Dietary Patterns and Renal Health Outcomes in the General Population: A Review Focusing on Prospective Studies
Abstract
:1. Introduction
2. Materials and Methods
2.1. Eligibility Criteria
2.2. Literature Search, Screening and Data Extraction
3. Results
3.1. Dietary Approaches to Stop Hypertension (DASH) Diet
3.2. Mediterranean Diet
3.3. Vegetarian Diet
3.4. Other Diet Scores
3.5. A Posteriori Diet Patterns
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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First Author (Publication Year), Country | Population, Sample Size (Sex) | Age, Years | Outcome Ascertainment | Diet Assessment Method (No. of Items) | Follow-Up, Years | Outcome (Definition) | Dietary Pattern Identified (Method Used) | Association Measures with Outcomes (OR, RR, HR, sHR, IRR, and 95% CI) or Major Findings | Covariates in Fully Adjusted Model |
---|---|---|---|---|---|---|---|---|---|
Lin et al. (2011) [25], USA | NHS I, 3121 (women) | Median age of study sample: 67 | -Urinary creatinine via modified Jaffe method using urine sample collected in 2000. -Urinary albumin via solid-phase fluorescence immunoassay using urine sample collected in 2000. -Plasma creatinine via modified kinetic Jaffe method from plasma samples collected in 1989 and 2000. -eGFR calculated via the MDRD equation. | FFQ (116). The dietary pattern was calculated from the cumulative average dietary pattern from FFQ on five visits from 1984–1998 for microalbuminuria and three visits from 1984–1990 for eGFR decline. | 11 | 1. eGFR decline (≥30% between 1989 and 2000). 2. Microalbuminuria (UACR ≥ 25 mcg/mg). | (1) DASH-style diet (diet score) (2) Western diet (PCA) (3) Prudent (PCA) | eGFR decline (OR) Prudent Q1: 1.00 (ref.) Q2: 1.43 (1.04, 1.98) Q3: 1.07 (0.76, 1.51) Q4: 0.81 (0.55, 1.19) Western Q1: 1.00 (ref.) Q2: 1.22 (0.87, 1.73) Q3: 1.57 (1.08, 2.28) Q4: 1.48 (0.95, 2.30) DASH-Style Q1: 1.00 (ref.) Q2: 0.86 (0.63, 1.17) Q3: 0.79 (0.57, 1.09) Q4: 0.55 (0.38, 0.80) Microalbuminuria (OR) Prudent Q1: 1.00 (ref.) Q2: 0.89 (0.57, 1.42) Q3: 1.05 (0.66, 1.67) Q4: 0.97 (0.58, 1.61) Western Q1: 1.00 (ref.) Q2: 1.11 (0.68, 1.81) Q3: 1.12 (0.66, 1.92) Q4: 2.17 (1.18, 3.96) DASH-Style Q1: 1.00 (ref.) Q2: 0.80 (0.52, 1.23) Q3: 0.77 (0.49, 1.21) Q4: 0.71 (0.44, 1.14) | Age, BMI, hypertension, physical activity, energy intake, cigarette smoking, diabetes, cardiovascular disease, and ACE-inhibitor/ARB medication use |
Smyth et al. (2016) [26], USA | NIH-AARP, 544,635 (both) | Mean age of study sample: 62.2 (SD: 5.4) | -Vital status ascertained from Social Security Administration Death Master File and NDI. -Self-reported dialysis was noted on the study follow-up questionnaire. | FFQ (124). Dietary pattern calculated from FFQ administered once at baseline from 1995–1996. | 14.3 | 1. Composite death due to renal cause and initiation of dialysis (death where chronic renal disease was primary or contributing cause of death based on ICD coding system, censored 31st December 2011). 2. Self-reported dialysis questionnaire). 3. Death due to renal cause. | 1. AHEI, 2010 (diet score) 2. HEI, 2010 (diet score) 3.MDS (diet score) 4. RFS (diet score) 5. DASH (diet score) | Composite death due to renal cause and initiation of dialysis (sHR) 1. AHEI-2010, HEI-2010, MDS, DASH but not RFS scores were significantly associated Self-reported dialysis (sHR) 1. None of the diet scores were significantly associated Death due to a renal cause (sHR) 1. AHEI-2010, HEI-2010, MDS, DASH but not RFS scores were significantly associated | Age, gender, BMI, smoking, education, ethnicity, physical activity, diabetes, heart disease, and stroke |
