...
首页> 外文期刊>BMC Medical Informatics and Decision Making >Community-level determinants of obesity: harnessing the power of electronic health records for retrospective data analysis
【24h】

Community-level determinants of obesity: harnessing the power of electronic health records for retrospective data analysis

机译:肥胖的社区级别决定因素:利用回顾性数据分析的电子健康记录的力量

获取原文
           

摘要

Background Obesity and overweight are multifactorial diseases that affect two thirds of Americans, lead to numerous health conditions and deeply strain our healthcare system. With the increasing prevalence and dangers associated with higher body weight, there is great impetus to focus on public health strategies to prevent or curb the disease. Electronic health records (EHRs) are a powerful source for retrospective health data, but they lack important community-level information known to be associated with obesity. We explored linking EHR and community data to study factors associated with overweight and obesity in a systematic and rigorous way. Methods We augmented EHR-derived data on 62,701 patients with zip code-level socioeconomic and obesogenic data. Using a multinomial logistic regression model, we estimated odds ratios and 95% confidence intervals (OR, 95% CI) for community-level factors associated with overweight and obese body mass index (BMI), accounting for the clustering of patients within zip codes. Results 33, 31 and 35 percent of individuals had BMIs corresponding to normal, overweight and obese, respectively. Models adjusted for age, race and gender showed more farmers’ markets/1,000 people (0.19, 0.10-0.36), more grocery stores/1,000 people (0.58, 0.36-0.93) and a 10% increase in percentage of college graduates (0.80, 0.77-0.84) were associated with lower odds of obesity. The same factors yielded odds ratios of smaller magnitudes for overweight. Our results also indicate that larger grocery stores may be inversely associated with obesity. Conclusions Integrating community data into the EHR maximizes the potential of secondary use of EHR data to study and impact obesity prevention and other significant public health issues.
机译:背景技术肥胖和超重是影响三分之二美国人的多重疾病,导致众多健康状况和我们的医疗保健系统。随着患病率和患有更高的体重相关的患病率越来越多,有很大的推动,专注于预防或抑制该疾病的公共卫生策略。电子健康记录(EHRS)是回顾性健康数据的强大来源,但他们缺乏已知与肥胖有关的重要社区级信息。我们探讨了将EHR和社区数据联系起来,以系统和严谨的方式研究与超重和肥胖相关的因素。方法我们在62,701名邮政编码社会经济和萎缩数据上增强了EHR衍生数据。使用多型物流回归模型,我们估计了与超重和肥胖体重指数(BMI)相关的社区水平因素(BMI)的差距和95%的置信区间(或95%CI),占ZIP码内患者的聚类。结果33,31和35%的人分别对应于正常,超重和肥胖的BMI。调整年龄,种族和性别的模型显示更多的农民市场/ 1000人(0.19,0.10-0.36),更多的杂货店/ 1000人(0.58,0.36-0.93)和大学毕业生百分比增加10%(0.80, 0.77-0.84)与肥胖的几率较低有关。相同的因素产生较小幅度的差异。我们的结果还表明,较大的杂货店可能与肥胖相反。结论将社区数据集成到EHR中最大限度地提高了EHR数据的二次使用潜力,以研究和影响肥胖预防和其他重要的公共卫生问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号