Skip to main content
Erschienen in: Diabetologia 2/2017

Open Access 25.11.2016 | Article

Nonlinear association of BMI with all-cause and cardiovascular mortality in type 2 diabetes mellitus: a systematic review and meta-analysis of 414,587 participants in prospective studies

verfasst von: Francesco Zaccardi, Nafeesa N. Dhalwani, Dimitris Papamargaritis, David R. Webb, Gavin J. Murphy, Melanie J. Davies, Kamlesh Khunti

Erschienen in: Diabetologia | Ausgabe 2/2017

Abstract

Aims/hypothesis

The relationship between BMI and mortality has been extensively investigated in the general population; however, it is less clear in people with type 2 diabetes. We aimed to assess the association of BMI with all-cause and cardiovascular mortality in individuals with type 2 diabetes mellitus.

Methods

We searched electronic databases up to 1 March 2016 for prospective studies reporting associations for three or more BMI groups with all-cause and cardiovascular mortality in individuals with type 2 diabetes mellitus. Study-specific associations between BMI and the most-adjusted RR were estimated using restricted cubic splines and a generalised least squares method before pooling study estimates with a multivariate random-effects meta-analysis.

Results

We included 21 studies including 24 cohorts, 414,587 participants, 61,889 all-cause and 4470 cardiovascular incident deaths; follow-up ranged from 2.7 to 15.9 years. There was a strong nonlinear relationship between BMI and all-cause mortality in both men and women, with the lowest estimated risk from 31–35 kg/m2 and 28–31 kg/m2 (p value for nonlinearity <0.001) respectively. The risk of mortality at higher BMI values increased significantly only in women, whilst lower values were associated with higher mortality in both sexes. Limited data for cardiovascular mortality were available, with a possible inverse linear association with BMI (higher risk for BMI <27 kg/m2).

Conclusions/interpretation

In type 2 diabetes, BMI is nonlinearly associated with all-cause mortality with lowest risk in the overweight group in both men and women. Further research is needed to clarify the relationship with cardiovascular mortality and assess causality and sex differences.
Begleitmaterial
Hinweise

Electronic supplementary material

The online version of this article (doi:10.​1007/​s00125-016-4162-6) contains peer-reviewed but unedited supplementary material, which is available to authorised users.
Abkürzungen
NOS
Newcastle–Ottawa Scale
SNP
Single nucleotide polymorphism

Introduction

Compared with the general population, diabetes mellitus is associated with a higher mortality, mainly attributable to cardiovascular causes [1]. In 2012, an estimated 1.5 million deaths were directly caused by diabetes and by 2030 diabetes is expected to be the seventh leading cause of death worldwide [2]. Being overweight or obese is one of the main modifiable risk factors for type 2 diabetes mellitus, and obesity has been significantly associated with an increased mortality risk in the general population [3]. However, evidence on the association between obesity and mortality in patients with diabetes remains inconclusive with some studies reporting an inverse association between obesity (estimated using the conventional measure of BMI) and mortality [46], some reporting U-shaped associations [7, 8], some reporting linear positive associations [9, 10], and some reporting no association [11].
A recent study investigating the relationship between BMI and mortality in 10,568 people with type 2 diabetes found a lower mortality risk in overweight (BMI ≥25 kg/m2), higher mortality risk in underweight (≤18.5 kg/m2), and a similar mortality risk in obese (BMI ≥30 kg/m2) people compared with those with normal weight, indicating a nonlinear association between BMI and all-cause mortality [12]. A recent systematic review including nine studies reported a reduced risk of all-cause mortality in overweight and obese people with type 2 diabetes when compared with normal or non-overweight people and a 5% progressive decrease in mortality for every 5 kg/m2 increase in BMI [13]. This analysis, however, did not explore whether a nonlinear relationship exists between BMI and outcomes. This is particularly relevant, given the possible presence of nonlinearity for BMI values within the category of overweight or obesity. Moreover, a clearer determination of the relationship across BMI values would elucidate the comparative relevance of higher and lower BMI values on mortality risk in people with diabetes.
To help clarify the evidence, we conducted a systematic review and meta-analysis of prospective studies to examine the shape of association of BMI with all-cause and cardiovascular mortality in individuals with type 2 diabetes mellitus.

Methods

This meta-analysis was performed following the Meta-analysis Of Observational Studies in Epidemiology (MOOSE) recommendations [14].
Data sources, searches and study selection
Three independent investigators searched for prospective studies reporting associations between BMI and all-cause and cardiovascular mortality in people with type 2 diabetes mellitus using the databases PubMed, Web of Science, and Scopus. The search strategy combined keywords related to the exposure (i.e. ‘obesity’ OR ‘body mass index’ OR ‘BMI’), population (i.e. ‘diabetes’ OR ‘type 2 diabetes’), outcome (i.e. ‘cardiovascular’ OR ‘vascular’ OR ‘mortality’) and study design (i.e. ‘cohort’ OR ‘longitudinal’) and included articles published in English before 1 March 2016 (details of the search strategy are reported in the electronic supplementary material [ESM]). Reference lists of retrieved articles were also manually scanned for all relevant additional studies and reviews. Prospective studies were included if the RR of cardiovascular or all-cause mortality was reported for at least three BMI categories (one referent and two nonreferent). When multiple publications reported associations from the same cohort, we included the one with the longest follow-up or the largest sample size. We excluded studies including only participants with type 1 diabetes, or only participants with prevalent cardiovascular disease at baseline, or hospitalised patients. If studies reported estimates stratified by prevalent cardiovascular disease at baseline, we used data for participants without baseline cardiovascular disease.
Data extraction and quality assessment
We used standardised, pre-defined forms for data extraction and quality assessment. We abstracted data on first author name; year of journal publication; study location and follow-up duration; population age, source, sex distribution; baseline prevalence of cardiovascular disease; exposure definition and assessment; endpoint definition and ascertainment; and adjustment level. For each reported category of BMI, we collected data on: mean or median BMI value; number of participants (or person-years of follow-up); number of cases; and the RR with 95% CI. If category-specific mean or median BMI was not reported, we assumed the BMI value to be the midpoint between lower and upper boundaries; if one boundary was not reported in the first or last category, we assumed the difference between boundaries to be equal to that of the adjacent category. When studies published more than one adjusted RR, we extracted the most-adjusted estimate. When reported, we extracted data separately for men and women. We contacted study authors when it was not possible to extract data from published reports. Study quality was assessed by two authors using the nine-star Newcastle–Ottawa Scale (NOS) [15] and discrepancies were resolved by consensus or independent arbitration.

