Literature DB >> 24324607

The association of maximum body weight on the development of type 2 diabetes and microvascular complications: MAXWEL study.

Soo Lim1, Kyoung Min Kim, Min Joo Kim, Se Joon Woo, Sung Hee Choi, Kyong Soo Park, Hak Chul Jang, James B Meigs, Deborah J Wexler.   

Abstract

BACKGROUND: Obesity precedes the development of type 2 diabetes (T2D). However, the relationship between the magnitude and rate of weight gain to T2D development and complications, especially in non-White populations, has received less attention. METHODS AND
FINDINGS: We determined the association of rate and magnitude of weight gain to age at T2D diagnosis (Age(T2D)), HbA1c at T2D diagnosis (HbA1c(T2D)), microalbuminuria, and diabetic retinopathy after adjusting for sex, BMI at age 20 years, lifestyles, family history of T2D and/or blood pressure and lipids in 2164 Korean subjects aged ≥30 years and newly diagnosed with diabetes. Body weight at age 20 years (Wt(20y)) was obtained by recall or from participants' medical, school, or military records. Participants recalled their maximum weight (Wt(max)) prior to T2D diagnosis and age at maximum weight (Age(max_wt)). The rate of weight gain (Rate(max_wt)) was calculated from magnitude of weight gain (ΔWt = Wt(max)-Wt(20y)) divided by ΔTime (Age(max_wt) -20 years). The mean Age(max_wt) and Age(T2D) were 41.5±10.9 years and 50.1±10.5 years, respectively. The Wt(20y) and Wt(max) were 59.9±10.5 kg and 72.9±11.4 kg, respectively. The Rate(max_wt) was 0.56±0.50 kg/year. After adjusting for risk factors, greater ΔWt and higher Rate(max_wt) were significantly associated with earlier Age(T2D), higher HbA1c(T2D) after additional adjusting for Age(T2D), and microalbuminuria after further adjusting for HbA1c(T2D) and lipid profiles. Greater ΔWt and higher Rate(max_wt) were also significantly associated with diabetic retinopathy.
CONCLUSIONS: This finding supports public health recommendations to reduce the risk of T2D and its complications by preventing weight gain from early adulthood.

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Year:  2013        PMID: 24324607      PMCID: PMC3851456          DOI: 10.1371/journal.pone.0080525

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

The world prevalence of diabetes among adults (aged 20–79 years) was 6.4%, affecting 285 million adults, in 2010, and will increase to 7.7%, and 439 million adults by 2030 [1]. Primary prevention of diabetes and its complications is now an important public health priority worldwide [2]. Obesity is the major risk factor for developing type 2 diabetes mellitus (T2D) [3]. Obesity increases insulin resistance in tissues such as muscle, liver, and adipose tissue. In response to this condition, the pancreatic beta-cells increase insulin production to decrease blood glucose level. Thus, obesity has direct connection with insulin resistance; a condition characterized by increased insulin production and impaired glucose tolerance [4]. Many studies have reported associations between body mass index (BMI) and T2D [5]–[8]. These studies have shown that besides obesity per se, an increase in body weight of 3–20 kg is associated with an elevated risk of incidence of T2D. Prevention of weight gain is beneficial for the prevention of T2D in many different ethnicities [9]–[11]. While obesity antedates the development of T2D by some years, quantitative investigation of the relationship between magnitude and rate of weight gain and the development of T2D has been relatively limited, especially in non-White populations. The present study was designed to examine the association of development of T2D and glycemia at diagnosis with weight at age 20 years, maximum lifetime weight before T2D diagnosis, age at maximum weight, and the rate of weight gain, and to identify which of these variables were most predictive of development of T2D, glucose control, and microvascular complications such as microalbuminuria and diabetic nephropathy. We hypothesized that rapid and greater weight gain would increase the risk of T2D diagnosis and its complications.

