Factor-augmented transformation models for interval-censored failure time data.

IF 1.4 4区 数学 Q3 BIOLOGY Biometrics Pub Date : 2024-07-01 DOI:10.1093/biomtc/ujae078
Hongxi Li, Shuwei Li, Liuquan Sun, Xinyuan Song
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Abstract

Interval-censored failure time data frequently arise in various scientific studies where each subject experiences periodical examinations for the occurrence of the failure event of interest, and the failure time is only known to lie in a specific time interval. In addition, collected data may include multiple observed variables with a certain degree of correlation, leading to severe multicollinearity issues. This work proposes a factor-augmented transformation model to analyze interval-censored failure time data while reducing model dimensionality and avoiding multicollinearity elicited by multiple correlated covariates. We provide a joint modeling framework by comprising a factor analysis model to group multiple observed variables into a few latent factors and a class of semiparametric transformation models with the augmented factors to examine their and other covariate effects on the failure event. Furthermore, we propose a nonparametric maximum likelihood estimation approach and develop a computationally stable and reliable expectation-maximization algorithm for its implementation. We establish the asymptotic properties of the proposed estimators and conduct simulation studies to assess the empirical performance of the proposed method. An application to the Alzheimer's Disease Neuroimaging Initiative (ADNI) study is provided. An R package ICTransCFA is also available for practitioners. Data used in preparation of this article were obtained from the ADNI database.

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用于间隔删失故障时间数据的因子增强变换模型。
区间删失失效时间数据经常出现在各种科学研究中,在这些研究中,每个受试者都经历了相关失效事件发生的定期检查,而失效时间只知道在一个特定的时间区间内。此外,收集到的数据可能包含多个具有一定相关性的观测变量,从而导致严重的多重共线性问题。本研究提出了一种因子增强变换模型,用于分析区间删失的故障时间数据,同时降低模型维度,避免多个相关协变量引起的多重共线性。我们提供了一个联合建模框架,其中包括一个因子分析模型,用于将多个观测变量归类为几个潜在因子,以及一类带有增强因子的半参数变换模型,用于检验这些因子和其他协变量对故障事件的影响。此外,我们还提出了一种非参数最大似然估计方法,并为其实现开发了一种计算稳定可靠的期望最大化算法。我们建立了所提估计器的渐近特性,并进行了模拟研究,以评估所提方法的经验性能。我们还提供了阿尔茨海默病神经影像倡议(ADNI)研究的应用。此外,还为实践者提供了一个 R 软件包 ICTransCFA。本文编写过程中使用的数据来自 ADNI 数据库。
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
Biometrics
Biometrics 生物-生物学
CiteScore
2.70
自引率
5.30%
发文量
178
审稿时长
4-8 weeks
期刊介绍: The International Biometric Society is an international society promoting the development and application of statistical and mathematical theory and methods in the biosciences, including agriculture, biomedical science and public health, ecology, environmental sciences, forestry, and allied disciplines. The Society welcomes as members statisticians, mathematicians, biological scientists, and others devoted to interdisciplinary efforts in advancing the collection and interpretation of information in the biosciences. The Society sponsors the biennial International Biometric Conference, held in sites throughout the world; through its National Groups and Regions, it also Society sponsors regional and local meetings.
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