Data synthesis and analysis

For each outcome, we extracted RRs with 95% CIs for men, women and both. When studies only reported association separately for men and women, a within-study summary estimate was computed by fixed-effect meta-analysis. A similar summary estimate was calculated for one study reporting associations stratified by age. To assess the relationship between BMI and outcomes, we performed a two-stage random-effects dose–response meta-analysis [1618]. In the first stage, we modelled BMI values using restricted cubic splines with three knots at 10%, 50% and 90% percentile of the BMI distribution. We then estimated study-specific trend between RRs and the two BMI spline transformations with a generalised least squares method, which accounts for the correlation within each set of RRs [16]. In the second stage, the two study-specific regression coefficients were combined in a multivariate random-effects meta-analysis using the restricted maximum likelihood method [19]. We used coefficients obtained from multivariate meta-analysis to perform a Wald-type test for the hypothesis of no exposure–disease association (both regression coefficients equal to zero) and of nonlinearity (second spline coefficient equal to zero) [20]. We assessed heterogeneity between sexes with a multivariate meta-regression. Publication bias was estimated with the Egger’s test [21]. We conducted a sensitivity analysis excluding studies that only report unadjusted effect estimates to assess whether the associations between BMI and mortality change. Furthermore, the association between BMI and several chronic conditions has been reported to vary in different demographic regions; therefore we also assessed whether there was any statistically significant heterogeneity in the association between BMI and mortality by regions (USA, Europe and UK, Asia) using multivariate meta-regression and also stratified the analysis by regions. In addition, use of medications may affect the mortality risk, and considering the changes in the guidelines for the management of diabetes and use of glucose-lowering therapies over the study period we conducted a multivariate meta-regression categorising the study periods as 2003–2010, 2011–2013, 2014–2015) to assess whether there were significant differences in the effect estimates by the time of the study. We also performed additional sensitivity analyses with three knots at different positions (e.g. 25th, 50th and 75th percentile) to assess whether the shape of the association changed.
Analyses were performed using Stata 14.1 [22, 23] and R [24, 25]. Two-sided p value <0.05 was considered statistically significant.

Results

Study characteristics
Our initial search yielded 38,615 articles. After screening of title/abstract and exclusion of duplicates, 70 articles remained for further evaluation (Fig. 1). Following detailed assessments, and after the inclusion of three articles identified from manual searches, 21 articles were included in the quantitative analysis (21 studies and 24 unique cohorts; Table 1) [7, 8, 11, 15, 2642]. Study characteristics and the NOS scores are provided in ESM Tables 13. Out of the 21 studies included, ten (48%) had an NOS score of 8, whilst two (10%) studies had NOS scores of 9 or 5, indicating that most of the studies included were of good or high quality. Overall, information was available for 414,587 male and female participants with 61,889 and 4470 incident all-cause and cardiovascular mortality events, respectively. In nine studies associations were reported separately for men and women (Table 1). The mean (or median) duration of follow-up ranged from 2.7 to 15.9 years and the mean baseline age ranged from 40 to 77 years. All but three studies adjusted for age and sex (when appropriate) and diagnosis of diabetes was mainly self-reported or based on biochemical measurements (ESM Tables 1 and 2). Ten studies (47.6%) with 214,694 participants (51.8%) included people from the USA or UK, whilst seven studies were from elsewhere in Europe, one multinational, and one each from Iran, South Korea, and Taiwan.
Table 1
Characteristics of the included studies
      
Number of events
 
Study
First author [Ref]
Country, year
Male (%)
Mean age (years)a
Mean follow-up (years)
Number of participants
All-cause mortality
CVD mortality
Stratified by sex
Bozorgmanesh [26]
Iran, 2014
44.6
53.6
9.1b
1322
108
Chaturvedi [27]c
Multinational, 1995
47.3
47.2
12.0
2740
544
Church [28]
US, 2005
100
50.0
15.9
2316
179
Costanzo [15]
UK, 2015
54.0
63.0b
10.6b
10,568
3744
Eeg-Olofsson [29]
Sweden, 2009
55.7
60.3
5.6
13,087
664
Jackson [30]d
US, 2014
40.0
57.2
9.0e
2035
247
Khalangot [11]
Ukraine, 2009
33.6
64.7
2.7
81,603
6570
2677
Kokkinos [7]
US, 2012
100
60.0
7.5b
4156
1074
Logue [31]f
Scotland, 2013
54.7
59.5
4.7
106,640
9631
Ma [32]f
South Korea, 2012
39.2
57.1
9.2
845
50
McEwen [8]f
US, 2007
47.0
61.0
3.7
8445
758
322
Menke [33]
US, 2014
50.7
56.9
6.5
2543
668
259
Murphy [34]
Iceland, 2014
55.3
77.4
6.7b
637
188
Perotto [35]f
Italy, 2013
43.8
68.7
10.2b
1475
972
498
Sluik [36]
Europe, 2011
53.8
57.3
9.3b
5435
641
Thomas [37]
UK, 2014
53.0
60.0
5.0b
37,272
1762
Tobias [38]
US, 2014
21.5
61.4
15.8
11,427
3083
Tseng [39]
Taiwan, 2012
46.0
60.7
12.0
89,056
26,951
Tuomilehto [40]
Malta, 1994
40.0
>40
5.0
295
39
Zhao [41]f,g
US, 2014
37.8
52.3
8.7
29,292
3033
Zoppini [42]
Italy, 2003
48.2
65.3
10.0
3398
1212
485
aWhen not reported for the overall population, the value has been estimated as weighted mean
bMedian
cThree cohorts
dNon-smokers
eMaximum follow-up
fAdditional data available from correspondence
gTwo cohorts
All-cause mortality
Overall, 18 studies comprising 407,270 participants and 60,815 all-cause death events were included in the analysis; study-specific associations are reported in ESM Figs 13. As shown in Fig. 2, there was an overall nonlinear relationship between BMI and all-cause mortality (p value for no exposure–disease association <0.001; p value for nonlinearity <0.001). The lowest risk was at BMI around 33 kg/m2, with an increased mortality risk more evident for lower than higher BMI values. Although no statistically significant heterogeneity was found (p = 0.376), the shape of the relationships differed between men and women. In the analysis restricted to men (nine studies, 141,709 participants/24,230 events), the lowest risk was between 31 and 35 kg/m2, with an increased risk for values lower than 31 kg/m2 and a slightly non-significant increase for values higher than 35 kg/m2 (p value for no exposure–disease association 0.0034; p value for nonlinearity 0.001). Conversely, almost a symmetrical increase was evident for women (eight studies, 168,088 participants/25,061 events) with a BMI nadir around 28–31 kg/m2 (p value for no exposure–disease association <0.001; p value for nonlinearity <0.001).
For the three analyses, there was evidence of heterogeneity across studies (ESM Table 4) but not of publication bias (p values 0.403; 0.521; and 0.550, respectively).
Cardiovascular mortality
Six studies comprising 98,309 participants reported data on BMI and 4291 cardiovascular incident deaths for both men and women (Table 1 and ESM Fig. 4). The overall shape of the association suggested an increased risk of cardiovascular mortality for values lower than 27 kg/m2 and a less clear association for higher values (p value for no exposure–disease association 0.0176; p value for nonlinearity 0.140) (Fig. 3). However, a reduced risk for values greater than 27 kg/m2 and a possible linear negative trend cannot be excluded (RR per unit increase of BMI: 0.98; 95%CI: 0.96, 0.99; p = 0.013). No publication bias was present (p = 0.258). Owing to the limited number of studies, it was not possible to stratify the analysis by sex.
Sensitivity analyses
The results were consistent with those of the main analysis after the exclusion of two studies reporting unadjusted estimates, yet the risk of all-cause death for high values of BMI in women was less pronounced (ESM Table 5 and ESM Fig. 5). No heterogeneity was found in stratified analyses by region (USA, Europe and UK, Asia; p = 0.069) or period (2003–2009, 2011–2013, 2014–2015; p = 0.117) (ESM Table 6 and ESM Fig. 6). Results were substantially similar in sensitivity analyses considering alternative knot locations (ESM Fig. 7 and ESM Fig. 8).