Methods

Study Population

The MAXWEL cohort was established in 2006 to investigate the effect of maximum body weight and time interval to maximum body weight on the development of T2D. We consecutively screened all individuals (n = 5,321) aged over 30 years who visited the diabetes clinic first for initial diabetes evaluation at Seoul National University Bundang Hospital (SNUBH), Seongnam, Korea, from January 2007 to December 2009. After excluding previously diagnosed cases with diabetes, we selected 2977 subjects who had confirmed T2D by glycosylated hemoglobin (HbA1c) ≥6.5%, based on the American Diabetes Association diagnosis criteria for diabetes [12], and not on antidiabetic medications for more than 1 week before. Of these, those with type 1 diabetes (measured by Glutamic Acid Decarboxylase antibody, n = 32), gestational diabetes (n = 12), or diabetes with secondary causes (n = 16). Patients with malignancy (n = 44), chronic obstructive pulmonary disease (n = 68), depression and/or eating disorder (n = 39), chronic gastrointestinal disorders (n = 39), any medication for weight control for more than 3 months (n = 37), and organ transplantation (n = 4) were excluded. Another 522 subjects were excluded because they were not able to recall their maximum weight or age at maximum weight. They were similar to other participants in anthropometric and biochemical parameters such as age, sex, and glucose control. A total of 2164 newly detected T2D subjects (1220 men and 944 women) men from 2007 to 2009 were included in the current analysis. Medical history and biochemical tests including fasting glucose, HbA1c, and lipid profiles were obtained at the first visit. The protocol was reviewed and approved by the institutional review board (IRB) of SNUBH (No. B-0909/083-008) and the patient informed consent requirement was waived by the IRB.

Assessment of Weight-related Information

Body weight at age 20 years (Wt20y) was obtained in 94.5% of study subjects from the following sources: medical records, military service or college examination records, or personal recording. The remaining 5.5% self-reported their Wt20y. Maximum weight before T2D diagnosis (Wtmax) and age at maximum weight (Agemax_wt) were also self-reported. Weight around pregnancies was disregarded. In 31.3% subjects who were randomly selected from all participants (n = 678), the recalled Wtmax was validated by written document, and the agreement rate was high (r = 0.91). We calculated the rate of weight gain (Ratemax_wt), which was defined as the slope, where weight change (in kilograms) from age 20 years to maximum weight was divided by the time between age 20 years and age at maximum weight (in years). Definition of weight-related variables and study design were shown in .
Figure 1

Definitions of weight-related variables and study design.

Assessment of Lifestyle and Characteristics

Interviews were conducted by designated physicians using a standardized survey querying smoking status, alcohol consumption, and exercise habits. Smoking status was divided into three categories: current smokers, ex-smokers and never smokers. Alcohol intake was assessed by frequency and quantity of beer, spirit, sake, and wine intake during the last 12 months. Alcohol intake in grams of alcohol per week was categorized into two categories: ≤ moderate (≤199.9 g/week) and heavy intake (≥200 g/week). Physical activity was classified into three categories: no, irregular (≤2/wk) and regular (≥3/wk) exercise. One episode of exercise was defined as exercising for at least 30 min.

Anthropometric and Biochemical Parameters

Height and body weight were measured at the time of T2D diagnosis by standard methods. BMI was calculated as body weight divided by the height squared (kg/m2). Blood pressure measurements were made after subjects had remained seated for 10 min. Measurements were made twice, with a 5-min rest period; the mean value of measurements was used. We measured HbA1c for diabetes diagnosis along with fasting glucose and insulin and other biochemical parameters in a 12-h fasting state. HbA1c was measured by Bio-Rad Variant II Turbo HPLC analyzer (Bio-Rad, Hercules, CA, USA) in SNUBH, the National Glycohemoglobin Standardization Program (NGSP) level II certified laboratory. The fasting plasma concentrations of glucose, total cholesterol, triglyceride, and high-density lipoprotein (HDL) cholesterol were measured using the Hitachi 747 chemistry analyzer (Hitachi, Tokyo, Japan). Fasting plasma insulin concentrations were measured by radioimmunoassay (Linco, St. Louis, MO, USA).

