Transition probability estimates for non-Markov multi-state models.

Non-parametric estimation of the transition probabilities in multi-state models is considered for non-Markov processes. Firstly, a generalization of the estimator of Pepe et al., (1991) (Statistics in Medicine) is given for a class of progressive multi-state models based on the difference between Kaplan-Meier estimators. Secondly, a general estimator for progressive or non-progressive models is proposed based upon constructed univariate survival or competing risks processes which retain the Markov property. The properties of the estimators and their associated standard errors are investigated through simulation. The estimators are demonstrated on datasets relating to survival and recurrence in patients with colon cancer and prothrombin levels in liver cirrhosis patients.

[1]  Jan Beyersmann,et al.  A competing risks approach for nonparametric estimation of transition probabilities in a non-Markov illness-death model , 2013, Lifetime Data Analysis.

[2]  Carmen Cadarso-Suárez,et al.  Nonparametric estimation of transition probabilities in a non-Markov illness–death model , 2006, Lifetime data analysis.

[3]  David V Glidden,et al.  Robust Inference for Event Probabilities with Non‐Markov Event Data , 2002, Biometrics.

[4]  Martin Schumacher,et al.  Empirical Transition Matrix of Multi-State Models: The etm Package , 2011 .

[5]  Luís Meira-Machado,et al.  Nonparametric estimation of transition probabilities in the non‐Markov illness‐death model: A comparative study , 2015, Biometrics.

[6]  N. Keiding,et al.  Multi-state models for event history analysis , 2002, Statistical methods in medical research.

[7]  Niels Keiding,et al.  Statistical Models Based on Counting Processes , 1993 .

[8]  Ren Johansen An Empirical Transition Matrix for Non-homogeneous Markov Chains Based on Censored Observations , 1978 .

[9]  Martin Schumacher,et al.  Competing Risks and Multistate Models with R , 2011 .

[10]  Hein Putter,et al.  mstate: An R Package for the Analysis of Competing Risks and Multi-State Models , 2011 .

[11]  G. Satten,et al.  Estimation of Integrated Transition Hazards and Stage Occupation Probabilities for Non‐Markov Systems Under Dependent Censoring , 2002, Biometrics.

[12]  Jacobo de Uña-Álvarez,et al.  A nonparametric test for Markovianity in the illness‐death model , 2012, Statistics in medicine.

[13]  J. Klein,et al.  Generalised linear models for correlated pseudo‐observations, with applications to multi‐state models , 2003 .

[14]  Somnath Datta,et al.  Validity of the Aalen–Johansen estimators of stage occupation probabilities and Nelson–Aalen estimators of integrated transition hazards for non-Markov models , 2001 .

[15]  M. Pepe,et al.  A qualifier Q for the survival function to describe the prevalence of a transient condition. , 1991, Statistics in medicine.

[16]  Margaret S. Pepe,et al.  Inference for Events with Dependent Risks in Multiple Endpoint Studies , 1991 .