Discussion

Results of this meta-analysis indicate a clear nonlinear relationship between BMI and all-cause mortality, with the lowest risk found around 33 kg/m2 and an increased risk more evident for lower compared with higher values. The shape of the association between BMI and all-cause mortality, however, was found to be different between male and female participants such that the risk did not increase for values higher than 35 kg/m2 in men whilst a symmetrical rise was found in women above and below a nadir around 28–31 kg/m2. Conversely, the limited data availability for cardiovascular mortality precluded a clear interpretation of the relationship, particularly for high values of BMI.
Our meta-analysis is the largest to-date to assess the association between BMI and mortality among people with diabetes. However, there are certain limitations of this study. First, most of the included studies adjusted risk estimates for a number of potential confounders; only five, however, adjusted for alcohol consumption, which is closely associated with mortality and BMI [43, 44]. Cardiorespiratory fitness has been reported as a potential effect modifier in the association of BMI and mortality, suggesting a ‘fit and fat’ phenomenon whereby higher cardiorespiratory fitness attenuates the increased mortality risk associated with higher BMI [45]. Given the available data, we could not explore this hypothesis in our meta-analysis. Similarly, we could not assess the impact of fat distribution, another possible effect modifier in the relationship between BMI and outcomes. Indeed, recent research has suggested that fat distribution is more strongly associated than BMI to future cardiovascular events risk [46]. Possible confounders of the association are drug treatment (as some glucose-lowering drugs are associated with both body weight and mortality [47]) and smoking, which is negatively correlated with BMI and positively with mortality [48, 49]. This association is conditioned on the effect of having diabetes such that the inverse association between smoking and BMI is exaggerated, which may potentially lead to an underestimation of the mortality risk associated with obesity. This may result in a collider bias, requiring detailed adjustment for smoking [50]. Almost all studies included in the meta-analysis, however, adjusted for smoking status. We were unable to conduct a stratified analysis by smoking status as only two studies reported the risk of mortality by BMI separately for each smoking category. Zhao and colleagues found that the risk estimates for different BMI groups compared with a reference group (30–34.9 kg/m2) were slightly higher in never smokers in comparison with current smokers in both Black and White participants [41]. In comparison Jackson and colleagues did not find a variation in the association between BMI and mortality by smoking status [30].
Our findings showed a nonlinear relationship between BMI and all-cause mortality in people with diabetes, with the lowest risk around 33 kg/m2. This is in line with a large meta-analysis of 141 studies assessing the association between BMI and mortality in the general population which found a 6% statistically significant reduction in mortality risk associated with being overweight (BMI 25–30 kg/m2), a 5% non-significant reduction associated with being modestly obese (BMI 30–35 kg/m2), and a 29% increase in the risk associated with a BMI of over 35 kg/m2 when compared with normal weight (BMI 18–25 kg/m2) [3]. In contrast, a recent dose–response meta-analysis assessing the relationship in type 2 diabetes reported a progressive linear 5% reduction of all-cause mortality for every 5 kg/m2 increase in the BMI (six studies and eight cohorts) [13]. However, this meta-analysis also included studies reporting on populations with pre-existing cardiovascular morbidities, such as heart failure [51, 52], whilst some large population-based studies were omitted. Moreover, in view of previous knowledge about the shape of the association between BMI and mortality in the general population, we did not assume the dose–response relationship to be linear and did not use conventional BMI categories but rather investigated possible nonlinearity in the BMI–mortality association. This enabled us to clarify the shape of the association across a wide range of BMI and assess whether there was a significant departure from linearity and a difference between male and female participants. Our results, indeed, clearly showed a nonlinear relationship for all-cause mortality, whilst the association with cardiovascular mortality is less clear (and potentially linear). We found, in particular, the mortality curve to be steeper in women compared with men, with a considerably higher risk of mortality at higher BMIs in women than men, and the nadir to be lower in women than men. Of note, in the sensitivity analysis excluding studies reporting unadjusted estimates, the risk for higher BMI was less pronounced: whether this is relates to a reduced statistical power or a true effect could not be ascertained. However, our findings are line with a general population study including over 12 million adults from South Korea, which found the optimal BMI for women to be lower than men, especially at younger ages [53]. This may be attributed to a positive and strong association between obesity and sex-specific cancer incidence and mortality in women [5457].
The progressively increasing risk of all-cause mortality for values of BMI ≤25 kg/m2 in both men and women may have a number of explanations. Sarcopenic obesity is a condition characterised by relative increase in fat mass and reduction in muscle mass, thus resulting in a different total body fat composition for the same weight (and therefore BMI). Typically, people with sarcopenic obesity have visceral fat accumulation [58], a well-known risk factor for cardiovascular mortality [46]. The prevalence of sarcopenic obesity has been reported to be higher in type 2 diabetes compared with non-diabetes (15.7% vs 6.9% respectively in the Korean Sarcopenic Obesity Study) [59] and it has also been linked to an increased risk of falls [59], physical disability [60] and cardiovascular and all-cause mortality [6164]. Another possible explanation could be reverse causation. Underlying conditions may result in loss of appetite or increased metabolic demands with subsequent unintentional weight loss. This phenomenon has been reported to be stronger in people with diabetes as they have higher rates of underlying illness compared with the general population [50]. This may partly explain the shape of association in our meta-analysis, with an increased risk for low values of BMI. In this analysis we were able to include data from eight studies that excluded the initial 2 years of follow-up to reduce the risk of reverse causation. A third possible reason is genetics. Some single nucleotide polymorphism (SNP) variants are more strongly associated with type 2 diabetes in lean compared with obese subsets [65]. Among such SNPs, variants at TCF7L2 and CDKAL1 have also been associated with increased risk of cancer in people with diabetes [66], potentially explaining the higher mortality risk for low BMI values. However, stronger evidence (ideally with Mendelian randomisation studies) is needed to support a genetic explanation in people with diabetes. Finally, potentially improved diagnosis and care of obese people with type 2 diabetes (i.e. screen-detected diabetes, more intensive control of risk factors) is another plausible explanation [67].
Conclusion
Findings from this meta-analysis of prospective cohort studies demonstrated a nonlinear relationship between BMI and all-cause mortality, with lower risks between 31 and 35 kg/m2 for men and 28 and 31 kg/m2 for women. Further research is needed to decipher whether this association is truly causal and different from that between BMI and cardiovascular mortality. Furthermore, to better clarify the link between excess fat and outcomes in people with diabetes, multiple assessments (including overall and region-specific body fat accumulation) over time are warranted. The results of our study, along with available previous knowledge in this field, do not downgrade the importance of weight control and appropriate lifestyle as cornerstones for the prevention and management of cardiometabolic diseases.

