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Inicio Endocrinología, Diabetes y Nutrición Internal fat mediates the impact of age on diabetes onset in chinese people betw...
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Vol. 67. Núm. 9.
Páginas 594-601 (noviembre 2020)
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Vol. 67. Núm. 9.
Páginas 594-601 (noviembre 2020)
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Internal fat mediates the impact of age on diabetes onset in chinese people between 30 and 44 years old
La grasa interna media en el impacto de la edad sobre la aparición de diabetes en personas chinas de entre 30 y 44 años de edad
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Ningbin Daia, Qianwen Shia, Yujie Huaa, Yu Guob, Zheng Bianb, Liming Lic, Zhengming Chend, Yan Lua,
Autor para correspondencia
szly0700@sina.com

Corresponding author.
a Suzhou Center for Disease Control and Prevention, Suzhou, China
b Chinese Academy of Medical Sciences, Beijing, China
c Department of Epidemiology, School of Public Health, Peking University Health Science Center, Beijing, China
d Clinical Trial Service Unit and Epidemiological Studies Unit (CTSU), Nuffield Department of Population Health, University of Oxford, Oxford, UK
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Table 1. Characteristics of study population.
Table 2. Regression analysis for age, fat indexes, and risk of diabetes.
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Abstract
Aims

We sought to measure the effect of controlling body fat indexes on decreasing the incidence of type 2 diabetes mellitus (T2DM) mathematically.

Methods

Study samples were selected from a well-established cohort in Suzhou, China between 2004 and 2008, comprising 6364 males and 9678 females. The questionnaire contained socio-demographic characteristics, smoking, alcohol consumption, diet, physical activity, personal and family medical history and current medication. Multiple linear regression, Cox regression and mediation analyses were performed to determine the relationship among age, body fat indexes and T2DM onset.

Results

All the three body fat indexes [the body mass index (BMI), waist-to-hip ratio (WHR) and body fat percentage] showed a significant positive association (P<0.05) with age and T2DM. Significant indirect effects (IE) were detected for age, which were mediated respectively through WHR [IE=1.10, 95%CI: 1.07–1.13; P<0.001], the BMI (IE=1.15, 95%CI: 1.11–1.18; P<0.001), and body fat percentage (IE=1.09, 95%CI: 1.07–1.12; P<0.001). The combined body fat index score demonstrated a significant association with age (P<0.001) and a stronger relationship with the onset of diabetes (P<0.001) along with a significant mediating effect (IE=1.17; 95%CI: 1.13–1.22; P<0.001). The total effect of age on T2DM was 1.60 (95%CI: 1.21–2.10; P=0.0008). As a result, the three body fat indexes jointly mediated 33.97% of the age impact on diabetes onset.

Conclusions

This pilot study revealed important roles for body fat indexes in mediating the age pathway to the onset of diabetes. Controling body fat in the appropriate range could reduce 33.97% of the risk of T2DM onset with increasing age.

Keywords:
Fat
Age
Diabetes
Young population
Mediation analysis
Resumen
Objetivos

Medir matemáticamente el efecto del control de los índices de grasa corporal en la reducción de la incidencia de diabetes mellitus del tipo 2 (DMT2).

Métodos

Se obtuvieron durante 2004-2008 muestras para estudio de una cohorte bien establecida de Suzhou, China, formada por 6.364 varones y 9.678 mujeres. Mediante un cuestionario se recogieron los datos de las características sociodemográficas, el tabaquismo, el consumo de alcohol, la dieta, la actividad física, los antecedentes médicos personales y familiares y la medicación en curso. Se realizaron regresión lineal múltiple, regresión de Cox y análisis de mediación para determinar la relación entre edad, índices de grasa corporal y comienzo de la DMT2.

