gms | German Medical Science

Kongress Medizin und Gesellschaft 2007

17. bis 21.09.2007, Augsburg

Estimation of survival probabilities in the presence of ties

Meeting Abstract

  • Qamruz Zaman - Department of Medical Statistics, Informatics & Health Economics, Innsbruck
  • Alexander M Strasak - Department of Medical Statistics, Informatics & Health Economics, Innsbruck
  • Muhammad Azam - Department of Medical Statistics, Informatics & Health Economics, Innsbruck
  • Hanno Ulmer - Department of Medical Statistics, Informatics & Health Economics, Innsbruck
  • Karl-Peter Pfeiffer - Department of Medical Statistics, Informatics & Health Economics, Innsbruck

Kongress Medizin und Gesellschaft 2007. Augsburg, 17.-21.09.2007. Düsseldorf: German Medical Science GMS Publishing House; 2007. Doc07gmds754

Die elektronische Version dieses Artikels ist vollständig und ist verfügbar unter: http://www.egms.de/de/meetings/gmds2007/07gmds754.shtml

Veröffentlicht: 6. September 2007

© 2007 Zaman et al.
Dieser Artikel ist ein Open Access-Artikel und steht unter den Creative Commons Lizenzbedingungen (http://creativecommons.org/licenses/by-nc-nd/3.0/deed.de). Er darf vervielfältigt, verbreitet und öffentlich zugänglich gemacht werden, vorausgesetzt dass Autor und Quelle genannt werden.


Gliederung

Text

In the real world we usually face the problem of discrete survival times, typically associated with the presence of ties between events and censored observations. However, the conventional Kaplan-Meier approaches, as well as Greenwood's variance estimator, do not adequately consider this fact, which leads to underestimation of true survival probabilities and variance estimates. We therefore present a modified Kaplan-Meier approach, by explicitly considering the presence of ties called the Tie survival function. A variance estimator based on tie survival function approach is developed. In absence of ties the new variance estimator equals to Greenwood variance estimator, while in uncensored data, it reduces to the binomial variance estimator. A simulation study was conducted in order to compare the performance of the conventional Kaplan-Meier estimator and the tie survivor estimator for different censoring rates. Our simulation results suggest a significant improvement, in terms of bias of the tie survivor approach compared to the conventional Kaplan-Meier estimator. Similarly, the results of variance simulation favor the proposed, tie variance estimator. Our new approaches are illustrated on a leukaemia data set.