Acknowledgements

We acknowledge the support from the National Institute for Health Research Collaboration for Leadership in Applied Health Research and Care – East Midlands (NIHR CLAHRC – EM), the Leicester Clinical Trials Unit and the NIHR Leicester–Loughborough Diet, Lifestyle and Physical Activity Biomedical Research Unit, which is a partnership between University Hospitals of Leicester NHS Trust, Loughborough University and the University of Leicester. The views expressed are those of the authors and not necessarily those of the NHS, the NIHR or the Department of Health.
The authors would like to express their gratitude to the following authors for providing additional data from their published manuscripts for this meta-analysis: G. Bruno (Universita’ di Torino, Turin, Italy); G. Hu (Pennington Biomedical Research Center, Baton Rouge, LA, USA); J. Logue (University of Glasgow, Glasgow, UK); L. McEwen (University of Michigan, Ann Arbor, MI, USA); S. Park (Seoul National University College of Medicine, Seoul, Korea); D. K. Tobias (Harvard Medical School and Brigham and Women’s Hospital, Boston, MA, USA). The authors also thank A. Crippa (Karolinska Institutet, Stockholm, Sweden) for helpful suggestions.

Funding

FZ is a Clinical Research Fellow funded with an unrestricted Educational Grant from Sanofi-Aventis to the University of Leicester. The funding source had no involvement in this study.

Data availability

Statistical codes and datasets are available from the corresponding author.

Duality of interest

DRW has received grant in support of investigator initiated studies and honoraria from Sanofi-Aventis and Novo Nordisk. MJD has acted as consultant, advisory board member and speaker for Novo Nordisk, Sanofi-Aventis, Lilly, Merck Sharp & Dohme, Boehringer Ingelheim, AstraZeneca and Janssen and as a speaker for Mitsubishi Tanabe Pharma Corporation. She has received grants in support of investigator and investigator initiated trials from Novo Nordisk, Sanofi-Aventis and Lilly. KK has acted as a consultant and speaker for Novartis, Novo Nordisk, Sanofi-Aventis, Lilly, Servier and Merck Sharp & Dohme. He has received grants in support of investigator and investigator initiated trials from Novartis, Novo Nordisk, Sanofi-Aventis, Lilly, Pfizer, Boehringer Ingelheim and Merck Sharp & Dohme. KK has received funds for research, honoraria for speaking at meetings and has served on advisory boards for Lilly, Sanofi-Aventis, Merck Sharp & Dohme and Novo Nordisk. All other authors declare there is no duality of interest in connection with their involvement in this study.

Contribution statement

NND and FZ conceived the study; FZ, NND and DP conducted the literature search and extracted the data; ND and FZ wrote the first draft; FZ designed the study, statistical plan and data analysis; DW, GM, MJD and KK supervised the study and critically reviewed the manuscript for important intellectual content. All authors contributed to the interpretation of data, revision of the manuscript and provided final approval of the version to be published. NND and FZ had full access to all the data in the study and take responsibility for the integrity of the data and the accuracy of the data analysis.
Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.

Unsere Produktempfehlungen

e.Med Interdisziplinär

Kombi-Abonnement

Für Ihren Erfolg in Klinik und Praxis - Die beste Hilfe in Ihrem Arbeitsalltag

Mit e.Med Interdisziplinär erhalten Sie Zugang zu allen CME-Fortbildungen und Fachzeitschriften auf SpringerMedizin.de.

e.Med Innere Medizin

Kombi-Abonnement

Mit e.Med Innere Medizin erhalten Sie Zugang zu CME-Fortbildungen des Fachgebietes Innere Medizin, den Premium-Inhalten der internistischen Fachzeitschriften, inklusive einer gedruckten internistischen Zeitschrift Ihrer Wahl.

e.Med Allgemeinmedizin

Kombi-Abonnement

Mit e.Med Allgemeinmedizin erhalten Sie Zugang zu allen CME-Fortbildungen und Premium-Inhalten der allgemeinmedizinischen Zeitschriften, inklusive einer gedruckten Allgemeinmedizin-Zeitschrift Ihrer Wahl.

