Factors Associated with Missing Sociodemographic Data in the IRIS® (Intelligent Research in Sight) Registry

IF 3.2 Q1 OPHTHALMOLOGY Ophthalmology science Pub Date : 2024-04-30 DOI:10.1016/j.xops.2024.100542
Connor Ross BS , Alexander Ivanov MS , Tobias Elze PhD , Joan W. Miller MD , Flora Lum MD , Alice C. Lorch MD, MPH , Isdin Oke MD, MPH , IRIS® Registry Analytic Center Consortium
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Abstract

Purpose

To describe the prevalence of missing sociodemographic data in the IRIS® (Intelligent Research in Sight) Registry and to identify practice-level characteristics associated with missing sociodemographic data.

Design

Cross-sectional study.

Participants

All patients with clinical encounters at practices participating in the IRIS Registry prior to December 31, 2020.

Methods

We describe geographic and temporal trends in the prevalence of missing data for each sociodemographic variable (age, sex, race, ethnicity, geographic location, insurance type, and smoking status). Each practice contributing data to the registry was categorized based on the number of patients, number of physicians, geographic location, patient visit frequency, and patient population demographics.

Main Outcome Measures

Multivariable linear regression was used to describe the association of practice-level characteristics with missing patient-level sociodemographic data.

Results

This study included the electronic health records of 66 477 365 patients receiving care at 3306 practices participating in the IRIS Registry. The median number of patients per practice was 11 415 (interquartile range: 5849–24 148) and the median number of physicians per practice was 3 (interquartile range: 1–7). The prevalence of missing patient sociodemographic data were 0.1% for birth year, 0.4% for sex, 24.8% for race, 30.2% for ethnicity, 2.3% for 3-digit zip code, 14.8% for state, 5.5% for smoking status, and 17.0% for insurance type. The prevalence of missing data increased over time and varied at the state-level. Missing race data were associated with practices that had fewer visits per patient (P < 0.001), cared for a larger nonprivately insured patient population (P = 0.001), and were located in urban areas (P < 0.001). Frequent patient visits were associated with a lower prevalence of missing race (P < 0.001), ethnicity (P < 0.001), and insurance (P < 0.001), but a higher prevalence of missing smoking status (P < 0.001).

Conclusions

There are geographic and temporal trends in missing race, ethnicity, and insurance type data in the IRIS Registry. Several practice-level characteristics, including practice size, geographic location, and patient population, are associated with missing sociodemographic data. While the prevalence and patterns of missing data may change in future versions of the IRIS registry, there will remain a need to develop standardized approaches for minimizing potential sources of bias and ensure reproducibility across research studies.

Financial Disclosure(s)

Proprietary or commercial disclosure may be found in the Footnotes and Disclosures at the end of this article.

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与 IRIS®(视线中的智能研究)注册表中社会人口数据缺失有关的因素
目的描述IRIS®(Intelligent Research in Sight)注册表中社会人口学数据缺失的普遍性,并确定与社会人口学数据缺失相关的医疗机构特征。根据患者人数、医生人数、地理位置、患者就诊频率和患者人口统计学特征,对向注册中心提供数据的每家诊所进行了分类。主要结果测量采用多变量线性回归来描述诊所层面特征与患者层面社会人口学数据缺失之间的关联。每家诊所的患者人数中位数为 11 415 人(四分位数间距:5849-24 148),每家诊所的医生人数中位数为 3 人(四分位数间距:1-7)。患者社会人口学数据的缺失率为:出生年份 0.1%、性别 0.4%、种族 24.8%、民族 30.2%、三位数邮政编码 2.3%、州 14.8%、吸烟状况 5.5%、保险类型 17.0%。数据缺失率随着时间的推移而增加,各州的数据缺失率也不尽相同。种族数据缺失与以下情况有关:每位患者就诊次数较少(P <0.001)、非私人保险患者人数较多(P = 0.001)、位于城市地区(P <0.001)。结论IRIS注册表中种族、民族和保险类型数据的缺失存在地理和时间趋势。包括诊所规模、地理位置和患者人数在内的一些诊所层面的特征与社会人口学数据的缺失有关。虽然缺失数据的发生率和模式可能会在未来版本的 IRIS 注册表中发生变化,但仍有必要制定标准化方法,以最大限度地减少潜在的偏差来源,并确保各项研究的可重复性。
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来源期刊
Ophthalmology science
Ophthalmology science Ophthalmology
CiteScore
3.40
自引率
0.00%
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0
审稿时长
89 days
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