Microalbuminuria

Urinary albumin levels were measured by turbitimer assay (A&T 502X, A&T, Tokyo) and urine creatinine levels were measured by the Jaffe method (Hitachi 7170, Hitachi, Tokyo) to calculate spot urine albumin-to-creatinine ratio (UACR). Microalbuminuria was defined by UACR ≥30 (mg/g).

Diabetic Retinopathy

Complete ophthalmologic examinations including funduscopy on the entire retina after mydriasis were performed on all patients by two ophthalmologists. After the thorough funduscopic examination, patients showing any features of diabetic retinopathy underwent color fundus photography using mydriatic 45° fundus camera (VX-10α, Kowa Inc., Nagoya, Japan). The presence and severity of diabetic retinopathy were graded based on international clinical diabetic retinopathy severity scales proposed by the Global Diabetic Retinopathy Project Group [13]. Non-proliferative diabetic retinopathy (NPDR) was defined as the presence of at least one definite retinal hemorrhage and/or microaneurysm. Subjects were assigned to the PDR group when retinal neovascularization was visible on retinal photographs.

Statistical Analysis

All data are presented as the mean and SD, and were analyzed using SPSS for Windows version 17.0 (SPSS Inc., Chicago, IL, USA). The distributions of triglycerides and UACR were skewed (Kolmogorov-Smirnov Z = 1.22 and Z = 1.19, both P<0.05). Those values were normalized by logarithmic transformation for all analyses. The variables were compared using student’s t or χ2 tests. Correlations between variables were analyzed using Pearson’s correlation. We compared mean values of AgeT2D, HbA1cT2D and microalbuminuria, and prevalence of diabetic retinopathy between the highest and lowest quartile of Ratemax_wt. To test independent association of weight variables, we performed three multivariable linear regression models for AgeT2D, HbA1cT2D and UACR, respectively, and one multivariable logistic regression model for diabetic retinopathy. For AgeT2D, ΔWt and Ratemax_wt were included as key independent variables in the multivariable linear regression model with sex, BMI20y, alcohol consumption, smoking status, exercise habits and family history of diabetes as covariates. In the multivariable linear regression analysis for HbA1cT2D, AgeT2D was additionally added as a covariate because glycaemic control might be influenced by age of diagnosis. For log-transformed UACR, AgeT2D, systolic blood pressure (SBP), diastolic blood pressure (DBP), HbA1cT2D, and log-transformed triglycerides/HDL-cholesterol ratio were additionally added to the multivariable linear regression model because these variables might be able to affect kidney function. To assess multicollinearity of the linear regression models, we checked the variance inflation factor of variables. For diabetic retinopathy (combined NPDR and PDR), a multivariable logistic regression analysis was performed with the same variables used in the model for UACR; SBP≥140 mmHg or blood pressure medication indicated hypertension to obtain an odds ratio. Since multiple tests were performed in the analysis, we adjusted the number (n = 4) of phenotypes, by multiplying P values by 4. These significance thresholds are conservative given correlation among the phenotype traits themselves. Statistical significance was defined as P<0.05.

Results

Baseline Characteristics of the Participants

The baseline characteristics of the 2164 participants are shown in . The ranges of AgeT2D and BMIT2D were 30–75 years and 15.4–40.1 kg/m2, respectively. Almost half of participants had a family history of diabetes. About one fourth of participants (24.3%) had microalbuminuria defined by ≥30 of UACR, and one eighth of participants (12.4%) had diabetic retinopathy at the time of T2D diagnosis.
Table 1

Anthropometric and biochemical parameters at T2D diagnosis and weight related variables*.