Anhänge

Electronic supplementary material

Below is the link to the electronic supplementary material.
Literatur
1.
Zurück zum Zitat Sarwar N, Gao P, Seshasai SR et al (2010) Diabetes mellitus, fasting blood glucose concentration, and risk of vascular disease: a collaborative meta-analysis of 102 prospective studies. Lancet 375:2215–2222CrossRefPubMed Sarwar N, Gao P, Seshasai SR et al (2010) Diabetes mellitus, fasting blood glucose concentration, and risk of vascular disease: a collaborative meta-analysis of 102 prospective studies. Lancet 375:2215–2222CrossRefPubMed
2.
Zurück zum Zitat World Health Organization (2014) Global health estimates: deaths by cause, age, sex and country, 2000–2012. World Health Organization, Geneva World Health Organization (2014) Global health estimates: deaths by cause, age, sex and country, 2000–2012. World Health Organization, Geneva
3.
Zurück zum Zitat Flegal KM, Kit BK, Orpana H, Graubard BI (2013) Association of all-cause mortality with overweight and obesity using standard body mass index categories. A systematic review and meta-analysis. JAMA 309:71–82CrossRefPubMedPubMedCentral Flegal KM, Kit BK, Orpana H, Graubard BI (2013) Association of all-cause mortality with overweight and obesity using standard body mass index categories. A systematic review and meta-analysis. JAMA 309:71–82CrossRefPubMedPubMedCentral
4.
Zurück zum Zitat Doehner W, Erdmann E, Cairns R et al (2012) Inverse relation of body weight and weight change with mortality and morbidity in patients with type 2 diabetes and cardiovascular co-morbidity: an analysis of the PROactive study population. Int J Cardiol 162:20–26CrossRefPubMed Doehner W, Erdmann E, Cairns R et al (2012) Inverse relation of body weight and weight change with mortality and morbidity in patients with type 2 diabetes and cardiovascular co-morbidity: an analysis of the PROactive study population. Int J Cardiol 162:20–26CrossRefPubMed
5.
Zurück zum Zitat Kokkinos P, Myers J, Faselis C, Doumas M, Kheirbek R, Nylen E (2012) BMI-mortality paradox and fitness in African American and Caucasian men with type 2 diabetes. Diabetes Care 35:1021–1027CrossRefPubMedPubMedCentral Kokkinos P, Myers J, Faselis C, Doumas M, Kheirbek R, Nylen E (2012) BMI-mortality paradox and fitness in African American and Caucasian men with type 2 diabetes. Diabetes Care 35:1021–1027CrossRefPubMedPubMedCentral
6.
Zurück zum Zitat McEwen LN, Kim C, Karter AJ et al (2007) Risk factors for mortality among patients with diabetes – The Translating Research Into Action for Diabetes (TRIAD) Study. Diabetes Care 30:1736–1741CrossRefPubMed McEwen LN, Kim C, Karter AJ et al (2007) Risk factors for mortality among patients with diabetes – The Translating Research Into Action for Diabetes (TRIAD) Study. Diabetes Care 30:1736–1741CrossRefPubMed
7.
Zurück zum Zitat So WY, Yang X, Ma RC et al (2008) Risk factors in V-shaped risk associations with all-cause mortality in type 2 diabetes: the Hong Kong Diabetes Registry. Diabetes Metab Res Rev 24:238–246CrossRefPubMed So WY, Yang X, Ma RC et al (2008) Risk factors in V-shaped risk associations with all-cause mortality in type 2 diabetes: the Hong Kong Diabetes Registry. Diabetes Metab Res Rev 24:238–246CrossRefPubMed
8.
Zurück zum Zitat Khalangot M, Tronko M, Kravchenko V, Kulchinska J, Hu G (2009) Body mass index and the risk of total and cardiovascular mortality among patients with type 2 diabetes: a large prospective study in Ukraine. Heart 95:454–460CrossRefPubMed Khalangot M, Tronko M, Kravchenko V, Kulchinska J, Hu G (2009) Body mass index and the risk of total and cardiovascular mortality among patients with type 2 diabetes: a large prospective study in Ukraine. Heart 95:454–460CrossRefPubMed
9.
Zurück zum Zitat Hu G, Jousilahti P, Barengo NC, Qiao Q, Lakka TA, Tuomilehto J (2005) Physical activity, cardiovascular risk factors, and mortality among Finnish adults with diabetes. Diabetes Care 28:799–805CrossRefPubMed Hu G, Jousilahti P, Barengo NC, Qiao Q, Lakka TA, Tuomilehto J (2005) Physical activity, cardiovascular risk factors, and mortality among Finnish adults with diabetes. Diabetes Care 28:799–805CrossRefPubMed
10.
Zurück zum Zitat Katzmarzyk PT, Hu G, Cefalu WT, Mire E, Bouchard C (2013) The importance of waist circumference and BMI for mortality risk in diabetic adults. Diabetes Care 36:3128–3130CrossRefPubMedPubMedCentral Katzmarzyk PT, Hu G, Cefalu WT, Mire E, Bouchard C (2013) The importance of waist circumference and BMI for mortality risk in diabetic adults. Diabetes Care 36:3128–3130CrossRefPubMedPubMedCentral
11.
Zurück zum Zitat McEwen LN, Karter AJ, Waitzfelder BE et al (2012) Predictors of mortality over 8 years in type 2 diabetic patients: Translating Research Into Action for Diabetes (TRIAD). Diabetes Care 35:1301–1309CrossRefPubMedPubMedCentral McEwen LN, Karter AJ, Waitzfelder BE et al (2012) Predictors of mortality over 8 years in type 2 diabetic patients: Translating Research Into Action for Diabetes (TRIAD). Diabetes Care 35:1301–1309CrossRefPubMedPubMedCentral
12.
Zurück zum Zitat Costanzo P, Cleland JGF, Pellicori P et al (2015) The obesity paradox in type 2 diabetes mellitus: relationship of body mass index to prognosis: a cohort study. Ann Intern Med 162:610–618CrossRefPubMed Costanzo P, Cleland JGF, Pellicori P et al (2015) The obesity paradox in type 2 diabetes mellitus: relationship of body mass index to prognosis: a cohort study. Ann Intern Med 162:610–618CrossRefPubMed
13.
Zurück zum Zitat Liu XM, Liu YJ, Zhan J, He QQ (2015) Overweight, obesity and risk of all-cause and cardiovascular mortality in patients with type 2 diabetes mellitus: a dose–response meta-analysis of prospective cohort studies. Eur J Epidemiol 30:35–45CrossRefPubMed Liu XM, Liu YJ, Zhan J, He QQ (2015) Overweight, obesity and risk of all-cause and cardiovascular mortality in patients with type 2 diabetes mellitus: a dose–response meta-analysis of prospective cohort studies. Eur J Epidemiol 30:35–45CrossRefPubMed
14.
Zurück zum Zitat Stroup DF, Berlin JA, Morton SC et al (2000) Meta-analysis of observational studies in epidemiology – a proposal for reporting. JAMA 283:2008–2012CrossRefPubMed Stroup DF, Berlin JA, Morton SC et al (2000) Meta-analysis of observational studies in epidemiology – a proposal for reporting. JAMA 283:2008–2012CrossRefPubMed
16.
Zurück zum Zitat Orsini N, Li RF, Wolk A, Khudyakov P, Spiegelman D (2012) Meta-analysis for linear and nonlinear dose–response relations: examples, an evaluation of approximations, and software. Am J Epidemiol 175:66–73CrossRefPubMed Orsini N, Li RF, Wolk A, Khudyakov P, Spiegelman D (2012) Meta-analysis for linear and nonlinear dose–response relations: examples, an evaluation of approximations, and software. Am J Epidemiol 175:66–73CrossRefPubMed
17.
Zurück zum Zitat Greenland S, Longnecker MP (1992) Methods for trend estimation from summarized dose–response data, with applications to meta-analysis. Am J Epidemiol 135:1301–1309PubMed Greenland S, Longnecker MP (1992) Methods for trend estimation from summarized dose–response data, with applications to meta-analysis. Am J Epidemiol 135:1301–1309PubMed
18.
Zurück zum Zitat Orsini N, Bellocco R (2006) Generalized least squares for trend estimation of summarized dose–response data. Stata J 6:40–57 Orsini N, Bellocco R (2006) Generalized least squares for trend estimation of summarized dose–response data. Stata J 6:40–57
20.
Zurück zum Zitat Desquilbet L, Mariotti F (2010) Dose–response analyses using restricted cubic spline functions in public health research. Stat Med 29:1037–1057PubMed Desquilbet L, Mariotti F (2010) Dose–response analyses using restricted cubic spline functions in public health research. Stat Med 29:1037–1057PubMed
22.
Zurück zum Zitat StataCorp (2015) Stata Statistical Software: Release 14. StataCorp LP, College Station StataCorp (2015) Stata Statistical Software: Release 14. StataCorp LP, College Station
23.
Zurück zum Zitat White IR (2011) Multivariate random-effects meta-regression: updates to mvmeta. Stata J 11:255–270 White IR (2011) Multivariate random-effects meta-regression: updates to mvmeta. Stata J 11:255–270
25.
Zurück zum Zitat Wickham H (2009) ggplot2: elegant graphics for data analysis. Springer-Verlag, New YorkCrossRef Wickham H (2009) ggplot2: elegant graphics for data analysis. Springer-Verlag, New YorkCrossRef
26.
Zurück zum Zitat Bozorgmanesh M, Arshi B, Sheikholeslami F, Azizi F, Hadaegh F (2014) No obesity paradox-BMI incapable of adequately capturing the relation of obesity with all-cause mortality: an inception diabetes cohort study. Int J Endocrinol 2014:282089CrossRefPubMedPubMedCentral Bozorgmanesh M, Arshi B, Sheikholeslami F, Azizi F, Hadaegh F (2014) No obesity paradox-BMI incapable of adequately capturing the relation of obesity with all-cause mortality: an inception diabetes cohort study. Int J Endocrinol 2014:282089CrossRefPubMedPubMedCentral