Asghari et al. (2016) [27], Iran | TLGS, 1212 (both) | Mean age of study sample: 43.5 (SD: 9.4) | -Serum creatinine measured via Jaffe kinetic reaction with blood sample collected during fifth study visit between 2012–2015. -eGFR calculated via the MDRD equation. | FFQ (168). Dietary pattern calculated using FFQ administered during third study visit from 2006–2008. | 6.1 | 1. Incident CKD (eGFR < 60 mL/min/1.73 m2). | MDS (diet score) | Incident CKD (OR) Q1: 1.0 (ref.) Q2: 0.95 (0.64, 1.40) Q3: 0.85 (0.55, 1.32) Q4: 0.53 (0.31, 0.91) P for trend: 0.030 | Age, BMI, gender, smoking status, physical activity, total calorie intake, diabetes, hypertension, baseline eGFR |
Khatri et al. (2014) [28], USA | NOMAS, 900 (both) | Mean baseline age of study sample: 64 | -Serum creatinine measured via Jaffe reaction with blood sample collected between 2003–2008. -eGFR calculated via the MDRD equation. | FFQ (147). Dietary pattern calculated via FFQ administered at baseline in 1998. | 6.9 | 1. Incident eGFR < 60 mL/min/1.73 m2 (started with eGFR ≥ 60 mL/min/1.73 m2 at baseline and had an eGFR < 60 mL/min/1.73 m2 at follow-up exam). 2. Upper quartile of eGFR decline. 3. Annualized eGFR decline. | MDS (diet score) | Incident eGFR < 60 mL/min/1.73 m2 (OR) Q1: 1.0 (ref.) Q2: 1.61 (0.88, 2.97) Q3: 0.51 (0.26, 1.02) Q4: 0.76 (0.39, 1.46) Upper quartile of eGFR decline (OR) Q1: 1.0 (ref.) Q2: 1.01 (0.62, 1.66) Q3: 0.49 (0.29, 0.82) Q4: 0.67 (0.41, 1.10) Annualized change in eGFR (parameter estimate) Q1: 1.0 (ref.) Q2: −0.37 (−0.86, 0.12) Q3: 0.11 (−0.37, 0.60) Q4: 0.20 (−0.28, 0.67) | Age, gender, BMI race/ethnicity, education, insurance status, physical activity, diabetes, smoking status, hypertension, LDL, HDL, baseline eGFR, and ACE inhibitor/ARB usage |
Leone et al. (2017) [29], Spain | SUN Project, 16,094 (both) | Median baseline age of study sample: 36 (IQR: 28–46) | -Nephrolithiasis self-reported via study follow-up questionnaire (enough participants with at least one follow-up questionnaire by 2013). | FFQ (136). Dietary pattern calculated using FFQ administered at baseline in 1999. | 9.6 | 1. Incident nephrolithiasis (was free of nephrolithiasis at baseline and reported nephrolithiasis diagnosis at study follow-up). | MDS (diet score) | Incident nephrolithiasis (kidney stones) (HR) T1: 1.0 (ref.) T2: 0.93 (0.79, 1.09) T3: 0.64 (0.48, 0.87) P for trend: 0.01 | Gender, BMI, hypertension, diabetes, marital status, education, number of working hours per week, smoking, physical activity, time spent watching television, total energy intake, total water intake, calcium supplementation, vitamin D supplementation, and following a nutritional therapy |