MeanSD
Female (%)43.6%
AgeT2D (years)50.110.5
Height (cm)163.38.8
Weight (kg)68.011.9
BMI (kg/m2)25.43.7
SBP (mmHg)130.315.8
DBP (mmHg)78.410.8
Total cholesterol (mg/dl)202.039.5
Triglycerides (mg/dl)159.492.9
HDL-cholesterol (mg/dl)51.213.4
Fasting plasma glucose (mg/dl)107.629.1
Fasting plasma insulin (µIU/ml)153.26343
HbA1cT2D (%)8.01.5
UACR (urine albumin-to-creatinine, mg/g Cr)72.8335.7
Family history of diabetes47.4%
Smoking status Non 60.9%
Ex 13.1%
Current 26.0%
Alcohol consumption ≤ Moderate 86.4%
Heavy 13.6%
Exercise habits No 24.4%
Irregular 42.5%
Regular 33.1%
Diabetic retinopathy Normal 87.6%
Nonproliferative diabetic retinopathy 9.0%
Proliferative diabetic retinopathy 3.4%
Weight related variables
BMI20y (BMI at age 20 year, kg/m2)22.43.1
Wtmax (Maximum weight, kg)72.911.4
Wt20y (weight at age 20 years, kg)59.910.5
ΔWt (Wtmax – Wt20y)13.08.5
Agemax_wt (Age at maximum weight, years)41.510.9
ΔTime (Agemax_wt –20 years)21.510.9
Ratemax_wt (ΔWt/ΔTime)0.560.50

Data are mean and SD or percent.

Data are mean and SD or percent.

Weight-related Variables

Weight at age 20 years was 59.9 and maximum lifetime weight was 72.9 kg, resulting in 13.0 kg of change in body weight from age 20 years to maximum weight (ΔWt) ( ). Age at maximum weight (Agemax_wt) was 41.5 years and accordingly it was 21.5 years from age 20 years to Agemax_wt before T2D diagnosis (ΔTime). From these two variables, the Ratemax_wt was calculated to be 0.56 kg/year. Seventy four subjects (3.4%) of all participants reported weight loss since age 30 years. In comparison between genders, men showed greater and more rapid weight gain than women.

Association among AgeT2D, ΔWt, and ΔTime

shows a three-dimensional graph illustrating association among AgeT2D, ΔWt, and ΔTime without the participants who lost weight (n = 74). The AgeT2D decreased as ΔWt increased and as ΔTime decreased (Pearson’s correlation coefficients were –0.220 between AgeT2D and ΔWt and 0.495 between AgeT2D and ΔTime, both P<0.01). This illustrates subjects with greater weight gain and shorter duration to maximum weight showed a tendency to be diagnosed with T2D earlier.
Figure 2

Three-dimensional graphs showing the association among three factors: AgeT2D (age at diagnosis of type 2 diabetes), ΔWt (maximum weight in lifetime – weight at age 20 years), and ΔTime (age at maximum weight –20 years).

Comparison between Rapid and Slow Weight Gainers

After excluding 74 participants who lost weight, we compared AgeT2D, HbA1cT2D, microalbuminuria, and diabetic retinopathy ( ) between the highest (4.51±9.84, n = 531) and lowest (0.14±0.09, n = 534) quartiles of Ratemax_wt. The rapid weight gainers showed earlier T2D diagnosis (AgeT2D), higher HbA1c level at diagnosis (HbA1cT2D), and greater log-transformed UACR than those of lower weight gainers (42.1±9.2 years vs. 57.3±8.6 years, 8.5±1.7% vs. 7.6±1.1%, and 3.0±1.6 vs. 2.3±1.6, respectively, all P<0.01). The prevalence of diabetic retinopathy was also higher in rapid compared to slow weight gainers.
Figure 3

Comparison of age at T2D diagnosis, HbA1c at T2D diagnosis, microalbuminuria, and diabetic retinopathy between rapid and slow weight gainers defined as the highest and lowest quartiles of Ratemax_wt.

Mean values with 25–75% ranges in box and 5–95% ranges in outer lines are displayed in Box and Whisker plots. Outliers who do not belong to the 5–95% ranges are displayed as dots. Log-transformed urine albumin-to-creatinine ratio was used for microalbuminuria. *indicates P<0.01.

Comparison of age at T2D diagnosis, HbA1c at T2D diagnosis, microalbuminuria, and diabetic retinopathy between rapid and slow weight gainers defined as the highest and lowest quartiles of Ratemax_wt.