27.
Zurück zum Zitat Chaturvedi N, Stevens LK, Fuller JH et al (1995) Mortality and morbidity associated with body-weight in people with IDDM – the WHO Multinational Study of Vascular-Disease in Diabetes. Diabetes Care 18:761–765CrossRefPubMed Chaturvedi N, Stevens LK, Fuller JH et al (1995) Mortality and morbidity associated with body-weight in people with IDDM – the WHO Multinational Study of Vascular-Disease in Diabetes. Diabetes Care 18:761–765CrossRefPubMed
28.
Zurück zum Zitat Church TS, LaMonte MJ, Barlow CE, Blair SN (2005) Cardiorespiratory fitness and body mass index as predictors of cardiovascular disease mortality among men with diabetes. Arch Intern Med 165:2114–2120CrossRefPubMed Church TS, LaMonte MJ, Barlow CE, Blair SN (2005) Cardiorespiratory fitness and body mass index as predictors of cardiovascular disease mortality among men with diabetes. Arch Intern Med 165:2114–2120CrossRefPubMed
29.
Zurück zum Zitat Eeg-Olofsson K, Cederholm J, Nilsson P et al (2009) Risk of cardiovascular disease and mortality in overweight and obese patients with type 2 diabetes: an observational study in 13,087 patients. Diabetologia 52:65–73CrossRefPubMed Eeg-Olofsson K, Cederholm J, Nilsson P et al (2009) Risk of cardiovascular disease and mortality in overweight and obese patients with type 2 diabetes: an observational study in 13,087 patients. Diabetologia 52:65–73CrossRefPubMed
30.
Zurück zum Zitat Jackson CL, Yeh HC, Szklo M et al (2014) Body-mass index and all-cause mortality in US adults with and without diabetes. J Gen Intern Med 29:25–33CrossRefPubMed Jackson CL, Yeh HC, Szklo M et al (2014) Body-mass index and all-cause mortality in US adults with and without diabetes. J Gen Intern Med 29:25–33CrossRefPubMed
31.
Zurück zum Zitat Logue J, Walker JJ, Leese G et al (2013) Association between BMI measured within a year after diagnosis of type 2 diabetes and mortality. Diabetes Care 36:887–893CrossRefPubMedPubMedCentral Logue J, Walker JJ, Leese G et al (2013) Association between BMI measured within a year after diagnosis of type 2 diabetes and mortality. Diabetes Care 36:887–893CrossRefPubMedPubMedCentral
32.
Zurück zum Zitat Ma SH, Park B-Y, Yang JJ et al (2012) Interaction of body mass index and diabetes as modifiers of cardiovascular mortality in a cohort study. J Prev Med Public Health 45:394–401CrossRefPubMedPubMedCentral Ma SH, Park B-Y, Yang JJ et al (2012) Interaction of body mass index and diabetes as modifiers of cardiovascular mortality in a cohort study. J Prev Med Public Health 45:394–401CrossRefPubMedPubMedCentral
33.
Zurück zum Zitat Menke A, Casagrande SS, Cowie CC (2014) The relationship of adiposity and mortality among people with diabetes in the US general population: a prospective cohort study. BMJ Open 4, e005671CrossRefPubMedPubMedCentral Menke A, Casagrande SS, Cowie CC (2014) The relationship of adiposity and mortality among people with diabetes in the US general population: a prospective cohort study. BMJ Open 4, e005671CrossRefPubMedPubMedCentral
34.
Zurück zum Zitat Murphy RA, Reinders I, Garcia ME et al (2014) Adipose tissue, muscle, and function: potential mediators of associations between body weight and mortality in older adults with type 2 diabetes. Diabetes Care 37:3213–3219CrossRefPubMedPubMedCentral Murphy RA, Reinders I, Garcia ME et al (2014) Adipose tissue, muscle, and function: potential mediators of associations between body weight and mortality in older adults with type 2 diabetes. Diabetes Care 37:3213–3219CrossRefPubMedPubMedCentral
35.
Zurück zum Zitat Perotto M, Panero F, Gruden G et al (2013) Obesity is associated with lower mortality risk in elderly diabetic subjects: the Casale Monferrato study. Acta Diabetol 50:563–568CrossRefPubMed Perotto M, Panero F, Gruden G et al (2013) Obesity is associated with lower mortality risk in elderly diabetic subjects: the Casale Monferrato study. Acta Diabetol 50:563–568CrossRefPubMed
36.
Zurück zum Zitat Sluik D, Boeing H, Montonen J et al (2011) Associations between general and abdominal adiposity and mortality in individuals with diabetes mellitus. Am J Epidemiol 174:22–34CrossRefPubMed Sluik D, Boeing H, Montonen J et al (2011) Associations between general and abdominal adiposity and mortality in individuals with diabetes mellitus. Am J Epidemiol 174:22–34CrossRefPubMed
37.
Zurück zum Zitat Thomas G, Khunti K, Curcin V et al (2014) Obesity paradox in people newly diagnosed with type 2 diabetes with and without prior cardiovascular disease. Diabetes Obes Metab 16:317–325CrossRefPubMed Thomas G, Khunti K, Curcin V et al (2014) Obesity paradox in people newly diagnosed with type 2 diabetes with and without prior cardiovascular disease. Diabetes Obes Metab 16:317–325CrossRefPubMed
38.
39.
Zurück zum Zitat Tseng CH (2013) Obesity paradox: differential effects on cancer and noncancer mortality in patients with type 2 diabetes mellitus. Atherosclerosis 226:186–192CrossRefPubMed Tseng CH (2013) Obesity paradox: differential effects on cancer and noncancer mortality in patients with type 2 diabetes mellitus. Atherosclerosis 226:186–192CrossRefPubMed
40.
Zurück zum Zitat Tuomilehto J, Schranz A, Aldana D, Pitkaniemi J (1994) The effect of diabetes and impaired glucose-tolerance on mortality in Malta. Diabet Med 11:170–176CrossRefPubMed Tuomilehto J, Schranz A, Aldana D, Pitkaniemi J (1994) The effect of diabetes and impaired glucose-tolerance on mortality in Malta. Diabet Med 11:170–176CrossRefPubMed
41.
Zurück zum Zitat Zhao WH, Katzmarzyk PT, Horswell R et al (2014) Body mass index and the risk of all-cause mortality among patients with type 2 diabetes mellitus. Circulation 130:2143–2151CrossRefPubMedPubMedCentral Zhao WH, Katzmarzyk PT, Horswell R et al (2014) Body mass index and the risk of all-cause mortality among patients with type 2 diabetes mellitus. Circulation 130:2143–2151CrossRefPubMedPubMedCentral
42.
Zurück zum Zitat Zoppini G, Verlato G, Leuzinger C et al (2003) Body mass index and the risk of mortality in type II diabetic patients from Verona. Int J Obes 27:281–285CrossRef Zoppini G, Verlato G, Leuzinger C et al (2003) Body mass index and the risk of mortality in type II diabetic patients from Verona. Int J Obes 27:281–285CrossRef
43.
Zurück zum Zitat Howie EK, Sui X, Lee DC, Hooker SP, Hebert JR, Blair SN (2011) Alcohol consumption and risk of all-cause and cardiovascular disease mortality in men. J Aging Res 2011:805062CrossRefPubMedPubMedCentral Howie EK, Sui X, Lee DC, Hooker SP, Hebert JR, Blair SN (2011) Alcohol consumption and risk of all-cause and cardiovascular disease mortality in men. J Aging Res 2011:805062CrossRefPubMedPubMedCentral
44.
Zurück zum Zitat Gatineau M, Mathrani S (2012) Obesity and alcohol: an overview. National Obesity Observatory, Oxford Gatineau M, Mathrani S (2012) Obesity and alcohol: an overview. National Obesity Observatory, Oxford
45.
Zurück zum Zitat McAuley PA, Beavers KM (2014) Contribution of cardiorespiratory fitness to the obesity paradox. Prog Cardiovasc Dis 56:434–440CrossRefPubMed McAuley PA, Beavers KM (2014) Contribution of cardiorespiratory fitness to the obesity paradox. Prog Cardiovasc Dis 56:434–440CrossRefPubMed
46.
Zurück zum Zitat Neeland IJ, Turer AT, Ayers CR et al (2015) Body fat distribution and incident cardiovascular disease in obese adults. J Am Coll Cardiol 65:2150–2151CrossRefPubMedPubMedCentral Neeland IJ, Turer AT, Ayers CR et al (2015) Body fat distribution and incident cardiovascular disease in obese adults. J Am Coll Cardiol 65:2150–2151CrossRefPubMedPubMedCentral
47.
Zurück zum Zitat Holman RR, Sourij H, Califf RM (2014) Cardiovascular outcome trials of glucose-lowering drugs or strategies in type 2 diabetes. Lancet 383:2008–2017CrossRefPubMed Holman RR, Sourij H, Califf RM (2014) Cardiovascular outcome trials of glucose-lowering drugs or strategies in type 2 diabetes. Lancet 383:2008–2017CrossRefPubMed
48.
Zurück zum Zitat Rasky E, Stronegger WJ, Freidl W (1996) The relationship between body weight and patterns of smoking in women and men. Int J Epidemiol 25:1208–1212CrossRefPubMed Rasky E, Stronegger WJ, Freidl W (1996) The relationship between body weight and patterns of smoking in women and men. Int J Epidemiol 25:1208–1212CrossRefPubMed
49.
