Literature DB >> 30908745

Dynamic prediction: A challenge for biostatisticians, but greatly needed by patients, physicians and the public.

Martin Schumacher1, Stefanie Hieke1,2, Gabriele Ihorst3, Monika Engelhardt4.   

Abstract

Prognosis is usually expressed in terms of the probability that a patient will or will not have experienced an event of interest t years after diagnosis of a disease. This quantity, however, is of little informative value for a patient who is still event-free after a number of years. Such a patient would be much more interested in the conditional probability of being event-free in the upcoming t years, given that he/she did not experience the event in the s years after diagnosis, called "conditional survival." It is the simplest form of a dynamic prediction and can be dealt with using straightforward extensions of standard time-to-event analyses in clinical cohort studies. For a healthy individual, a related problem with further complications is the so-called "age-conditional probability of developing cancer" in the next t years. Here, the competing risk of dying from other diseases has to be taken into account. For both situations, the hazard function provides the central dynamic concept, which can be further extended in a natural way to build dynamic prediction models that incorporate both baseline and time-dependent characteristics. Such models are able to exploit the most current information accumulating over time in order to accurately predict the further course or development of a disease. In this article, the biostatistical challenges as well as the relevance and importance of dynamic prediction are illustrated using studies of multiple myeloma, a hematologic malignancy with a formerly rather poor prognosis which has improved over the last few years.
© 2019 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim.

Entities:  

Keywords:  age-conditional probability of developing cancer; conditional survival; dynamic prognosis; landmark regression models; time-dependent bias

Mesh:

Year:  2019        PMID: 30908745     DOI: 10.1002/bimj.201800248

Source DB:  PubMed          Journal:  Biom J        ISSN: 0323-3847            Impact factor:   2.207


  4 in total

1.  Functional survival forests for multivariate longitudinal outcomes: Dynamic prediction of Alzheimer's disease progression.

Authors:  Jeffrey Lin; Kan Li; Sheng Luo
Journal:  Stat Methods Med Res       Date:  2020-07-29       Impact factor: 3.021

2.  Bayesian inference and dynamic prediction of multivariate joint model with functional data: An application to Alzheimer's disease.

Authors:  Haotian Zou; Kan Li; Donglin Zeng; Sheng Luo
Journal:  Stat Med       Date:  2021-10-14       Impact factor: 2.373

3.  A comparison of the beta-geometric model with landmarking for dynamic prediction of time to pregnancy.

Authors:  Rik van Eekelen; Hein Putter; David J McLernon; Marinus J Eijkemans; Nan van Geloven
Journal:  Biom J       Date:  2019-11-18       Impact factor: 2.207

4.  Structured assessment of frailty in multiple myeloma as a paradigm of individualized treatment algorithms in cancer patients at advanced age.

Authors:  Monika Engelhardt; Gabriele Ihorst; Jesus Duque-Afonso; Ulrich Wedding; Ernst Spät-Schwalbe; Valentin Goede; Gerald Kolb; Reinhard Stauder; Ralph Wäsch
Journal:  Haematologica       Date:  2020-04-02       Impact factor: 9.941

  4 in total

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