用截尾值估计试验数据的动态信号。

Ali Yousefi, Darin D Dougherty, Emad N Eskandar, Alik S Widge, Uri T Eden
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引用次数: 4

摘要

审查数据通常出现在试验结构的行为实验和许多其他形式的纵向数据中。在随后的分析中,它们可能导致严重的偏差和统计能力的降低。处理删减数据的原则方法,如数据输入和基于完整数据可能性的方法,对于估计统计模型的固定特征很有效,但尚未扩展到动态测量,如随时间对潜在变量的序列估计。本文提出了一种处理动态行为信号的数据过滤问题的方法。我们开发了一个状态空间建模框架,该框架在试验时间尺度上具有截尾观察过程。然后,我们开发了一种过滤算法,利用可用数据计算状态过程的后验分布。我们表明,该框架的特殊情况可以结合三种最常见的审查观察方法:忽略审查数据的试验,输入审查数据值,或使用数据似然中可用的全部信息。最后,我们推导了一个计算效率高的近似高斯滤波器,它在结构上类似于卡尔曼滤波器,但它有效地解释了截尾数据。我们在模拟研究中比较了这些方法的性能,并根据实验中审查数据的预期数量提供了使用方法的建议。这些新技术可以广泛应用于许多研究领域,其中审查数据干扰估计,包括生存分析和其他临床试验应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Estimating Dynamic Signals From Trial Data With Censored Values.

Estimating Dynamic Signals From Trial Data With Censored Values.

Estimating Dynamic Signals From Trial Data With Censored Values.

Censored data occur commonly in trial-structured behavioral experiments and many other forms of longitudinal data. They can lead to severe bias and reduction of statistical power in subsequent analyses. Principled approaches for dealing with censored data, such as data imputation and methods based on the complete data's likelihood, work well for estimating fixed features of statistical models but have not been extended to dynamic measures, such as serial estimates of an underlying latent variable over time. Here we propose an approach to the censored-data problem for dynamic behavioral signals. We developed a state-space modeling framework with a censored observation process at the trial timescale. We then developed a filter algorithm to compute the posterior distribution of the state process using the available data. We showed that special cases of this framework can incorporate the three most common approaches to censored observations: ignoring trials with censored data, imputing the censored data values, or using the full information available in the data likelihood. Finally, we derived a computationally efficient approximate Gaussian filter that is similar in structure to a Kalman filter, but that efficiently accounts for censored data. We compared the performances of these methods in a simulation study and provide recommendations of approaches to use, based on the expected amount of censored data in an experiment. These new techniques can broadly be applied in many research domains in which censored data interfere with estimation, including survival analysis and other clinical trial applications.

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来源期刊
CiteScore
4.30
自引率
0.00%
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审稿时长
17 weeks
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