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首页> 外文期刊>American Journal of Epidemiology >Balancing Contamination and Referral Bias in a Randomized Clinical Trial: An Application of Pseudo-Cluster Randomization
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Balancing Contamination and Referral Bias in a Randomized Clinical Trial: An Application of Pseudo-Cluster Randomization

机译:在随机临床试验中平衡污染和转诊偏差:伪集群随机化的应用

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摘要

In randomized trials of provider-focused clinical interventions, treatment allocation often cannot be blinded to participants, study staff, or providers. The choice of unit of randomization (patient, provider, or clinic) entails tradeoffs in cost, power, and bias. Provider- or clinic-level randomization can minimize contamination, but it incurs the equally problematic potential for referral bias; that is, because arm assignment of future participants generally cannot be concealed, differences between arms may arise in the types of patients enrolled. Pseudo-cluster randomization is a novel study design that balances these competing validity threats. Providers are randomly assigned to an imbalanced proportion of intervention-arm participants (e.g., 80% or 20%). Providers can be masked to the imbalance, avoiding referral bias. Contamination is reduced because only a minority of control-arm participants are treated by majority-intervention providers. Pseudo-cluster randomization was implemented in a randomized trial of a decision support intervention to manage depression among patients receiving human immunodeficiency virus care in the southern United States in 2010-2014. The design appears successful in avoiding referral bias (participants were comparable between arms on important characteristics) and contamination (key depression treatment indicators were comparable between usual care participants managed by majority-intervention and majority-usual care providers and were markedly different compared with intervention participants).
机译:在以提供者为中心的临床干预措施的随机试验中,治疗分配常常不能使参与者,研究人员或提供者不知情。选择随机单位(患者,提供者或诊所)需要权衡成本,能力和偏见。提供者或诊所级别的随机化可以最大程度地减少污染,但同时也可能带来引荐偏见的问题。也就是说,由于通常无法隐瞒未来参与者的手臂分配,因此在招募的患者类型上可能会出现手臂之间的差异。伪集群随机化是一种新颖的研究设计,可以平衡这些相互竞争的有效性威胁。将提供者随机分配给不均衡比例的干预小组参与者(例如80%或20%)。提供者可以掩盖不平衡,避免转介偏见。由于多数干预提供者仅对少数控制臂参与者进行了治疗,因此减少了污染。在2010年至2014年间,在美国南部接受人类免疫缺陷病毒治疗的患者中,通过决策支持干预措施来管理抑郁症的随机试验中实现了伪集群随机化。该设计在避免转诊偏见(参与者在具有重要特征的两组之间具有可比性)和污染(主要抑郁症治疗指标在由多数干预和多数常规护理提供者管理的普通护理参与者之间具有可比性)方面似乎是成功的,并且与干预参与者相比有显着差异)。

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