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使用行政数据和自我报告数据衡量慢性病数量的潜在复杂性:简短报告

The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report.

作者信息

Griffith Lauren E, Gruneir Andrea, Fisher Kathryn A, Upshur Ross, Patterson Christopher, Perez Richard, Favotto Lindsay, Markle-Reid Maureen, Ploeg Jenny

机构信息

Department of Health Research Methods, Evidence, and Impact, McMaster University, Hamilton, ON, Canada.

Department of Family Medicine, University of Alberta, Edmonton, AB, Canada.

出版信息

J Comorb. 2020 Jun 26;10:2235042X20931287. doi: 10.1177/2235042X20931287. eCollection 2020 Jan-Dec.

Abstract

OBJECTIVE

To examine agreement between administrative and self-reported data on the number of and constituent chronic conditions (CCs) used to measure multimorbidity.

STUDY DESIGN AND SETTING

Cross-sectional self-reported survey data from four Canadian Community Health Survey waves were linked to administrative data for residents of Ontario, Canada. Agreement for each of 12 CCs was assessed using kappa () statistics. For the overall number of CCs, perfect agreement was defined as agreement on both the number and constituent CCs. Jackknife methods were used to assess the impact of individual CCs on perfect agreement.

RESULTS

The level of chance-adjusted agreement between self-report and administrative data for individual CCs varied widely, from = 5.5% (inflammatory bowel disease) to = 77.5% (diabetes), and there was no clear pattern on whether using administrative data or self-reported data led to higher prevalence estimates. Only 26.9% of participants had perfect agreement on the number and constituent CCs; 10.6% agreed on the number but not constituent CCs. The impact of each CC on perfect agreement depended on both the level of agreement and the prevalence of the individual CC.

CONCLUSION

Our results show that measuring agreement on multimorbidity is more complex than for individual CCs and that even small levels of individual condition disagreement can have a large impact on the agreement on the number of CCs.

摘要

目的

检验用于衡量多病共存的慢性病数量及构成的行政数据与自我报告数据之间的一致性。

研究设计与背景

来自加拿大社区健康调查四个阶段的横断面自我报告调查数据与加拿大安大略省居民的行政数据相关联。使用kappa(κ)统计量评估12种慢性病中每种疾病的一致性。对于慢性病的总数,完全一致性定义为在疾病数量和构成疾病方面均达成一致。采用刀切法评估个体慢性病对完全一致性的影响。

结果

个体慢性病自我报告数据与行政数据之间的机会调整一致性水平差异很大,从κ = 5.5%(炎症性肠病)到κ = 77.5%(糖尿病),而且对于使用行政数据还是自我报告数据是否会导致更高的患病率估计值,没有明确的模式。只有26.9%的参与者在慢性病数量和构成疾病方面达成了完全一致;10.6%的参与者在疾病数量上达成了一致,但在构成疾病上未达成一致。每种慢性病对完全一致性的影响取决于一致性水平和该个体慢性病的患病率。

结论

我们的结果表明,衡量多病共存的一致性比衡量个体慢性病的一致性更为复杂,而且即使个体疾病的不一致程度很小,也可能对慢性病数量的一致性产生很大影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2d7c/7323264/668a6f3096c4/10.1177_2235042X20931287-fig1.jpg

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