Rebholz et al. (2016) [30], USA | ARIC, 14,882 (both) | Age range of cohort: 45–65 | -Serum creatinine measured via modified Jaffe Kinetic reaction using blood collected at any of the five follow-up exams.-eGFR calculated via the CKD-EPI equation. -Kidney disease related hospitalization or death based on (ICD)-9/10 codes identified via surveillance and linkage to the NDI. -End-stage renal disease (dialysis or transplantation) identified by linkage to the USRDS registry between baseline and follow-up exam. | FFQ (66). Dietary pattern calculated from cumulative average of diet from FFQ administered at baseline between 1987–1989 and third visit from 1993–1995. | 23 | 1. Kidney disease (meeting one of the following: 1. < 60 mL/min/1.73 m2 with 25% eGFR decline at any follow-up study visit relative to baseline. 2. Kidney disease related hospitalization or death. 3. End-stage renal disease (dialysis or transplantation) at follow-up study relative to baseline. | DASH (diet score) | Kidney disease (HR) T1: 1.16 (1.07, 1.27) T2: 1.09 (1.00, 1.18) T3: 1.00 (ref.) P for trend: <0.001 | Age, gender, race-center, education level, smoking status, physical activity, total caloric intake, baseline eGFR, overweight/obese status, diabetes, hypertension, systolic blood pressure, use of angiotensin-converting enzyme inhibitors or angiotensin receptor blockers |
Chang et al. (2013) [31], USA | CARDIA, 2354, (both) | Age range of study sample: 28–40 | -Urine albumin measured via nephelometric procedure with specific anti-albumin antibody using urine samples collected from 2000–2001, 2005–2006 or 2010–2011. -Urine and serum creatinine measured via Jaffe method using urine samples collected from 2000–2001, 2005–2006 or 2010–2011. | Interview-administered diet history. Dietary pattern calculated via diet info. calculated during study baseline year from 1995–1996. | 15 | 1. Incident Microalbuminuria. | DASH (diet score) | Incident Microalbuminuria (OR) Q1 (lowest score): 2.0 (1.1,3.4) Q5: 0.0 (ref.) | Age, gender, baseline obesity, race, family history of kidney disease, education, total energy intake, and baseline (year-10) ACR |
Taylor et al., (2009) [32], USA | NHS I, 94,108 (women) | Age range of cohort: 30–55 | -Kidney stone self-reported via study questionnaire and diagnosis was confirmed through review of medical records. | FFQ (>130). Dietary pattern calculated using FFQ administered at baseline in 1986. FFQ info updated every 4 years. | 18 | 1. Incident kidney stone accompanied by pain or hematuria. Follow-up years calculated from to baseline to the date of a kidney stone or death or to 31 May 2004. | DASH (diet score) | Incident kidney stone accompanied by pain or hematuria (RR) Q1: 1.00 (ref.) Q2: 0.89 (0.77, 1.02) Q3:0.76 (0.65, 0.87) Q4: 0.64 (0.54, 0.74) Q5: 0.58 (0.49, 0.68) P for trend: <0.001 | Age, BMI, total energy intake, use of thiazide diuretics, fluid intake, caffeine, alcohol use, history of hypertension, and history of diabetes |
Taylor et al. (2009) [32], USA | NHS II, 101,837 (women) | Age range of cohort: 25–42 | -Kidney stone self-reported via study questionnaire and diagnosis was confirmed through review of medical records. | FFQ (>130) Dietary pattern calculated using FFQ administered at baseline in 1991. FFQ info updated every 4 years. | 14 | 1. Incident kidney stone accompanied by pain or hematuria. Follow-up years calculated from baseline to the date of a kidney stone or death or to 31 May 2005. | DASH (diet score) | Incident kidney stone accompanied by pain or hematuria (RR) Q1: 1.00 (ref.) Q2: 0.92 (0.81, 1.03) Q3: 0.77 (0.68, 0.88) Q4: 0.75 (0.66, 0.86) Q5: 0.60(0.52, 0.70) P for trend: <0.001 | Age, BMI, total energy intake, use of thiazide diuretics, fluid intake, caffeine, alcohol use, history of hypertension, and history of diabetes |