Resultados

Se halló una asociación positiva significativa (p<0,05) de 3 índices de grasa corporal (índice de masa corporal [IMC], índice cintura-cadera [ICC] y porcentaje de grasa corporal) con la edad y la DMT2. Se detectaron efectos causales indirectos (EI) significativos de la edad, mediados respectivamente por el ICC (EI: 1,10; IC al 95%: 1,07-1,13; p<0,001], el IMC (EI: 1,15; IC al 95%: 1,11-1,18; p<0,001) y el porcentaje de grasa corporal (EI: 1,09; IC al 95%: 1,07-1,12; p<0,001). La puntuación combinada de los índices de grasa corporal seguía mostrando una asociación significativa con la edad (p<0,001) y una relación más intensa con el comienzo de la diabetes (p<0,001), junto con un efecto mediador significativo (EI: 1,17; IC al 95%: 1,13-1,22; p<0,001). El efecto total de la edad en la DMT2 era 1,60 (IC: 1,21-2,10; p=0,0008). Como resultado, los 3 índices de grasa corporal fueron los mediadores del 33,97% de los efectos de la edad en el comienzo de la diabetes.

Conclusiones

Este estudio piloto reveló las importantes funciones de los índices de grasa corporal como mediadores del efecto de la edad en la aparición de la diabetes. El control de la grasa corporal dentro de límites apropiados podría reducir el 33,97% de riesgo de comienzo de la DMT2 con el paso de la edad.

Palabras clave:
Grasa
Edad
Diabetes
Población joven
Análisis de mediación
Texto completo
Introduction

Diabetes is a chronic metabolic disorder disease. It occurs either when the body cannot effectively use the insulin it produces or when the pancreas does not produce enough insulin.1 Type 2 diabetes mellitus (T2DM) is one of the ten leading causes of death in the world.2 Its incidence is constantly increasing worldwide, especially in middle and low income countries.3 The global prevalence of diabetes among adults has risen from 4.7% in 1980 to 8.5% in 2014. In China, the estimated overall prevalence of total diabetes in 2013 was 10.9%, which was greater more than ten-fold compared with it in 1980.4–7 People living with T2DM have a higher risk of morbidity and mortality than the general population.8 In 2012, an estimated 1.5 million deaths were directly caused by diabetes and its complications globally.2,9 Its complications include blindness, diabetic foot, kidney failure and vascular complications such as stroke, heart attacks, lower limb amputation.10 Obvious, diabetes brings heavy burden both to the society and residents’ life.11,12 In April 2016, WHO published the Global report on diabetes, which calls for action to reduce exposure to the known risk factors for T2DM and to improve access to the quality of care for people with all forms of diabetes.13

The causes of T2DM are complex, but there are several confirmed risk factors, including a strong family history of diabetes mellitus, age, obesity and widespread lack of physical activity.3,14,15 However, whether they interact with or interfere each other and how they affect each other are not illuminated clearly. Rastegari et al. showed that there was a significant statistical positive association between age and WHR index, which provides us some clues.15 Now that anthropometric indices such as body mass index (BMI), waist-to-hip ratio (WHR) and body fat percentage are all considered for obesity evaluation,16 we may prevent T2DM by controlling anthropometric indices such as WHR while age is increasing. The present study aims to use mediation analysis to explore the relationship between age, anthropometric indices (including BMI, WHR and body fat percentage) and incidence of T2DM. Furthermore, we can measure the effect of controlling body fat indexes on decreasing the incidence of T2DM mathematically.

MethodsStudy population

Study samples were selected from China Kadoorie Biobank (CKB) study, a well-established prospective cohort of Chinese adults during 2004–2008, as detailed previously.17–19 The current analysis selected individuals who were 30–44 years old from Suzhou. The participants should conform to the following criteria: hadn’t confirmed as a diabetes patient at baseline, and won’t be a diabetes patient during one half year after entering the cohort. As a result, a total of 365 participants were excluded, and 16,407 adults (6364 males and 9678 females) formed the sample for the current analysis.

Diabetes was defined either as a screen-detected diabetes or self-report of physician diagnosis of diabetes, as previously reported.20 Screen-detected diabetes was defined as no prior history of diabetes with a blood glucose level meeting any one of the following criteria, if applicable: (1) a fasting blood glucose level ≥7.0mmol/L; (2) a random blood glucose level ≥11.1mmol/L and a fasting time<8h; (3) a random blood glucose level ≥7.0mmol/L and a fasting time>8h.21

Ethical approval for the CKB study was obtained from the Ethical Review Committee of the Chinese Center for Disease Control and Prevention (Beijing, China) and the Oxford Tropical Research Ethics Committee, University of Oxford (UK). In addition, approvals were obtained from the institutional research boards at the local Center for Disease Control and Prevention in each of the ten survey sites. Finally, written informed consent was obtained from all participants.22 All methods were performed in accordance with the relevant guidelines and regulations.

