AI Article Synopsis

  • The proportional hazards model is widely used in analyzing lifetime data from epidemiological studies, dealing with issues like censored outcomes and left truncation.
  • To address these challenges, a novel unified PH model is proposed that accommodates both exactly observed failure times and interval-censored observations while accounting for left truncation.
  • The model uses a tailored expectation-maximization algorithm with latent random variables and employs a monotone spline to approximate the cumulative baseline hazard function, demonstrating effectiveness through simulation and real data analyses related to child mortality in Nigeria and prostate cancer.

Article Abstract

The proportional hazards (PH) model is, arguably, the most popular model for the analysis of lifetime data arising from epidemiological studies, among many others. In such applications, analysts may be faced with censored outcomes and/or studies which institute enrollment criterion leading to left truncation. Censored outcomes arise when the event of interest is not observed but rather is known relevant to an observation time(s). Left truncated data occur in studies that exclude participants who have experienced the event prior to being enrolled in the study. If not accounted for, both of these features can lead to inaccurate inferences about the population under study. Thus, to overcome this challenge, herein we propose a novel unified PH model that can be used to accommodate both of these features. In particular, our approach can seamlessly analyze exactly observed failure times along with interval-censored observations, while aptly accounting for left truncation. To facilitate model fitting, an expectation-maximization algorithm is developed through the introduction of carefully structured latent random variables. To provide modeling flexibility, a monotone spline representation is used to approximate the cumulative baseline hazard function. The performance of our methodology is evaluated through a simulation study and is further illustrated through the analysis of two motivating data sets; one that involves child mortality in Nigeria and the other prostate cancer.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9852023PMC
http://dx.doi.org/10.1007/s10985-022-09579-zDOI Listing

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