Joint modelling of longitudinal data: a scoping review of methodology and applications for non-time to event data

被引:0
|
作者
Ouko, Rehema K. [1 ]
Mukaka, Mavuto [2 ,3 ]
Ohuma, Eric O. [1 ]
机构
[1] London Sch Hyg & Trop Med, Fac Epidemiol & Populat Hlth, London, England
[2] Univ Oxford, Ctr Trop Med & Global Hlth, Nuffield Dept Med, Oxford, England
[3] Mahidol Univ, Fac Trop Med, Mahidol Oxford Trop Med Res Unit, Bangkok, Thailand
关键词
Joint modelling; Longitudinal data; Non-time-to-event outcomes; BLOOD-PRESSURE; OUTCOMES; BINARY; SURVIVAL; REGRESSION; HYPERTENSION; ASSOCIATION; POPULATION; PREDICTORS; CHILDHOOD;
D O I
10.1186/s12874-025-02485-6
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BackgroundJoint models are powerful statistical models that allow us to define a joint likelihood for quantifying the association between two or more outcomes. Joint modelling has been shown to reduce bias in parameter estimates, increase the efficiency of statistical inference by incorporating the correlation between measurements, and allow borrowing of information in cases where data is missing for variables of interest. Most joint modelling methods and applications involve time-to-event data. There is less awareness about the amount of literature available for joint models of non-time-to-event data. Therefore, this review's main objective is to summarise the current state of joint modelling of non-time-to-event longitudinal data.MethodsWe conducted a search in PubMed, Embase, Medline, Scopus, and Web of Science following the PRISMA-ScR guidelines for articles published up to 28 January 2024. Studies were included if they focused on joint modelling of non-time-to-event longitudinal data and published in English. Exclusions were made for time-to-event articles, conference abstracts, book chapters, and studies without full text. We extracted information on statistical methods, association structure, estimation methods, software, etc.ResultsWe identified 4,681 studies from the search. After removing 2,769 duplicates, 1,912 were reviewed by title and abstract, and 190 underwent full-text review. Ultimately, 74 studies met inclusion criteria and spanned from 2001 to 2024, with the majority (64 studies; 86%) published between 2014 and 2024. Most joint models were based on a frequentist approach (48 studies; 65%) and applied a linear mixed-effects model. The random effect was the most commonly applied association structure for linking two sub-models (63 studies; 85%). Estimation of model parameters was commonly done using Markov Chain Monte Carlo with Gibbs sampler algorithm (10 studies; 38%) for the Bayesian approach, whereas maximum likelihood was the most common (33 studies; 68.75%) for the frequentist approach. Most studies used R statistical software (33 studies; 40%) for analysis.ConclusionA wide range of methods for joint-modelling non-time-to-event longitudinal data exist and have been applied to various areas. An exponential increase in the application of joint modelling of non-time-to-event longitudinal data has been observed in the last decade. There is an opportunity to leverage potential benefits of joint modelling for non-time-to-event longitudinal data for reducing bias in parameter estimates, increasing efficiency of statistical inference by incorporating the correlation between measurements, and allowing borrowing of information in cases with missing data.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Joint modelling of longitudinal and time-to-event data with application to predicting abdominal aortic aneurysm growth and rupture
    Sweeting, Michael J.
    Thompson, Simon G.
    BIOMETRICAL JOURNAL, 2011, 53 (05) : 750 - 763
  • [32] Joint modelling of quantile regression for longitudinal data with information observation times and a terminal event
    Pang, Weicai
    Liu, Yutao
    Zhao, Xingqiu
    Zhou, Yong
    CANADIAN JOURNAL OF STATISTICS-REVUE CANADIENNE DE STATISTIQUE, 2024, 52 (02): : 414 - 436
  • [33] Joint models for longitudinal counts and left-truncated time-to-event data with applications to health insurance
    Piulachs, Xavier
    Alemany, Ramon
    Guillen, Montserrat
    Rizopoulos, Dimitris
    SORT-STATISTICS AND OPERATIONS RESEARCH TRANSACTIONS, 2017, 41 (02) : 347 - 371
  • [34] Joint modeling of longitudinal and time-to-event data on multivariate protein biomarkers
    Thomas, Abin
    Vishwakarma, Gajendra K.
    Bhattacharjee, Atanu
    Journal of Computational and Applied Mathematics, 2021, 381
  • [35] Joint Models for Time-to-Event Data and Longitudinal Biomarkers of High Dimension
    Liu, Molei
    Sun, Jiehuan
    Herazo-Maya, Jose D.
    Kaminski, Naftali
    Zhao, Hongyu
    STATISTICS IN BIOSCIENCES, 2019, 11 (03) : 614 - 629
  • [36] A Bayesian quantile joint modeling of multivariate longitudinal and time-to-event data
    Kundu, Damitri
    Krishnan, Shekhar
    Gogoi, Manash Pratim
    Das, Kiranmoy
    LIFETIME DATA ANALYSIS, 2024, 30 (03) : 680 - 699
  • [37] A semiparametric likelihood approach to joint modeling of longitudinal and time-to-event data
    Song, X
    Davidian, M
    Tsiatis, AA
    BIOMETRICS, 2002, 58 (04) : 742 - 753
  • [38] Joint Models for Time-to-Event Data and Longitudinal Biomarkers of High Dimension
    Molei Liu
    Jiehuan Sun
    Jose D. Herazo-Maya
    Naftali Kaminski
    Hongyu Zhao
    Statistics in Biosciences, 2019, 11 : 614 - 629
  • [39] A flexible joint modeling framework for longitudinal and time-to-event data with overdispersion
    Njagi, Edmund N.
    Molenberghs, Geert
    Rizopoulos, Dimitris
    Verbeke, Geert
    Kenward, Michael G.
    Dendale, Paul
    Willekens, Koen
    STATISTICAL METHODS IN MEDICAL RESEARCH, 2016, 25 (04) : 1661 - 1676
  • [40] Modeling biomarker variability in joint analysis of longitudinal and time-to-event data
    Wang, Chunyu
    Shen, Jiaming
    Charalambous, Christiana
    Pan, Jianxin
    BIOSTATISTICS, 2023, 25 (02) : 577 - 596