Questionnaire survey

At local study assessment clinics, participants completed an interviewer-administered laptop-based questionnaire on socio-demographic characteristics, smoking, alcohol consumption, diet, physical activity, personal and family medical history and current medication. A range of physical measurements were recorded by trained technicians, including height, weight, hip and waist circumference, bio-impedance, lung function, blood pressure and heart rate, using calibrated instruments with standard protocols.23

Age was classified into three levels: (1) 30–34 years old; (2) 35–39 years old; and (3) 40–44 years old. BMI was classified into four levels: (1) <18.5kg/m2; (2) 18.5–24.9kg/m2; (3) 25–29.9kg/m2; and (4) ≥30kg/m2. WHR was classified into two levels both in female and man: (1) ≤0.85 for female and ≤0.90 for man; (2) >0.85 for female and>0.90 for man. Body fat percentage was classified into three levels: (1) <26 for female and<18 for man; (2) 26–31 for female and 18–22 for man; (3) >31 for female and>22 for man. Education was classified into five levels: (1) illiterate; (2) elementary; (3) middle school; (4) high school; and (5) college and above. Total physical activity was converted into metabolic equivalent hours per day (MET-hours/day) spent on work, transportation, housework, non-sedentary recreation as described in our previous study.24 In the present analysis, participants were classified into three main drinking categories: (1) nondrinkers were defined as those who never or almost never drink during his/her lifetime; (2) ex regular drinkers or occasional drinkers, including drinkers who almost did not drink currently but drank weekly and lasted over one year and drinkers who drink currently but less than once a week; and (3) weekly drinkers as those who drink every week. For assessment of tobacco consumption, participants were classified into four main smoking categories: (1) never smokers as those who did not smoke currently and had smoked less than 100 cigarettes during his/her lifetime; (2) occasional smokers as those who do not smoke currently but had smoked occasionally in the past or those who currently smoke occasionally and had not smoked on most days or daily in the past, or had smoked at least 100 cigarettes during his/her lifetime; (3) ex-smokers were defined as those who currently do not smoke or only smoked occasionally but had smoked on most days or daily in the past; (4) regular smokers as those who currently smoke daily or on most days.22 Information on duration (years) of smoking and number of packs smoked per day was obtained for regular smokers, and pack-years was calculated as a measure of cumulative burden of smoking. Household income was classified into four levels: (1) <10,000 RMB; (2) 10,000–19,999 RMB; (3) 20,000–34,999 RMB; and (4) ≥35,000 RMB.

Statistical analysis

Characteristics of the study population are described by mean and standard deviation (SD) for continuous variables and frequency (%) for categorical variables. Multiple linear regression was performed on the relationship between age and the three body fat indexes. Cox regression was performed on the relationship between age and diabetes oncome. The mediating effects of three body fat indexes (BMI, WHR and body fat percentage), which were nominally significant in both models (P<0.05), were further evaluated for nature indirect effects (NIE) and nature direct effects (NDE) on the impact of age on diabetes oncome by VanderWeele's mediation approach25–27 as follows:

Mediating effect percentage (M%) means NIE as a percentage of total effect (TE), as follow:

To evaluate the joint effect of the three body fat indexes, the combined body fat indexes score (CFS) was calculated by the linear combination of the three body fat indexes weighted by the corresponding coefficients:

where the coefficients were estimated by the corresponding multivariate linear regression:

The combined body fat indexes score was analyzed against the association with age, diabetes oncome and its mediating effect accordingly. All models were adjusted for the gender, education level, smoking level, alcohol level, MET and family diabetes history.

All analyses were conducted using R version 3.4.3 (The R Foundation).

Results

The distribution of demographic characteristics among 16,407 samples was described in Table 1. For both males and females, most people had normal BMI and body fat percentage. But for WHR, 57.24% males were obese while only 42.80% females were observed obese. Significant differences were observed in age between different levels of the three body fat indexes respectively, other demographic characteristics as well. With age increasing, more people became overweight or had a higher WHR and body fat percentage. There were significant differences in education level between different BMI levels, but we didn’t figure out the significant differences between different WHR levels and body fat percentage levels.