Mean values with 25–75% ranges in box and 5–95% ranges in outer lines are displayed in Box and Whisker plots. Outliers who do not belong to the 5–95% ranges are displayed as dots. Log-transformed urine albumin-to-creatinine ratio was used for microalbuminuria. *indicates P<0.01.

Association with AgeT2D

In the multivariable linear regression for AgeT2D ( ), greater BMI20y, heavy alcohol consumption, no exercise, positive family history of diabetes, greater ΔWt and higher Ratemax_wt were significantly associated with earlier AgeT2D. When the diagnosis of T2DM was based on fasting glucose concentration (≥126 mg/dl), similar result was obtained (data not shown).
Table 2

Variables associated with age at T2D diagnosis, HbA1c at T2D diagnosis, and urine albumin-to-creatinine ratio (UACR) at T2D diagnosis.

StandardizedBeta P * 95% CI
LowerUpper
a. For age at T2D diagnosis
BMI20y (kg/m2)−0.090.001−0.46−0.17
Alcohol (moderate or less vs. heavy)−0.050.044−2.82−0.22
Smoking (non vs. ex vs. current)−0.16<0.001−2.73−1.71
Exercise (regular vs. irregular vs. no)−0.050.024−2.04−0.22
Family history of diabetes (no vs. yes)−0.10<0.001−3.12−1.51
ΔWt (kg)−0.22<0.001−0.35−0.03
Ratemax_wt (kg/year)−0.17<0.001−0.37−0.03
b. For HbA1c at T2D diagnosis
AgeT2D (year)−0.15<0.001−0.04−0.02
Smoking (non vs. ex vs. current)0.060.0160.030.20
Exercise (regular vs. irregular vs. no)0.030.023−0.040.22
ΔWt (kg)0.16<0.0010.020.04
Ratemax_wt (kg/year)0.12<0.0010.020.04
c. For UACR # at T2D diagnosis
BMI20y (kg/m2)0.07<0.0010.010.06
SBP (mmHg)0.08<0.0010.010.02
HbA1cT2D (%)0.17<0.0010.140.23
Log-triglyceride/HDL-cholesterol0.060.0400.534.72
ΔWt (kg)0.14<0.0010.020.05
Ratemax_wt (kg/year)0.10<0.0010.010.04

Corrected P by Bonferroni method,

Common covariates: sex, BMI20y, SBP, DBP, alcohol intake, smoking status, exercise habit, family history of diabetes, ΔWt, and Ratemax_wt.

Common covariates+AgeT2D,

Common covariates+AgeT2D+HbA1cT2D+log-triglyceride/HDL-cholesterol.

Log-transformed value was used.

Corrected P by Bonferroni method, Common covariates: sex, BMI20y, SBP, DBP, alcohol intake, smoking status, exercise habit, family history of diabetes, ΔWt, and Ratemax_wt. Common covariates+AgeT2D, Common covariates+AgeT2D+HbA1cT2D+log-triglyceride/HDL-cholesterol. Log-transformed value was used.

Association with HbA1cT2D

In the multivariable linear regression analysis additionally adjusted for AgeT2D ( ), the subjects with early diagnosis of T2D diagnosis, ever smoker, no exercise, greater ΔWt, and higher rate of weight gain showed higher HbA1c level at diagnosis.

Association with UACR

We conducted another multivariable linear regression analysis for UACR with weight-related variables ( ). In addition to covariates used in previous model, SBP, log-transformed triglycerides/HDL-cholesterol ratio, and HbA1cT2D were added as covariates. High BMI at age 20 years, high SBP, high HbA1cT2D, high log-triglyceride/HDL-cholesterol, greater ΔWt, and higher rate of weight gain were significantly associated with log-transformed UACR ( ). Variance inflation factors of all independent factors were less than 1.21, suggesting that there was no significant collinearity among the covariates in the regression models.

