Bikram Karmakar, Ann G Zauber, Anne I Hahn, Yan Kwan Lau, Chyke A Doubeni, Marshall M Joffe
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引用次数: 0
摘要
背景:由于开展大型临床试验的实际限制和所需时间,观察性研究常用于估算不同结直肠癌(CRC)筛查方法的比较效果。然而,时变混杂因素(如上次筛查中的息肉检测)会使统计结果产生偏差。最近,由于广义方法(或称 G 方法)能够考虑此类时变混杂因素,因此被用于分析 CRC 筛查的观察性研究。当治疗和结果以连续尺度进行评估时,G 方法需要进行离散化处理,即把连续函数转换为离散对应函数的过程:本文对时变混杂因素和离散化之间的相互作用进行了评估,时变混杂因素和离散化可能会在评估筛查效果时产生偏差。我们在评估不同 CRC 筛查方法的效果时研究了这种偏差,这些方法的典型筛查频率各不相同:应用:首先,我们利用理论确定了偏差的方向。然后,我们通过模拟假设环境,研究不同离散程度、筛查频率和研究期长度下的偏差大小。我们开发了一种方法来评估模拟情况下由于粗化而可能产生的偏差:结论:所提出的方法可为今后的筛查有效性研究(尤其是针对 CRC 的筛查有效性研究)提供参考,方法是确定选择数据离散化的时间间隔长度,以便在平衡计算成本的同时最大限度地减少粗粒化导致的偏差。
Bias due to coarsening of time intervals in the inference for the effectiveness of colorectal cancer screening.
Background: Observational studies are frequently used to estimate the comparative effectiveness of different colorectal cancer (CRC) screening methods due to the practical limitations and time needed to conduct large clinical trials. However, time-varying confounders, e.g. polyp detection in the last screening, can bias statistical results. Recently, generalized methods, or G-methods, have been used for the analysis of observational studies of CRC screening, given their ability to account for such time-varying confounders. Discretization, or the process of converting continuous functions into discrete counterparts, is required for G-methods when the treatment and outcomes are assessed at a continuous scale.
Development: This paper evaluates the interplay between time-varying confounding and discretization, which can induce bias in assessing screening effectiveness. We investigate this bias in evaluating the effect of different CRC screening methods that differ from each other in typical screening frequency.
Application: First, using theory, we establish the direction of the bias. Then, we use simulations of hypothetical settings to study the bias magnitude for varying levels of discretization, frequency of screening and length of the study period. We develop a method to assess possible bias due to coarsening in simulated situations.
Conclusions: The proposed method can inform future studies of screening effectiveness, especially for CRC, by determining the choice of interval lengths where data are discretized to minimize bias due to coarsening while balancing computational costs.
期刊介绍:
The International Journal of Epidemiology is a vital resource for individuals seeking to stay updated on the latest advancements and emerging trends in the field of epidemiology worldwide.
The journal fosters communication among researchers, educators, and practitioners involved in the study, teaching, and application of epidemiology pertaining to both communicable and non-communicable diseases. It also includes research on health services and medical care.
Furthermore, the journal presents new methodologies in epidemiology and statistics, catering to professionals working in social and preventive medicine. Published six times a year, the International Journal of Epidemiology provides a comprehensive platform for the analysis of data.
Overall, this journal is an indispensable tool for staying informed and connected within the dynamic realm of epidemiology.