Table 1.

Characteristics of study population.

  BMIWHRBody fat percentage
  Underweight (N=418)  Normal (N=10,378)  Overweight (N=5246)  P value  Normal (N=8257)  Obesity (N=7785)  P value  Lean (N=2817)  Normal (N=4369)  Overweight (N=8856)  P value 
Sex        <0.001      <0.001        <0.001 
Male  145(2.28%)  3674(57.73%)  2545(39.99%)    2721(42.76%)  3643(57.24%)    1028(16.15%)  1367(21.48%)  3969(62.37%)   
Female  273(2.82%)  6704(69.27%)  2701(27.91%)    5536(57.20%)  4142(42.80%)    1789(18.49%)  3002(31.02%)  4887(50.5%)   
Age        <0.001      <0.001        <0.001 
30–34 years old  27(5.18%)  368(70.63%)  126(24.18%)    314(60.27%)  207(39.73%)    131(25.14%)  154(29.56%)  236(45.3%)   
35–39 years old  233(3.32%)  4795(68.34%)  1988(28.34%)    3946(56.24%)  3070(43.76%)    1417(20.2%)  1962(27.96%)  3637(51.84%)   
40–44 years old  158(1.86%)  5215(61.32%)  3132(36.83%)    3997(47%)  4508(53%)    1269(14.92%)  2253(26.49%)  4983(58.59%)   
Education        0.012      0.333        0.197 
Illiterate  6(1.8%)  196(58.86%)  131(39.34%)    157(47.15%)  176(52.85%)    41(12.31%)  93(27.93%)  199(59.76%)   
Elementary  114(2.6%)  2820(64.19%)  1459(33.21%)    2292(52.17%)  2101(47.83%)    769(17.51%)  1218(27.73%)  2406(54.77%)   
Middle school  224(2.47%)  5928(65.24%)  2935(32.3%)    4665(51.34%)  4422(48.66%)    1615(17.77%)  2468(27.16%)  5004(55.07%)   
High school  56(3.04%)  1201(65.27%)  583(31.68%)    953(51.79%)  887(48.21%)    333(18.1%)  492(26.74%)  1015(55.16%)   
College and above  18(4.63%)  233(59.9%)  138(35.48%)    190(48.84%)  199(51.16%)    59(15.17%)  98(25.19%)  232(59.64%)   
Smoking        <0.001      <0.001        <0.001 
Never  284(2.83%)  6880(68.6%)  2865(28.57%)    5684(56.68%)  4345(43.32%)    1831(18.26%)  3073(30.64%)  5125(51.1%)   
Occasionally  10(1.05%)  540(56.78%)  401(42.17%)    397(41.75%)  554(58.25%)    116(12.2%)  206(21.66%)  629(66.14%)   
Quit  4(0.95%)  222(52.86%)  194(46.19%)    156(37.14%)  264(62.86%)    37(8.81%)  75(17.86%)  308(73.33%)   
Frequently  120(2.59%)  2736(58.94%)  1786(38.47%)    2020(43.52%)  2622(56.48%)    833(17.94%)  1015(21.87%)  2794(60.19%)   
Alcohol        <0.001      <0.001        <0.001 
Never  247(2.78%)  6031(67.81%)  2616(29.41%)    4956(55.72%)  3938(44.28%)    1652(18.57%)  2664(29.95%)  4578(51.47%)   
Occasionally  123(2.72%)  2805(62.06%)  1592(35.22%)    2231(49.36%)  2289(50.64%)    768(16.99%)  1143(25.29%)  2609(57.72%)   
Weekly  48(1.83%)  1542(58.68%)  1038(39.5%)    1070(40.72%)  1558(59.28%)    397(15.11%)  562(21.39%)  1669(63.51%)   
Income_4        <0.001      <0.001        <0.001 
<10,000 RMB  16(6.06%)  171(64.77%)  77(29.17%)    141(53.41%)  123(46.59%)    66(25%)  70(26.52%)  128(48.48%)   
10,000–19,999 RMB  62(3.47%)  1194(66.89%)  529(29.64%)    967(54.17%)  818(45.83%)    363(20.34%)  556(31.15%)  866(48.52%)   
20,000–34,999 RMB  149(2.45%)  4038(66.37%)  1897(31.18%)    3254(53.48%)  2830(46.52%)    1122(18.44%)  1637(26.91%)  3325(54.65%)   
≥35,000 RMB  191(2.41%)  4975(62.9%)  2743(34.68%)    3895(49.25%)  4014(50.75%)    1266(16.01%)  2106(26.63%)  4537(57.37%)   

