Estimating a change-point of baseline age in the longitudinal trajectories of biomarkers: application to an imaging study of preclinical Alzheimer disease.

Chengjie Xiong, Folasade Agboola, Jingqin Luo
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Abstract

Background: Biomarkers are routinely measured from human biospecimens and imaging scans in Alzheimer disease (AD) research. Age is a well-known risk factor for AD. Detecting the age at which the longitudinal change in biomarkers starts to accelerate, i.e., a change-point in age, is important to design preventive interventions.

Methods: We analyzed longitudinal biomarker data by a random intercept and random slope model where the slope (longitudinal rate of change) was modeled as a piecewise linear and continuous function of baseline age. We proposed to estimate the intersection of the two linear functions, i.e., the change-point in age by multiple methods: maximum (profile) likelihood, minimum squared pseudo bias, minimum variance, minimum mean square error (MSE), and a two-stage method. We simulated large numbers of data sets to evaluate the performance of these estimators and implemented them to analyze the longitudinal white matter hypointensity from brain magnetic resonance imaging scans in an AD cohort study of 616 participants to estimate the age when the longitudinal rate of change starts to accelerate.

Results: Our simulations indicated that performance was universally poor for all point estimators and CI estimates when the true change-point was near the boundary or when sample size was small (N=100). Yet, the proposed change-point estimators became approximately unbiased and showed relatively small MSE when sample size increased (N>200) and the true change-point was away from boundary. The 95% CIs from these methods also provided good nominal coverage with large sample sizes if the change-point was away from boundary. When applied to the AD biomarker study, we found that almost all methods yielded similar estimates to the change-point from 59.19 years to 65.78 years, but the profile likelihood approach led to a much later estimate.

Conclusions: Our proposed estimators for the change-point performed reasonably well, especially when it is away from the boundary and the sample sizes are large. Our methods revealed a largely consistent age when the longitudinal change in white matter hypointensity started to accelerate. Further research is needed to tackle more complex challenges, i.e., multiple change-points that may depend on other AD risk factors.

在生物标志物的纵向轨迹中估计基线年龄的变化点:应用于临床前阿尔茨海默病的影像学研究
在阿尔茨海默病(AD)研究中,生物标志物通常是从人类生物标本和成像扫描中测量的。年龄是AD的一个众所周知的危险因素。检测生物标志物纵向变化开始加速的年龄,即年龄的变化点,对于设计预防性干预措施很重要。我们通过随机截距和随机斜率模型分析纵向生物标志物数据,其中斜率(纵向变化率)被建模为基线年龄的分段线性和连续函数。我们提出了通过多种方法来估计两个线性函数的交集,即年龄的变化点:最大(剖面)似然、最小平方伪偏差、最小方差、最小均方误差(MSE)和两阶段方法。我们模拟了大量的数据集来评估这些估计器的性能,并在一项616名AD参与者的队列研究中应用它们来分析脑磁共振成像扫描的纵向白质低密度,以估计纵向变化速度开始加速的年龄。我们的模拟表明,当真正的变化点接近边界或样本量很小(N = 100)时,所有点估计器和CI估计的性能普遍较差。然而,当样本量增加(N bbb200)且真实的变化点远离边界时,所提出的变化点估计量近似无偏,且MSE相对较小。如果变化点远离边界,这些方法的95% ci在大样本量下也提供了良好的名义覆盖率。当应用于AD生物标志物研究时,我们发现几乎所有方法对59.19岁至65.78岁的变化点都有相似的估计,但谱似然方法的估计要晚得多。我们提出的变化点估计器表现相当好,特别是当它远离边界和样本量很大时。我们的方法揭示了白质低密度的纵向变化开始加速的大致一致的年龄。需要进一步的研究来解决更复杂的挑战,即可能依赖于其他AD风险因素的多个变化点。试验注册:无。
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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