Variables Associated with Diabetic Retinopathy

Using a multivariable logistic regression model, we further investigated the independent risk of weight-related variables for the concomitant diabetic retinopathy, where NPDR and PDR were combined. After adjusting for the same variables used in the model for UACR, high BMI at age 20 years, high SBP or medication, high HbA1cT2D, greater ΔWt, and high rate of weight gain were found to be significantly associated with presence of diabetic retinopathy at the time of T2D diagnosis ( ).
Table 3

Variables associated with diabetic retinopathy† ‡.

OR95% CI P *
LowerUpper
BMI20y (kg/m2)1.071.011.130.002
SBP/DBP≥140/90 mmHg or blood pressure medication2.862.214.41<0.001
HbA1cT2D (%)1.221.121.31<0.001
ΔWt (kg)1.031.011.05<0.001
Ratemax_wt (kg/year)1.021.011.050.032

Corrected P by Bonferroni method,

Covariates: AgeT2D, sex, BMI20y, SBP/DBP≥140/90 mmHg or blood pressure medication, alcohol intake, smoking status, exercise habit, family history of diabetes, HbA1cT2D, log-triglyceride/HDL-cholesterol, ΔWt, and Ratemax_wt,

Both nonproliferative and proliferative diabetic retinopathy were combined.

Corrected P by Bonferroni method, Covariates: AgeT2D, sex, BMI20y, SBP/DBP≥140/90 mmHg or blood pressure medication, alcohol intake, smoking status, exercise habit, family history of diabetes, HbA1cT2D, log-triglyceride/HDL-cholesterol, ΔWt, and Ratemax_wt, Both nonproliferative and proliferative diabetic retinopathy were combined.

Gender Difference in the Association of Weight Variables with Diabetic Complications

In gender-specific comparison, similar results were found with slight attenuation in the association of the Ratemax_wt with age at T2D diagnosis, HbA1c at T2D diagnosis, urine albumin-to-creatinine ratio at T2D diagnosis (Table A in for men and Table B in for women), and diabetic retinopathy (Table C in for men and Table D in for women), respectively.