There were several anthropometric measuring indexes in the questionnaire such as BMI, waist, hip, setting height, weight and height and so on. We choose the most representational three indexes into the present analysis: BMI, WHR and body fat percentage. All of them showed a significant positive association (P<0.05) with age and diabetes oncome (Table 2). Cox regression result showed that the hazard of T2DM will increase 9%, 22% and 10% per WHR, BMI and body fat percentage respectively (Table 2).

Table 2.

Regression analysis for age, fat indexes, and risk of diabetes.

Fat indexes  Age on fat indexesFat indexes on diabetesMediation analysis
  β (95% CI)  p  HR (95% CI)  p  IE (95% CI)  p 
WHR  1.15 (0.99,1.30)  <0.001  1.09 (1.06,1.11)  <0.001  1.10 (1.07,1.13)  <0.001 
BMI  0.68 (0.60,0.77)  <0.001  1.22 (1.18,1.27)  <0.001  1.15 (1.11,1.18)  <0.001 
FATpcta  0.91 (0.74,1.09)  <0.001  1.10 (1.08,1.13)  <0.001  1.09 (1.07,1.12)  <0.001 
a

FATpct, body fat percentage.

To examine whether these body fat indexes acted as causal mediators of the age side effect on diabetes oncome, we performed mediation analysis. Significant causal indirect effects were detected for age, which were mediated respectively through WHR (IE=1.10, 95%CI: 1.07–1.13; P<0.001), BMI (IE=1.15, 95%CI: 1.11–1.18; P<0.001) and body fat percentage (IE=1.09, 95%CI: 1.07–1.12; P<0.001) (Table 2). Additionally, we calculated the combined body fat index score by weighted linear combination of the three body fat indexes to test joint association. The combined body fat index score still demonstrated a significant association with age (P<0.001) and a stronger relationship with diabetes oncome (P<0.001) (Fig. 1) along with a significant mediating effect (IE=1.17; 95%CI: 1.13–1.22; P<0.001). The total effect of age on T2DM was 1.60 (95%CI: 1.21–2.10; P=0.0008). As a result, the three body fat indexes jointly mediated 33.97% of age's impact on diabetes oncome, which mean that people can reduce 33.97% hazard of T2DM by decreasing body fat (Fig. 1).

Figure 1.

The mediation of combined body fat index score on age and diabetes.

(0.15MB).
Discussion

Preliminary studies have indicated the effect of the association between diabetes duration and microvascular events is greater in younger patients,28 and intensive glucose lowering increases the risk of cardiovascular diseases and total mortality in young participants.29 The damage of the diabetes seems more harmful to the young than the old.

Our results about the relationship between body fat indexes (BMI, WHR and body fat percentage) and diabetes oncome are consistent with many other studies.14,16 Meanwhile, Mungreiphy et al. found WHR had the highest correlation with random blood sugar level among general and regional obesity indices.30 It implies that central obesity is more reliable than general obesity in determining diabetes. The internal mechanism maybe that body fat distribution and fat content can influence the adiponectin concentration, which is associated with insulin resistance and hyperinsulinemia.31,32 Obesity and T2DM are associated with low plasma adiponectin concentration in different ethnic groups.33

Studies about the mechanism of association between age and T2DM found that age was associated with an increase in abdominal white adipose tissue,34,35 a major contributor to insulin resistance and diabetes. Meanwhile, with age growth, oxidative stress and chronic inflammation process increase, which also increase the vulnerability to T2DM.36

As we all know, the life-style and physical characteristic fairly differ between young and old people in China: more young people drinking and eating – and more regularly – than the old on account of social contacting and post promotion. It directly leads to obesity. And the impact of obesity on health-related quality of life is especially strong in young people, who are free of co-morbidities. It progressively attenuates with age growth, when co-morbid conditions are diffusely present, independent of obesity.37 Meanwhile, old people eat less animal fat than young people considering with their degradation of digestive function. To avoid confounding and make sure the results more credible and precision, we directed at young people into this study.

