The misclassification of depression and anxiety disorders in the multiple sclerosis prodrome: A probabilistic bias analysis

IF 3.3 3区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Annals of Epidemiology Pub Date : 2025-01-01 DOI:10.1016/j.annepidem.2024.12.006
Fardowsa L.A. Yusuf MSc , Mohammad Ehsanul Karim PhD , Paul Gustafson PhD , Jason M. Sutherland PhD , Feng Zhu MSc , Yinshan Zhao PhD , Ruth Ann Marrie MD, PhD , Helen Tremlett PhD
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Abstract

Background

Studies suggest that depression/anxiety form part of the multiple sclerosis (MS) prodrome. However, several biases have not been addressed. We re-examined this association after correcting for: (i) misclassification of individuals not seeking healthcare, (ii) differential surveillance of depression/anxiety in the health system, and (iii) misclassified person-time from using the date of the first MS-related diagnostic claim (i.e., a demyelinating event) as a proxy for MS onset.

Methods

In this cohort study, we applied a validated algorithm to health administrative (‘claims’) data in British Columbia, Canada (1991–2020) to identify MS cases, and matched to general population controls. The neurologist-recorded date of MS symptom onset was available for a subset of the MS cases. We identified depression/anxiety in the 5-years preceding the first demyelinating claim using a validated algorithm. We compared the prevalence of depression/anxiety using modified Poisson regression. To account for misclassification and differential surveillance, we applied probabilistic bias analyses; for misclassified person-time, we applied time-distribution matching to the MS symptom onset date.

Results

Our cohort included 9929 MS cases and 49,574 controls. The prevalence ratio for depression/anxiety was 1.74 (95 %CI: 1.66–1.81). Following correction for misclassification, differential surveillance using a detection ratio of 1.11, and misclassified person-time, the prevalence ratio increased to 3.25 (95 %CI: 1.98–40.54). When the same correction was conducted, but a detection ratio of 1.16 was applied, the prevalence ratio increased to 3.13 (95 %CI: 1.97–33.52).

Conclusions

Previous conventional analyses were biased towards the null, leading to an under-estimation of the association between depression/anxiety and MS in the prodromal period. This first application of probabilistic quantitative bias analysis within MS research demonstrates both its feasibility and utility.
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多发性硬化症前驱症状中抑郁和焦虑障碍的错误分类:一个概率偏倚分析。
背景:研究表明,抑郁/焦虑是多发性硬化症(MS)前驱症状的一部分。然而,一些偏见尚未得到解决。在纠正以下问题后,我们重新检查了这一关联:(i)不寻求医疗保健的个体的错误分类,(ii)卫生系统中抑郁/焦虑的差异监测,以及(iii)将首次MS相关诊断声明(即脱髓鞘事件)的日期作为MS发病的代理而错误分类的个人时间。方法:在这项队列研究中,我们对加拿大不列颠哥伦比亚省(1991-2020年)的健康管理(“索赔”)数据应用了一种经过验证的算法来识别多发性硬化症病例,并与一般人群对照进行匹配。神经学家记录的MS症状发作日期可用于MS病例的一个子集。我们使用经过验证的算法在第一次脱髓鞘声明之前的5年内确定了抑郁/焦虑。我们使用修正泊松回归比较抑郁/焦虑的患病率。为了解释错误分类和差异监测,我们应用了概率偏差分析;对于错误分类的人-时间,我们应用时间分布匹配MS症状发作日期。结果:我们的队列包括9929例MS病例和49574例对照。抑郁/焦虑患病率为1.74 (95%CI: 1.66-1.81)。在对错误分类、使用1.11检出率的差异监测和错误分类的人次进行校正后,患病率增加到3.25 (95%CI: 1.98-40.54)。当进行相同的校正,但采用1.16的检出率时,患病率增加到3.13 (95%CI: 1.97-33.52)。结论:先前的传统分析偏向于零值,导致对前驱期抑郁/焦虑与MS之间关系的低估。这是概率定量偏倚分析在质谱研究中的首次应用,证明了它的可行性和实用性。
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来源期刊
Annals of Epidemiology
Annals of Epidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
7.40
自引率
1.80%
发文量
207
审稿时长
59 days
期刊介绍: The journal emphasizes the application of epidemiologic methods to issues that affect the distribution and determinants of human illness in diverse contexts. Its primary focus is on chronic and acute conditions of diverse etiologies and of major importance to clinical medicine, public health, and health care delivery.
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