Zurück zum Zitat Chiolero A, Faeh D, Paccaud F, Cornuz J (2008) Consequences of smoking for body weight, body fat distribution, and insulin resistance. Am J Clin Nutr 87:801–809PubMed Chiolero A, Faeh D, Paccaud F, Cornuz J (2008) Consequences of smoking for body weight, body fat distribution, and insulin resistance. Am J Clin Nutr 87:801–809PubMed
50.
Zurück zum Zitat Preston SH, Stokes A (2014) Obesity paradox: conditioning on disease enhances biases in estimating the mortality risks of obesity. Epidemiology 25:454–461CrossRefPubMedPubMedCentral Preston SH, Stokes A (2014) Obesity paradox: conditioning on disease enhances biases in estimating the mortality risks of obesity. Epidemiology 25:454–461CrossRefPubMedPubMedCentral
51.
Zurück zum Zitat Waring ME, Saczynski JS, McManus D et al (2011) Weight and mortality following heart failure hospitalization among diabetic patients. Am J Med 124:834–840CrossRefPubMedPubMedCentral Waring ME, Saczynski JS, McManus D et al (2011) Weight and mortality following heart failure hospitalization among diabetic patients. Am J Med 124:834–840CrossRefPubMedPubMedCentral
52.
Zurück zum Zitat Weiss A, Boaz M, Beloosesky Y, Kornowski R, Grossman E (2009) Body mass index and risk of all-cause and cardiovascular mortality in hospitalized elderly patients with diabetes mellitus. Diabet Med 26:253–259CrossRefPubMed Weiss A, Boaz M, Beloosesky Y, Kornowski R, Grossman E (2009) Body mass index and risk of all-cause and cardiovascular mortality in hospitalized elderly patients with diabetes mellitus. Diabet Med 26:253–259CrossRefPubMed
53.
Zurück zum Zitat Yi S-W, Ohrr H, Shin S-A, Yi J-J (2015) Sex-age-specific association of body mass index with all-cause mortality among 12.8 million Korean adults: a prospective cohort study. Int J Epidemiol 44:1696–1705CrossRefPubMedPubMedCentral Yi S-W, Ohrr H, Shin S-A, Yi J-J (2015) Sex-age-specific association of body mass index with all-cause mortality among 12.8 million Korean adults: a prospective cohort study. Int J Epidemiol 44:1696–1705CrossRefPubMedPubMedCentral
54.
Zurück zum Zitat Taghizadeh N, Boezen HM, Schouten JP, Schroder CP, de Vries EGE, Vonk JM (2015) BMI and lifetime changes in BMI and cancer mortality risk. PLoS One 10, e0125261CrossRefPubMedPubMedCentral Taghizadeh N, Boezen HM, Schouten JP, Schroder CP, de Vries EGE, Vonk JM (2015) BMI and lifetime changes in BMI and cancer mortality risk. PLoS One 10, e0125261CrossRefPubMedPubMedCentral
55.
Zurück zum Zitat Arnold M, Pandeya N, Byrnes G et al (2015) Global burden of cancer attributable to high body-mass index in 2012: a population-based study. Lancet Oncol 16:36–46CrossRefPubMed Arnold M, Pandeya N, Byrnes G et al (2015) Global burden of cancer attributable to high body-mass index in 2012: a population-based study. Lancet Oncol 16:36–46CrossRefPubMed
56.
Zurück zum Zitat Reeves GK, Pirie K, Beral V, Green J, Spencer E, Bull D (2007) Cancer incidence and mortality in relation to body mass index in the Million Women Study: cohort study. BMJ 335:1134–1139CrossRefPubMedPubMedCentral Reeves GK, Pirie K, Beral V, Green J, Spencer E, Bull D (2007) Cancer incidence and mortality in relation to body mass index in the Million Women Study: cohort study. BMJ 335:1134–1139CrossRefPubMedPubMedCentral
57.
Zurück zum Zitat Bhaskaran K, Douglas I, Forbes H, dos-Santos-Silva I, Leon DA, Smeeth L (2014) Body-mass index and risk of 22 specific cancers: a population-based cohort study of 5.24 million UK adults. Lancet 384:755–765CrossRefPubMedPubMedCentral Bhaskaran K, Douglas I, Forbes H, dos-Santos-Silva I, Leon DA, Smeeth L (2014) Body-mass index and risk of 22 specific cancers: a population-based cohort study of 5.24 million UK adults. Lancet 384:755–765CrossRefPubMedPubMedCentral
58.
Zurück zum Zitat Kohara K (2014) Sarcopenic obesity in aging population: current status and future directions for research. Endocrine 45:15–25CrossRefPubMed Kohara K (2014) Sarcopenic obesity in aging population: current status and future directions for research. Endocrine 45:15–25CrossRefPubMed
59.
Zurück zum Zitat Kim TN, Park MS, Yang SJ et al (2010) Prevalence and determinant factors of sarcopenia in patients with type 2 diabetes: the Korean Sarcopenic Obesity Study (KSOS). Diabetes Care 33:1497–1499CrossRefPubMedPubMedCentral Kim TN, Park MS, Yang SJ et al (2010) Prevalence and determinant factors of sarcopenia in patients with type 2 diabetes: the Korean Sarcopenic Obesity Study (KSOS). Diabetes Care 33:1497–1499CrossRefPubMedPubMedCentral
60.
Zurück zum Zitat Baumgartner RN, Koehler KM, Gallagher D et al (1998) Epidemiology of sarcopenia among the elderly in New Mexico. Am J Epidemiol 147:755–763CrossRefPubMed Baumgartner RN, Koehler KM, Gallagher D et al (1998) Epidemiology of sarcopenia among the elderly in New Mexico. Am J Epidemiol 147:755–763CrossRefPubMed
61.
Zurück zum Zitat Miller MD, Crotty M, Giles LC et al (2002) Corrected arm muscle area: an independent predictor of long-term mortality in community-dwelling older adults? J Am Geriatr Soc 50:1272–1277CrossRefPubMed Miller MD, Crotty M, Giles LC et al (2002) Corrected arm muscle area: an independent predictor of long-term mortality in community-dwelling older adults? J Am Geriatr Soc 50:1272–1277CrossRefPubMed
62.
Zurück zum Zitat Heitmann BL, Erikson H, Ellsinger BM, Mikkelsen KL, Larsson B (2000) Mortality associated with body fat, fat-free mass and body mass index among 60-year-old Swedish men – a 22-year follow-up. The study of men born in 1913. Int J Obes 24:33–37CrossRef Heitmann BL, Erikson H, Ellsinger BM, Mikkelsen KL, Larsson B (2000) Mortality associated with body fat, fat-free mass and body mass index among 60-year-old Swedish men – a 22-year follow-up. The study of men born in 1913. Int J Obes 24:33–37CrossRef
63.
Zurück zum Zitat Batsis JA, Mackenzie TA, Barre LK, Lopez-Jimenez F, Bartels SJ (2014) Sarcopenia, sarcopenic obesity and mortality in older adults: results from the National Health and Nutrition Examination Survey III. Eur J Clin Nutr 68:1001–1007CrossRefPubMed Batsis JA, Mackenzie TA, Barre LK, Lopez-Jimenez F, Bartels SJ (2014) Sarcopenia, sarcopenic obesity and mortality in older adults: results from the National Health and Nutrition Examination Survey III. Eur J Clin Nutr 68:1001–1007CrossRefPubMed
64.
Zurück zum Zitat Atkins JL, Whincup PH, Morris RW, Lennon LT, Papacosta O, Wannamethee SG (2014) Sarcopenic obesity and risk of cardiovascular disease and mortality: a population-based cohort study of older men. J Am Geriatr Soc 62:253–260CrossRefPubMed Atkins JL, Whincup PH, Morris RW, Lennon LT, Papacosta O, Wannamethee SG (2014) Sarcopenic obesity and risk of cardiovascular disease and mortality: a population-based cohort study of older men. J Am Geriatr Soc 62:253–260CrossRefPubMed
65.
Zurück zum Zitat Perry JRB, Voight BF, Yengo L et al (2012) Stratifying type 2 diabetes cases by BMI identifies genetic risk variants in LAMA1 and enrichment for risk variants in lean compared to obese cases. Plos Genet 8, e1002741CrossRefPubMedPubMedCentral Perry JRB, Voight BF, Yengo L et al (2012) Stratifying type 2 diabetes cases by BMI identifies genetic risk variants in LAMA1 and enrichment for risk variants in lean compared to obese cases. Plos Genet 8, e1002741CrossRefPubMedPubMedCentral
66.
Zurück zum Zitat Ma RCW, So WY, Tam CHT et al (2014) Genetic variants for type 2 diabetes and new-onset cancer in Chinese with type 2 diabetes. Diabetes Res Clin Pract 103:328–337CrossRefPubMed Ma RCW, So WY, Tam CHT et al (2014) Genetic variants for type 2 diabetes and new-onset cancer in Chinese with type 2 diabetes. Diabetes Res Clin Pract 103:328–337CrossRefPubMed
67.
Zurück zum Zitat Schenkeveld L, Magro M, Oemrawsingh RM et al (2012) The influence of optimal medical treatment on the 'obesity paradox', body mass index and long-term mortality in patients treated with percutaneous coronary intervention: a prospective cohort study. BMJ Open 2, e000535CrossRefPubMedPubMedCentral Schenkeveld L, Magro M, Oemrawsingh RM et al (2012) The influence of optimal medical treatment on the 'obesity paradox', body mass index and long-term mortality in patients treated with percutaneous coronary intervention: a prospective cohort study. BMJ Open 2, e000535CrossRefPubMedPubMedCentral
Metadaten
Titel
Nonlinear association of BMI with all-cause and cardiovascular mortality in type 2 diabetes mellitus: a systematic review and meta-analysis of 414,587 participants in prospective studies
verfasst von
Francesco Zaccardi
Nafeesa N. Dhalwani
Dimitris Papamargaritis
David R. Webb
Gavin J. Murphy
Melanie J. Davies
Kamlesh Khunti
Publikationsdatum
25.11.2016
Verlag
Springer Berlin Heidelberg
Erschienen in
Diabetologia / Ausgabe 2/2017
Print ISSN: 0012-186X
Elektronische ISSN: 1432-0428
DOI
https://doi.org/10.1007/s00125-016-4162-6