The current cohort study was based on a large sample size and suggested a robust causal relationship among age, body fat indexes and T2DM risk by mediation analyses. However, there's still some limitations in this study. First, biochemical indicators associated with T2DM and obesity were not included in this study. For a large population epidemiological study, biochemical tests cost a lot and hard to cover each participant. More comprehensive research should be taken to confirm our results. Second, this study just analyzed individuals aged 30–44 years old, the aged were not included in this analysis. Compared the young, the aged had different physical condition and life style. Future studies will continue to investigate the impact of body fat and age on T2DM in elderly people.

Despite these limitations, to our knowledge, this is the first study to explore comprehensively the interplay between age and body fat indexes in influencing diabetes oncome. This study suggests important roles for controlling body fat as mediators of age. In conclusion, controlling body fat in an appropriate range could prevent the oncome of T2DM for the young. To keep fit and health, appropriate diet, exercise and many other active lifestyle interventions have already reported useful to prevent or delay T2DM onset.38,39 In 2016, WHO called for that healthy diet, regular physical activity, maintaining a normal body weight and avoiding tobacco use are ways to prevent or delay the onset of T2DM.13

Conclusions

This pilot study revealed the important roles for body fat indexes in mediating the pathway of age on diabetes oncome. This study showed that controlling body fat moderately could reduce 33.97% risk of T2DM onset with age increasing. This finding is of considerable public health importance as age increasing is an unavoidable occurrence.

Authors’ contributions

Chen ZM and Li LM designed the study. Dai NB, Hua YJ and Lu Y collected data from Suzhou. Shi QW analyzed the data with Guo Y and Bian Z. All the authors have read and approved the final submitted version.

Funding

This study was supported by grants (2016YFC0900500, 2016YFC0900501) from the National Key Research and Development Program of China, grants (81703305) from the National Natural Science Foundation of China, grants from the Kadoorie Charitable Foundation in Hong Kong and grants (088158/Z/09/Z, 104085/Z/14/Z) from Wellcome Trust in the UK.

Conflict of interest

The authors declare that they have no conflict of interest.

Acknowledgements

We thank Chinese Center for Disease Control and Prevention, Chinese Ministry of Health, National Health and Family Planning Commission of China. The most important acknowledgment is to the participants in the study and the members of the survey teams, as well as to the project development and management teams based at Beijing, and Oxford.

