计算机断层扫描相关辐射暴露与癌症队列研究中线性超额相对风险的有限样本偏差。

IF 2.5 3区 医学 Q2 BIOLOGY Radiation research Pub Date : 2024-03-01 DOI:10.1667/RADE-23-00187.1
L Caramenti, P L Gradowska, D Moriña, G Byrnes, E Cardis, M Hauptmann
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引用次数: 0

摘要

线性超额相对风险(ERR)是辐射流行病学研究中最常报告的关联测量方法,前提是有个体剂量估计值。虽然ERR 估算值的渐近特性已广为人知,但有证据表明,在治疗相关辐照和第二次癌症风险的病例对照研究中存在小样本偏差。对诊断程序(如计算机断层扫描(CT)检查)受到低剂量辐射后的癌症风险进行的队列研究,通常病例数较少,风险也较小。因此,了解估计ERR的特性对于解释和分析此类研究至关重要。我们介绍了一项模拟研究的结果,该研究利用模拟数据评估了通过时间到事件分析估算的ERR的有限样本偏差及其置信区间,该数据类似于一项关于儿童和青少年时期CT检查后辐射相关白血病风险的回顾性队列研究。此外,我们还评估了 Firth 修正估计器如何减少经典估计器的有限样本偏差。我们发现,在平均观测到 42 例白血病的约 15 万人队列中,ERR 被高估了约 30%。基线发病率越高,真实 ERR 值越高,偏差就越小。随着病例数的增加,ERR 近似无偏。Firth 校正可将所有队列规模的偏差降低到 5%左右或以下。显示儿科 CT 辐射照射与癌症风险之间存在关联的流行病学研究,除非规模很大,否则可能会高估这种关系的程度,但没有证据表明假阳性结果的几率会增加。开展大型研究,或许可以通过汇集单个研究来增加病例数,这应该是一个优先事项。如果无法做到这一点,则应采用 Firth 校正来减少小样本偏差。
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Finite-Sample Bias of the Linear Excess Relative Risk in Cohort Studies of Computed Tomography-Related Radiation Exposure and Cancer.

The linear excess relative risk (ERR) is the most commonly reported measure of association in radiation epidemiological studies, when individual dose estimates are available. While the asymptotic properties of the ERR estimator are well understood, there is evidence of small sample bias in case-control studies of treatment-related radiation exposure and second cancer risk. Cohort studies of cancer risk after exposure to low doses of radiation from diagnostic procedures, e.g., computed tomography (CT) examinations, typically have small numbers of cases and risks are small. Therefore, understanding the properties of the estimated ERR is essential for interpretation and analysis of such studies. We present results of a simulation study that evaluates the finite-sample bias of the ERR estimated by time-to-event analyses and its confidence interval using simulated data, resembling a retrospective cohort study of radiation-related leukemia risk after CT examinations in childhood and adolescence. Furthermore, we evaluate how the Firth-corrected estimator reduces the finite-sample bias of the classical estimator. We show that the ERR is overestimated by about 30% for a cohort of about 150,000 individuals, with 42 leukemia cases observed on average. The bias is reduced for higher baseline incidence rates and for higher values of the true ERR. As the number of cases increases, the ERR is approximately unbiased. The Firth correction reduces the bias for all cohort sizes to generally around or under 5%. Epidemiological studies showing an association between radiation exposure from pediatric CT and cancer risk, unless very large, may overestimate the magnitude of the relationship, while there is no evidence of an increased chance for false-positive results. Conducting large studies, perhaps by pooling individual studies to increase the number of cases, should be a priority. If this is not possible, Firth correction should be applied to reduce small-sample bias.

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来源期刊
Radiation research
Radiation research 医学-核医学
CiteScore
5.10
自引率
8.80%
发文量
179
审稿时长
1 months
期刊介绍: Radiation Research publishes original articles dealing with radiation effects and related subjects in the areas of physics, chemistry, biology and medicine, including epidemiology and translational research. The term radiation is used in its broadest sense and includes specifically ionizing radiation and ultraviolet, visible and infrared light as well as microwaves, ultrasound and heat. Effects may be physical, chemical or biological. Related subjects include (but are not limited to) dosimetry methods and instrumentation, isotope techniques and studies with chemical agents contributing to the understanding of radiation effects.
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