Adjusting for bias due to measurement error in functional quantile regression models with error-prone functional and scalar covariates.

Q3 Medicine
Biostatistics and Epidemiology Pub Date : 2024-01-01 Epub Date: 2024-10-02 DOI:10.1080/24709360.2024.2405439
Xiwei Chen, Heyang Ji, Yuanyuan Luan, Roger S Zoh, Lan Xue, Sneha Jadhav, Carmen D Tekwe
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引用次数: 0

Abstract

Wearable devices enable the continuous monitoring of physical activity (PA) but generate complex functional data with poorly characterized errors. Most work on functional data views the data as smooth, latent curves obtained at discrete time intervals with some random noise with mean zero and constant variance. Viewing this noise as homoscedastic and independent ignores potential serial correlations. Our preliminary studies indicate that failing to account for these serial correlations can bias estimations. In dietary assessments, epidemiologists often use self-reported measures based on food frequency questionnaires that are prone to recall bias. With the increased availability of complex, high-dimensional functional, and scalar biomedical data potentially prone to measurement errors, it is necessary to adjust for biases induced by these errors to permit accurate analyses in various regression settings. However, there has been limited work to address measurement errors in functional and scalar covariates in the context of quantile regression. Therefore, we developed new statistical methods based on simulation extrapolation (SIMEX) and mixed effects regression with repeated measures to correct for measurement error biases in this context. We conducted simulation studies to establish the finite sample properties of our new methods. The methods are illustrated through application to a real data set.

在容易出错的函数协变量和标量协变量的功能分位数回归模型中调整由于测量误差引起的偏差。
可穿戴设备能够持续监测身体活动(PA),但会产生复杂的功能数据,并且具有较差的特征误差。大多数关于函数数据的工作将数据视为在离散时间间隔内获得的平滑的潜在曲线,其中包含一些均值为零且方差恒定的随机噪声。将这种噪声视为均方差和独立的,忽略了潜在的序列相关性。我们的初步研究表明,不考虑这些序列相关性可能会使估计产生偏差。在饮食评估中,流行病学家经常使用基于食物频率问卷的自我报告测量方法,这种方法容易产生回忆偏差。随着复杂、高维功能和标量生物医学数据的可用性增加,可能容易出现测量误差,因此有必要调整由这些误差引起的偏差,以便在各种回归设置中进行准确的分析。然而,在分位数回归的背景下,解决函数和标量协变量测量误差的工作有限。因此,我们开发了基于模拟外推(SIMEX)和重复测量的混合效应回归的新统计方法,以纠正这种情况下的测量误差偏差。我们进行了模拟研究,以确定我们的新方法的有限样本性质。通过对一个实际数据集的应用说明了这些方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biostatistics and Epidemiology
Biostatistics and Epidemiology Medicine-Health Informatics
CiteScore
1.80
自引率
0.00%
发文量
23
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