The 'landmark' and 'Simon and Makuch' non-parametric estimators of the survival function are commonly used to contrast the survival experience of time-dependent treatment groups in applications such as stem cell transplant versus chemotherapy in leukemia. However, the theoretical survival functions corresponding to the second approach were not clearly defined in the literature, and the use of the 'Simon and Makuch' estimator was criticized in the biostatistical community. Here, we review the 'landmark' approach, showing that it focuses on the average survival of patients conditional on being failure free and on the treatment status assessed at the landmark time. We argue that the 'Simon and Makuch' approach represents counterfactual survival probabilities where treatment status is forced to be fixed: the patient is thought as under chemotherapy without possibility to switch treatment or as under transplant since the beginning of the follow-up. We argue that the 'Simon and Makuch' estimator leads to valid estimates only under the Markov assumption, which is however less likely to occur in practical applications. This motivates the development of a novel approach based on time rescaling, which leads to suitable estimates of the counterfactual probabilities in a semi-Markov process. The method is also extended to deal with a fixed landmark time of interest.

Bernasconi, D., Rebora, P., Iacobelli, S., Valsecchi, M., Antolini, L. (2016). Survival probabilities with time-dependent treatment indicator: Quantities and non-parametric estimators. STATISTICS IN MEDICINE, 35(7), 1032-1048 [10.1002/sim.6765].

Survival probabilities with time-dependent treatment indicator: Quantities and non-parametric estimators

BERNASCONI, DAVIDE PAOLO
;
REBORA, PAOLA
Secondo
;
VALSECCHI, MARIA GRAZIA
Penultimo
;
ANTOLINI, LAURA
Ultimo
2016

Abstract

The 'landmark' and 'Simon and Makuch' non-parametric estimators of the survival function are commonly used to contrast the survival experience of time-dependent treatment groups in applications such as stem cell transplant versus chemotherapy in leukemia. However, the theoretical survival functions corresponding to the second approach were not clearly defined in the literature, and the use of the 'Simon and Makuch' estimator was criticized in the biostatistical community. Here, we review the 'landmark' approach, showing that it focuses on the average survival of patients conditional on being failure free and on the treatment status assessed at the landmark time. We argue that the 'Simon and Makuch' approach represents counterfactual survival probabilities where treatment status is forced to be fixed: the patient is thought as under chemotherapy without possibility to switch treatment or as under transplant since the beginning of the follow-up. We argue that the 'Simon and Makuch' estimator leads to valid estimates only under the Markov assumption, which is however less likely to occur in practical applications. This motivates the development of a novel approach based on time rescaling, which leads to suitable estimates of the counterfactual probabilities in a semi-Markov process. The method is also extended to deal with a fixed landmark time of interest.
Articolo in rivista - Articolo scientifico
Counterfactual survival; Immortal time bias; Kaplan-Meier; Landmark; Potential quantities; Time-dependent treatment;
Counterfactual survival; Immortal time bias; Kaplan-Meier; Landmark; Potential quantities; Time-dependent treatment; Epidemiology; Statistics and Probability
English
26-ott-2015
2016
35
7
1032
1048
none
Bernasconi, D., Rebora, P., Iacobelli, S., Valsecchi, M., Antolini, L. (2016). Survival probabilities with time-dependent treatment indicator: Quantities and non-parametric estimators. STATISTICS IN MEDICINE, 35(7), 1032-1048 [10.1002/sim.6765].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/99459
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