Discussion

In the MAXWEL cohort, greater and rapid weight gain were significant predictors of early diagnosis of T2D, high HbA1c level at diagnosis, and microalbuminuria independent of other important clinical variables. The magnitude and the rate of weight gain were also independently associated with diabetic retinopathy. These results quantitate the increased risk associated with magnitude and rate of weight gain, which are associated with earlier diagnosis of diabetes, poor glycemic control, and microvascular complications, independent of other common risk factors. Previous studies mainly focused on amount of weight gain during a certain period. In the US First National Health and Nutrition Examination Survey, weight gain for 10 years was associated with substantially increased risk of diabetes among overweight adults [14]. Another study from US showed that there was a progressive rise in weight before development of diabetes [15]. More specifically, in a previous study, gain of >10% of body weight was associated with a significant increase in risk of T2D compared with stable weight after adjustment for multiple risk factors including initial BMI [7]. In another study, weight gain dose-dependently increased risk of T2D even among non-obese men with a low initial BMI <21 kg/m2 [16]. In contrast with previous studies, we considered time and magnitude of weight gain together. In our study, the beta coefficient of rate of weight gain for age at T2D diagnosis was −0.166, corresponding to 1 year earlier T2D diagnosis with 6 kg/year of rate in weight gain (−0.996 year = −0.166 year/kg × 6 kg). The impact of obesity or weight gain on T2D incidence may differ depending on when obesity is assessed [16]–[18]. A previous study from Pima Indians showed that weight in childhood and adolescence was one of the most significant predictors of T2D [19]. Ford et al. found that participants who gained more than 5 kg over the previous 10 years had a higher chance of diabetes compared with participants whose weights remained relatively stable, even at overweight or obese levels, in a US national cohort [5]. A study from the UK showed that >10% weight gain was associated with a significant increase in risk of T2D compared to stable weight after adjustment for initial BMI [7]. These results show that the time and magnitude of weight gain should be taken into account when the impact of body weight on T2D incidence is assessed. Pancreatic β-cell function starts to deteriorate from early age [20]. A study with healthy, glucose tolerant Caucasians showed that β-cell function is greatest around age 20 years and declines with age at a rate of about 1% per year [21], providing the rationale for choosing age 20 years as the baseline in our study. In contrast, insulin sensitivity was not affected by aging within the time frame studied [21]. A study demonstrated that the risk of diabetes increases with early weight gain and decreases with later weight loss [22]. Another study showed that BMI in childhood was a negative and independent predictor of insulin secretion at adulthood after adjusting for age, sex, and fat percent, indicating that pancreatic β-cell capacity may be set early in life [23]. Conceivably, rapid increase of weight could be more damaging to pancreatic β-cell function than slow increase, given the briefer period of time available to adapt to weight increase [24]. Taken together, these data suggest that rapid weight gain is more harmful to pancreatic function than slow weight gain, particularly in younger age. The current study extends prior work by providing the detriments of weight gain on concomitant microvascular complications of T2D. In a study from the Atherosclerosis Risk in Communities, weight gainers had significantly less favorable glucose and lipid levels when compared with weight maintainers [25]. Another study showed that greater weight gain was associated with glycaemic progression in non-diabetic subjects [26]. In the present study, rapid weight gainers showed earlier diagnosis of T2D, higher level of HbA1c, and higher prevalence of microalbuminuria and diabetic retinopathy compared to relatively slow weight gainers. Although rapid weight gain may indicate other comorbidities compared to slow weight gain, these findings highlight the importance of the dynamics of weight change associated with development of T2D, glycemic control, and diabetic microvascular complications. Several mechanisms for the weight gain and development of T2D and its complication can be postulated. Weight gain, particularly rapid increase in adiposity, leads to the alteration in gene expression of growth factors and cytokines such as transforming growth factor-β that are important in the development of diabetes and obesity-associated glomerular injury [27]. Hyperlipidemia, commonly accompanied by obesity, is a risk factor for the development of albuminuria by promoting glomerular injury through renal upregulation of sterol-regulatory element-binding proteins, which in turn induces mesangial cell proliferation and cytokine synthesis [28]. The prevalence of diabetic retinopathy was also associated with rapid and greater weight gain in our study. Obese people were 6.5 times more likely to have PDR than were those with normal weight, and the degree of obesity was positively associated with increasing severity of diabetic retinopathy [29]. These findings suggest that diabetic retinopathy is a multifactorial microvascular complication, which is associated with obesity, hyperglycemia, and blood pressure. The MAXWEL cohort has several novel strengths. First, weight information at age 20 years was accurately obtained from official written documents in 94.5% of participants. Second, identification of diabetes was based on laboratory results, not based on self-report. Third, only newly detected subjects with diabetes were included, which enabled us to assess glycaemia and status of diabetic complications at the time of diagnosis. The primary limitation of this study is its cross-sectional design with retrospective components: the identification of maximum weight and age at maximum weight were based on self-report. When prevalence estimates for obesity were compared, it was found that bias in self-reported weight was smaller in-person interviews than in telephone interviews [30]. In the setting of rigorous in-person interviews by physicians, it has been shown that relationships between self-reported and measured weight are strong [31]. In our sample, self-reported weight was highly accurate in randomly selected subjects. In addition, we did not assess weight fluctuation, which may affect pancreatic β-cell function [32], [33]. However, effect of weight fluctuation has not been significant after adjustment for overall weight status or attained BMI in previous studies [32], [33]. In conclusion, we found that both rapid and great weight gain were associated with not only early development of T2D and glycemic status but also microalbuminuria and diabetic retinopathy. These results support public health recommendations to reduce the risk of T2D and its microvascular complications by preventing weight gain from adolescent or early adulthood. Healthcare providers may also consider reviewing patients’ weight histories when assessing their T2D risk. Supporting Tables: Table A. Variables associated with age at T2D diagnosis, HbA1c at T2D diagnosis, and urine albumin-to-creatinine ratio (UACR) at T2D diagnosis in men. Table B. Variables associated with age at T2D diagnosis, HbA1c at T2D diagnosis, and urine albumin-to-creatinine ratio (UACR) at T2D diagnosis in women. Table C. Variables associated with diabetic retinopathy in men. Table D. Variables associated with diabetic retinopathy in women. (DOCX) Click here for additional data file.
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Review 4.  The role of obesity and its bioclinical correlates in the progression of chronic kidney disease.