Taylor et al. (2009) [32], USA | HPFS, 45,821 (men) | Age range of cohort: 40–75 | -Kidney stone self-reported via study questionnaire and diagnosis was confirmed through review of medical records. | FFQ (>130) Dietary pattern calculated using FFQ administered at baseline in 1986. FFQ info updated every 4 years. | 18 | 1. Incident kidney stone accompanied by pain or hematuria. Follow-up years calculated from baseline to the date of a kidney stone or death or to 31 January 2004. | DASH (diet score) | Incident kidney stone accompanied by pain or hematuria (RR) Q1:1.00 (ref.) Q2:0.89 (0.77, 1.01) Q3:0.77 (0.67, 0.89) Q4:0.64 (0.54, 0.74) Q5:0.55 (0.46, 0.65) P for trend: <0.001 | Age, BMI, total energy intake, use of thiazide diuretics, fluid intake, caffeine, alcohol use, history of hypertension, and history of diabetes |
Ferraro et al. (2017) [33], USA | NHS I, 59,740, (both) | Mean age of study sample: (52.9, SD: 7.1) | -Kidney stone self-reported via supplementary questionnaire and diagnosis was confirmed through review of medical records. | FFQ (>130). Dietary pattern calculated using baseline FFQ in 1986. | 12.1 | 1. Incident kidney stone accompanied by pain or hematuria. Follow-up years of calculated from day of return of baseline questionnaire to incident kidney stone. | DASH-style diet (diet score) | Incident kidney stone accompanied by pain or hematuria (IRR) Q5:1.00 (ref.) Q4:0.98 (0.82, 1.17) Q3:1.22 (1.03, 1.44) Q2:1.32 (1.12, 1.56) Q1:1.47(1.25, 1.73) | Age, BMI, fluid, race, geographic area, use of thiazide diuretics, history of diabetes, and history of hypertension |
Ferraro et al. (2017) [33], USA | NHS II, 90,449, (both) | Mean age of study sample: 36.6, (SD: 4.6) | -Kidney stone self-reported via supplementary questionnaire and diagnosis was confirmed through review of medical records. | FFQ (>130) Dietary pattern calculated using baseline FFQ in 1991. | 11.3 | 1. Incident kidney stone accompanied by pain or hematuria. Follow-up years of calculated from day of return of baseline questionnaire to incident kidney stone. | DASH-style diet (diet score) | Incident kidney stone accompanied by pain or hematuria (IRR) Q5:1.00 (ref.) Q4:1.18 (1.04, 1.34) Q3:1.09 (0.96, 1.24) Q2:1.33 (1.18, 1.51) Q1:1.37 (1.21, 1.55) | Age, BMI, fluid, race, geographic area, use of thiazide diuretics, history of diabetes, and history of hypertension |
Ferraro et al. (2017) [33], USA | HPFS, 41,937 (men) | Mean age of study sample: 54.2 (SD: 9.7) | -Kidney stone self-reported via supplementary questionnaire and diagnosis was confirmed through review of medical records. | FFQ (>130) Dietary pattern calculated using baseline FFQ in 1986. | 11.5 | 1. Incident kidney stone accompanied by pain or hematuria. Follow-up years of calculated from day of return of baseline questionnaire to incident kidney stone. | DASH-style diet (diet score) | Incident kidney stone accompanied by pain or hematuria (IRR) Q5:1.00 (ref.) Q4:1.06 (0.90, 1.25) Q3:1.21 (1.04, 1.42) Q2:1.36 (1.17, 1.59) Q1:1.53 (1.31, 1.78) | Age, BMI, fluid, race, geographic area, use of thiazide diuretics, history of diabetes, and history of hypertension |
