressive renal failure.
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