References
[1]
Shankaracharya, D. Odedra, S. Samanta, A.S. Vidyarthi.
Computational intelligence in early diabetes diagnosis: a review.
Rev Diabet Stud, 7 (2010), pp. 252-262
[2]
C.D. Mathers, D. Loncar.
Projections of global mortality and burden of disease from 2002 to 2030.
[3]
V.M. Passos, S.M. Barreto, L.M. Diniz, M.F. Lima-Costa.
Type 2 diabetes: prevalence and associated factors in a Brazilian community – the Bambui health and aging study.
Sao Paulo Med J, 123 (2005), pp. 66-71
[4]
Y. Xu, L. Wang, J. He, Y. Bi, M. Li, T. Wang, et al.
Prevalence and control of diabetes in Chinese adults.
JAMA, 310 (2013), pp. 948-959
[5]
A mass survey of diabetes mellitus in a population of 300,000 in 14 provinces and municipalities in China (author's transl). Zhonghua Nei Ke Za Zhi. 1981;20:678–83.
[6]
D. Gu, K. Reynolds, X. Duan, X. Xin, J. Chen, X. Wu, et al.
Prevalence of diabetes and impaired fasting glucose in the Chinese adult population: International Collaborative Study of Cardiovascular Disease in Asia (InterASIA).
Diabetologia, 46 (2003), pp. 1190-1198
[7]
L. Wang, P. Gao, M. Zhang, Z. Huang, D. Zhang, Q. Deng, et al.
Prevalence and ethnic pattern of diabetes and prediabetes in China in 2013.
JAMA, 317 (2017), pp. 2515-2523
[8]
K. Ogurtsova, J.D. da Rocha Fernandes, Y. Huang, U. Linnenkamp, L. Guariguata, N.H. Cho, et al.
IDF Diabetes Atlas: global estimates for the prevalence of diabetes for 2015 and 2040.
Diabetes Res. Clin. Pract., 128 (2017), pp. 40-50
[9]
W. Geneva.
Global health estimates: deaths by cause, age, sex and country, 2000–2012.
(2014),
[10]
N. Nanayakkara, S. Ranasinha, A. Gadowski, S. Heritier, J.R. Flack, N. Wischer, et al.
Age, age at diagnosis and diabetes duration are all associated with vascular complications in type 2 diabetes.
J Diabetes Complicat, (2017),
[11]
G. Danaei, C.M. Lawes, S. Vander Hoorn, C.J. Murray, M. Ezzati.
Global and regional mortality from ischaemic heart disease and stroke attributable to higher-than-optimum blood glucose concentration: comparative risk assessment.
Lancet, 368 (2006), pp. 1651-1659
[12]
J.W. Yau, S.L. Rogers, R. Kawasaki, et al.
Global prevalence and major risk factors of diabetic retinopathy.
Diabetes Care, 35 (2012), pp. 556-564
[13]
G. Roglic.
World Health Organization. Global report on diabetes.
World Health Organization, (2016),
[14]
B. Fletcher, M. Gulanick, C. Lamendola.
Risk factors for type 2 diabetes mellitus.
J. Cardiovasc. Nurs., 16 (2002), pp. 17-23
[15]
Z. Rastegari, M. Noroozi, Z. Paknahad.
Socioeconomic and reproductive determinants of waist–hip ratio index in menopausal women.
J Midlife Health, 8 (2017), pp. 170-173
[16]
C. Nishida, G.T. Ko, S. Kumanyika.
Body fat distribution and noncommunicable diseases in populations: overview of the 2008 WHO Expert Consultation on Waist Circumference and Waist–Hip Ratio.
Eur. J. Clin. Nutr., 64 (2010), pp. 2-5
[17]
Z. Chen, J. Chen, R. Collins, Y. Guo, R. Peto, F. Wu, et al.
China Kadoorie Biobank of 0.5 million people: survey methods, baseline characteristics and long-term follow-up.
Int. J. Epidemiol., 40 (2011), pp. 1652-1666
[18]
Z. Chen, L. Lee, J. Chen, R. Collins, F. Wu, Y. Guo, et al.
Cohort profile: the Kadoorie Study of Chronic Disease in China (KSCDC).
Int. J. Epidemiol., 34 (2005), pp. 1243-1249
[19]
L.M. Li, J. Lv, Y. Guo, R. Collins, J.S. Chen, R. Peto, et al.
The China Kadoorie Biobank: related methodology and baseline characteristics of the participants.
Zhonghua Liu Xing Bing Xue Za Zhi, 33 (2012), pp. 249-255
[20]
F. Bragg, L. Li, M. Smith, Y. Guo, Y. Chen, I. Millwood, et al.
Associations of blood glucose and prevalent diabetes with risk of cardiovascular disease in 500000 adult Chinese: the China Kadoorie Biobank.
Diabet. Med., 31 (2014), pp. 540-551
[21]
W. Gan, R.G. Walters, M.V. Holmes, F. Bragg, I.Y. Millwood, K. Banasik, et al.
Evaluation of type 2 diabetes genetic risk variants in Chinese adults: findings from 93,000 individuals from the China Kadoorie Biobank.