Asghari et al. (2017) [34], Iran | TGLS, 1630 (both) | Mean age of study sample: 42.8 (SD: 11.2) | -Serum creatinine measured via Jaffe kinetic reaction method with blood sample collected during fifth study visit from 2012–2015. -eGFR calculated via the MDRD equation. | FFQ (168) Dietary pattern calculated using FFQ administered during third study visit from 2006–2008. | 6.1 | 1. Incident CKD (eGFR < 60 mL/min/1.73 m2). | DASH-style diet (diet score) | Incident CKD (OR) Q1:1.00 (ref.) Q5:0.41 (0.24, 0.70) P for trend: <0.001 | Age, gender, BMI smoking, total energy intake, eGFR, triglycerides, physical activity, hypertension, and diabetes |
Liu et al. (2017) [35], USA | NIA-HANDLS, (1534) (both) | Mean age of study sample: 48 | -Blood creatinine measured via modified kinetic Jaffe method and isotope dilution mass spectrometry using blood samples collected from 2009–2013. | 24-hr food recall. Dietary pattern calculated via diet information collected at baseline from 2004–2008. | 5 | 1. Incident CKD (follow-up eGFR < 60 mL/min/1.73 m2). 2. eGFR decline (>25% from baseline). | DASH (diet score) | Incident CKD (RR) High DASH accordance:1.00 (ref.) Low DASH accordance:1.49 (0.84, 2.63) eGFR decline >25% (RR) High DASH accordance:1.00 (ref.) Low DASH accordance: 1.36 (0.78, 2.37) | Age, gender, and race |
Rebholz et al. (2015) [36], USA | ARIC, 14,832 (both) | Mean age of study sample: 54 | -Blood creatinine measured via modified kinetic Jaffe method using blood samples on five study visits from 1990–1992, 1993–1995, 1996–1998, and 2011–2013. -eGFR calculated via the CKD-EPI equation. | FFQ (66) Dietary pattern calculated using baseline FFQ from 1987–1989. | 22 | 1. Incident CKD (meets one of the following criteria 1. development of eGFR < 60 mL/min/1.73 m2 accompanied by ≥25% eGFR decline from baseline. 2. ICD 9/10 code for hospitalization due to CKD identified by surveillance of hospitalization and annual follow-up phone calls with study participants. 3. ICD 9/10 code for death due to CKD identified by linkage to the NDI. 4. ESRD identified by linkage to the US renal data system registry). | American Heart Association Life’s Simple 7 Healthy Diet Score (diet Score) | Incident CKD (HR) Poor healthy diet score: 1.00 (ref.) Intermediate healthy diet score: 1.02 (0.93, 1.13) Ideal healthy diet score: 0.99 (0.83, 1.18) P for trend: 0.55 | Age, gender, race, and baseline eGFR |
Foster et al. (2015) [37], USA | The Framingham Offspring Cohort, 1802, (both) | Mean age of study sample: 59 | -Serum creatinine measured via modified Jaffe method using blood samples collected at baseline (1998–2001) and follow-up (2005–2008) and study visits. -eGFR calculated via the CKD-EPI equation. | FFQ (131). Dietary pattern calculated using FFQ administered at baseline from 1998–2001. | 6.6 | 1. Incident eGFR < 60 mL/min/1.73 m2 (presence of eGFR <60 mL/min/1.73 m2 at follow up among participants with eGFR > 60 mL/min/1.73 m2 at baseline. 2. Rapid eGFR decline (annual decrease in eGFR ≥ 3 mL/min/1.73 m2). | DGAI (diet score) | Incident eGFR < 60 mL/min/1.73 m2 (OR) Q1 (lowest quality): 1.0 (ref.) Q2: 0.77 (0.47, 1.27) Q3: 0.52 (0.31, 0.89) Q4 (highest quality): 0.63 (0.38, 1.07) P for trend: 0.045 Rapid eGFR decline (OR) Q1 (lowest quality): 1.0 (ref.) Q2: 0.83 (0.56, 1.22) Q3: 0.73 (0.49, 1.10) Q4 (highest quality): 0.69 (0.45, 1.05) P for trend: 0.07 | Age, gender, baseline eGFR, BMI, hypertension, diabetes, and dipstick proteinuria |
