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基于序列挖掘和大数据识别与儿童肥胖发生率相关的时间状态模式。

Identification of temporal condition patterns associated with pediatric obesity incidence using sequence mining and big data.

机构信息

Department of Information Science, College of Computing and Informatics, Drexel University, Philadelphia, PA, USA.

Department of Biomedical and Health Informatics, Children's Hospital of Philadelphia, Philadelphia, PA, USA.

出版信息

Int J Obes (Lond). 2020 Aug;44(8):1753-1765. doi: 10.1038/s41366-020-0614-7. Epub 2020 Jun 3.

Abstract

BACKGROUND

Electronic health records (EHRs) are potentially important components in addressing pediatric obesity in clinical settings and at the population level. This work aims to identify temporal condition patterns surrounding obesity incidence in a large pediatric population that may inform clinical care and childhood obesity policy and prevention efforts.

METHODS

EHR data from healthcare visits with an initial record of obesity incidence (index visit) from 2009 through 2016 at the Children's Hospital of Philadelphia, and visits immediately before (pre-index) and after (post-index), were compared with a matched control population of patients with a healthy weight to characterize the prevalence of common diagnoses and condition trajectories. The study population consisted of 49,694 patients with pediatric obesity and their corresponding matched controls. The SPADE algorithm was used to identify common temporal condition patterns in the case population. McNemar's test was used to assess the statistical significance of pattern prevalence differences between the case and control populations.

RESULTS

SPADE identified 163 condition patterns that were present in at least 1% of cases; 80 were significantly more common among cases and 45 were significantly more common among controls (p < 0.05). Asthma and allergic rhinitis were strongly associated with childhood obesity incidence, particularly during the pre-index and index visits. Seven conditions were commonly diagnosed for cases exclusively during pre-index visits, including ear, nose, and throat disorders and gastroenteritis.

CONCLUSIONS

The novel application of SPADE on a large retrospective dataset revealed temporally dependent condition associations with obesity incidence. Allergic rhinitis and asthma had a particularly high prevalence during pre-index visits. These conditions, along with those exclusively observed during pre-index visits, may represent signals of future obesity. While causation cannot be inferred from these associations, the temporal condition patterns identified here represent hypotheses that can be investigated to determine causal relationships in future obesity research.

摘要

背景

电子健康记录(EHR)在临床和人群层面上解决儿科肥胖问题方面具有重要潜力。本研究旨在确定在大型儿科人群中围绕肥胖发生率的时间条件模式,以便为临床护理以及儿童肥胖政策和预防工作提供信息。

方法

比较了费城儿童医院 2009 年至 2016 年期间首次记录肥胖发生率(索引就诊)的 EHR 数据与就诊前(预索引)和就诊后(后索引)的健康体重患者的匹配对照人群,以描述常见诊断和疾病轨迹的流行率。研究人群包括 49694 例儿科肥胖患者及其相应的匹配对照患者。使用 SPADE 算法在病例人群中识别常见的时间条件模式。使用 McNemar 检验评估病例和对照人群之间模式流行率差异的统计学意义。

结果

SPADE 确定了至少 1%的病例中存在的 163 种疾病模式;80 种在病例中更为常见,45 种在对照中更为常见(p<0.05)。哮喘和过敏性鼻炎与儿童肥胖的发生密切相关,尤其是在预索引和索引就诊期间。有 7 种疾病仅在预索引就诊期间被病例患者普遍诊断,包括耳鼻喉和胃肠道疾病。

结论

SPADE 在大型回顾性数据集上的新应用揭示了与肥胖发生率相关的时间依赖性疾病关联。过敏性鼻炎和哮喘在预索引就诊期间的患病率特别高。这些疾病以及仅在预索引就诊期间观察到的疾病,可能代表未来肥胖的信号。虽然不能从这些关联中推断出因果关系,但这里确定的时间条件模式代表了可以进行研究以确定未来肥胖研究中因果关系的假设。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5e33/7381422/6f9edc1bae5e/41366_2020_614_Fig1_HTML.jpg

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