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Open Access 13-05-2024 | Overweight | Original Article

The interplay between excess weight and hyper-glycemia on NCDs in Italy: results from a cross-sectional study

Authors: Vincenzo Atella, Federico Belotti, Matilde Giaccherini, Gerardo Medea, Andrea Piano Mortari, Paolo Sbraccia, Antonio Nicolucci

Published in: Acta Diabetologica

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Abstract

Purpose

To evaluate the prevalence of chronic comorbidities according to BMI classes and assess the interplay between excess body weight and blood glucose abnormalities in increasing the risk of major chronic diseases.

Methods

The study is based on data from the Health Search/IQVIA Health LPD Longitudinal Patient Database, an Italian general practice registry, with data obtained from electronic clinical records of 800 general practitioners throughout Italy. Data relative to the year 2018 were analyzed. The study population was classified according to BMI (normal weight, overweight, and obesity classes 1, 2 and 3) and glucose metabolism status (normoglycemia—NGT; impaired fasting glucose—IFG; diabetes mellitus—DM). Comorbidities were identified through ICD-9 CM codes.

Results

Data relative to 991,917 adults were analyzed. The prevalence of overweight was 39.4%, while the prevalence of obesity was 11.1% (class 1: 7.9%, class 2: 2.3%, class 3: 0.9%). In the whole population, the prevalence of DM and IFG was 8.9% and 4.2%, respectively. Both overweight and obesity were associated with an increasing prevalence of glucose metabolism alterations and a large array of different chronic conditions, including cardio-cerebrovascular diseases, heart failure, chronic kidney disease, osteoarticular diseases, depression, sleep apnea, and neoplasms of the gastrointestinal tract. Within each BMI class, the presence of IFG, and to a greater extent DM, identified subgroups of individuals with a marked increase in the risk of concomitant chronic conditions.

Conclusion

Addressing the double burden of excess weight and hyperglycemia represents an important challenge and a healthcare priority.
Appendix
Available only for authorised users
Footnotes
1
We also note that weak identification of the parameters is still possible even without a strong exclusion restriction due to the non-linearity of the model. See Wilde [32] for the intuition behind this claim.
 
2
The full set of estimation results is available upon request.
 
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Metadata
Title
The interplay between excess weight and hyper-glycemia on NCDs in Italy: results from a cross-sectional study
Authors
Vincenzo Atella
Federico Belotti
Matilde Giaccherini
Gerardo Medea
Andrea Piano Mortari
Paolo Sbraccia
Antonio Nicolucci
Publication date
13-05-2024
Publisher
Springer Milan
Published in
Acta Diabetologica
Print ISSN: 0940-5429
Electronic ISSN: 1432-5233
DOI
https://doi.org/10.1007/s00592-024-02296-z
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