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美国的多重疾病患病率随体重类别增加。

Increases in multimorbidity with weight class in the United States.

机构信息

Health Informatics and Information Management Program, University of Tennessee Health Science Center, Memphis, Tennessee, USA.

Center for Health System Improvement, University of Tennessee Health Science Center, Memphis, Tennessee, USA.

出版信息

Clin Obes. 2021 Jun;11(3):e12436. doi: 10.1111/cob.12436. Epub 2020 Dec 28.

Abstract

Little is known regarding how multimorbidity combinations associated with obesity change with increase in body weight. This study employed data from the national Cerner HealthFacts Data Warehouse to identify changes in multimorbidity patterns by weight class using network analysis. Networks were generated for 154 528 middle-aged patients in the following categories: normal weight, overweight, and classes 1, 2, and 3 obesity. The results show significant differences (P-value<0.05) in prevalence by weight class for all but three of 82 diseases considered. The percentage of patients with multimorbidity (excluding obesity) increases from in 55.1% in patients with normal weight, to 57.88% with overweight, 70.39% with Class 1 obesity, 73.99% with Class 2 obesity, and 71.68% in Class 3 obesity, increasing most substantially with the progression from overweight to class 1 obesity. Most prevalent disease clusters expand from only hypertension and dorsalgia in normal weight, to add joint disorders in overweight, lipidemias in class 1 obesity, diabetes in class 2 obesity, and sleep disorders and chronic kidney disease in class 3 obesity. Recognition of multimorbidity patterns associated with weight increase is essential for true precision care of obesity-associated chronic conditions and can help clinicians identify and address preclinical disease before additional complications arise.

摘要

关于与肥胖相关的多种合并症组合如何随着体重的增加而变化,人们知之甚少。本研究利用来自全国 Cerner HealthFacts Data Warehouse 的数据,采用网络分析方法,根据体重类别确定多种合并症模式的变化。为以下类别的 154528 名中年患者生成了网络:正常体重、超重和肥胖 1 类、2 类和 3 类。结果显示,在所考虑的 82 种疾病中,除了三种疾病外,所有疾病的患病率在体重类别上均存在显著差异(P 值<0.05)。除肥胖外,患有多种合并症(不包括肥胖)的患者比例从正常体重患者的 55.1%增加到超重患者的 57.88%、肥胖 1 类患者的 70.39%、肥胖 2 类患者的 73.99%和肥胖 3 类患者的 71.68%,从超重到肥胖 1 类的进展增加最为显著。最常见的疾病群从正常体重时仅高血压和背痛扩展到超重时增加关节疾病、肥胖 1 类时血脂异常、肥胖 2 类时糖尿病、肥胖 3 类时睡眠障碍和慢性肾病。认识与体重增加相关的多种合并症模式对于肥胖相关慢性病的真正精准护理至关重要,并且可以帮助临床医生在出现额外并发症之前识别和解决临床前疾病。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0ab/8454494/89f2c8320db6/nihms-1739173-f0001.jpg

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