Gopinath et al. (2013) [38], Australia | Blue Mountain Eye Study, 1952, (both) | Study sample age: ≥50 | -Serum creatinine measured via isotope dilution mass spectrometry using blood samples collected at follow-up examination from 2002–2004 -eGFR calculated via the MDRD equation. | FFQ (145). Diet score calculated via FFQ administered at baseline from 1992–1994. | 10 | 1.Incident CKD (eGFR < 60 mL/min/1.73 m2). | TDS (diet Score) | Incident CKD (OR): Q1: 1.00 (ref.) Q2: 0.99 (0.60, 1.64) Q3: 0.78 (0.46, 1.31) Q4: 0.68 (0.40, 1.15) P for trend: 0.10 | Age, serum total cholesterol, hypertension, and history of diagnosed diabetes |
Turney et al. (2014) [39], United Kingdom | EPIC, 51,336 (both) | Study sample age: ≥20 | -Incidence of kidney stones determined by reviewing hospital records of study participants with (ICD)-9/10 codes. | FFQ (130). Dietary pattern from FFQ administered at baseline from 1993–1999. | 716,105 person-years | 1. Incidence of kidney stones. Follow-up calculated from the date of recruitment to the study to the earliest of date of kidney stone diagnosis, death or emigration. | 1. Vegetarian diet | Incident kidney stones (HR) Meat eater (>100g/day): 1.00 (ref.) Vegetarian: 0.69 (0.48, 0.98) P for trend: 0.04 | Smoking, BMI alcohol consumption, self-reported prior diabetes, and energy intake |
Asghari et al. (2018) [40], Iran | TLGS, 1630 (both) | Mean age of study sample: 42.8 (SD: 11.2) | -Serum creatinine measured via Jaffe Kinetic reaction method with blood sample collected during fifth study visit from 2012–2015. | FFQ (168). Dietary pattern calculated using FFQ administered during third visit from 2006–2008. | 6.1 | 1. Incident CKD (eGFR < 60 mL/min/1.73 m2). | 1. Lacto-vegatarian (PCA) 2. Traditional Iranian (PCA) 3. High fat, high sugar (PCA) | Incident CKD (OR) Lacto-vegetarian T1: 1.0 (ref.) T2: 0.85 (0.62,1.15) T3: 0.57 (0.41, 0.80) P for trend: 0.002 Traditional Iranian: T1: 1.0 (ref.) T2: 1.26 (0.93, 1.72) T3: 0.91 (0.64, 1.32) P for trend: 0.698 High fat, high sugar: T1: 1.0 (ref) T2: 1.21 (0.87, 1.70) T3: 1.46 (1.03, 2.09) P for trend: 0.036 | Age, gender, BI smoking total energy intake, physical activity, diabetes, and hypertension |
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Ajjarapu, A.S.; Hinkle, S.N.; Li, M.; Francis, E.C.; Zhang, C. Dietary Patterns and Renal Health Outcomes in the General Population: A Review Focusing on Prospective Studies. Nutrients 2019, 11, 1877. https://doi.org/10.3390/nu11081877
Ajjarapu AS, Hinkle SN, Li M, Francis EC, Zhang C. Dietary Patterns and Renal Health Outcomes in the General Population: A Review Focusing on Prospective Studies. Nutrients. 2019; 11(8):1877. https://doi.org/10.3390/nu11081877
Chicago/Turabian StyleAjjarapu, Aparna S., Stefanie N. Hinkle, Mengying Li, Ellen C. Francis, and Cuilin Zhang. 2019. "Dietary Patterns and Renal Health Outcomes in the General Population: A Review Focusing on Prospective Studies" Nutrients 11, no. 8: 1877. https://doi.org/10.3390/nu11081877
APA StyleAjjarapu, A. S., Hinkle, S. N., Li, M., Francis, E. C., & Zhang, C. (2019). Dietary Patterns and Renal Health Outcomes in the General Population: A Review Focusing on Prospective Studies. Nutrients, 11(8), 1877. https://doi.org/10.3390/nu11081877