Weitere Artikel der Ausgabe 2/2017

Diabetologia 2/2017 Zur Ausgabe

Leitlinien kompakt für die Innere Medizin

Mit medbee Pocketcards sicher entscheiden.

Seit 2022 gehört die medbee GmbH zum Springer Medizin Verlag

Echinokokkose medikamentös behandeln oder operieren?

06.05.2024 DCK 2024 Kongressbericht

Die Therapie von Echinokokkosen sollte immer in spezialisierten Zentren erfolgen. Eine symptomlose Echinokokkose kann – egal ob von Hunde- oder Fuchsbandwurm ausgelöst – konservativ erfolgen. Wenn eine Op. nötig ist, kann es sinnvoll sein, vorher Zysten zu leeren und zu desinfizieren. 

Aquatherapie bei Fibromyalgie wirksamer als Trockenübungen

03.05.2024 Fibromyalgiesyndrom Nachrichten

Bewegungs-, Dehnungs- und Entspannungsübungen im Wasser lindern die Beschwerden von Patientinnen mit Fibromyalgie besser als das Üben auf trockenem Land. Das geht aus einer spanisch-brasilianischen Vergleichsstudie hervor.

Wo hapert es noch bei der Umsetzung der POMGAT-Leitlinie?

03.05.2024 DCK 2024 Kongressbericht

Seit November 2023 gibt es evidenzbasierte Empfehlungen zum perioperativen Management bei gastrointestinalen Tumoren (POMGAT) auf S3-Niveau. Vieles wird schon entsprechend der Empfehlungen durchgeführt. Wo es im Alltag noch hapert, zeigt eine Umfrage in einem Klinikverbund.

Das Risiko für Vorhofflimmern in der Bevölkerung steigt

02.05.2024 Vorhofflimmern Nachrichten

Das Risiko, im Lauf des Lebens an Vorhofflimmern zu erkranken, ist in den vergangenen 20 Jahren gestiegen: Laut dänischen Zahlen wird es drei von zehn Personen treffen. Das hat Folgen weit über die Schlaganfallgefährdung hinaus.

Update Innere Medizin

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert.