Abstract

sBackgroundThis study aimed to introduce recursively imputed survival trees into multistate survival models (MSRIST) to analyze these types of data and to identify the prognostic factors influencing the disease progression in patients with intermediate events. The proposed method is fully nonparametric and can be used for estimating transition probabilities.MethodsA general algorithm was provided for analyzing multi-state data with a focus on the illness-death and progressive multi-state models. The model considered both beyond Markov and Non-Markov settings. We also proposed a multi-state random survival method (MSRSF) and compared their performance with the classical multi-state Cox model. We applied the proposed method to a dataset related to HIV/AIDS patients based on a retrospective cohort study extracted in Tehran from April 2004 to March 2014 consist of 2473 HIV-infected patients.ResultsThe results showed that MSRIST outperformed the classical multistate method using Cox Model and MSRSF in terms of integrated Brier score and concordance index over 500 repetitions. We also identified a set of important risk factors as well as their interactions on different states of HIV and AIDS progression.ConclusionsThere are different strategies for modelling the intermediate event. We adapted two newly developed data mining technique (RSF and RIST) for multistate models (MSRSF and MSRIST) to identify important risk factors in different stages of the diseases. The methods can capture any complex relationship between variables and can be used as a useful tool for identifying important risk factors in different states of this disease.

Highlights

  • This study aimed to introduce recursively imputed survival trees into multistate survival models (MSRIST) to analyze these types of data and to identify the prognostic factors influencing the disease progression in patients with intermediate events

  • The results showed that multistate RIST (MSRIST) outperformed the classical multistate method using Cox Model and multistate version of random survival forests (RSF) (MSRSF) in terms of integrated Brier score and concordance index over 500 repetitions

  • We identified a set of important risk factors as well as their interactions on different states of human immunodeficiency virus (HIV) and acquired immunodeficiency syndrome (AIDS) progression

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Summary

Introduction

This study aimed to introduce recursively imputed survival trees into multistate survival models (MSRIST) to analyze these types of data and to identify the prognostic factors influencing the disease progression in patients with intermediate events. Tapak et al BMC Medical Research Methodology (2018) 18:129 a b (progressive and illness-death) of multistate diagrams (for the HIV/AIDS example). Competing risks are another special case of MSMs in which one event precludes the event of interest. In these models, the occurrence of events of interest are considered as transitions from one state to another and where the Markov assumption requires that the transition rates depend only on the current state of the patient and not on the patient’s history [2]. The interest focuses on predicting the probability that a patient will be in one of the states at some time point after being HIV-infected

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