缺乏唯一的患者识别码导致健康差异研究的潜在错误:糖尿病相关可预防住院的分析。

Q4 Medicine Hawai''i journal of health & social welfare Pub Date : 2023-10-01
Hyeong Jun Ahn
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引用次数: 0

摘要

所有付款人、人口层面的出院数据都已用于确定种族/民族和其他人口群体的健康差异。然而,如果没有提供唯一的患者标识符,研究人员通常无法在数据集中识别唯一的患者。缺乏唯一的患者标识符可能会导致使用出院数据对研究结果的估计存在偏差。这可能会误导那些利用这种有偏见的结果的研究人员、公众或决策者。这项研究使用夏威夷健康信息公司6年的州级数据,考虑到糖尿病相关的可预防住院,检验了因再次住院而导致的健康差异的估计偏差。不同的分析方法显示,根据年龄、种族/民族和付款人亚组,多次就诊的概率不同。电荷分析结果还表明,忽略多次访问可能导致显著性误差。对于多次住院的患者,再次住院通常取决于以前就诊的出院状态,多次就诊的独立性假设可能不合适。在人口水平分析中忽视多次访问可能会导致严重的健康差异显著性错误。在这项住院费用分析中,中国组与白人组没有显著差异(相对风险比-RR:[95%CI]:0.93[0.80,1.08]),而当忽略多次就诊时,差异显著(RR[95%CI]:0.86[0.77,0.96])。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Potential Errors in Health Disparities Research Resulting from Lack of Unique Patient Identifiers: Analysis of Diabetes-related Preventable Hospitalizations.

All-payer, population-level hospital discharge data have been used to identify health disparities across racial/ethnic and other demographic groups. However, researchers are often unable to identify unique patients in the data sets if a unique patient identifier is not provided. The lack of the unique patient identifier can result in biased estimates of research outcomes using discharge data. This could then mislead the researchers, public, or policy-makers who utilize such biased results. This study examined estimation bias of health disparities due to rehospitalizations considering diabetes-related preventable hospitalizations using 6 years of state-level data from Hawai'i Health Information Corporation. Different analyses methods showed different probabilities of having multiple visits by age, race/ethnicity and payer subgroups. Charge analysis results also showed that ignoring the multiple visits could result in significance error. For a patient with multiple hospitalizations, rehospitalizations are often dependent upon the discharge status of previous visits, and the independence assumption of the multiple visits may not be appropriate. Ignoring the multiple visits in population-level analyses could result in severe health disparities significance errors. In this hospitalization charge analysis, the Chinese group was not significantly different than the White group (relative risk ratio - RR: [95% CI]: 0.93 [0.80, 1.08]), while the difference was signficant (RR [95% CI]: 0.86 [0.77,0.96]) when the multiple visits were ignored.

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