Authors:  Laura Chalmers; Fredrick J Kaskel; Oluwatoyin Bamgbola
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5.  Trends in national and state-level obesity in the USA after correction for self-report bias: analysis of health surveys.

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Authors:  C P Wilkinson; Frederick L Ferris; Ronald E Klein; Paul P Lee; Carl David Agardh; Matthew Davis; Diana Dills; Anselm Kampik; R Pararajasegaram; Juan T Verdaguer
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Journal:  Diabetes       Date:  1995-03       Impact factor: 9.461

10.  The association of unintentional changes in weight, body composition, and homeostasis model assessment index with glycemic progression in non-diabetic healthy subjects.

Authors:  Eun-Jung Rhee; Ji-Hun Choi; Seung-Hyun Yoo; Ji-Cheol Bae; Won-Jun Kim; Eun-Suk Choi; Se Eun Park; Cheol-Young Park; Seok Won Park; Ki-Won Oh; Sung-Woo Park; Sun-Woo Kim; Won-Young Lee
Journal:  Diabetes Metab J       Date:  2011-04-30       Impact factor: 5.376

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  7 in total

Review 1.  Lifestyle precision medicine: the next generation in type 2 diabetes prevention?

Authors:  Pascal M Mutie; Giuseppe N Giordano; Paul W Franks
Journal:  BMC Med       Date:  2017-09-22       Impact factor: 8.775

Review 2.  Body mass index and risk of diabetic retinopathy: A meta-analysis and systematic review.

Authors:  Yue Zhou; Yuezhi Zhang; Ke Shi; Changyun Wang
Journal:  Medicine (Baltimore)       Date:  2017-06       Impact factor: 1.889

3.  Retinal Vascular Tortuosity and Diameter Associations with Adiposity and Components of Body Composition.

Authors:  Robyn J Tapp; Christopher G Owen; Sarah A Barman; Roshan A Welikala; Paul J Foster; Peter H Whincup; David P Strachan; Alicja R Rudnicka
Journal:  Obesity (Silver Spring)       Date:  2020-07-29       Impact factor: 5.002

4.  The Influence of Diabetes Mellitus on the Risks of End-Stage Kidney Disease and Mortality After Liver Transplantation.

Authors:  Chung-Ying Lee; Mei-Yi Wu; Hsiu-Chen Chan; Tzu-Ting Chen; Le-Yin Hsu; Mai-Szu Wu; Yih-Giun Cherng
Journal:  Transpl Int       Date:  2022-02-07       Impact factor: 3.782

5.  Prevalence and associated factors of diabetic retinopathy in Beijing, China: a cross-sectional study.

Authors:  Jing Cui; Ji-Ping Ren; Dong-Ning Chen; Zhong Xin; Ming-Xia Yuan; Jie Xu; Qi-Sheng You; Jin-Kui Yang
Journal:  BMJ Open       Date:  2017-08-30       Impact factor: 2.692

6.  Association of Metabolic Markers with self-reported osteoarthritis among middle-aged BMI-defined non-obese individuals: a cross-sectional study.

Authors:  Kelsey H Collins; Behnam Sharif; Raylene A Reimer; Claudia Sanmartin; Walter Herzog; Rick Chin; Deborah A Marshall
Journal:  BMC Obes       Date:  2018-09-03

7.  Is central obesity associated with diabetic retinopathy in Chinese individuals? An exploratory study.

Authors:  Jian-Bo Zhou; Jing Yuan; Xing-Yao Tang; Wei Zhao; Fu-Qiang Luo; Lu Bai; Bei Li; Jia Cong; Lu Qi; Jin-Kui Yang
Journal:  J Int Med Res       Date:  2019-09-23       Impact factor: 1.671

  7 in total

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