Diabetologia, 59 (2016), pp. 1446-1457
[22]
J. Lv, W. Chen, D. Sun, S. Li, I.Y. Millwood, M. Smith, et al.
Gender-specific association between tobacco smoking and central obesity among 0.5 million Chinese people: the China Kadoorie Biobank Study.
PLOS ONE, 10 (2015), pp. e0124586
[23]
Y. Pang, C. Kartsonaki, Y. Guo, F. Bragg, L. Yang, Z. Bian, et al.
Diabetes, plasma glucose and incidence of pancreatic cancer: a prospective study of 0.5 million Chinese adults and a meta-analysis of 22 cohort studies.
Int. J. Cancer, 140 (2017), pp. 1781-1788
[24]
H. Du, D. Bennett, L. Li, G. Whitlock, Y. Guo, R. Collins, et al.
Physical activity and sedentary leisure time and their associations with BMI, waist circumference, and percentage body fat in 0.5 million adults: the China Kadoorie Biobank study.
Am. J. Clin. Nutr., 97 (2013), pp. 487-496
[25]
J.R. Bohnke.
Explanation in causal inference: methods for mediation and interaction.
Q J Exp Psychol (Hove), 69 (2016), pp. 1243-1244
[26]
L. Valeri, T.J. VanderWeele.
SAS macro for causal mediation analysis with survival data.
Epidemiology, 26 (2015), pp. e23-e24
[27]
T.J. VanderWeele.
Explanation in causal inference: methods for mediation and interaction.
Oxford University Press, (2015),
[28]
S. Zoungas, M. Woodward, Q. Li, M.E. Cooper, P. Hamet, S. Harrap, et al.
Impact of age, age at diagnosis and duration of diabetes on the risk of macrovascular and microvascular complications and death in type 2 diabetes.
Diabetologia, 57 (2014), pp. 2465-2474
[29]
M.E. Miller, J.D. Williamson, H.C. Gerstein, R.P. Byington, W.C. Cushman, H.N. Ginsberg, et al.
Effects of randomization to intensive glucose control on adverse events, cardiovascular disease, and mortality in older versus younger adults in the ACCORD Trial.
Diabetes Care, 37 (2014), pp. 634-643
[30]
N.K. Mungreiphy, S. Kapoor.
Efficacy of obesity indices and age in predicting diabetes: study on a transitional tribe of Northeast India.
Ethn. Dis., 24 (2014), pp. 342-348
[31]
M. Cnop, P.J. Havel, K.M. Utzschneider, D.B. Carr, M.K. Sinha, E.J. Boyko, et al.
Relationship of adiponectin to body fat distribution, insulin sensitivity and plasma lipoproteins: evidence for independent roles of age and sex.
Diabetologia, 46 (2003), pp. 459-469
[32]
K. Hotta, T. Funahashi, Y. Arita, M. Takahashi, J.W. Kowalski, T. Bek, et al.
Plasma concentrations of a novel, adipose-specific protein, adiponectin, in type 2 diabetic patients.
Arterioscler. Thromb. Vasc. Biol., 20 (2000), pp. 1595-1599
[33]
C. Weyer, T. Funahashi, S. Tanaka, K. Hotta, Y. Matsuzama, R.E. Pratley, et al.
Hypoadiponectinemia in obesity and type 2 diabetes: close association with insulin resistance and hyperinsulinemia.
J. Clin. Endocrinol. Metab., 86 (2001), pp. 1930-1935
[34]
S. Miard, F. Picard.
Obesity and aging have divergent genomic fingerprints.
Int J Obes (Lond), 32 (2008), pp. 1873-1874
[35]
N. Barzilai, D.M. Huffman, R.H. Muzumdar, A. Bartke.
The critical role of metabolic pathways in aging.
Diabetes, 61 (2012), pp. 1315-1322
[36]
T. Finkel, N.J. Holbrook.
Oxidants, oxidative stress and the biology of ageing.
Nature, 408 (2000), pp. 239-247
[37]
F. Corica, G. Bianchi, A. Corsonello, N. Mazzella, F. Lattanzio, G. Marchesini.
Obesity in the context of aging: quality of life considerations.
Pharmacoeconomics, 33 (2015), pp. 655-672
[38]
G. Li, P. Zhang, J. Wang, E.W. Gregg, W. Yang, Q. Gong, et al.
The long-term effect of lifestyle interventions to prevent diabetes in the China Da Qing Diabetes Prevention Study: a 20-year follow-up study.
Lancet, 371 (2008), pp. 1783-1789
[39]
M. Saghebjoo, Z. Nezamdoost, F. Ahmadabadi, I. Saffari, A. Hamidi.
The effect of 12 weeks of aerobic training on serum levels high sensitivity C-reactive protein, tumor necrosis factor-alpha, lipid profile and anthropometric characteristics in middle-age women patients with type 2 diabetes.
Diabetes Metab Syndr, (2017),
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